Predicting response to enzalutamide and abiraterone in metastatic prostate cancer using whole-omics machine learning.
Anouk C de JongAlexandra DanyiJob van RietRonald de WitMartin SjostromFelix Y FengJeroen de RidderMartijn Paul LolkemaPublished in: Nature communications (2023)
Response to androgen receptor signaling inhibitors (ARSI) varies widely in metastatic castration resistant prostate cancer (mCRPC). To improve treatment guidance, biomarkers are needed. We use whole-genomics (WGS; n = 155) with matching whole-transcriptomics (WTS; n = 113) from biopsies of ARSI-treated mCRPC patients for unbiased discovery of biomarkers and development of machine learning-based prediction models. Tumor mutational burden (q < 0.001), structural variants (q < 0.05), tandem duplications (q < 0.05) and deletions (q < 0.05) are enriched in poor responders, coupled with distinct transcriptomic expression profiles. Validating various classification models predicting treatment duration with ARSI on our internal and external mCRPC cohort reveals two best-performing models, based on the combination of prior treatment information with either the four combined enriched genomic markers or with overall transcriptomic profiles. In conclusion, predictive models combining genomic, transcriptomic, and clinical data can predict response to ARSI in mCRPC patients and, with additional optimization and prospective validation, could improve treatment guidance.
Keyphrases
- machine learning
- prostate cancer
- single cell
- end stage renal disease
- squamous cell carcinoma
- ejection fraction
- small cell lung cancer
- healthcare
- artificial intelligence
- deep learning
- copy number
- peritoneal dialysis
- chronic kidney disease
- electronic health record
- prognostic factors
- gene expression
- big data
- social media
- risk factors