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Evaluation of the quality of clinical data collection for a pan-Canadian cohort of children affected by inherited metabolic diseases: lessons learned from the Canadian Inherited Metabolic Diseases Research Network

Authors :
Kylie Tingley
Monica Lamoureux
Michael Pugliese
Michael T. Geraghty
Jonathan B. Kronick
Beth K. Potter
Doug Coyle
Kumanan Wilson
Michael Kowalski
Valerie Austin
Catherine Brunel-Guitton
Daniela Buhas
Alicia K. J. Chan
Sarah Dyack
Annette Feigenbaum
Alette Giezen
Sharan Goobie
Cheryl R. Greenberg
Shailly Jain Ghai
Michal Inbar-Feigenberg
Natalya Karp
Mariya Kozenko
Erica Langley
Matthew Lines
Julian Little
Jennifer MacKenzie
Bruno Maranda
Saadet Mercimek-Andrews
Connie Mohan
Aizeddin Mhanni
Grant Mitchell
John J. Mitchell
Laura Nagy
Melanie Napier
Amy Pender
Murray Potter
Chitra Prasad
Suzanne Ratko
Ramona Salvarinova
Andreas Schulze
Komudi Siriwardena
Neal Sondheimer
Rebecca Sparkes
Sylvia Stockler-Ipsiroglu
Yannis Trakadis
Lesley Turner
Clara Van Karnebeek
Hilary Vallance
Anthony Vandersteen
Jagdeep Walia
Ashley Wilson
Brenda J. Wilson
Andrea C. Yu
Nataliya Yuskiv
Pranesh Chakraborty
on behalf of the Canadian Inherited Metabolic Diseases Research Network
Source :
Orphanet Journal of Rare Diseases, Vol 15, Iss 1, Pp 1-12 (2020)
Publication Year :
2020
Publisher :
BMC, 2020.

Abstract

Abstract Background The Canadian Inherited Metabolic Diseases Research Network (CIMDRN) is a pan-Canadian practice-based research network of 14 Hereditary Metabolic Disease Treatment Centres and over 50 investigators. CIMDRN aims to develop evidence to improve health outcomes for children with inherited metabolic diseases (IMD). We describe the development of our clinical data collection platform, discuss our data quality management plan, and present the findings to date from our data quality assessment, highlighting key lessons that can serve as a resource for future clinical research initiatives relating to rare diseases. Methods At participating centres, children born from 2006 to 2015 who were diagnosed with one of 31 targeted IMD were eligible to participate in CIMDRN’s clinical research stream. For all participants, we collected a minimum data set that includes information about demographics and diagnosis. For children with five prioritized IMD, we collected longitudinal data including interventions, clinical outcomes, and indicators of disease management. The data quality management plan included: design of user-friendly and intuitive clinical data collection forms; validation measures at point of data entry, designed to minimize data entry errors; regular communications with each CIMDRN site; and routine review of aggregate data. Results As of June 2019, CIMDRN has enrolled 798 participants of whom 764 (96%) have complete minimum data set information. Results from our data quality assessment revealed that potential data quality issues were related to interpretation of definitions of some variables, participants who transferred care across institutions, and the organization of information within the patient charts (e.g., neuropsychological test results). Little information was missing regarding disease ascertainment and diagnosis (e.g., ascertainment method – 0% missing). Discussion Using several data quality management strategies, we have established a comprehensive clinical database that provides information about care and outcomes for Canadian children affected by IMD. We describe quality issues and lessons for consideration in future clinical research initiatives for rare diseases, including accurately accommodating different clinic workflows and balancing comprehensiveness of data collection with available resources. Integrating data collection within clinical care, leveraging electronic medical records, and implementing core outcome sets will be essential for achieving sustainability.

Details

Language :
English
ISSN :
17501172
Volume :
15
Issue :
1
Database :
Directory of Open Access Journals
Journal :
Orphanet Journal of Rare Diseases
Publication Type :
Academic Journal
Accession number :
edsdoj.4dd97f1f0f9c499290bec8147590f10e
Document Type :
article
Full Text :
https://doi.org/10.1186/s13023-020-01358-z