神经影像学
阿尔茨海默病神经影像学倡议
期限(时间)
疾病
多元统计
时间点
认知
计算机科学
病态的
多元分析
认知障碍
统计
心理学
医学
病理
机器学习
数学
神经科学
哲学
物理
美学
量子力学
作者
Michael Donohue,Hélène Jacqmin‐Gadda,Mélanie Le Goff,Ronald G. Thomas,Rema Raman,Anthony Gamst,Laurel Beckett,Clifford R. Jack,Michael W. Weiner,Jean‐François Dartigues,Paul Aisen
标识
DOI:10.1016/j.jalz.2013.10.003
摘要
Abstract Motivation Diseases that progress slowly are often studied by observing cohorts at different stages of disease for short periods of time. The Alzheimer's Disease Neuroimaging Initiative (ADNI) follows elders with various degrees of cognitive impairment, from normal to impaired. The study includes a rich panel of novel cognitive tests, biomarkers, and brain images collected every 6 months for as long as 6 years. The relative timing of the observations with respect to disease pathology is unknown. We propose a general semiparametric model and iterative estimation procedure to estimate simultaneously the pathological timing and long‐term growth curves. The resulting estimates of long‐term progression are fine‐tuned using cognitive trajectories derived from the long‐term “Personnes Agées Quid” study. Results We demonstrate with simulations that the method can recover long‐term disease trends from short‐term observations. The method also estimates temporal ordering of individuals with respect to disease pathology, providing subject‐specific prognostic estimates of the time until onset of symptoms. When the method is applied to ADNI data, the estimated growth curves are in general agreement with prevailing theories of the Alzheimer's disease cascade. Other data sets with common outcome measures can be combined using the proposed algorithm. Availability Software to fit the model and reproduce results with the statistical software R is available as the grace package. ADNI data can be downloaded from the Laboratory of NeuroImaging.
科研通智能强力驱动
Strongly Powered by AbleSci AI