2022
DOI: 10.1093/bib/bbac266
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A deep learning method for predicting metabolite–disease associations via graph neural network

Abstract: Metabolism is the process by which an organism continuously replaces old substances with new substances. It plays an important role in maintaining human life, body growth and reproduction. More and more researchers have shown that the concentrations of some metabolites in patients are different from those in healthy people. Traditional biological experiments can test some hypotheses and verify their relationships but usually take a considerable amount of time and money. Therefore, it is urgent to develop a new… Show more

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Cited by 134 publications
(77 citation statements)
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“…However, during the initial stage of the epidemic outbreak, the massive influx of patients often means medical staff and healthcare professionals have to work 24 h a day, which has a bad effect on the physical and mental health of doctors and affects the accuracy and efficiency of the medical diagnosis (Zhan et al, 2021). Alternatively, artificial intelligence technology is a quite efficient strategy and obtains wide application in various fields (Chen et al, 2019;Liu et al, 2021aLiu et al, , 2022aTang et al, 2021;Wang et al, 2021;Zhang et al, 2021;Liang et al, 2022;Sun et al, 2022;Yang et al, 2022), and can be used to complement the work of radiologists. It can efficiently assist medical staff in judging symptoms, for example, pre-classifying pathological images or predicting sampling results, and thus can greatly reduce their working intensity.…”
Section: Introductionmentioning
confidence: 99%
“…However, during the initial stage of the epidemic outbreak, the massive influx of patients often means medical staff and healthcare professionals have to work 24 h a day, which has a bad effect on the physical and mental health of doctors and affects the accuracy and efficiency of the medical diagnosis (Zhan et al, 2021). Alternatively, artificial intelligence technology is a quite efficient strategy and obtains wide application in various fields (Chen et al, 2019;Liu et al, 2021aLiu et al, , 2022aTang et al, 2021;Wang et al, 2021;Zhang et al, 2021;Liang et al, 2022;Sun et al, 2022;Yang et al, 2022), and can be used to complement the work of radiologists. It can efficiently assist medical staff in judging symptoms, for example, pre-classifying pathological images or predicting sampling results, and thus can greatly reduce their working intensity.…”
Section: Introductionmentioning
confidence: 99%
“…Moreover, its prediction performance needs further improvement. In the future, we will consider biological features of circRNAs and develop more efficient machine learning, Frontiers in Genetics frontiersin.org especially ensemble learning models (Zhou et al, 2021a;Peng et al, 2022a) and deep learning models (Peng et al, 2021b;Zhou et al, 2021b;Sun et al, 2022;Yang et al, 2022) to discover potential biomarkers for bladder cancer and bladder urothelial cancer.…”
Section: Discussionmentioning
confidence: 99%
“…It not only has a good performance, but also has good expansibility. For example, metabolite-disease association prediction 91 , miRNA-disease association prediction 92 , lncRNA-disease association prediction 93 , and lncRNA-protein association prediction 94 .…”
Section: Discussionmentioning
confidence: 99%