Ma Ling-Yan, Tian Yu, Pan Chang-Rong, Chen Zhong-Lue, Ling Yun, Ren Kang, Li Jing-Song, Feng Tao
Department of Neurology, Center for Movement Disorders, Beijing Tiantan Hospital, Capital Medical University, Beijing, China.
China National Clinical Research Center for Neurological Diseases, Beijing, China.
Front Aging Neurosci. 2021 Jan 25;12:627199. doi: 10.3389/fnagi.2020.627199. eCollection 2020.
The substantial heterogeneity of clinical symptoms and lack of reliable progression markers in Parkinson's disease (PD) present a major challenge in predicting accurate progression and prognoses. Increasing evidence indicates that each component of the neurovascular unit (NVU) and blood-brain barrier (BBB) disruption may take part in many neurodegenerative diseases. Since some portions of CSF are eliminated along the neurovascular unit and across the BBB, disturbing the pathways may result in changes of these substances. Four hundred seventy-four participants from the Parkinson's Progression Markers Initiative (PPMI) study (NCT01141023) were included in the study. Thirty-six initial features, including general information, brief clinical characteristics and the current year's classical scale scores, were used to build five regression models to predict PD motor progression represented by the coming year's Unified Parkinson's Disease Rating Scale (MDS-UPDRS) Part III score after redundancy removal and recursive feature elimination (RFE)-based feature selection. Then, a threshold range was added to the predicted value for more convenient model application. Finally, we evaluated the CSF and blood biomarkers' influence on the disease progression model. Eight hundred forty-nine cases were included in the study. The adjusted values of three different categories of regression model, linear, Bayesian and ensemble, all reached 0.75. Models of the same category shared similar feature combinations. The common features selected among the categories were the MDS-UPDRS Part III score, Montreal Cognitive Assessment (MOCA) and Rapid Eye Movement Sleep Behavior Disorder Questionnaire (RBDSQ) score. It can be seen more intuitively that the model can achieve certain prediction effect through threshold range. Biomarkers had no significant impact on the progression model within the data in the study. By using machine learning and routinely gathered assessments from the current year, we developed multiple dynamic models to predict the following year's motor progression in the early stage of PD. These methods will allow clinicians to tailor medical management to the individual and identify at-risk patients for future clinical trials examining disease-modifying therapies.
帕金森病(PD)临床症状的显著异质性以及缺乏可靠的病情进展标志物,给准确预测病情进展和预后带来了重大挑战。越来越多的证据表明,神经血管单元(NVU)的各个组成部分以及血脑屏障(BBB)的破坏可能参与了许多神经退行性疾病。由于脑脊液的某些部分沿着神经血管单元并穿过血脑屏障被清除,干扰这些途径可能会导致这些物质发生变化。帕金森病进展标志物倡议(PPMI)研究(NCT01141023)的474名参与者被纳入该研究。36个初始特征,包括一般信息、简要临床特征和当年的经典量表评分,被用于构建五个回归模型,以预测以次年统一帕金森病评定量表(MDS-UPDRS)第三部分评分表示的PD运动进展,这些特征在去除冗余并基于递归特征消除(RFE)进行特征选择后使用。然后,为了更方便模型应用,在预测值上添加了一个阈值范围。最后,我们评估了脑脊液和血液生物标志物对疾病进展模型的影响。该研究纳入了849例病例。三种不同类型回归模型(线性、贝叶斯和集成模型)的调整后值均达到0.75。同一类型的模型具有相似的特征组合。不同类型中共同选择的特征是MDS-UPDRS第三部分评分、蒙特利尔认知评估(MOCA)和快速眼动睡眠行为障碍问卷(RBDSQ)评分。可以更直观地看出,该模型通过阈值范围可以实现一定的预测效果。在研究数据范围内,生物标志物对进展模型没有显著影响。通过使用机器学习和当年常规收集的评估数据,我们开发了多个动态模型来预测PD早期次年的运动进展。这些方法将使临床医生能够根据个体情况调整医疗管理,并识别有风险的患者,以便未来进行研究疾病修饰疗法的临床试验。