2023
DOI: 10.1055/s-0043-1767681
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Using Existing Clinical Information Models for Dutch Quality Registries to Reuse Data and Follow COUMT Paradigm

Abstract: Background Reuse of health care data for various purposes, such as the care process, for quality measurement, research, and finance, will become increasingly important in the future; therefore, “Collect Once Use Many Times” (COUMT). Clinical information models (CIMs) can be used for content standardization. Data collection for national quality registries (NQRs) often requires manual data entry or batch processing. Preferably, NQRs collect required data by extracting data recorded during the health care process… Show more

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“…Considering the characteristics among datasets, collecting data, and proceeding with overall data construction and management that reflects clinical attributes [29,36,[42][43][44][45][46][47] Operation stage Conducting data quality assessments on the constructed data and reviewing them from various angles and perspectives [29,30,42,48,49] Utilization Stage Sharing the outcomes of data quality validation, implementing data quality enhancement activities, and recalibrating the overall data quality [29,30,37,42]…”
Section: Construction Stagementioning
confidence: 99%
“…Considering the characteristics among datasets, collecting data, and proceeding with overall data construction and management that reflects clinical attributes [29,36,[42][43][44][45][46][47] Operation stage Conducting data quality assessments on the constructed data and reviewing them from various angles and perspectives [29,30,42,48,49] Utilization Stage Sharing the outcomes of data quality validation, implementing data quality enhancement activities, and recalibrating the overall data quality [29,30,37,42]…”
Section: Construction Stagementioning
confidence: 99%