Generative Adversarial Networks Accurately Reconstruct Pan-Cancer Histology from Pathologic, Genomic, and Radiographic Latent Features.
Frederick M HowardHanna M HieromnimonSiddhi RameshJames DolezalSara KochannyQianchen ZhangBrad FeigerJoseph PetersonCheng FanCharles M PerouJasmine VickeryMegan SullivanKimberly ColeGalina KhramtsovaAlexander T PearsonPublished in: bioRxiv : the preprint server for biology (2024)
Artificial intelligence models have been increasingly used in the analysis of tumor histology to perform tasks ranging from routine classification to identification of novel molecular features. These approaches distill cancer histologic images into high-level features which are used in predictions, but understanding the biologic meaning of such features remains challenging. We present and validate a custom generative adversarial network - HistoXGAN - capable of reconstructing representative histology using feature vectors produced by common feature extractors. We evaluate HistoXGAN across 29 cancer subtypes and demonstrate that reconstructed images retain information regarding tumor grade, histologic subtype, and gene expression patterns. We leverage HistoXGAN to illustrate the underlying histologic features for deep learning models for actionable mutations, identify model reliance on histologic batch effect in predictions, and demonstrate accurate reconstruction of tumor histology from radiographic imaging for a 'virtual biopsy'.
Keyphrases
- deep learning
- artificial intelligence
- machine learning
- papillary thyroid
- convolutional neural network
- gene expression
- squamous cell
- big data
- high resolution
- rheumatoid arthritis
- healthcare
- radiation therapy
- young adults
- childhood cancer
- neoadjuvant chemotherapy
- palliative care
- clinical practice
- cross sectional
- working memory
- copy number
- genome wide
- advanced cancer
- locally advanced