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AGML:基于自适应图的多标签学习用于预测EMT过程中RBP及事件关联

AGML: Adaptive Graph-Based Multi-Label Learning for Prediction of RBP and as Event Associations During EMT.

作者信息

Qiu Yushan, Chen Wensheng, Ching Wai-Ki, Cai Hongmin, Jiang Hao, Zou Quan

出版信息

IEEE/ACM Trans Comput Biol Bioinform. 2024 Nov-Dec;21(6):2113-2122. doi: 10.1109/TCBB.2024.3440913. Epub 2024 Dec 10.

Abstract

Increasing evidence has indicated that RNA-binding proteins (RBPs) play an essential role in mediating alternative splicing (AS) events during epithelial-mesenchymal transition (EMT). However, due to the substantial cost and complexity of biological experiments, how AS events are regulated and influenced remains largely unknown. Thus, it is important to construct effective models for inferring hidden RBP-AS event associations during EMT process. In this paper, a novel and efficient model was developed to identify AS event-related candidate RBPs based on Adaptive Graph-based Multi-Label learning (AGML). In particular, we propose to adaptively learn a new affinity graph to capture the intrinsic structure of data for both RBPs and AS events. Multi-view similarity matrices are employed for maintaining the intrinsic structure and guiding the adaptive graph learning. We then simultaneously update the RBP and AS event associations that are predicted from both spaces by applying multi-label learning. The experimental results have shown that our AGML achieved AUC values of 0.9521 and 0.9873 by 5-fold and leave-one-out cross-validations, respectively, indicating the superiority and effectiveness of our proposed model. Furthermore, AGML can serve as an efficient and reliable tool for uncovering novel AS events-associated RBPs and is applicable for predicting the associations between other biological entities.

摘要

越来越多的证据表明,RNA结合蛋白(RBPs)在介导上皮-间质转化(EMT)过程中的可变剪接(AS)事件中起着至关重要的作用。然而,由于生物学实验成本高昂且复杂,AS事件如何被调控和影响在很大程度上仍然未知。因此,构建有效的模型来推断EMT过程中隐藏的RBP-AS事件关联非常重要。在本文中,我们开发了一种新颖且高效的模型,基于自适应图多标签学习(AGML)来识别与AS事件相关的候选RBP。具体而言,我们建议自适应地学习一个新的亲和图,以捕捉RBP和AS事件数据的内在结构。多视图相似性矩阵用于维持内在结构并指导自适应图学习。然后,我们通过应用多标签学习同时更新从两个空间预测的RBP和AS事件关联。实验结果表明,我们的AGML在5折交叉验证和留一法交叉验证中分别获得了0.9521和0.9873的AUC值,表明我们提出的模型具有优越性和有效性。此外,AGML可以作为一种高效且可靠的工具,用于揭示与AS事件相关的新型RBP,并且适用于预测其他生物实体之间的关联。

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