17 results on '"Yu, Liang"'
Search Results
2. Impact of Thyroid Function on the Prevalence and Mortality of Metabolic Dysfunction-Associated Fatty Liver Disease.
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Yu-ling Chen, Shen Tian, Juan Wu, Hao Li, Shu Li, Zhou Xu, Xin-yu Liang, Adhikari, Vishnu Prasad, Jun Xiao, Jing-yu Song, Chen-yu Ma, Rui-ling She, Zhao-xing Li, Kai-nan Wu, and Ling-quan Kong
- Abstract
Context: Thyroid function variation within the thyroxine reference range has negative metabolic effects. Metabolic dysfunction-associated fatty liver disease (MAFLD) is a recently proposed definition. Objective: We aim to explore the effects of thyroid function status on prevalence and mortality of MAFLD. Methods: Data of 10 666 participants from the Third National Health and Nutrition Examination Survey (NHANES III) were used. MAFLD was diagnosed based on the new definition. Thyroid function variation within the thyroxine reference range was defined based on thyroidstimulating hormone (TSH) levels: subclinical hyperthyroidism, <0.39 mIU/L; strict-normal thyroid function, 0.39-2.5 mIU/L; and low thyroid function, >2.5 mIU/L, which comprised low-normal thyroid function (2.5-4.5 mIU/L) and subclinical hypothyroidism (> 4.5 mIU/L). Logistic and Cox regression were used in multivariate analysis. Results: Low thyroid function is independently associated with MAFLD (odds ratio: 1.27). Compared with strict-normal thyroid function, subclinical hypothyroidism was significantly associated with increased risk for all-cause and cardiovascular mortality in the total population (hazard ratio [HR] for all-cause: 1.23; cardiovascular: 1.65) and MAFLD population (HR for all-cause: 1.32; cardiovascular: 1.99); meanwhile, in the low-normal thyroid function group, an increasing trend in mortality risk was observed. Furthermore, low thyroid function also showed significant negative impact on mortality in the total and MAFLD population. Among thyroid function spectrum, mild subclinical hypothyroidism showed the highest HRs on mortality. Conclusions: Low thyroid function is independent risk factor of MAFLD and is associated with increased risk for all-cause and cardiovascular mortality in the MAFLD population. Reevaluation of TSH reference range should be considered. [ABSTRACT FROM AUTHOR]
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- 2023
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3. AaSEPALLATA1 integrates jasmonate and light-regulated glandular secretory trichome initiation in Artemisia annua.
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Tian-Tian Chen, Hang Liu, Yong-Peng Li, Xing-Hao Yao, Wei Qin, Xin Yan, Xiu-Yun Wang, Bo-Wen Peng, Yao-Jie Zhang, Jin Shao, Yi Hu, Xue-Qing Fu, Ling Li, Yu-Liang Wang, and Ke-Xuan Tang
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- 2023
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4. Potent antibiotic design via guided search from antibacterial activity evaluations.
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Chen, Lu, Yu, Liang, and Gao, Lin
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ANTIBACTERIAL agents , *INTERNET servers , *ANTIBIOTICS , *DRUG resistance in bacteria , *DRUG resistance , *DATABASES - Abstract
Motivation The emergence of drug-resistant bacteria makes the discovery of new antibiotics an urgent issue, but finding new molecules with the desired antibacterial activity is an extremely difficult task. To address this challenge, we established a framework, MDAGS (Molecular Design via Attribute-Guided Search), to optimize and generate potent antibiotic molecules. Results By designing the antibacterial activity latent space and guiding the optimization of functional compounds based on this space, the model MDAGS can generate novel compounds with desirable antibacterial activity without the need for extensive expensive and time-consuming evaluations. Compared with existing antibiotics, candidate antibacterial compounds generated by MDAGS always possessed significantly better antibacterial activity and ensured high similarity. Furthermore, although without explicit constraints on similarity to known antibiotics, these candidate antibacterial compounds all exhibited the highest structural similarity to antibiotics of expected function in the DrugBank database query. Overall, our approach provides a viable solution to the problem of bacterial drug resistance. Availability and implementation Code of the model and datasets can be downloaded from GitHub (https://github.com/LiangYu-Xidian/MDAGS). Supplementary information Supplementary data are available at Bioinformatics online. [ABSTRACT FROM AUTHOR]
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- 2023
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5. WMSA: a novel method for multiple sequence alignment of DNA sequences.
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Wei, Yanming, Zou, Quan, Tang, Furong, and Yu, Liang
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SEQUENCE alignment ,INTERNET servers ,DNA sequencing ,FAST Fourier transforms ,SEPARATION of variables ,SOURCE code - Abstract
Motivation Multiple sequence alignment (MSA) is a fundamental problem in bioinformatics. The quality of alignment will affect downstream analysis. MAFFT has adopted the Fast Fourier Transform method for searching the homologous segments and using them as anchors to divide the sequences, then making alignment only on segments, which can save time and memory without overly reducing the sequence alignment quality. MAFFT becomes slow when the dataset is large. Results We made a software, WMSA, which uses the divide-and-conquer method to split the sequences into clusters, aligns those clusters into profiles with the center star strategy and then makes a progressive profile–profile alignment. The alignment is conducted by the compiled algorithms of MAFFT, K-Band with multithread parallelism. Our method can balance time, space and quality and performs better than MAFFT in test experiments on highly conserved datasets. Availability and implementation Source code is freely available at https://github.com/malabz/WMSA/ , which is implemented in C/C++ and supported on Linux, and datasets are available at https://github.com/malabz/WMSA-dataset. Supplementary information Supplementary data are available at Bioinformatics online. [ABSTRACT FROM AUTHOR]
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- 2022
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6. Multidrug representation learning based on pretraining model and molecular graph for drug interaction and combination prediction.
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Ren, Shujie, Yu, Liang, and Gao, Lin
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MOLECULAR graphs , *DRUG interactions , *DRUG side effects , *GENE regulatory networks , *LEARNING strategies , *POISONS - Abstract
Motivation Approaches for the diagnosis and treatment of diseases often adopt the multidrug therapy method because it can increase the efficacy or reduce the toxic side effects of drugs. Using different drugs simultaneously may trigger unexpected pharmacological effects. Therefore, efficient identification of drug interactions is essential for the treatment of complex diseases. Currently proposed calculation methods are often limited by the collection of redundant drug features, a small amount of labeled data and low model generalization capabilities. Meanwhile, there is also a lack of unique methods for multidrug representation learning, which makes it more difficult to take full advantage of the originally scarce data. Results Inspired by graph models and pretraining models, we integrated a large amount of unlabeled drug molecular graph information and target information, then designed a pretraining framework, MGP-DR (Molecular Graph Pretraining for Drug Representation), specifically for drug pair representation learning. The model uses self-supervised learning strategies to mine the contextual information within and between drug molecules to predict drug–drug interactions and drug combinations. The results achieved promising performance across multiple metrics compared with other state-of-the-art methods. Our MGP-DR model can be used to provide a reliable candidate set for the combined use of multiple drugs. Availability and implementation Code of the model, datasets and results can be downloaded from GitHub (https://github.com/LiangYu-Xidian/MGP-DR). Supplementary information Supplementary data are available at Bioinformatics online. [ABSTRACT FROM AUTHOR]
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- 2022
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7. Research progress of miRNA–disease association prediction and comparison of related algorithms.
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Yu, Liang, Zheng, Yujia, Ju, Bingyi, Ao, Chunyan, and Gao, Lin
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LINCRNA , *RNA , *T-matrix , *PREDICTION models , *MICRORNA , *FORECASTING - Abstract
With an in-depth understanding of noncoding ribonucleic acid (RNA), many studies have shown that microRNA (miRNA) plays an important role in human diseases. Because traditional biological experiments are time-consuming and laborious, new calculation methods have recently been developed to predict associations between miRNA and diseases. In this review, we collected various miRNA–disease association prediction models proposed in recent years and used two common data sets to evaluate the performance of the prediction models. First, we systematically summarized the commonly used databases and similarity data for predicting miRNA–disease associations, and then divided the various calculation models into four categories for summary and detailed introduction. In this study, two independent datasets (D 5430 and D 6088) were compiled to systematically evaluate 11 publicly available prediction tools for miRNA–disease associations. The experimental results indicate that the methods based on information dissemination and the method based on scoring function require shorter running time. The method based on matrix transformation often requires a longer running time, but the overall prediction result is better than the previous two methods. We hope that the summary of work related to miRNA and disease will provide comprehensive knowledge for predicting the relationship between miRNA and disease and contribute to advanced computation tools in the future. [ABSTRACT FROM AUTHOR]
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- 2022
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8. Multiview network embedding for drug-target Interactions prediction by consistent and complementary information preserving.
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Shang, Yifan, Ye, Xiucai, Futamura, Yasunori, Yu, Liang, and Sakurai, Tetsuya
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DRUG discovery ,DRUG repositioning ,FORECASTING ,DRUG prices - Abstract
Accurate prediction of drug-target interactions (DTIs) can reduce the cost and time of drug repositioning and drug discovery. Many current methods integrate information from multiple data sources of drug and target to improve DTIs prediction accuracy. However, these methods do not consider the complex relationship between different data sources. In this study, we propose a novel computational framework, called MccDTI, to predict the potential DTIs by multiview network embedding, which can integrate the heterogenous information of drug and target. MccDTI learns high-quality low-dimensional representations of drug and target by preserving the consistent and complementary information between multiview networks. Then MccDTI adopts matrix completion scheme for DTIs prediction based on drug and target representations. Experimental results on two datasets show that the prediction accuracy of MccDTI outperforms four state-of-the-art methods for DTIs prediction. Moreover, literature verification for DTIs prediction shows that MccDTI can predict the reliable potential DTIs. These results indicate that MccDTI can provide a powerful tool to predict new DTIs and accelerate drug discovery. The code and data are available at: https://github.com/ShangCS/MccDTI. [ABSTRACT FROM AUTHOR]
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- 2022
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9. MiRNA–disease association prediction based on meta-paths.
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Yu, Liang, Zheng, Yujia, and Gao, Lin
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BREAST tumors , *GENETIC regulation , *ESOPHAGEAL tumors , *COLON tumors , *DRUG target - Abstract
Since miRNAs can participate in the posttranscriptional regulation of gene expression, they may provide ideas for the development of new drugs or become new biomarkers for drug targets or disease diagnosis. In this work, we propose an miRNA–disease association prediction method based on meta-paths (MDPBMP). First, an miRNA–disease–gene heterogeneous information network was constructed, and seven symmetrical meta-paths were defined according to different semantics. After constructing the initial feature vector for the node, the vector information carried by all nodes on the meta-path instance is extracted and aggregated to update the feature vector of the starting node. Then, the vector information obtained by the nodes on different meta-paths is aggregated. Finally, miRNA and disease embedding feature vectors are used to calculate their associated scores. Compared with the other methods, MDPBMP obtained the highest AUC value of 0.9214. Among the top 50 predicted miRNAs for lung neoplasms, esophageal neoplasms, colon neoplasms and breast neoplasms, 49, 48, 49 and 50 have been verified. Furthermore, for breast neoplasms, we deleted all the known associations between breast neoplasms and miRNAs from the training set. These results also show that for new diseases without known related miRNA information, our model can predict their potential miRNAs. Code and data are available at https://github.com/LiangYu-Xidian/MDPBMP. [ABSTRACT FROM AUTHOR]
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- 2022
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10. network embedding framework based on integrating multiplex network for drug combination prediction.
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Yu, Liang, Xia, Mingfei, and An, Qi
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RECEIVER operating characteristic curves , *SYNTHETIC drugs - Abstract
Drug combination is a sensible strategy for disease treatment because it improves the treatment efficacy and reduces concomitant side effects. Due to the large number of possible combinations among candidate compounds, exhaustive screening is prohibitive. Currently, a large number of studies have focused on predicting potential drug combinations. However, these methods are not entirely satisfactory in terms of performance and scalability. In this paper, we proposed a Network Embedding frameWork in MultIplex Network (NEWMIN) to predict synthetic drug combinations. Based on a multiplex drug similarity network, we offered alternative methods to integrate useful information from different aspects and to decide the quantitative importance of each network. For drug combination prediction, we found seven novel drug combinations that have been validated by external sources among the top-ranked predictions of our model. To verify the feasibility of NEWMIN, we compared NEWMIN with other five methods, for which it showed better performance than other methods in terms of the area under the precision-recall curve and receiver operating characteristic curve. [ABSTRACT FROM AUTHOR]
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- 2022
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11. NmRF: identification of multispecies RNA 2'-O-methylation modification sites from RNA sequences.
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Ao, Chunyan, Zou, Quan, and Yu, Liang
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RNA modification & restriction ,TRANSFER RNA ,FEATURE selection ,RANDOM forest algorithms ,METHYL groups ,MACHINE learning ,BOOSTING algorithms - Abstract
2'-O-methylation (Nm) is a post-transcriptional modification of RNA that is catalyzed by 2'-O-methyltransferase and involves replacing the H on the 2′-hydroxyl group with a methyl group. The 2'-O-methylation modification site is detected in a variety of RNA types (miRNA, tRNA, mRNA, etc.), plays an important role in biological processes and is associated with different diseases. There are few functional mechanisms developed at present, and traditional high-throughput experiments are time-consuming and expensive to explore functional mechanisms. For a deeper understanding of relevant biological mechanisms, it is necessary to develop efficient and accurate recognition tools based on machine learning. Based on this, we constructed a predictor called NmRF based on optimal mixed features and random forest classifier to identify 2'-O-methylation modification sites. The predictor can identify modification sites of multiple species at the same time. To obtain a better prediction model, a two-step strategy is adopted; that is, the optimal hybrid feature set is obtained by combining the light gradient boosting algorithm and incremental feature selection strategy. In 10-fold cross-validation, the accuracies of Homo sapiens and Saccharomyces cerevisiae were 89.069 and 93.885%, and the AUC were 0.9498 and 0.9832, respectively. The rigorous 10-fold cross-validation and independent tests confirm that the proposed method is significantly better than existing tools. A user-friendly web server is accessible at http://lab.malab.cn/∼acy/NmRF. [ABSTRACT FROM AUTHOR]
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- 2022
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12. PTMdyna: exploring the influence of post-translation modifications on protein conformational dynamics.
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Shi, Xing-Xing, Wang, Zhi-Zheng, Wang, Yu-Liang, Huang, Guang-Yi, Yang, Jing-Fang, Wang, Fan, Hao, Ge-Fei, and Yang, Guang-Fu
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POST-translational modification ,CYTOSKELETAL proteins ,INTERNET servers ,PROTEIN structure ,CELL differentiation - Abstract
Protein post-translational modifications (PTM) play vital roles in cellular regulation, modulating functions by driving changes in protein structure and dynamics. Exploring comprehensively the influence of PTM on conformational dynamics can facilitate the understanding of the related biological function and molecular mechanism. Currently, a series of excellent computation tools have been designed to analyze the time-dependent structural properties of proteins. However, the protocol aimed to explore conformational dynamics of post-translational modified protein is still a blank. To fill this gap, we present PTMdyna to visually predict the conformational dynamics differences between unmodified and modified proteins, thus indicating the influence of specific PTM. PTMdyna exhibits an AUC of 0.884 tested on 220 protein–protein complex structures. The case of heterochromatin protein 1α complexed with lysine 9-methylated histone H3, which is critical for genomic stability and cell differentiation, was used to demonstrate its applicability. PTMdyna provides a reliable platform to predict the influence of PTM on protein dynamics, making it easier to interpret PTM functionality at the structure level. The web server is freely available at http://ccbportal.com/PTMdyna. [ABSTRACT FROM AUTHOR]
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- 2022
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13. Isolation and characterization mesenchymal stem cells from red panda (Ailurus fulgens styani) endometrium.
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Wang, Dong-Hui, Wu, Xue-Mei, Chen, Jia-Song, Cai, Zhi-Gang, An, Jun-Hui, Zhang, Ming-Yue, Li, Yuan, Li, Fei-Ping, Hou, Rong, and Liu, Yu-Liang
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RED panda ,MESENCHYMAL stem cells ,G protein coupled receptors ,GERMPLASM ,ORGANELLE formation ,ERYTHROCYTES - Abstract
Endometrial mesenchymal stem cells (eMSCs) are undifferentiated endometrial cells with self-renewal, multidirectional differentiation and high proliferation potential. Nowadays, eMSCs have been found in a few species, but it has never been reported in endangered wild animals, especially the red panda. In this study, we successfully isolated and characterized the eMSCs derived from red panda. Red panda eMSCs were fibroblast-like, had a strong proliferative potential and a stable chromosome number. Pluripotency genes including Klf4 , Sox2 and Thy1 were highly expressed in eMSCs. Besides, cultured eMSCs were positive for MSC markers CD44, CD49f and CD105 and negative for endothelial cell marker CD31 and haematopoietic cell marker CD34. Moreover, no reference RNA-seq was used to analyse the eMSCs transcriptional expression profile and key pathways. Compared with skin fibroblast cell group, 9104 differentially expressed genes (DEGs) were identified, among which are 5034 genes upregulated, 4070 genes downregulated and the top 20 enrichment pathways of DEGs in Gene Ontology (GO) and the Kyoto Encyclopedia of Genes Genomes (KEGG) mainly associated with G-protein coupled receptor signalling pathway, carbohydrate derivative binding, nucleoside binding, ribosome biogenesis, cell cycle, DNA replication, Ras signalling pathway and purine metabolism. Among the DEGs, some representative genes about promoting MSCs differentiation and proliferation were upregulated and promoting fibroblasts proliferation were downregulated in eMSCs group. Red panda eMSCs also had multiple differentiation ability and could differentiate into adipocytes, chondrocytes and hepatocytes. In conclusion, we, for the first time, isolated and characterized the red panda eMSCs with ability of multiplication and multilineage differentiation in vitro. The new multipotential stem cell could be beneficial not only for the germ plasm resources conservation of red panda, but also for basic or pre-clinical studies in the future. [ABSTRACT FROM AUTHOR]
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- 2022
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14. EPSOL: sequence-based protein solubility prediction using multidimensional embedding.
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Wu, Xiang and Yu, Liang
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PROTEIN-protein interactions , *PROTEIN expression , *SOLUBILITY , *RECOMBINANT proteins , *PROTEINS , *DEEP learning - Abstract
Motivation The heterologous expression of recombinant protein requires host cells, such as Escherichiacoli , and the solubility of protein greatly affects the protein yield. A novel and highly accurate solubility predictor that concurrently improves the production yield and minimizes production cost, and that forecasts protein solubility in an E.coli expression system before the actual experimental work is highly sought. Results In this article, EPSOL, a novel deep learning architecture for the prediction of protein solubility in an E.coli expression system, which automatically obtains comprehensive protein feature representations using multidimensional embedding, is presented. EPSOL outperformed all existing sequence-based solubility predictors and achieved 0.79 in accuracy and 0.58 in Matthew's correlation coefficient. The higher performance of EPSOL permits large-scale screening for sequence variants with enhanced manufacturability and predicts the solubility of new recombinant proteins in an E.coli expression system with greater reliability. Availability and implementation EPSOL's best model and results can be downloaded from GitHub (https://github.com/LiangYu-Xidian/EPSOL). Supplementary information Supplementary data are available at Bioinformatics online. [ABSTRACT FROM AUTHOR]
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- 2021
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15. heterogeneous network embedding framework for predicting similarity-based drug-target interactions.
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An, Qi and Yu, Liang
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DECISION trees , *RANDOM walks , *DRUG development , *INFORMATION networks , *DRUG prices , *FORECASTING - Abstract
Accurate prediction of drug-target interactions (DTIs) through biological data can reduce the time and economic cost of drug development. The prediction method of DTIs based on a similarity network is attracting increasing attention. Currently, many studies have focused on predicting DTIs. However, such approaches do not consider the features of drugs and targets in multiple networks or how to extract and merge them. In this study, we proposed a Network EmbeDding framework in mulTiPlex networks (NEDTP) to predict DTIs. NEDTP builds a similarity network of nodes based on 15 heterogeneous information networks. Next, we applied a random walk to extract the topology information of each node in the network and learn it as a low-dimensional vector. Finally, the Gradient Boosting Decision Tree model was constructed to complete the classification task. NEDTP achieved accurate results in DTI prediction, showing clear advantages over several state-of-the-art algorithms. The prediction of new DTIs was also verified from multiple perspectives. In addition, this study also proposes a reasonable model for the widespread negative sampling problem of DTI prediction, contributing new ideas to future research. Code and data are available at https://github.com/LiangYu-Xidian/NEDTP. [ABSTRACT FROM AUTHOR]
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- 2021
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16. Genomic impact of stress-induced transposable element mobility in Arabidopsis.
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Roquis, David, Robertson, Marta, Yu, Liang, Thieme, Michael, Julkowska, Magdalena, and Bucher, Etienne
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- 2021
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17. Correction to 'Genomic impact of stress-induced transposable element mobility in Arabidopsis'.
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Roquis, David, Robertson, Marta, Yu, Liang, Thieme, Michael, Julkowska, Magdalena, and Bucher, Etienne
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- 2021
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