挖掘人员流动性以量化绩效状态

Minh Nguyen, Zaki Hasnain, Ming Li, T. Dorff, David Quinn, S. Purushotham, Luciano Nocera, P. Newton, P. Kuhn, J. Nieva, C. Shahabi
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引用次数: 4

摘要

人体活动能力在各种生物医学背景下被广泛研究,应用于临床康复、疾病诊断、健康风险预后和一般绩效评估。在本文中,我们提出了ATOMHP(客观衡量人类表现的分析技术)Kinect:一个客观量化人类表现的系统,使用微软Kinect作为单个摄像头传感器来捕捉人类的移动性。我们通过研究一组接受不同治疗方案的癌症患者,并根据定性临床测试为其分配绩效评分,来探索这种非侵入性绩效评估系统的可行性。ATOM-HP Kinect是一款临床可用的系统,它由Kinect工具、临床数据收集、数据质量验证和移动性特征提取组成,可用于下游性能分析。基于临床病例研究的初步结果表明,ATOM-HP Kinect可以量化运动学参数的变化,这些特征与临床测量的危险因素相关,可用于疾病的早期预测,或决定治疗方案的修改。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining Human Mobility to Quantify Performance Status
Human mobility has been studied extensively in various biomedical contexts with applications in clinical rehabilitation, disease diagnosis, health risk prognosis, and general performance assessments. In this paper, we present ATOMHP (Analytical Technologies to Objectively Measure Human Performance) Kinect: a system to objectively quantify human performance using the Microsoft Kinect as a single camera sensor to capture human mobility. We explore the viability of this noninvasive performance assessment system by studying a cohort of cancer patients undergoing various therapy regimens who are assigned a performance score based on a qualitative clinical test. The ATOM-HP Kinect is a clinically usable system which consists of tools for Kinect, clinical data collection, data quality validation, and mobility feature extraction, which can be used for downstream analysis of performance. Preliminary results based on the clinical case study indicate that ATOM-HP Kinect can quantify changes in kinematic parameters, and that these features are correlated with clinically measured risk factors which could be used for early prediction of diseases, or making decision on treatment modification.
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