Яндекс Метрика
Биология и ИИ

CRL

Ulm University
Protein folding predictionProtein classificationProtein-ligand binding affinity predictionProtein structure similarity prediction

Модель CRL использует контрастивное обучение для глубокого анализа 3D-структур белков даже при ограниченном объеме данных. Этот ИИ-инструмент значительно ускоряет предсказание фолдинга и классификацию протеинов, открывая новые возможности для биоинформатики и медицины.

Learning from 3D protein structures has gained wide interest in protein modeling and structural bioinformatics. Unfortunately, the number of available structures is orders of magnitude lower than the training data sizes commonly used in computer vision and machine learning. Moreover, this number is reduced even further, when only annotated protein structures can be considered, making the training of existing models difficult and prone to over-fitting. To address this challenge, we introduce a new representation learning framework for 3D protein structures. Our framework uses unsupervised contrastive learning to learn meaningful representations of protein structures, making use of proteins from the Protein Data Bank. We show, how these representations can be used to solve a large variety of tasks, such as protein function prediction, protein fold classification, structural similarity prediction, and protein-ligand binding affinity prediction. Moreover, we show how fine-tuned networks, pre-trained with our algorithm, lead to significantly improved task performance, achieving new state-of-the-art results in many tasks.

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