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Dive into the research topics where Michael B. Eisen is active.

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Featured researches published by Michael B. Eisen.


Nature | 2000

Molecular portraits of human breast tumours

Charles M. Perou; Therese Sørlie; Michael B. Eisen; Matt van de Rijn; Stefanie S. Jeffrey; Christian A. Rees; Jonathan R. Pollack; Douglas T. Ross; Hilde Johnsen; Lars A. Akslen; Øystein Fluge; Cheryl Williams; Shirley Zhu; Per Eystein Lønning; Anne Lise Børresen-Dale; Patrick O. Brown; David Botstein

Human breast tumours are diverse in their natural history and in their responsiveness to treatments. Variation in transcriptional programs accounts for much of the biological diversity of human cells and tumours. In each cell, signal transduction and regulatory systems transduce information from the cells identity to its environmental status, thereby controlling the level of expression of every gene in the genome. Here we have characterized variation in gene expression patterns in a set of 65 surgical specimens of human breast tumours from 42 different individuals, using complementary DNA microarrays representing 8,102 human genes. These patterns provided a distinctive molecular portrait of each tumour. Twenty of the tumours were sampled twice, before and after a 16-week course of doxorubicin chemotherapy, and two tumours were paired with a lymph node metastasis from the same patient. Gene expression patterns in two tumour samples from the same individual were almost always more similar to each other than either was to any other sample. Sets of co-expressed genes were identified for which variation in messenger RNA levels could be related to specific features of physiological variation. The tumours could be classified into subtypes distinguished by pervasive differences in their gene expression patterns.


Nature Genetics | 2000

Systematic variation in gene expression patterns in human cancer cell lines

Douglas T. Ross; Uwe Scherf; Michael B. Eisen; Charles M. Perou; Christian A. Rees; Paul T. Spellman; Vishwanath R. Iyer; Stefanie S. Jeffrey; Matt van de Rijn; Mark Waltham; Jeffrey C. Lee; Deval Lashkari; Dari Shalon; Timothy G. Myers; John N. Weinstein; David Botstein; Patrick O. Brown

We used cDNA microarrays to explore the variation in expression of approximately 8,000 unique genes among the 60 cell lines used in the National Cancer Institutes screen for anti-cancer drugs. Classification of the cell lines based solely on the observed patterns of gene expression revealed a correspondence to the ostensible origins of the tumours from which the cell lines were derived. The consistent relationship between the gene expression patterns and the tissue of origin allowed us to recognize outliers whose previous classification appeared incorrect. Specific features of the gene expression patterns appeared to be related to physiological properties of the cell lines, such as their doubling time in culture, drug metabolism or the interferon response. Comparison of gene expression patterns in the cell lines to those observed in normal breast tissue or in breast tumour specimens revealed features of the expression patterns in the tumours that had recognizable counterparts in specific cell lines, reflecting the tumour, stromal and inflammatory components of the tumour tissue. These results provided a novel molecular characterization of this important group of human cell lines and their relationships to tumours in vivo.


Nature Genetics | 1999

Genome-wide analysis of DNA copy-number changes using cDNA microarrays

Jonathan R. Pollack; Charles M. Perou; Ash A. Alizadeh; Michael B. Eisen; Cheryl F. Williams; Stefanie S. Jeffrey; David Botstein; Patrick O. Brown

Gene amplifications and deletions frequently contribute to tumorigenesis. Characterization of these DNA copy-number changes is important for both the basic understanding of cancer and its diagnosis. Comparative genomic hybridization (CGH) was developed to survey DNA copy-number variations across a whole genome. With CGH, differentially labelled test and reference genomic DNAs are co-hybridized to normal metaphase chromosomes, and fluorescence ratios along the length of chromosomes provide a cytogenetic representation of DNA copy-number variation. CGH, however, has a limited (~20 Mb) mapping resolution, and higher-resolution techniques, such as fluorescence in situ hybridization (FISH), are prohibitively labour-intensive on a genomic scale. Array-based CGH, in which fluorescence ratios at arrayed DNA elements provide a locus-by-locus measure of DNA copy-number variation, represents another means of achieving increased mapping resolution. Published array CGH methods have relied on large genomic clone (for example BAC) array targets and have covered only a small fraction of the human genome. cDNAs representing over 30,000 radiation-hybrid (RH)–mapped human genes provide an alternative and readily available genomic resource for mapping DNA copy-number changes. Although cDNA microarrays have been used extensively to characterize variation in human gene expression, human genomic DNA is a far more complex mixture than the mRNA representation of human cells. Therefore, analysis of DNA copy-number variation using cDNA microarrays would require a sensitivity of detection an order of magnitude greater than has been routinely reported. We describe here a cDNA microarray-based CGH method, and its application to DNA copy-number variation analysis in breast cancer cell lines and tumours. Using this assay, we were able to identify gene amplifications and deletions genome-wide and with high resolution, and compare alterations in DNA copy number and gene expression.


Nature Genetics | 2000

A gene expression database for the molecular pharmacology of cancer.

Uwe Scherf; Douglas T. Ross; Mark Waltham; Lawrence H. Smith; Jae K. Lee; Lorraine K. Tanabe; Kurt W. Kohn; William C. Reinhold; Timothy G. Myers; Darren T. Andrews; Dominic A. Scudiero; Michael B. Eisen; Edward A. Sausville; Yves Pommier; David Botstein; Patrick O. Brown; John N. Weinstein

We used cDNA microarrays to assess gene expression profiles in 60 human cancer cell lines used in a drug discovery screen by the National Cancer Institute. Using these data, we linked bioinformatics and chemoinformatics by correlating gene expression and drug activity patterns in the NCI60 lines. Clustering the cell lines on the basis of gene expression yielded relationships very different from those obtained by clustering the cell lines on the basis of their response to drugs. Gene-drug relationships for the clinical agents 5-fluorouracil and L-asparaginase exemplify how variations in the transcript levels of particular genes relate to mechanisms of drug sensitivity and resistance. This is the first study to integrate large databases on gene expression and molecular pharmacology.


Methods in Enzymology | 1999

DNA arrays for analysis of gene expression.

Michael B. Eisen; Patrick O. Brown

Publisher Summary This chapter describes one of the currently used microarray technologies commonly called “spotting” or “printing” because DNAs are physically spotted on a solid substrate in which short oligonucleotides is synthesized directly on a solid support. In standard spotting applications, large collections of DNA samples are assembled in 96- or 384-well plates. DNA microarrays are used for a variety of purposes; essentially any property of a DNA sequence that can be made experimentally to result in differential recovery of that sequence can be assayed for thousands of sequences at once by DNA microarray hybridization. The chapter focuses on the application of DNA microarrays to gene expression studies and discusses general principles of whole genome expression monitoring as well as detailing the specific process of making and using spotted DNA microarrays.


Proceedings of the National Academy of Sciences of the United States of America | 2002

Exploiting transcription factor binding site clustering to identify cis-regulatory modules involved in pattern formation in the Drosophila genome

Benjamin P. Berman; Yutaka Nibu; Barret D. Pfeiffer; Pavel Tomancak; Susan E. Celniker; Michael A. Levine; Gerald M. Rubin; Michael B. Eisen

A major challenge in interpreting genome sequences is understanding how the genome encodes the information that specifies when and where a gene will be expressed. The first step in this process is the identification of regions of the genome that contain regulatory information. In higher eukaryotes, this cis-regulatory information is organized into modular units [cis-regulatory modules (CRMs)] of a few hundred base pairs. A common feature of these cis-regulatory modules is the presence of multiple binding sites for multiple transcription factors. Here, we evaluate the extent to which the tendency for transcription factor binding sites to be clustered can be used as the basis for the computational identification of cis-regulatory modules. By using published DNA binding specificity data for five transcription factors active in the early Drosophila embryo, we identified genomic regions containing unusually high concentrations of predicted binding sites for these factors. A significant fraction of these binding site clusters overlap known CRMs that are regulated by these factors. In addition, many of the remaining clusters are adjacent to genes expressed in a pattern characteristic of genes regulated by these factors. We tested one of the newly identified clusters, mapping upstream of the gap gene giant (gt), and show that it acts as an enhancer that recapitulates the posterior expression pattern of gt.


Nucleic Acids Research | 2001

The Stanford Microarray Database

Gavin Sherlock; Tina Hernandez-Boussard; Andrew Kasarskis; Gail Binkley; John C. Matese; Selina S. Dwight; Shuai Weng; Heng Jin; Catherine A. Ball; Michael B. Eisen; Paul T. Spellman; Patrick O. Brown; David Botstein; J. Michael Cherry

The Stanford Microarray Database (SMD) stores raw and normalized data from microarray experiments, and provides web interfaces for researchers to retrieve, analyze and visualize their data. The two immediate goals for SMD are to serve as a storage site for microarray data from ongoing research at Stanford University, and to facilitate the public dissemination of that data once published, or released by the researcher. Of paramount importance is the connection of microarray data with the biological data that pertains to the DNA deposited on the microarray (genes, clones etc.). SMD makes use of many public resources to connect expression information to the relevant biology, including SGD [Ball,C.A., Dolinski,K., Dwight,S.S., Harris,M.A., Issel-Tarver,L., Kasarskis,A., Scafe,C.R., Sherlock,G., Binkley,G., Jin,H. et al. (2000) Nucleic Acids Res., 28, 77-80], YPD and WormPD [Costanzo,M.C., Hogan,J.D., Cusick,M.E., Davis,B.P., Fancher,A.M., Hodges,P.E., Kondu,P., Lengieza,C., Lew-Smith,J.E., Lingner,C. et al. (2000) Nucleic Acids Res., 28, 73-76], Unigene [Wheeler,D.L., Chappey,C., Lash,A.E., Leipe,D.D., Madden,T.L., Schuler,G.D., Tatusova,T.A. and Rapp,B.A. (2000) Nucleic Acids Res., 28, 10-14], dbEST [Boguski,M.S., Lowe,T.M. and Tolstoshev,C.M. (1993) Nature Genet., 4, 332-333] and SWISS-PROT [Bairoch,A. and Apweiler,R. (2000) Nucleic Acids Res., 28, 45-48] and can be accessed at http://genome-www.stanford.edu/microarray.


Nature | 2007

Discovery of functional elements in 12 Drosophila genomes using evolutionary signatures

Alexander Stark; Michael F. Lin; Pouya Kheradpour; Jakob Skou Pedersen; Leopold Parts; Joseph W. Carlson; Madeline A. Crosby; Matthew D. Rasmussen; Sushmita Roy; Ameya N. Deoras; J. Graham Ruby; Julius Brennecke; Harvard FlyBase curators; Berkeley Drosophila Genome; Emily Hodges; Angie S. Hinrichs; Anat Caspi; Benedict Paten; Seung-Won Park; Mira V. Han; Morgan L. Maeder; Benjamin J. Polansky; Bryanne E. Robson; Stein Aerts; Jacques van Helden; Bassem A. Hassan; Donald G. Gilbert; Deborah A. Eastman; Michael D. Rice; Michael Weir

Sequencing of multiple related species followed by comparative genomics analysis constitutes a powerful approach for the systematic understanding of any genome. Here, we use the genomes of 12 Drosophila species for the de novo discovery of functional elements in the fly. Each type of functional element shows characteristic patterns of change, or ‘evolutionary signatures’, dictated by its precise selective constraints. Such signatures enable recognition of new protein-coding genes and exons, spurious and incorrect gene annotations, and numerous unusual gene structures, including abundant stop-codon readthrough. Similarly, we predict non-protein-coding RNA genes and structures, and new microRNA (miRNA) genes. We provide evidence of miRNA processing and functionality from both hairpin arms and both DNA strands. We identify several classes of pre- and post-transcriptional regulatory motifs, and predict individual motif instances with high confidence. We also study how discovery power scales with the divergence and number of species compared, and we provide general guidelines for comparative studies.


Proceedings of the National Academy of Sciences of the United States of America | 2008

Tools for neuroanatomy and neurogenetics in Drosophila

Barret D. Pfeiffer; Arnim Jenett; Ann S. Hammonds; Teri-T B. Ngo; Sima Misra; Christine Murphy; Audra Scully; Joseph W. Carlson; Kenneth H. Wan; Todd R. Laverty; Christopher J. Mungall; Rob Svirskas; James T. Kadonaga; Chris Q. Doe; Michael B. Eisen; Susan E. Celniker; Gerald M. Rubin

We demonstrate the feasibility of generating thousands of transgenic Drosophila melanogaster lines in which the expression of an exogenous gene is reproducibly directed to distinct small subsets of cells in the adult brain. We expect the expression patterns produced by the collection of 5,000 lines that we are currently generating to encompass all neurons in the brain in a variety of intersecting patterns. Overlapping 3-kb DNA fragments from the flanking noncoding and intronic regions of genes thought to have patterned expression in the adult brain were inserted into a defined genomic location by site-specific recombination. These fragments were then assayed for their ability to function as transcriptional enhancers in conjunction with a synthetic core promoter designed to work with a wide variety of enhancer types. An analysis of 44 fragments from four genes found that >80% drive expression patterns in the brain; the observed patterns were, on average, comprised of <100 cells. Our results suggest that the D. melanogaster genome contains >50,000 enhancers and that multiple enhancers drive distinct subsets of expression of a gene in each tissue and developmental stage. We expect that these lines will be valuable tools for neuroanatomy as well as for the elucidation of neuronal circuits and information flow in the fly brain.


Nature Genetics | 1999

Gene expression informatics--it's all in your mine.

Douglas E. Bassett; Michael B. Eisen; Mark S. Boguski

Technologies for whole–genome RNA expression studies are becoming increasingly reliable and accessible. However, universal standards to make the data more suitable for comparative analysis and for inter–operability with other information resources have yet to emerge. Improved access to large electronic data sets, reliable and consistent annotation and effective tools for data mining are critical. Analysis methods that exploit large data warehouses of gene expression experiments will be necessary to realize the full potential of this technology.

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Mark D. Biggin

Lawrence Berkeley National Laboratory

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Venky N. Iyer

University of California

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Charles M. Perou

University of North Carolina at Chapel Hill

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Louis M. Staudt

National Institutes of Health

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