🌙

使用依赖混合模型对结直肠癌亚型进行免疫分析

Immune Profiling Among Colorectal Cancer Subtypes Using Dependent Mixture Models

Journal of the American Statistical Association · 2024
被引 1
ABS 4

中文导读

该研究开发了一种依赖有限混合模型,用于比较早发与晚发结直肠癌的免疫细胞特征,识别出两种肿瘤类型中显著不同的T细胞亚群,为理解病因和潜在治疗提供线索。

Abstract

Comparison of transcriptomic data across different conditions is of interest in many biomedical studies. In this paper, we consider comparative immune cell profiling for early-onset (EO) versus late-onset (LO) colorectal cancer (CRC). EOCRC, diagnosed between ages 18-45, is a rising public health concern that needs to be urgently addressed. However, its etiology remains poorly understood. We work towards filling this gap by identifying homogeneous T cell sub-populations that show significantly distinct characteristics across the two tumor types, and identifying others that are shared between EOCRC and LOCRC. We develop dependent finite mixture models where immune subtypes enriched under a specific condition are characterized by terms in the mixture model with common atoms but distinct weights across conditions, whereas common subtypes are characterized by sharing both atoms and relative weights. The proposed model facilitates the desired comparison across conditions by introducing highly structured multi-layer Dirichlet priors. We illustrate inference with simulation studies and data examples. Results identify EO- and LO-enriched T cells subtypes whose biomarkers are found to be linked to mechanisms of tumor progression, and potentially motivate insights into treatment of CRC. Code implementing the proposed method is available at: https://github.com/YunshanDYS/SASCcode.

结直肠癌免疫分析混合模型转录组学生物信息学