Postgraduate Program in Health and Biological Sciences, Federal University of Vale do São Francisco (UNIVASF), Av José Sá de Maniçoba s/n, Petrolina, 56304-917, Brazil.
Postgraduate Program in Psychology, Federal University of Vale do São Francisco (UNIVASF), Petrolina, Brazil.
Sci Rep. 2023 Dec 16;13(1):22426. doi: 10.1038/s41598-023-49617-w.
Dyskinesias are non preventable abnormal involuntary movements that represent the main challenge of the long term treatment of Parkinson's disease (PD) with the gold standard dopamine precursor levodopa. Applying machine learning techniques on the data extracted from the Parkinson's Progression Marker Initiative (PPMI, Michael J. Fox Foundation), this study was aimed to identify PD patients who are at high risk of developing dyskinesias. Data regarding clinical, behavioral and neurological features from 697 PD patients were included in our study. Our results show that the Random Forest was the classifier with the best and most consistent performance, reaching an area under the receiver operating characteristic (ROC) curve of up to 91.8% with only seven features. Information regarding the severity of the symptoms, the semantic verbal fluency, and the levodopa treatment were the most important for the prediction, and were further used to create a Decision Tree, whose rules may guide the pharmacological management of PD symptoms. Our results contribute to the identification of PD patients who are prone to develop dyskinesia, and may be considered in future clinical trials aiming at developing new therapeutic approaches for PD.
运动障碍是不可预防的异常不自主运动,是使用多巴胺前体左旋多巴治疗帕金森病(PD)的长期治疗的主要挑战。本研究应用机器学习技术对来自帕金森病进展标志物倡议(PPMI,迈克尔·J·福克斯基金会)的数据进行分析,旨在确定易发生运动障碍的 PD 患者。我们的研究纳入了 697 名 PD 患者的临床、行为和神经特征数据。结果表明,随机森林是表现最佳且最一致的分类器,其在接收器工作特性(ROC)曲线下的面积高达 91.8%,仅使用了 7 个特征。症状严重程度、语义流畅性和左旋多巴治疗的信息对预测最重要,并进一步用于创建决策树,其规则可能指导 PD 症状的药物治疗管理。我们的研究结果有助于识别易发生运动障碍的 PD 患者,在未来旨在开发 PD 新治疗方法的临床试验中可能会考虑这些结果。