about
Crowdsourcing in biomedicine: challenges and opportunitiesExtraction of relations between genes and diseases from text and large-scale data analysis: implications for translational researchWeakly supervised learning of biomedical information extraction from curated dataInteractive machine learning for health informatics: when do we need the human-in-the-loop?KnowLife: a versatile approach for constructing a large knowledge graph for biomedical sciencesValidation of a Crowdsourcing Methodology for Developing a Knowledge Base of Related Problem-Medication PairsCrowdsourcing and mining crowd dataThe cure: design and evaluation of a crowdsourcing game for gene selection for breast cancer survival predictionCT brush and CancerZap!: two video games for computed tomography dose minimization.Distributed computing and data storage in proteomics: many hands make light work, and a stronger memory.Viewing the proteome: how to visualize proteomics data?Use of big data in drug development for precision medicine.Using Big Data to Discover Diagnostics and Therapeutics for Gastrointestinal and Liver Diseases.Use it or lose it: citations predict the continued online availability of published bioinformatics resources.Recent advances in predicting gene-disease associationsToward Community Standards and Software for Whole-Cell ModelingHybrid curation of gene-mutation relations combining automated extraction and crowdsourcingCrowdsourcing black market prices for prescription opioids.Crowdsourcing image annotation for nucleus detection and segmentation in computational pathology: evaluating experts, automated methods, and the crowdMicrotask crowdsourcing for disease mention annotation in PubMed abstractsScaling drug indication curation through crowdsourcing.GEO2Enrichr: browser extension and server app to extract gene sets from GEO and analyze them for biological functions.Use of scientific social networking to improve the research strategies of PubMed readersSocial media in cancer care: highlights, challenges & opportunities.Developing a framework for digital objects in the Big Data to Knowledge (BD2K) commons: Report from the Commons Framework Pilots workshop.Assessing Pictograph Recognition: A Comparison of Crowdsourcing and Traditional Survey Approaches.Using Nonexperts for Annotating Pharmacokinetic Drug-Drug Interaction Mentions in Product Labeling: A Feasibility Study.Extraction and analysis of signatures from the Gene Expression Omnibus by the crowd.Bi-convex Optimization to Learn Classifiers from Multiple Biomedical Annotations.NoGOA: predicting noisy GO annotations using evidences and sparse representation.Massifquant: open-source Kalman filter-based XC-MS isotope trace feature detection.PhenoPlasm: a database of disruption phenotypes for malaria parasite genes.Stepwise Distributed Open Innovation Contests for Software Development: Acceleration of Genome-Wide Association Analysis.Games that Enlist Collective Intelligence to Solve Complex Scientific Problems.CrowdPhase: crowdsourcing the phase problem.The potential of crowdsourcing to improve patient-centered care.Molecular simulations and visualization: introduction and overview.Exploring applications of crowdsourcing to cryo-EM.A Review on the Applications of Crowdsourcing in Human Pathology.webpic: A flexible web application for collecting distance and count measurements from images.
P2860
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P2860
description
2013 nî lūn-bûn
@nan
2013 թուականի Օգոստոսին հրատարակուած գիտական յօդուած
@hyw
2013 թվականի օգոստոսին հրատարակված գիտական հոդված
@hy
2013年の論文
@ja
2013年論文
@yue
2013年論文
@zh-hant
2013年論文
@zh-hk
2013年論文
@zh-mo
2013年論文
@zh-tw
2013年论文
@wuu
name
Crowdsourcing for bioinformatics
@ast
Crowdsourcing for bioinformatics
@en
Crowdsourcing for bioinformatics
@nl
type
label
Crowdsourcing for bioinformatics
@ast
Crowdsourcing for bioinformatics
@en
Crowdsourcing for bioinformatics
@nl
prefLabel
Crowdsourcing for bioinformatics
@ast
Crowdsourcing for bioinformatics
@en
Crowdsourcing for bioinformatics
@nl
P2860
P921
P3181
P356
P1433
P1476
Crowdsourcing for bioinformatics
@en
P2093
Benjamin M Good
P2860
P304
P3181
P356
10.1093/BIOINFORMATICS/BTT333
P407
P4510
P50
P577
2013-06-19T00:00:00Z