Mao
Pfizer
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Publication
Featured researches published by Mao.
Nature | 2002
Laura J. van 't Veer; Hongyue Dai; Marc J. van de Vijver; Yudong D. He; Augustinus A. M. Hart; Mao Mao; Hans Peterse; Karin van der Kooy; Matthew J. Marton; Anke Witteveen; George J. Schreiber; Ron M. Kerkhoven; Christopher J. Roberts; Peter S. Linsley; René Bernards; Stephen H. Friend
Breast cancer patients with the same stage of disease can have markedly different treatment responses and overall outcome. The strongest predictors for metastases (for example, lymph node status and histological grade) fail to classify accurately breast tumours according to their clinical behaviour. Chemotherapy or hormonal therapy reduces the risk of distant metastases by approximately one-third; however, 70–80% of patients receiving this treatment would have survived without it. None of the signatures of breast cancer gene expression reported to date allow for patient-tailored therapy strategies. Here we used DNA microarray analysis on primary breast tumours of 117 young patients, and applied supervised classification to identify a gene expression signature strongly predictive of a short interval to distant metastases (‘poor prognosis’ signature) in patients without tumour cells in local lymph nodes at diagnosis (lymph node negative). In addition, we established a signature that identifies tumours of BRCA1 carriers. The poor prognosis signature consists of genes regulating cell cycle, invasion, metastasis and angiogenesis. This gene expression profile will outperform all currently used clinical parameters in predicting disease outcome. Our findings provide a strategy to select patients who would benefit from adjuvant therapy.
Nature Biotechnology | 2003
Aimee L. Jackson; Steven R. Bartz; Janell M. Schelter; Sumire V. Kobayashi; Julja Burchard; Mao Mao; Bin Li; Guy Cavet; Peter S. Linsley
RNA interference is thought to require near-identity between the small interfering RNA (siRNA) and its cognate mRNA. Here, we used gene expression profiling to characterize the specificity of gene silencing by siRNAs in cultured human cells. Transcript profiles revealed siRNA-specific rather than target-specific signatures, including direct silencing of nontargeted genes containing as few as eleven contiguous nucleotides of identity to the siRNA. These results demonstrate that siRNAs may cross-react with targets of limited sequence similarity.
Nature | 2003
Eric E. Schadt; Stephanie A. Monks; Thomas A. Drake; Aldons J. Lusis; Nam Che; Veronica Colinayo; Thomas G. Ruff; Stephen B. Milligan; John Lamb; Guy Cavet; Peter S. Linsley; Mao Mao; Roland Stoughton; Stephen H. Friend
Treating messenger RNA transcript abundances as quantitative traits and mapping gene expression quantitative trait loci for these traits has been pursued in gene-specific ways. Transcript abundances often serve as a surrogate for classical quantitative traits in that the levels of expression are significantly correlated with the classical traits across members of a segregating population. The correlation structure between transcript abundances and classical traits has been used to identify susceptibility loci for complex diseases such as diabetes and allergic asthma. One study recently completed the first comprehensive dissection of transcriptional regulation in budding yeast, giving a detailed glimpse of a genome-wide survey of the genetics of gene expression. Unlike classical quantitative traits, which often represent gross clinical measurements that may be far removed from the biological processes giving rise to them, the genetic linkages associated with transcript abundance affords a closer look at cellular biochemical processes. Here we describe comprehensive genetic screens of mouse, plant and human transcriptomes by considering gene expression values as quantitative traits. We identify a gene expression pattern strongly associated with obesity in a murine cross, and observe two distinct obesity subtypes. Furthermore, we find that these obesity subtypes are under the control of different loci.
Nature Biotechnology | 2001
Timothy Hughes; Mao Mao; Allan R. Jones; Julja Burchard; Matthew J. Marton; Karen W. Shannon; Steven M. Lefkowitz; Michael Ziman; Janell M. Schelter; Michael R. Meyer; Sumire V. Kobayashi; Colleen P. Davis; Hongyue Dai; Yudong D. He; Guy Cavet; Wynn L. Walker; Anne E. West; Ernest M. Coffey; Daniel D. Shoemaker; Roland Stoughton; Alan P. Blanchard; Stephen H. Friend; Peter S. Linsley
We describe a flexible system for gene expression profiling using arrays of tens of thousands of oligonucleotides synthesized in situ by an ink-jet printing method employing standard phosphoramidite chemistry. We have characterized the dependence of hybridization specificity and sensitivity on parameters including oligonucleotide length, hybridization stringency, sequence identity, sample abundance, and sample preparation method. We find that 60-mer oligonucleotides reliably detect transcript ratios at one copy per cell in complex biological samples, and that ink-jet arrays are compatible with several different sample amplification and labeling techniques. Furthermore, results using only a single carefully selected oligonucleotide per gene correlate closely with those obtained using complementary DNA (cDNA) arrays. Most of the genes for which measurements differ are members of gene families that can only be distinguished by oligonucleotides. Because different oligonucleotide sequences can be specified for each array, we anticipate that ink-jet oligonucleotide array technology will be useful in a wide variety of DNA microarray applications.
Molecular & Cellular Proteomics | 2004
Qiang Tian; Serguei B. Stepaniants; Mao Mao; Lee Weng; Megan C. Feetham; Michelle J. Doyle; Eugene C. Yi; Hongyue Dai; Vesteinn Thorsson; Jimmy K. Eng; David R. Goodlett; Joel P. Berger; Bert Gunter; Peter S. Linseley; Roland Stoughton; Ruedi Aebersold; Steven J. Collins; William A. Hanlon; Leroy Hood
Using DNA microarrays together with quantitative proteomic techniques (ICAT reagents, two-dimensional DIGE, and MS), we evaluated the correlation of mRNA and protein levels in two hematopoietic cell lines representing distinct stages of myeloid differentiation, as well as in the livers of mice treated for different periods of time with three different peroxisome proliferative activated receptor agonists. We observe that the differential expression of mRNA (up or down) can capture at most 40% of the variation of protein expression. Although the overall pattern of protein expression is similar to that of mRNA expression, the incongruent expression between mRNAs and proteins emphasize the importance of posttranscriptional regulatory mechanisms in cellular development or perturbation that can be unveiled only through integrated analyses of both proteins and mRNAs.
Nature | 2001
Daniel D. Shoemaker; Eric E. Schadt; Christopher D. Armour; Yudong He; Philip W. Garrett-engele; P. D. McDonagh; Patrick M. Loerch; Amy Leonardson; Pek Yee Lum; Guy Cavet; Lani F. Wu; Steven J. Altschuler; Seve Edwards; J. King; John S. Tsang; G. Schimmack; J. M. Schelter; J. Koch; M. Ziman; Matthew J. Marton; B. Li; P. Cundiff; T. Ward; John Castle; M. Krolewski; Michael R. Meyer; Mao Mao; Julja Burchard; M. J. Kidd; Hongyue Dai
The most important product of the sequencing of a genome is a complete, accurate catalogue of genes and their products, primarily messenger RNA transcripts and their cognate proteins. Such a catalogue cannot be constructed by computational annotation alone; it requires experimental validation on a genome scale. Using ‘exon’ and ‘tiling’ arrays fabricated by ink-jet oligonucleotide synthesis, we devised an experimental approach to validate and refine computational gene predictions and define full-length transcripts on the basis of co-regulated expression of their exons. These methods can provide more accurate gene numbers and allow the detection of mRNA splice variants and identification of the tissue- and disease-specific conditions under which genes are expressed. We apply our technique to chromosome 22q under 69 experimental condition pairs, and to the entire human genome under two experimental conditions. We discuss implications for more comprehensive, consistent and reliable genome annotation, more efficient, full-length complementary DNA cloning strategies and application to complex diseases.
Nature Genetics | 2011
Kai Wang; Junsuo Kan; Siu Tsan Yuen; Stephanie Shi; Kent Man Chu; Simon Law; Tsun Leung Chan; Zhengyan Kan; Annie S.Y. Chan; Wai Yin Tsui; Siu Po Lee; Siu Lun Ho; Anthony K W Chan; Grace H W Cheng; Peter Roberts; Paul A. Rejto; Neil W. Gibson; David Pocalyko; Mao Mao; Jiangchun Xu; Suet Yi Leung
Gastric cancer is a heterogeneous disease with multiple environmental etiologies and alternative pathways of carcinogenesis. Beyond mutations in TP53, alterations in other genes or pathways account for only small subsets of the disease. We performed exome sequencing of 22 gastric cancer samples and identified previously unreported mutated genes and pathway alterations; in particular, we found genes involved in chromatin modification to be commonly mutated. A downstream validation study confirmed frequent inactivating mutations or protein deficiency of ARID1A, which encodes a member of the SWI-SNF chromatin remodeling family, in 83% of gastric cancers with microsatellite instability (MSI), 73% of those with Epstein-Barr virus (EBV) infection and 11% of those that were not infected with EBV and microsatellite stable (MSS). The mutation spectrum for ARID1A differs between molecular subtypes of gastric cancer, and mutation prevalence is negatively associated with mutations in TP53. Clinically, ARID1A alterations were associated with better prognosis in a stage-independent manner. These results reveal the genomic landscape, and highlight the importance of chromatin remodeling, in the molecular taxonomy of gastric cancer.
Nature Genetics | 2014
Kai Wang; Siu Tsan Yuen; Jiangchun Xu; Siu Po Lee; Helen H.N. Yan; Stephanie Shi; Hoi Cheong Siu; Shibing Deng; Kent Man Chu; Simon Law; Kok Hoe Chan; Annie S.Y. Chan; Wai Yin Tsui; Siu Lun Ho; Anthony K W Chan; Jonathan L K Man; Valentina Foglizzo; Man Kin Ng; April Sheila Chan; Yick-Pang Ching; Grace H W Cheng; Tao Xie; Julio Fernandez; Vivian Li; Hans Clevers; Paul A. Rejto; Mao Mao; Suet Yi Leung
Gastric cancer is a heterogeneous disease with diverse molecular and histological subtypes. We performed whole-genome sequencing in 100 tumor-normal pairs, along with DNA copy number, gene expression and methylation profiling, for integrative genomic analysis. We found subtype-specific genetic and epigenetic perturbations and unique mutational signatures. We identified previously known (TP53, ARID1A and CDH1) and new (MUC6, CTNNA2, GLI3, RNF43 and others) significantly mutated driver genes. Specifically, we found RHOA mutations in 14.3% of diffuse-type tumors but not in intestinal-type tumors (P < 0.001). The mutations clustered in recurrent hotspots affecting functional domains and caused defective RHOA signaling, promoting escape from anoikis in organoid cultures. The top perturbed pathways in gastric cancer included adherens junction and focal adhesion, in which RHOA and other mutated genes we identified participate as key players. These findings illustrate a multidimensional and comprehensive genomic landscape that highlights the molecular complexity of gastric cancer and provides a road map to facilitate genome-guided personalized therapy.
Nature Genetics | 2012
Wing-Kin Sung; Hancheng Zheng; Shuyu Li; Ronghua Chen; Xiao Liu; Yingrui Li; Nikki P. Lee; Wah H Lee; Pramila Ariyaratne; Fabianus Hendriyan Mulawadi; Kwong F. Wong; Angela M. Liu; Ronnie Tung-Ping Poon; Sheung Tat Fan; Kwong Leung Chan; Zhuolin Gong; Yujie Hu; Zhao Lin; Guan Wang; Qinghui Zhang; Thomas D. Barber; Wen-Chi Chou; Amit Aggarwal; Ke Hao; Wei Zhou; Chunsheng Zhang; James C. Hardwick; Carolyn A. Buser; Jiangchun Xu; Zhengyan Kan
To survey hepatitis B virus (HBV) integration in liver cancer genomes, we conducted massively parallel sequencing of 81 HBV-positive and 7 HBV-negative hepatocellular carcinomas (HCCs) and adjacent normal tissues. We found that HBV integration is observed more frequently in the tumors (86.4%) than in adjacent liver tissues (30.7%). Copy-number variations (CNVs) were significantly increased at HBV breakpoint locations where chromosomal instability was likely induced. Approximately 40% of HBV breakpoints within the HBV genome were located within a 1,800-bp region where the viral enhancer, X gene and core gene are located. We also identified recurrent HBV integration events (in ≥4 HCCs) that were validated by RNA sequencing (RNA-seq) and Sanger sequencing at the known and putative cancer-related TERT, MLL4 and CCNE1 genes, which showed upregulated gene expression in tumor versus normal tissue. We also report evidence that suggests that the number of HBV integrations is associated with patient survival.
Cell | 2012
Yong Hou; Luting Song; Ping Zhu; Bo Zhang; Ye Tao; Xun Xu; Fuqiang Li; Kui Wu; Jie Liang; Di Shao; Hanjie Wu; Xiaofei Ye; Chen Ye; Renhua Wu; Min Jian; Yan Chen; Wei Xie; Ruren Zhang; Lei Chen; Xin Liu; Xiaotian Yao; Hancheng Zheng; Chang Yu; Qibin Li; Zhuolin Gong; Mao Mao; Xu Yang; Lin Yang; Jingxiang Li; Wen Wang
Tumor heterogeneity presents a challenge for inferring clonal evolution and driver gene identification. Here, we describe a method for analyzing the cancer genome at a single-cell nucleotide level. To perform our analyses, we first devised and validated a high-throughput whole-genome single-cell sequencing method using two lymphoblastoid cell line single cells. We then carried out whole-exome single-cell sequencing of 90 cells from a JAK2-negative myeloproliferative neoplasm patient. The sequencing data from 58 cells passed our quality control criteria, and these data indicated that this neoplasm represented a monoclonal evolution. We further identified essential thrombocythemia (ET)-related candidate mutations such as SESN2 and NTRK1, which may be involved in neoplasm progression. This pilot study allowed the initial characterization of the disease-related genetic architecture at the single-cell nucleotide level. Further, we established a single-cell sequencing method that opens the way for detailed analyses of a variety of tumor types, including those with high genetic complex between patients.