Faust Irene M, Racette Brad A, Searles Nielsen Susan
Washington University School of Medicine, Department of Neurology, St. Louis, Missouri, USA.
University of the Witwatersrand, School of Public Health, Faculty of Health Sciences, Johannesburg, South Africa.
Parkinsons Dis. 2020 Feb 21;2020:2857608. doi: 10.1155/2020/2857608. eCollection 2020.
Parkinson disease (PD) has a relatively long prodromal period that may permit early identification to reduce diagnostic testing for other conditions when patients are simply presenting with early PD symptoms, as well as to reduce morbidity from fall-related trauma. Earlier identification also could prove critical to the development of neuroprotective therapies. We previously developed a PD predictive model using demographic and Medicare claims data in a population-based case-control study. The area under the receiver-operating characteristic curve (AUC) indicated good performance. We sought to further validate this PD predictive model. In a randomly selected, population-based cohort of 115,492 Medicare beneficiaries aged 66-90 and without PD in 2009, we applied the predictive model to claims data from the prior five years to estimate the probability of future PD diagnosis. During five years of follow-up, we used 2010-2014 Medicare data to determine PD and vital status and then Cox regression to investigate whether PD probability at baseline was associated with time to PD diagnosis. Within a nested case-control sample, we calculated the AUC, sensitivity, and specificity. A total of 2,326 beneficiaries developed PD. Probability of PD was associated with time to PD diagnosis ( < 0.001, hazard ratio = 13.5, 95% confidence interval (CI) 10.6-17.3 for the highest vs. lowest decile of probability). The AUC was 83.3% (95% CI 82.5%-84.1%). At the cut point that balanced sensitivity and specificity, sensitivity was 76.7% and specificity was 76.2%. In an independent sample of additional Medicare beneficiaries, we again applied the model and observed good performance (AUC = 82.2%, 95% CI 81.1%-83.3%). Administrative claims data can facilitate PD identification within Medicare and Medicare-aged samples.
帕金森病(PD)有一个相对较长的前驱期,这可能有助于早期识别,从而在患者仅表现出早期PD症状时减少对其他病症的诊断检测,同时也能降低跌倒相关创伤的发病率。更早的识别对于神经保护疗法的发展也可能至关重要。我们之前在一项基于人群的病例对照研究中,使用人口统计学和医疗保险理赔数据开发了一个PD预测模型。受试者工作特征曲线下面积(AUC)显示该模型表现良好。我们试图进一步验证这个PD预测模型。在一个随机选取的、基于人群的队列中,有115492名年龄在66 - 90岁且在2009年无PD的医疗保险受益人,我们将预测模型应用于前五年的理赔数据,以估计未来PD诊断的概率。在五年的随访期间,我们使用2010 - 2014年医疗保险数据确定PD情况和生命状态,然后通过Cox回归研究基线时的PD概率是否与PD诊断时间相关。在一个嵌套的病例对照样本中,我们计算了AUC、敏感性和特异性。共有2326名受益人患上了PD。PD概率与PD诊断时间相关(<0.001,风险比 = 13.5,95%置信区间(CI)为最高概率十分位数与最低概率十分位数相比为10.6 - 17.3)。AUC为83.3%(95% CI 82.5% - 84.1%)。在平衡敏感性和特异性的切点处,敏感性为76.7%,特异性为76.2%。在另一组医疗保险受益人的独立样本中,我们再次应用该模型并观察到良好的表现(AUC = 82.2%,95% CI 81.1% - 83.3%)。行政理赔数据有助于在医疗保险和医疗保险覆盖年龄样本中识别PD。