Lactylation prediction models based on protein sequence and structural feature fusion

Author:

Yang Ye-Hong12ORCID,Yang Jun-Tao1234,Liu Jiang-Feng1234

Affiliation:

1. State Key Laboratory of Common Mechanism Research for Major Diseases , Department of Biochemistry and Molecular Biology, Institute of Basic Medical Sciences, , No.5, Dongdan 3, Dongcheng District Municipality of Beijing, Beijing 100005 , China

2. Chinese Academy of Medical Sciences & Peking Union Medical College , Department of Biochemistry and Molecular Biology, Institute of Basic Medical Sciences, , No.5, Dongdan 3, Dongcheng District Municipality of Beijing, Beijing 100005 , China

3. Plastic Surgery Hospital , , Beijing 100144 , PR China

4. Chinese Academy of Medical Sciences and Peking Union Medical College , , Beijing 100144 , PR China

Abstract

Abstract Lysine lactylation (Kla) is a newly discovered posttranslational modification that is involved in important life activities, such as glycolysis-related cell function, macrophage polarization and nervous system regulation, and has received widespread attention due to the Warburg effect in tumor cells. In this work, we first design a natural language processing method to automatically extract the 3D structural features of Kla sites, avoiding potential biases caused by manually designed structural features. Then, we establish two Kla prediction frameworks, Attention-based feature fusion Kla model (ABFF-Kla) and EBFF-Kla, to integrate the sequence features and the structure features based on the attention layer and embedding layer, respectively. The results indicate that ABFF-Kla and Embedding-based feature fusion Kla model (EBFF-Kla), which fuse features from protein sequences and spatial structures, have better predictive performance than that of models that use only sequence features. Our work provides an approach for the automatic extraction of protein structural features, as well as a flexible framework for Kla prediction. The source code and the training data of the ABFF-Kla and the EBFF-Kla are publicly deposited at: https://github.com/ispotato/Lactylation_model.

Funder

Chinese Academy of Medical Sciences Innovation Fund for Medical Sciences

Biomedical High Performance Computing Platform

Chinese Academy of Medical Sciences

Publisher

Oxford University Press (OUP)

Reference38 articles.

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