Prediction of Clinical Outcomes of Spinal Muscular Atrophy Using Motion Tracking Data and Elastic Net Regression

David Chen, S. Rust, Enju Lin, Simon M. Lin, Leslie Nelson, L. Alfano, L. Lowes
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引用次数: 1

Abstract

Spinal muscular atrophy (SMA) is a common muscle disease that can lead to high rate of infant mortality. It is important to be able to quickly and accurately diagnose SMAs as well as track disease progression throughout the treatment process. This study introduced a framework for deriving movement features from motion tracking data, and applied a regularized regression method to predict the gold standard clinical measures for SMA, the CHOP INTEND Extremities Scores (CIES). Our results showed the CIES could be predicted with good accuracy using derived motion features and Elastic Net regression. An RMSE of 8.5 points on CIES was achieved in both cross-validation and prediction on the held-out set. A high ROC-AUC of 0.91 was achieved for discriminating SMA infants from Controls on both session and subject levels. It was concluded that motion tracking devices could potentially be used as a low-cost yet effective method to assess and monitor infants with SMA.
用运动追踪数据和弹性网回归预测脊髓性肌萎缩症的临床结果
脊髓性肌萎缩症(SMA)是一种常见的肌肉疾病,可导致婴儿死亡率高。重要的是能够快速准确地诊断sma,并在整个治疗过程中跟踪疾病进展。本研究引入了一个从运动跟踪数据中提取运动特征的框架,并应用正则化回归方法来预测SMA的金标准临床测量,CHOP INTEND四肢评分(CIES)。我们的结果表明,使用导出的运动特征和弹性网络回归可以很好地预测CIES。在交叉验证和滞留集预测中,CIES的RMSE均达到8.5分。在会话和受试者水平上区分SMA婴儿和对照组的ROC-AUC均达到0.91。由此得出结论,运动追踪装置可能是一种低成本而有效的评估和监测婴儿SMA的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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