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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Predicting and Monitoring Upper-Limb Rehabilitation Outcomes Using Clinical and Wearable Sensor Data in Brain Injury Survivors
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Predicting and Monitoring Upper-Limb Rehabilitation Outcomes Using Clinical and Wearable Sensor Data in Brain Injury Survivors

机译:在脑损伤幸存者中使用临床和可穿戴传感器数据预测和监测中肢康复结果

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Objective: Rehabilitation specialists have shown considerable interest for the development of models, based on clinical data, to predict the response to rehabilitation interventions in stroke and traumatic brain injury survivors. However, accurate predictions are difficult to obtain due to the variability in patients' response to rehabilitation interventions. This study aimed to investigate the use of wearable technology in combination with clinical data to predict and monitor the recovery process and assess the responsiveness to treatment on an individual basis. Methods: Gaussian Process Regression-based algorithms were developed to estimate rehabilitation outcomes (i.e., Functional Ability Scale scores) using either clinical or wearable sensor data or a combination of the two. Results: The algorithm based on clinical data predicted rehabilitation outcomes with a Pearson's correlation of 0.79 compared to actual clinical scores provided by clinicians but failed to model the variability in responsiveness to the intervention observed across individuals. In contrast, the algorithm based on wearable sensor data generated rehabilitation outcome estimates with a Pearson's correlation of 0.91 and modeled the individual responses to rehabilitation more accurately. Furthermore, we developed a novel approach to combine estimates derived from the clinical data and the sensor data using a constrained linear model. This approach resulted in a Pearson's correlation of 0.94 between estimated and clinician-provided scores. Conclusion: This algorithm could enable the design of patient-specific interventions based on predictions of rehabilitation outcomes relying on clinical and wearable sensor data. Significance: This is important in the context of developing precision rehabilitation interventions.
机译:目的:康复专家对基于临床资料的模型的发展有相当兴趣,以预测卒中和创伤性脑损伤幸存者对康复干预的反应。然而,由于患者对康复干预措施的反应的可变性,难以获得准确的预测。本研究旨在调查可穿戴技术与临床数据的使用,以预测和监测恢复过程,并评估个人基础对治疗的响应性。方法:使用临床或可穿戴传感器数据或两者的组合,开发了基于高斯过程回归的算法以估计康复结果(即功能能力比分)或两者的组合。结果:与临床医生提供的实际临床评分相比,基于临床数据的临床数据预测康复结果的康复结果与0.79相比,但未能对各个人观察到的干预措施的响应性的变异性。相比之下,基于可穿戴传感器数据的算法产生了Pearson的康复结果估计,Pearson的相关性0.91并更准确地将各个反应建模的康复。此外,我们开发了一种新的方法来使用受约束的线性模型组合从临床数据和传感器数据衍生的估计。这种方法导致Pearson在估计和临床医生提供的分数之间的0.94的相关性。结论:该算法可以基于依赖于临床和可穿戴传感器数据的康复结果的预测来实现患者特异性干预措施的设计。意义:这在制定精确康复干预措施的背景下很重要。

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