Department of Epidemiology and Prevention, IRCCS NEUROMED, Pozzilli, Italy.
Department of Medicine and Surgery, EPIMED Research Center, University of Insubria, Varese, Italy.
J Neurol. 2023 Sep;270(9):4487-4497. doi: 10.1007/s00415-023-11803-1. Epub 2023 Jun 9.
Several environmental/lifestyle factors have been individually investigated in previous Parkinson's disease (PD) studies with controversial results. No study has prospectively and simultaneously investigated potential risk/protective factors of PD using both classical statistical and novel machine learning analyses. The latter may reveal more complex associations and new factors that are undetected by merely linear models. To fill this gap, we simultaneously investigated potential risk/protective factors involved in PD in a large prospective population study using both approaches.
Participants in the Moli-sani study were enrolled between 2005 and 2010 and followed up until December 2018. Incident PD cases were identified by individual-level record linkage to regional hospital discharge forms, the Italian death registry, and the regional prescription register. Exposure to potential risk/protective factors was assessed at baseline. Multivariable Cox Proportional Hazards (PH) regression models and survival random forests (SRF) were built to identify the most influential factors.
We identified 213 incident PD cases out of 23,901 subjects. Cox PH models revealed that age, sex, dysthyroidism and diabetes were associated with an increased risk of PD. Both hyper and hypothyroidism were independently associated with PD risk. SRF showed that age was the most influential factor in PD risk, followed by coffee intake, daily physical activity, and hypertension.
This study sheds light on the role of dysthyroidism, diabetes and hypertension in PD onset, characterized to date by an uncertain relationship with PD, and also confirms the relevance of most factors (age, sex, coffee intake, daily physical activity) reportedly shown be associated with PD. Further methodological developments in SRF models will allow to untangle the nature of the potential non-linear relationships identified.
在之前的帕金森病(PD)研究中,已经分别研究了几种环境/生活方式因素,但结果存在争议。没有研究使用经典的统计和新的机器学习分析同时前瞻性地研究 PD 的潜在风险/保护因素。后者可能揭示出更复杂的关联和仅通过线性模型无法检测到的新因素。为了填补这一空白,我们使用这两种方法同时在一项大型前瞻性人群研究中调查了 PD 中潜在的风险/保护因素。
Moli-sani 研究的参与者于 2005 年至 2010 年期间招募,并随访至 2018 年 12 月。通过与地区医院出院表、意大利死亡登记处和地区处方登记处的个体级记录链接,确定 PD 新发病例。在基线时评估潜在风险/保护因素的暴露情况。使用多变量 Cox 比例风险(PH)回归模型和生存随机森林(SRF)来确定最具影响力的因素。
我们从 23901 名受试者中确定了 213 例新发病例。Cox PH 模型显示,年龄、性别、甲状腺功能紊乱和糖尿病与 PD 风险增加相关。甲状腺功能亢进和甲状腺功能减退均与 PD 风险独立相关。SRF 显示,年龄是 PD 风险的最主要影响因素,其次是咖啡摄入量、日常体力活动和高血压。
本研究阐明了甲状腺功能紊乱、糖尿病和高血压在 PD 发病中的作用,这些因素迄今与 PD 的关系尚不确定,并且还证实了大多数因素(年龄、性别、咖啡摄入量、日常体力活动)的相关性报告与 PD 相关。SRF 模型中进一步的方法发展将有助于阐明所确定的潜在非线性关系的本质。