Oku Takanori, Furuya Shinichi, Lee André, Altenmüller Eckart
College of Engineering and Design, Shibaura Institute of Technology, Tokyo, Japan.
Sony Computer Science Laboratories, Inc., Tokyo, Japan.
Front Neurol. 2024 Jul 2;15:1409962. doi: 10.3389/fneur.2024.1409962. eCollection 2024.
Musician's dystonia is a task-specific movement disorder that deteriorates fine motor control of skilled movements in musical performance. Although this disorder threatens professional careers, its diagnosis is challenging for clinicians who have no specialized knowledge of musical performance.
To support diagnostic evaluation, the present study proposes a novel approach using a machine learning-based algorithm to identify the symptomatic movements of Musician's dystonia.
We propose an algorithm that identifies the dystonic movements using the anomaly detection method with an autoencoder trained with the hand kinematics of healthy pianists. A unique feature of the algorithm is that it requires only the video image of the hand, which can be derived by a commercially available camera. We also measured the hand biomechanical functions to assess the contribution of peripheral factors and improve the identification of dystonic symptoms.
The proposed algorithm successfully identified Musician's dystonia with an accuracy and specificity of 90% based only on video footages of the hands. In addition, we identified the degradation of biomechanical functions involved in controlling multiple fingers, which is not specific to musical performance. By contrast, there were no dystonia-specific malfunctions of hand biomechanics, including the strength and agility of individual digits.
These findings demonstrate the effectiveness of the present technique in aiding in the accurate diagnosis of Musician's dystonia.
音乐家肌张力障碍是一种特定任务的运动障碍,会损害音乐表演中熟练动作的精细运动控制。尽管这种疾病会威胁到职业生涯,但对于没有音乐表演专业知识的临床医生来说,其诊断具有挑战性。
为支持诊断评估,本研究提出一种新颖的方法,使用基于机器学习的算法来识别音乐家肌张力障碍的症状性动作。
我们提出一种算法,该算法使用异常检测方法,通过用健康钢琴家的手部运动学训练的自动编码器来识别肌张力障碍性动作。该算法的一个独特之处在于,它只需要手部的视频图像,这可以通过市售相机获得。我们还测量了手部生物力学功能,以评估外周因素的作用并改善对肌张力障碍症状的识别。
所提出的算法仅基于手部视频片段,就成功识别出音乐家肌张力障碍,准确率和特异性达90%。此外,我们发现控制多个手指的生物力学功能退化,这并非音乐表演所特有。相比之下,手部生物力学没有肌张力障碍特异性故障,包括单个手指的力量和灵活性。
这些发现证明了本技术在辅助准确诊断音乐家肌张力障碍方面的有效性。