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CETSA Feature Based Clustering for Protein Outlier Discovery by Protein-to-Protein Interaction Prediction

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Date 2022 Sep 10
PMID 36085889
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Abstract

The Cellular Thermal Shift Assay (CETSA) is a biophysical assay based on the principle of ligand-induced thermal stabilization of target proteins. This technology has revolutionized cell-based target engagement studies and has been used as guidance for drug design. Although many ap-plications of CETSA data have been explored, the correlations between CETSA data and protein-protein interactions (PPI) have barely been touched. In this study, we conduct the first exploration study applying CETSA data for PPI prediction. We use a machine learning method, Decision Tree, to predict PPI scores using proteins' CETSA features. It shows promising results that the predicted PPI scores closely match the ground-truth PPI scores. Furthermore, for a small number of protein pairs, whose PPI score predictions mismatch the ground truth, we use iterative clustering strategy to gradually reduce the number of these pairs. At the end of iterative clustering, the remaining protein pairs may have some unusual properties and are of scientific value for further biological investigation. Our study has demonstrated that PPI is a brand-new application of CETSA data. At the same time, it also manifests that CETSA data can be used as a new data source for PPI exploration study.

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Deep learning based CETSA feature prediction cross multiple cell lines with latent space representation.

Zhao S, Yang X, Zeng Z, Qian P, Zhao Z, Dai L Sci Rep. 2024; 14(1):1878.

PMID: 38253642 PMC: 10810365. DOI: 10.1038/s41598-024-51193-6.