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人工智能赋能的苏木精和伊红分析仪揭示了非小细胞肺癌免疫表型中的不同免疫和突变特征。

Artificial Intelligence-Powered Hematoxylin and Eosin Analyzer Reveals Distinct Immunologic and Mutational Profiles among Immune Phenotypes in Non-Small-Cell Lung Cancer.

机构信息

Department of Medicine, Northwestern University Feinberg School of Medicine, Chicago, Illinois.

Lunit Inc., Seoul, Republic of Korea.

出版信息

Am J Pathol. 2022 Apr;192(4):701-711. doi: 10.1016/j.ajpath.2022.01.006.

Abstract

The tumor microenvironment can be classified into three immune phenotypes: inflamed, immune excluded, and immune-desert. Immunotherapy efficacy has been shown to vary by phenotype; yet, the mechanisms are poorly understood and demand further investigation. This study unveils the mechanisms using an artificial intelligence-powered software called Lunit SCOPE. Artificial intelligence was used to classify 965 samples of non-small-cell lung carcinoma from The Cancer Genome Atlas into the three immune phenotypes. The immune and mutational profiles that shape each phenotype using xCell, gene set enrichment analysis with RNA-sequencing data, and cBioportal were described. In the inflamed subtype, which showed higher cytolytic score, the enriched pathways were generally associated with immune response and immune-related cell types were highly expressed. In the immune excluded subtype, enriched glycolysis, fatty acid, and cholesterol metabolism pathways were observed. The KRAS mutation, BRAF mutation, and MET splicing variant were mostly observed in the inflamed subtype. The two prominent mutations found in the immune excluded subtype were EGFR and PIK3CA mutations. This study is the first to report the distinct immunologic and mutational landscapes of immune phenotypes, and demonstrates the biological relevance of the classification. In light of these findings, the study offers insights into potential treatment options tailored to each immune phenotype.

摘要

肿瘤微环境可分为三种免疫表型

炎症型、免疫排斥型和免疫荒漠型。免疫疗法的疗效已被证明与表型有关;然而,其机制尚不清楚,需要进一步研究。本研究使用名为 Lunit SCOPE 的人工智能软件揭示了这些机制。人工智能用于将癌症基因组图谱中的 965 个非小细胞肺癌样本分为三种免疫表型。使用 xCell、基于 RNA-seq 数据的基因集富集分析和 cBioportal 描述了塑造每种表型的免疫和突变特征。在炎症型亚组中,细胞毒性评分较高,富集的途径通常与免疫反应有关,免疫相关细胞类型的表达水平较高。在免疫排斥型亚组中,观察到富含糖酵解、脂肪酸和胆固醇代谢途径。KRAS 突变、BRAF 突变和 MET 剪接变异主要在炎症型亚组中观察到。在免疫排斥型亚组中发现的两个突出突变是 EGFR 和 PIK3CA 突变。本研究首次报道了免疫表型的独特免疫和突变景观,并证明了分类的生物学相关性。鉴于这些发现,该研究为针对每种免疫表型的潜在治疗选择提供了思路。

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