341 results on '"Lixin Cheng"'
Search Results
2. Targeting adipocyte ESRRA promotes osteogenesis and vascular formation in adipocyte-rich bone marrow
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Tongling Huang, Zhaocheng Lu, Zihui Wang, Lixin Cheng, Lu Gao, Jun Gao, Ning Zhang, Chang-An Geng, Xiaoli Zhao, Huaiyu Wang, Chi-Wai Wong, Kelvin W. K. Yeung, Haobo Pan, William Weijia Lu, and Min Guan
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Science - Abstract
Abstract Excessive bone marrow adipocytes (BMAds) accumulation often occurs under diverse pathophysiological conditions associated with bone deterioration. Estrogen-related receptor α (ESRRA) is a key regulator responding to metabolic stress. Here, we show that adipocyte-specific ESRRA deficiency preserves osteogenesis and vascular formation in adipocyte-rich bone marrow upon estrogen deficiency or obesity. Mechanistically, adipocyte ESRRA interferes with E2/ESR1 signaling resulting in transcriptional repression of secreted phosphoprotein 1 (Spp1); yet positively modulates leptin expression by binding to its promoter. ESRRA abrogation results in enhanced SPP1 and decreased leptin secretion from both visceral adipocytes and BMAds, concertedly dictating bone marrow stromal stem cell fate commitment and restoring type H vessel formation, constituting a feed-forward loop for bone formation. Pharmacological inhibition of ESRRA protects obese mice against bone loss and high marrow adiposity. Thus, our findings highlight a therapeutic approach via targeting adipocyte ESRRA to preserve bone formation especially in detrimental adipocyte-rich bone milieu.
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- 2024
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3. Analysis of differential metabolites in serum metabolomics of patients with aortic dissection
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Yun Gong, Tangzhiming Li, Qiyun Liu, Xiaoyu Wang, Zixian Deng, Lixin Cheng, Biao Yu, and Huadong Liu
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Aortic dissection ,Differential metabolites ,Metabolic biomarkers ,Metabolic pathways ,Diseases of the circulatory (Cardiovascular) system ,RC666-701 - Abstract
Abstract Background Pathogenesis and diagnostic biomarkers of aortic dissection (AD) can be categorized through the analysis of differential metabolites in serum. Analysis of differential metabolites in serum provides new methods for exploring the early diagnosis and treatment of aortic dissection. Objectives This study examined affected metabolic pathways to assess the diagnostic value of metabolomics biomarkers in clients with AD. Method The serum from 30 patients with AD and 30 healthy people was collected. The most diagnostic metabolite markers were determined using metabolomic analysis and related metabolic pathways were explored. Results In total, 71 differential metabolites were identified. The altered metabolic pathways included reduced phospholipid catabolism and four different metabolites considered of most diagnostic value including N2-gamma-glutamylglutamine, PC(phocholines) (20:4(5Z,8Z,11Z,14Z)/15:0), propionyl carnitine, and taurine. These four predictive metabolic biomarkers accurately classified AD patient and healthy control (HC) samples with an area under the curve (AUC) of 0.9875. Based on the value of the four different metabolites, a formula was created to calculate the risk of aortic dissection. Risk score = (N2-gamma-glutamylglutamine × -0.684) + (PC (20:4(5Z,8Z,11Z,14Z)/15:0) × 0.427) + (propionyl carnitine × 0.523) + (taurine × -1.242). An additional metabolic pathways model related to aortic dissection was explored. Conclusion Metabolomics can assist in investigating the metabolic disorders associated with AD and facilitate a more in-depth search for potential metabolic biomarkers.
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- 2024
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4. Deep learning model to discriminate diverse infection types based on pairwise analysis of host gene expression
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Jize Xie, Xubin Zheng, Jianlong Yan, Qizhi Li, Nana Jin, Shuojia Wang, Pengfei Zhao, Shuai Li, Wanfu Ding, Lixin Cheng, and Qingshan Geng
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Pathophysiology ,Clinical microbiology ,Medical informatics ,Biocomputational method ,Neural networks ,Science - Abstract
Summary: Accurate detection of pathogens, particularly distinguishing between Gram-positive and Gram-negative bacteria, could improve disease treatment. Host gene expression can capture the immune system’s response to infections caused by various pathogens. Here, we present a deep neural network model, bvnGPS2, which incorporates the attention mechanism based on a large-scale integrated host transcriptome dataset to precisely identify Gram-positive and Gram-negative bacterial infections as well as viral infections. We performed analysis of 4,949 blood samples across 40 cohorts from 10 countries using our previously designed omics data integration method, iPAGE, to select discriminant gene pairs and train the bvnGPS2. The performance of the model was evaluated on six independent cohorts comprising 374 samples. Overall, our deep neural network model shows robust capability to accurately identify specific infections, paving the way for precise medicine strategies in infection treatment and potentially also for identifying subtypes of other diseases.
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- 2024
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5. Multiomics on mental stress-induced myocardial ischemia: A narrative review
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Nana Jin, Lixin Cheng, and Qingshan Geng
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mental stress-induced diseases ,mental stress-induced myocardial ischemia ,multiomics ,myocardial ischemia ,Diseases of the circulatory (Cardiovascular) system ,RC666-701 - Abstract
Accumulating multiomics studies have been developed to gain new insights into complex diseases, including mental stress-induced diseases and myocardial ischemia. Multiomics techniques integrate multiple layers of biological data, such as genomics, transcriptomics, proteomics, and metabolomics, to obtain a more comprehensive understanding of the molecular mechanisms underlying these diseases. Despite the potential benefits of applying multiomics approaches to the study of mental stress-induced myocardial ischemia (MSIMI), such studies are relatively limited. The etiology of MSIMI remains poorly understood, highlighting the need for further research in this field. This review first discusses the current state of knowledge on MSIMI and highlights the research gaps in this field. Then, we provide an overview of recent studies that have used multiomics approaches to expand insights into mental stress-induced diseases and myocardial ischemia, respectively. Finally, we propose possible research directions that can be pursued to improve our knowledge of MSIMI and the potential benefits of applying multiomics approaches to this domain. While still in its early stages, multiomics research holds great promise for improving the recognition of MSIMI and developing more effective clinical interventions.
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- 2024
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6. Co-expression module analysis reveals high expression homogeneity for both coding and non-coding genes in sepsis
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Xiaojun Liu, Chengying Hong, Yichun Jiang, Wei Li, Youlian Chen, Yonghui Ma, Pengfei Zhao, Tiyuan Li, Huaisheng Chen, Xueyan Liu, and Lixin Cheng
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Co-expression network ,Gene module ,Sepsis ,Non-coding RNA ,Biotechnology ,TP248.13-248.65 ,Genetics ,QH426-470 - Abstract
Abstract Sepsis is a life-threatening condition characterized by a harmful host response to infection with organ dysfunction. Annually about 20 million people are dead owing to sepsis and its mortality rates is as high as 20%. However, no studies have been carried out to investigate sepsis from the system biology point of view, as previous research predominantly focused on individual genes without considering their interactions and associations. Here, we conducted a comprehensive exploration of genome-wide expression alterations in both mRNAs and long non-coding RNAs (lncRNAs) in sepsis, using six microarray datasets. Co-expression networks were conducted to identify mRNA and lncRNA modules, respectively. Comparing these sepsis modules with normal modules, we observed a homogeneous expression pattern within the mRNA/lncRNA members, with the majority of them displaying consistent expression direction. Moreover, we identified consistent modules across diverse datasets, consisting of 20 common mRNA members and two lncRNAs, namely CHRM3-AS2 and PRKCQ-AS1, which are potential regulators of sepsis. Our results reveal that the up-regulated common mRNAs are mainly involved in the processes of neutrophil mediated immunity, while the down-regulated mRNAs and lncRNAs are significantly overrepresented in T-cell mediated immunity functions. This study sheds light on the co-expression patterns of mRNAs and lncRNAs in sepsis, providing a novel perspective and insight into the sepsis transcriptome, which may facilitate the exploration of candidate therapeutic targets and molecular biomarkers for sepsis.
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- 2023
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7. 5-Methylcytosine-related lncRNAs: predicting prognosis and identifying hot and cold tumor subtypes in head and neck squamous cell carcinoma
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Juntao Huang, Ziqian Xu, Chongchang Zhou, Lixin Cheng, Hong Zeng, and Yi Shen
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Head and neck squamous cell carcinoma ,5-Methylcytosine methylation ,Long non-coding RNA ,Prognosis ,Immunotherapy ,Surgery ,RD1-811 ,Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Abstract
Abstract Background 5-Methylcytosine (m5C) methylation is recognized as an mRNA modification that participates in biological progression by regulating related lncRNAs. In this research, we explored the relationship between m5C-related lncRNAs (mrlncRNAs) and head and neck squamous cell carcinoma (HNSCC) to establish a predictive model. Methods RNA sequencing and related information were obtained from the TCGA database, and patients were divided into two sets to establish and verify the risk model while identifying prognostic mrlncRNAs. Areas under the ROC curves were assessed to evaluate the predictive effectiveness, and a predictive nomogram was constructed for further prediction. Subsequently, the tumor mutation burden (TMB), stemness, functional enrichment analysis, tumor microenvironment, and immunotherapeutic and chemotherapeutic responses were also assessed based on this novel risk model. Moreover, patients were regrouped into subtypes according to the expression of model mrlncRNAs. Results Assessed by the predictive risk model, patients were distinguished into the low-MLRS and high-MLRS groups, showing satisfactory predictive effects with AUCs of 0.673, 0.712, and 0.681 for the ROCs, respectively. Patients in the low-MLRS groups exhibited better survival status, lower mutated frequency, and lower stemness but were more sensitive to immunotherapeutic response, whereas the high-MLRS group appeared to have higher sensitivity to chemotherapy. Subsequently, patients were regrouped into two clusters: cluster 1 displayed immunosuppressive status, but cluster 2 behaved as a hot tumor with a better immunotherapeutic response. Conclusions Referring to the above results, we established a m5C-related lncRNA model to evaluate the prognosis, TME, TMB, and clinical treatments for HNSCC patients. This novel assessment system is able to precisely predict the patients’ prognosis and identify hot and cold tumor subtypes clearly for HNSCC patients, providing ideas for clinical treatment.
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- 2023
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8. Iron metabolism-related genes reveal predictive value of acute coronary syndrome
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Cong Xu, Wanyang Li, Tangzhiming Li, Jie Yuan, Xinli Pang, Tao Liu, Benhui Liang, Lixin Cheng, Xin Sun, and Shaohong Dong
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acute coronary syndrome ,iron metabolism ,transcriptome ,prediction model ,diagnosis ,Therapeutics. Pharmacology ,RM1-950 - Abstract
Iron deficiency has detrimental effects in patients with acute coronary syndrome (ACS), which is a common nutritional disorder and inflammation-related disease affects up to one-third people worldwide. However, the specific role of iron metabolism in ACS progression is opaque. In this study, we construct an iron metabolism-related genes (IMRGs) based molecular signature of ACS and to identify novel iron metabolism gene markers for early stage of ACS. The IMRGs were mainly collected from Molecular Signatures Database (mSigDB) and two relevant studies. Two blood transcriptome datasets GSE61144 and GSE60993 were used for constructing the prediction model of ACS. After differential analysis, 22 IMRGs were differentially expressed and defined as DEIGs in the training set. Then, the 22 DEIGs were trained by the Elastic Net to build the prediction model. Five genes, PADI4, HLA-DQA1, LCN2, CD7, and VNN1, were determined using multiple Elastic Net calculations and retained to obtain the optimal performance. Finally, the generated model iron metabolism-related gene signature (imSig) was assessed by the validation set GSE60993 using a series of evaluation measurements. Compared with other machine learning methods, the performance of imSig using Elastic Net was superior in the validation set. Elastic Net consistently scores the higher than Lasso and Logistic regression in the validation set in terms of ROC, PRC, Sensitivity, and Specificity. The prediction model based on iron metabolism-related genes may assist in ACS early diagnosis.
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- 2022
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9. Long non-coding RNA pairs to assist in diagnosing sepsis
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Xubin Zheng, Kwong-Sak Leung, Man-Hon Wong, and Lixin Cheng
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Sepsis ,Diagnostics ,Signature ,Long non-coding RNA ,Relative expression ,Biotechnology ,TP248.13-248.65 ,Genetics ,QH426-470 - Abstract
Abstract Background Sepsis is the major cause of death in Intensive Care Unit (ICU) globally. Molecular detection enables rapid diagnosis that allows early intervention to minimize the death rate. Recent studies showed that long non-coding RNAs (lncRNAs) regulate proinflammatory genes and are related to the dysfunction of organs in sepsis. Identifying lncRNA signature with absolute abundance is challenging because of the technical variation and the systematic experimental bias. Results Cohorts (n = 768) containing whole blood lncRNA profiling of sepsis patients in the Gene Expression Omnibus (GEO) database were included. We proposed a novel diagnostic strategy that made use of the relative expressions of lncRNA pairs, which are reversed between sepsis patients and normal controls (eg. lncRNA i > lncRNA j in sepsis patients and lncRNA i
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- 2021
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10. HCMB: A stable and efficient algorithm for processing the normalization of highly sparse Hi-C contact data
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Honglong Wu, Xuebin Wang, Mengtian Chu, Dongfang Li, Lixin Cheng, and Ke Zhou
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Hi-C ,Normalization ,Matrix balancing ,Doubly stochastic matrix ,Sparsity ,Biotechnology ,TP248.13-248.65 - Abstract
The high-throughput genome-wide chromosome conformation capture (Hi-C) method has recently become an important tool to study chromosomal interactions where one can extract meaningful biological information including P(s) curve, topologically associated domains, A/B compartments, and other biologically relevant signals. Normalization is a critical pre-processing step of downstream analyses for the elimination of systematic and technical biases from chromatin contact matrices due to different mappability, GC content, and restriction fragment lengths. Especially, the problem of high sparsity puts forward a huge challenge on the correction, indicating the urgent need for a stable and efficient method for Hi-C data normalization. Recently, some matrix balancing methods have been developed to normalize Hi-C data, such as the Knight-Ruiz (KR) algorithm, but it failed to normalize contact matrices with high sparsity. Here, we presented an algorithm, Hi-C Matrix Balancing (HCMB), based on an iterative solution of equations, combining with linear search and projection strategy to normalize the Hi-C original interaction data. Both the simulated and experimental data demonstrated that HCMB is robust and efficient in normalizing Hi-C data and preserving the biologically relevant Hi-C features even facing very high sparsity. HCMB is implemented in Python and is freely accessible to non-commercial users at GitHub: https://github.com/HUST-DataMan/HCMB.
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- 2021
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11. Preservation of microvascular barrier function requires CD31 receptor-induced metabolic reprogramming
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Kenneth C. P. Cheung, Silvia Fanti, Claudio Mauro, Guosu Wang, Anitha S. Nair, Hongmei Fu, Silvia Angeletti, Silvia Spoto, Marta Fogolari, Francesco Romano, Dunja Aksentijevic, Weiwei Liu, Baiying Li, Lixin Cheng, Liwen Jiang, Juho Vuononvirta, Thanushiyan R. Poobalasingam, David M. Smith, Massimo Ciccozzi, Egle Solito, and Federica M. Marelli-Berg
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Science - Abstract
The mechanisms that restore endothelial barrier integrity following inflammation-induced breaching are incompletely understood. Here the authors show that the CD31 immune receptor contributes to reestablishing vascular integrity via its effects on endothelial cell metabolism.
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- 2020
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12. Whole blood transcriptomic investigation identifies long non-coding RNAs as regulators in sepsis
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Lixin Cheng, Chuanchuan Nan, Lin Kang, Ning Zhang, Sheng Liu, Huaisheng Chen, Chengying Hong, Youlian Chen, Zhen Liang, and Xueyan Liu
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Sepsis ,lncRNA ,Functional module ,Gene coexpression ,Survival analysis ,Differential analysis ,Medicine - Abstract
Abstract Background Sepsis is a fatal disease referring to the presence of a known or strongly suspected infection coupled with systemic and uncontrolled immune activation causing multiple organ failure. However, current knowledge of the role of lncRNAs in sepsis is still extremely limited. Methods We performed an in silico investigation of the gene coexpression pattern for the patients response to all-cause sepsis in consecutive intensive care unit (ICU) admissions. Sepsis coexpression gene modules were identified using WGCNA and enrichment analysis. lncRNAs were determined as sepsis biomarkers based on the interactions among lncRNAs and the identified modules. Results Twenty-three sepsis modules, including both differentially expressed modules and prognostic modules, were identified from the whole blood RNA expression profiling of sepsis patients. Five lncRNAs, FENDRR, MALAT1, TUG1, CRNDE, and ANCR, were detected as sepsis regulators based on the interactions among lncRNAs and the identified coexpression modules. Furthermore, we found that CRNDE and MALAT1 may act as miRNA sponges of sepsis related miRNAs to regulate the expression of sepsis modules. Ultimately, FENDRR, MALAT1, TUG1, and CRNDE were reannotated using three independent lncRNA expression datasets and validated as differentially expressed lncRNAs. Conclusion The procedure facilitates the identification of prognostic biomarkers and novel therapeutic strategies of sepsis. Our findings highlight the importance of transcriptome modularity and regulatory lncRNAs in the progress of sepsis.
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- 2020
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13. Predicting associations among drugs, targets and diseases by tensor decomposition for drug repositioning
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Ran Wang, Shuai Li, Lixin Cheng, Man Hon Wong, and Kwong Sak Leung
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Drug repositioning ,Drug-target-disease associations ,Tensor decomposition ,Clustering ,Computer applications to medicine. Medical informatics ,R858-859.7 ,Biology (General) ,QH301-705.5 - Abstract
Abstract Background Development of new drugs is a time-consuming and costly process, and the cost is still increasing in recent years. However, the number of drugs approved by FDA every year per dollar spent on development is declining. Drug repositioning, which aims to find new use of existing drugs, attracts attention of pharmaceutical researchers due to its high efficiency. A variety of computational methods for drug repositioning have been proposed based on machine learning approaches, network-based approaches, matrix decomposition approaches, etc. Results We propose a novel computational method for drug repositioning. We construct and decompose three-dimensional tensors, which consist of the associations among drugs, targets and diseases, to derive latent factors reflecting the functional patterns of the three kinds of entities. The proposed method outperforms several baseline methods in recovering missing associations. Most of the top predictions are validated by literature search and computational docking. Latent factors are used to cluster the drugs, targets and diseases into functional groups. Topological Data Analysis (TDA) is applied to investigate the properties of the clusters. We find that the latent factors are able to capture the functional patterns and underlying molecular mechanisms of drugs, targets and diseases. In addition, we focus on repurposing drugs for cancer and discover not only new therapeutic use but also adverse effects of the drugs. In the in-depth study of associations among the clusters of drugs, targets and cancer subtypes, we find there exist strong associations between particular clusters. Conclusions The proposed method is able to recover missing associations, discover new predictions and uncover functional clusters of drugs, targets and diseases. The clustering of drugs, targets and diseases, as well as the associations among the clusters, provides a new guiding framework for drug repositioning.
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- 2019
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14. Obvious Surface States Connecting to the Projected Triple Points in NaCl’s Phonon Dispersion
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Li Zhang, Fang Fang, Lixin Cheng, Huiming Lin, and Kai Wang
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DFT ,first-principles calculations ,phonon dispersion ,surface state ,NaCl ,Chemistry ,QD1-999 - Abstract
With the development of computer technology and theoretical chemistry, the speed and accuracy of first-principles calculations have significantly improved. Using first-principles calculations to predict new topological materials is a hot research topic in theoretical and computational chemistry. In this work, we focus on a well-known material, sodium chloride (NaCl), and propose that the triple point (TP), quadratic contact triple point (QCTP), linear and quadratic nodal lines can be found in the phonon dispersion of NaCl with Fm3¯ m type structure. More importantly, we propose that the clear surface states connected to the projected TP and QCTP are visible on the (001) surface. It is hoped that further experimental investigation and verification for these properties as mentioned above.
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- 2021
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15. Blood Circulating miRNA Pairs as a Robust Signature for Early Detection of Esophageal Cancer
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Yang Song, Suzhu Zhu, Ning Zhang, and Lixin Cheng
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microRNA ,biomarker ,esophageal cancer (EC) ,gene pair ,diagnosis ,Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Abstract
Esophageal cancer (EC) is a common malignant tumor in the digestive system which is often diagnosed at the middle and late stages. Noninvasive diagnosis using circulating miRNA as biomarkers enables accurate detection of early-stage EC to reduce mortality. We built a diagnostic signature consisting of four miRNA pairs for the early detection of EC using individualized Pairwise Analysis of Gene Expression (iPAGE). Profiling of miRNA expression identified 496 miRNA pairs with significant relative expression change. Four miRNA pairs consistently selected from LASSO were used to construct the final diagnostic model. The performance of the signature was validated using two independent datasets, yielding both AUCs and PRCs over 0.99. Furthermore, precision, recall, and F-score were also evaluated for clinical application, when a fixed threshold is given, resulting in all the scores are larger than 0.92 in the training set, test set, and two validation sets. Our results suggested that the 4-miRNA signature is a new biomarker for the early diagnosis of patients with EC. The clinical use of this signature would have improved the detection of EC for earlier therapy and more favorite prognosis.
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- 2021
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16. Exploiting locational and topological overlap model to identify modules in protein interaction networks
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Lixin Cheng, Pengfei Liu, Dong Wang, and Kwong-Sak Leung
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Protein interaction network ,Network clustering ,Subcellular localization ,Topological overlap ,Functional module ,Computer applications to medicine. Medical informatics ,R858-859.7 ,Biology (General) ,QH301-705.5 - Abstract
Abstract Background Clustering molecular network is a typical method in system biology, which is effective in predicting protein complexes or functional modules. However, few studies have realized that biological molecules are spatial-temporally regulated to form a dynamic cellular network and only a subset of interactions take place at the same location in cells. Results In this study, considering the subcellular localization of proteins, we first construct a co-localization human protein interaction network (PIN) and systematically investigate the relationship between subcellular localization and biological functions. After that, we propose a Locational and Topological Overlap Model (LTOM) to preprocess the co-localization PIN to identify functional modules. LTOM requires the topological overlaps, the common partners shared by two proteins, to be annotated in the same localization as the two proteins. We observed the model has better correspondence with the reference protein complexes and shows more relevance to cancers based on both human and yeast datasets and two clustering algorithms, ClusterONE and MCL. Conclusion Taking into consideration of protein localization and topological overlap can improve the performance of module detection from protein interaction networks.
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- 2019
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17. Evaluating the Consistency of Gene Methylation in Liver Cancer Using Bisulfite Sequencing Data
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Xubin Zheng, Qiong Wu, Haonan Wu, Kwong-Sak Leung, Man-Hon Wong, Xueyan Liu, and Lixin Cheng
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whole-genome bisulfite sequencing ,reduced-representation bisulfite sequencing ,targeted bisulfite sequencing ,liver cancer ,DNA methylation ,Biology (General) ,QH301-705.5 - Abstract
Bisulfite sequencing is considered as the gold standard approach for measuring DNA methylation, which acts as a pivotal part in regulating a variety of biological processes without changes in DNA sequences. In this study, we introduced the most prevalent methods for processing bisulfite sequencing data and evaluated the consistency of the data acquired from different measurements in liver cancer. Firstly, we introduced three commonly used bisulfite sequencing assays, i.e., reduced-representation bisulfite sequencing (RRBS), whole-genome bisulfite sequencing (WGBS), and targeted bisulfite sequencing (targeted BS). Next, we discussed the principles and compared different methods for alignment, quality assessment, methylation level scoring, and differentially methylated region identification. After that, we screened differential methylated genes in liver cancer through the three bisulfite sequencing assays and evaluated the consistency of their results. Ultimately, we compared bisulfite sequencing to 450 k beadchip and assessed the statistical similarity and functional association of differentially methylated genes (DMGs) among the four assays. Our results demonstrated that the DMGs measured by WGBS, RRBS, targeted BS and 450 k beadchip are consistently hypo-methylated in liver cancer with high functional similarity.
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- 2021
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18. Knockdown of lncRNA MALAT1 Alleviates LPS-Induced Acute Lung Injury via Inhibiting Apoptosis Through the miR-194-5p/FOXP2 Axis
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Chuan-chuan Nan, Ning Zhang, Kenneth C. P. Cheung, Hua-dong Zhang, Wei Li, Cheng-ying Hong, Huai-sheng Chen, Xue-yan Liu, Nan Li, and Lixin Cheng
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MALAT1 ,FOXP2 ,miR-194-5p ,apoptosis ,acute lung injury ,Biology (General) ,QH301-705.5 - Abstract
PurposeWe aimed to identify and verify the key genes and lncRNAs associated with acute lung injury (ALI) and explore the pathogenesis of ALI. Research showed that lower expression of the lncRNA metastasis-associated lung carcinoma transcript 1 (MALAT1) alleviates lung injury induced by lipopolysaccharide (LPS). Nevertheless, the mechanisms of MALAT1 on cellular apoptosis remain unclear in LPS-stimulated ALI. We investigated the mechanism of MALAT1 in modulating the apoptosis of LPS-induced human pulmonary alveolar epithelial cells (HPAEpiC).MethodsDifferentially expressed lncRNAs between the ALI samples and normal controls were identified using gene expression profiles. ALI-related genes were determined by the overlap of differentially expressed genes (DEGs), genes correlated with lung, genes correlated with key lncRNAs, and genes sharing significantly high proportions of microRNA targets with MALAT1. Quantitative real-time PCR (qPCR) was applied to detect the expression of MALAT1, microRNA (miR)-194-5p, and forkhead box P2 (FOXP2) mRNA in 1 μg/ml LPS-treated HPAEpiC. MALAT1 knockdown vectors, miR-194-5p inhibitors, and ov-FOXP2 were constructed and used to transfect HPAEpiC. The influence of MALAT1 knockdown on LPS-induced HPAEpiC proliferation and apoptosis via the miR-194-5p/FOXP2 axis was determined using Cell counting kit-8 (CCK-8) assay, flow cytometry, and Western blotting analysis, respectively. The interactions between MALAT1, miR-194-5p, and FOXP2 were verified using dual-luciferase reporter gene assay.ResultsWe identified a key lncRNA (MALAT1) and three key genes (EYA1, WNT5A, and FOXP2) that are closely correlated with the pathogenesis of ALI. LPS stimulation promoted MALAT1 expression and apoptosis and also inhibited HPAEpiC viability. MALAT1 knockdown significantly improved viability and suppressed the apoptosis of LPS-stimulated HPAEpiC. Moreover, MALAT1 directly targeted miR-194-5p, a downregulated miRNA in LPS-stimulated HPAEpiC, when FOXP2 was overexpressed. MALAT1 knockdown led to the overexpression of miR-194-5p and restrained FOXP2 expression. Furthermore, inhibition of miR-194-5p exerted a rescue effect on MALAT1 knockdown of FOXP2, whereas the overexpression of FOXP2 reversed the effect of MALAT1 knockdown on viability and apoptosis of LPS-stimulated HPAEpiC.ConclusionOur results demonstrated that MALAT1 knockdown alleviated HPAEpiC apoptosis by competitively binding to miR-194-5p and then elevating the inhibitory effect on its target FOXP2. These data provide a novel insight into the role of MALAT1 in the progression of ALI and potential diagnostic and therapeutic strategies for ALI patients.
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- 2020
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19. A long non‐coding RNA signature for diagnostic prediction of sepsis upon ICU admission
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Xueyan Liu, Xubin Zheng, Jun Wang, Ning Zhang, Kwong‐Sak Leung, Xiufeng Ye, and Lixin Cheng
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Medicine (General) ,R5-920 - Published
- 2020
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20. SIRT7 Is a Prognostic Biomarker Associated With Immune Infiltration in Luminal Breast Cancer
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Qin Huo, Zhenwei Li, Lixin Cheng, Fan Yang, and Ni Xie
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sirtuin 7 (SIRT7) ,gene expression ,tumor-infiltrating ,prognosis ,breast cancer ,Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Abstract
Background: Sirtuin 7 (SIRT7), a protein-coding gene whose abnormal expression and function are associated with carcinogenesis. However, the prognosis of SIRT7 in different breast cancer subtypes and its correlation with tumor-infiltrating lymphocytes remain unclear.Methods: The expression and survival data of SIRT7 in patients with breast cancer were analyzed using Tumor Immune Estimation Resource (TIMER), Gene Expression Profiling Interaction Analysis (GEPIA), The Human Protein Atlas (HPA), UALCAN, Breast Cancer Gene-Expression Miner (BC-GenExMiner), and Kaplan-Meier plotter databases. Also, the expression correlations between SIRT7 and immune infiltration gene markers were analyzed using TIMER and further verified the results using immunohistochemistry.Results: SIRT7 exhibited higher expression levels in breast cancer tissues than the adjacent normal tissues. SIRT7 expression was significantly correlated with sample type, subclass, cancer stage, menopause status, age, nodal status, estrogen receptor (ER), progesterone receptor (PR), and triple-negative status. High SIRT7 expression was associated with poor prognosis in breast cancer-luminal A [overall survival (OS): hazard ratio (HR) = 1.54, p = 1.70e-02; distant metastasis-free survival (DMFS): HR = 1.56, p = 2.60e-03]. Moreover, the expression of SIRT7 was positively correlated with the expression of IRF5 (M1 macrophages marker, r = 0.165, p = 1.13e-04) and PD1 (T cell exhaustion marker, r = 0.134, p = 1.74e-03). These results suggested that the expression of SIRT7 was related to M1 macrophages and T cell exhaustion infiltration in breast cancer-luminal.Conclusions: These findings demonstrate that the high expression of SIRT7 indicates poor prognosis in breast cancer as well as increased immune infiltration levels of M1 macrophages and T cell exhaustion in breast cancer-luminal. Thus, SIRT7 may serve as a candidate prognostic biomarker for determining prognosis associated with immune infiltration in breast cancer-luminal.
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- 2020
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21. Normalization Methods for the Analysis of Unbalanced Transcriptome Data: A Review
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Xueyan Liu, Nan Li, Sheng Liu, Jun Wang, Ning Zhang, Xubin Zheng, Kwong-Sak Leung, and Lixin Cheng
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normalization ,microarray ,RNA-seq ,transcriptome ,subset reference ,regression ,Biotechnology ,TP248.13-248.65 - Abstract
Dozens of normalization methods for correcting experimental variation and bias in high-throughput expression data have been developed during the last two decades. Up to 23 methods among them consider the skewness of expression data between sample states, which are even more than the conventional methods, such as loess and quantile. From the perspective of reference selection, we classified the normalization methods for skewed expression data into three categories, data-driven reference, foreign reference, and entire gene set. We separately introduced and summarized these normalization methods designed for gene expression data with global shift between compared conditions, including both microarray and RNA-seq, based on the reference selection strategies. To our best knowledge, this is the most comprehensive review of available preprocessing algorithms for the unbalanced transcriptome data. The anatomy and summarization of these methods shed light on the understanding and appropriate application of preprocessing methods.
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- 2019
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22. Efficacy and safety of radiofrequency ablation in the treatment of low-grade squamous intraepithelial lesions complicated with high-risk human papillomavirus infection.
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Penghua Cui, Lijing Li, Yaqian Lin, Xingcha Wang, and Lixin Cheng
- Abstract
This study evaluates the efficacy and safety of radiofrequency ablation (RFA) in treating low-grade squamous intraepithelial lesions (LSIL) with high-risk human papillomavirus (hrHPV) infection. The clinical data of 100 patients with LSIL and hrHPV infection were retrospectively analyzed. Patients were divided into the RFA group and the 5- aminolevulinic acid photodynamic therapy (ALA-PDT) group according to the treatment protocol, with 50 patients per group. Efficacy, negative hrHPV seroconversion, mental status, treatment satisfaction, and the occurrence of adverse reactions were compared between the two groups. The RFA group had a significantly higher total effective rate (94.00%) than the ALA-PDT group (74.00%). At 3 and 6-month follow-ups, the negative hrHPV seroconversion rate was significantly higher in the RFA group than in the ALA-PDT group (p < 0.05). At 6 months after treatment, the RFA group showed significantly lower Self-Rating Anxiety Scale scores and Self-Rated Depression Scale scores and higher satisfaction compared to the ALA-PDT group (all p < 0.05). The incidence of postoperative complications rate was not significantly different between the RFA group and ALA-PDT group (χ² = 3.184, p = 0.074). RFA is an effective and safe treatment that improves anxiety, depression, and satisfaction in patients with LSIL complicated by hrHPV infection. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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23. Porcine epidemic diarrhea virus (PEDV) ORF3 protein inhibits cellular type I interferon signaling through down-regulating proteins expression in RLRs-mediated pathway
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Liang Zheng, Hongxian Liu, Zhipiao Tian, Matthew Kay, Hongyu Wang, Lixin Cheng, Wenlong Xia, Jiankang Zhang, Wenling Wang, Hongwei Cao, Xiaojuan Xu, Zhenqiu Gao, Rongqing Geng, Zhijun Wu, and Hua Zhang
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General Veterinary - Published
- 2023
24. Representation of commutators on Schatten p-classes.
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Lixin Cheng and Zhizheng Yu
- Subjects
COMMUTATION (Electricity) ,COMMUTATORS (Operator theory) ,LINEAR operators ,BANACH spaces - Abstract
Let Cp be the Schatten p-class of ℓ2 for 1
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- 2024
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25. A Review on Research and Technology Development of Green Hydrogen Energy Systems with Thermal Management and Heat Recovery
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Lixin Cheng, Zhixiong Guo, and Guodong Xia
- Subjects
Fluid Flow and Transfer Processes ,Mechanical Engineering ,Condensed Matter Physics - Published
- 2023
26. A Critical Review on Heat Transfer of Supercritical Fluids
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Qingyang Wang, Jinliang Xu, Chengrui Zhang, Bingtao Hao, and Lixin Cheng
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Fluid Flow and Transfer Processes ,Mechanical Engineering ,Condensed Matter Physics - Published
- 2023
27. IN CELEBRATION OF PROFESSOR JOHN RICHARD THOME ON HIS 70TH BIRTHDAY
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Lixin Cheng, Bofeng Bai, Guodong Xia, Hai-Bin Zhang, and Zhixiong Guo
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Fluid Flow and Transfer Processes ,Mechanical Engineering ,Condensed Matter Physics - Abstract
N/A
- Published
- 2023
28. Representation of measures of noncompactness and its applications related to an initial value problem in Banach spaces
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Xiaoling Chen and Lixin Cheng
- Subjects
General Mathematics - Published
- 2022
29. Study of the Effect of the Reduced Pressure on a Mechanistic Heat Transfer Model for Flow Boiling of CO2 in Macroscale and Microscale Tubes
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Lixin Cheng and Guodong Xia
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Fluid Flow and Transfer Processes ,Mechanical Engineering ,Condensed Matter Physics - Published
- 2022
30. Advanced Heat Transfer Technologies: Fundamentals and Applications
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Lixin Cheng, Ke Wang, Guodong Xia, and Afshin J. Ghajar
- Subjects
Fluid Flow and Transfer Processes ,Mechanical Engineering ,Condensed Matter Physics - Published
- 2023
31. Magnetic Resonance/Infrared Dual-Modal Imaging-Guided Synergistic Photothermal/Photodynamic Therapy Nanoplatform Based on Cu1.96S-Gd@FA for Precision Cancer Theranostics
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Lixin Cheng, Dongmiao Sang, Fangyu Zhao, Lili Yang, Zhilin Guo, Xinfeng Zhang, Qiaoqiao Yang, Wenju Qiao, Xiaohong Sun, Xiaohong Guan, Haoyu Wang, Jiannan Wang, Hongyan Zou, Xiu'e Li, Fang Fang, Yang Li, Shujun Zhang, Lina Wu, Huiming Lin, Xilin Sun, and Kai Wang
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Biomaterials ,Colloid and Surface Chemistry ,Surfaces, Coatings and Films ,Electronic, Optical and Magnetic Materials - Published
- 2022
32. On nullity and fullness of measures of noncompactness
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Xiaoling, Chen, primary, Lixin, Cheng, additional, and Wuyi, He, additional
- Published
- 2023
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33. Danes' Drop Theorem in Locally Convex Spaces
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Lixin, Cheng, Yunchi, Zhou, and Fong, Zhang
- Published
- 1996
34. Targeting adipocyte ESRRA rebalances bone and marrow adipocyte homeostasis through opposite regulation of LEPTIN and SPP1
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Tongling Huang, Zihui Wang, Zhaocheng Lu, Lu Gao, Jun Gao, Lixin Cheng, and Min Guan
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General Medicine - Published
- 2023
35. Deciphering associations between gut microbiota and clinical factors using microbial modules
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Ran Wang, Xubin Zheng, Fangda Song, Man Hon Wong, Kwong Sak Leung, and Lixin Cheng
- Subjects
Statistics and Probability ,Computational Mathematics ,Computational Theory and Mathematics ,Molecular Biology ,Biochemistry ,Computer Science Applications - Abstract
Motivation Human gut microbiota plays a vital role in maintaining body health. The dysbiosis of gut microbiota is associated with a variety of diseases. It is critical to uncover the associations between gut microbiota and disease states as well as other intrinsic or environmental factors. However, inferring alterations of individual microbial taxa based on relative abundance data likely leads to false associations and conflicting discoveries in different studies. Moreover, the effects of underlying factors and microbe–microbe interactions could lead to the alteration of larger sets of taxa. It might be more robust to investigate gut microbiota using groups of related taxa instead of the composition of individual taxa. Results We proposed a novel method to identify underlying microbial modules, i.e. groups of taxa with similar abundance patterns affected by a common latent factor, from longitudinal gut microbiota and applied it to inflammatory bowel disease (IBD). The identified modules demonstrated closer intragroup relationships, indicating potential microbe–microbe interactions and influences of underlying factors. Associations between the modules and several clinical factors were investigated, especially disease states. The IBD-associated modules performed better in stratifying the subjects compared with the relative abundance of individual taxa. The modules were further validated in external cohorts, demonstrating the efficacy of the proposed method in identifying general and robust microbial modules. The study reveals the benefit of considering the ecological effects in gut microbiota analysis and the great promise of linking clinical factors with underlying microbial modules. Availability and implementation https://github.com/rwang-z/microbial_module.git.
- Published
- 2023
36. Supplementary Methods, Results, Figure 1, Tables 1-7 from Evaluating the Consistency of Differential Expression of MicroRNA Detected in Human Cancers
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Zheng Guo, Chenguang Wang, Lixin Cheng, Wenyuan Zhao, Yuannv Zhang, Yunyan Gu, Dong Wang, Xinwu Guo, Hongwei Wang, Ruihong Wu, and Xue Gong
- Abstract
Supplementary Methods, Results, Figure 1, Tables 1-7 from Evaluating the Consistency of Differential Expression of MicroRNA Detected in Human Cancers
- Published
- 2023
37. Data from Evaluating the Consistency of Differential Expression of MicroRNA Detected in Human Cancers
- Author
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Zheng Guo, Chenguang Wang, Lixin Cheng, Wenyuan Zhao, Yuannv Zhang, Yunyan Gu, Dong Wang, Xinwu Guo, Hongwei Wang, Ruihong Wu, and Xue Gong
- Abstract
Differential expression of microRNA (miRNA) is involved in many human diseases and could potentially be used as a biomarker for disease diagnosis, prognosis, and therapy. However, inconsistency has often been found among differentially expressed miRNAs identified in various studies when using miRNA arrays for a particular disease such as a cancer. Before broadly applying miRNA arrays in a clinical setting, it is critical to evaluate inconsistent discoveries in a rational way. Thus, using data sets from 2 types of cancers, our study shows that the differentially expressed miRNAs detected from multiple experiments for each cancer exhibit stable regulation direction. This result also indicates that miRNA arrays could be used to reliably capture the signals of the regulation direction of differentially expressed miRNAs in cancer. We then assumed that 2 differentially expressed miRNAs with the same regulation direction in a particular cancer play similar functional roles if they regulate the same set of cancer-associated genes. On the basis of this hypothesis, we proposed a score to assess the functional consistency between differentially expressed miRNAs separately extracted from multiple studies for a particular cancer. We showed although lists of differentially expressed miRNAs identified from different studies for each cancer were highly variable, they were rather consistent at the level of function. Thus, the detection of differentially expressed miRNAs in various experiments for a certain disease tends to be functionally reproducible and capture functionally related differential expression of miRNAs in the disease. Mol Cancer Ther; 10(5); 752–60. ©2011 AACR.
- Published
- 2023
38. bvnGPS: a generalizable diagnostic model for acute bacterial and viral infection using integrative host transcriptomics and pretrained neural networks
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Qizhi Li, Xubin Zheng, Jize Xie, Ran Wang, Mengyao Li, Man-Hon Wong, Kwong-Sak Leung, Shuai Li, Qingshan Geng, and Lixin Cheng
- Subjects
Statistics and Probability ,Computational Mathematics ,Computational Theory and Mathematics ,Molecular Biology ,Biochemistry ,Computer Science Applications - Abstract
MotivationThe confusion of acute inflammation infected by virus and bacteria or noninfectious inflammation will lead to missing the best therapy occasion resulting in poor prognoses. The diagnostic model based on host gene expression has been widely used to diagnose acute infections, but the clinical usage was hindered by the capability across different samples and cohorts due to the small sample size for signature training and discovery.ResultsHere, we construct a large-scale dataset integrating multiple host transcriptomic data and analyze it using a sophisticated strategy which removes batch effect and extracts the common information from different cohorts based on the relative expression alteration of gene pairs. We assemble 2680 samples across 16 cohorts and separately build gene pair signature (GPS) for bacterial, viral, and noninfected patients. The three GPSs are further assembled into an antibiotic decision model (bacterial–viral–noninfected GPS, bvnGPS) using multiclass neural networks, which is able to determine whether a patient is bacterial infected, viral infected, or noninfected. bvnGPS can distinguish bacterial infection with area under the receiver operating characteristic curve (AUC) of 0.953 (95% confidence interval, 0.948–0.958) and viral infection with AUC of 0.956 (0.951–0.961) in the test set (N = 760). In the validation set (N = 147), bvnGPS also shows strong performance by attaining an AUC of 0.988 (0.978–0.998) on bacterial-versus-other and an AUC of 0.994 (0.984–1.000) on viral-versus-other. bvnGPS has the potential to be used in clinical practice and the proposed procedure provides insight into data integration, feature selection and multiclass classification for host transcriptomics data.Availability and implementationThe codes implementing bvnGPS are available at https://github.com/Ritchiegit/bvnGPS. The construction of iPAGE algorithm and the training of neural network was conducted on Python 3.7 with Scikit-learn 0.24.1 and PyTorch 1.7. The visualization of the results was implemented on R 4.2, Python 3.7, and Matplotlib 3.3.4.
- Published
- 2023
39. Selected Papers from the 2nd International Symposium on Thermal-Fluid Dynamics (ISTFD2021)
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Lixin Cheng, Bofeng Bai, and Afshin J. Ghajar
- Subjects
Fluid Flow and Transfer Processes ,Mechanical Engineering ,Condensed Matter Physics - Published
- 2022
40. 𝐾(ℓ_{𝑝},ℓ_{𝑞}) is a Lipschitz retract of 𝐵(ℓ_{𝑝},ℓ_{𝑞})
- Author
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Lixin Cheng, Wuyi He, and Sijie Luo
- Subjects
Applied Mathematics ,General Mathematics - Abstract
For two Banach spaces X X and Y Y , we denote by K ( X , Y ) K(X,Y) (resp. B ( X , Y ) B(X,Y) ) the space of all compact (resp. bounded) linear operators from X X to Y Y . In this paper, we show that for 1 ≤ p , q > ∞ 1\leq p,q>\infty , K ( ℓ p , ℓ q ) K(\ell _{p},\ell _{q}) is an 8-Lipschitz retract of B ( ℓ p , ℓ q ) B(\ell _{p},\ell _{q}) .
- Published
- 2022
41. A set-valued extension of the Mazur–Ulam theorem
- Author
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Zheming Zheng and Lixin Cheng
- Subjects
Set (abstract data type) ,Discrete mathematics ,Mazur–Ulam theorem ,General Mathematics ,Extension (predicate logic) ,Mathematics - Published
- 2022
42. Co-expression module analysis reveals expression homogeneity of module members for coding and non-coding genes in sepsis
- Author
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Xiaojun Liu, Chengying Hong, Yichun Jiang, Youlian Chen, Yonghui Ma, Huaisheng Chen, Xueyan Liu, and Lixin Cheng
- Abstract
Sepsis is a condition that results from a harmful or damaging host response to infection with organ dysfunction. Every year about 20 million people are dead owing to sepsis and its mortality rates is as high as 20%. However, no studies have been carried out to investigate sepsis from the system biology point of view, since previous studies mainly focused on individual genes in sepsis, ignoring the interactions and associations among the genes and transcripts. Here, we explored the expression alteration of both mRNAs and long non-coding RNAs (lncRNAs) in sepsis on a genome-wide scale, on the basis of six microarray datasets. Co-expression networks were conducted to identify mRNA and lncRNA modules, respectively. Comparing with the normal modules, we observed that the mRNA/lncRNA members in sepsis module tend to express in a homogeneous way, a majority of them are expressed in the same direction. Furthermore, consistent modules among diverse datasets were determined with 20 common mRNA members and two lncRNAs, CHRM3-AS2 and PRKCQ-AS1, which are expected to be candidate regulators of sepsis. Our results reveal that the up-regulated common mRNAs are mainly involved in the processes of neutrophil mediated immunity, while the down-regulated mRNAs and lncRNAs are significantly overrepresented in T-cell mediated immunity functions. This study concentrated on co-expression pattern of mRNAs and lncRNAs in sepsis to provide a novel perspective and insight into sepsis transcriptome, which may facilitate the exploration of candidate therapeutic targets and molecular biomarkers for sepsis.
- Published
- 2023
43. Characterizations of B-valued concentration inequalities via the Rademacher type
- Author
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Lixin Cheng, Wuyi He, and Sijie Luo
- Subjects
Geometry and Topology ,Analysis - Published
- 2023
44. CO2 Evaporation Process Modeling and Evaporator Design
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Lixin Cheng, Guodong Xia, and Qinling Li
- Published
- 2023
45. GPGPS: a robust prognostic gene pair signature of glioma ensembling IDH mutation and 1p/19q co-deletion
- Author
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Lixin Cheng, Haonan Wu, Xubin Zheng, Ning Zhang, Pengfei Zhao, Ran Wang, Qiong Wu, Tao Liu, Xiaojun Yang, and Qingshan Geng
- Subjects
Statistics and Probability ,Computational Mathematics ,Computational Theory and Mathematics ,Molecular Biology ,Biochemistry ,Computer Science Applications - Abstract
Motivation Many studies have shown that IDH mutation and 1p/19q co-deletion can serve as prognostic signatures of glioma. Although these genetic variations affect the expression of one or more genes, the prognostic value of gene expression related to IDH and 1p/19q status is still unclear. Results We constructed an ensemble gene pair signature for the risk evaluation and survival prediction of glioma based on the prior knowledge of the IDH and 1p/19q status. First, we separately built two gene pair signatures IDH-GPS and 1p/19q-GPS and elucidated that they were useful transcriptome markers projecting from corresponding genome variations. Then, the gene pairs in these two models were assembled to develop an integrated model named Glioma Prognostic Gene Pair Signature (GPGPS), which demonstrated high area under the curves (AUCs) to predict 1-, 3- and 5-year overall survival (0.92, 0.88 and 0.80) of glioma. GPGPS was superior to the single GPSs and other existing prognostic signatures (avg AUC = 0.70, concordance index = 0.74). In conclusion, the ensemble prognostic signature with 10 gene pairs could serve as an independent predictor for risk stratification and survival prediction in glioma. This study shed light on transferring knowledge from genetic alterations to expression changes to facilitate prognostic studies. Availability and implementation Codes are available at https://github.com/Kimxbzheng/GPGPS.git Supplementary information Supplementary data are available at Bioinformatics online.
- Published
- 2023
46. A WSN approach to unmanned aerial surveillance of traffic anomalies: Some challenges and potential solutions.
- Author
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David Olalekan Afolabi, Ka Lok Man, Hai-Ning Liang, Eng Gee Lim, Zhun Shen, Chi-Un Lei, Tomas Krilavicius, Yue Yang, Lixin Cheng, Vladimir Hahanov, and Igor Yemelyanov
- Published
- 2013
- Full Text
- View/download PDF
47. A distinct giant coat protein complex II vesicle population in Arabidopsis thaliana
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Xiangfeng Wang, Yusong Guo, Haidi Yin, Lixin Cheng, Yonglun Zeng, Wilson Chun Yu Lau, Qian Wu, Liwen Jiang, Wenhan Cao, Wenxin Zhang, Baiying Li, Yan Huang, and Zhongping Yao
- Subjects
education.field_of_study ,Endoplasmic reticulum ,Vesicle coat ,Population ,Plant Science ,Biology ,Golgi apparatus ,biology.organism_classification ,Cell biology ,Transport protein ,symbols.namesake ,Arabidopsis ,symbols ,Arabidopsis thaliana ,education ,COPII - Abstract
Plants live as sessile organisms with large-scale gene duplication events and subsequent paralogue divergence during evolution. Notably, plant paralogues are expressed tissue-specifically and fine-tuned by phytohormones during various developmental processes. The coat protein complex II (COPII) is a highly conserved vesiculation machinery mediating protein transport from the endoplasmic reticulum to the Golgi apparatus in eukaryotes1. Intriguingly, Arabidopsis COPII paralogues greatly outnumber those in yeast and mammals2–6. However, the functional diversity and underlying mechanism of distinct COPII paralogues in regulating protein endoplasmic reticulum export and coping with various adverse environmental stresses are poorly understood. Here we characterize a novel population of COPII vesicles produced in response to abscisic acid, a key phytohormone regulating abiotic stress responses in plants. These hormone-induced giant COPII vesicles are regulated by an Arabidopsis-specific COPII paralogue and carry stress-related channels/transporters for alleviating stresses. This study thus provides a new mechanism underlying abscisic acid-induced stress responses via the giant COPII vesicles and answers a long-standing question on the evolutionary significance of gene duplications in Arabidopsis. The coat protein complex II (COPII) is a type of specialized vesicle coat protein that mediates vesicle trafficking from the endoplasmic reticulum (ER) to the Golgi apparatus. A population of giant COPII vesicles is identified and shown to be produced in response to the plant hormone abscisic acid (ABA) and abiotic stresses in Arabidopsis.
- Published
- 2021
48. SMILE: A Novel Procedure for Subcellular Module Identification with Localization Expansion.
- Author
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Lixin Cheng, Pengfei Liu, and Kwong-Sak Leung
- Published
- 2017
- Full Text
- View/download PDF
49. Phospholipase A
- Author
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Xin, Tang, Tiantian, Wei, Mingjing, Guan, Peiyun, Li, Yajun, Pu, Lixin, Cheng, Zhifeng, Zhou, Ping, Fu, and Ling, Zhang
- Abstract
Acute kidney injury (AKI) is one of common complications of wasp/bee stings. Phospholipase APLAThe results showed that PLAIn the present study, PLA
- Published
- 2022
50. On distal flows and common fixed point theorems in Banach spaces
- Author
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Lixin Cheng and Changchi Huang
- Subjects
Applied Mathematics ,Analysis - Published
- 2023
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