Survival and drug response prediction for BRCA patients
Vidhi Malik »
Yogesh Kalakoti »
Durai Sundar »
DAILAB, Indian Institute of Technology, Delhi
This workflow evaluates the utility of an integrative multi-omics framework employing the recent advances in statistics and machine learning to estimate clinical outcomes in Breast cancer (BRCA) patients. A neural net workflow capable of quantifying survival and drug response along with identifying critical biomarkers was stringenltly optimized for roubusteness. The presented results demonstrates the effectiveness of our models in terms of sensitivity, specificity, accuracy among others. Moreover, conventional linear prediction models for data integration are limited due to steep dimensionality and heterogeneity associated with omics datasets. To mitigate theis drawback, we established a viable multi omics integration stratergy that can also be used in numerous scenarios other than just survival and drug response prediction.
Key highlights:
- Integration framework for multi omics data
- Workflow for predicting survival in BRCA patients
- Workflow for predicting drug responses for 100 drugs 😄
Our workflows can provide immense utility in improving personalized theraputic options and assisting clinicians in making rational decisions.
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