BiGM-lncLoc:预测细胞特异性长链非编码rna亚细胞定位的双水平多图元学习。

IF 3.9 2区 生物学 Q1 MATHEMATICAL & COMPUTATIONAL BIOLOGY Interdisciplinary Sciences: Computational Life Sciences Pub Date : 2024-12-26 DOI:10.1007/s12539-024-00679-y
Xi Deng, Lin Liu
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引用次数: 0

摘要

长链非编码rna (lncRNAs)的精确时空表达在生物调控中起着关键作用,lncRNAs在不同亚细胞定位中的异常表达与多种癌症的发生和发展有着复杂的联系。计算方法为预测lncRNA亚细胞定位提供了有效的手段,但目前的研究要么忽略了细胞系和组织的特异性,要么忽略了细胞系之间的相关性和共享信息。在这项研究中,我们提出了一种新的方法BiGM-lncLoc,将lncRNA跨细胞系亚细胞定位的预测作为一项多图元学习任务。我们的研究涉及两类数据:不同细胞系中核苷酸序列的定位数据和细胞系表达数据。BiGM-lncLoc包括从细胞系表达数据中学习特定知识的细胞系特定优化网络和跨细胞系优化的图神经网络。随后,通过双级优化获得的特定和共享知识被应用于新的细胞系预测任务,而无需重新训练或微调。此外,通过不同核苷酸组合对模型影响的关键特征分析,我们确认了基于相关分析的细胞系特异性研究的必要性。最后,在不同数据大小的细胞系上进行的实验表明,BiGM-lncLoc在预测精度方面优于其他方法,平均准确率为97.7%。在去除重叠样本以保证每个细胞系的数据独立性后,准确率在82.4% ~ 94.7%之间,仍然超过现有模型。我们的代码可以在https://github.com/BioCL1/BiGM-lncLoc上找到。
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BiGM-lncLoc: Bi-level Multi-Graph Meta-Learning for Predicting Cell-Specific Long Noncoding RNAs Subcellular Localization.

The precise spatiotemporal expression of long noncoding RNAs (lncRNAs) plays a pivotal role in biological regulation, and aberrant expression of lncRNAs in different subcellular localizations has been intricately linked to the onset and progression of a variety of cancers. Computational methods provide effective means for predicting lncRNA subcellular localization, but current studies either ignore cell line and tissue specificity or the correlation and shared information among cell lines. In this study, we propose a novel approach, BiGM-lncLoc, treating the prediction of lncRNA subcellular localization across cell lines as a multi-graph meta-learning task. Our investigation involves two categories of data: the localization data of nucleotide sequences in different cell lines and cell line expression data. BiGM-lncLoc comprises a cell line-specific optimization network learning specific knowledge from cell line expression data and a graph neural network optimized across cell lines. Subsequently, the specific and shared knowledge acquired through bi-level optimization is applied to a new cell-line prediction task without the need for re-training or fine-tuning. Additionally, through key feature analysis of the impact of different nucleotide combinations on the model, we confirm the necessity of cell line-specific studies based on correlation analysis. Finally, experiments conducted on various cell lines with different data sizes indicate that BiGM-lncLoc outperforms other methods in terms of prediction accuracy, with an average accuracy of 97.7%. After removing overlapping samples to ensure data independence for each cell line, the accuracy ranged from 82.4% to 94.7%, still surpassing existing models. Our code can be found at https://github.com/BioCL1/BiGM-lncLoc .

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来源期刊
Interdisciplinary Sciences: Computational Life Sciences
Interdisciplinary Sciences: Computational Life Sciences MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
8.60
自引率
4.20%
发文量
55
期刊介绍: Interdisciplinary Sciences--Computational Life Sciences aims to cover the most recent and outstanding developments in interdisciplinary areas of sciences, especially focusing on computational life sciences, an area that is enjoying rapid development at the forefront of scientific research and technology. The journal publishes original papers of significant general interest covering recent research and developments. Articles will be published rapidly by taking full advantage of internet technology for online submission and peer-reviewing of manuscripts, and then by publishing OnlineFirstTM through SpringerLink even before the issue is built or sent to the printer. The editorial board consists of many leading scientists with international reputation, among others, Luc Montagnier (UNESCO, France), Dennis Salahub (University of Calgary, Canada), Weitao Yang (Duke University, USA). Prof. Dongqing Wei at the Shanghai Jiatong University is appointed as the editor-in-chief; he made important contributions in bioinformatics and computational physics and is best known for his ground-breaking works on the theory of ferroelectric liquids. With the help from a team of associate editors and the editorial board, an international journal with sound reputation shall be created.
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