DeepPLM_mCNN: An approach for enhancing Ion Channel and Ion Transporter Recognition by Multi-Window CNN based on features from Pre-trained Language Models

卷积神经网络 计算机科学 人工智能 深度学习 运输机 离子通道 模式识别(心理学) 化学 生物化学 基因 受体
作者
Viet Bac Le,M. G. Abbas Malik,Yi-Hsuan Tseng,Yu-Cheng Lee,Chengwei Huang,Yu‐Yen Ou
出处
期刊:Computational Biology and Chemistry [Elsevier BV]
卷期号:110: 108055-108055
标识
DOI:10.1016/j.compbiolchem.2024.108055
摘要

Accurate classification of membrane proteins like ion channels and transporters is critical for elucidating cellular processes and drug development. We present DeepPLM_mCNN, a novel framework combining Pretrained Language Models (PLMs) and multi-window convolutional neural networks (mCNNs) for effective classification of membrane proteins into ion channels and ion transporters. Our approach extracts informative features from protein sequences by utilizing various PLMs, including TAPE, ProtT5_XL_U50, ESM-1b, ESM-2_480, and ESM-2_1280. These PLM-derived features are then input into a mCNN architecture to learn conserved motifs important for classification. When evaluated on ion transporters, our best performing model utilizing ProtT5 achieved 90% sensitivity, 95.8% specificity, and 95.4% overall accuracy. For ion channels, we obtained 88.3% sensitivity, 95.7% specificity, and 95.2% overall accuracy using ESM-1b features. Our proposed DeepPLM_mCNN framework demonstrates significant improvements over previous methods on unseen test data. This study illustrates the potential of combining PLMs and deep learning for accurate computational identification of membrane proteins from sequence data alone. Our findings have important implications for membrane protein research and drug development targeting ion channels and transporters. The data and source codes in this study are publicly available at the following link: https://github.com/s1129108/DeepPLM_mCNN.

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