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RWD-Cockpit: Application for Quality Assessment of Real-world Data

BACKGROUND: Digital technologies are transforming the health care system. A large part of information is generated as real-world data (RWD). Data from electronic health records and digital biomarkers have the potential to reveal associations between the benefits and adverse events of medicines, esta...

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Autores principales: Babrak, Lmar Marie, Smakaj, Erand, Agac, Teyfik, Asprion, Petra Maria, Grimberg, Frank, der Werf, Daan Van, van Ginkel, Erwin Willem, Tosoni, Deniz David, Clay, Ieuan, Degen, Markus, Brodbeck, Dominique, Natali, Eriberto Noel, Schkommodau, Erik, Miho, Enkelejda
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9627468/
https://www.ncbi.nlm.nih.gov/pubmed/35266872
http://dx.doi.org/10.2196/29920
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author Babrak, Lmar Marie
Smakaj, Erand
Agac, Teyfik
Asprion, Petra Maria
Grimberg, Frank
der Werf, Daan Van
van Ginkel, Erwin Willem
Tosoni, Deniz David
Clay, Ieuan
Degen, Markus
Brodbeck, Dominique
Natali, Eriberto Noel
Schkommodau, Erik
Miho, Enkelejda
author_facet Babrak, Lmar Marie
Smakaj, Erand
Agac, Teyfik
Asprion, Petra Maria
Grimberg, Frank
der Werf, Daan Van
van Ginkel, Erwin Willem
Tosoni, Deniz David
Clay, Ieuan
Degen, Markus
Brodbeck, Dominique
Natali, Eriberto Noel
Schkommodau, Erik
Miho, Enkelejda
author_sort Babrak, Lmar Marie
collection PubMed
description BACKGROUND: Digital technologies are transforming the health care system. A large part of information is generated as real-world data (RWD). Data from electronic health records and digital biomarkers have the potential to reveal associations between the benefits and adverse events of medicines, establish new patient-stratification principles, expose unknown disease correlations, and inform on preventive measures. The impact for health care payers and providers, the biopharmaceutical industry, and governments is massive in terms of health outcomes, quality of care, and cost. However, a framework to assess the preliminary quality of RWD is missing, thus hindering the conduct of population-based observational studies to support regulatory decision-making and real-world evidence. OBJECTIVE: To address the need to qualify RWD, we aimed to build a web application as a tool to translate characterization of some quality parameters of RWD into a metric and propose a standard framework for evaluating the quality of the RWD. METHODS: The RWD-Cockpit systematically scores data sets based on proposed quality metrics and customizable variables chosen by the user. Sleep RWD generated de novo and publicly available data sets were used to validate the usability and applicability of the web application. The RWD quality score is based on the evaluation of 7 variables: manageability specifies access and publication status; complexity defines univariate, multivariate, and longitudinal data; sample size indicates the size of the sample or samples; privacy and liability stipulates privacy rules; accessibility specifies how the data set can be accessed and to what granularity; periodicity specifies how often the data set is updated; and standardization specifies whether the data set adheres to any specific technical or metadata standard. These variables are associated with several descriptors that define specific characteristics of the data set. RESULTS: To address the need to qualify RWD, we built the RWD-Cockpit web application, which proposes a framework and applies a common standard for a preliminary evaluation of RWD quality across data sets—molecular, phenotypical, and social—and proposes a standard that can be further personalized by the community retaining an internal standard. Applied to 2 different case studies—de novo–generated sleep data and publicly available data sets—the RWD-Cockpit could identify and provide researchers with variables that might increase quality. CONCLUSIONS: The results from the application of the framework of RWD metrics implemented in the RWD-Cockpit application suggests that multiple data sets can be preliminarily evaluated in terms of quality using the proposed metrics. The output scores—quality identifiers—provide a first quality assessment for the use of RWD. Although extensive challenges remain to be addressed to set RWD quality standards, our proposal can serve as an initial blueprint for community efforts in the characterization of RWD quality for regulated settings.
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spelling pubmed-96274682022-11-03 RWD-Cockpit: Application for Quality Assessment of Real-world Data Babrak, Lmar Marie Smakaj, Erand Agac, Teyfik Asprion, Petra Maria Grimberg, Frank der Werf, Daan Van van Ginkel, Erwin Willem Tosoni, Deniz David Clay, Ieuan Degen, Markus Brodbeck, Dominique Natali, Eriberto Noel Schkommodau, Erik Miho, Enkelejda JMIR Form Res Original Paper BACKGROUND: Digital technologies are transforming the health care system. A large part of information is generated as real-world data (RWD). Data from electronic health records and digital biomarkers have the potential to reveal associations between the benefits and adverse events of medicines, establish new patient-stratification principles, expose unknown disease correlations, and inform on preventive measures. The impact for health care payers and providers, the biopharmaceutical industry, and governments is massive in terms of health outcomes, quality of care, and cost. However, a framework to assess the preliminary quality of RWD is missing, thus hindering the conduct of population-based observational studies to support regulatory decision-making and real-world evidence. OBJECTIVE: To address the need to qualify RWD, we aimed to build a web application as a tool to translate characterization of some quality parameters of RWD into a metric and propose a standard framework for evaluating the quality of the RWD. METHODS: The RWD-Cockpit systematically scores data sets based on proposed quality metrics and customizable variables chosen by the user. Sleep RWD generated de novo and publicly available data sets were used to validate the usability and applicability of the web application. The RWD quality score is based on the evaluation of 7 variables: manageability specifies access and publication status; complexity defines univariate, multivariate, and longitudinal data; sample size indicates the size of the sample or samples; privacy and liability stipulates privacy rules; accessibility specifies how the data set can be accessed and to what granularity; periodicity specifies how often the data set is updated; and standardization specifies whether the data set adheres to any specific technical or metadata standard. These variables are associated with several descriptors that define specific characteristics of the data set. RESULTS: To address the need to qualify RWD, we built the RWD-Cockpit web application, which proposes a framework and applies a common standard for a preliminary evaluation of RWD quality across data sets—molecular, phenotypical, and social—and proposes a standard that can be further personalized by the community retaining an internal standard. Applied to 2 different case studies—de novo–generated sleep data and publicly available data sets—the RWD-Cockpit could identify and provide researchers with variables that might increase quality. CONCLUSIONS: The results from the application of the framework of RWD metrics implemented in the RWD-Cockpit application suggests that multiple data sets can be preliminarily evaluated in terms of quality using the proposed metrics. The output scores—quality identifiers—provide a first quality assessment for the use of RWD. Although extensive challenges remain to be addressed to set RWD quality standards, our proposal can serve as an initial blueprint for community efforts in the characterization of RWD quality for regulated settings. JMIR Publications 2022-10-18 /pmc/articles/PMC9627468/ /pubmed/35266872 http://dx.doi.org/10.2196/29920 Text en ©Lmar Marie Babrak, Erand Smakaj, Teyfik Agac, Petra Maria Asprion, Frank Grimberg, Daan Van der Werf, Erwin Willem van Ginkel, Deniz David Tosoni, Ieuan Clay, Markus Degen, Dominique Brodbeck, Eriberto Noel Natali, Erik Schkommodau, Enkelejda Miho. Originally published in JMIR Formative Research (https://formative.jmir.org), 18.10.2022. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Formative Research, is properly cited. The complete bibliographic information, a link to the original publication on https://formative.jmir.org, as well as this copyright and license information must be included.
spellingShingle Original Paper
Babrak, Lmar Marie
Smakaj, Erand
Agac, Teyfik
Asprion, Petra Maria
Grimberg, Frank
der Werf, Daan Van
van Ginkel, Erwin Willem
Tosoni, Deniz David
Clay, Ieuan
Degen, Markus
Brodbeck, Dominique
Natali, Eriberto Noel
Schkommodau, Erik
Miho, Enkelejda
RWD-Cockpit: Application for Quality Assessment of Real-world Data
title RWD-Cockpit: Application for Quality Assessment of Real-world Data
title_full RWD-Cockpit: Application for Quality Assessment of Real-world Data
title_fullStr RWD-Cockpit: Application for Quality Assessment of Real-world Data
title_full_unstemmed RWD-Cockpit: Application for Quality Assessment of Real-world Data
title_short RWD-Cockpit: Application for Quality Assessment of Real-world Data
title_sort rwd-cockpit: application for quality assessment of real-world data
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9627468/
https://www.ncbi.nlm.nih.gov/pubmed/35266872
http://dx.doi.org/10.2196/29920
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