Яндекс Метрика
Биология и ИИ

RoseTTAFold2-Lite

University of Washington,University of Texas Southwest Medical Center,Seoul National University,Massachusettes General Hospital,Harvard Medical School,Broad Institute
Protein interaction prediction

RoseTTAFold2-Lite представляет собой высокоскоростную ИИ-модель для предсказания структурных взаимодействий белков. Этот инструмент глубокого обучения критически важен для современной медицины, помогая ученым быстрее находить способы борьбы с инфекционными заболеваниями.

Identification of bacterial protein–protein interactions and predicting the structures of these complexes could aid in the understanding of pathogenicity mechanisms and developing treatments for infectious diseases. Here we developed RoseTTAFold2-Lite, a rapid deep learning model that leverages residue–residue coevolution and protein structure prediction to systematically identify and structurally characterize protein–protein interactions at the proteome-wide scale. Using this pipeline, we searched through 78 million pairs of proteins across 19 human bacterial pathogens and identified 1,923 confidently predicted complexes involving essential genes and 256 involving virulence factors. Many of these complexes were not previously known; we experimentally tested 12 such predictions, and half of them were validated. The predicted interactions span core metabolic and virulence pathways ranging from post-transcriptional modification to acid neutralization to outer-membrane machinery and should contribute to our understanding of the biology of these important pathogens and the design of drugs to combat them.

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