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A protein expression atlas on tissue samples and cell lines from cancer patients provides insights into tumor heterogeneity and dependencies.

Jun LiWei LiuKamalika MojumdarHong KimZhicheng ZhouZhenlin JuShwetha V KumarPatrick Kwok-Shing NgHan ChenMichael A DaviesYiling LuRehan AkbaniGordon B MillsHan Liang
Published in: Nature cancer (2024)
The Cancer Genome Atlas (TCGA) and the Cancer Cell Line Encyclopedia (CCLE) are foundational resources in cancer research, providing extensive molecular and phenotypic data. However, large-scale proteomic data across various cancer types for these cohorts remain limited. Here, we expand upon our previous work to generate high-quality protein expression data for approximately 8,000 TCGA patient samples and around 900 CCLE cell line samples, covering 447 clinically relevant proteins, using reverse-phase protein arrays. These protein expression profiles offer profound insights into intertumor heterogeneity and cancer dependency and serve as sensitive functional readouts for somatic alterations. We develop a systematic protein-centered strategy for identifying synthetic lethality pairs and experimentally validate an interaction between protein kinase A subunit α and epidermal growth factor receptor. We also identify metastasis-related protein markers with clinical relevance. This dataset represents a valuable resource for advancing our understanding of cancer mechanisms, discovering protein biomarkers and developing innovative therapeutic strategies.
Keyphrases
  • papillary thyroid
  • squamous cell
  • epidermal growth factor receptor
  • single cell
  • protein kinase
  • gene expression
  • big data
  • small molecule
  • tyrosine kinase
  • deep learning
  • artificial intelligence