Cargando…
A novel information diffusion method based on network consistency for identifying disease related microRNAs
The abnormal expression of miRNAs is directly related to the development of human diseases. Predicting the potential candidate miRNAs associated with diseases can contribute to the detection, diagnosis, treatment and prevention of human complex diseases. The effective inference of the calculation me...
Autores principales: | , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
The Royal Society of Chemistry
2018
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9088870/ https://www.ncbi.nlm.nih.gov/pubmed/35558942 http://dx.doi.org/10.1039/c8ra07519k |
_version_ | 1784704401855741952 |
---|---|
author | Chen, Min Peng, Yan Li, Ang Li, Zejun Deng, Yingwei Liu, Wenhua Liao, Bo Dai, Chengqiu |
author_facet | Chen, Min Peng, Yan Li, Ang Li, Zejun Deng, Yingwei Liu, Wenhua Liao, Bo Dai, Chengqiu |
author_sort | Chen, Min |
collection | PubMed |
description | The abnormal expression of miRNAs is directly related to the development of human diseases. Predicting the potential candidate miRNAs associated with diseases can contribute to the detection, diagnosis, treatment and prevention of human complex diseases. The effective inference of the calculation method of the relationship between miRNAs and diseases is an effective supplement to biological experiments. It is of great help in the prevention, treatment and prognosis of complex diseases. This paper proposes a novel information diffusion method based on network consistency (IDNC) for identifying disease related microRNAs. The model first synthesizes the miRNA family information and the miRNA function similarity to reconstruct the miRNA network, and reconstruct the disease network by using the known disease and miRNA-related information and the semantic score between diseases. Then the global similarity of the two networks is obtained by using the Laplacian score of graphs. The global similarity score is a measure of the similarity between diseases and miRNAs. The disease–miRNA relation network was reconstructed by integrating the global similarity relation. The network consistency diffusion seed is then obtained by combining the global similarity network with the reconstructed disease–miRNA association network. Thereafter, the stable diffusion spectrum is generated as the prediction score by using the restarted random walk algorithm. The AUC value obtained by performing the LOOCV in the gold benchmark dataset is 0.8814. The AUC value obtained by performing the LOOCV in the predictive dataset is 0.9512. Compared with other frontier methods, our method has higher accuracy, which is further illustrated by case studies of breast neoplasms and colon neoplasms to prove that IDNC is valuable. |
format | Online Article Text |
id | pubmed-9088870 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2018 |
publisher | The Royal Society of Chemistry |
record_format | MEDLINE/PubMed |
spelling | pubmed-90888702022-05-11 A novel information diffusion method based on network consistency for identifying disease related microRNAs Chen, Min Peng, Yan Li, Ang Li, Zejun Deng, Yingwei Liu, Wenhua Liao, Bo Dai, Chengqiu RSC Adv Chemistry The abnormal expression of miRNAs is directly related to the development of human diseases. Predicting the potential candidate miRNAs associated with diseases can contribute to the detection, diagnosis, treatment and prevention of human complex diseases. The effective inference of the calculation method of the relationship between miRNAs and diseases is an effective supplement to biological experiments. It is of great help in the prevention, treatment and prognosis of complex diseases. This paper proposes a novel information diffusion method based on network consistency (IDNC) for identifying disease related microRNAs. The model first synthesizes the miRNA family information and the miRNA function similarity to reconstruct the miRNA network, and reconstruct the disease network by using the known disease and miRNA-related information and the semantic score between diseases. Then the global similarity of the two networks is obtained by using the Laplacian score of graphs. The global similarity score is a measure of the similarity between diseases and miRNAs. The disease–miRNA relation network was reconstructed by integrating the global similarity relation. The network consistency diffusion seed is then obtained by combining the global similarity network with the reconstructed disease–miRNA association network. Thereafter, the stable diffusion spectrum is generated as the prediction score by using the restarted random walk algorithm. The AUC value obtained by performing the LOOCV in the gold benchmark dataset is 0.8814. The AUC value obtained by performing the LOOCV in the predictive dataset is 0.9512. Compared with other frontier methods, our method has higher accuracy, which is further illustrated by case studies of breast neoplasms and colon neoplasms to prove that IDNC is valuable. The Royal Society of Chemistry 2018-10-30 /pmc/articles/PMC9088870/ /pubmed/35558942 http://dx.doi.org/10.1039/c8ra07519k Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by-nc/3.0/ |
spellingShingle | Chemistry Chen, Min Peng, Yan Li, Ang Li, Zejun Deng, Yingwei Liu, Wenhua Liao, Bo Dai, Chengqiu A novel information diffusion method based on network consistency for identifying disease related microRNAs |
title | A novel information diffusion method based on network consistency for identifying disease related microRNAs |
title_full | A novel information diffusion method based on network consistency for identifying disease related microRNAs |
title_fullStr | A novel information diffusion method based on network consistency for identifying disease related microRNAs |
title_full_unstemmed | A novel information diffusion method based on network consistency for identifying disease related microRNAs |
title_short | A novel information diffusion method based on network consistency for identifying disease related microRNAs |
title_sort | novel information diffusion method based on network consistency for identifying disease related micrornas |
topic | Chemistry |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9088870/ https://www.ncbi.nlm.nih.gov/pubmed/35558942 http://dx.doi.org/10.1039/c8ra07519k |
work_keys_str_mv | AT chenmin anovelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas AT pengyan anovelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas AT liang anovelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas AT lizejun anovelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas AT dengyingwei anovelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas AT liuwenhua anovelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas AT liaobo anovelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas AT daichengqiu anovelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas AT chenmin novelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas AT pengyan novelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas AT liang novelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas AT lizejun novelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas AT dengyingwei novelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas AT liuwenhua novelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas AT liaobo novelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas AT daichengqiu novelinformationdiffusionmethodbasedonnetworkconsistencyforidentifyingdiseaserelatedmicrornas |