Event detection using population-based health care databases in randomized clinical trials: a novel research tool in interventional cardiology

Leif Thuesen,1 Lisette Okkels Jensen,2 Hans Henrik Tilsted,3 Michael Mæng,1 Christian Terkelsen,1 Per Thayssen,2 Jan Ravkilde,3 Evald Høj Christiansen,1 Hans Erik Bøtker,1 Morten Madsen,4 Jens F Lassen1 1Department of Cardiology, Aarhus University Hospital, Skejby, De...

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Main Authors: Thuesen L, Jensen LO, Tilsted HH, Mæng M, Terkelsen C, Thayssen P, Ravkilde J, Christiansen EH, Bøtker HE, Madsen M, Lassen JF
Format: Article
Language:English
Published: Dove Medical Press 2013-09-01
Series:Clinical Epidemiology
Online Access:http://www.dovepress.com/event-detection-using-population-based-health-care-databases-in-random-a14400
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spelling doaj-8845557c14b64c76989dee609cab7d602020-11-24T21:10:41ZengDove Medical PressClinical Epidemiology1179-13492013-09-012013Issue 1357361Event detection using population-based health care databases in randomized clinical trials: a novel research tool in interventional cardiologyThuesen LJensen LOTilsted HHMæng MTerkelsen CThayssen PRavkilde JChristiansen EHBøtker HEMadsen MLassen JFLeif Thuesen,1 Lisette Okkels Jensen,2 Hans Henrik Tilsted,3 Michael Mæng,1 Christian Terkelsen,1 Per Thayssen,2 Jan Ravkilde,3 Evald Høj Christiansen,1 Hans Erik Bøtker,1 Morten Madsen,4 Jens F Lassen1 1Department of Cardiology, Aarhus University Hospital, Skejby, Denmark; 2Department of Cardiology, Odense University Hospital, Odense, Denmark; 3Department of Cardiology, Aalborg University Hospital, Aalborg, Denmark; 4Department of Clinical Epidemiology, Aarhus University Hospital, Skejby, Denmark Aim: To describe a new research tool, designed to reflect routine clinical practice and relying on population-based health care databases to detect clinical events in randomized clinical trials. Background: Randomized clinical trials often focus on short-term efficacy and safety in a controlled environment. Trial follow-up may be linked with study-related investigations and differ from routine clinical practice. Because treatment and control in randomized trials differ from daily practice, trial results may have reduced general applicability and may be of limited value in clinical decision-making. Further, it is economically very costly to conduct randomized clinical trials. Methods and results: Population-based health care databases collect data continuously and prospectively, and make it possible to monitor lifelong outcomes of cardiac interventions in large numbers of patients. This strengthens external validity by eliminating the effects of study-related monitoring or diagnostic tests. Further, follow-up data can be obtained at low expense. Importantly, data sources encompassing a complete population are likely to reflect clinical practice. Because population-based health care databases collect data for quality-control and administrative purposes unrelated to scientific investigations, certain biases, such as nonresponse bias, recall bias, and bias from losses to follow-up, can be avoided. Conclusion: Event detection using population-based health care databases is a new research tool in interventional cardiology that may allow large, low-cost, randomized clinical trials to reflect daily clinical practice, covering a broad range of patients and end points with complete lifelong follow-up. Keywords: clinical study, national registries, event detection, PCI, coronary stentshttp://www.dovepress.com/event-detection-using-population-based-health-care-databases-in-random-a14400
collection DOAJ
language English
format Article
sources DOAJ
author Thuesen L
Jensen LO
Tilsted HH
Mæng M
Terkelsen C
Thayssen P
Ravkilde J
Christiansen EH
Bøtker HE
Madsen M
Lassen JF
spellingShingle Thuesen L
Jensen LO
Tilsted HH
Mæng M
Terkelsen C
Thayssen P
Ravkilde J
Christiansen EH
Bøtker HE
Madsen M
Lassen JF
Event detection using population-based health care databases in randomized clinical trials: a novel research tool in interventional cardiology
Clinical Epidemiology
author_facet Thuesen L
Jensen LO
Tilsted HH
Mæng M
Terkelsen C
Thayssen P
Ravkilde J
Christiansen EH
Bøtker HE
Madsen M
Lassen JF
author_sort Thuesen L
title Event detection using population-based health care databases in randomized clinical trials: a novel research tool in interventional cardiology
title_short Event detection using population-based health care databases in randomized clinical trials: a novel research tool in interventional cardiology
title_full Event detection using population-based health care databases in randomized clinical trials: a novel research tool in interventional cardiology
title_fullStr Event detection using population-based health care databases in randomized clinical trials: a novel research tool in interventional cardiology
title_full_unstemmed Event detection using population-based health care databases in randomized clinical trials: a novel research tool in interventional cardiology
title_sort event detection using population-based health care databases in randomized clinical trials: a novel research tool in interventional cardiology
publisher Dove Medical Press
series Clinical Epidemiology
issn 1179-1349
publishDate 2013-09-01
description Leif Thuesen,1 Lisette Okkels Jensen,2 Hans Henrik Tilsted,3 Michael Mæng,1 Christian Terkelsen,1 Per Thayssen,2 Jan Ravkilde,3 Evald Høj Christiansen,1 Hans Erik Bøtker,1 Morten Madsen,4 Jens F Lassen1 1Department of Cardiology, Aarhus University Hospital, Skejby, Denmark; 2Department of Cardiology, Odense University Hospital, Odense, Denmark; 3Department of Cardiology, Aalborg University Hospital, Aalborg, Denmark; 4Department of Clinical Epidemiology, Aarhus University Hospital, Skejby, Denmark Aim: To describe a new research tool, designed to reflect routine clinical practice and relying on population-based health care databases to detect clinical events in randomized clinical trials. Background: Randomized clinical trials often focus on short-term efficacy and safety in a controlled environment. Trial follow-up may be linked with study-related investigations and differ from routine clinical practice. Because treatment and control in randomized trials differ from daily practice, trial results may have reduced general applicability and may be of limited value in clinical decision-making. Further, it is economically very costly to conduct randomized clinical trials. Methods and results: Population-based health care databases collect data continuously and prospectively, and make it possible to monitor lifelong outcomes of cardiac interventions in large numbers of patients. This strengthens external validity by eliminating the effects of study-related monitoring or diagnostic tests. Further, follow-up data can be obtained at low expense. Importantly, data sources encompassing a complete population are likely to reflect clinical practice. Because population-based health care databases collect data for quality-control and administrative purposes unrelated to scientific investigations, certain biases, such as nonresponse bias, recall bias, and bias from losses to follow-up, can be avoided. Conclusion: Event detection using population-based health care databases is a new research tool in interventional cardiology that may allow large, low-cost, randomized clinical trials to reflect daily clinical practice, covering a broad range of patients and end points with complete lifelong follow-up. Keywords: clinical study, national registries, event detection, PCI, coronary stents
url http://www.dovepress.com/event-detection-using-population-based-health-care-databases-in-random-a14400
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