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A deep learning approach for parkinson’s disease severity assessment

机译:帕金森病严重程度评估的深度学习方法

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Abstract Purpose Parkinson’s Disease comes on top among neurodegenerative diseases affecting 10 million worldwide. To detect Parkinson’s Disease in a prior state, gait analysis is an effective choice. However, monitoring of Parkinson’s Disease using gait analysis is time consuming and exhaustive for patients and physicians. To assess severity of symptoms, a rating scale called Unified Parkinson's Disease Rating Scale is used. It determines mild and severe cases. Today, Parkinson’s Disease severity assessment is made in gait laboratories and by manual examination. These are time consuming and it is costly for health institutions to build and maintain laboratories. By using low-cost wearables and an effective model, aforementioned problems can be solved.Methods We provide a computerized solution for quantifiable assessment of Parkinson’s Disease symptoms severity. By using wearable sensors, our framework can predict exact symptom values to assess Parkinson’s Disease severity. We propose a deep learning approach that utilizes Ground Reaction Force sensors. From sensor signals, features are extracted and fed to a hybrid deep learning model. This model is the combination of Convolutional Neural Networks and Locally Weighted Random Forest.Results Proposed framework achieved 0.897, 3.009, 4.556 in terms of Correlation Coefficient, Mean Absolute Error and Root Mean Square Error, respectively. Proposed framework outperformed other machine and deep learning models. We also evaluated classification performance for disease detection. We outperformed most of the previous studies, achieving 99.5 accuracy, 98.7 sensitivity and 99.1 specificity.Conclusion This is the first study to use a deep learning regression approach to predict exact symptom value of Parkinson’s Disease patients.?Results show that this approach can be effectively employed?as a disease?severity assessment tool using wearable sensors.
机译:摘要 帕金森病在影响全球1000万例的神经退行性疾病中名列前茅。为了检测先前状态下的帕金森病,步态分析是一种有效的选择。然而,使用步态分析监测帕金森病对患者和医生来说既耗时又详尽。为了评估症状的严重程度,使用称为统一帕金森病评定量表的评定量表。它确定轻度和重度病例。今天,帕金森病的严重程度评估是在步态实验室和人工检查中进行的。这些都是耗时的,而且卫生机构建立和维护实验室的成本很高。通过使用低成本的可穿戴设备和有效的模型,可以解决上述问题。方法 我们提供了一种计算机化的解决方案,用于可量化评估帕金森病症状的严重程度。通过使用可穿戴传感器,我们的框架可以预测准确的症状值,以评估帕金森病的严重程度。我们提出了一种利用地面反作用力传感器的深度学习方法。从传感器信号中提取特征并将其馈送到混合深度学习模型中。该模型是卷积神经网络和局部加权随机森林的结合,结果所提出的框架在相关系数、平均绝对误差和均方根误差方面分别达到了0.897、3.009和4.556。所提出的框架优于其他机器学习和深度学习模型。我们还评估了疾病检测的分类性能。我们的表现优于以前的大多数研究,达到了99.5%的准确率、98.7%的敏感性和99.1%的特异性。结论 这是首个使用深度学习回归方法预测帕金森病患者确切症状值的研究。结果表明,这种方法可以有效地用作使用可穿戴传感器的疾病严重程度评估工具。

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