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Institution

Cold Spring Harbor Laboratory

NonprofitCold Spring Harbor, New York, United States
About: Cold Spring Harbor Laboratory is a nonprofit organization based out in Cold Spring Harbor, New York, United States. It is known for research contribution in the topics: Gene & Genome. The organization has 3772 authors who have published 6603 publications receiving 1010873 citations. The organization is also known as: CSHL.
Topics: Gene, Genome, RNA, DNA, Cancer


Papers
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Journal ArticleDOI
06 Jul 2012-Cell
TL;DR: Interestingly, miRNA binding confers remarkable stability on hAgo2, locking this otherwise flexible enzyme into a stable conformation, at 2.2 Å resolution.

527 citations

Journal ArticleDOI
TL;DR: Protein tyrosine phosphatases, the enzymes that dephosphorylate tyrosyl phosphoproteins, were initially believed to be few in number and serve a 'housekeeping' role in signal transduction, but work indicates that this is totally incorrect.

527 citations

Journal ArticleDOI
29 Jan 2015-Nature
TL;DR: A protein–DNA network is presented between Arabidopsis thaliana transcription factors and secondary cell wall metabolic genes with gene expression regulated by a series of feed-forward loops to develop and validate new hypotheses about secondary wall gene regulation under abiotic stress.
Abstract: The plant cell wall is an important factor for determining cell shape, function and response to the environment. Secondary cell walls, such as those found in xylem, are composed of cellulose, hemicelluloses and lignin and account for the bulk of plant biomass. The coordination between transcriptional regulation of synthesis for each polymer is complex and vital to cell function. A regulatory hierarchy of developmental switches has been proposed, although the full complement of regulators remains unknown. Here we present a protein-DNA network between Arabidopsis thaliana transcription factors and secondary cell wall metabolic genes with gene expression regulated by a series of feed-forward loops. This model allowed us to develop and validate new hypotheses about secondary wall gene regulation under abiotic stress. Distinct stresses are able to perturb targeted genes to potentially promote functional adaptation. These interactions will serve as a foundation for understanding the regulation of a complex, integral plant component.

526 citations

Journal ArticleDOI
18 Feb 2005-Science
TL;DR: A simple mutual-inhibition network model is presented that captures all three task phases within a single framework and integrates both working memory and decision making because its dynamical properties are easily controlled without changing its connectivity.
Abstract: Networks adapt to environmental demands by switching between distinct dynamical behaviors. The activity of frontal-lobe neurons during two-interval discrimination tasks is an example of these adaptable dynamics. Subjects first perceive a stimulus, then hold it in working memory, and finally make a decision by comparing it with a second stimulus. We present a simple mutual-inhibition network model that captures all three task phases within a single framework. The model integrates both working memory and decision making because its dynamical properties are easily controlled without changing its connectivity. Mutual inhibition between nonlinear units is a useful design motif for networks that must display multiple behaviors.

526 citations

Journal ArticleDOI
TL;DR: It is argued that equitability is properly formalized by a self-consistency condition closely related to Data Processing Inequality, and shown that estimating mutual information provides a natural and practical method for equitably quantifying associations in large datasets.
Abstract: How should one quantify the strength of association between two random variables without bias for relationships of a specific form? Despite its conceptual simplicity, this notion of statistical "equitability" has yet to receive a definitive mathematical formalization. Here we argue that equitability is properly formalized by a self-consistency condition closely related to Data Processing Inequality. Mutual information, a fundamental quantity in information theory, is shown to satisfy this equitability criterion. These findings are at odds with the recent work of Reshef et al. [Reshef DN, et al. (2011) Science 334(6062):1518-1524], which proposed an alternative definition of equitability and introduced a new statistic, the "maximal information coefficient" (MIC), said to satisfy equitability in contradistinction to mutual information. These conclusions, however, were supported only with limited simulation evidence, not with mathematical arguments. Upon revisiting these claims, we prove that the mathematical definition of equitability proposed by Reshef et al. cannot be satisfied by any (nontrivial) dependence measure. We also identify artifacts in the reported simulation evidence. When these artifacts are removed, estimates of mutual information are found to be more equitable than estimates of MIC. Mutual information is also observed to have consistently higher statistical power than MIC. We conclude that estimating mutual information provides a natural (and often practical) way to equitably quantify statistical associations in large datasets.

524 citations


Authors

Showing all 3800 results

NameH-indexPapersCitations
Phillip A. Sharp172614117126
Gregory J. Hannon165421140456
Ian A. Wilson15897198221
Marco A. Marra153620184684
Michael E. Greenberg148316114317
Tom Maniatis143318299495
Detlef Weigel14251684670
Kim Nasmyth14229459231
Arnold J. Levine139485116005
Joseph E. LeDoux13947891500
Gerald R. Fink13831670868
Ramnik J. Xavier138597101879
Harold E. Varmus13749676320
David A. Jackson136109568352
Scott W. Lowe13439689376
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Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
202316
202239
2021292
2020350
2019315
2018288