Ye Yongyu, Chang Yunbing, Wu Weihao, Liao Tianying, Yu Tao, Chen Chong, Yu Zhengran, Chen Junying, Liang Guoyan
Department of Orthopedic Surgery, Guangdong Provincial People's Hospital (Guangdong Academy of Medical Sciences), Southern Medical University, Guangzhou, China.
School of Software Engineering, South China University of Technology, Guangzhou, China.
Neurospine. 2024 Mar;21(1):46-56. doi: 10.14245/ns.2347326.663. Epub 2024 Mar 31.
Hand clumsiness and reduced hand dexterity can signal early signs of degenerative cervical myelopathy (DCM). While the 10-second grip and release (10-s G&R) test is a common clinical tool for evaluating hand function, a more accessible method is warranted. This study explores the use of deep learning-enhanced hand grip and release test (DL-HGRT) for predicting DCM and evaluates its capability to reduce the duration of the 10-s G&R test.
The retrospective study included 508 DCM patients and 1,194 control subjects. Propensity score matching (PSM) was utilized to minimize the confounding effects related to age and sex. Videos of the 10-s G&R test were captured using a smartphone application. The 3D-MobileNetV2 was utilized for analysis, generating a series of parameters. Additionally, receiver operating characteristic curves were employed to assess the performance of the 10-s G&R test in predicting DCM and to evaluate the effectiveness of a shortened testing duration.
Patients with DCM exhibited impairments in most 10-s G&R test parameters. Before PSM, the number of cycles achieved the best diagnostic performance (area under the curve [AUC], 0.85; sensitivity, 80.12%; specificity, 74.29% at 20 cycles), followed by average grip time. Following PSM for age and gender, the AUC remained above 0.80. The average grip time achieved the highest AUC of 0.83 after 6 seconds, plateauing with no significant improvement in extending the duration to 10 seconds, indicating that 6 seconds is an adequate timeframe to efficiently evaluate hand motor dysfunction in DCM based on DL-HGRT.
DL-HGRT demonstrates potential as a promising supplementary tool for predicting DCM. Notably, a testing duration of 6 seconds appears to be sufficient for accurate assessment, enhancing the test more feasible and practical without compromising diagnostic performance.
手部笨拙和手部灵活性降低可能是退行性颈椎脊髓病(DCM)的早期迹象。虽然10秒握力与放松(10-s G&R)测试是评估手部功能的常用临床工具,但需要一种更便捷的方法。本研究探讨使用深度学习增强型握力与放松测试(DL-HGRT)预测DCM,并评估其缩短10-s G&R测试时长的能力。
这项回顾性研究纳入了508例DCM患者和1194例对照受试者。采用倾向得分匹配(PSM)来最小化与年龄和性别相关的混杂效应。使用智能手机应用程序拍摄10-s G&R测试的视频。利用3D-MobileNetV2进行分析,生成一系列参数。此外,采用受试者操作特征曲线来评估10-s G&R测试在预测DCM方面的性能,并评估缩短测试时长的有效性。
DCM患者在大多数10-s G&R测试参数上表现出损伤。在PSM之前,循环次数达到最佳诊断性能(曲线下面积[AUC]为0.85;敏感性为80.12%;在20次循环时特异性为74.29%),其次是平均握力时间。在按年龄和性别进行PSM后,AUC仍高于0.80。6秒后平均握力时间的AUC最高,为0.83,延长至10秒时趋于平稳,无显著改善,这表明基于DL-HGRT,6秒是有效评估DCM手部运动功能障碍的足够时长。
DL-HGRT显示出作为预测DCM的有前景的辅助工具的潜力。值得注意的是,6秒的测试时长似乎足以进行准确评估,在不影响诊断性能的情况下使测试更可行、更实用。