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Large-scale identification of clinical and genetic predictors of motor progression in patients with newly diagnosed Parkinson's disease: a longitudinal cohort study and validation

机译:新诊断帕金森病患者运动进展的临床和遗传预测因子大规模鉴定:纵向队列研究与验证

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Summary Background Better understanding and prediction of progression of Parkinson's disease could improve disease management and clinical trial design. We aimed to use longitudinal clinical, molecular, and genetic data to develop predictive models, compare potential biomarkers, and identify novel predictors for motor progression in Parkinson's disease. We also sought to assess the use of these models in the design of treatment trials in Parkinson's disease. Methods A Bayesian multivariate predictive inference platform was applied to data from the Parkinson's Progression Markers Initiative (PPMI) study ( NCT01141023 ). We used genetic data and baseline molecular and clinical variables from patients with Parkinson's disease and healthy controls to construct an ensemble of models to predict the annual rate of change in combined scores from the Movement Disorder Society—Unified Parkinson's Disease Rating Scale (MDS-UPDRS) parts II and III. We tested our overall explanatory power, as assessed by the coefficient of determination ( R 2 ), and replicated novel findings in an independent clinical cohort from the Longitudinal and Biomarker Study in Parkinson's disease (LABS-PD; NCT00605163 ). The potential utility of these models for clinical trial design was quantified by comparing simulated randomised placebo-controlled trials within the out-of-sample LABS-PD cohort. Findings 117 healthy controls and 312 patients with Parkinson's disease from the PPMI study were available for analysis, and 317 patients with Parkinson's disease from LABS-PD were available for validation. Our model ensemble showed strong performance within the PPMI cohort (five-fold cross-validated R 2 41%, 95% CI 35–47) and significant—albeit reduced—performance in the LABS-PD cohort ( R 2 9%, 95% CI 4–16). Individual predictive features identified from PPMI data were confirmed in the LABS-PD cohort. These included significant replication of higher baseline MDS-UPDRS motor score, male sex, and increased age, as well as a novel Parkinson's disease-specific epistatic interaction, all indicative of faster motor progression. Genetic variation was the most useful predictive marker of motor progression (2·9%, 95% CI 1·5–4·3). CSF biomarkers at baseline showed a more modest (0·3%, 95% CI 0·1–0·5) but still significant effect on prediction of motor progression. The simulations (n=5000) showed that incorporating the predicted rates of motor progression (as assessed by the annual change in MDS-UPDRS score) into the final models of treatment effect reduced the variability in the study outcome, allowing significant differences to be detected at sample sizes up to 20% smaller than in naive trials. Interpretation Our model ensemble confirmed established and identified novel predictors of Parkinson's disease motor progression. Improvement of existing prognostic models through machine-learning approaches should benefit trial design and evaluation, as well as clinical disease monitoring and treatment. Funding Michael J Fox Foundation for Parkinson's Research and National Institute of Neurological Disorders and Stroke.
机译:发明内容背景更好地理解和预测帕金森病的进展可以改善疾病管理和临床试验设计。我们的目标是使用纵向临床,分子和遗传数据来开发预测模型,比较潜在的生物标志物,并识别帕金森病的运动进展的新型预测因子。我们还试图评估这些模型在帕金森病的治疗试验设计中的使用。方法采用帕克森进展标志物倡议(PPMI)研究的数据应用贝叶斯多元预测推理平台(NCT01141023)。我们使用帕金森病和健康控制患者的遗传数据和基线分子和临床变量构建模型的集合,以预测运动障碍社会统一帕金森病评级规模(MDS-UPDRS)的组合分数的年度变化率第II部分和III。我们测试了我们的整体解释能力,如帕金森病的纵向和生物标志物研究中的确定系数(R 2),并在独立临床群组中复制新颖的发现(Labs-PD; NCT00605163)。通过比较模拟的随机安慰剂对照试验,通过比较样本实验室-PD队列中的模拟随机安慰剂对照试验来量化这些模型的潜在效用。调查结果117对PPMI研究的健康对照和312名帕金森病患者可用于分析,317名来自Labs-PD的帕金森病患者可用于验证。我们的模型集合在PPMI队列中表现出强大的性能(五倍交叉验证的R 2 41%,95%CI 35-47)和实验室-PD队列中的显着减少性能(R 2 9%,95% CI 4-16)。在Labs-PD Cohort中确认了从PPMI数据识别的个体预测功能。这些包括高级基线MDS-UPDRS的显着复制,男性性别和增加的年龄,以及新的帕金森特异性认证互动,所有表明运动进展更快。遗传变异是运动进展最有用的预测标记(2·9%,95%CI 1·5-4·3)。基线的CSF生物标志物显示更适中(0·3%,95%CI 0·1-0·5),但对电机进展预测仍然显着影响。模拟(n = 5000)显示,纳入预测的电机进展速率(按照MDS-UPDRS评分的年度变化评估)进入治疗效果的最终模型降低了研究结果的可变性,允许检测到显着差异在样品尺寸比幼稚试验中的尺寸高达20%。解释我们的模型集合已确认已建立并确定了帕金森氏病运动进展的新型预测因素。通过机器学习方法改善现有的预后模型应该受益试验设计和评估,以及临床疾病监测和治疗。资助迈克尔J Fox基金会帕金森的研究和国家神经系统疾病和中风研究所。

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