Department of Biological Regulation, Weizmann Institute of Science, 7610001, Rehovot, Israel.
Department of Internal Medicine and Radboud Center for Infectious Diseases, Radboud University Medical Center, 6525, HP, Nijmegen, the Netherlands.
Nat Commun. 2019 Jul 22;10(1):3266. doi: 10.1038/s41467-019-11257-y.
Complex interactions between different host immune cell types can determine the outcome of pathogen infections. Advances in single cell RNA-sequencing (scRNA-seq) allow probing of these immune interactions, such as cell-type compositions, which are then interpreted by deconvolution algorithms using bulk RNA-seq measurements. However, not all aspects of immune surveillance are represented by current algorithms. Here, using scRNA-seq of human peripheral blood cells infected with Salmonella, we develop a deconvolution algorithm for inferring cell-type specific infection responses from bulk measurements. We apply our dynamic deconvolution algorithm to a cohort of healthy individuals challenged ex vivo with Salmonella, and to three cohorts of tuberculosis patients during different stages of disease. We reveal cell-type specific immune responses associated not only with ex vivo infection phenotype but also with clinical disease stage. We propose that our approach provides a predictive power to identify risk for disease, and human infection outcomes.
不同宿主免疫细胞类型之间的复杂相互作用可以决定病原体感染的结果。单细胞 RNA 测序 (scRNA-seq) 的进展可以探测这些免疫相互作用,例如细胞类型组成,然后使用批量 RNA-seq 测量值通过去卷积算法进行解释。然而,目前的算法并不能代表所有免疫监测方面。在这里,我们使用感染沙门氏菌的人外周血细胞的 scRNA-seq,开发了一种从批量测量中推断细胞类型特异性感染反应的去卷积算法。我们将我们的动态去卷积算法应用于一组接受沙门氏菌体外挑战的健康个体,以及三个结核病患者队列在疾病的不同阶段。我们揭示了与体外感染表型相关的细胞类型特异性免疫反应,也与临床疾病阶段相关。我们提出我们的方法提供了一种识别疾病风险和人类感染结果的预测能力。