A clonal expression biomarker associates with lung cancer mortality.
Dhruva BiswasNicolai Juul BirkbakRachel RosenthalCrispin T HileyEmilia L LimKrisztian PappStefan BoeingMarcin KrzystanekDijana DjureinovicLinnea La FleurMaria GrecoBalázs DömeJános FillingerHans BrunnströmYin WuDavid A MooreMarcin SkrzypskiChristopher AbboshKevin LitchfieldMaise Al BakirThomas B K WatkinsSelvaraju VeeriahGareth A WilsonMariam Jamal-HanjaniJudit MoldvayJohan BotlingArul M ChinnaiyanPatrick MickeAllan HackshawJiri BartekIstvan CsabaiZoltan SzallasiJavier HerreroNicholas McGranahanCharles Swantonnull nullPublished in: Nature medicine (2019)
An aim of molecular biomarkers is to stratify patients with cancer into disease subtypes predictive of outcome, improving diagnostic precision beyond clinical descriptors such as tumor stage1. Transcriptomic intratumor heterogeneity (RNA-ITH) has been shown to confound existing expression-based biomarkers across multiple cancer types2-6. Here, we analyze multi-region whole-exome and RNA sequencing data for 156 tumor regions from 48 patients enrolled in the TRACERx study to explore and control for RNA-ITH in non-small cell lung cancer. We find that chromosomal instability is a major driver of RNA-ITH, and existing prognostic gene expression signatures are vulnerable to tumor sampling bias. To address this, we identify genes expressed homogeneously within individual tumors that encode expression modules of cancer cell proliferation and are often driven by DNA copy-number gains selected early in tumor evolution. Clonal transcriptomic biomarkers overcome tumor sampling bias, associate with survival independent of clinicopathological risk factors, and may provide a general strategy to refine biomarker design across cancer types.
Keyphrases
- copy number
- gene expression
- poor prognosis
- papillary thyroid
- risk factors
- single cell
- cell proliferation
- mitochondrial dna
- end stage renal disease
- dna methylation
- squamous cell
- ejection fraction
- newly diagnosed
- chronic kidney disease
- cardiovascular disease
- rna seq
- type diabetes
- cardiovascular events
- peritoneal dialysis
- squamous cell carcinoma
- electronic health record
- young adults
- prognostic factors
- patient reported outcomes
- deep learning
- data analysis
- patient reported