Article Synopsis

  • The accuracy of predicting how individual patients respond to new drugs is vital for personalized medicine, but limited patient data makes it challenging to create effective machine learning models.
  • Despite existing methods to leverage cell-line data for these predictions, issues like data variability lead to unreliable outcomes.
  • The newly developed CODE-AE autoencoder addresses these challenges by extracting relevant biological signals and improving prediction accuracy for patient-specific drug responses, demonstrating promise in screening multiple drugs for a large cancer patient population.

Category Ranking

98%

Total Visits

921

Avg Visit Duration

2 minutes

Citations

20

Article Abstract

Accurate and robust prediction of patient-specific responses to a new compound is critical to personalized drug discovery and development. However, patient data are often too scarce to train a generalized machine learning model. Although many methods have been developed to utilize cell-line screens for predicting clinical responses, their performances are unreliable owing to data heterogeneity and distribution shift. Here we have developed a novel context-aware deconfounding autoencoder (CODE-AE) that can extract intrinsic biological signals masked by context-specific patterns and confounding factors. Extensive comparative studies demonstrated that CODE-AE effectively alleviated the out-of-distribution problem for the model generalization and significantly improved accuracy and robustness over state-of-the-art methods in predicting patient-specific clinical drug responses purely from cell-line compound screens. Using CODE-AE, we screened 59 drugs for 9,808 patients with cancer. Our results are consistent with existing clinical observations, suggesting the potential of CODE-AE in developing personalized therapies and drug response biomarkers.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11185412PMC
http://dx.doi.org/10.1038/s42256-022-00541-0DOI Listing

Publication Analysis

Top Keywords

context-aware deconfounding
8
deconfounding autoencoder
8
robust prediction
8
clinical drug
8
drug response
8
cell-line compound
8
autoencoder robust
4
prediction personalized
4
clinical
4
personalized clinical
4

Similar Publications

Understanding emotions from diverse contexts has received widespread attention in computer vision communities. The core philosophy of Context-Aware Emotion Recognition (CAER) is to provide valuable semantic cues for recognizing the emotions of target persons by leveraging rich contextual information. Current approaches invariably focus on designing sophisticated structures to extract perceptually critical representations from contexts.

View Article and Find Full Text PDF
Article Synopsis
  • The accuracy of predicting how individual patients respond to new drugs is vital for personalized medicine, but limited patient data makes it challenging to create effective machine learning models.
  • Despite existing methods to leverage cell-line data for these predictions, issues like data variability lead to unreliable outcomes.
  • The newly developed CODE-AE autoencoder addresses these challenges by extracting relevant biological signals and improving prediction accuracy for patient-specific drug responses, demonstrating promise in screening multiple drugs for a large cancer patient population.
View Article and Find Full Text PDF