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Improving Compound-Protein Interaction Prediction by Self-Training with Augmenting Negative Samples.

Takuto KoyamaShigeyuki MatsumotoHiroaki IwataRyosuke KojimaYasushi Okuno
Published in: Journal of chemical information and modeling (2023)
Identifying compound-protein interactions (CPIs) is crucial for drug discovery. Since experimentally validating CPIs is often time-consuming and costly, computational approaches are expected to facilitate the process. Rapid growths of available CPI databases have accelerated the development of many machine-learning methods for CPI predictions. However, their performance, particularly their generalizability against external data, often suffers from a data imbalance attributed to the lack of experimentally validated inactive (negative) samples. In this study, we developed a self-training method for augmenting both credible and informative negative samples to improve the performance of models impaired by data imbalances. The constructed model demonstrated higher performance than those constructed with other conventional methods for solving data imbalances, and the improvement was prominent for external datasets. Moreover, examination of the prediction score thresholds for pseudo-labeling during self-training revealed that augmenting the samples with ambiguous prediction scores is beneficial for constructing a model with high generalizability. The present study provides guidelines for improving CPI predictions on real-world data, thus facilitating drug discovery.
Keyphrases
  • drug discovery
  • big data
  • electronic health record
  • machine learning
  • wastewater treatment
  • artificial intelligence
  • binding protein
  • single cell
  • deep learning
  • protein protein
  • sensitive detection
  • quantum dots