29 results on '"Yingke Ma"'
Search Results
2. CCAS: One-stop and comprehensive annotation system for individual cancer genome at multi-omics level
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Xinchang Zheng, Wenting Zong, Zhaohua Li, Yingke Ma, Yanling Sun, Zhuang Xiong, Song Wu, Fei Yang, Wei Zhao, Congfan Bu, Zhenglin Du, Jingfa Xiao, and Yiming Bao
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comprehensive annotation ,multi-omics ,individual cancer patient ,databases integration ,web server ,Genetics ,QH426-470 - Abstract
Due to the explosion of cancer genome data and the urgent needs for cancer treatment, it is becoming increasingly important and necessary to easily and timely analyze and annotate cancer genomes. However, tumor heterogeneity is recognized as a serious barrier to annotate cancer genomes at the individual patient level. In addition, the interpretation and analysis of cancer multi-omics data rely heavily on existing database resources that are often located in different data centers or research institutions, which poses a huge challenge for data parsing. Here we present CCAS (Cancer genome Consensus Annotation System, https://ngdc.cncb.ac.cn/ccas/#/home), a one-stop and comprehensive annotation system for the individual patient at multi-omics level. CCAS integrates 20 widely recognized resources in the field to support data annotation of 10 categories of cancers covering 395 subtypes. Data from each resource are manually curated and standardized by using ontology frameworks. CCAS accepts data on single nucleotide variant/insertion or deletion, expression, copy number variation, and methylation level as input files to build a consensus annotation. Outputs are arranged in the forms of tables or figures and can be searched, sorted, and downloaded. Expanded panels with additional information are used for conciseness, and most figures are interactive to show additional information. Moreover, CCAS offers multidimensional annotation information, including mutation signature pattern, gene set enrichment analysis, pathways and clinical trial related information. These are helpful for intuitively understanding the molecular mechanisms of tumors and discovering key functional genes.
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- 2022
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3. GMQN: A Reference-Based Method for Correcting Batch Effects and Probe Bias in HumanMethylation BeadChip
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Zhuang Xiong, Mengwei Li, Yingke Ma, Rujiao Li, and Yiming Bao
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DNA methylation ,epigenome-wide association studies ,batch effect ,probe bias ,HumanMethylation BeadChip ,Genetics ,QH426-470 - Abstract
The Illumina HumanMethylation BeadChip is one of the most cost-effective methods to quantify DNA methylation levels at single-base resolution across the human genome, which makes it a routine platform for epigenome-wide association studies. It has accumulated tens of thousands of DNA methylation array samples in public databases, providing great support for data integration and further analysis. However, the majority of public DNA methylation data are deposited as processed data without background probes which are widely used in data normalization. Here, we present Gaussian mixture quantile normalization (GMQN), a reference based method for correcting batch effects as well as probe bias in the HumanMethylation BeadChip. Availability and implementation: https://github.com/MengweiLi-project/gmqn.
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- 2022
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4. MethBank 4.0: an updated database of DNA methylation across a variety of species.
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Mochen Zhang, Wenting Zong, Dong Zou, Guoliang Wang, Wei Zhao, Fei Yang, Song Wu, Xinran Zhang, Xutong Guo, Yingke Ma, Zhuang Xiong, Zhang Zhang 0002, Yiming Bao, and Rujiao Li
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- 2023
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5. scMethBank: a database for single-cell whole genome DNA methylation maps.
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Wenting Zong, Hongen Kang, Zhuang Xiong, Yingke Ma, Tong Jin, Zheng Gong, Lizhi Yi, Mochen Zhang, Song Wu, Guoliang Wang, Yiming Bao, and Rujiao Li
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- 2022
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6. Database Resources of the National Genomics Data Center, China National Center for Bioinformation in 2022.
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Yongbiao Xue, Yiming Bao, Zhang Zhang 0002, Wenming Zhao, Jing-Fa Xiao, Shunmin He, Guoqing Zhang 0006, Yixue Li, Guoping Zhao, Runsheng Chen, Jingyao Zeng, Yadong Zhang, Yunfei Shang, Jialin Mai, Shuo Shi, Mingming Lu, Congfan Bu, Zhewen Zhang, Zhenglin Du, Yinying Wang, Hongen Kang, Tianyi Xu, Lili Hao, Peilin Jia, Shuai Jiang, Qiheng Qian, Tongtong Zhu, Wenting Zong, Tong Jin, Yuansheng Zhang, Dong Zou, Qiang Du, Changrui Feng, Lina Ma, Sisi Zhang, Anke Wang, Lili Dong, Yanqing Wang, Wan Liu, Xing Yan, Yunchao Ling, Zhihua Zhou, Wang Kang, Tao Zhang 0026, Shuai Ma, Haoteng Yan, Zunpeng Liu, Zejun Ji, Yusheng Cai, Si Wang, Moshi Song, Jie Ren, Qi Zhou, Jing Qu, Weiqi Zhang, Guanghui Liu 0005, Xu Chen, Tingting Chen, Yanling Sun, Caixia Yu, Bixia Tang, Junwei Zhu, Shuang Zhai, Yubin Sun, Qiancheng Chen, Xiaoyu Yang, Xin Zhang 0086, Zhengqi Sang, Yonggang Wang, Yilin Zhao, Huanxin Chen, Li Lan, Yingke Ma, Yaokai Jia, Xinchang Zheng, Meili Chen, Ming Chen, Guangyi Niu, Rong Pan, Wei Jing, Jian Sang, Chang Liu, Yujia Xiong, Mochen Zhang, Guoliang Wang, Lizhi Yi, Wei Zhao, Song Wu, Zhuang Xiong, Rujiao Li, Zheng Gong, Lin Liu, Zhao Li 0007, Qianpeng Li, Sicheng Luo, Jiajia Wang, Yirong Shi, Honghong Zhou, Peng Zhang 0047, Tingrui Song, Yanyan Li, Fei Yang, Mengwei Li, Zhaohua Li, Dongmei Tian, Xiaonan Liu, Cuiping Li 0004, Xufei Teng, Shuhui Song, Yang Zhang 0042, Ruru Chen, Rongqin Zhang, Feng Xu, Yifan Wang, Chenfen Zhou, Haizhou Wang, Andrew E. Teschendorff, Yungang He, Zhen Yang, Lun Li, Na Li, Ying Cui, Guangya Duan, Gangao Wu, Tianhao Huang, Enhui Jin, Hailong Kang, Zhonghuang Wang, Hua Chen 0010, Mingkun Li, Wanshan Ning, Yu Xue 0001, Yanhu Liu, Qijun Zhou, Xingyan Liu, Longlong Zhang, Bingyu Mao, Shihua Zhang, Yaping Zhang, Guodong Wang, Qianghui Zhu, Xin Li, Menghua Li, Yuanming Liu, Hong Luo, Xiaoyuan Wu, Haichun Jing, Yitong Pan, Leisheng Shi, Zhixiang Zuo, Jian Ren 0002, Xinxin Zhang, Yun Xiao 0001, Xia Li 0004, Dan Liu, Chi Zhang, Zheng Zhao, Tao Jiang 0050, Wanying Wu, Fangqing Zhao, Xianwen Meng, Di Peng, Hao Luo 0002, Feng Gao 0001, Shaofeng Lin, Chuijie Liu, Anyuan Guo, Hao Yuan, Tianhan Su, Yong E. Zhang, Yincong Zhou, Guoji Guo, Shanshan Fu, Xiaodan Tan, Weizhi Zhang 0002, Mei Luo, Yubin Xie, Chenwei Wang, Xingyu Liao, Xin Gao 0001, Jianxin Wang 0001, Guiyan Xie, Chunhui Yuan, Feng Tian 0005, Dechang Yang, Ge Gao, Dachao Tang, Wenyi Wu, Yujie Gou, Cheng Han, Qinghua Cui, Xiangshang Li, Chuan-Yun Li, and Xiaotong Luo
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- 2022
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7. EWAS Open Platform: integrated data, knowledge and toolkit for epigenome-wide association study.
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Zhuang Xiong, Fei Yang, Mengwei Li, Yingke Ma, Wei Zhao, Guoliang Wang, Zhaohua Li, Xinchang Zheng, Dong Zou, Wenting Zong, Hongen Kang, Yaokai Jia, Rujiao Li, Zhang Zhang 0002, and Yiming Bao
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- 2022
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8. Genome Warehouse: A Public Repository Housing Genome-scale Data.
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Meili Chen, Yingke Ma, Song Wu, Xinchang Zheng, Hongen Kang, Jian Sang, Xingjian Xu, Lili Hao, Zhaohua Li, Zheng Gong, Jing-Fa Xiao, Zhang Zhang 0002, Wenming Zhao, and Yiming Bao
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- 2021
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9. Aging Atlas: a multi-omics database for aging biology.
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Guang-Hui Liu, Yiming Bao, Jing Qu, Weiqi Zhang, Tao Zhang, Wang Kang, Fei Yang, Qianzhao Ji, Xiaoyu Jiang, Yingke Ma, Shuai Ma, Zunpeng Liu, Siyu Chen, Si Wang, Shuhui Sun, Lingling Geng, Kaowen Yan, Pengze Yan, Yanling Fan, Moshi Song, Jie Ren, Qiaoran Wang, Shanshan Yang, Yuanhan Yang, Muzhao Xiong, Chuqiang Liang, Lan-Zhu Li, Tianling Cao, Jianli Hu, Ping Yang, Jiale Ping, Huifang Hu, Yandong Zheng, Guoqiang Sun, Jiaming Li, Lixiao Liu, Zhiran Zou, Yingjie Ding, Mingheng Li, Di Liu, Min Wang, Xiaoyan Sun, Cui Wang, Shijia Bi, Hezhen Shan, and Xiao Zhuo
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- 2021
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10. Database Resources of the National Genomics Data Center, China National Center for Bioinformation in 2021.
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Yongbiao Xue, Yiming Bao, Zhang Zhang 0002, Wenming Zhao, Jing-Fa Xiao, Shunmin He, Guoqing Zhang 0006, Yixue Li, Guoping Zhao, Runsheng Chen, Shuhui Song, Lina Ma, Dong Zou, Dongmei Tian, Cuiping Li 0004, Junwei Zhu, Zheng Gong, Meili Chen, Anke Wang, Yingke Ma, Mengwei Li, Xufei Teng, Ying Cui, Guangya Duan, Mochen Zhang, Tong Jin, Chengmin Shi, Zhenglin Du, Yadong Zhang, Chuandong Liu, Rujiao Li, Jingyao Zeng, Lili Hao, Shuai Jiang, Hua Chen 0010, Dali Han, Tao Zhang 0026, Wang Kang, Fei Yang, Jing Qu, Weiqi Zhang, Guanghui Liu 0005, Lin Liu, Yang Zhang 0042, Guangyi Niu, Tongtong Zhu, Changrui Feng, Xiaonan Liu, Yuansheng Zhang, Zhao Li 0007, Ruru Chen, Qianpeng Li, Zhongyi Hua, Chao Jiang, Ziyuan Chen, Fangshu He, Yuyang Zhao, Yan Jin 0007, Luqi Huang, Yuan Yuan, Chenfen Zhou, Qingwei Xu, Sheng He, Wei Ye, Ruifang Cao, Pengyu Wang, Yunchao Ling, Xing Yan, Qingzhong Wang, Qiang Du, Wenting Zong, Hongen Kang, Zhuang Xiong, Wendi Huan, Sirui Zhang, Qiguang Xia, Xiaojuan Fan, Zefeng Wang, Xu Chen, Tingting Chen, Sisi Zhang, Bixia Tang, Lili Dong, Zhewen Zhang, Zhonghuang Wang, Hailong Kang, Yanqing Wang, Song Wu, Ming Chen, Chang Liu, Yujia Xiong, Xueying Shao, Yanyan Li, Honghong Zhou, Xiaomin Chen, Yu Zheng 0030, Quan Kang, Di Hao, Lili Zhang 0007, Huaxia Luo, Yajing Hao 0001, Peng Zhang 0047, Zhi Nie, Shuhuan Yu, Jian Sang, Zhaohua Li, Xiangquan Zhang, Qing Zhou, Shuang Zhai, Yaping Zhang, Guodong Wang, Qianghui Zhu, Xin Li, Menghua Li, Jun Yan, Chen Li, Zhennan Wang, Xiangfeng Wang, Yuanming Liu, Hong Luo, Xiaoyuan Wu, Hai-Chun Jing, Lianhe Zhao, Jiajia Wang, Tinrui Song, Yi Zhao, Furrukh Mehmood, Shahid Ali, Amjad Ali, Shoaib Saleem, Irfan Hussain, Amir Ali Abbasi, Zhixiang Zuo, Jian Ren 0002, Xinxin Zhang, Yun Xiao 0001, Xia Li 0004, Yiran Tu, Yu Xue 0001, Wanying Wu, Peifeng Ji, Fangqing Zhao, Xianwen Meng, Di Peng, Hao Luo 0002, Feng Gao 0001, Wanshan Ning, Shaofeng Lin, Teng Liu, An-Yuan Guo, Hao Yuan, Yong E. Zhang, Xiaodan Tan, Weizhi Zhang 0002, Yubin Xie, Chenwei Wang, Chun-Jie Liu, De-Chang Yang, Feng Tian 0005, Ge Gao, Dachao Tang, Lan Yao, Qinghua Cui, Ni A. An, Chuan-Yun Li, and Xiaotong Luo
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- 2021
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11. The Global Landscape of SARS-CoV-2 Genomes, Variants, and Haplotypes in 2019nCoVR.
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Shuhui Song, Lina Ma, Dong Zou, Dongmei Tian, Cuiping Li 0004, Junwei Zhu, Meili Chen, Anke Wang, Yingke Ma, Mengwei Li, Xufei Teng, Ying Cui, Guangya Duan, Mochen Zhang, Tong Jin, Chengmin Shi, Zhenglin Du, Yadong Zhang, Chuandong Liu, Rujiao Li, Jingyao Zeng, Lili Hao, Shuai Jiang, Hua Chen 0010, Dali Han, Jing-Fa Xiao, Zhang Zhang 0002, Wenming Zhao, Yongbiao Xue, and Yiming Bao
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- 2020
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12. EWAS Data Hub: a resource of DNA methylation array data and metadata.
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Zhuang Xiong, Mengwei Li, Fei Yang, Yingke Ma, Jian Sang, Rujiao Li, Zhaohua Li, Zhang Zhang 0002, and Yiming Bao
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- 2020
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13. IDP-denovo: de novo transcriptome assembly and isoform annotation by hybrid sequencing.
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Shuhua Fu, Yingke Ma, Hui Yao, Zhichao Xu, Shilin Chen, Jingyuan Song, and Kin Fai Au
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- 2018
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14. MethBank 4.0: an updated database of DNA methylation across a variety of species
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Mochen Zhang, Wenting Zong, Dong Zou, Guoliang Wang, Wei Zhao, Fei Yang, Song Wu, Xinran Zhang, Xutong Guo, Yingke Ma, Zhuang Xiong, Zhang Zhang, Yiming Bao, and Rujiao Li
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Genetics - Abstract
DNA methylation, as the most intensively studied epigenetic mark, regulates gene expression in numerous biological processes including development, aging, and disease. With the rapid accumulation of whole-genome bisulfite sequencing data, integrating, archiving, analyzing, and visualizing those data becomes critical. Since its first publication in 2015, MethBank has been continuously updated to include more DNA methylomes across more diverse species. Here, we present MethBank 4.0 (https://ngdc.cncb.ac.cn/methbank/), which reports an increase of 309% in data volume, with 1449 single-base resolution methylomes of 23 species, covering 236 tissues/cell lines and 15 biological contexts. Value-added information, such as more rigorous quality evaluation, more standardized metadata, and comprehensive downstream annotations have been integrated in the new version. Moreover, expert-curated knowledge modules of featured differentially methylated genes associated with biological contexts and methylation analysis tools have been incorporated as new components of MethBank. In addition, MethBank 4.0 is equipped with a series of new web interfaces to browse, search, and visualize DNA methylation profiles and related information. With all these improvements, we believe the updated MethBank 4.0 will serve as a fundamental resource to provide a wide range of data services for the global research community.
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- 2022
15. scMethBank: a database for single-cell whole genome DNA methylation maps
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Mochen Zhang, Rujiao Li, Wenting Zong, Zheng Gong, Hongen Kang, Guo-Liang Wang, Yiming Bao, Tong Jin, Lizhi Yi, Zhuang Xiong, Yingke Ma, and Song Wu
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AcademicSubjects/SCI00010 ,Cellular differentiation ,Bisulfite sequencing ,Datasets as Topic ,Biology ,computer.software_genre ,Genome ,Epigenesis, Genetic ,Mice ,Databases, Genetic ,Genetics ,Database Issue ,Animals ,Humans ,Epigenetics ,Epigenomics ,Internet ,Metadata ,Whole Genome Sequencing ,Database ,Chromosome Mapping ,Molecular Sequence Annotation ,DNA Methylation ,Visualization ,DNA methylation ,Single-Cell Analysis ,computer ,Software - Abstract
Single-cell bisulfite sequencing methods are widely used to assess epigenomic heterogeneity in cell states. Over the past few years, large amounts of data have been generated and facilitated deeper understanding of the epigenetic regulation of many key biological processes including early embryonic development, cell differentiation and tumor progression. It is an urgent need to build a functional resource platform with the massive amount of data. Here, we present scMethBank, the first open access and comprehensive database dedicated to the collection, integration, analysis and visualization of single-cell DNA methylation data and metadata. Current release of scMethBank includes processed single-cell bisulfite sequencing data and curated metadata of 8328 samples derived from 15 public single-cell datasets, involving two species (human and mouse), 29 cell types and two diseases. In summary, scMethBank aims to assist researchers who are interested in cell heterogeneity to explore and utilize whole genome methylation data at single-cell level by providing browse, search, visualization, download functions and user-friendly online tools. The database is accessible at: https://ngdc.cncb.ac.cn/methbank/scm/.
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- 2021
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16. Genome Warehouse: A Public Repository Housing Genome-scale Data
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Yingke Ma, Wenming Zhao, Hongen Kang, Song Wu, Zhaohua Li, Xingjian Xu, Xinchang Zheng, Jingfa Xiao, Meili Chen, Zhang Zhang, Zheng Gong, Yiming Bao, Jian Sang, and Lili Hao
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China ,Computer science ,Data management ,Sequence assembly ,Genomics ,Biochemistry ,Genome ,World Wide Web ,03 medical and health sciences ,Annotation ,0302 clinical medicine ,Databases, Genetic ,Genetics ,Molecular Biology ,030304 developmental biology ,Whole genome sequencing ,0303 health sciences ,business.industry ,Genome project ,Metadata ,Computational Mathematics ,Housing ,business ,030217 neurology & neurosurgery - Abstract
The Genome Warehouse (GWH) is a public repository housing genome assembly data for a wide range of species and delivering a series of web services for genome data submission, storage, release, and sharing. As one of the core resources in the National Genomics Data Center (NGDC), part of the China National Center for Bioinformation (CNCB, https://ngdc.cncb.ac.cn), GWH accepts both full genome and partial genome (chloroplast, mitochondrion, and plasmid) sequences with different assembly levels, as well as an update of existing genome assemblies. For each assembly, GWH collects detailed genome-related metadata of biological project, biological sample, and genome assembly, in addition to genome sequence and annotation. To archive high-quality genome sequences and annotations, GWH is equipped with a uniform and standardized procedure for quality control. Besides basic browse and search functionalities, all released genome sequences and annotations can be visualized with JBrowse. By May 21, 2021, GWH has received 19,124 direct submissions covering a diversity of 1108 species and has released 8772 of them. Collectively, GWH serves as an important resource for genome-scale data management and provides free and publicly accessible data to support research activities throughout the world. GWH is publicly accessible at https://ngdc.cncb.ac.cn/gwh.
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- 2021
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17. Aging Atlas: a multi-omics database for aging biology
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Jiaming Li, Yingke Ma, Xiaoyu Jiang, Xiao Zhuo, Yanling Fan, Yiming Bao, Lixiao Liu, Yingjie Ding, Moshi Song, Cui Wang, Jiale Ping, Guoqiang Sun, Guang-Hui Liu, Zhiran Zou, Qianzhao Ji, Qiaoran Wang, Lingling Geng, Tao Zhang, Di Liu, Wang Kang, Shanshan Yang, Siyu Chen, Weiqi Zhang, Muzhao Xiong, H.X. Hu, Xiaoyan Sun, Yandong Zheng, Pengze Yan, Shuai Ma, Fei Yang, Tianling Cao, Shijia Bi, Zunpeng Liu, Chuqiang Liang, Yuanhan Yang, Min Wang, Jing Qu, Jie Ren, Jianli Hu, Kaowen Yan, Si Wang, Hezhen Shan, Shuhui Sun, Lan-Zhu Li, Ping Yang, and Mingheng Li
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Epigenomics ,0303 health sciences ,Aging ,Atlas (topology) ,AcademicSubjects/SCI00010 ,Genomics ,RNA-Seq ,Computational biology ,Biology ,Proteomics ,03 medical and health sciences ,0302 clinical medicine ,Pharmacogenetics ,030220 oncology & carcinogenesis ,Pharmacogenomics ,Databases, Genetic ,Genetics ,Multi omics ,Database Issue ,Humans ,Transcriptome ,030304 developmental biology ,Chromatin Immunoprecipitation Sequencing - Abstract
Organismal aging is driven by interconnected molecular changes encompassing internal and extracellular factors. Combinational analysis of high-throughput ‘multi-omics’ datasets (gathering information from genomics, epigenomics, transcriptomics, proteomics, metabolomics and pharmacogenomics), at either populational or single-cell levels, can provide a multi-dimensional, integrated profile of the heterogeneous aging process with unprecedented throughput and detail. These new strategies allow for the exploration of the molecular profile and regulatory status of gene expression during aging, and in turn, facilitate the development of new aging interventions. With a continually growing volume of valuable aging-related data, it is necessary to establish an open and integrated database to support a wide spectrum of aging research. The Aging Atlas database aims to provide a wide range of life science researchers with valuable resources that allow access to a large-scale of gene expression and regulation datasets created by various high-throughput omics technologies. The current implementation includes five modules: transcriptomics (RNA-seq), single-cell transcriptomics (scRNA-seq), epigenomics (ChIP-seq), proteomics (protein–protein interaction), and pharmacogenomics (geroprotective compounds). Aging Atlas provides user-friendly functionalities to explore age-related changes in gene expression, as well as raw data download services. Aging Atlas is freely available at https://bigd.big.ac.cn/aging/index.
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- 2020
18. GMQN: A reference-based method for correcting batch effects as well as probes bias in HumanMethylation BeadChip
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Yingke Ma, Mengwei Li, Zhuang Xiong, Yiming Bao, and Rujiao Li
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Database normalization ,Computer science ,DNA methylation ,Human genome ,Computational biology ,computer.software_genre ,computer ,Quantile normalization ,Data integration - Abstract
Illumina HumanMethylation BeadChip is one of the most cost-effective ways to quantify DNA methylation levels at the single-base level across the human genome, which makes it a routine platform for epigenome-wide association studies. It has accumulated tens of thousands of DNA methylation array samples in public databases, thus provide great support for data integration and further analysis. However, majority of public DNA methylation data are deposited as processed data without background probes which are widely used in data normalization. Here we present Gaussian mixture quantile normalization (GMQN), a reference based method for correcting batch effects as well as probes bias in HumanMethylation BeadChip. Availability and implementation: https://github.com/MengweiLi-project/gmqn.
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- 2021
- Full Text
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19. EWAS Data Hub: a resource of DNA methylation array data and metadata
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Fei Yang, Yingke Ma, Mengwei Li, Zhuang Xiong, Zhaohua Li, Zhang Zhang, Jian Sang, Rujiao Li, and Yiming Bao
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0303 health sciences ,Metadata ,Genome-wide association study ,Epigenome ,Computational biology ,Methylation ,Biology ,DNA Methylation ,Epigenesis, Genetic ,03 medical and health sciences ,0302 clinical medicine ,030220 oncology & carcinogenesis ,DNA methylation ,Databases, Genetic ,Genetics ,Database Issue ,Humans ,Epigenetics ,Data hub ,Clinical treatment ,Biomarkers ,030304 developmental biology ,Genome-Wide Association Study - Abstract
Epigenome-Wide Association Study (EWAS) has become an effective strategy to explore epigenetic basis of complex traits. Over the past decade, a large amount of epigenetic data, especially those sourced from DNA methylation array, has been accumulated as the result of numerous EWAS projects. We present EWAS Data Hub (https://bigd.big.ac.cn/ewas/datahub), a resource for collecting and normalizing DNA methylation array data as well as archiving associated metadata. The current release of EWAS Data Hub integrates a comprehensive collection of DNA methylation array data from 75 344 samples and employs an effective normalization method to remove batch effects among different datasets. Accordingly, taking advantages of both massive high-quality DNA methylation data and standardized metadata, EWAS Data Hub provides reference DNA methylation profiles under different contexts, involving 81 tissues/cell types (that contain 25 brain parts and 25 blood cell types), six ancestry categories, and 67 diseases (including 39 cancers). In summary, EWAS Data Hub bears great promise to aid the retrieval and discovery of methylation-based biomarkers for phenotype characterization, clinical treatment and health care.
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- 2019
20. Genome Warehouse: A Public Repository Housing Genome-scale Data
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Hongen Kang, Meili Chen, Song Wu, Wenming Zhao, Zheng Gong, Yingke Ma, Jingfa Xiao, Zhang Zhang, Jian Sang, Lili Hao, Xinchang Zheng, Yiming Bao, Xingjian Xu, and Zhaohua Li
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Whole genome sequencing ,World Wide Web ,Plasmid ,Computer science ,Sequence assembly ,Genomics ,Mitochondrion ,Genome - Abstract
The Genome Warehouse (GWH) is a public repository housing genome assembly data for a wide range of species and delivering a series of web services for genome data submission, storage, release, and sharing. As one of the core resources in the National Genomics Data Center (NGDC), part of the China National Center for Bioinformation (CNCB, https://bigd.big.ac.cn/), GWH accepts both full genome and partial genome (chloroplast, mitochondrion, and plasmid) sequences with different assembly levels, as well as an update of existing genome assemblies. For each assembly, GWH collects detailed genome-related metadata including biological project and sample, and genome assembly information, in addition to genome sequence and annotation. To archive high-quality genome sequences and annotations, GWH is equipped with a uniform and standardized procedure for quality control. Besides basic browse and search functionalities, all released genome sequences and annotations can be visualized with JBrowse. By December 2020, GWH has received 17,264 direct submissions covering a diversity of 949 species, and has released 3370 of them. Collectively, GWH serves as an important resource for genome-scale data management and provides free and publicly accessible data to support research activities throughout the world. GWH is publicly accessible at https://bigd.big.ac.cn/gwh/.
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- 2021
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21. The Global Landscape of SARS-CoV-2 Genomes, Variants, and Haplotypes in 2019nCoVR
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Xufei Teng, Hua Chen, Meili Chen, Rujiao Li, Shuhui Song, Mochen Zhang, Dong Zou, Wenming Zhao, Zhang Zhang, Jingfa Xiao, Zhenglin Du, Dongmei Tian, Mengwei Li, Cheng-Min Shi, Yingke Ma, Yadong Zhang, Anke Wang, Yongbiao Xue, Dali Han, Lili Hao, Junwei Zhu, Yiming Bao, Tong Jin, Cuiping Li, Shuai Jiang, Lina Ma, Jingyao Zeng, Chuandong Liu, Guangya Duan, and Ying Cui
- Subjects
Coronavirus disease 2019 (COVID-19) ,Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) ,Population ,Computational biology ,Genome, Viral ,Biology ,Genome ,Biochemistry ,Database ,03 medical and health sciences ,0302 clinical medicine ,Haplotype ,Genetics ,Humans ,education ,Molecular Biology ,030304 developmental biology ,Sequence (medicine) ,Genomic variation ,0303 health sciences ,education.field_of_study ,SARS-CoV-2 ,COVID-19 ,2019nCoVR ,Genomics ,Data sharing ,Computational Mathematics ,Haplotypes ,Quality Score ,030217 neurology & neurosurgery - Abstract
On January 22, 2020, China National Center for Bioinformation (CNCB) released the 2019 Novel Coronavirus Resource (2019nCoVR), an open-access information resource for the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2). 2019nCoVR features a comprehensive integration of sequence and clinical information for all publicly available SARS-CoV-2 isolates, which are manually curated with value-added annotations and quality evaluated by an automated in-house pipeline. Of particular note, 2019nCoVR offers systematic analyses to generate a dynamic landscape of SARS-CoV-2 genomic variations at a global scale. It provides all identified variants and their detailed statistics for each virus isolate, and congregates the quality score, functional annotation, and population frequency for each variant. Spatiotemporal change for each variant can be visualized and historical viral haplotype network maps for the course of the outbreak are also generated based on all complete and high-quality genomes available. Moreover, 2019nCoVR provides a full collection of SARS-CoV-2 relevant literature on the coronavirus disease 2019 (COVID-19), including published papers from PubMed as well as preprints from services such as bioRxiv and medRxiv through Europe PMC. Furthermore, by linking with relevant databases in CNCB, 2019nCoVR offers data submission services for raw sequence reads and assembled genomes, and data sharing with NCBI. Collectively, SARS-CoV-2 is updated daily to collect the latest information on genome sequences, variants, haplotypes, and literature for a timely reflection, making 2019nCoVR a valuable resource for the global research community. 2019nCoVR is accessible at https://bigd.big.ac.cn/ncov/.
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- 2020
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22. The global landscape of SARS-CoV-2 genomes, variants, and haplotypes in 2019nCoVR
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Mengwei Li, Shuai Jiang, Lina Ma, Dali Han, Yadong Zhang, Anke Wang, Yingke Ma, Guangya Duan, Ying Cui, Tong Jin, Junwei Zhu, Zhenglin Du, Cheng-Min Shi, Lili Hao, Yiming Bao, Cuiping Li, Hua Chen, Wenming Zhao, Jingfa Xiao, Dongmei Tian, Jingyao Zeng, Shuhui Song, Mochen Zhang, Xufei Teng, Zhang Zhang, Rujiao Li, Chuandong Liu, Yongbiao Xue, Dong Zou, and Meili Chen
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education.field_of_study ,Resource (project management) ,Computer science ,Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) ,Population ,Haplotype ,Genomics ,Computational biology ,education ,Genome - Abstract
On 22 January 2020, the National Genomics Data Center (NGDC), part of the China National Center for Bioinformation (CNCB), created the 2019 Novel Coronavirus Resource (2019nCoVR), an open-access SARS-CoV-2 information resource. 2019nCoVR features a comprehensive integration of sequence and clinical information for all publicly available SARS-CoV-2 isolates, which are manually curated with value-added annotations and quality evaluated by our in-house automated pipeline. Of particular note, 2019nCoVR performs systematic analyses to generate a dynamic landscape of SARS-CoV-2 genomic variations at a global scale. It provides all identified variants and detailed statistics for each virus isolate, and congregates the quality score, functional annotation, and population frequency for each variant. It also generates visualization of the spatiotemporal change for each variant and yields historical viral haplotype network maps for the course of the outbreak from all complete and high-quality genomes. Moreover, 2019nCoVR provides a full collection of SARS-CoV-2 relevant literature on COVID-19 (Coronavirus Disease 2019), including published papers from PubMed as well as preprints from services such as bioRxiv and medRxiv through Europe PMC. Furthermore, by linking with relevant databases in CNCB-NGDC, 2019nCoVR offers data submission services for raw sequence reads and assembled genomes, and data sharing with National Center for Biotechnology Information. Collectively, all SARS-CoV-2 genome sequences, variants, haplotypes and literature are updated daily to provide timely information, making 2019nCoVR a valuable resource for the global research community. 2019nCoVR is accessible at https://bigd.big.ac.cn/ncov/.
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- 2020
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23. Database Resources of the BIG Data Center in 2019
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Qiong Zhang, Yuansheng Zhang, Ming Chen, Wankun Deng, Huanxin Chen, Yingke Ma, Man Li, Fan Wang, Qinghua Cui, Rujiao Li, Bixia Tang, Junwei Zhu, Shuhui Song, Hao Luo, Wanshan Ning, Qi Wang, Qing Zhou, Zhennan Wang, Yanqing Wang, W. F. Li, Shuo Shi, Ya-Ru Miao, Chuan-Yun Li, Yang Zhang, Jin Jinpu, Hao Zhang, Wenming Zhao, Qiheng Qian, Zhonghuang Wang, Guangyi Niu, Yaping Guo, Yiming Bao, Lina Ma, Ge Gao, Dongmei Tian, Xu Chen, Xiangquan Zhang, Lin Xia, An-Yuan Guo, Tongkun Guo, Feng Gao, Tao Zhang, Jiabao Cao, Li Lan, Di Peng, Chenwei Wang, Ya-Ping Zhang, Mingyuan Sun, Amir Ali Abbasi, Meili Chen, Mengyu Pan, Qing Tang, Jiaqi Zhou, Shuang Zhai, Yubin Sun, Zhang Zhang, Jinyue Wang, Shaofeng Lin, Jian Sang, Ying Zhang, Fang Liang, Xufei Teng, Lin Liu, Lili Hao, Yu Xue, Zhao Li, Yumei Li, Qianwen Gao, Zhou Huang, Pei Wang, Hui Hu, Zhaohua Li, Lei Yu, Cuiping Li, Haodong Xu, Mengwei Li, Yadong Zhang, Meiye Jiang, Na Yuan, Chen Ruan, Lili Dong, Sisi Zhang, Zhewen Zhang, Zhenglin Du, Dong Zou, Ran Gao, Chunhui Yuan, Yongbiao Xue, Jingyao Zeng, Tingting Chen, Zhuang Xiong, Guo-Dong Wang, Jingfa Xiao, and Huma Shireen
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Big Data ,Information commons ,Big data ,Genomics ,Web Browser ,Information repository ,Biology ,computer.software_genre ,Genome ,03 medical and health sciences ,0302 clinical medicine ,Resource (project management) ,Data Warehousing ,Databases, Genetic ,Genetics ,Animals ,Humans ,Database Issue ,Center (algebra and category theory) ,030304 developmental biology ,0303 health sciences ,Database ,business.industry ,Suite ,Plants ,business ,computer ,030217 neurology & neurosurgery - Abstract
The BIG Data Center at Beijing Institute of Genomics (BIG) of the Chinese Academy of Sciences provides a suite of database resources in support of worldwide research activities in both academia and industry. With the vast amounts of multi-omics data generated at unprecedented scales and rates, the BIG Data Center is continually expanding, updating and enriching its core database resources through big data integration and value-added curation. Resources with significant updates in the past year include BioProject (a biological project library), BioSample (a biological sample library), Genome Sequence Archive (GSA, a data repository for archiving raw sequence reads), Genome Warehouse (GWH, a centralized resource housing genome-scale data), Genome Variation Map (GVM, a public repository of genome variations), Science Wikis (a catalog of biological knowledge wikis for community annotations) and IC4R (Information Commons for Rice). Newly released resources include EWAS Atlas (a knowledgebase of epigenome-wide association studies), iDog (an integrated omics data resource for dog) and RNA editing resources (for editome-disease associations and plant RNA editosome, respectively). To promote biodiversity and health big data sharing around the world, the Open Biodiversity and Health Big Data (BHBD) initiative is introduced. All of these resources are publicly accessible at http://bigd.big.ac.cn.
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- 2018
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24. Single-cell transcriptome analysis reveals widespread monoallelic gene expression in individual rice mesophyll cells
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Xiu-Jie Wang, Yingke Ma, Wenfeng Qian, Xiao Chu, Yuling Jiao, Haopeng Yu, and Yingying Han
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0301 basic medicine ,Genetics ,Multidisciplinary ,Biology ,Transcriptome ,03 medical and health sciences ,030104 developmental biology ,Inbred strain ,Transcription (biology) ,Gene expression ,H3K4me3 ,Ploidy ,Allele ,Gene - Abstract
Monoallelic gene expression refers to the phenomenon that all transcripts of a gene in a cell are expressed from only one of the two alleles in a diploid organism. Although monoallelic gene expression has been occasionally reported with bulk transcriptome analysis in plants, how prevalent it is in individual plant cells remains unknown. Here, we developed a single-cell RNA-seq protocol in rice and investigated allelic expression patterns in mesophyll cells of indica (93-11) and japonica (Nipponbare) inbred lines, as well as their F1 reciprocal hybrids. We observed pervasive monoallelic gene expression in individual mesophyll cells, which could be largely explained by stochastic and independent transcription of two alleles. By contrast, two mechanisms that were proposed previously based on bulk transcriptome analyses, parent-of-origin effects and allelic repression, were not well supported by our data. Furthermore, monoallelically expressed genes exhibited a number of characteristics, such as lower expression levels, narrower H3K4me3/H3K9ac/H3K27me3 peaks, and larger expression divergences between 93-11 and Nipponbare. Taken together, the development of a single-cell RNA-seq protocol in this study offers us an excellent opportunity to investigate the origins and prevalence of monoallelic gene expression in plant cells.
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- 2017
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25. Database Resources of the National Genomics Data Center in 2020
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Mengwei Li, Yu Zheng, Na Yuan, Yan Lu, Yaping Guo, Amir Ali Abbasi, Yiheng Teng, Jin-Pu Jin, Li Lan, Hui Li, Mengyu Pan, Xiangfeng Wang, Ge Gao, Xia Li, Junwen Zhu, Runsheng Chen, Zhang Zhang, Jinyue Wang, Guoping Zhao, Shaofeng Lin, Jian Sang, Ruifang Cao, Jiaqi Zhou, Yu Xue, Hao Zhang, Hongwei Guo, Yunchao Ling, Shuang Zhai, Lili Zhang, Yixue Li, Partners, Jingfa Xiao, Ming Chen, Hao Luo, An-Yuan Guo, Qing Zhou, Bixia Tang, Di Peng, Yiwei Niu, Sisi Zhang, Zhewen Zhang, Junwei Zhu, Mingyuan Sun, Wanshan Ning, Xu Chen, Chao Zhang, Meiye Jiang, Meili Chen, Nashaiman Pervaiz, Lili Hao, Zhou Huang, Xin Li, Huma Shireen, Lei Yu, Xiaonan Liu, Cuiping Li, Hui Hu, Guoliang Wang, Dong Zou, Xin Zhang, Yongbiao Xue, Xiyuan Li, Jingyao Zeng, Fatima Batool, Yang Zhang, Hailong Kang, Feng Tian, Peifeng Ji, Xueyi Teng, Liang Sun, Qianghui Zhu, Guoqing Zhang, Zhonghuang Wang, Wenming Zhao, Wan Liu, Fangqing Zhao, Shuhui Song, Jiabao Cao, Chunhui Yuan, Zheng Gong, Huanxin Chen, Yiming Bao, Feng Gao, Liyun Yuan, Shunmin He, Dongmei Tian, Qiheng Qian, Pei Wang, Yun Xiao, Zhaohua Li, Xinli Xia, Lin Liu, Lan Yao, Yingke Ma, Xianhui Sun, Quan Kang, Hua Xue, Qiang Du, Yiran Tu, Yadong Zhang, Rujiao Li, Menghua Li, Tingting Chen, Zhilin Ning, Qiong Zhang, Shuangsang Fang, Lianhe Zhao, Shuo Shi, Tongtong Zhu, Chuan-Yun Li, Qing Tang, Xiaoyang Zhi, Xiaomin Chen, Jun Yan, Hongen Kang, Yajing Hao, Xufei Teng, Chenwei Wang, Yi Zhang, Jiajia Wang, Qianpeng Li, Wanying Wu, Yuansheng Zhang, Cui Ying, Yanyan Li, Lina Ma, Fei Yang, Zhuang Xiong, Rabail Zehra Raza, Yong E Zhang, Yang Gao, Chen Li, Hans-Peter Klenk, Ying Shi, Zhennan Wang, Lili Dong, Zhenglin Du, Mingming Lu, Shuhua Xu, Yang Wu, Song Wu, Houling Wang, Yi Zhao, Yubin Sun, Qinghua Cui, Chen Ruan, Yunfei Shang, Guangyi Niu, Xiangshang Li, Xinxin Zhang, Qianwen Gao, Jincheng Guo, Qi Wang, Peng Zhang, Zhonghai Li, Yanqing Wang, Zhao Jiang, Hao Yuan, Zhao Li, Daqing Lv, Haokui Zhou, Ya-Ru Miao, and Guangya Duan
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Big data ,Genomics ,Cloud computing ,Web Browser ,Biology ,computer.software_genre ,03 medical and health sciences ,0302 clinical medicine ,Data Warehousing ,Databases, Genetic ,Genetics ,Database Issue ,Humans ,Data hub ,030304 developmental biology ,0303 health sciences ,Database ,Genome, Human ,business.industry ,Suite ,Computational Biology ,Academia (organization) ,Data center ,Web service ,business ,computer ,030217 neurology & neurosurgery ,Genome-Wide Association Study - Abstract
The National Genomics Data Center (NGDC) provides a suite of database resources to support worldwide research activities in both academia and industry. With the rapid advancements in higher-throughput and lower-cost sequencing technologies and accordingly the huge volume of multi-omics data generated at exponential scales and rates, NGDC is continually expanding, updating and enriching its core database resources through big data integration and value-added curation. In the past year, efforts for update have been mainly devoted to BioProject, BioSample, GSA, GWH, GVM, NONCODE, LncBook, EWAS Atlas and IC4R. Newly released resources include three human genome databases (PGG.SNV, PGG.Han and CGVD), eLMSG, EWAS Data Hub, GWAS Atlas, iSheep and PADS Arsenal. In addition, four web services, namely, eGPS Cloud, BIG Search, BIG Submission and BIG SSO, have been significantly improved and enhanced. All of these resources along with their services are publicly accessible at https://bigd.big.ac.cn.
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- 2019
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26. IDP-denovo: de novo transcriptome assembly and isoform annotation by hybrid sequencing
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Shilin Chen, Shuhua Fu, Kin Fai Au, Jingyuan Song, Hui Yao, Yingke Ma, and Zhichao Xu
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0301 basic medicine ,Statistics and Probability ,De novo transcriptome assembly ,Sequence assembly ,Computational biology ,Biology ,Biochemistry ,Genome ,Transcriptome ,03 medical and health sciences ,Annotation ,0302 clinical medicine ,Humans ,Molecular Biology ,Gene ,Gene Library ,Sequence Analysis, RNA ,Gene Expression Profiling ,High-Throughput Nucleotide Sequencing ,Genome Analysis ,Original Papers ,Computer Science Applications ,Computational Mathematics ,Alternative Splicing ,030104 developmental biology ,Computational Theory and Mathematics ,Nanopore sequencing ,Dendrobium ,030217 neurology & neurosurgery ,Reference genome - Abstract
Motivation In the past years, the long read (LR) sequencing technologies, such as Pacific Biosciences and Oxford Nanopore Technologies, have been demonstrated to substantially improve the quality of genome assembly and transcriptome characterization. Compared to the high cost of genome assembly by LR sequencing, it is more affordable to generate LRs for transcriptome characterization. That is, when informative transcriptome LR data are available without a high-quality genome, a method for de novo transcriptome assembly and annotation is of high demand. Results Without a reference genome, IDP-denovo performs de novo transcriptome assembly, isoform annotation and quantification by integrating the strengths of LRs and short reads. Using the GM12878 human data as a gold standard, we demonstrated that IDP-denovo had superior sensitivity of transcript assembly and high accuracy of isoform annotation. In addition, IDP-denovo outputs two abundance indices to provide a comprehensive expression profile of genes/isoforms. IDP-denovo represents a robust approach for transcriptome assembly, isoform annotation and quantification for non-model organism studies. Applying IDP-denovo to a non-model organism, Dendrobium officinale, we discovered a number of novel genes and novel isoforms that were not reported by the existing annotation library. These results reveal the high diversity of gene isoforms in D.officinale, which was not reported in the existing annotation library. Availability and implementation The dataset of Dendrobium officinale used/analyzed during the current study has been deposited in SRA, with accession code SRP094520. IDP-denovo is available for download at www.healthcare.uiowa.edu/labs/au/IDP-denovo/. Supplementary information Supplementary data are available at Bioinformatics online.
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- 2017
27. PsRobot: a web-based plant small RNA meta-analysis toolbox
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Yingke Ma, Xiu-Jie Wang, Hua-Jun Wu, Tong Chen, and Meng Wang
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Genetics ,Regulation of gene expression ,Internet ,Small RNA ,Sequence Analysis, RNA ,MRNA cleavage ,Articles ,Gene Mutant ,Biology ,MicroRNAs ,RNA, Plant ,microRNA ,RNA Precursors ,RNA, Small Untranslated ,RNA, Messenger ,Candidate Disease Gene ,Gene ,Algorithms ,Software ,Biogenesis - Abstract
Small RNAs (smRNAs) in plants, mainly microRNAs and small interfering RNAs, play important roles in both transcriptional and post-transcriptional gene regulation. The broad application of high-throughput sequencing technology has made routinely generation of bulk smRNA sequences in laboratories possible, thus has significantly increased the need for batch analysis tools. PsRobot is a web-based easy-to-use tool dedicated to the identification of smRNAs with stem-loop shaped precursors (such as microRNAs and short hairpin RNAs) and their target genes/transcripts. It performs fast analysis to identify smRNAs with stem-loop shaped precursors among batch input data and predicts their targets using a modified Smith–Waterman algorithm. PsRobot integrates the expression data of smRNAs in major plant smRNA biogenesis gene mutants and smRNA-associated protein complexes to give clues to the smRNA generation and functional processes. Besides improved specificity, the reliability of smRNA target prediction results can also be evaluated by mRNA cleavage (degradome) data. The cross species conservation statuses and the multiplicity of smRNA target sites are also provided. PsRobot is freely accessible at http://omicslab.genetics.ac.cn/psRobot/.
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- 2012
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28. ISRNA: an integrative online toolkit for short reads from high-throughput sequencing data
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Yingke Ma, Xiu-Jie Wang, Wei Yang, and Guan-Zheng Luo
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Statistics and Probability ,Small RNA ,Java ,Genomics ,Computational biology ,Genome browser ,Biology ,Biochemistry ,Nucleotide composition ,DNA sequencing ,World Wide Web ,Molecular Biology ,computer.programming_language ,Internet ,Sequence Analysis, RNA ,Chromosome Mapping ,High-Throughput Nucleotide Sequencing ,Computer Science Applications ,Computational Mathematics ,MicroRNAs ,Computational Theory and Mathematics ,RNA, Small Untranslated ,Length distribution ,Perl ,computer ,Software - Abstract
Summary: Integrative Short Reads NAvigator (ISRNA) is an online toolkit for analyzing high-throughput small RNA sequencing data. Besides the high-speed genome mapping function, ISRNA provides statistics for genomic location, length distribution and nucleotide composition bias analysis of sequence reads. Number of reads mapped to known microRNAs and other classes of short non-coding RNAs, coverage of short reads on genes, expression abundance of sequence reads as well as some other analysis functions are also supported. The versatile search functions enable users to select sequence reads according to their sub-sequences, expression abundance, genomic location, relationship to genes, etc. A specialized genome browser is integrated to visualize the genomic distribution of short reads. ISRNA also supports management and comparison among multiple datasets. Availability: ISRNA is implemented in Java/C++/Perl/MySQL and can be freely accessed at http://omicslab.genetics.ac.cn/ISRNA/. Contact: xjwang@genetics.ac.cn Supplementary information: Supplementary data are available at Bioinformatics online.
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- 2013
29. Autoinducer-2 promotes adherence of Aeromonas veronii through facilitating the expression of MSHA type IV pili genes mediated by c-di-GMP.
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Yi Li, Shuo Han, Yuqi Wang, Mengyuan Qin, Chengjin Lu, Yingke Ma, Wenqing Yang, Jiajia Liu, Xiaohua Xia, and Hailei Wang
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AEROMONAS , *GUANOSINE triphosphate , *GENES , *ZOONOSES , *GASTROINTESTINAL diseases , *BACTERIAL adhesion - Abstract
Aeromonas veronii. a ubiquitous of zoonotic disease pathogen, depends on adhesion as the crucial way to colonize the gastrointestinal tract of humans and animals, which further causes severe gastrointestinal diseases and parenteral infections. However, the adherence mechanism of A. veronii has not been fully characterized. Therefore, we investigate the effect of autoinducer-2 (AI-2) on adherence of A. veronii through facilitating the expression of mannose-sensitive hemagglutinin (MSHA) type IV pili genes mediated by cyclic diguanosine monophosphate (c-di-GMP). The deficiency of AI-2 significantly lowered the adherence of A. veronii to erythrocytes and intestinal mucus, and the complement of AI-2 could increase its adherence ability. The deficiency of AI-2 only limited the formation of pili, instead of outer-membrane proteins and lipopolysaccharide, through reducing the expression levels of MSHA type IV pili genes due to the decline of c-di-GMP. The addition of guanosine triphosphate (GTP) could increase the content of c-di-GMP and the expression of MSHA type IV pili genes, and further promote adherence of A. veronii. Therefore, this study reveals, for the first time, adherence mediated by c-di-GMP with MshE as the c-di-GMP receptor is positively regulated by AI-2 in A. veronii, which increases the understanding of colonization strategy of pathogen and may facilitate control of A. veronii infection to host. IMPORTANCE Aeromonas veronii can adhere to host cells through different adherence factors including outer-membrane proteins (OMPs), lipopolysaccharide (LPS), and pili, but its adherence mechanisms are still unclear. Here, we evaluated the effect of autoinducer-2 (AI-2) on adherence of A. veronii and its regulation mechanism. After determination of the promotion effect of AI-2 on adherence, we investigated which adherence factor was regulated by AI-2, and the results show that AI-2 only limits the formation of pili. Among the four distinct pili systems, only the mannose-sensitive hemagglutinin (MSHA) type IV pili genes were significantly downregulated after deficiency of AI-2. MshE, an ATPase belonged to MSHA type IV pilin, was confirmed as c-di-GMP receptor, that can bind with c-di-GMP which is positively regulated by AI-2, and the increase of c-di-GMP can promote the expression of MSHA type IV pili genes and adherence of A. veronii. Therefore, this study confirms that c-di-GMP positively regulated by AI-2 binds with MshE, then increases the expression of MSHA pili genes, finally promoting adherence of A. veronii, suggesting a multilevel positive regulatory adhesion mechanism that is responsible for A. veronii adherence. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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