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. 2021 Sep 26;10(2):1067–1084. doi: 10.1007/s40122-021-00324-2

Table 2.

Summary characteristics of pain studies included in this review

Study Type of pain Study population Use of ML Main findings
Abdollahi 2020 [9] Low back 94 patients, age 20–50 years Classification ML can effectively classify pain intensity based on quantitative kinematic data
Lee 2019 [12] Low back 53 patients, age 18–60 years Classification ML can effectively classify intensity of evoked pain
Liew 2020 [13] Low back 33 patients and 16 controls, age 18–55 years Classification ML can effectively classify pain intensity using electromyographic and kinematic data
Rahman 2018 [15] Various causes 782 patients Manifestation ML can effectively measure and predict pain volatility
Santana 2019 [16] Low back fibromyalgia 60 patients and 98 controls, age 18–55 years Classification ML can effectively classify pain intensity using fMRI data
Snyder 2021 [18] Low back 10 subjects Manifestation ML can classify the relative risk of low back pain due to lifting activities, using gyroscope and accelerometer data
Kimura 2021 [21] Osteoarthritis 23 patients, age 44–80 years Classification ML can effectively classify pain using EEG data
Levitt 2020 [26] Spinal cord injury 37 patients and 20 controls, age ≥ 25 years Classification ML can effectively classify pain using EEG data
Rojas-Mendizabal 2021 [29] Thoracic 256 patients Classification ML can effectively classify pain using demographic and clinical data
Gruss 2015 [25] Evoked heat pain 85 subjects, age 18–65 years Classification ML can effectively classify evoked pain using biopotential data
Santra 2020 [17] Low back 30 patients Diagnosis ML can effectively diagnose the cause of low back pain
Rogachov 2018 [30] Ankylosing spondylitis 71 patients and 62 controls, age 18–61 years Classification ML can effectively classify pain using fMRI data
Grauhan 2021[11] Shoulder 2442 patients Diagnosis ML can effectively diagnose the cause of shoulder pain analysig plain X-rays
Darvishi 2017 [10] Low back 92 patients and 68 controls, age 29–50 years Manifestation ML can predict development of work-related low back pain
Miettinen 2021 [14] Various causes 277 patients, age 18–77 years Classification ML can effectively predict pain based on sleep patterns
Fernandes 2017 [20] Osteoarthritis 1822 subjects, age 40–79 years Manifestation ML can effectively predict pain manifestation in community-based population using clinical data
Lotsch 2020 [22] Rheumatoid arthritis 288 patients, age 18–70 years Manifestation ML can effectively predict pain manifestation using demographic and clinical data
Tighe 2020 [24] Post-surgery 8071 subjects, age > 21 years Manifestation ML can effectively predict acute pain manifestation using clinical data
Tan 2020 [31] Labor 20,716 subjects Manifestation ML can effectively predict pain manifestation during labor using clinical data
Juwara 2020 [28] Cancer 195 subjects, mean age 56 years Manifestation ML can effectively predict manifestation of neuropathic pain using clinical data
Goldstein 2020 [33] Low back pain 65 patients, age 21–70 Manifestation ML can effectively predict pain manifestation based on clinical data
Yang 2018 [32] Sickle cell disease 40 patients Classification ML can predict pain intensity using physiological parameters
Pouromran 2021 [27] Evoked heat pain 87 subjects, age 18–65 years Classification ML can predict pain intensity using electrophysiological parameters
Parthipan 2019 [23] Post-surgery 4306 subjects, mean age 58 years Management ML can effectively predict the required opioids dose for pain management
Ahn 2018 [19] Osteoarthritis 40 patients, age 50–70 years Management ML demonstrated the effect of transcranial direct current stimulation (tDCS) in the management of pain
Wang 2021 [34] Cancer 746 subjects Management ML can effectively predict whether patients should receive local treatment for pain due to bone metastases