Abstract
Background
Running gait assessment has traditionally been performed using subjective observation or expensive laboratory-based objective technologies, such as three-dimensional motion capture or force plates. However, recent developments in wearable devices allow for continuous monitoring and analysis of running mechanics in any environment. Objective measurement of running gait is an important (clinical) tool for injury assessment and provides measures that can be used to enhance performance.
Objectives
We aimed to systematically review the available literature investigating how wearable technology is being used for running gait analysis in adults.
Methods
A systematic search of the literature was conducted in the following scientific databases: PubMed, Scopus, Web of Science and SPORTDiscus. Information was extracted from each included article regarding the type of study, participants, protocol, wearable device(s), main outcomes/measures, analysis and key findings.
Results
A total of 131 articles were reviewed: 56 investigated the validity of wearable technology, 22 examined the reliability and 77 focused on applied use. Most studies used inertial measurement units (n = 62) [i.e. a combination of accelerometers, gyroscopes and magnetometers in a single unit] or solely accelerometers (n = 40), with one using gyroscopes alone and 31 using pressure sensors. On average, studies used one wearable device to examine running gait. Wearable locations were distributed among the shank, shoe and waist. The mean number of participants was 26 (± 27), with an average age of 28.3 (± 7.0) years. Most studies took place indoors (n = 93), using a treadmill (n = 62), with the main aims seeking to identify running gait outcomes or investigate the effects of injury, fatigue, intrinsic factors (e.g. age, sex, morphology) or footwear on running gait outcomes. Generally, wearables were found to be valid and reliable tools for assessing running gait compared to reference standards.
Conclusions
This comprehensive review highlighted that most studies that have examined running gait using wearable sensors have done so with young adult recreational runners, using one inertial measurement unit sensor, with participants running on a treadmill and reporting outcomes of ground contact time, stride length, stride frequency and tibial acceleration. Future studies are required to obtain consensus regarding terminology, protocols for testing validity and the reliability of devices and suitability of gait outcomes.
Clinical Trial Registration
CRD42021235527.
Supplementary Information
The online version contains supplementary material available at 10.1007/s40279-022-01760-6.
Key Points
The majority of studies tested young adult recreational runners, with an average sample size of n < 30. |
Most studies used one wearable (on shoe or tibia), typically an inertial measurement unit with a sampling rate of 100 Hz, with ground contact time, stride length, stride frequency and tibial acceleration outcomes most reported. |
Most studies tested participants indoors, using a treadmill for a set duration or distance at a controlled speed. |
Introduction
Running is one of the most popular sport and recreational activities worldwide as well as being a core component of many sports [1]. In addition to its beneficial effects on health, the prevalence and cumulative incidence proportions of running-related injuries (RRI) are high, which results in participation cessation [2]. It is well established that a contributing factor to RRI is abnormal running gait, meaning early detection of potentially harmful running gait pathologies is essential. Where biomechanics have been implicated, clinical running analysis has largely been limited to the use of subjective clinical observation or rating scales (e.g. the High-Level Mobility and Assessment tool), which may not be sensitive to subtle changes in performance with training or injury [3–5].
Quantitative running gait analysis, as a clinical tool for minimising injury risk and as a performance measure, has been well documented in the literature [6–8]. However, quantification of running beyond clinical observation has largely been performed using a two-dimensional video analysis [3, 5] (particularly in commercial settings, such as running shoe stores), but this is limited to certain gait outcomes (i.e. foot strike patterns [FSP]) and still requires subjective visual/manual inspection and analysis of videos. To analyse more advanced measures, such as spatiotemporal (e.g. stride length [SL], stride time, step frequency [SF], speed), kinematic (e.g. angular velocity and joint angles) and kinetic (e.g. ground reaction forces [GRF]) measures, more cumbersome and expensive traditional (reference/gold-standard) gait laboratory measures are required (e.g. three-dimensional [3D] motion capture, force plate equipment, instrumented treadmills). However, use of gait laboratories for running gait assessment is limited because of the expense of equipment, the need for trained practitioners to collect and analyse data, and the requirement to attend a laboratory setting. Therefore, those traditional techniques are not readily available to performance or clinical settings and provide a limited understanding of running in ‘real-world’ environments [9–11]. Furthermore, laboratory-based testing often uses constrained protocols that may not represent usual running behaviour, such as assessing single foot strikes, unnatural force platform targeting and limited numbers of consecutive steps [12]. Numerous studies have sought to overcome this issue by using instrumented treadmills; however, further studies demonstrate the inconsistencies in running gait between over-ground and treadmill running [13]. In order to enhance understanding of running gait, further research in a natural running environment is required [12].
Wearable technology offers an alternative to overcome traditional assessment limitations and is becoming increasingly accepted by runners, coaches and clinicians [14]. Wearables utilising accelerometers, gyroscopes and magnetometers, applied individually or in combination as an inertial measurement unit (IMU), and ‘pressure-sensitive’ insoles allow quantification of a combination of spatiotemporal, kinetic and kinematic variables and have become a viable alternative owing to their portability and affordability [15]. Evidently, wearable devices can quantify various running gait outcomes in any setting (i.e. laboratory or outdoor/real world), which may enhance understanding of running performance, fatigue and injury mechanisms. Although research in this area is emerging, there have been some interesting developments. For example, previous studies have only been able to assess discrete timepoints (‘snap-shots’) throughout a run because of the use of force platforms and video analysis [16–18], whereas with recent improvements in accuracy, sensitivity and computing power, wearables have the potential to be an effective tool to measure the effects of fatigue on running biomechanics in the field, capturing the full duration of a run [19, 20].
Studies have also explored the use of wearable technology to quantify running gait patterns [19–21]. Within those studies, a wide range of protocols have been used indicating a lack of standardised methodology, and it is unclear whether the various wearables are valid or reliable for running gait assessment, which limits running gait interpretation. Coaches, researchers, clinicians or athletes who want to conduct similar running gait assessments or research are left with a choice of numerous protocols, which differ in many aspects. In the process of developing robust protocols, it is often helpful to have evidence-based recommendations. Therefore, the purpose of this review is to provide a comprehensive overview of studies that have used wearable technology for a running gait analysis, in order to provide some guidance regarding the selection of appropriate methodologies. We focused the review on the following: (1) methodologies employed to assess the validity and reliability of wearables for running gait assessment; (2) the application of wearables to assess running gait (i.e. aims, participants, environment, sensor type/location, protocol); (3) commonly reported running gait outcomes and findings; and (4) recommendations for future protocols and research. For the purposes of this review, when reporting our findings, we first provide a comprehensive description of all reviewed studies and then group the reviewed articles into two areas: (A) those that purely examined the validity and reliability of wearables for running gait assessment and (B) application of wearable sensors to assess running gait in different populations to inform performance or clinical outcomes.
Methods
The protocol was prospectively registered on the PROSPERO International Prospective Register for Systematic Reviews website (registration no. CRD42021235527) in February 2021. Design and reporting of this review have followed the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) 2020 statement [22].
Search Strategy and Study Selection Process
A systematic search was conducted to identify potentially relevant papers in the following scientific databases: PubMed, Scopus, Web of Science and SPORTDiscus. The focus of this review was on journal articles published in English that described the use of wearable technology to assess natural running gait in adults. The general search strategy and search terms are described in Table 1. Articles published up to 4 May, 2022 were reviewed. Thereafter, the article selection process consisted of the following steps using the PRISMA guidelines (Fig. 1): (1) an initial title screen for relevant articles was performed by independent authors (SS, RM), once the searched database results had been combined and duplicates had been removed; (2) both the titles and abstracts of the selected articles were reviewed (SS, RM) [a review of the full text was completed if it was not clear from the title or abstract whether the study met the review criteria]; and (3) the authors (SS, RM) read the full texts and selected articles based on the inclusion/exclusion criteria (Table 2). Additionally, the references of all included studies were checked for additional publications that could be included in this review. At all stages of the study selection process, decisions regarding inclusion or exclusion were made by two authors (SS and RM), with a third author (GB) consulted to resolve discrepancies (Table 1 of the Electronic Supplementary Material [ESM]).
Table 1.
Wearable technology |
“Wearable*” OR "Wearable Technology" OR "Wearable Devices" OR "Wearable Sensors" OR “IMU” OR “Inertial Sensor" OR "Inertial Measurement Unit" OR "Gyroscope" OR "Magnetometer" OR Acceleromet* OR "Force Plate" OR "Pressure Plate" OR "Pressure Sensor" TITLE-ABS-KEY |
Running gait | “Running” OR “Jogging” OR “Run” OR “Jog” OR “Sprint” OR “Sprinting” OR “Sprints” OR “Runners” OR “Joggers” OR “Athletics” TITLE-ABS-KEY |
* indicates a wildcard, that the search term can have any ending, TITLE-ABS-KEY indicates a title, abstract and keyword search
Table 2.
Inclusion criteria The articles contain a system for running gait analysis using wearable technology Sensing modality used was a wearable accelerometer, gyroscope, magnetometer or a combination of those (IMU), or pressure insoles Included at least one clearly defined running gait outcome measure, for example: Spatiotemporal (global outcomes of the running gait cycle): e.g. running velocity, acceleration of centre of mass, distance, ground contact time, step length, step frequency (cadence), stance time and flight time Kinematics (description of segmental or joint movement, generally in the three cardinal planes: sagittal, coronal [frontal], transverse planes, without consideration for forces): e.g. ankle dorsiflexion angle, ankle angular velocity or ankle angular acceleration Kinetic (the action of forces in producing or changing motion): e.g. GRF, peak pressure, centre of pressure, braking, impulse, time to peak pressure, pressure time integral, loads, force time integral, contact area and peak tibial acceleration Articles were written in the English language |
Exclusion criteria Book chapters, review papers, case studies (i.e. a study examining one individual), letters, short communications, technical notes, conference proceedings and other non-peer-reviewed literature Studies evaluating the use of wearable technology for determination of step counts, distance, level of physical activity, classification or recognition of types of physical activity Studies focusing on the estimation of physiological measures (e.g. metabolic equivalents), maximal oxygen consumption, examination of external or neuromuscular load, stiffness, vibration and shock absorption of lower limbs Studies aiming to determine running power, stability or economy Studies investigating walking gait variability or regularity Studies not evaluating straight running (e.g. change in direction tasks or cutting manoeuvres) Studies investigating the use of biofeedback or gait retraining (i.e. non-natural running gait) Studies involving use of altered weight conditions (e.g. wearable resistance, anti-gravity treadmills or water-based protocols) Aims to evaluate only computer algorithms, machine learning or statistical approaches Studies evaluating robotic systems, exoskeletons, prosthetics, virtual reality environments and simulated data or models Study involves participants < 8 years of age Study concerns non-human animal subjects |
GRF ground reaction force, IMU inertial measurement unit
Data Extraction
Data were extracted by the author (RM) using a custom form to support standardised extraction (Appendix 1). Data were synthesised into a table format by the author (RM) and a second author (SS) confirmed data entry. Studies were divided into two categories based on the aims of this review: validity and reliability and application. Information extracted from each article included participants, sensor(s), study protocol, reference/additional measure, analysis, outcome measures and key findings.
Results
Search Results
From the 7643 articles identified through the database search, 122 papers met the inclusion criteria. An additional nine articles were identified through a search of reference lists. The complete flow diagram of the screening procedure is shown in Fig. 1. A total of 131 articles were reviewed, with overlapping reports on several topics; specifically, 56 examined validity, 22 examined reliability and 77 investigated the application of wearable technology for a running gait analysis (Fig. 2). Table 2 of the ESM provides key details about each article.
Participant Characteristics
Overall, studies included between three [19] and 187 [23] participants, with the average number of participants being 26 (± 27). The mean age of participants was 28.3 (± 7.0) years. Two studies did not provide any age-related details [21, 24], with three studies providing age ranges only [25–27]. Three studies investigated running gait in participants with an average age over 50 years, none of which performed a comparison of gait patterns across age groups that included older adults [28–30]. Most of the reviewed studies (n = 82) included both male and female participants, with eight examining differences between male and female participants [31–38] and three of these studies finding significant differences between sexes [32, 36, 37]. Thirty-nine studies had male participants only, while only three studies solely examined female participants [39–41], seven studies did not report the sex of participants [21, 42–47] and two studies did not provide a breakdown of the sexes [26, 48]. The primary group of interest was healthy young adults who were recreationally active (Fig. 2), with only six studies investigating injured runners [39, 48–52] (Table 2 of the ESM). Twenty-four studies commented on the FSP of the participants: 18 of these investigated rear-foot strikers [34, 43, 52–70], one study examined rear-foot strikers or neutral FSP [71], and five studies compared running gait parameters between FSPs [23, 40, 52, 68, 69].
Wearable Instrumentation
Inertial Measurement Units
Sixty-two articles stated that they used IMUs; however, 14 of these studies only used the accelerometer capabilities within the IMU [23, 24, 38, 52, 56, 57, 62, 72–78] and 20 studies stated they used the accelerometer and gyroscope components for the data analysis [26, 33, 43, 49, 50, 54, 59, 61, 79–90]. The remaining 27 studies either did not comment on components used [70, 91–98] or implied they used all accelerometer, gyroscope and magnetometer components for the data analysis [19–21, 28, 29, 36, 42, 99–109]. One study used an IMU and a separate one-dimensional accelerometer [61]. One study solely used the gyroscope housed within the IMU, using a sampling frequency of 102.4 Hz and not commenting on the gyroscope range [27]. Across these studies, the most common sampling frequency was 100 Hz (n = 12) [19, 21, 28, 29, 38, 42, 73, 75, 76, 78, 82, 94], but included use of 10 Hz [36] and 2000 Hz [43], and the range of the accelerometers was between ± 2.0 g [36] and ± 200 g [56, 57], with 16 g being the most frequently used (n = 14) [24, 26, 36, 59, 83, 85–89, 99, 100, 102, 103]. The gyroscope ranges (± °/s) used were 1200 (n = 7) [19, 20, 59, 86–89], 2000 (n = 10) [21, 26, 42, 61, 83, 85, 92, 100, 102, 103], 4000 [43] and a variety (n = 1) [36]. A variety of sampling frequencies (4–1000 Hz), accelerometer (2, 4, 6, 8, 16 g) and gyroscope ranges (250, 500, 1000, 2000°/s) were used in one study that used an IMU [36]. Twenty-eight studies reported the weight and/or size of the IMU used, with a large range. IMUs were as small as 6.0 × 1.85 × 0.5 cm [83] up to 8.8 × 5.0 × 1.9 cm [38], and the weight of the IMUs ranged from 4 g [43] to 550 g [92] (Table 2 of the ESM).
Accelerometers Only
Of the 40 studies that stated they used single accelerometer configurations in their methodology, notably, 13 studies did not comment on the dimensions [31, 41, 51, 58, 60, 63, 64, 110–115], one-dimensional accelerometers were used exclusively in four studies [44, 48, 61, 116], one study featured a two-dimensional accelerometer [53], one study used both one-dimensional and 3D accelerometers [117], and 21 studies used 3D accelerometers only (Table 2 of the ESM). Where reported, sampling frequency was between 30 Hz [117] and 1667 Hz [111], with 1000 Hz being the most common (n = 14) and the range of the accelerometers was between ± 0.05–2.0 g [117] and ± 50 g [118], with 16 g being the most frequently used (n = 8). There was a large range in reported sizes of accelerometers from as small as 4.0 × 2.2 × 1.2 cm [119] up to 5.42 × 10.25 × 1.7 cm [120], weighing between 2.5 g [119] and 67 g [121] (Table 3 and Table 2 of the ESM).
Table 3.
Type of wearable technology used | n | References |
---|---|---|
IMU (a combination of sensors in one unit; accelerometer, gyroscope, magnetometer) | 61 | [19–21, 23, 24, 26–29, 33, 36, 38, 42, 43, 49, 50, 52, 54, 56, 57, 59, 62, 70, 72–97, 99–109, 128] |
Accelerometer only | 37 | [30–32, 34, 35, 41, 44, 46, 48, 51, 58, 60, 63, 64, 110–121, 129–139] |
Pressure sensor/insole | 27 | [25, 37, 39, 40, 45, 47, 55, 65–69, 71, 124, 125, 140–151] |
Pressure sensor and accelerometer | 2 | [53, 123] |
Pressure sensor and IMU | 2 | [98, 122] |
IMU and separate accelerometer | 1 | [61] |
Gyroscope | 1 | [127] |
Note: Table refers to how each study classified the technology used, rather than the components used for analysis (i.e. some studies used an IMU, but only analysed data from one element of the unit)
IMU inertial measurement unit
Pressure Sensors/Insoles
Of the 131 articles reviewed, 31 studies focused on pressure or force-sensitive insoles; two of those 31 studies investigated the use of a combined pressure insole and an IMU [98, 122] and a further two studies utilised a pressure insole alongside accelerometers [53, 123]. Of the studies that used pressure insoles, the lowest sampling frequency was 50 Hz [39, 124, 125] and the highest was 1029 Hz [123]; 100 Hz was the most common sampling frequency (n = 13). Seven studies commented on the dimensions of the insoles/sensors [25, 53, 65, 66, 71, 122, 126], with the dimension range from 0.6 × 0.4 × 0.12 cm [65] to 2.55 cm [66] (Table 3 and Table 2 of the ESM).
Gyroscope Only
One study solely used a gyroscope (not encompassed in an IMU), with a sampling frequency of 1500 Hz and a gyroscope range of 250°/s [127] (Table 3 and Table 2 of the ESM).
Number of Sensors
In the reviewed studies that used IMUs, accelerometers or gyroscopes, most studies used one (n = 56) or two (n = 30) sensors. Few studies used more than two sensors, for example, others used three [77, 97], four [62, 74, 117], five [106], seven [103, 109], eight [19, 20, 85], nine [105], 12 [21] or 17 sensors [108]. Where studies used more than one sensor, they were not necessarily the same type of sensor (e.g. one IMU and one accelerometer). For example, two studies sought to compare multiple and single sensor units [93, 130]. Notably, of the studies that used multiple sensors, six sought to investigate the influence of sensor location on outcome measures [74, 85, 93, 101, 128, 130] (Table 2 of the ESM).
Location
The most common inertial wearable locations were the tibia (n = 42), mostly located at the distal anteromedial aspect; shoe (n = 38), varying locations of dorsal aspect/shoelaces/instep, cavity, ankle, heel and fifth metatarsal; and lower back [including sacrum] (n = 24). One study used instrumented earbuds [135], and a further four studies placed wearables on the sternum/chest and these were always in combination with a lower body sensor placement [19, 20, 89, 93]. In the seven studies that used wearables on the upper back, five studies placed the sensor in a harness/vest [21, 38, 105, 121, 129, 130, 133]. Two studies located accelerometers on the wrist, housed in GPS watches [21, 31] and one study mounted 17 sensors onto a lycra suit that participants wore [108] (Fig. 3 and Table 2 of the ESM).
Extracted Features/Outcome Measures
Table 4 provides a full breakdown of reported outcome measures. Outcomes included spatiotemporal, kinematic and kinetic running gait parameters. Among the studies that investigated spatiotemporal parameters, measures of distance included SL (n = 29) and less commonly, vertical oscillation (n = 7), while ground contact time (GCT)/stance time (n = 49), SF (n = 36), and stride or step time (n = 16) were the most frequently reported temporal measures. Measures of acceleration included peak or average acceleration of a particular body segment, most commonly the tibia (n = 28). Where pressure insoles were used, plantar pressure (n = 17), contact area (n = 12) and pressure or force–time integral (n = 10) were the most reported outcomes.
Table 4.
Outcome | Definition | References |
---|---|---|
Spatiotemporal | ||
Ground contact time/stance time n = 49 |
The time between initial foot contact and toe-off for the same foot | [24, 27–29, 33, 37, 40, 42, 49–51, 53–55, 59, 63, 66, 67, 71, 75, 77, 79, 80, 85–87, 89, 90, 92, 95, 96, 99, 101, 105, 107, 110, 120, 123–125, 128, 134, 135, 139, 140, 143, 144, 150, 151] |
Cadence, step/stride frequency/rate n = 36 |
The number of steps or strides taken during a given time | [20, 21, 28, 29, 31, 33–35, 51, 59, 70, 72, 77, 80, 82, 87, 90, 91, 93, 101, 102, 105, 106, 108, 110, 111, 117, 119, 120, 125, 128, 131, 132, 135, 139, 147] |
Step/stride length n = 29 |
The distance between successive points of initial contact of the same foot (stride) or opposite foot (step) | [20, 33–35, 42, 49, 50, 54, 59, 61, 70, 80, 85, 87, 90–92, 98, 100–102, 105, 106, 108, 119, 128, 132, 139, 143] |
Step/stride time n = 16 |
The time between two consecutive heel strikes of the same foot (stride) or opposite foot (step) | [27, 34, 42, 48, 59, 72, 75, 85, 90, 92, 100, 101, 106, 107, 128, 143, 144] |
Foot strike pattern/strike index/foot strike angle n = 15 |
The moment, way or angle when the foot first makes contact with the ground | [21, 26, 33, 40, 59, 68, 69, 80, 84, 87–89, 93, 116, 144] |
Flight time n = 15 |
The time between toe-off from one foot to initial contact of the other foot | [50, 77, 87, 89, 90, 92, 95, 96, 101, 105, 110, 124, 128, 139, 144] |
Acceleration* n = 15 |
The rate of change of the velocity of any segment (excluding tibia) | [19, 35, 38, 62, 64, 73, 74, 78, 93, 97, 116, 119, 121, 129, 130] |
Speed/velocity n = 15 |
The rate of change of position (directional) | [33, 42, 61, 79, 82, 85, 90–92, 98, 100, 102, 104, 106, 129] |
Gait events n = 11 |
Identification of any of the key gait events, e.g. heel strike, toe-off, mid-stance | [27, 36, 59, 63, 71, 78, 92, 98, 130, 144, 150] |
Vertical oscillation n = 9 |
The amount that the torso or COM moves vertically with each step or stride | [20, 21, 28, 29, 59, 90, 93, 134, 139] |
Swing time n = 7 |
The period during which the foot is not in contact with the ground | [27, 39, 59, 89, 124, 125, 139] |
Cycle time n = 4 |
The time taken to complete a single gait cycle (can be measured from any gait event to the same subsequent event on the same foot) | [46, 49, 54, 89] |
Acceleration of centre of mass n = 4 |
The rate of change of the velocity of the centre of mass | [30, 32, 72, 76] |
Step/stride height/foot clearance n = 2 |
The vertical distance obtained during the swing phase | [82, 98] |
Symmetry n = 2 |
Any measure of imbalance between the right and left leg | [133, 137] |
Kinematic | ||
Ankle/foot kinematics n = 19 |
Description of ankle or foot movement in any of the three cardinal planes: sagittal, frontal, transverse planes, without consideration for forces | [19, 20, 33, 43, 49, 50, 54, 73, 80, 85, 87, 89, 94, 103, 105, 107–109, 122] |
Hip/pelvis kinematics n = 11 |
Description of hip or pelvis movement in any of the three cardinal planes: sagittal, frontal, transverse planes, without consideration for forces | [19, 20, 28, 29, 36, 73, 103, 105, 106, 108, 109] |
Knee kinematics n = 10 |
Description of knee movement in any of the three cardinal planes: sagittal, frontal, transverse planes, without consideration for forces | [19–21, 73, 97, 103, 105, 106, 108, 109] |
Trunk kinematics n = 3 |
Description of trunk movement in any of the three cardinal planes: sagittal, frontal, transverse planes, without consideration for forces | [21, 105, 108] |
Kinetic | ||
Derivatives of tibial acceleration n = 28 |
Acceleration of the tibia, including peak positive acceleration, gradient, slope, magnitude, loading rate | [19, 34, 35, 41, 42, 44, 46, 48, 52, 53, 56–58, 60, 61, 64, 74, 111–115, 118, 119, 123, 131, 137, 138] |
Plantar pressure n = 17 |
Pressure = force/area, where force describes the vGRF exerted and area describes the surface area of the foot that is in contact with the ground during running |
[25, 37, 40, 45, 47, 53, 55, 65–69, 143, 145, 146, 148, 151] |
Ground reaction force n = 13 |
The force exerted by the ground on a body in contact with it | [24, 59, 87, 95–97, 123, 130, 136, 139–142] |
Contact area n = 12 |
Area of contact for each or any plantar region | [37, 47, 55, 65–69, 145, 146, 148, 151] |
Pressure or force–time integral n = 10 |
The cumulative effect of pressure or force during a step cycle (area under the pressure–time or force–time curve) | [40, 47, 65, 66, 68, 69, 124, 125, 145, 150] |
Impact n = 9 |
The vertical force observed during the initial contact | [23, 33, 49–51, 54, 80, 93, 147] |
Force n = 8 |
Including rate and magnitude of force development | [39, 40, 47, 90, 104, 124, 149, 150] |
Impulse n = 8 |
A measure of the force applied for a specific time and distance | [34, 45, 47, 123, 124, 140, 142, 149] |
Braking n = 7 |
The force applied to the body that causes it to slow down | [28, 29, 33, 49, 50, 54, 93] |
Load/loading rate n = 5 |
The speed at which you apply forces to the body | [45, 97, 123, 143, 149] |
Centre of pressure n = 2 |
The point of application of the GRF | [125, 141] |
Note: Some studies fall under more than one category
GRF ground reaction force, vGRF vertical ground reaction force
Protocol
Environment
Figure 4 provides an overview of the environments used for running assessments. Most studies (n = 93) used indoor facilities only that primarily involved treadmill running (n = 62). Thirty-two of the reviewed studies investigated running gait in outdoor environments only, and six studies used a combination of both indoor and outdoor testing [21, 53, 55, 60, 91, 143]. Eighteen studies examined running gait over more than one surface [21, 36, 46, 53–55, 60, 66, 67, 80, 87, 91, 105, 118, 125, 131, 143, 151]. The most popular outdoor surface was a running track (n = 16), followed by concrete (n = 13). Five studies did not report the outdoor surface type where testing took place [28, 33, 50, 59, 89] (Fig. 4 and Table 2 of the ESM).
Running Gait Protocol
Duration/Distance
The duration or distance of the analysed running protocol varied greatly by study. One hundred and nine studies analysed running gait in a single day, while 22 studies tested running gait over 2 or more days (Table 2 of the ESM). Protocols were heterogeneous and consisted of:
Analysing a certain number of steps, strides or gait cycles (n = 50). For example, four stages of 100 strides [20], three different footwear types, and five trials each, analysing one right foot strike per trial [115].
Analysing running gait for less or equal to 60 s (n = 42). For example, one 15-s run [56, 74], and 30 trials lasting 30 s (five trials, six conditions, last 30 s of 3-min trials) [71].
Analysing running gait in trials lasting over 1 min and less than 5 min (n = 17) [32, 36, 49, 72, 75, 80, 83, 92, 97, 98, 101, 120, 123, 128, 134]. For example, three sessions each consisting of three 5-min runs at varying speeds [75], seven 100-m runs (outdoor) and seven 60-s runs (treadmill) [91], or 3 min [36].
Analysing gait patterns over longer distances that were more representative of a typical run [i.e. more than 5 min] (n = 22). For example, dissecting a 100-km (ultra-marathon) into ten 10-km segments to investigate the effects of fatigue [31], or analysing one 10-km segment and 15 2-km segments of a marathon race [29]. One study examined various distances; however, different participants were used for each distance [80].
Speed/Pace
There was variation in speed amongst the reviewed studies. Seventy-seven studies used controlled speeds (58 of these controlled at a set pace), with a range from 2 m/s [85, 121] to 26 km/h [117]. Nine studies controlled speed based on individual performance; four of these studies used personal bests as the benchmark [42, 48, 87, 108] and two studies controlled speed based on the participants’ preferred speed (e.g. 85 and 115% preferred speed) [21, 98]. The remaining three studies used physiological measures to determine speed used [19, 70, 111], for example, one study controlled running speed at 2 mmol/L blood lactate [70] (Table 2 of the ESM).
Fifty-five studies examined running gait at self-selected speeds; amongst these studies there were large variations in instructing speed. For example, six studies used race scenarios [20, 29, 31, 59, 82, 89], 14 studies asked participants to run based on perception (e.g. ‘easy run’/‘comfortable’, 75% maximum effort) [33, 44, 49, 54, 79, 99, 101, 105, 125, 128, 136, 141, 147, 148], and a further 11 studies instructed participants to run at maximum effort/speed [74, 86, 88, 90, 99, 100, 104, 105, 129, 132, 133].
Eight studies combined controlled and self-selected speeds [35, 62, 76, 116, 118, 127, 132, 135]. For example, Giandolini et al. examined participants at 10, 12, 14 (female) and 16 km/h (male), maximum aerobic speed and participant’s preferred speed [116]. Where speeds were reported, 46 studies included two or more speeds in their protocol.
Gradient
Sixteen studies commented on the running gradient [28, 34–36, 76, 80, 90, 101, 108, 109, 125, 128, 131, 144, 147, 149]. The majority of studies (n = 5) used a 0% gradient [34, 101, 109, 128, 144] or a 1% gradient (n = 4) on the treadmill [35, 36, 76, 125]. Three studies analysed the effects of different gradients [28, 80, 90], and one study investigated the effects of low and high altitudes on running gait [82].
Footwear
Forty-three studies required participants to wear standardised shod running shoes, of whom 42 utilised the participant’s own running shoes. Two studies tested participants in standardised footwear and in their own footwear [109, 116]. One study tested participants in socks as participants wore the insoles seeking validation wearing tight-fitted socks without shoes to allow a more direct measurement comparison [150]. Lucas-Cuevas et al. used standardised shoes and participants’ own insoles inside the participants’ own running shoes [119]. Forty-six studies did not comment on the footwear used (Table 2 of the ESM).
Validity and Reliability Studies
Fifty-six studies focussed on the validation of wearables for running gait assessments, with 18 also examining the reliability of devices [47, 98, 99, 103, 104, 110, 117, 120, 130, 134, 136, 140, 144, 149]. Eleven studies investigated between-day reliability [34, 47, 98, 106, 117, 120, 122, 140, 142, 144, 149], and three studies solely examined the reliability of wearable technology [87, 134, 138] (Table 2 of the ESM).
Protocols for Validity and Reliability
Participants
Protocols to assess validity and reliability varied greatly. Overall, studies included between five [27] and 100 [95, 96] participants, with the average number of participants being 22 (± 18). The mean age of participants was 26.8 (± 4.5) years. Two studies only provided age ranges [26, 27] and one study did not report age [24]. Sixteen studies used male-only participants [61, 73, 84, 92, 94, 97, 98, 110, 115, 117, 121, 127, 129, 130, 133, 138], two did not report or provide the breakdown of sex [26, 45], and the remaining studies included both male and female participants. All studies included healthy participants and four studies commented on the FSP of the participants [34, 61–63].
Environmental Control
Six validity and/or reliability studies used outdoor environments, with participants running on concrete [79, 87], artificial turf [105] and track [102, 105, 120, 152]. Of the remaining studies that used indoor environments, 31 ran on treadmills, 15 ran over-ground [45, 63, 78, 85, 94, 104, 110, 115, 121, 124, 127, 130, 141, 142, 150] and six ran on a track [61, 99, 100, 129, 133, 136]. No studies used both indoor and outdoor testing or examined running gait over more than one surface. Seven studies commented on the treadmill gradient, one study set the treadmill at a 0, 10 incline and 10% decline [149], two studies used a 1% treadmill gradient [75, 76] and the remaining study stated that no gradient was used (i.e. 0%) [34, 101, 128, 144] (Table 2 of the ESM).
Distance/Time Control
Twenty-three studies focused on analysing a certain number of steps, strides or gait cycles, with the minimum being six foot strikes in total (three trials, two speeds) [127], and a maximum of 200 consecutive left and right steps of a 5-min run [140]. Thirty-three studies investigated running gait over particular distances or times whereby 23 studies analysed running gait for ≤ 60 s. Ten studies analysed running gait in trials lasting > 1 and < 5 min [36, 75, 92, 97, 98, 101, 106, 120, 123, 128]. One study examined gait patterns over a long distance, i.e. up to 4 km [79], and another study did not comment on the number of steps or distance analysed [94]. Within reliability studies, ten analysed test-re-test reliability in a single day (i.e. two sessions in 1 day) [98, 99, 103, 104, 106, 110, 130, 134–136] and 11 studies performed a test-re-test analysis on different days [34, 47, 87, 117, 120, 122, 138, 140, 142, 144, 149]. Those studies that assessed running gait on different days separated testing by a minimum of 24 h [34, 140, 144], and repeated testing within 1 week [120, 149], 2 weeks [47, 87] or 1 month [117, 142], with one study repeating testing at 1 week and 6 months [138] (Table 2 of the ESM).
Speed Control
Thirty-one studies used controlled speeds, with the slowest speed set at 7 km/h [84] and the fastest speed set at 26 km/h [117]. Self-selected speeds were used in 21 studies, with a range from jogging [136] to maximum effort/sprint [86, 99, 100, 102, 104, 105, 129, 133]. An additional five studies combined controlled and self-selected speeds [62, 76, 116, 127, 135]. One study did not comment on the treadmill speeds used [93]. Twenty-seven studies included more than one speed in their protocol; consequently 32 studies examined the effect of running speed on the validity and/or reliability of outcomes obtained (Table 2 of the ESM).
Footwear Control
Most studies did not comment on the footwear used. Thirteen studies standardised the footwear of participants [45, 61, 62, 83, 85, 115, 116, 123, 124, 138, 142, 144, 149], 17 allowed participants to wear their own running shoes [27, 34, 79, 81, 87, 98, 99, 101, 103, 105, 106, 120, 128, 140, 141] and one study required participants to run unshod while wearing insoles under socks [150].
Validation Reference Measures
Twenty-four studies used a laboratory reference of 3D motion capture, 14 used a two-dimensional video analysis [26, 99–101, 105, 110, 116, 123, 128, 129, 133, 136, 142, 144], 17 used force plates [45, 63, 75, 76, 98, 104, 115, 121, 122, 124, 127, 130, 133, 136, 141, 142, 150], 17 used instrumented treadmills [38, 62, 81, 84, 93, 95–97, 103, 106, 123, 135, 140, 144, 149], one study compared measures to an accelerometery system implemented in the treadmill [34], 12 used timing gates/light barriers [61, 63, 86, 99, 100, 102, 104, 105, 110, 115, 127, 129], five compared to other wearable technology [45, 79, 97, 120, 130] and one study used a practitioner observed step count [117] (Table 2 of the ESM).
Validity and Reliability Findings
Foot/Shoe Mounted Devices
Most validity studies (n = 22) assessed shoe-mounted or foot-mounted devices. Reviewed studies showed that wearables could accurately measure stride time [85], speed, oscillation and GCT measures [79, 86, 134], step rate [93], FSP data [26, 81, 84, 116] and SL [100] using shoe or foot mounted wearable technology. Conflicting findings regarding the validity of joint kinematics using shoe-mounted accelerometers were demonstrated [73, 83, 94].
Tibia-Mounted Devices
Fifteen studies showed that tibial-mounted devices are valid for the detection of gait events [63, 127], step length [34], stride/step time [27, 34, 106], SF [34, 93, 106], tibial acceleration [34, 115] and vertical GRF [136]. However, stance and swing times collected using a gyroscope yielded poor-to-moderate agreement with optical motion capture [27]. One study did not consider the validity; however, it demonstrated that an accelerometer had good-to-moderate reliability for peak tibial acceleration at 1 week and 6 months [138].
Lower Back and Waist Mounted Devices
Fifteen articles reported that wearables on the pelvis, waist or lower back are accurate for identifying stride, step, stance duration [106], centre of mass vertical acceleration [75, 76], gait events [78], running speed, SL, SF [102, 106] and kinetic measures [104]. Outcomes such as GCT, flight time and peak vertical GRF have conflicting evidence regarding accuracy and reliability [24, 95, 96, 110, 120].
Upper Back Mounted Devices
Six studies reported that wearables located on the upper back [38, 105, 121, 129, 130, 133] had poor validity for examining gait symmetry [133], predicting GRF [121, 130], measuring velocity [129] and peak or average accelerations [38, 130], as well as poor reliability [130].
Multiple Device and Other Locations
Ten studies used more than one wearable in various locations and demonstrated good validity and reliability regarding spatiotemporal [106, 117] and kinematic and kinetic measures [61, 62, 94, 97, 103, 122, 138]. However, the validity varied between outcome measures (i.e. good accuracy for knee kinematics but poor for ankle kinematics) [93, 103, 105]. Furthermore, the measurement of SF and GCT using an accelerometer embedded in a wireless earbud showed good test–retest reliability, face validity and concurrent validity [135].
Pressure Insole Devices
Eleven studies reported on pressure insoles, with most studies attempting to correlate plantar pressures with GRF [45, 98, 122–124, 140–142, 144, 149, 150]. Findings suggest that insoles are generally valid and reliable for measuring temporal measures [98, 150] and kinetics, such as peak weight acceptance force, impulse and loading rate [124, 140, 142, 150]. However, other studies suggest that the validity of the device is dependent upon the force outcome measure [123, 149, 150]. Overall, the validity and reliability of pressure insoles appears to be system [128, 149], location [85, 101] and speed dependent [27, 99, 102, 127] (Table 2 of the ESM).
Application Studies
The aims of the applied use of wearable technology for running gait analysis fell into broad categories of footwear, clothing (e.g. compression socks, insoles), surface (as mentioned in Sect. 3.7.1), intrinsic factors (e.g. sex, FSP), performance (e.g. experience, speed), fatigue, detecting gait parameters (e.g. relationships between gait parameters) and running injuries (Table 5).
Table 5.
Application | n | References |
---|---|---|
Footwear and clothing | 20 | [37, 41, 43–45, 58, 61, 62, 64, 65, 70, 71, 109, 112–114, 119, 139, 146, 148] |
Surface | 16 | [21, 35, 46, 53–55, 60, 66, 67, 87, 91, 118, 125, 131, 143, 151] |
Intrinsic factors | 15 | [21, 23, 29, 31, 32, 36, 37, 40, 44, 52, 65, 68, 69, 80, 145] |
Performance | 17 | [30–33, 35, 42, 47, 54, 62, 77, 82, 87, 90, 108, 118, 132, 137] |
Fatigue | 13 | [19–21, 29, 31, 42, 59, 72, 88, 89, 111, 132, 143] |
Detecting gait parameters | 12 | [23, 25, 28, 56, 57, 61, 62, 74, 90, 107, 116, 147] |
Running injuries | 6 | [39, 48–52] |
Footwear and Clothing
Eighteen studies investigated the effects of footwear on running gait parameters (Table 5). The majority of studies (n = 17) investigated different types of footwear on spatiotemporal, kinematics and kinetics, and generally the studies were consistent in evidencing that footwear construction has a substantial influence on some running gait outcome measures obtained by wearable technology, for example, significant differences in tibial acceleration [44, 64, 113, 114], SL [70] and loading parameters [37, 43, 45, 62, 65, 71, 148]. In contrast, other authors found no significant differences between shoe conditions [61, 112, 146]. In terms of clothing, Stickford et al. used wearable technology to examine whether wearing graduated lower-leg compression sleeves during exercise evokes changes in running biomechanics and Lucas-Cuevas et al. analysed the acute differences in stride parameters while running on a treadmill with custom-made and prefabricated insoles [119, 139].
Intrinsic Factors
Results of the 15 studies that investigated characteristics of sub-groups or intrinsic factors relating to performance suggested that running patterns were likely individual and task specific (Table 5) [29, 32, 80]. Of all the reviewed studies, five examined differences between male and female individuals [31, 32, 36–38], and three of these studies evidenced significant differences between sexes [32, 36, 37]. There were conflicting findings from the six studies that investigated the effects of FSP on running biomechanics [23, 40, 52, 65, 68, 69]. Key findings argue that no significant differences existed for total maximum force, force–time integral, peak pressure and pressure–time integral, but the total contact area of rear foot strikers was higher than that of non-rear foot strikers [68, 69]. In contrast, other studies demonstrated significant effects of the FSP on tibial acceleration, load rates and plantar pressure at varying plantar regions [23, 40, 52, 65]. Two studies examined morphological differences of the foot and the influence on running gait [44, 145]. Only one study examined the effects of age and anthropometric measures on running gait [31].
Performance
Of the applied studies that focused on performance aspects, 12 examined the influence of speed on running biomechanics [30, 31, 35, 42, 47, 54, 62, 77, 87, 118, 132, 137], four investigated the experience of participants [30, 32, 42, 118], one study examined the effects of altitude [82] and another study investigated gradient [90]. Associations of gait metrics with wellness and session perceived exertion was prospectively examined in one study [33] and specifically running kinematics in triathletes was investigated in another study [108].
Fatigue
Thirteen studies examined the effects of fatigue on running gait (Table 5). The findings are conflicting regarding if changes in running gait are fatigue induced and if this is dependent on experience level. Some suggest that GCT, flight time, trunk anterior–posterior acceleration, peak impact acceleration swing time, swing velocity and foot strike angles show significant changes with fatigue [42, 59, 89]. In contrast, others indicate no changes in spatiotemporal or FSP throughout the run [42, 88, 132]. Burns et al. suggested that SF changes only with speed and not fatigue [31]. Studies suggest that fatigue-induced changes do occur but may be subject specific [19–21, 111, 143] and dependent on experience/skill level [21, 29, 72] or fatigue state [89].
Detecting Gait Parameters
Twelve studies sought to investigate methods that detect or influence running gait outcome measures (Table 5). Studies sought to identify trends [25, 28], examine relationships between running gait parameters [23, 56, 74, 90, 116, 147] or investigate the effects of different methodologies on the outcome measures obtained [57, 61, 62, 107].
Running Injuries
Applied articles focusing on running related injuries (n = 6) sought to evaluate the effects of ankle taping, bracing and fibular reposition taping on running biomechanics [49], and to examine [52] and compare running gait parameters of injured and non-injured runners [39, 48, 50, 51]. Table 6 provides a summary of the most reported protocol features in the reviewed studies.
Table 6.
Protocol feature | Most reported |
---|---|
Participants | Young adults [average age of 28.3 (± 7.0) years] |
Sample size | Average of 26 (± 27) |
Experience | Recreational runner |
Environment | Indoor on a treadmill |
Run duration/distance | Set distance or duration |
Speed/pace | Controlled speed |
Gradient | 0–1% |
Footwear | Standardised shoes |
Type of wearable | Inertial measurement unit at 100 Hz |
Outcome measures | Ground contact time, stride or step length, stride or step frequency and tibial acceleration |
Sensor location | Fixed to the tibia or shoe |
Number of wearables | One |
Usability
Only two studies sought to examine the usability, comfort or wearer’s perceptions of the device; both studies reported the wearables to be comfortable to wear and wearers did not feel affected in their movements [21, 125].
Discussion
This review examined 131 studies that examined the use of wearable technology for running gait analysis. Explicitly, this review reported on: (1) methodologies employed to assess validity and reliability of wearables for running gait assessment; (2) application of wearables to assess running gait; and (3) commonly reported running gait outcomes and findings. This review has demonstrated that the use of wearable technology for running gait assessment is emerging, but further work is required to establish a standardised methodology and the validity or reliability of instrumentation. We have provided a comprehensive overview of wearable technology used for a running gait assessment, and here we provide recommendations for future work.
Wearable Instrumentation
Wearable accelerometers, gyroscopes, IMUs (combined accelerometer, gyroscope and magnetometer) and pressure insoles were used within the reviewed studies to examine running gait. There was generally a lack of consistency across the reviewed studies for several factors that may impact the accuracy of wearable technology used for a running gait assessment, which included the data acquisition rate, data analysis methods, and location and number of wearables. Our findings show that IMUs are the most used wearables for running gait assessments (closely followed by pressure insoles), but most studies have focused on analysing acceleration data only rather than gyroscope and/or magnetometer data [11, 153]. However, evidence suggests that the use of all sensor data within a single IMU can improve the accuracy of movement quantification, particularly orientation [15, 27, 154–156]. Additionally, IMU accuracy for running gait assessments may have been impacted by the huge variation in sampling frequency and operating range between devices (4–1667 Hz, 2–70 g). For example, Mitschke et al. have shown that sampling frequency and operating range can influence the accuracy of outcome measures from IMUs, particularly when they are too low (e.g. < 100 Hz) to detect movement events [61]. Generally, wearables were deployed within the lower limb, with the tibia as the most common site (IMUs and pressure insoles) and most studies used one or two wearables, which may be because of the cost–benefit approach to the device set-up. For example, using multiple wearable technology inevitably costs more but there is a benefit of using multiple devices (that may be combined IMU and pressure insole systems), as more data acquisition allows for an increased accuracy of outcomes (e.g. gait events and spatiotemporal parameters) [157]. Most studies utilised only one wearable (IMU, accelerometer or gyroscope) to collect biomechanical data. However, it is important to consider the practicality and comfort of numerous wearables during natural running. Further research exploring the feasibility and necessity of utilising multiple wearables is required, or whether this can be condensed into one sensor, as this will enhance understanding of the optimal number and placement of wearables to deliver the most pertinent data while enabling a natural running gait.
A major issue in the approach to wearable instrument application is that only two studies examined the usability of the devices through engagement with end users. Wearable technology design and set-up can influence cost, usability and accuracy of the instruments, which may vary depending on the interests of different end users. Studies often lack considerations for the wearer’s physical, psychological and social preferences regarding the technology [158].
Outcome Measures
This review has highlighted that there is a need for a comprehensive assessment and reporting of running gait outcomes, which may require combined ‘multi-modal’ (e.g. combination of IMU and pressure insoles, or accelerometer and pressure insole) wearables to examine running gait. The reviewed studies primarily limited their assessments to only the examination of selective spatiotemporal or kinematic outcomes; specifically SF, SL, tibial acceleration and GCT were the most common outcomes reported. Despite numerous studies establishing that running biomechanics cannot be described based on a single parameter [159–162], most studies focused on singular (or a select few) running gait outcomes, for example, GCT [99], SF [31, 117] or tibial acceleration [56, 118, 138]. Examination of selective parameters may explain in part the inconsistencies across study findings regarding the relationship between running biomechanics, performance and injury [161, 163–166]. Furthermore, comprehensive reporting and consistency in the literature is hindered by the lack of consistent terminology for running gait outcomes, for example, vertical oscillation of COM and stance duration have no relation to RRI [14, 163]. The lack of consensus is further impacted by the fact that there are no ‘gold-standard’ algorithms for the detection of running gait outcomes from wearable sensor set-ups, which likely explains the large volume of outcomes reported in the reviewed studies. In order to derive appropriate algorithms and report findings in a consistent manner, examination of multiple running gait outcomes (i.e. spatiotemporal, kinematic, kinetic) may require a combination of IMUs and pressure sensors, which allows for a comprehensive assessment and may improve outcome accuracy (e.g. vertical GRF is most accurate with the use of pressure sensors or multiple IMUs) [97], but the volume of outcomes may create other methodological issues when examining a finite number of individuals. Despite these limitations, it is pertinent to consider whether such idealist methodologies are clinically and practically feasible within a given context.
Outcomes obtained from small cohorts may not accurately represent the population being studied and may lead to poor statistical power or inconsistency across study findings. This was evidenced within the reviewed studies, as studies primarily investigated running gait in small sample sizes (i.e. n < 30) of young adults, which limits the generalisability of results. For example, Burns et al. demonstrated that the variability of an elite runner’s SF is linked to both speed and fatigue but not to any other characteristics of the runner [31]. In contrast, Reenalda et al. demonstrated that that changes in SF are dependent upon the individual; however, the authors were unable to perform an analysis at a group level because of their limited sample size (n = 3), thus stating that the observed effects of fatigue on running mechanics are confined to the runners analysed only and may not be representative for other runners [20]. The small sample sizes of the reviewed studies are surprising considering there is evidence from walking studies that gait analyses in a natural environment can be conducted on larger scales owing to the advancements in wearable technology [153, 167, 168]. The inclusion of larger sample sizes would facilitate the identification of subgroups of running patterns and the generalisability of the findings into the populations being studied. With the portability and ease of use of wearable technology, future studies should consider monitoring the running gait patterns of larger samples as it will allow for prospective studies and subgroups to be identified. Furthermore, only three studies examined running gait with an average age of over 50 years. However, none of the studies that examined older adults compared outcome measures to younger adults. Burns et al. noted that SF was not related to age; however, their sample only consisted of 20 participants, with an age range of 26–56 years (average age 38.1 ± 6.4 years) [31].
Test Protocols
Differences among study protocols in running gait testing conditions, and the definition of outcome measures, limited the ability to directly compare outcomes across studies. Nonetheless these protocol differences highlight the versatility of wearables, proving they can provide data on realistic and spontaneous running scenarios. Treadmill running was the most common means to evaluate and quantify running gait. Use of a treadmill has the advantage of providing a standardised and reproducible environment where speed can be easily controlled and the required calibration volume for the optical system is considerably reduced. However, running speed is directly related to cardiovascular factors [169] and biomechanical factors [36, 170], and therefore imposing a set speed through a treadmill, rather than allowing runners to select the speed at which they are comfortable running, may produce alterations in running gait. Indeed, Zamparo et al. and Lussiana and Gindre indicated that self-selected speed related to individual energy-saving strategies [170, 171], and Kong et al. suggested that self-selected speeds may eliminate abnormal kinematic patterns [172]. Similarly, despite the known impact of the gradient on running gait, there were very few reviewed studies that examined this [173–175], but some studies did set the treadmill to 1% to compensate for the known differences between treadmill and over-ground running [176]. However, recent research has suggested that there may be more to consider than just the gradient when attempting to replicate over-ground running on the treadmill [177–179].
Protocols need to carefully consider where running is examined with wearables. Treadmill running may not truly reflect natural running behaviour, as Montgomery et al. demonstrated that non-motorised treadmills generate large reductions in peak tibial acceleration, large to very large increases in SF during running when compared to over-ground and motorised treadmills conditions [46]. Therefore, studies have moved beyond the laboratory to more natural running environments (i.e. indoor or outdoor running tracks, or sports venues), which has largely involved the examination of differences in running gait between different types of running surfaces [55, 67, 118, 180]. For example, when Hong et al. compared plantar loads when running on a treadmill, concrete and natural grass, it was shown that running on a treadmill induced lower peak plantar pressure and longer contact time for the total foot and two toe regions [55]. Additionally, several other reviewed studies suggest that running on natural grass may reduce stress on the musculoskeletal system and alter gait compared with running on a more rigid surface such as concrete or asphalt [66, 67, 151]. Similarly, there may be differences in kinematic and kinetic patterns when running on a treadmill compared with over-ground running [14, 53, 55, 67], which is not considered in running assessment protocols. Research has demonstrated that treadmill running may influence lower limb kinematic patterns, landing patterns and sagittal-plane foot strike angles when compared with over-ground running [166]. The differences exhibited can be attributed to several factors, such as treadmill running being unable to mimic instantaneous speed changes that inherently occur during over-ground running, as well as other environmental factors (i.e. irregular surfaces and gradient) [166, 181]. However, some consider treadmill running can be comparable to over-ground running depending on the outcome measures examined [166, 182], which highlights the need to carefully design protocols around specific running features of interest.
Most reviewed studies examined running over less than 1 min, but there was a lack of protocol consistency as studies varied in the number of steps, distance, number of trials and time of trials that they examined in runners, which made it difficult to generalise findings. Because of potential changes in running biomechanics over long runs, analysing an abundance of steps may be beneficial to gain consistency in outcomes [183]. Few authors have addressed a longitudinal running gait analysis, in terms of over an extended time period (e.g. training season) or over longer distances, using wearable technology [19–21, 28, 29, 31, 50, 82]. However, the studies that examined longer runs assessed running in a more natural environment (i.e. on a running track or outside over-ground) that allowed for greater time and distances to be studied compared with treadmill studies. Examining more and longer runs would potentially help divulge data regarding injury mechanisms and performance measures, thus informing practice by determining typical healthy running patterns as well as atypical gait patterns. Similarly, moving towards more realistic running environments that may be expected for commercial wearables was also reflected in the fact that a third of the reviewed studies allowed participants to wear their own running shoes (with a third requiring standardised shoes and the rest not reporting their footwear) [116, 119, 150]. This may signify a move towards attempting to use wearable technology with any individual running footwear, which would replicate commercial use.
Validity and Reliability
Despite their widespread use, fewer than 10% of commercially available wearable technology are validated against an accepted ‘gold standard’ [184]. However, our review suggests that validation of research-grade (non-commercial) wearable technology for running gait assessment has been previously performed. Validity was performed by examining outcomes against ‘gold-standard’ reference measures (e.g. 3D motion capture, two-dimensional video capture, force plates, instrumented treadmills or timing gates). However, differences in laboratory references make it difficult to compare the validation of different wearable technology. For example, García-Pinillos et al. used a high-speed video analysis system (1000 Hz) as a laboratory reference [101], whereas the other studies have compared against the Optojump Next® and video cameras [110], which is largely owing to the expense of laboratory references and the need for data capture in a more ‘natural’ setting (i.e. not in a gait laboratory). Photoelectric cell-based systems (i.e. Optojump Next®) and video measures were considered as adequate proxy systems given their demonstrated good validity in comparison to force platforms [185, 186], but they may not be the best reference system available. Findings from this review would suggest that outcomes from wearable technology for running gait should be validated against a known and accepted laboratory standard reference, such as 3D motion capture and force plates, to establish validity. Wearable technology was generally found to be valid for examining most running gait outcomes, particularly spatiotemporal measures, compared to laboratory references; however, this appears to be dependent upon the location of the wearable, the system and testing protocol (e.g. speeds) used, as well as the gait characteristics obtained [74, 85, 101, 130]. For example, accelerometers, gyroscopes or IMUs on the foot may provide the most accurate derivations of stride measures [99, 101, 128], but caution should be taken when using wearables located at the thoracic spine, as outcomes obtained from such placement appeared inadequate to predict gait symmetry, peak vertical and resultant GRF [38, 121, 129, 130, 133].
Reliability studies of wearables for running gait are less established, as the majority of studies included in this review used one experimental session, but there were several studies that performed test–retest runs within the same session [99, 103, 104, 110, 130, 134, 136] or two sessions on different days [47, 98, 117, 120, 138, 140, 144, 149]. Results demonstrated that outcomes of GCT, flight time and SF are reliable from a foot or lumbar spine placement [110], while foot-worn IMUs can provide reproducible calculations of stride time and SL [61]. Furthermore, placement on the tibia and lumbar and thoracic spine had excellent reliability for determining vertical GRF from accelerometer data [136].
Application of Wearables
The reviewed studies of running gait measured with wearables focussed on several key areas of investigation, specifically injury, fatigue, performance, footwear/surface, methods for gait detection and intrinsic group factors. There were a range of differences in running gait outcomes with a group-based analysis of these factors. Despite differences being found, the specific spatiotemporal, kinematic and kinetic measures that could be used to best investigate certain aspects of running gait (e.g. fatigue, footwear) require further investigation. For example, while there were differences in running gait for those with current or previous injuries [48, 50, 52], there were no studies that examined outcomes for the risk of overuse running injuries.
Fatigue state was examined to understand changes in running mechanics with the potential for injury. However, few studies have exploited the benefits of wearable technology to explore real-world long-distance running sessions characterised by progressive fatigue [20, 21, 29, 82, 163]. Examining runners at varying stages or for the duration of a prolonged run in ecologically valid settings will add to the growing body of evidence using wearable technology to better understand the effects of training and fatigue on changes in running biomechanics [14, 19, 20]. These data can then be used to inform the runner of significant atypical changes in their running gait that may increase risk of RRIs. For example, it is well documented that running-related fatigue can affect running kinetics [187], kinematics [19, 188, 189] and certain spatiotemporal parameters [72, 82, 190]. Strohrmann et al. provides support for numerous cases, categorising changes into three groups: (1) changes that occurred for all runners (e.g. decrease of the heel lift); (2) changes that depended on the runner’s skill level (e.g. increase of foot contact duration); and (3) and changes that were highly dependent on the individual, (e.g. increase in shoulder rotation) [21].
Footwear was examined in a variety of studies, which primarily focussed on differences in running behaviour, with a suggestion that this may lead to injury. For example, Butler et al. evidenced that low-arch runners exhibited a reduction in peak tibial internal rotation in motion-controlled shoes compared with cushioned shoes, whereas high-arch runners experienced a lower peak positive acceleration in the cushioned shoe compared with the motion control shoe [44]. Similar to footwear, running surface has also been studied to examine the potential impact on performance and injury. For example, de Ruiter et al. demonstrated differences in running speed and GCT during outdoor over-ground running on flat terrain, and in varying weather conditions [79]. Studies have generally found that the footwear/surface can influence running gait characteristics, which needs to be carefully considered when making performance and injury risk/recovery decisions.
Intrinsic factors of runners may also impact running gait, with studies typically splitting cohorts into groups based on performance measures (amateur, elite), injury status (i.e. previously injured or not), age (young or old) or sex (male, female). The reviewed studies primarily assessed recreational runners, showing differences in running gait at different levels of performance [32]. For example, novice runners exhibit more pronounced changes in running kinematics in response to fatigue compared with elite runners [189]. Furthermore, Strohrmann et al. stratified runners based on their weekly mileage (experience), but did not find differences in mechanics across these groups [21]. However, not all studies have demonstrated differences between pre-determined intrinsic factor groups for certain outcome measures; for example, Burns et al. demonstrated that years of running experience did not significantly affect SF, and nor did sex [31]. There was a lack of sex-based analyses in the reviewed studies, which was surprising considering the established differences in running mechanics between male and female individuals [191, 192]. For example, Moltó et al. observed no significant differences in pelvic tilt or obliquity between the sexes; however, they did find significant differences in the range of pelvic rotation, with female runners presenting a greater range [36]. Queen et al. also evidenced different loading patterns between sexes and significant differences existed for the foot contact area (middle forefoot), with a maximum force at the lateral forefoot dependent on the shoe type [37]. Findings from Clermont et al. support this, highlighting the importance of separating runners into sex-specific subgroups first when classifying runners based on performance in order to better reflect the kinematic differences between sexes, and this is consistent with previous research [32, 193, 194]. This further highlights the need for a comprehensive assessment of running gait outcomes in order to detect characteristics that may be impacted by intrinsic factors, which would aid performance enhancement and reduce injury risk/occurrence [29, 72, 189].
Practical Implications
This review provides insight into how wearable technology is used for investigating running biomechanics and there is an increasing body of evidence demonstrating its accuracy. Although beyond the scope of this review, with continued and improved use of wearables in runners, biomechanical data may be analysed using advanced techniques, such as machine learning and pattern recognition to enable identifying and tracking running demands without direct supervision. These predictive capabilities would be highly valuable to practitioners to monitor performance and fatigue measures in ecologically valid settings (Table 7).
Table 7.
Future research directions | |
---|---|
Test the validity and reliability prior to performing clinical or applied studies Multimodal wearable technology may give more comprehensive assessment of running gait Studies require an appropriate sample size Using wearable technology during natural outdoor running over time would help confirm laboratory findings or expand upon our knowledge Examine effects of age and sex on running gait outcome measures Report outcome measures as comprehensively as possible Investigate the usability, comfort, as well as the wearer’s physical, psychological and social preferences regarding technology |
Review Limitations
Several limitations of the review must be considered. The search was limited to four databases, albeit integrated by reference lists and hand searches to identify other relevant papers. The use of stringent exclusion criteria may lead to the omission of potentially relevant data. First, articles not published in English pose a language bias regarding article selection. Additionally, sensor modality was restricted to wearable accelerometers, gyroscopes, magnetometers or a combination of those (IMU), or pressure insoles, thus excluding GPS or mobile phone applications, which are common amongst runners [195]. Because of the varying definitions and methods of calculation, studies were also excluded if they focused solely on shock, stiffness or neuromuscular load. We excluded studies that applied interventions as this would influence the gait outcomes and may not be representative of a runner’s typical gait. Finally, because of the size and heterogeneity of the articles included within this review, no meta-analysis or formal quality assessment of each study was performed.
Conclusions
Wearable technology is rapidly becoming a feasible means to quantify running biomechanics in a more ecologically valid manner, with applications in sports medicine and sports performance. This review highlighted that most studies that have examined running gait using wearable sensors have done so with young adult recreational runners, using one IMU sensor (on shoe or tibia), with participants running on a treadmill and reporting outcomes of GCT, SL, SF and tibial acceleration. While this review comprehensively synthesised a large (n = 131) number of previous studies, future studies are needed to determine optimal outcome definitions, sensor site, type of sensor and outcomes of interest for running gait.
Electronic supplementary material
Below is the link to the electronic supplementary material.
Appendix 1 Data extraction form
Study |
General information Title, authors(s), year |
Study characteristics Study type (i.e. validation, reliability, application) |
Participant characteristics Characteristics; age, sex, height, weight, numbers in each group, type (e.g. injured, RFS, recreationally active) |
Wearable Technology Type of device (i.e. IMU, accelerometer, pressure insole) Model and brand of wearable technology (e.g. Shimmer3, Shimmer Inc.) Number of devices used Location of device(s) Device characteristics; accelerometer range, gyroscope range, sampling frequency, dimensions, weight |
Methodology Test protocol Environment (e.g. indoor, outdoor), surface type (e.g. road, treadmill), gradient speed(s) Analysed distance/time/steps |
Outcome measures What was measured using wearable technology? Reference measures or additional tools used (e.g. 3D motion capture, EMG) |
Analysis Statistical techniques used |
Results Main findings according to the study author(s) |
Declarations
Funding
This project received collaborative funding from Northumbria University and DANU Sports Ltd. (Grant number 120162).
Conflict of interest
Rachel Mason, Liam T. Pearson, Gillian Barry, Fraser Young, Oisin Lennon, Alan Godfrey and Samuel Stuart have no conflicts of interest that are directly relevant to the content of this article.
Ethics approval
As this study is a systematic review of publicly accessible information, no ethical approval was required.
Consent to participate
Not applicable. Data included in this study were extracted from prior studies that obtained written prior consent for the publication of de-identified data.
Consent for publication
Not applicable.
Availability of data and material
All data generated or analysed during this study are included in this published article (and its supplementary information files).
Code availability
Not applicable.
Author contributions
All authors contributed to the study conception and design. RM, GB, AG and SS drafted the manuscript and took part in formation of the search strategy. RM, LP and SS completed the data extraction. SS led the research area and supervised the completion of the manuscript. All authors reviewed and edited the final manuscript.
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