Abstract

BackgroundPatient stratification based on molecular subtypes is an important strategy for cancer precision medicine. Deriving clinically informative cancer molecular subtypes from transcriptomic data generated on whole tumor tissue samples is a non-trivial task, especially given the various non-cancer cellular elements intertwined with cancer cells in the tumor microenvironment.MethodsWe developed a computational deconvolution method, DeClust, that stratifies patients into subtypes based on cancer cell-intrinsic signals identified by distinguishing cancer-type-specific signals from non-cancer signals in bulk tumor transcriptomic data. DeClust differs from most existing methods by directly incorporating molecular subtyping of solid tumors into the deconvolution process and outputting molecular subtype-specific tumor reference profiles for the cohort rather than individual tumor profiles. In addition, DeClust does not require reference expression profiles or signature matrices as inputs and estimates cancer-type-specific microenvironment signals from bulk tumor transcriptomic data.ResultsDeClust was evaluated on both simulated data and 13 solid tumor datasets from The Cancer Genome Atlas (TCGA). DeClust performed among the best, relative to existing methods, for estimation of cellular composition. Compared to molecular subtypes reported by TCGA or other similar approaches, the subtypes generated by DeClust had higher correlations with cancer-intrinsic genomic alterations (e.g., somatic mutations and copy number variations) and lower correlations with tumor purity. While DeClust-identified subtypes were not more significantly associated with survival in general, DeClust identified a poor prognosis subtype of clear cell renal cancer, papillary renal cancer, and lung adenocarcinoma, all of which were characterized by CDKN2A deletions. As a reference profile-free deconvolution method, the tumor-type-specific stromal profiles and cancer cell-intrinsic subtypes generated by DeClust were supported by single-cell RNA sequencing data.ConclusionsDeClust is a useful tool for cancer cell-intrinsic molecular subtyping of solid tumors. DeClust subtypes, together with the tumor-type-specific stromal profiles generated by this pan-cancer study, may lead to mechanistic and clinical insights across multiple tumor types.

Highlights

  • Patient stratification based on molecular subtypes is an important strategy for cancer precision medicine

  • From the DeClust outputs generated on this dataset, we show that (1) stromal compartments are associated with patient survival in a tumor-type-specific manner, (2) the subtypes identified by DeClust were associated with enhanced cancer cell-intrinsic characteristics than those based on the existing The Cancer Genome Atlas (TCGA) molecular subtypes or alternative strategies, and (3) while DeClust identified subtypes were not more significantly associated with survival in general, a poor prognosis subtype relevant to several tumor types was identified by DeClust that was not evident based on the existing TCGA molecular subtypes

  • The non-TCGA tumor expression datasets used in validation were downloaded from GEO [20] database according to the GSE number as provided in the manuscript

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Summary

Introduction

Patient stratification based on molecular subtypes is an important strategy for cancer precision medicine. Deriving clinically informative cancer molecular subtypes from transcriptomic data generated on whole tumor tissue samples is a non-trivial task, especially given the various non-cancer cellular elements intertwined with cancer cells in the tumor microenvironment. Several groups including ours have developed computational deconvolution algorithms to dissect cellular compartments from bulk tumor transcriptomic data [5,6,7,8,9,10,11,12,13]. The estimated expression values of all genes for cancer cells corresponding to a molecular cancer subtype or for the stromal compartment of a particular tissue can be critical for achieving a better understanding of patient prognosis and drug response

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