Department of Orthopedics and Traumatology, Faculty of Medicine, Kırşehir Ahi Evran University, Kırşehir, Turkey.
Department of Physiotherapy and Rehabilitation / Prosthetics-Orthotics Physiotherapy, Karamanoglu Mehmetbey University, Karaman, Turkey.
PLoS One. 2024 Apr 17;19(4):e0300044. doi: 10.1371/journal.pone.0300044. eCollection 2024.
Carpal tunnel syndrome (CTS) stands as the most prevalent upper extremity entrapment neuropathy, with a multifaceted etiology encompassing various risk factors. This study aimed to investigate whether anthropometric measurements of the hand, grip strength, and pinch strength could serve as predictive indicators for CTS through machine learning techniques.
Enrollment encompassed patients exhibiting CTS symptoms (n = 56) and asymptomatic healthy controls (n = 56), with confirmation via electrophysiological assessments. Anthropometric measurements of the hand were obtained using a digital caliper, grip strength was gauged via a digital handgrip dynamometer, and pinch strengths were assessed using a pinchmeter. A comprehensive analysis was conducted employing four most common and effective machine learning algorithms, integrating thorough parameter tuning and cross-validation procedures. Additionally, the outcomes of variable importance were presented.
Among the diverse algorithms, Random Forests (accuracy of 89.474%, F1-score of 0.905, and kappa value of 0.789) and XGBoost (accuracy of 86.842%, F1-score of 0.878, and kappa value of 0.736) emerged as the top-performing choices based on distinct classification metrics. In addition, using variable importance calculations specific to these models, the most important variables were found to be wrist circumference, hand width, hand grip strength, tip pinch, key pinch, and middle finger length.
The findings of this study demonstrated that wrist circumference, hand width, hand grip strength, tip pinch, key pinch, and middle finger length can be utilized as reliable indicators of CTS. Also, the model developed herein, along with the identified crucial variables, could serve as an informative guide for healthcare professionals, enhancing precision and efficacy in CTS prediction.
腕管综合征(CTS)是最常见的上肢嵌压性神经病,其病因复杂,包括多种危险因素。本研究旨在通过机器学习技术探讨手部人体测量学指标、握力和捏力是否可作为 CTS 的预测指标。
纳入符合 CTS 症状(n=56)和无症状健康对照(n=56)标准的患者,通过电生理评估进行确认。使用数字卡尺测量手部人体测量学指标,使用数字握力计测量握力,使用捏力计测量捏力。采用四种最常用和有效的机器学习算法进行综合分析,包括全面的参数调整和交叉验证程序。此外,还呈现了变量重要性的结果。
在各种算法中,随机森林(准确率为 89.474%,F1 得分为 0.905,kappa 值为 0.789)和 XGBoost(准确率为 86.842%,F1 得分为 0.878,kappa 值为 0.736)是基于不同分类指标表现最好的选择。此外,根据这些模型的变量重要性计算,最重要的变量被发现是腕围、手宽、手握力、指尖捏力、指关节捏力和中指长度。
本研究结果表明,腕围、手宽、手握力、指尖捏力、指关节捏力和中指长度可作为 CTS 的可靠指标。此外,本研究开发的模型和确定的关键变量可以为医疗保健专业人员提供信息指导,提高 CTS 预测的准确性和效率。