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Large Language Models for Bioinformatics

Authors :
Ruan, Wei
Lyu, Yanjun
Zhang, Jing
Cai, Jiazhang
Shu, Peng
Ge, Yang
Lu, Yao
Gao, Shang
Wang, Yue
Wang, Peilong
Zhao, Lin
Wang, Tao
Liu, Yufang
Fang, Luyang
Liu, Ziyu
Liu, Zhengliang
Li, Yiwei
Wu, Zihao
Chen, Junhao
Jiang, Hanqi
Pan, Yi
Yang, Zhenyuan
Chen, Jingyuan
Liang, Shizhe
Zhang, Wei
Ma, Terry
Dou, Yuan
Zhang, Jianli
Gong, Xinyu
Gan, Qi
Zou, Yusong
Chen, Zebang
Qian, Yuanxin
Yu, Shuo
Lu, Jin
Song, Kenan
Wang, Xianqiao
Sikora, Andrea
Li, Gang
Li, Xiang
Li, Quanzheng
Wang, Yingfeng
Zhang, Lu
Abate, Yohannes
He, Lifang
Zhong, Wenxuan
Liu, Rongjie
Huang, Chao
Liu, Wei
Shen, Ye
Ma, Ping
Zhu, Hongtu
Yan, Yajun
Zhu, Dajiang
Liu, Tianming
Publication Year :
2025

Abstract

With the rapid advancements in large language model (LLM) technology and the emergence of bioinformatics-specific language models (BioLMs), there is a growing need for a comprehensive analysis of the current landscape, computational characteristics, and diverse applications. This survey aims to address this need by providing a thorough review of BioLMs, focusing on their evolution, classification, and distinguishing features, alongside a detailed examination of training methodologies, datasets, and evaluation frameworks. We explore the wide-ranging applications of BioLMs in critical areas such as disease diagnosis, drug discovery, and vaccine development, highlighting their impact and transformative potential in bioinformatics. We identify key challenges and limitations inherent in BioLMs, including data privacy and security concerns, interpretability issues, biases in training data and model outputs, and domain adaptation complexities. Finally, we highlight emerging trends and future directions, offering valuable insights to guide researchers and clinicians toward advancing BioLMs for increasingly sophisticated biological and clinical applications.<br />Comment: 64 pages, 1 figure

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2501.06271
Document Type :
Working Paper