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No. Title Authors Journal
182 Protein function prediction as approximate semantic entailment Maxat Kulmanov, Francisco J. Guzmán-Vega, Paula Duek Roggli, Lydie Lane, Stefan T. Arold and Robert Hoehndorf Nature Machine Intelligence 2025(6): 220-228
Abstract
Abstract
The Gene Ontology (GO) is a formal, axiomatic theory with over 100,000 axioms that describe the molecular functions, biological processes and cellular locations of proteins in three subontologies. Predicting the functions of proteins using the GO requires both learning and reasoning capabilities in order to maintain consistency and exploit the background knowledge in the GO. Many methods have been developed to automatically predict protein functions, but effectively exploiting all the axioms in the GO for knowledge-enhanced learning has remained a challenge. We have developed DeepGO-SE, a method that predicts GO functions from protein sequences using a pretrained large language model. DeepGO-SE generates multiple approximate models of GO, and a neural network predicts the truth values of statements about protein functions in these approximate models. We aggregate the truth values over multiple models so that DeepGO-SE approximates semantic entailment when predicting protein functions. We show, using several benchmarks, that the approach effectively exploits background knowledge in the GO and improves protein function prediction compared to state-of-the-art methods.


Date: 2025.07.11 (FRI) 13:00
Presenter: Seokwoo JO (CSB Lab. Integrated MS. student)

조석우 학생이 주도하여 Deep Learning based GO prediction 를 주제로 7.11 (금) 오후 1시 저널클럽을 진행했습니다.