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. 2014 Dec 11;9(12):e113467. doi: 10.1371/journal.pone.0113467

Association between the Number of Injuries Sustained and 12-Month Disability Outcomes: Evidence from the Injury-VIBES Study

Belinda J Gabbe 1,2,*, Pam M Simpson 1, Ronan A Lyons 1,2,3, Shanthi Ameratunga 4, James E Harrison 5, Sarah Derrett 6,7, Suzanne Polinder 8, Gabrielle Davie 6, Frederick P Rivara 9
Editor: Hemachandra Reddy10
PMCID: PMC4263479  PMID: 25501651

Abstract

Objective

To determine associations between the number of injuries sustained and three measures of disability 12-months post-injury for hospitalised patients.

Methods

Data from 27,840 adult (18+ years) participants, hospitalised for injury, were extracted for analysis from the Validating and Improving injury Burden Estimates (Injury-VIBES) Study. Modified Poisson and linear regression analyses were used to estimate relative risks and mean differences, respectively, for a range of outcomes (Glasgow Outcome Scale-Extended, GOS-E; EQ-5D and 12-item Short Form health survey physical and mental component summary scores, PCS-12 and MCS-12) according to the number of injuries sustained, adjusted for age, sex and contributing study.

Findings

More than half (54%) of patients had an injury to more than one ICD-10 body region and 62% had sustained more than one Global Burden of Disease injury type. The adjusted relative risk of a poor functional recovery (GOS-E<7) and of reporting problems on each of the items of the EQ-5D increased by 5–10% for each additional injury type, or body region, injured. Adjusted mean PCS-12 and MCS-12 scores worsened with each additional injury type, or body region, injured by 1.3–1.5 points and 0.5 points, respectively.

Conclusions

Consistent and strong relationships exist between the number of injury types and body regions injured and 12-month functional and health status outcomes. Existing composite measures of anatomical injury severity such as the NISS or ISS, which use up to three diagnoses only, may be insufficient for characterising or accounting for multiple injuries in disability studies. Future studies should consider the impact of multiple injuries to avoid under-estimation of injury burden.

Introduction

More than one injury can be sustained in a single event. Concurrent multiple injuries increase the risk of mortality, and the need for timely and multidisciplinary care for multiple injured patients is well defined [1]. While there is obvious potential for multiple injuries to increase the risk of long-term and permanent disability, the relationship between multiple injuries and disability outcomes has not been clearly established.

Numerous studies have investigated the association between anatomical measures of injury severity such as the Injury Severity Score (ISS) or New Injury Severity Score (NISS), which combine up to three injuries into a composite measure of severity based on a “threat to life” scale attributed to each diagnosis, and measures of longer term disability following injury [2], [3], [4], [5], [6]. Meerding et al investigated the number of injuries as a predictor of longer term function but their approach was limited to up to three recorded injuries [7]. Previous burden of disease studies have almost exclusively used the principal diagnosis or “worst injury” approach to generate estimates of years lived with disability (YLDs) [8], [9], with the assumption that the burden is accounted for by the first-reported injury. Other studies have focused only on multiply injured patients precluding comparison of isolated injury and multiple injury outcomes [4], [10]. Further studies have assessed the influence of injuries sustained in addition to a specific injury type on outcome, for example, whether polytraumatised traumatic brain injury (TBI) or spinal cord injury (SCI) patients experience poorer outcomes than patients with single injury diagnoses of TBI or SCI [11], [12], [13].

Improved understanding of how the number of injuries sustained relates to disability outcomes is needed to better characterise long term injury disability, inform the methodology of burden of injury studies, and reduce the potential for under-estimating the burden of injury. The aim of this study was to establish the association between the number of injuries sustained and disability outcomes 12-months post-injury for hospitalised patients.

Methods

Setting

This study is part of the Validating and Improving injury Burden Estimates Study (Injury-VIBES), which is described in detail elsewhere [14]. The primary aim of Injury-VIBES is to provide valid estimates of the burden of non-fatal injury using empirical data, through pooled analysis of de-identified, patient-level data from participants in six prospective cohort studies. The project was approved by the Monash University Human Research Ethics Committee for the provision and analysis of de-identified (anonymised) data from each participating cohort.

Participants

Adult (18 years and over) cases from the Australian Victorian State Trauma Registry (VSTR) [15], [16] and Victorian Orthopaedic Trauma Outcomes Registry (VOTOR) [17], New Zealand Prospective Outcomes of Injury study (POIS) [18], and the USA National Study on Costs and Outcomes of Trauma (NSCOT) [19] were extracted for analysis. The remaining Injury-VIBES participating cohorts were not included here because the number of injuries recorded for each patient was capped, preventing full analysis of the number of injuries sustained. A summary of the data contributed by each source to the analysis of each disability outcome is provided in Table 1.

Table 1. Summary of participating datasets.

Dataset Study timeframe Inclusion Criteria Number of participants Percentage with multiple injuries Outcome Follow-up rate at 12-months
National Study on Costs and Outcomes of Trauma (USA) Jul 2001–Nov 2002 18–85 years of age, ≥1 Abbreviated Injury Scale injury with a severity score >2 3920 GBDa injury types 61%, ICD-10 body regions 71% GOS-Eb 83%
SF-12c 77%
Victorian Orthopaedic Trauma Outcomes Registry (Australia) Mar 2007–Mar 2011 Admitted to one of four hospitals with an orthopaedic injury >24 hours 15457 GBD injury types 42%, ICD-10 body regions 48% GOS-Ea 89%
≥18 years of age SF-12b 53%
EQ-5D 62%
Victorian State Trauma Registry (Australia) Jan 2007–Mar 2011 Injury Severity Score >15, ICU admission >24h, Urgent Surgery 7752 GBD injury types 76%, ICD-10 body regions 88% GOS-E EQ-5D a 83% 55%
≥18 years of age SF-12b 52%
Prospective Outcome of Injury Study (NZ) Dec 2007–Aug 2009 18–64 years, Accident Compensation Corporation entitlement claim, Admitted to hospital within 7 days of injury 711 GBD injury types 32%, ICD-10 body regions 38% EQ-5D 80%
a

GBD, Global Burden of Disease study;

b

GOS-E, Glasgow Outcome Scale – Extended;

c

SF-12, 12-item Short Form Health Survey.

Definition of multiple injuries

Two approaches were used to define multiple injuries:

  1. Number of 2010 Global Burden of Disease (GBD) study injury health states represented

    International Classification of Disease 10th Revision (ICD-10) diagnosis codes were mapped to the 23 injury types distinguished in health states of the 2010 GBD study [20]. Indicator variables were generated for the presence or absence of each 2010 GBD injury health state. The number of injury types represented was used to define the presence of a single or multiple injuries.

  2. Number of ICD-10 body regions injured

    ICD-10 diagnosis codes were mapped to variables indicating the presence or absence of an injury in each of the 12 ICD-10 body regions (head; neck; thorax; abdomen, lower back, lumbar spine and pelvis; shoulder and upper arm; elbow and forearm; wrist and hand; hip and thigh; knee and lower leg; ankle and foot; burns; all other Chapter 19 T-prefix injuries). The number of ICD-10 body regions represented was used to define the presence of a single or multiple injuries.

The NSCOT cases were mapped from the 9th revision of the ICD (ICD-9-CM) codes to ICD-10 for consistency with the other datasets. For all datasets, the ICD diagnosis codes were obtained from the routine hospital discharge datasets of each relevant jurisdiction.

Outcome measures

As all datasets followed up participants at 12-months post-injury, this time point was used for analysis. The methods used for follow-up are described in detail elsewhere for the VSTR and VOTOR [16], NSCOT [19] and POIS [18]. All studies collected outcomes at 12 months using standardised telephone interviews. The VSTR, VOTOR and NSCOT allowed interview by proxy where patients were unable to participate in the interview due to their physical or cognitive state. Three measures of outcome were used in this study:

  1. The Glasgow Outcome Scale – Extended (GOS-E) is used to measure patient function on a scale from 1 (death) to 8 (upper good recovery) [21]. While the GOS-E was developed for measuring head injury outcomes, the GOS-E is recommended for use in major trauma populations as it can be administered by proxy, includes most domains from the World Health Organization's International Classification of Functioning, Disability and Health [22], and is responsive to change in the non-head injured population [23]. The GOS-E was dichotomised for analysis with a score of 7 or higher representing a “good recovery” and a score less than 7 representing a “poor recovery”. A good recovery is where participants have returned to pre-injury levels of function with minimal or no injury-related sequelae. Dichotomization is the most widely used approach to analysis of the GOS-E [24]. Although it has been argued that analysing the GOS-E as an ordinal scale yields improved statistical efficiency over dichotomisation, the purpose of this study was to assess the presence or absence of disability, rather than the scale of disability, supporting dichotomisation of the GOS-E,

  2. The EQ-5D is a generic measure of health status which includes five items (mobility, self-care, usual activities, pain or discomfort, anxiety or depression) [25]. In a published consensus statement, the EQ-5D has been recommended for use in injury outcome studies [26] and has been widely used in injury studies [27]. Responses to each EQ-5D item were dichotomised into “no problems” and “some/severe problems” for analysis, an approach that has been widely used previously [28], and was consistent with the aim of this study to assess the presence or absence of disability.

  3. The 12-item Short Form Health Survey (SF-12) is a generic measure of health status which has component summary scores for mental (MCS-12) and physical (PCS-12) health [29].

Data analysis

Categorical variables were summarised using counts and percentages; continuous variables with means and standard deviations (SD). Independent t-tests were used to compare groups where the variable was normally distributed and chi-square statistics were used for categorical variables. The numbers of 2010 GBD injury types, and ICD-10 body regions, represented were categorised for analysis (1, 2, 3, 4, 5, 6, 7 and 8+); patients with a single injury was the reference category. Age was categorised for analysis. For the GOS-E and EQ-5D items, the association between number of injuries and outcome was modelled using modified Poisson regression with a robust variance estimator [30]. Linear regression was used for the PCS-12 and MCS-12 outcomes. All models were adjusted for the age and sex of the patient, and the contributing source of data. Adjusted relative risks (ARR) and the corresponding 95% confidence intervals (CI) are presented for the modified Poisson models, and adjusted mean differences and 95% CI for the linear models. All analyses were performed using Stata Version 13 (StataCorp, College Station, TX, USA).

Results

Overview of participants

There were 27,840 eligible participants. The proportion of cases by number of injuries sustained using the two definitions of multiple injuries is shown in Fig. 1. Sixty-two percent (17,348) of the cases had sustained more than one GBD 2010 injury type, and 54% (n = 15,005) had sustained injuries to more than one ICD-10 body region. The profile of participants by multiple injury status is shown in Table 2. Age ranged from 18-110 years (mean: 52.8 years; SD: 22.6); and 59% were male. The mean age of multiply injured patients was younger than single injury cases, and a higher proportion was male and injured in transport-related events (Table 2). The GBD injury health types with the lowest prevalence of multiple injuries (i.e. the GBD types for which it was most often the case that only one injury diagnosis code was in the record) were dislocation of the hip, knee or shoulder, hip fracture, open wounds and superficial injuries, and fracture of the radius or ulna (S1 Table in S1 File). The GBD injury health types that most often had codes for additional injury types as well as the one recorded as the principal diagnosis (i.e. were most often multiple injury cases) were nerve injury, severe chest injury, spinal cord injury and fracture of the sternum, rib or face.

Figure 1. Proportion of cases by number of injuries sustained.

Figure 1

Table 2. Profile of participants according to multiple injury status.

Population descriptor Number of GBDa injury types Number of ICD-10 body regions injured
Single injury Multiple injuries Test statistic Single injury Multiple injuries Test statistic
(n = 10,492) (n = 17,348) (p-value) (n = 12,835) (n = 15,005) (p-value)
Age Mean (SD) years 59.2 (22.7) 49.0 (21.7) t = 37.5 (<0.001) 57.1 (22.8) 49.1 (21.8) t = 29.9 (<0.001)
Sex N (%) Χ2 1 = 1000 (<0.001) Χ2 1 = 621 (<0.001)
Male 4942 (47.1) 11571 (66.7) 6597 (51.4) 9918 (66.1)
Female 5550 (52.9) 5777 (33.3) 6238 (48.6) 5087 (33.9)
Cause of injuryb N (%) Χ2 2 = 3900 (<0.001) Χ2 2 = 4400 (<0.001)
Falls 7234 (69.0) 6090 (35.1) 5836 (64.4) 5059 (33.7)
Transport 1318 (12.6) 8210 (47.4) 1793 (14.0) 7735 (51.6)
Other 1933 (18.4) 3038 (17.5) 2767 (21.6) 2204 (14.7)
a

GBD, Global Burden of Disease study;

b

Data missing for n = 17 participants.

Functional outcome – GOS-E good recovery (GOS-E>6)

Valid GOS-E scores at 12-months post-injury were recorded for 86.4% of participants. The follow-up rates were 83% for NSCOT, 83% for VSTR, and 89% for VOTOR cases. The proportion of multiply injured patients was similar for the patients followed up (53.8%) and those lost to follow-up (58.7%) (S2 Table in S2 File). The relative risks of poor recovery were significantly higher for all patients in the multiple injury categories, compared to the group sustaining a single injury, and increased as the number of injuries increased (Table 3). Treating the number of injuries as a continuous covariate, the relative risk of a poor functional recovery increased 8% (ARR 1.08, 95% CI: 1.07, 1.09) for each additional 2010 GBD injury type, and 7% (ARR 1.07, 95% CI: 1.06, 1.08) for each additional ICD-10 body region injured.

Table 3. Association between number of injuries sustained and a poor recovery (GOS-E<7) at 12-months.

Number of injuries GBDa injury types ICD-10 body regionsc injured
N N (%) ARRb (95% CI) p-value N N (%) ARR (95% CI) p-value
poor recovery poor recovery
1 (reference) 8907 4689 (52.6) 1.00 10829 5646 (52.1) 1.00
2 5866 3114 (53.1) 1.06 (1.03, 1.10) <0.001 5241 2865 (54.7) 1.08 (1.05, 1.11) <0.001
3 3589 1924 (53.6) 1.12 (1.08, 1.16) <0.001 2886 1624 (56.3) 1.14 (1.10, 1.19) <0.001
4 2192 1258 (57.4) 1.25 (1.20, 1.31) <0.001 1936 1109 (57.3) 1.21 (1.16, 1.27) <0.001
5 1285 783 (60.9) 1.35 (1.28, 1.43) <0.001 1194 739 (61.9) 1.28 (1.22, 1.35) <0.001
6 736 496 (67.4) 1.49 (1.40, 1.58) <0.001 736 508 (69.0) 1.44 (1.36, 1.52) <0.001
7 422 316 (74.9) 1.64 (1.54, 1.74) <0.001 368 266 (72.3) 1.48 (1.38, 1.59) <0.001
8+ 446 377 (84.5) 1.83 (1.73, 1.92) <0.001 253 200 (79.1) 1.57 (1.47, 1.68) <0.001
a

GBD, Global Burden of Disease study;

b

ARR, adjusted relative risk compared to the reference group (1 injury)– adjusted for age, gender and data source (study);

c

ICD-10 body regions: head; neck; thorax; abdomen, lower back, lumbar spine and pelvis; shoulder and upper arm; elbow and forearm; wrist and hand; hip and thigh; knee and lower leg; ankle and foot; burns; all other T-prefix injuries.

EQ-5D

Valid EQ-5D responses were recorded for 60.1% of participants. The follow-up rates were 55% for VSTR, 62% for VOTOR and 80% for POIS, reflecting the late inclusion of the EQ-5D to the VSTR and VOTOR follow-up protocols. The proportion of multiply injured patients was similar for the patients followed up (51.6%) and those lost to follow-up (54.6%) (S2 Table in S1 File). The relative risk of reporting problems on the usual activities and anxiety/depression items at 12-months was significantly higher for patients in the multiple injury categories, compared to the group sustaining a single injury, and increased as the number of injuries sustained increased (Table 4). This pattern was also noted for the mobility item of the EQ-5D when multiple injuries was defined using the number of ICD-10 body regions injured, and for the anxiety/depression item when considering multiple GBD 2010 injury types (Table 4). For both definitions of multiple injury, the relative risks of reporting problems with self-care were only significantly higher for cases sustaining six or more injuries, when compared to the single injury group (Table 4).

Table 4. Association between number of injuries sustained and reporting limitations on each EQ-5D item at 12-months.

EQ-5D Item Number of injuries GBDa injury types ICD-10 body regionsc injured
N N (%) ARRb (95% CI) p-value N N (%) ARR (95% CI) p-value
With problems With problems
Mobility 1 (reference) 5845 2871 (49.1) 1.00 6956 3255 (46.8) 1.00
2 3566 1592 (44.6) 1.02 (0.98, 1.06) 0.42 3156 1498 (47.5) 1.08 (1.04, 1.12) <0.001
3 2068 865 (41.8) 1.09 (1.03, 1.14) 0.002 1630 696 (42.7) 1.08 (1.02, 1.14) 0.01
4 1245 519 (41.7) 1.24 (1.16, 1.33) <0.001 1088 442 (40.6) 1.17 (1.09, 1.26) <0.001
5 708 279 (39.4) 1.25 (1.13, 1.38) <0.001 708 310 (43.8) 1.27 (1.16, 1.39) <0.001
6 412 196 (47.6) 1.55 (1.39, 1.73) <0.001 421 213 (50.6) 1.58 (1.42, 1.76) <0.001
7 251 132 (52.6) 1.77 (1.56, 2.01) <0.001 241 128 (53.1) 1.70 (1.50, 1.93) <0.001
8+ 272 196 (72.1) 2.59 (2.35, 2.85) <0.001 167 108 (64.7) 2.02 (1.78, 2.30) <0.001
Self-care 1 (reference) 5835 1864 (32.0) 1.00 6944 2079 (29.9) 1.00
2 3559 943 (26.5) 0.95 (0.90, 1.00) 0.07 3150 886 (28.1) 1.01 (0.95, 1.07) 0.73
3 2067 480 (23.2) 0.96 (0.89, 1.04) 0.37 1628 392 (24.1) 0.99 (0.91, 1.07) 0.78
4 1242 255 (20.5) 1.03 (0.92, 1.15) 0.62 1089 225 (20.7) 1.03 (0.92, 1.16) 0.60
5 709 143 (20.2) 1.10 (0.93, 1.29) 0.27 708 151 (21.3) 1.06 (0.92, 1.16) 0.45
6 412 104 (25.2) 1.39 (1.16, 1.66) <0.001 421 109 (25.9) 1.44 (1.21, 1.71) <0.001
7 252 68 (27.0) 1.56 (1.27, 1.92) <0.001 242 64 (26.5) 1.53 (1.23, 1.91) <0.001
8+ 273 105 (38.5) 2.48 (2.08, 2.96) <0.001 167 56 (33.5) 1.85 (1.46, 2.35) <0.001
Usual activities 1 (reference) 5834 3092 (53.0) 1.00 6944 3628 (52.3) 1.00
2 3561 1916 (53.8) 1.09 (1.05, 1.13) <0.001 3151 1751 (55.6) 1.10 (1.06, 1.14) <0.001
3 2060 1111 (53.9) 1.17 (1.12, 1.23) <0.001 1623 909 (56.0) 1.17 (1.11, 1.23) <0.001
4 1243 689 (55.4) 1.30 (1.23, 1.38) <0.001 1087 596 (54.8) 1.23 (1.16, 1.30) <0.001
5 707 400 (56.6) 1.36 (1.27, 1.47) <0.001 708 414 (58.5) 1.31 (1.22, 1.41) <0.001
6 412 256 (62.1) 1.52 (1.39, 1.65) <0.001 420 266 (63.3) 1.46 (1.35, 1.58) <0.001
7 252 171 (67.9) 1.68 (1.53, 1.85) <0.001 242 153 (63.2) 1.48 (1.33, 1.63) <0.001
8+ 273 211 (77.3) 1.97 (1.82, 2.13) <0.001 167 129 (77.3) 1.76 (1.61, 1.93) <0.001
Pain/discomfort 1 (reference) 5783 2895 (50.1) 1.00 6886 3410 (49.5) 1.00
2 3537 1886 (53.3) 1.11 (1.06, 1.15) <0.001 3126 1738 (55.6) 1.15 (1.10, 1.19) <0.001
3 2053 1145 (55.7) 1.22 (1.16, 1.28) <0.001 1620 924 (57.0) 1.21 (1.15, 1.27) <0.001
4 1235 711 (57.6) 1.32 (1.24, 1.40) <0.001 1084 648 (59.8) 1.31 (1.24, 1.39) <0.001
5 710 421 (60.0) 1.40 (1.31, 1.51) <0.001 702 425 (60.5) 1.34 (1.26, 1.44) <0.001
6 412 264 (64.4) 1.53 (1.41, 1.66) <0.001 419 282 (67.3) 1.52 (1.41, 1.63) <0.001
7 250 183 (72.9) 1.76 (1.61, 1.92) <0.001 238 162 (68.1) 1.54 (1.40, 1.69) <0.001
8+ 271 207 (76.7) 1.86 (1.71, 2.02) <0.001 166 123 (74.1) 1.66 (1.50, 1.83) <0.001
Anxiety/depression 1 (reference) 5755 1994 (34.7) 1.00 6855 2411 (35.2) 1.00
2 3529 1338 (37.9) 1.12 (1.06, 1.18) <0.001 3112 1244 (40.0) 1.14 (1.08, 1.20) <0.001
3 2041 864 (42.3) 1.27 (1.19, 1.35) <0.001 1614 696 (43.1) 1.22 (1.15, 1.31) <0.001
4 1229 551 (44.8) 1.37 (1.26, 1.48) <0.001 1081 458 (42.4) 1.22 (1.13, 1.33) <0.001
5 703 339 (48.2) 1.46 (1.33, 1.61) <0.001 703 340 (48.4) 1.38 (1.27, 1.51) <0.001
6 410 211 (51.5) 1.54 (1.38, 1.72) <0.001 417 221 (53.0) 1.50 (1.36, 1.66) <0.001
7 251 127 (50.6) 1.52 (1.32, 1.73) <0.001 238 111 (46.6) 1.32 (1.14, 1.53) <0.001
8+ 268 150 (56.0) 1.67 (1.48, 1.89) <0.001 166 93 (56.0) 1.53 (1.33, 1.77) <0.001
a

GBD, Global Burden of Disease study;

b

ARR, adjusted relative risk compared to the reference group (1 injury) – adjusted for age, gender and data source (study);

c

ICD-10 body regions: head; neck; thorax; abdomen, lower back, lumbar spine and pelvis; shoulder and upper arm; elbow and forearm; wrist and hand; hip and thigh; knee and lower leg; ankle and foot; burns; all other T-prefix injuries.

For each additional 2010 GBD injury type, the adjusted relative risk of reporting problems on the EQ-5D items increased by 10% (ARR 1.10, 95% CI: 1.09, 1.12) for mobility, 8% (ARR 1.08, 95% CI: 1.06, 1.10) for self-care, 9% (ARR 1.09, 95% CI: 1.08, 1.10) for usual activities, 9% (ARR 1.09, 95% CI: 1.08, 1.10) for pain/discomfort, and 8% (ARR 1.08, 95% CI: 1.07, 1.10) for anxiety/depression. Similarly, for each additional ICD-10 body region injured, the adjusted relative risk of reporting problems on the EQ-5D items increased by 8% (ARR 1.08, 95% CI: 1.07, 1.10) for mobility, 5% (ARR 1.05, 95% CI: 1.03, 1.07) for self-care, 7% (ARR 1.07, 95% CI: 1.06, 1.08) for usual activities, 8% (ARR 1.08, 95% CI: 1.07, 1.09) for pain/discomfort, and 7% (ARR 1.07, 95% CI: 1.06, 1.08) for anxiety/depression.

SF-12

Valid PCS-12 and MCS-12 scores were collected for 56.4% of participants. The proportion of multiply injured patients was similar for the patients followed-up (57.1%) and those lost to follow-up (51.1%) (S2 Table in S1 File). The adjusted mean PCS-12 score declined significantly as the number of injuries sustained increased (Fig. 2). While the adjusted mean MCS-12 score for each of the multiple injury categories was lower than the single injury group, the degree of decline largely plateaued after more than three injuries (Fig. 2). For each additional 2010 GBD injury type or ICD-10 body region injured, the adjusted mean PCS-12 score decreased 1.5 (95% CI: 1.3, 1.6) or 1.3 (95% CI: 1.2, 1.5) points, respectively. The adjusted mean MCS-12 score decreased by 0.5 (95% CI: 0.4, 0.6) points for each additional injury sustained, regardless of definition used.

Figure 2. Adjusted difference in mean MCS-12 and PCS-12 scores by number of injuries sustained (adjusted for age, gender and data source (study)).

Figure 2

Discussion

Despite the potential for multiple injuries to lead to increased disability after injury, there is limited published evidence of the association between the number of injuries sustained and longer term functional and quality of life outcomes. We found a strong association between the number of GBD injury types, and ICD-10 body regions injured, and disability outcomes at 12-months. There was a large difference in the proportion of patients experiencing a poorer outcome when comparing single injury cases to the multiply injured, particularly for measures of physical functioning and pain. The difference between cases with eight or more types of injuries, or body regions injured, and cases with a single injury averaged more than 20% for the GOS-E (27–32%) and for the EQ-5D mobility (18–23%), usual activities (22–24%), and pain/discomfort (19–27%) outcomes.

A challenge for this study was defining multiple injuries in the absence of an agreed definition in the literature. One definition of multiple injuries, or polytrauma, is when injuries occur simultaneously in multiple parts of the body [31], while others consider injuries to two or more simultaneous diagnostic groups as multiple injuries [1]. We used both approaches separately, and the findings were consistent regardless of whether ‘multiple injuries’ was defined as the number of ICD-10 body regions with an injury or the number of 2010 GBD injury types represented.

In previous injury burden studies, including the 2010 GBD study, only the first injury was considered when calculating non-fatal burden, with the underlying assumption that additional injuries do not contribute further burden warranting measurement. In our study of hospitalised injury cases, multiple injuries were common; a finding consistent with Aharonson-Daniel et al who reported that 52% of hospitalised trauma patients in Israel had more than one diagnosis and 39% had a diagnosis in more than one body region [1]. For most outcomes in our study, the relative risk of poorer outcomes at 12-months post-injury was higher for all multiple injury categories, suggesting that even one additional injury has important implications for disability outcomes.

Previous studies have predominantly relied on the ISS or NISS to characterise multiple injuries for predicting disability outcomes [2], [3], [4], [5], [6], with conflicting findings3–6. As the ISS uses a “threat to life scale” and includes a maximum of three injuries, it does not provide a comprehensive representation of the injury profile. Injuries that could represent a high risk of disability (e.g. fractures) may not contribute to the ISS/NISS calculation if three or more life-threatening injuries are present. Yet once the threat of death has passed, some injuries contributing to the ISS or NISS (e.g. ruptured spleen) may result in little subsequent disability compared to injuries such as a fracture. Meerding et al found that the number of injuries sustained was a significant predictor of functioning up to 9-months post-injury, but like the ISS, only a maximum of three injuries were considered in their study [7]. One in five hospitalised injury patients in our study had sustained more than three injuries, and as the number of injuries increased, the risk of a poorer outcome also increased.

Few studies have assessed the relationship between the presence of multiple injuries and a range of functional or quality of life outcomes. Holtslag et al studied 359 major trauma patients and failed to find a significant association between the ISS and the GOS or with each of the EQ-5D items 12–18 months post-injury [3]. Similarly, in a study of 105 patients with a NISS >15, Soberg et al found that the NISS was not a predictor of any of the sub-scales of the SF-36 at one or two years post-injury [32]. In contrast, Ringburg et al studied 246 severely injured trauma patients and found that the ISS was a significant predictor of EQ-5D mobility, usual activities and self-care items, but was not an important predictor of anxiety/depression or pain/discomfort 12-months after injury [5]. We found a strong dose-response relationship, between the number of injury types, and body regions injured, and pain and the more “physical” measures of disability such as a GOS-E good recovery, EQ-5D mobility and usual activities, and the PCS-12, a finding mostly consistent with Ringburg et al. Notably, there was a similar but less pronounced pattern of increased risk of poorer outcome with the presence of multiple injuries for the EQ-5D anxiety/depression item and the MCS-12 (Table 4 and Fig. 2).

The study strengths were the very large study sample, relative heterogeneity in the spectrum of injury, and multiple measures of disability at a consistent time point post-injury. Using data from injured persons from several countries, health jurisdictions, and datasets was both a strength and a limitation. The inclusion criteria of the datasets differed, ranging from any admission to hospital or treatment for greater than 3 hours in the emergency department (POIS), to an in-hospital stay of at least 24 hours (VOTOR) to serious injuries only based on ISS and other criteria (VSTR and NSCOT), and this is reflected in the proportion of cases with multiple injuries across the datasets. Data from the contributing studies were also collected over different calendar years. Acknowledging this variability, the analysis for this study was limited to adult patients only who were hospitalised due to injury, and all models were adjusted for data source to ensure estimates were independent of inherent differences in time and setting. The overall pattern of the association between the number of injuries and outcomes was consistent for each dataset when analysed separately, though the precision of the estimates was lower due to the smaller number of cases in each individual study (data tables available on request).

Follow-up rates were consistently high for the GOS-E outcome across all studies, as this instrument can be administered reliably by proxy, but there was greater loss to follow-up for the EQ-5D and the SF-12 (Table 1). The late inclusion of the EQ-5D in the VSTR and VOTOR study protocols also reduced the number of cases available for analysis of this outcome, though should introduce no additional bias to the study as the follow-up rates for this instrument since inclusion were comparable to the POIS. The lower SF-12 completion rates are explained partly by the high prevalence of serious traumatic brain injury in the NSCOT and VSTR cases, while both the VSTR and VOTOR completion rates were impacted by the inclusion of a higher proportion of cases in older adults where direct interviews with patients can be challenging due to higher prevalence of pre-existing cognitive deficits and general frailty. In addition, the VSTR and VOTOR include all cases and do not exclude patients with characteristics such as extreme age, frailty, cognitive deficit, inability to communicate in English, or the lack of a fixed address. The SF-12 cannot be administered validly to many such cases. Therefore, while the wide inclusion criteria of VSTR and VOTOR contributed to relatively low SF-12 follow-up and could have introduced responder bias, the cases that were followed up are predominantly those where the SF-12 can be administered validly. Previous studies have shown higher loss to follow-up in less severely injured patients but the reasons for loss to follow-up, and whether they are related to better or poorer outcomes, have not been clearly established [7], [33], [34]. Only the 12-month follow-up data are presented in this paper, but the findings were consistent at 6 and 24-months post-injury. Six-month data were available for POIS, VOTOR and the VSTR studies, and 24-month data were available for the POIS and VSTR datasets (S2–S6 Tables in S1 File).

It was beyond the scope of this paper to establish the level of disability associated with particular patterns of injuries and this remains an area for further investigation. Finally, the definitions of multiple injuries used in our study excluded multiple diagnoses within a single ICD-10 body region or GBD injury type (e.g. bilateral fractures, etc.). Further investigation of the impact of multiple diagnoses within a single body region on disability outcomes is needed.

Overall, in this study of more than 20,000 injured participants, there was a consistent and strong relationship between the number of injuries sustained and 12-month functional and health status outcomes. Each additional injury type or body region injured increased the risk of a poor functional outcome by 5–10%. Existing composite measures of anatomical injury severity such as the NISS or ISS may be insufficient to characterise and account for multiple injuries in disability studies. Future studies should consider the impact of multiple injuries to avoid under-estimation of injury burden. As the use of functional and quality of life measures increases in routine practice, studies will need to take multiple injuries into account in any analyses comparing system or centre performance.

Supporting Information

S1 File

S1–S6 Tables. S1 Table. Number and percentage of GBD 2010 injury types represented according for each principal diagnosis injury health state. S2 Table. Comparison of cases lost to follow-up and cases successfully followed up at 12 months post-injury. S3 Table. Association between number of ICD-10 body regions injured and 6-month disability outcomes. S4 Table. Association between number of 2010 GBD injury types represented and 6-month disability outcomes. S5 Table. Association between number of ICD-10 body regions injured and 24-month disability outcomes. S6 Table. Association between number of 2010 GBD injury types represented and 24-month disability outcomes.

(DOCX)

Acknowledgments

The authors would like to acknowledge the project associate investigators (Kavi Bhalla, Clare Bradley, John Langley, Juanita Haagsma, and Theo Vos) and research team (Emma McDermott).

Data Availability

The authors confirm that, for approved reasons, some access restrictions apply to the data underlying the findings. Data are from the Victorian State Trauma Registry (VSTR), Victorian Orthopaedic Trauma Outcomes Registry (VOTOR), National Study on Costs and Outcomes of Trauma (NSCOT), and the Prospective Outcome of Injury Study (POIS). The data used in this study are not freely available in the manuscript, supplemental files, or in a public repository due to ethical constraints and/or governance arrangements. Data can be requested from the data custodians via the relevant authors listed here: Victorian State Trauma Registry and Victorian Orthopaedic Trauma Outcomes Registry: Prof Belinda Gabbe (belinda.gabbe@monash.edu); National Study on Costs and Outcomes of Trauma: Prof Fred Rivara (fpr@uwashington.edu); Prospective Outcomes of Injury Study: Assoc Prof Sarah Derrett (sarah.derrett@otago.ac.nz).

Funding Statement

The Injury-VIBES project is funded by the National Health and Medical Research Council (NHMRC) of Australia (GNT1021861, www.nhmrc.gov.au). The POIS study is funded by the Health Research Council of New Zealand (2007–2013, www.hrc.govt.nz), and was co-funded by the Accident Compensation Corporation, New Zealand (2007–2010, acc.co.nz). The Victorian State Trauma Registry is a Department of Health, State Government of Victoria and Transport Accident Commission (TAC) funded project (www.tac.vic.gov.au, www.health.vic.gov.au). The Victorian Orthopaedic Trauma Outcomes Registry is funded by the TAC through the Institute for Safety, Compensation and Recovery Research (www.iscrr.com.au). The NSCOT was funded by the National Center for Injury Prevention and Control of the Centers for Disease Control and Prevention (Grant R49/CCR316840, www.cdc.gov/Injury) and the National Institutes of Health (Grant #R01/AG20361, www.nih.gov). Belinda Gabbe is supported by a Career Development Fellowship from the NHMRC (APP1048731). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

S1 File

S1–S6 Tables. S1 Table. Number and percentage of GBD 2010 injury types represented according for each principal diagnosis injury health state. S2 Table. Comparison of cases lost to follow-up and cases successfully followed up at 12 months post-injury. S3 Table. Association between number of ICD-10 body regions injured and 6-month disability outcomes. S4 Table. Association between number of 2010 GBD injury types represented and 6-month disability outcomes. S5 Table. Association between number of ICD-10 body regions injured and 24-month disability outcomes. S6 Table. Association between number of 2010 GBD injury types represented and 24-month disability outcomes.

(DOCX)

Data Availability Statement

The authors confirm that, for approved reasons, some access restrictions apply to the data underlying the findings. Data are from the Victorian State Trauma Registry (VSTR), Victorian Orthopaedic Trauma Outcomes Registry (VOTOR), National Study on Costs and Outcomes of Trauma (NSCOT), and the Prospective Outcome of Injury Study (POIS). The data used in this study are not freely available in the manuscript, supplemental files, or in a public repository due to ethical constraints and/or governance arrangements. Data can be requested from the data custodians via the relevant authors listed here: Victorian State Trauma Registry and Victorian Orthopaedic Trauma Outcomes Registry: Prof Belinda Gabbe (belinda.gabbe@monash.edu); National Study on Costs and Outcomes of Trauma: Prof Fred Rivara (fpr@uwashington.edu); Prospective Outcomes of Injury Study: Assoc Prof Sarah Derrett (sarah.derrett@otago.ac.nz).


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