A national surveillance project on chronic kidney disease management in Canadian primary care: a study protocol

Author:

Bello Aminu K,Ronksley Paul E,Tangri Navdeep,Singer Alexander,Grill Allan,Nitsch Dorothea,Queenan John A,Lindeman Cliff,Soos Boglarka,Freiheit Elizabeth,Tuot Delphine,Mangin Dee,Drummond Neil

Abstract

IntroductionEffective chronic disease care is dependent on well-organised quality improvement (QI) strategies that monitor processes of care and outcomes for optimal care delivery. Although healthcare is provincially/territorially structured in Canada, there are national networks such as the Canadian Primary Care Sentinel Surveillance Network (CPCSSN) as important facilitators for national QI-based studies to improve chronic disease care. The goal of our study is to improve the understanding of how patients with chronic kidney disease (CKD) are managed in primary care and the variation across practices and provinces and territories to drive improvements in care delivery.Methods and analysisThe CPCSSN database contains anonymised health information from the electronic medical records for patients of participating primary care practices (PCPs) across Canada (n=1200). The dataset includes information on patient sociodemographics, medications, laboratory results and comorbidities. Leveraging validated algorithms, case definitions and guidelines will help define CKD and the related processes of care, and these enable us to: (1) determine prevalent CKD burden; (2) ascertain the current practice pattern on risk identification and management of CKD and (3) study variation in care indicators (eg, achievement of blood pressure and proteinuria targets) and referral pattern for specialist kidney care. The process of care outcomes will be stratified across patients’ demographics as well as provider and regional (provincial/territorial) characteristics. The prevalence of CKD stages 3–5 will be presented as age–sex standardised prevalence estimates stratified by province and as weighted averages for population rates with 95% CIs using census data. For each PCP, age–sex standardised prevalence will be calculated and compared with expected standardised prevalence estimates. The process-based outcomes will be defined using established methods.Ethics and disseminationThe CPCSSN is committed to high ethical standards when dealing with individual data collected, and this work is reviewed and approved by the Network Scientific Committee. The results will be published in peer-reviewed journals and presented at relevant national and international scientific meetings.

Funder

Institute of Health Services and Policy Research

Publisher

BMJ

Subject

General Medicine

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1. Big Data in Chronic Kidney Disease: Evolution or Revolution?;BioMedInformatics;2023-03-14

2. THE SCRUTINY OF AI, ML, BIG DATA,DEEP LEARNING AND OTHER TECHNICAL VOWS AND CALLS IN NEPHROLOGY;2022 10th International Conference on Emerging Trends in Engineering and Technology - Signal and Information Processing (ICETET-SIP-22);2022-04-29

3. Renal function deterioration in adult patients with type-2 diabetes;BMC Nephrology;2020-07-29

4. Promises of Big Data and Artificial Intelligence in Nephrology and Transplantation;Journal of Clinical Medicine;2020-04-13

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