A Novel Feature from Instrumented Utensils for Clinical Assessment of Friedreich Ataxia.

Lahiru L Abeysekara, Chandima Kolambahewage, Pubudu N Pathirana, Malcolm Horne, David J Szmulewicz, Louise A Corben
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Abstract

Friedreich Ataxia (FRDA) is an inherited disorder that affects the cerebellum and other regions of the human nervous system. It causes impaired movement that affects quality and reduces lifespan. Clinical assessment of movement is a key part of diagnosis and assessment of severity. Recent studies have examined instrumented measurement of movement to support clinical assessments. This paper presents a frequency domain approach based on Average Band Power (ABP) estimation for clinical assessment using Inertial Measurement Unit (IMU) signals. The IMUs were attached to a 3D printed spoon and a cup. Participants used them to mimic eating and drinking activities during data collection. For both activities, the ABP of frequency components from individuals with FRDA clustered in 0 to 0.2Hz band. This suggests that the ABP of this frequency is affected by FRDA irrespective of the device or activity. The ABP in this frequency band was used to distinguish between FRDA and non-ataxic participants using the Area Under the Receiver-Operating-Characteristic Curve (AUC) which produced peak values greater than 0.8. The machine learning models (logistic regression and neural networks) produced accuracy greater than 80% with these features common to both devices.

用于弗里德里希共济失调临床评估的仪器器具新特征
弗里德里希共济失调症(FRDA)是一种影响小脑和人体神经系统其他区域的遗传性疾病。它会导致运动障碍,影响运动质量并缩短寿命。临床运动评估是诊断和评估严重程度的关键部分。最近的研究对运动的仪器测量进行了研究,以支持临床评估。本文介绍了一种基于平均频带功率(ABP)估计的频域方法,用于使用惯性测量单元(IMU)信号进行临床评估。IMU 安装在 3D 打印的勺子和杯子上。在数据收集过程中,参与者使用它们来模拟进食和饮水活动。在这两种活动中,FRDA 患者的频率成分 ABP 都集中在 0 到 0.2Hz 频段。这表明,无论使用何种设备或进行何种活动,该频率的 ABP 都会受到 FRDA 的影响。利用接收器操作特性曲线下面积 (AUC),该频段的 ABP 可用于区分 FRDA 和非共济失调参与者,其峰值大于 0.8。机器学习模型(逻辑回归和神经网络)的准确率高于 80%,这些特征对两种设备都适用。
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CiteScore
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