基于视频的帕金森氏症临床运动状态可视化跟踪和量化。

IF 6.7 1区 医学 Q1 NEUROSCIENCES
Daniel Deng, Jill L Ostrem, Vy Nguyen, Daniel D Cummins, Julia Sun, Anupam Pathak, Simon Little, Reza Abbasi-Asl
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引用次数: 0

摘要

帕金森病(PD)患者运动症状进展的量化对于评估疾病进展和优化治疗干预(如多巴胺能药物和脑深部刺激)至关重要。累积的启发式临床经验已经确定了与帕金森病严重程度相关的各种临床症状,但这些症状既无法客观量化,也没有经过严格验证。机器学习(ML)带来的基于视频的客观症状量化是一种潜在的解决方案。然而,基于视频的诊断工具往往由于技术昂贵且难以获取而在实施过程中遇到困难,而且典型的 "黑盒 "ML 实施并不是为临床可解释性而量身定制的。在此,我们发布了一个全面的运动学数据集,并开发了一个基于视频的可解释框架,可根据 MDS-UPDRS 第三部分指标预测帕金森病运动症状严重程度的高低,从而满足这些需求。这种数据驱动的方法验证了典型运动特征并对其进行了稳健的量化,同时还发现了以前未曾注意到的与临床严重程度相关的新的临床见解,包括小指运动、下肢和步态的轴向特征。我们的框架由消费级设备(如智能手机、平板电脑和数码相机)录制的回顾性、单视角、长达数秒的视频实现,因此无需专业设备。遵循可解释的 ML 原则,我们的框架通过整合(1)以预定义的数字运动特征为指导的自动、数据驱动的运动学度量评估,(2)双域(身体和手)运动学特征的组合,以及(3)稀疏性诱导和稳定性驱动的 ML 分析与简单可解释的模型,加强了稳健性和可解释性。这些要素确保了所提出的框架能够量化对临床有意义的运动特征,这些特征对多模型预测和临床分析都非常有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Interpretable video-based tracking and quantification of parkinsonism clinical motor states.

Interpretable video-based tracking and quantification of parkinsonism clinical motor states.

Quantification of motor symptom progression in Parkinson's disease (PD) patients is crucial for assessing disease progression and for optimizing therapeutic interventions, such as dopaminergic medications and deep brain stimulation. Cumulative and heuristic clinical experience has identified various clinical signs associated with PD severity, but these are neither objectively quantifiable nor robustly validated. Video-based objective symptom quantification enabled by machine learning (ML) introduces a potential solution. However, video-based diagnostic tools often have implementation challenges due to expensive and inaccessible technology, and typical "black-box" ML implementations are not tailored to be clinically interpretable. Here, we address these needs by releasing a comprehensive kinematic dataset and developing an interpretable video-based framework that predicts high versus low PD motor symptom severity according to MDS-UPDRS Part III metrics. This data driven approach validated and robustly quantified canonical movement features and identified new clinical insights, not previously appreciated as related to clinical severity, including pinkie finger movements and lower limb and axial features of gait. Our framework is enabled by retrospective, single-view, seconds-long videos recorded on consumer-grade devices such as smartphones, tablets, and digital cameras, thereby eliminating the requirement for specialized equipment. Following interpretable ML principles, our framework enforces robustness and interpretability by integrating (1) automatic, data-driven kinematic metric evaluation guided by pre-defined digital features of movement, (2) combination of bi-domain (body and hand) kinematic features, and (3) sparsity-inducing and stability-driven ML analysis with simple-to-interpret models. These elements ensure that the proposed framework quantifies clinically meaningful motor features useful for both ML predictions and clinical analysis.

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来源期刊
NPJ Parkinson's Disease
NPJ Parkinson's Disease Medicine-Neurology (clinical)
CiteScore
9.80
自引率
5.70%
发文量
156
审稿时长
11 weeks
期刊介绍: npj Parkinson's Disease is a comprehensive open access journal that covers a wide range of research areas related to Parkinson's disease. It publishes original studies in basic science, translational research, and clinical investigations. The journal is dedicated to advancing our understanding of Parkinson's disease by exploring various aspects such as anatomy, etiology, genetics, cellular and molecular physiology, neurophysiology, epidemiology, and therapeutic development. By providing free and immediate access to the scientific and Parkinson's disease community, npj Parkinson's Disease promotes collaboration and knowledge sharing among researchers and healthcare professionals.
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