4.7 Article

MSF-LRR: Multi-Similarity Information Fusion Through Low-Rank Representation to Predict Disease-Associated Microbes

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TCBB.2022.3146176

Keywords

Information fusion; low-rank representation; microbe-disease association prediction; neighbor-based collaborative filtering

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Researchers have developed a new prediction method, MSF-LRR, which uses Low-Rank Representation (LRR) to fuse multi-similarity information and predict disease-related microbes. By adding three classes of microbe and disease similarity, and utilizing LRR to obtain low-rank structural similarity information, the method improves prediction accuracy. Furthermore, it adaptively extracts the local low-rank structure of the data from a global perspective, making the prediction more effective. The AUC value of MSF-LRR is superior to existing algorithms under 5-fold cross-validation.
An Increase in microbial activity is shown to be intimately connected with the pathogenesis of diseases. Considering the expense of traditional verification methods, researchers are working to develop high-efficiency methods for detecting potential disease-related microbes. In this article, a new prediction method, MSF-LRR, is established, which uses Low-Rank Representation (LRR) to perform multi-similarity information fusion to predict disease-related microbes. Considering that most existing methods only use one class of similarity, three classes of microbe and disease similarity are added. Then, LRR is used to obtain low-rank structural similarity information. Additionally, the method adaptively extracts the local low-rank structure of the data from a global perspective, to make the information used for the prediction more effective. Finally, a neighbor-based prediction method that utilizes the concept of collaborative filtering is applied to predict unknown microbe-disease pairs. As a result, the AUC value of MSF-LRR is superior to other existing algorithms under 5-fold cross-validation. Furthermore, in case studies, excluding originally known associations, 16 and 19 of the top 20 microbes associated with Bacterial Vaginosis and Irritable Bowel Syndrome, respectively, have been confirmed by the recent literature. In summary, MSF-LRR is a good predictor of potential microbe-disease associations and can contribute to drug discovery and biological research.

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