一种通过可穿戴传感器和运动测试对患者亚群进行分类来辅助轻度创伤性脑损伤临床管理的新方法:一项试点研究

J. McGeown, M. Pedersen, P. Hume, A. Theadom, S. Kara, B. Russell
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引用次数: 1

摘要

尽管轻度创伤性脑损伤(mTBI)的损伤机制在不同患者中可能相似,但越来越清楚的是,患者不能作为一个单一的群体进行治疗。已经确定了几个主要症状群(PSC),每个症状群都需要具体和个性化的治疗计划。然而,缺乏支持这些临床决策的客观方法。这项试点研究探讨了在水牛脑震荡跑步机测试(BCTT)期间收集的可穿戴传感器数据与深度学习方法相结合,是否可以准确地对患有生理性PSC和前庭-眼部PSC的mTBI患者进行分类。横断面设计评估了用心电图(ECG)和加速度测量数据训练的卷积神经网络模型。采用留一法,该模型对12例(92%)生理性PSC患者中的11例和5例(60%)前庭-眼部PSC患者进行了分类。在仅使用加速度测量数据的模型中观察到相同的分类精度。我们的试点结果表明,在BCTT等临床测试中添加可穿戴传感器,结合深度学习模型,可能有助于未来mTBI患者的管理决策。我们重申,需要更多的验证来复制当前的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Method to Assist Clinical Management of Mild Traumatic Brain Injury by Classifying Patient Subgroups Using Wearable Sensors and Exertion Testing: A Pilot Study
Although injury mechanisms of mild traumatic brain injury (mTBI) may be similar across patients, it is becoming increasingly clear that patients cannot be treated as one homogenous group. Several predominant symptom clusters (PSC) have been identified, each requiring specific and individualised treatment plans. However, objective methods to support these clinical decisions are lacking. This pilot study explored whether wearable sensor data collected during the Buffalo Concussion Treadmill Test (BCTT) combined with a deep learning approach could accurately classify mTBI patients with physiological PSC versus vestibulo-ocular PSC. A cross-sectional design evaluated a convolutional neural network model trained with electrocardiography (ECG) and accelerometry data. With a leave-one-out approach, this model classified 11 of 12 (92%) patients with physiological PSC and 3 of 5 (60%) patients with vestibulo-ocular PSC. The same classification accuracy was observed in a model only using accelerometry data. Our pilot results suggest that adding wearable sensors during clinical tests like the BCTT, combined with deep learning models, may have the utility to assist management decisions for mTBI patients in the future. We reiterate that more validation is needed to replicate the current results.
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