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Predicting Early Stage Drug Induced Parkinsonism using Unsupervised and Supervised Machine Learning

机译:使用无监督和有监督的机器学习预测早期药物诱发的帕金森病

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Drug Induced Parkinsonism (DIP) is the most common, debilitating movement disorder induced by antipsychotics. There is no tool available in clinical practice to effectively diagnose the symptoms at the onset of the disease. In this study, the variations in gait accelerometer data due to the intermittency of tremor at the initial stages is examined. These variations are used to train a logistic regression model to predict subjects with early-stage DIP. The logistic classifier predicts if a subject is a DIP or control with approximately 89% sensitivity and 96% specificity. This paper discusses the algorithm used to extract the features in gait data for training the classifier to predict DIP at the earliest.Clinical Relevance— Diagnosing the disease and the causative drug is vital as the physical health of a patient who is mentally unstable can deteriorate with prolonged usage of the drug. The proposed model helps clinicians to diagnose the disease at the onset of tremors with an accuracy of 93.58%.
机译:药物诱发的帕金森症(DIP)是由抗精神病药诱发的最常见的,使人衰弱的运动障碍。在临床实践中,没有可用的工具可以有效地诊断疾病发作时的症状。在这项研究中,步态加速度计数据的变化是由于震颤在初始阶段的间歇性引起的。这些变化用于训练逻辑回归模型来预测早期DIP患者。逻辑分类器以大约89%的敏感性和96%的特异性预测受试者是DIP还是对照。本文讨论了用于提取步态数据特征的算法,以训练分类器尽早预测DIP。长期使用该药物。所提出的模型可帮助临床医生在震颤发作时诊断出该病,准确率高达93.58%。

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