Integrative pharmacogenomics revealed three subtypes with different immune landscapes and specific therapeutic responses in lung adenocarcinoma

Comput Struct Biotechnol J. 2022 Jul 2:20:3449-3460. doi: 10.1016/j.csbj.2022.06.064. eCollection 2022.

Abstract

Background: Pharmacogenomics is crucial for individualized drug therapy and plays an increasingly vital role in precision medicine decision-making. However, pharmacogenomics-based molecular subtypes and their potential clinical significance remain primarily unexplored in lung adenocarcinoma (LUAD).

Methods: A total of 2065 samples were recruited from eight independent cohorts. Pharmacogenomics data were generated from the profiling of relative inhibition simultaneously in mixtures (PRISM) and the genomics of drug sensitivity in cancer (GDSC) databases. Multiple bioinformatics approaches were performed to identify pharmacogenomics-based subtypes and find subtype-specific properties.

Results: Three reproducible molecular subtypes were found, which were independent prognostic factors and highly associated with stage, survival status, and accepted molecular subtypes. Pharmacogenomics-based subtypes had distinct molecular characteristics: S-Ⅰ was inflammatory, proliferative, and immune-evasion; S-Ⅱ was proliferative and genetics-driven; S-III was metabolic and methylation-driven. Finally, our study provided subtype-guided personalized treatment strategies: Immune checkpoint blockers (ICBs), doxorubicin, tipifarnib, AZ628, and AZD6244 were for S-Ⅰ; Cisplatin, camptothecin, roscovitine, and A.443654 were for S-Ⅱ; Docetaxel, paclitaxel, vinorelbine, and BIBW2992 were for S-III.

Conclusion: We provided a novel molecular classification strategy and revealed three pharmacogenomics-based subtypes for LUAD patients, which uncovered potential subtype-related and patient-specific therapeutic strategies.

Keywords: CCLE, cancer cell cine encyclopedia; CTRP, cancer therapeutics response portal; DRGs, drug response-associated genes; GDSC, genomics of drug sensitivity in cancer; ICBs, immune checkpoint blockers; IGP, in-group proportion; Immune landscapes; LUAD, lung adenocarcinoma; Lung adenocarcinoma; Molecular subtypes; NMF, non-negative matrix factorization; NSCLC, non-small cell lung cancer; PI, proximal inflammatory; PP, proximal proliferative; PRISM, profiling of relative inhibition simultaneously in mixtures; Pharmacogenomics; Precision medication; SubMap, subclass mapping analysis; TMB, tumor mutation burden; TME, tumor microenvironment; TRU, terminal respiratory unit; Therapeutic responses; ssGSEA, single-sample gene set enrichment analysis.