The Molecular Twin artificial-intelligence platform integrates multi-omic data to predict outcomes for pancreatic adenocarcinoma patients.
Arsen OsipovOgnjen NikolicArkadiusz GertychSarah ParkerAndrew HendifarPranav SinghDarya FilippovaGrant DagliyanCristina R FerroneLei ZhengJason H MooreWarren TourtellotteJennifer E Van EykDan TheodorescuPublished in: Nature cancer (2024)
Contemporary analyses focused on a limited number of clinical and molecular biomarkers have been unable to accurately predict clinical outcomes in pancreatic ductal adenocarcinoma. Here we describe a precision medicine platform known as the Molecular Twin consisting of advanced machine-learning models and use it to analyze a dataset of 6,363 clinical and multi-omic molecular features from patients with resected pancreatic ductal adenocarcinoma to accurately predict disease survival (DS). We show that a full multi-omic model predicts DS with the highest accuracy and that plasma protein is the top single-omic predictor of DS. A parsimonious model learning only 589 multi-omic features demonstrated similar predictive performance as the full multi-omic model. Our platform enables discovery of parsimonious biomarker panels and performance assessment of outcome prediction models learning from resource-intensive panels. This approach has considerable potential to impact clinical care and democratize precision cancer medicine worldwide.
Keyphrases
- artificial intelligence
- machine learning
- high throughput
- big data
- end stage renal disease
- healthcare
- deep learning
- chronic kidney disease
- palliative care
- prognostic factors
- ejection fraction
- newly diagnosed
- small molecule
- peritoneal dialysis
- insulin resistance
- adipose tissue
- skeletal muscle
- single cell
- risk assessment
- young adults
- pain management