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Featured researches published by Liucun Zhu.


Scientific Reports | 2016

Transcriptome sequencing uncovers a three–long noncoding RNA signature in predicting breast cancer survival

Wenna Guo; Qiang Wang; Yueping Zhan; Xijia Chen; Qi Yu; Jiawei Zhang; Yi Wang; Xin-jian Xu; Liucun Zhu

Long noncoding RNAs (lncRNAs) play a crucial role in tumorigenesis. The aim of this study is to identify lncRNA signature that can predict breast cancer patient survival. RNA expression data from 1064 patients were downloaded from The Cancer Genome Atlas project. Cox regression, Kaplan–Meier, and receiver operating characteristic (ROC) analyses were performed to construct a model for predicting the overall survival (OS) of patients and evaluate it. A model consisting of three lncRNA genes (CAT104, LINC01234, and STXBP5-AS1) was identified. The Kaplan–Meier analysis and ROC curves proved that the model could predict the prognostic survival with good sensitivity and specificity in both the validation set (AUC = 0.752, 95% confidence intervals (CI): 0.651–0.854) and the microarray dataset (AUC = 0.714, 95%CI: 0.615–0.814). Further study showed the three-lncRNA signature was not only pervasive in different breast cancer stages, subtypes and age groups, but also provides more accurate prognostic information than some widely known biomarkers. The results suggested that RNA-seq transcriptome profiling provides that the three-lncRNA signature is an independent prognostic biomarker, and have clinical significance. In addition, lncRNA, miRNA, and mRNA interaction network indicated lncRNAs may intervene in breast cancer pathogenesis by binding to miR-190b, acting as competing endogenous RNAs.


PLOS ONE | 2016

A Shortest-Path-Based Method for the Analysis and Prediction of Fruit-Related Genes in Arabidopsis thaliana

Liucun Zhu; Yu-Hang Zhang; Fangchu Su; Lei Chen; Tao Huang; Yu-Dong Cai

Biologically, fruits are defined as seed-bearing reproductive structures in angiosperms that develop from the ovary. The fertilization, development and maturation of fruits are crucial for plant reproduction and are precisely regulated by intrinsic genetic regulatory factors. In this study, we used Arabidopsis thaliana as a model organism and attempted to identify novel genes related to fruit-associated biological processes. Specifically, using validated genes, we applied a shortest-path-based method to identify several novel genes in a large network constructed using the protein-protein interactions observed in Arabidopsis thaliana. The described analyses indicate that several of the discovered genes are associated with fruit fertilization, development and maturation in Arabidopsis thaliana.


Biochimica et Biophysica Acta | 2017

Network-based method for mining novel HPV infection related genes using random walk with restart algorithm

Liucun Zhu; Fangchu Su; YaoChen Xu; Quan Zou

The human papillomavirus (HPV), a common virus that infects the reproductive tract, may lead to malignant changes within the infection area in certain cases and is directly associated with such cancers as cervical cancer, anal cancer, and vaginal cancer. Identification of novel HPV infection related genes can lead to a better understanding of the specific signal pathways and cellular processes related to HPV infection, providing information for the development of more efficient therapies. In this study, several novel HPV infection related genes were predicted by a computation method based on the known genes involved in HPV infection from HPVbase. This method applied the algorithm of random walk with restart (RWR) to a protein-protein interaction (PPI) network. The candidate genes were further filtered by the permutation and association tests. These steps eliminated genes occupying special positions in the PPI network and selected key genes with strong associations to known HPV infection related genes based on the interaction confidence and functional similarity obtained from published databases, such as STRING, gene ontology (GO) terms and KEGG pathways. Our study identified 104 novel HPV infection related genes, a number of which were confirmed to relate to the infection processes and complications of HPV infection, as reported in the literature. These results demonstrate the reliability of our method in identifying HPV infection related genes. This article is part of a Special Issue entitled: Accelerating Precision Medicine through Genetic and Genomic Big Data Analysis edited by Yudong Cai & Tao Huang.


Oncotarget | 2017

A six-mRNA signature model for the prognosis of head and neck squamous cell carcinoma

Wenna Guo; Xijia Chen; Liucun Zhu; Qiang Wang

Head and neck squamous cell carcinoma (HNSCC), one of the most common cancers with high morbidity and mortality rates worldwide, has a poor prognosis. The transcriptome sequencing data of 500 patients with HNSCC in the TCGA dataset were assessed to find biomarkers associated with HNSCC prognosis so as to improve the prognosis of patients with HNSCC. The patients were divided into the training and testing sets. A model of six mRNAs (FRMD5, PCMT1, PDGFA, TMC8, YIPF4, ZNF324B) that could predict patient prognosis was identified in the training set using the Cox regression analysis. According to this model, the patients were divided into high-risk and low-risk groups. The Kaplan-Meier analysis showed that the high-risk group showed significantly shorter overall survival time compared with the low-risk group in both training and testing sets. The receiver operating characteristic analysis further confirmed high sensitivity and specificity for the model, which was more accurate compared with some known biomarkers in predicting HNSCC prognosis. Moreover, the model was applicable to patients of different ages, genders, clinical stages, tumor locations, smoking history, and human papillomavirus (HPV) status, as well as to microarray dataset. This model could be used as a novel biomarker for the prognosis of HNSCC and a significant tool for guiding the clinical treatment of HNSCC. The risk score acquired from the model might contribute to improving outcome prediction and management for patients with HNSCC, indicating its clinical significance.


Combinatorial Chemistry & High Throughput Screening | 2016

Prediction of bioactive compound pathways using chemical interaction and structural information.

Shiwen Cheng; Changming Zhu; Chen Chu; Tao Huang; Xiangyin Kong; Liucun Zhu

The functional screening of compounds is an important topic in chemistry and biomedicine that can uncover the essential properties of compounds and provide information concerning their correct use. In this study, we investigated the bioactive compounds reported in Selleckchem, which were assigned to 22 pathways. A computational method was proposed to identify the pathways of the bioactive compounds. Unlike most existing methods that only consider compound structural information, the proposed method adopted both the structural and interaction information from the compounds. The total accuracy achieved by our method was 61.79% based on jackknife analysis of a dataset of 1,832 bioactive compounds. Its performance was quite good compared with that of other machine learning algorithms (with total accuracies less than 46%). Finally, some of the false positives obtained by the method were analyzed to investigate the likelihood of compounds being annotated to new pathways.


Current Bioinformatics | 2017

Identification of Drug-Drug Interactions Using Chemical Interactions

Lei Chen; Chen Chu; Yu-Hang Zhang; Mingyue Zheng; Liucun Zhu; Xiangyin Kong; Tao Huang


Biochimica et Biophysica Acta | 2016

Investigation of the roles of trace elements during hepatitis C virus infection using protein-protein interactions and a shortest path algorithm.

Liucun Zhu; XiJia Chen; Xiangyin Kong; Yu-Dong Cai


American Journal of Translational Research | 2015

Plasma microRNAs to predict the response of radiotherapy in esophageal squamous cell carcinoma patients.

Qi Yu; Bingxin Li; Ping Li; Zeliang Shi; Amanda Vaughn; Liucun Zhu; Shen Fu


Combinatorial Chemistry & High Throughput Screening | 2016

Analysis of the relationship between PM2.5 and lung cancer based on protein-protein interactions.

Yang Shu; Liucun Zhu; Fei Yuan; Xiangyin Kong; Tao Huang; Yu-Dong Cai


Journal of Dermatological Science | 2017

Melanoma long non-coding RNA signature predicts prognostic survival and directs clinical risk-specific treatments

Xijia Chen; Wenna Guo; Xin-jian Xu; Fangchu Su; Yi Wang; Yingzheng Zhang; Qiang Wang; Liucun Zhu

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Tao Huang

Chinese Academy of Sciences

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Xiangyin Kong

Chinese Academy of Sciences

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Yu-Hang Zhang

Chinese Academy of Sciences

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Lei Chen

Shanghai Maritime University

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