4.8 Article

Interpretable deep learning for chromatin-informed inference of transcriptional programs driven by somatic alterations across cancers

期刊

NUCLEIC ACIDS RESEARCH
卷 50, 期 19, 页码 10869-10881

出版社

OXFORD UNIV PRESS
DOI: 10.1093/nar/gkac881

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资金

  1. National Institutes of Health [R01HG010589, R21CA216452, R00 CA207871, R01 LM012011]
  2. Center for Machine Learning and Health at Carnegie Mellon University
  3. UPMC-ITTC fund
  4. Pennsylvania Department of Health [FP00003273]
  5. Mario Lemieux Foundation
  6. AWSMachine LearningResearch Award

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CITRUS is a neural network-based model that simulates the impact of somatic alterations on transcription factors and transcriptional programs, aiding personalized therapeutic decisions and revealing transcriptional program variations between tumor types. Using self-attention mechanism and hidden nodes, CITRUS predicts patient-specific TF activities.
Cancer is a disease of gene dysregulation, where cells acquire somatic and epigenetic alterations that drive aberrant cellular signaling. These alterations adversely impact transcriptional programs and cause profound changes in gene expression. Interpreting somatic alterations within context-specific transcriptional programs will facilitate personalized therapeutic decisions but is a monumental task. Toward this goal, we develop a partially interpretable neural network model called Chromatin-informed Inference of Transcriptional Regulators Using Self-attention mechanism (CITRUS). CITRUS models the impact of somatic alterations on transcription factors and downstream transcriptional programs. Our approach employs a self-attention mechanism to model the contextual impact of somatic alterations. Furthermore, CITRUS uses a layer of hidden nodes to explicitly represent the state of transcription factors (TFs) to learn the relationships between TFs and their target genes based on TF binding motifs in the open chromatin regions of tumor samples. We apply CITRUS to genomic, transcriptomic, and epigenomic data from 17 cancer types profiled by The Cancer Genome Atlas. CITRUS predicts patient-specific TF activities and reveals transcriptional program variations between and within tumor types. We show that CITRUS yields biological insights into delineating TFs associated with somatic alterations in individual tumors. Thus, CITRUS is a promising tool for precision oncology.

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