Neuroimmunological Diseases Section, National Institute of Allergy and Infectious Diseases, National Institutes of Health, Bethesda, MD, USA.
Department of Mathematical Sciences, Montana State University, Bozeman, MT, USA.
Nat Commun. 2022 Dec 12;13(1):7670. doi: 10.1038/s41467-022-35357-4.
While autopsy studies identify many abnormalities in the central nervous system (CNS) of subjects dying with neurological diseases, without their quantification in living subjects across the lifespan, pathogenic processes cannot be differentiated from epiphenomena. Using machine learning (ML), we searched for likely pathogenic mechanisms of multiple sclerosis (MS). We aggregated cerebrospinal fluid (CSF) biomarkers from 1305 proteins, measured blindly in the training dataset of untreated MS patients (N = 129), into models that predict past and future speed of disability accumulation across all MS phenotypes. Healthy volunteers (N = 24) data differentiated natural aging and sex effects from MS-related mechanisms. Resulting models, validated (Rho 0.40-0.51, p < 0.0001) in an independent longitudinal cohort (N = 98), uncovered intra-individual molecular heterogeneity. While candidate pathogenic processes must be validated in successful clinical trials, measuring them in living people will enable screening drugs for desired pharmacodynamic effects. This will facilitate drug development making, it hopefully more efficient and successful.
虽然尸检研究确定了许多死于神经疾病的患者中枢神经系统(CNS)中的异常,但如果没有在整个生命周期的存活患者中对其进行量化,就无法区分致病过程和伴随现象。我们使用机器学习(ML)方法,搜索多发性硬化症(MS)的可能致病机制。我们将来自 1305 种蛋白质的脑脊液(CSF)生物标志物,在未经治疗的 MS 患者的训练数据集(N=129)中进行盲测,将这些生物标志物整合到模型中,以预测所有 MS 表型的过去和未来残疾累积速度。健康志愿者(N=24)的数据将自然衰老和性别效应与 MS 相关机制区分开来。在独立的纵向队列(N=98)中进行验证后(Rho 0.40-0.51,p<0.0001),这些模型揭示了个体内的分子异质性。虽然候选致病过程必须在成功的临床试验中得到验证,但在存活患者中测量它们将能够筛选出具有理想药效学作用的药物。这将促进药物开发,使其更高效、更成功。