about
A Naive Bayes machine learning approach to risk prediction using censored, time-to-event data.Adapting machine learning techniques to censored time-to-event health record data: A general-purpose approach using inverse probability of censoring weightingEvaluation of a dynamic bayesian belief network to predict osteoarthritic knee pain using data from the osteoarthritis initiative.Conditional independence relations among biological markers may improve clinical decision as in the case of triple negative breast cancers.Data-based nurse staffing indicators with Bayesian networks explain nurse job satisfaction: a pilot study.Function formula oriented construction of Bayesian inference nets for diagnosis of cardiovascular diseaseBayesian networks for clinical decision support in lung cancer care.Impact of noise on molecular network inference.Context-based electronic health record: toward patient specific healthcare.Use of predictive algorithms in-home monitoring of chronic obstructive pulmonary disease and asthma: A systematic review.Survival prediction and treatment recommendation with Bayesian techniques in lung cancerDevelopment and validation of an integrated diagnostic algorithm derived from parameters monitored in implantable devices for identifying patients at risk for heart failure hospitalization in an ambulatory setting.A decision aid for intensity-modulated radiation-therapy plan selection in prostate cancer based on a prognostic Bayesian network and a Markov model.Use of kernel-based Bayesian models to predict late osteolysis after hip replacement.Imaging-based observational databases for clinical problem solving: the role of informatics.A new method for predicting patient survivorship using efficient bayesian network learning.Emergency department triaging of admitted stroke patients--a Bayesian Network analysis.Non-linear relationships between nurse staffing and patients' length of stay in acute care units: Bayesian dependence modelling.Predicting outcomes of gastric endoscopic submucosal dissection using a Bayesian approach: a step for individualized risk assessment.Bayesian Machine Learning Techniques for revealing complex interactions among genetic and clinical factors in association with extra-intestinal Manifestations in IBD patients.Development and Validation of Risk Matrices for Crohn's Disease Outcomes in Patients Who Underwent Early Therapeutic Interventions.Bayesian integrated testing strategy (ITS) for skin sensitization potency assessment: a decision support system for quantitative weight of evidence and adaptive testing strategy.A new Bayesian network-based approach to the analysis of sperm motility: application in the study of tench (Tinca tinca) semen.Bayesian networks in infectious disease eco-epidemiology.Impact of precision of Bayesian network parameters on accuracy of medical diagnostic systemsProbabilistic graphic models applied to identification of diseases.Supervised learning for infection risk inference using pathology data.The Influence of Recognition and Social Support on European Health Professionals' Occupational Stress: A Demands-Control-Social Support-Recognition Bayesian Network Model.Bayesian Networks Analysis of Malocclusion Data.Understanding the complex relationships underlying hot flashes: a Bayesian network approach.An update and further testing of a knowledge-based diagnostic clinical decision support system for musculoskeletal disorders of the shoulder for use in a primary care setting.Predicting severity of pathological scarring due to burn injuries: a clinical decision making tool using Bayesian networks.A Bayesian Network Model for Predicting Post-stroke Outcomes With Available Risk FactorsImplementing Guidelines for Causality Assessment of Adverse Drug Reaction Reports: A Bayesian Network Approach
P2860
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P2860
description
2004 nî lūn-bûn
@nan
2004年の論文
@ja
2004年学术文章
@wuu
2004年学术文章
@zh
2004年学术文章
@zh-cn
2004年学术文章
@zh-hans
2004年学术文章
@zh-my
2004年学术文章
@zh-sg
2004年學術文章
@yue
2004年學術文章
@zh-hant
name
Bayesian networks in biomedicine and health-care.
@en
Bayesian networks in biomedicine and health-care.
@nl
type
label
Bayesian networks in biomedicine and health-care.
@en
Bayesian networks in biomedicine and health-care.
@nl
prefLabel
Bayesian networks in biomedicine and health-care.
@en
Bayesian networks in biomedicine and health-care.
@nl
P2093
P1476
Bayesian networks in biomedicine and health-care.
@en
P2093
Ameen Abu-Hanna
Linda C van der Gaag
Peter J F Lucas
P304
P356
10.1016/J.ARTMED.2003.11.001
P577
2004-03-01T00:00:00Z