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Drug Response Prediction

Drug response prediction is about using computer methods to guess how someone will react to certain medicines. It involves looking at various types of data, like genes, drug structures, and medical records, to predict how well a person will respond to a particular treatment. The aim is to create personalized treatment plans for patients, ensuring they get the best results with the fewest side effects. This approach not only helps doctors choose the right medicines for each patient but also speeds up the development of new drugs by predicting their effectiveness and safety. Techniques like machine learning and deep learning are commonly used to make these predictions based on different types of data, such as genetics and medical history.

Papers

Showing 1120 of 46 papers

TitleStatusHype
Dr.VAE: Drug Response Variational Autoencoder0
DIVERSE: Bayesian Data IntegratiVE learning for precise drug ResponSE prediction0
Deep learning methods for drug response prediction in cancer: predominant and emerging trends0
Depression Diagnosis and Drug Response Prediction via Recurrent Neural Networks and Transformers Utilizing EEG Signals0
Distributionally Robust Multi-Output Regression Ranking0
A cross-study analysis of drug response prediction in cancer cell lines0
CellVerse: Do Large Language Models Really Understand Cell Biology?0
Drug response prediction by ensemble learning and drug-induced gene expression signatures0
Drug response prediction by inferring pathway-response associations with Kernelized Bayesian Matrix Factorization0
Efficient Normalized Conformal Prediction and Uncertainty Quantification for Anti-Cancer Drug Sensitivity Prediction with Deep Regression Forests0
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