Cargando…

Using passive extraction of real-world data from eConsent, electronic patient reported outcomes (ePRO) and electronic health record (EHR) data loaded to an electronic data capture (EDC) system for a multi-center, prospective, observational study in diabetic patients

As clinical trial complexity has increased over the past decade, using electronic methods to simplify recruitment and data management have been investigated. In this study, the Optum Digital Research Network (DRN) has demonstrated the use of electronic source (eSource) data to ease subject identific...

Descripción completa

Detalles Bibliográficos
Autores principales: Senerchia, Cynthia M., Ohrt, Tracy L., Payne, Peter N., Cheng, Samantha, Wimmer, David, Margolin-Katz, Irene, Tian, Devin, Garber, Lawrence, Abbott, Stephanie, Webster, Brian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9097692/
https://www.ncbi.nlm.nih.gov/pubmed/35573388
http://dx.doi.org/10.1016/j.conctc.2022.100920
_version_ 1784706231436312576
author Senerchia, Cynthia M.
Ohrt, Tracy L.
Payne, Peter N.
Cheng, Samantha
Wimmer, David
Margolin-Katz, Irene
Tian, Devin
Garber, Lawrence
Abbott, Stephanie
Webster, Brian
author_facet Senerchia, Cynthia M.
Ohrt, Tracy L.
Payne, Peter N.
Cheng, Samantha
Wimmer, David
Margolin-Katz, Irene
Tian, Devin
Garber, Lawrence
Abbott, Stephanie
Webster, Brian
author_sort Senerchia, Cynthia M.
collection PubMed
description As clinical trial complexity has increased over the past decade, using electronic methods to simplify recruitment and data management have been investigated. In this study, the Optum Digital Research Network (DRN) has demonstrated the use of electronic source (eSource) data to ease subject identification, recruitment burden, and used data extracted from electronic health records (EHR) to load to an electronic data capture (EDC) system. This study utilized electronic Informed Consent, electronic patient reported outcomes (SF-12) and included three sites using 3 different EHR systems. Patients with type 2 diabetes with an HbA1c ≥ 7.0% treated with metformin monotherapy were recruited. Endpoints consisted of changes in HbA1c, medications, and quality of life measures over 12-weeks of study participation using data from the subjects’ eSources listed above. The study began in June of 2020 and the last patient last visit occurred in January of 2021. Forty-eight participants were consented and enrolled. HbA1c was repeated for 33 and ePRO was obtained from all subjects at baseline and 28 at 12-week follow-up. Using eSource data eliminated transcription errors. Medication changes, healthcare encounters and lab results were identified when they occurred in standard clinical practice from the EHR systems. Minimal data transformation and normalization was required. Data for this observational trial where clinical outcomes are available using lab results, diagnoses, and encounters may be achieved via direct access to eSources. This methodology was successful and could be expanded for larger trials and will significantly reduce staff effort and exemplified clinical research as a care option.
format Online
Article
Text
id pubmed-9097692
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-90976922022-05-13 Using passive extraction of real-world data from eConsent, electronic patient reported outcomes (ePRO) and electronic health record (EHR) data loaded to an electronic data capture (EDC) system for a multi-center, prospective, observational study in diabetic patients Senerchia, Cynthia M. Ohrt, Tracy L. Payne, Peter N. Cheng, Samantha Wimmer, David Margolin-Katz, Irene Tian, Devin Garber, Lawrence Abbott, Stephanie Webster, Brian Contemp Clin Trials Commun Article As clinical trial complexity has increased over the past decade, using electronic methods to simplify recruitment and data management have been investigated. In this study, the Optum Digital Research Network (DRN) has demonstrated the use of electronic source (eSource) data to ease subject identification, recruitment burden, and used data extracted from electronic health records (EHR) to load to an electronic data capture (EDC) system. This study utilized electronic Informed Consent, electronic patient reported outcomes (SF-12) and included three sites using 3 different EHR systems. Patients with type 2 diabetes with an HbA1c ≥ 7.0% treated with metformin monotherapy were recruited. Endpoints consisted of changes in HbA1c, medications, and quality of life measures over 12-weeks of study participation using data from the subjects’ eSources listed above. The study began in June of 2020 and the last patient last visit occurred in January of 2021. Forty-eight participants were consented and enrolled. HbA1c was repeated for 33 and ePRO was obtained from all subjects at baseline and 28 at 12-week follow-up. Using eSource data eliminated transcription errors. Medication changes, healthcare encounters and lab results were identified when they occurred in standard clinical practice from the EHR systems. Minimal data transformation and normalization was required. Data for this observational trial where clinical outcomes are available using lab results, diagnoses, and encounters may be achieved via direct access to eSources. This methodology was successful and could be expanded for larger trials and will significantly reduce staff effort and exemplified clinical research as a care option. Elsevier 2022-05-05 /pmc/articles/PMC9097692/ /pubmed/35573388 http://dx.doi.org/10.1016/j.conctc.2022.100920 Text en © 2022 The Authors https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Article
Senerchia, Cynthia M.
Ohrt, Tracy L.
Payne, Peter N.
Cheng, Samantha
Wimmer, David
Margolin-Katz, Irene
Tian, Devin
Garber, Lawrence
Abbott, Stephanie
Webster, Brian
Using passive extraction of real-world data from eConsent, electronic patient reported outcomes (ePRO) and electronic health record (EHR) data loaded to an electronic data capture (EDC) system for a multi-center, prospective, observational study in diabetic patients
title Using passive extraction of real-world data from eConsent, electronic patient reported outcomes (ePRO) and electronic health record (EHR) data loaded to an electronic data capture (EDC) system for a multi-center, prospective, observational study in diabetic patients
title_full Using passive extraction of real-world data from eConsent, electronic patient reported outcomes (ePRO) and electronic health record (EHR) data loaded to an electronic data capture (EDC) system for a multi-center, prospective, observational study in diabetic patients
title_fullStr Using passive extraction of real-world data from eConsent, electronic patient reported outcomes (ePRO) and electronic health record (EHR) data loaded to an electronic data capture (EDC) system for a multi-center, prospective, observational study in diabetic patients
title_full_unstemmed Using passive extraction of real-world data from eConsent, electronic patient reported outcomes (ePRO) and electronic health record (EHR) data loaded to an electronic data capture (EDC) system for a multi-center, prospective, observational study in diabetic patients
title_short Using passive extraction of real-world data from eConsent, electronic patient reported outcomes (ePRO) and electronic health record (EHR) data loaded to an electronic data capture (EDC) system for a multi-center, prospective, observational study in diabetic patients
title_sort using passive extraction of real-world data from econsent, electronic patient reported outcomes (epro) and electronic health record (ehr) data loaded to an electronic data capture (edc) system for a multi-center, prospective, observational study in diabetic patients
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9097692/
https://www.ncbi.nlm.nih.gov/pubmed/35573388
http://dx.doi.org/10.1016/j.conctc.2022.100920
work_keys_str_mv AT senerchiacynthiam usingpassiveextractionofrealworlddatafromeconsentelectronicpatientreportedoutcomeseproandelectronichealthrecordehrdataloadedtoanelectronicdatacaptureedcsystemforamulticenterprospectiveobservationalstudyindiabeticpatients
AT ohrttracyl usingpassiveextractionofrealworlddatafromeconsentelectronicpatientreportedoutcomeseproandelectronichealthrecordehrdataloadedtoanelectronicdatacaptureedcsystemforamulticenterprospectiveobservationalstudyindiabeticpatients
AT paynepetern usingpassiveextractionofrealworlddatafromeconsentelectronicpatientreportedoutcomeseproandelectronichealthrecordehrdataloadedtoanelectronicdatacaptureedcsystemforamulticenterprospectiveobservationalstudyindiabeticpatients
AT chengsamantha usingpassiveextractionofrealworlddatafromeconsentelectronicpatientreportedoutcomeseproandelectronichealthrecordehrdataloadedtoanelectronicdatacaptureedcsystemforamulticenterprospectiveobservationalstudyindiabeticpatients
AT wimmerdavid usingpassiveextractionofrealworlddatafromeconsentelectronicpatientreportedoutcomeseproandelectronichealthrecordehrdataloadedtoanelectronicdatacaptureedcsystemforamulticenterprospectiveobservationalstudyindiabeticpatients
AT margolinkatzirene usingpassiveextractionofrealworlddatafromeconsentelectronicpatientreportedoutcomeseproandelectronichealthrecordehrdataloadedtoanelectronicdatacaptureedcsystemforamulticenterprospectiveobservationalstudyindiabeticpatients
AT tiandevin usingpassiveextractionofrealworlddatafromeconsentelectronicpatientreportedoutcomeseproandelectronichealthrecordehrdataloadedtoanelectronicdatacaptureedcsystemforamulticenterprospectiveobservationalstudyindiabeticpatients
AT garberlawrence usingpassiveextractionofrealworlddatafromeconsentelectronicpatientreportedoutcomeseproandelectronichealthrecordehrdataloadedtoanelectronicdatacaptureedcsystemforamulticenterprospectiveobservationalstudyindiabeticpatients
AT abbottstephanie usingpassiveextractionofrealworlddatafromeconsentelectronicpatientreportedoutcomeseproandelectronichealthrecordehrdataloadedtoanelectronicdatacaptureedcsystemforamulticenterprospectiveobservationalstudyindiabeticpatients
AT websterbrian usingpassiveextractionofrealworlddatafromeconsentelectronicpatientreportedoutcomeseproandelectronichealthrecordehrdataloadedtoanelectronicdatacaptureedcsystemforamulticenterprospectiveobservationalstudyindiabeticpatients