A machine learning approach to integrate big data for precision medicine in acute myeloid leukemia.
Su-In LeeSafiye CelikBenjamin A LogsdonScott M LundbergTimothy J MartinsVivian G OehlerElihu H EsteyChris P MillerSylvia ChienJin DaiAkanksha SaxenaC Anthony BlauPamela S BeckerPublished in: Nature communications (2018)
Cancers that appear pathologically similar often respond differently to the same drug regimens. Methods to better match patients to drugs are in high demand. We demonstrate a promising approach to identify robust molecular markers for targeted treatment of acute myeloid leukemia (AML) by introducing: data from 30 AML patients including genome-wide gene expression profiles and in vitro sensitivity to 160 chemotherapy drugs, a computational method to identify reliable gene expression markers for drug sensitivity by incorporating multi-omic prior information relevant to each gene's potential to drive cancer. We show that our method outperforms several state-of-the-art approaches in identifying molecular markers replicated in validation data and predicting drug sensitivity accurately. Finally, we identify SMARCA4 as a marker and driver of sensitivity to topoisomerase II inhibitors, mitoxantrone, and etoposide, in AML by showing that cell lines transduced to have high SMARCA4 expression reveal dramatically increased sensitivity to these agents.
Keyphrases
- acute myeloid leukemia
- big data
- genome wide
- machine learning
- gene expression
- end stage renal disease
- ejection fraction
- dna methylation
- newly diagnosed
- artificial intelligence
- copy number
- electronic health record
- allogeneic hematopoietic stem cell transplantation
- squamous cell carcinoma
- radiation therapy
- drug induced
- healthcare
- single molecule
- risk assessment
- single cell
- human health
- patient reported
- long non coding rna