Wu Ying, Cook Richard J
Department of Statistics and Actuarial Science, University of Waterloo, Waterloo, Ontario, Canada N2L 3G1.
Biometrics. 2015 Sep;71(3):782-91. doi: 10.1111/biom.12302. Epub 2015 Mar 13.
Times of disease progression are interval-censored when progression status is only known at a series of assessment times. This situation arises routinely in clinical trials and cohort studies when events of interest are only detectable upon imaging, based on blood tests, or upon careful clinical examination. We consider the problem of selecting important prognostic biomarkers from a large set of candidates when disease progression status is only known at irregularly spaced and individual-specific assessment times. Penalized regression techniques (e.g., LASSO, adaptive LASSO, and SCAD) are adapted to handle interval-censored time of disease progression. An expectation-maximization algorithm is described which is empirically shown to perform well. Application to the motivating study of the development of arthritis mutilans in patients with psoriatic arthritis is given and several important human leukocyte antigen (HLA) variables are identified for further investigation.
当疾病进展状态仅在一系列评估时间已知时,疾病进展时间为区间删失数据。这种情况在临床试验和队列研究中经常出现,即当感兴趣的事件只能通过影像学检查、血液检测或仔细的临床检查才能检测到时。我们考虑在疾病进展状态仅在不规则间隔且个体特定的评估时间已知的情况下,从大量候选生物标志物中选择重要的预后生物标志物的问题。惩罚回归技术(如LASSO、自适应LASSO和SCAD)被用于处理疾病进展的区间删失时间。本文描述了一种期望最大化算法,经实证表明该算法性能良好。文章给出了该算法在银屑病关节炎患者致残性关节炎发展的激励性研究中的应用,并确定了几个重要的人类白细胞抗原(HLA)变量以供进一步研究。