Artificial intelligence in fusion protein three-dimensional structure prediction: Review and perspective

被引:2
|
作者
Kumar, Himansu [1 ]
Kim, Pora [1 ]
机构
[1] Univ Texas Hlth Sci Ctr Houston, McWilliams Sch Biomed Informat, Dept Bioinformat & Syst Med, 7000 Fannin St, Houston, TX 77030 USA
来源
CLINICAL AND TRANSLATIONAL MEDICINE | 2024年 / 14卷 / 08期
基金
美国国家卫生研究院;
关键词
AI; AlphaFold2; deep learning; fusion protein structure; protein structure prediction; RoseTTAFold; MOLECULAR-DYNAMICS SIMULATION; CHRONIC MYELOID-LEUKEMIA; I-TASSER; BCR-ABL; THERAPEUTIC TARGETS; HIGH-THROUGHPUT; DESIGN; SERVER; INHIBITORS; IDENTIFICATION;
D O I
10.1002/ctm2.1789
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Recent advancements in artificial intelligence (AI) have accelerated the prediction of unknown protein structures. However, accurately predicting the three-dimensional (3D) structures of fusion proteins remains a difficult task because the current AI-based protein structure predictions are focused on the WT proteins rather than on the newly fused proteins in nature. Following the central dogma of biology, fusion proteins are translated from fusion transcripts, which are made by transcribing the fusion genes between two different loci through the chromosomal rearrangements in cancer. Accurately predicting the 3D structures of fusion proteins is important for understanding the functional roles and mechanisms of action of new chimeric proteins. However, predicting their 3D structure using a template-based model is challenging because known template structures are often unavailable in databases. Deep learning (DL) models that utilize multi-level protein information have revolutionized the prediction of protein 3D structures. In this review paper, we highlighted the latest advancements and ongoing challenges in predicting the 3D structure of fusion proteins using DL models. We aim to explore both the advantages and challenges of employing AlphaFold2, RoseTTAFold, tr-Rosetta and D-I-TASSER for modelling the 3D structures.Highlights This review provides the overall pipeline and landscape of the prediction of the 3D structure of fusion protein. This review provides the factors that should be considered in predicting the 3D structures of fusion proteins using AI approaches in each step. This review highlights the latest advancements and ongoing challenges in predicting the 3D structure of fusion proteins using deep learning models. This review explores the advantages and challenges of employing AlphaFold2, RoseTTAFold, tr-Rosetta, and D-I-TASSER to model 3D structures. This review provides the overall pipeline and landscape of the prediction of the 3D structure of fusion protein. This review provides the factors that should be considered in predicting the 3D structures of fusion proteins using AI approaches in each step. This review highlights the latest advancements and ongoing challenges in predicting the 3D structure of fusion proteins using deep learning models. This review explores the advantages and challenges of employing AlphaFold2, RoseTTAFold, tr-Rosetta and D-I-TASSER to model 3D structures. image
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页数:23
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