{"title":"High-Dimensional Analysis of Finger Motion and Screening of Cervical Myelopathy With a Noncontact Sensor: Diagnostic Case-Control Study.","authors":"Takafumi Koyama, Ryota Matsui, Akiko Yamamoto, Eriku Yamada, Mio Norose, Takuya Ibara, Hidetoshi Kaburagi, Akimoto Nimura, Yuta Sugiura, Hideo Saito, Atsushi Okawa, Koji Fujita","doi":"10.2196/41327","DOIUrl":null,"url":null,"abstract":"<p><strong>Background: </strong>Cervical myelopathy (CM) causes several symptoms such as clumsiness of the hands and often requires surgery. Screening and early diagnosis of CM are important because some patients are unaware of their early symptoms and consult a surgeon only after their condition has become severe. The 10-second hand grip and release test is commonly used to check for the presence of CM. The test is simple but would be more useful for screening if it could objectively evaluate the changes in movement specific to CM. A previous study analyzed finger movements in the 10-second hand grip and release test using the Leap Motion, a noncontact sensor, and a system was developed that can diagnose CM with high sensitivity and specificity using machine learning. However, the previous study had limitations in that the system recorded few parameters and did not differentiate CM from other hand disorders.</p><p><strong>Objective: </strong>This study aims to develop a system that can diagnose CM with higher sensitivity and specificity, and distinguish CM from carpal tunnel syndrome (CTS), a common hand disorder. We then validated the system with a modified Leap Motion that can record the joints of each finger.</p><p><strong>Methods: </strong>In total, 31, 27, and 29 participants were recruited into the CM, CTS, and control groups, respectively. We developed a system using Leap Motion that recorded 229 parameters of finger movements while participants gripped and released their fingers as rapidly as possible. A support vector machine was used for machine learning to develop the binary classification model and calculated the sensitivity, specificity, and area under the curve (AUC). We developed two models, one to diagnose CM among the CM and control groups (CM/control model), and the other to diagnose CM among the CM and non-CM groups (CM/non-CM model).</p><p><strong>Results: </strong>The CM/control model indexes were as follows: sensitivity 74.2%, specificity 89.7%, and AUC 0.82. The CM/non-CM model indexes were as follows: sensitivity 71%, specificity 72.87%, and AUC 0.74.</p><p><strong>Conclusions: </strong>We developed a screening system capable of diagnosing CM with higher sensitivity and specificity. This system can differentiate patients with CM from patients with CTS as well as healthy patients and has the potential to screen for CM in a variety of patients.</p>","PeriodicalId":87288,"journal":{"name":"JMIR biomedical engineering","volume":" ","pages":"e41327"},"PeriodicalIF":0.0000,"publicationDate":"2022-10-03","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11041434/pdf/","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"JMIR biomedical engineering","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.2196/41327","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Background: Cervical myelopathy (CM) causes several symptoms such as clumsiness of the hands and often requires surgery. Screening and early diagnosis of CM are important because some patients are unaware of their early symptoms and consult a surgeon only after their condition has become severe. The 10-second hand grip and release test is commonly used to check for the presence of CM. The test is simple but would be more useful for screening if it could objectively evaluate the changes in movement specific to CM. A previous study analyzed finger movements in the 10-second hand grip and release test using the Leap Motion, a noncontact sensor, and a system was developed that can diagnose CM with high sensitivity and specificity using machine learning. However, the previous study had limitations in that the system recorded few parameters and did not differentiate CM from other hand disorders.
Objective: This study aims to develop a system that can diagnose CM with higher sensitivity and specificity, and distinguish CM from carpal tunnel syndrome (CTS), a common hand disorder. We then validated the system with a modified Leap Motion that can record the joints of each finger.
Methods: In total, 31, 27, and 29 participants were recruited into the CM, CTS, and control groups, respectively. We developed a system using Leap Motion that recorded 229 parameters of finger movements while participants gripped and released their fingers as rapidly as possible. A support vector machine was used for machine learning to develop the binary classification model and calculated the sensitivity, specificity, and area under the curve (AUC). We developed two models, one to diagnose CM among the CM and control groups (CM/control model), and the other to diagnose CM among the CM and non-CM groups (CM/non-CM model).
Results: The CM/control model indexes were as follows: sensitivity 74.2%, specificity 89.7%, and AUC 0.82. The CM/non-CM model indexes were as follows: sensitivity 71%, specificity 72.87%, and AUC 0.74.
Conclusions: We developed a screening system capable of diagnosing CM with higher sensitivity and specificity. This system can differentiate patients with CM from patients with CTS as well as healthy patients and has the potential to screen for CM in a variety of patients.
背景:颈椎脊髓病(CM)会导致手部笨拙等多种症状,通常需要进行手术治疗。颈椎病的筛查和早期诊断非常重要,因为有些患者对自己的早期症状毫无察觉,直到病情严重时才去看外科医生。10 秒钟手握和松开测试通常用于检查是否存在 CM。该测试非常简单,但如果能客观地评估 CM 所特有的运动变化,则更有助于筛查。之前的一项研究利用非接触式传感器 Leap Motion 分析了 10 秒钟握手和松手测试中的手指运动,并开发了一套利用机器学习诊断 CM 的高灵敏度和特异性系统。然而,之前的研究存在局限性,即系统记录的参数较少,且无法将 CM 与其他手部疾病区分开来:本研究旨在开发一种能以更高灵敏度和特异性诊断 CM 的系统,并将 CM 与常见的手部疾病腕管综合征(CTS)区分开来。然后,我们用可记录每个手指关节的改进型 Leap Motion 对该系统进行了验证:方法:共招募了 31、27 和 29 名参与者,分别分为 CM 组、CTS 组和对照组。我们使用 Leap Motion 开发了一套系统,可记录参与者在尽可能快地握住和松开手指时手指运动的 229 个参数。我们使用支持向量机进行机器学习,开发了二元分类模型,并计算了灵敏度、特异性和曲线下面积(AUC)。我们建立了两个模型,一个用于诊断CM组和对照组中的CM(CM/对照组模型),另一个用于诊断CM组和非CM组中的CM(CM/非CM模型):CM/对照组模型指数如下:灵敏度 74.2%,特异性 89.7%,AUC 0.82。CM/non-CM模型指数如下:灵敏度71%,特异度72.87%,AUC 0.74:我们开发了一种能够诊断 CM 的筛查系统,其灵敏度和特异性均较高。该系统可将 CM 患者与 CTS 患者以及健康患者区分开来,并有可能对各种患者进行 CM 筛查。