Predicting Cancer Drug Response In Vivo by Learning an Optimal Feature Selection of Tumour Molecular Profiles.
Linh C NguyenStefan NaulaertsAlejandra BrunaGhita GhislatPedro J BallesterPublished in: Biomedicines (2021)
(1) Background: Inter-tumour heterogeneity is one of cancer's most fundamental features. Patient stratification based on drug response prediction is hence needed for effective anti-cancer therapy. However, single-gene markers of response are rare and/or may fail to achieve a significant impact in the clinic. Machine Learning (ML) is emerging as a particularly promising complementary approach to precision oncology. (2) Methods: Here we leverage comprehensive Patient-Derived Xenograft (PDX) pharmacogenomic data sets with dimensionality-reducing ML algorithms with this purpose. (3) Results: Combining multiple gene alterations via ML leads to better discrimination between sensitive and resistant PDXs in 19 of the 26 analysed cases. Highly predictive ML models employing concise gene lists were found for three cases: paclitaxel (breast cancer), binimetinib (breast cancer) and cetuximab (colorectal cancer). Interestingly, each of these multi-gene ML models identifies some treatment-responsive PDXs not harbouring the best actionable mutation for that case. Thus, ML multi-gene predictors generally have much fewer false negatives than the corresponding single-gene marker. (4) Conclusions: As PDXs often recapitulate clinical outcomes, these results suggest that many more patients could benefit from precision oncology if ML algorithms were also applied to existing clinical pharmacogenomics data, especially those algorithms generating classifiers combining data-selected gene alterations.
Keyphrases
- machine learning
- genome wide
- copy number
- big data
- genome wide identification
- cancer therapy
- deep learning
- palliative care
- artificial intelligence
- primary care
- chronic kidney disease
- end stage renal disease
- ejection fraction
- gene expression
- dna methylation
- emergency department
- squamous cell carcinoma
- papillary thyroid
- prognostic factors
- radiation therapy
- young adults
- case report
- rectal cancer
- lymph node metastasis
- replacement therapy
- locally advanced
- wild type