about
Impact of Predicting Health Care Utilization Via Web Search Behavior: A Data-Driven AnalysisAnalyzing Information Seeking and Drug-Safety Alert Response by Health Care Professionals as New Methods for SurveillanceImplications of non-stationarity on predictive modeling using EHRsAssessing Screening Guidelines for Cardiovascular Disease Risk Factors using Routinely Collected Data.An unsupervised learning method to identify reference intervals from a clinical database.A dataset quantifying polypharmacy in the United States.Interpretation of biological experiments changes with evolution of the Gene Ontology and its annotations.Call for Papers: Deep Phenotyping for Precision MedicineInferring Physical Function from Wearable Activity Monitors: Analysis of Activity Data from Patients with Knee Osteoarthritis (Preprint)Inferring Physical Function from Wearable Activity Monitors: Analysis of Free-Living Activity Data from Patients with Knee Osteoarthritis (Preprint)Ethics of Using and Sharing Clinical Imaging Data for Artificial Intelligence: A Proposed FrameworkAn evaluation of clinical order patterns machine-learned from clinician cohorts stratified by patient mortality outcomesAuthor Correction: Estimate the hidden deployment cost of predictive models to improve patient careEarly Detection of Adverse Drug Reactions in Social Health Networks: A Natural Language Processing Pipeline for Signal DetectionEstimate the hidden deployment cost of predictive models to improve patient careMeasure what matters: counts of hospitalized patients are a better metric for health system capacity planning for a reopeningA model to forecast regional demand for COVID-19 related hospital bedsOccurrence and Timing of Subsequent SARS-CoV-2 RT-PCR Positivity Among Initially Negative Patients
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description
onderzoeker
@nl
researcher
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հետազոտող
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name
Nigam Haresh Shah
@ast
Nigam Haresh Shah
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Nigam Haresh Shah
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Nigam Haresh Shah
@nl
type
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Nigam Haresh Shah
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Nigam Haresh Shah
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Nigam Haresh Shah
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Nigam Haresh Shah
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Nigam Haresh Shah
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Nigam Haresh Shah
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Nigam Haresh Shah
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Nigam Haresh Shah
@nl
P106
P1960
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P2456
P31
P496
0000-0001-9385-7158