Яндекс Метрика
Биология и ИИ

CLEAN-Contact

Cleveland Clinic,Kent State University,Pacific Northwest National Laboratory
Enzyme function prediction

Модель CLEAN-Contact применяет методы глубокого обучения для решения одной из сложнейших задач биологии — предсказания функций ферментов. Этот ИИ-алгоритм значительно превосходит классические вычислительные методы, обеспечивая высокую точность анализа биомолекул. Проект помогает ученым быстрее находить применение новым ферментам в медицине и промышленности.

Recent years have witnessed the remarkable progress of deep learning within the realm of scientific disciplines, yielding a wealth of promising outcomes. A prominent challenge within this domain has been the task of predicting enzyme function, a complex problem that has seen the development of numerous computational methods, particularly those rooted in deep learning techniques. However, the majority of these methods have primarily focused on either amino acid sequence data or protein structure data, neglecting the potential synergy of combining of both modalities. To address this gap, we propose a novel Contrastive Learning framework for Enzyme functional ANnotation prediction combined with protein amino acid sequences and Contact maps (CLEAN-Contact). We rigorously evaluated the performance of our CLEAN-Contact framework against the state-of-the-art enzyme function prediction model using multiple benchmark datasets. Using CLEAN-Contact, we predicted novel enzyme functions within the proteome of Prochlorococcus marinus MED4. Our findings convincingly demonstrate the substantial superiority of our CLEAN-Contact framework, marking a significant step forward in enzyme function prediction accuracy.

Что такое CLEAN-Contact?+
Кто разработал CLEAN-Contact?+
Какие задачи решает CLEAN-Contact?+