Gao Feng, Miller J Philip, Beiser Julia A, Xiong Chengjie, Gordon Mae O
Division of Public Health Sciences, Department of Surgery, Washington University School of Medicine, St. Louis, MO, USA; Division of Biostatistics, Washington University School of Medicine, St. Louis, MO, USA.
Division of Biostatistics, Washington University School of Medicine, St. Louis, MO, USA.
J Biom Biostat. 2015 Oct;6(4). doi: 10.4172/2155-6180.1000254. Epub 2015 Oct 26.
Primary open angle glaucoma (POAG) is a chronic, progressive, irreversible, and potentially blinding optic neuropathy. The risk of blindness due to progressive visual field (VF) loss varies substantially from patient to patient. Early identification of those patients destined to rapid progressive visual loss is crucial to prevent further damage. In this article, a latent class growth model (LCGM) was developed to predict the binary outcome of VF progression using longitudinal mean deviation (MD) and pattern standard deviation (PSD). Specifically, the trajectories of MD and PSD were summarized by a functional principal component (FPC) analysis, and the estimated FPC scores were used to identify subgroups (latent classes) of individuals with distinct patterns of MD and PSD trajectories. Probability of VF progression for an individual was then estimated as weighted average across latent classes, weighted by posterior probability of class membership given baseline covariates and longitudinal MD/PSD series. The model was applied to the participants with newly diagnosed POAG from the Ocular Hypertension Treatment Study (OHTS), and the OHTS data was best fit by a model with 4 latent classes. Using the resultant optimal LCGM, the OHTS participants with and without VF progression could be accurately differentiated by incorporating longitudinal MD and PSD.
原发性开角型青光眼(POAG)是一种慢性、进行性、不可逆且可能致盲的视神经病变。因进行性视野(VF)丧失导致失明的风险在患者之间差异很大。早期识别那些注定会快速进展性视力丧失的患者对于预防进一步损害至关重要。在本文中,开发了一种潜在类别增长模型(LCGM),以使用纵向平均偏差(MD)和模式标准偏差(PSD)来预测VF进展的二元结果。具体而言,通过功能主成分(FPC)分析总结MD和PSD的轨迹,并使用估计的FPC分数来识别具有不同MD和PSD轨迹模式的个体亚组(潜在类别)。然后,将个体VF进展的概率估计为潜在类别之间的加权平均值,权重为给定基线协变量和纵向MD/PSD系列的类别成员后验概率。该模型应用于来自眼压升高治疗研究(OHTS)的新诊断POAG参与者,OHTS数据最适合具有4个潜在类别的模型。使用所得的最优LCGM,通过纳入纵向MD和PSD,可以准确区分有和没有VF进展的OHTS参与者。