20 research outputs found
Design of a Structured Decision Process Support System for Asynchronous Groups
Organizational work is increasingly conducted by geographically dispersed individuals working as groups. Geographic dispersion and simultaneous membership in multiple groups often make it impractical to bring decision groups together for traditional, face-to-face meetings. Therefore, group decisions need to be carried out by physically and temporally dispersed asynchronousgroups. This paper describes the development of computer support for asynchronous groups performing a specific task type. Group decision support systems have focused on computer support for face-to-face decision groups and have been the subject of extensive research (e.g., Jessup and Valacich, 1993). In contrast, research on physically and temporally dispersed groups has been limited (e.g., Turoff, et al., 1993). To developeffective computer support for asynchronous groups we apply a system analysis and design approach: First, we employ a Requirements Analysis and then we proceed to develop an appropriate Systems Design to meet the identified requirements. Our ultimate goalis to test the effectiveness of the system under conditions of experimental control
AN ARCHITECTURE FOR ORGANIZATION-WIDE DECISION SUPPORT SYSTEMS
An architecture was developed from a synthesis of concepts derived from the literature and field observations to identify and integrate the total decision support (DSS) function in organizations. Four distinct types of decision support systems were identified (corporate planning systems; functional decision support systems; executive information systems; and local decision support systems) and were integrated within a framework that incorporated organizational level, system formality, and decision making mode. The architecture is used as a cohesive framework for discussing research and management issues for organization-wide DSS
Individual Rights to Privacy and Corporate E-mail
E-mail continues to gain popularity as a medium for business communication. Despite considerable attention recently in the popular press, attitudes and behaviors toward e-mail privacy remain adamantly inconsistent with current organizational policies and legal positions (Behar, 1997). In the U.S., employers have the legal right to read messages sent or received by their employees over company equipment. Employees, however, feel that e-mail should be private. An experiment is conducted to further explore user attitudes toward e-mail privacy and conditions under which organizations should be allowed to monitor employee e-mai
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Mapping Copy Number Variation by Population Scale Genome Sequencing
Genomic structural variants (SVs) are abundant in humans, differing from other forms of variation in extent, origin and functional impact. Despite progress in SV characterization, the nucleotide resolution architecture of most SVs remains unknown. We constructed a map of unbalanced SVs (that is, copy number variants) based on whole genome DNA sequencing data from 185 human genomes, integrating evidence from complementary SV discovery approaches with extensive experimental validations. Our map encompassed 22,025 deletions and 6,000 additional SVs, including insertions and tandem duplications. Most SVs (53%) were mapped to nucleotide resolution, which facilitated analysing their origin and functional impact. We examined numerous whole and partial gene deletions with a genotyping approach and observed a depletion of gene disruptions amongst high frequency deletions. Furthermore, we observed differences in the size spectra of SVs originating from distinct formation mechanisms, and constructed a map of SV hotspots formed by common mechanisms. Our analytical framework and SV map serves as a resource for sequencing-based association studies.Organismic and Evolutionary Biolog
Statistical significance of cis-regulatory modules
BACKGROUND: It is becoming increasingly important for researchers to be able to scan through large genomic regions for transcription factor binding sites or clusters of binding sites forming cis-regulatory modules. Correspondingly, there has been a push to develop algorithms for the rapid detection and assessment of cis-regulatory modules. While various algorithms for this purpose have been introduced, most are not well suited for rapid, genome scale scanning. RESULTS: We introduce methods designed for the detection and statistical evaluation of cis-regulatory modules, modeled as either clusters of individual binding sites or as combinations of sites with constrained organization. In order to determine the statistical significance of module sites, we first need a method to determine the statistical significance of single transcription factor binding site matches. We introduce a straightforward method of estimating the statistical significance of single site matches using a database of known promoters to produce data structures that can be used to estimate p-values for binding site matches. We next introduce a technique to calculate the statistical significance of the arrangement of binding sites within a module using a max-gap model. If the module scanned for has defined organizational parameters, the probability of the module is corrected to account for organizational constraints. The statistical significance of single site matches and the architecture of sites within the module can be combined to provide an overall estimation of statistical significance of cis-regulatory module sites. CONCLUSION: The methods introduced in this paper allow for the detection and statistical evaluation of single transcription factor binding sites and cis-regulatory modules. The features described are implemented in the Search Tool for Occurrences of Regulatory Motifs (STORM) and MODSTORM software
Genome-Wide Expression Profiling of Five Mouse Models Identifies Similarities and Differences with Human Psoriasis
Development of a suitable mouse model would facilitate the investigation of pathomechanisms underlying human psoriasis and would also assist in development of therapeutic treatments
Meta-Profiles of Gene Expression during Aging: Limited Similarities between Mouse and Human and an Unexpectedly Decreased Inflammatory Signature
Background: Skin aging is associated with intrinsic processes that compromise the structure of the extracellular matrix while promoting loss of functional and regenerative capacity. These processes are accompanied by a large-scale shift in gene expression, but underlying mechanisms are not understood and conservation of these mechanisms between humans and mice is uncertain. Results: We used genome-wide expression profiling to investigate the aging skin transcriptome. In humans, age-related shifts in gene expression were sex-specific. In females, aging increased expression of transcripts associated with T-cells, B-cells and dendritic cells, and decreased expression of genes in regions with elevated Zeb1, AP-2 and YY1 motif density. In males, however, these effects were contrasting or absent. When age-associated gene expression patterns in human skin were compared to those in tail skin from CB6F1 mice, overall human-mouse correspondence was weak. Moreover, inflammatory gene expression patterns were not induced with aging of mouse tail skin, and well-known aging biomarkers were in fact decreased (e.g., Clec7a, Lyz1 and Lyz2). These unexpected patterns and weak human-mouse correspondence may be due to decreased abundance of antigen presenting cells in mouse tail skin with age. Conclusions: Aging is generally associated with a pro-inflammatory state, but we have identified an exception to this pattern with aging of CB6F1 mouse tail skin. Aging therefore does not uniformly heighten inflammatory status across all mouse tissues. Furthermore, we identified both intercellular and intracellular mechanisms of transcriptome aging, including those that are sex- and species-specific
GA4GH: International policies and standards for data sharing across genomic research and healthcare.
The Global Alliance for Genomics and Health (GA4GH) aims to accelerate biomedical advances by enabling the responsible sharing of clinical and genomic data through both harmonized data aggregation and federated approaches. The decreasing cost of genomic sequencing (along with other genome-wide molecular assays) and increasing evidence of its clinical utility will soon drive the generation of sequence data from tens of millions of humans, with increasing levels of diversity. In this perspective, we present the GA4GH strategies for addressing the major challenges of this data revolution. We describe the GA4GH organization, which is fueled by the development efforts of eight Work Streams and informed by the needs of 24 Driver Projects and other key stakeholders. We present the GA4GH suite of secure, interoperable technical standards and policy frameworks and review the current status of standards, their relevance to key domains of research and clinical care, and future plans of GA4GH. Broad international participation in building, adopting, and deploying GA4GH standards and frameworks will catalyze an unprecedented effort in data sharing that will be critical to advancing genomic medicine and ensuring that all populations can access its benefits
The Human Cell Atlas White Paper
The Human Cell Atlas (HCA) will be made up of comprehensive reference maps of
all human cells - the fundamental units of life - as a basis for understanding
fundamental human biological processes and diagnosing, monitoring, and treating
disease. It will help scientists understand how genetic variants impact disease
risk, define drug toxicities, discover better therapies, and advance
regenerative medicine. A resource of such ambition and scale should be built in
stages, increasing in size, breadth, and resolution as technologies develop and
understanding deepens. We will therefore pursue Phase 1 as a suite of flagship
projects in key tissues, systems, and organs. We will bring together experts in
biology, medicine, genomics, technology development and computation (including
data analysis, software engineering, and visualization). We will also need
standardized experimental and computational methods that will allow us to
compare diverse cell and tissue types - and samples across human communities -
in consistent ways, ensuring that the resulting resource is truly global.
This document, the first version of the HCA White Paper, was written by
experts in the field with feedback and suggestions from the HCA community,
gathered during recent international meetings. The White Paper, released at the
close of this yearlong planning process, will be a living document that evolves
as the HCA community provides additional feedback, as technological and
computational advances are made, and as lessons are learned during the
construction of the atlas
Inverting the model of genomics data sharing with the NHGRI Genomic Data Science Analysis, Visualization, and Informatics Lab-space
The NHGRI Genomic Data Science Analysis, Visualization, and Informatics Lab-space (AnVIL; https://anvilproject.org) was developed to address a widespread community need for a unified computing environment for genomics data storage, management, and analysis. In this perspective, we present AnVIL, describe its ecosystem and interoperability with other platforms, and highlight how this platform and associated initiatives contribute to improved genomic data sharing efforts. The AnVIL is a federated cloud platform designed to manage and store genomics and related data, enable population-scale analysis, and facilitate collaboration through the sharing of data, code, and analysis results. By inverting the traditional model of data sharing, the AnVIL eliminates the need for data movement while also adding security measures for active threat detection and monitoring and provides scalable, shared computing resources for any researcher. We describe the core data management and analysis components of the AnVIL, which currently consists of Terra, Gen3, Galaxy, RStudio/Bioconductor, Dockstore, and Jupyter, and describe several flagship genomics datasets available within the AnVIL. We continue to extend and innovate the AnVIL ecosystem by implementing new capabilities, including mechanisms for interoperability and responsible data sharing, while streamlining access management. The AnVIL opens many new opportunities for analysis, collaboration, and data sharing that are needed to drive research and to make discoveries through the joint analysis of hundreds of thousands to millions of genomes along with associated clinical and molecular data types