| Literature DB >> 34980132 |
Yan Li1,2, Chen Yang3, Zhicheng Liu4, Shangce Du5, Susan Can5, Hailin Zhang3, Linmeng Zhang3, Xiaowen Huang1, Zhenyu Xiao4, Xiaobo Li1, Jingyuan Fang1, Wenxin Qin3, Chong Sun6, Cun Wang7, Jun Chen8,9,10,11,12, Huimin Chen13.
Abstract
BACKGROUND: In recent years, the application of functional genetic immuno-oncology screens has showcased the striking ability to identify potential regulators engaged in tumor-immune interactions. Although these screens have yielded substantial data, few studies have attempted to systematically aggregate and analyze them.Entities:
Keywords: CRISPR screen; Connectivity map; Drug repurposing; Immune checkpoint blockade; MON2; Tumor immunity
Mesh:
Substances:
Year: 2022 PMID: 34980132 PMCID: PMC8722047 DOI: 10.1186/s12943-021-01462-z
Source DB: PubMed Journal: Mol Cancer ISSN: 1476-4598 Impact factor: 27.401
Fig. 1Identification of regulators involved in antitumor immune response by integrative analyses of immune-oncology screening data. A Schematic illustration of the process of pooled CRISPR/Cas9 knockout screens using tumor/immune co-culture systems. This screening approach was adopted by most of the included experiments. B Distribution of screens across different cancer types. C Common sensitizer genes (left) and resistor genes (right) identified by different screens. The top 10 genes were labeled in each plot. D Association between the functional status of sensitizers/resistors and the abundance of immune/cytolytic activity/MHC scores. Statistical significance of associations was determined using regression analysis, adjusting for cancer type. Comparison between sensitizers and resistors was conducted using Fisher’s exact tests. E Intersections of the resultant genes from three different filtering approaches. The results of sensitizers (left) and resistors (right) were displayed separately
Fig. 2The overall characterization of sensitizer and resistor genes. A Similarity matrix representing the Gene Ontology (GO)-based functional similarity (FS) scores between each pair of sensitizers/resistors. B GO functional annotation of sensitizer genes (upper) and resistor genes (lower) based on the occurrence frequency. Only the top five terms were presented. C Distribution of the inactivation event numbers of sensitizers (left) and resistors (right) across different TCGA cancer types. D Heatmap showing the inactivation events of subtype-specific sensitizer/resistor genes across six immune subtypes. Subtype-specific genes were determined using logistic regression. Only statistically significant genes were presented. E Functional annotation of subtype-specific sensitizer/resistor genes using information from ImmPort (immport.org). F Distribution of the inactivation event numbers of sensitizers (upper) and resistors (lower) across different immune subtypes
Fig. 3Functional determination of sensitizers and resistors. A Visualization of the definition of S−/R-related features. B The total number of S-related features across all the cancer types of sensitizer genes. C The total number of R-related features across all the cancer types of resistor genes. D Comparison of the numbers of related features between sensitizers and resistors. Statistical significance of difference was determined using Wilcoxon rank-sum test
Fig. 4Determination of MON2 as novel immuno-oncology target. A Presentation of sensitizers and resistors with prognostic significance in TCGA (C2 subtype) and ICB-treated cohorts. The hazard ratio (HR) and corresponding 95% confidence interval (CI) were estimated using a Cox regression model, adjusting for age and cancer type. B Determination of proliferation-independent genes according to the CERES scores from CRISPR knockout screens across hundreds of cancer cell lines. C Intersections between proliferation-independent genes and sensitizer (left) and resistor (right) genes with prognostic significance in both TCGA and ICB-treated cohort. D Coculture assay of MDA-MB-231 cells and antigen-specific T cells. MDA-MB-231 was loaded with Mart1 epitope by lentiviral transduction and cultured in the absence or presence of Mart-1- specific T cells (left panel). MDA-MB-231 cells that express Mart-1-epitope were transduced with Cas9 and then three independent gRNAs targeting MON2. A non-targeting gRNA served as a control. The cells were cultured with or without Mart-1-specific T cells for 24 h (right panel). E Coculture assay of MCF7 cells and antigen-specific T cells. F Association between the functional status of MON2 and clinical response to immunotherapy (CR, complete response; PR, partial response; SD, stable disease; PD, progressive disease) in four ICB-treated datasets. G Pearson correlation between MON2 expression and objective response rate (ORR) for ICB. Only non-zero data was included
Fig. 5Construction of CTIS for predicting immunotherapeutic response. A Workflow of the construction and evaluation of CTIS. B Survival significance of CTIS in discovery dataset. C Survival of CTIS in two validation datasets. D Similarity comparison between the CTIS signature and other 14 published signatures. E Comparison of mean AUC values across all the pretreatment datasets between CTIS and other published signatures
Fig. 6Identification of potential immunomodulatory agents for potentiating the efficacy of immunotherapies. A Bipartite network showing the interactions between sensitizer/resistor genes and OGs/TSGs. Node size is proportional to the interaction degree; a node with larger size represents that it has more interactions with other nodes. B The proportion of interactions with OGs and TSGs in sensitizers and resistors. Statistical significance was determined using Fisher’s exact tests. C Computational workflow of the inference of potential immunomodulatory agents using the signature matching approach. D Result of drug prediction. The top 10 drugs were labeled in the plot