Imholte Gregory, Gottardo Raphael
Department of Statistics, University of Washington, Seattle, Washington, U.S.A.
Fred Hutchinson Cancer Research Center, Seattle, Washington, U.S.A.
Biometrics. 2016 Dec;72(4):1206-1215. doi: 10.1111/biom.12523. Epub 2016 Apr 8.
The peptide microarray immunoassay simultaneously screens sample serum against thousands of peptides, determining the presence of antibodies bound to array probes. Peptide microarrays tiling immunogenic regions of pathogens (e.g., envelope proteins of a virus) are an important high throughput tool for querying and mapping antibody binding. Because of the assay's many steps, from probe synthesis to incubation, peptide microarray data can be noisy with extreme outliers. In addition, subjects may produce different antibody profiles in response to an identical vaccine stimulus or infection, due to variability among subjects' immune systems. We present a robust Bayesian hierarchical model for peptide microarray experiments, pepBayes, to estimate the probability of antibody response for each subject/peptide combination. Heavy-tailed error distributions accommodate outliers and extreme responses, and tailored random effect terms automatically incorporate technical effects prevalent in the assay. We apply our model to two vaccine trial data sets to demonstrate model performance. Our approach enjoys high sensitivity and specificity when detecting vaccine induced antibody responses. A simulation study shows an adaptive thresholding classification method has appropriate false discovery rate control with high sensitivity, and receiver operating characteristics generated on vaccine trial data suggest that pepBayes clearly separates responses from non-responses.
肽微阵列免疫测定法可同时针对数千种肽对样本血清进行筛查,确定与阵列探针结合的抗体的存在情况。平铺病原体免疫原性区域(例如病毒的包膜蛋白)的肽微阵列是用于查询和绘制抗体结合情况的重要高通量工具。由于该测定法从探针合成到孵育有许多步骤,肽微阵列数据可能会有噪声且存在极端异常值。此外,由于受试者免疫系统的差异,受试者可能会对相同的疫苗刺激或感染产生不同的抗体谱。我们提出了一种用于肽微阵列实验的稳健贝叶斯分层模型pepBayes,以估计每个受试者/肽组合的抗体反应概率。重尾误差分布可容纳异常值和极端反应,量身定制的随机效应项会自动纳入该测定法中普遍存在的技术效应。我们将我们的模型应用于两个疫苗试验数据集以证明模型性能。我们的方法在检测疫苗诱导的抗体反应时具有高灵敏度和特异性。一项模拟研究表明,一种自适应阈值分类方法在具有高灵敏度的情况下具有适当的错误发现率控制,并且在疫苗试验数据上生成的受试者工作特征表明pepBayes能够清晰地将反应与无反应区分开来。