5 results on '"Liqian Zhou"'
Search Results
2. Editorial: Machine Learning-Based Methods for RNA Data Analysis
- Author
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Lihong, Peng, Jialiang, Yang, Minxian, Wang, and Liqian, Zhou
- Subjects
Genetics ,Molecular Medicine ,Genetics (clinical) - Published
- 2022
- Full Text
- View/download PDF
3. Screening Potential Drugs for COVID-19 Based on Bound Nuclear Norm Regularization
- Author
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Juanjuan Wang, Chang Wang, Ling Shen, Liqian Zhou, and Lihong Peng
- Subjects
Mizoribine ,FDA-approved drugs ,Coronavirus disease 2019 (COVID-19) ,SARS-CoV-2 ,Gaussian ,Computational biology ,molecular docking ,QH426-470 ,Favipiravir ,Small molecule ,symbols.namesake ,bounded nuclear norm regularization ,Similarity (network science) ,Kernel (statistics) ,Bounded function ,medicine ,symbols ,virus-drug association ,Genetics ,Molecular Medicine ,Genetics (clinical) ,Mathematics ,medicine.drug ,Original Research - Abstract
The novel coronavirus pneumonia COVID-19 infected by SARS-CoV-2 has attracted worldwide attention. It is urgent to find effective therapeutic strategies for stopping COVID-19. In this study, a Bounded Nuclear Norm Regularization (BNNR) method is developed to predict anti-SARS-CoV-2 drug candidates. First, three virus-drug association datasets are compiled. Second, a heterogeneous virus-drug network is constructed. Third, complete genomic sequences and Gaussian association profiles are integrated to compute virus similarities; chemical structures and Gaussian association profiles are integrated to calculate drug similarities. Fourth, a BNNR model based on kernel similarity (VDA-GBNNR) is proposed to predict possible anti-SARS-CoV-2 drugs. VDA-GBNNR is compared with four existing advanced methods under fivefold cross-validation. The results show that VDA-GBNNR computes better AUCs of 0.8965, 0.8562, and 0.8803 on the three datasets, respectively. There are 6 anti-SARS-CoV-2 drugs overlapping in any two datasets, that is, remdesivir, favipiravir, ribavirin, mycophenolic acid, niclosamide, and mizoribine. Molecular dockings are conducted for the 6 small molecules and the junction of SARS-CoV-2 spike protein and human angiotensin-converting enzyme 2. In particular, niclosamide and mizoribine show higher binding energy of −8.06 and −7.06 kcal/mol with the junction, respectively. G496 and K353 may be potential key residues between anti-SARS-CoV-2 drugs and the interface junction. We hope that the predicted results can contribute to the treatment of COVID-19.
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- 2021
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- View/download PDF
4. Identifying Small Molecule-miRNA Associations Based on Credible Negative Sample Selection and Random Walk
- Author
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Liqian Zhou, Jialiang Yang, Xiaojun Liu, Qi Hu, Fuxing Liu, Lihong Peng, Geng Tian, and Hui Chen
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0301 basic medicine ,Histology ,Computer science ,lcsh:Biotechnology ,triple-layer heterogeneous network ,Biomedical Engineering ,Negative sample ,Bioengineering ,drug repositioning ,02 engineering and technology ,Machine learning ,computer.software_genre ,Cross-validation ,random walk ,03 medical and health sciences ,Human disease ,lcsh:TP248.13-248.65 ,SMiR associations ,Selection (genetic algorithm) ,Original Research ,Computational model ,business.industry ,Bioengineering and Biotechnology ,Similarity computation ,021001 nanoscience & nanotechnology ,Random walk ,030104 developmental biology ,negative sample selection ,Artificial intelligence ,0210 nano-technology ,business ,computer ,Biotechnology - Abstract
Recently, many studies have demonstrated that microRNAs (miRNAs) are new small molecule drug targets. Identifying small molecule-miRNA associations (SMiRs) plays an important role in finding new clues for various human disease therapy. Wet experiments can discover credible SMiR associations; however, this is a costly and time-consuming process. Computational models have therefore been developed to uncover possible SMiR associations. In this study, we designed a new SMiR association prediction model, RWNS. RWNS integrates various biological information, credible negative sample selections, and random walk on a triple-layer heterogeneous network into a unified framework. It includes three procedures: similarity computation, negative sample selection, and SMiR association prediction based on random walk on the constructed small molecule-disease-miRNA association network. To evaluate the performance of RWNS, we used leave-one-out cross-validation (LOOCV) and 5-fold cross validation to compare RWNS with two state-of-the-art SMiR association methods, namely, TLHNSMMA and SMiR-NBI. Experimental results showed that RWNS obtained an AUC value of 0.9829 under LOOCV and 0.9916 under 5-fold cross validation on the SM2miR1 dataset, and it obtained an AUC value of 0.8938 under LOOCV and 0.9899 under 5-fold cross validation on the SM2miR2 dataset. More importantly, RWNS successfully captured 9, 17, and 37 SMiR associations validated by experiments among the predicted top 10, 20, and 50 SMiR candidates with the highest scores, respectively. We inferred that enoxacin and decitabine are associated with mir-21 and mir-155, respectively. Therefore, RWNS can be a powerful tool for SMiR association prediction.
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- 2020
- Full Text
- View/download PDF
5. Human Microbe-Disease Association Prediction Based on Adaptive Boosting
- Author
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Jun Yin, Ming-Xi Liu, Li-Hong Peng, Yan Zhao, and Liqian Zhou
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0301 basic medicine ,Microbiology (medical) ,disease ,Computational model ,Boosting (machine learning) ,Computer science ,lcsh:QR1-502 ,Decision tree ,Disease Association ,association prediction ,Disease ,Computational biology ,Microbiology ,lcsh:Microbiology ,Cross-validation ,microbe ,03 medical and health sciences ,030104 developmental biology ,decision tree ,adaptive boosting ,Original Research - Abstract
There are countless microbes in the human body, and they play various roles in the physiological process. There is growing evidence that microbes are closely associated with human diseases. Researching disease-related microbes helps us understand the mechanisms of diseases and provides new strategies for diseases diagnosis and treatment. Many computational models have been proposed to predict disease-related microbes, in this paper, we developed a model of Adaptive Boosting for Human Microbe-Disease Association prediction (ABHMDA) to reveal the associations between diseases and microbes by calculating the relation probability of disease-microbe pair using a strong classifier. Our model could be applied to new diseases without any known related microbes. In order to assess the prediction power of the model, global and local leave-one-out cross validation (LOOCV) were implemented. As shown in the results, the global and local LOOCV values reached 0.8869 and 0.7910, respectively. What's more, 10, 10, and 8 out of the top 10 microbes predicted to be most likely to be associated with Asthma, Colorectal carcinoma and Type 1 diabetes were all verified by relevant literatures or database HMDAD, respectively. The above results verify the superior predictive performance of ABHMDA.
- Published
- 2018
- Full Text
- View/download PDF
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