Heterogeneous network and graph attention auto-encoder for LncRNA-disease association prediction
Jin-Xing Liu, Wen-Yu Xi, Ling-Yun Dai, Chun-Hou Zheng, Ying-Lian Gao

TL;DR
This paper introduces HGATELDA, a deep learning model utilizing heterogeneous network and graph attention auto-encoder to improve prediction of lncRNA-disease associations, achieving high accuracy and identifying novel associations.
Contribution
The paper presents a novel deep learning framework combining linear and nonlinear features for LDA prediction, outperforming existing models.
Findings
Achieved an AUC of 0.9692 in cross-validation.
Effectively integrates multiple biomedical data sources.
Demonstrated ability to identify novel LDAs through case studies.
Abstract
The emerging research shows that lncRNAs are associated with a series of complex human diseases. However, most of the existing methods have limitations in identifying nonlinear lncRNA-disease associations (LDAs), and it remains a huge challenge to predict new LDAs. Therefore, the accurate identification of LDAs is very important for the warning and treatment of diseases. In this work, multiple sources of biomedical data are fully utilized to construct characteristics of lncRNAs and diseases, and linear and nonlinear characteristics are effectively integrated. Furthermore, a novel deep learning model based on graph attention automatic encoder is proposed, called HGATELDA. To begin with, the linear characteristics of lncRNAs and diseases are created by the miRNA-lncRNA interaction matrix and miRNA-disease interaction matrix. Following this, the nonlinear features of diseases and lncRNAs…
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Taxonomy
TopicsCancer-related molecular mechanisms research · Nuts composition and effects
