Tyler Williamson1, Michael E Green2, Richard Birtwhistle2, Shahriar Khan3, Stephanie Garies4, Sabrina T Wong5, Nandini Natarajan6, Donna Manca7, Neil Drummond7. 1. Department of Family Medicine, Queen's University, Kingston, Ontario, Canada Department of Public Health Sciences, Queen's University, Kingston, Ontario, Canada tylerw@cpcssn.org. 2. Department of Family Medicine, Queen's University, Kingston, Ontario, Canada Department of Public Health Sciences, Queen's University, Kingston, Ontario, Canada. 3. Department of Family Medicine, Queen's University, Kingston, Ontario, Canada. 4. Department of Family Medicine, University of Calgary, Alberta, Canada. 5. School of Nursing, University of British Columbia, Vancouver, British Columbia, Canada. 6. Department of Family Medicine, Dalhousie University, Halifax, Nova Scotia, Canada. 7. Department of Family Medicine, University of Alberta, Alberta, Canada.
Abstract
PURPOSE: The Canadian Primary Care Sentinel Surveillance Network (CPCSSN) is Canada's first national chronic disease surveillance system based on electronic health record (EHR) data. The purpose of this study was to develop and validate case definitions and case-finding algorithms used to identify 8 common chronic conditions in primary care: chronic obstructive pulmonary disease (COPD), dementia, depression, diabetes, hypertension, osteoarthritis, parkinsonism, and epilepsy. METHODS: Using a cross-sectional data validation study design, regional and local CPCSSN networks from British Columbia, Alberta (2), Ontario, Nova Scotia, and Newfoundland participated in validating EHR case-finding algorithms. A random sample of EHR charts were reviewed, oversampling for patients older than 60 years and for those with epilepsy or parkinsonism. Charts were reviewed by trained research assistants and residents who were blinded to the algorithmic diagnosis. Sensitivity, specificity, and positive and negative predictive values (PPVs, NPVs) were calculated. RESULTS: We obtained data from 1,920 charts from 4 different EHR systems (Wolf, Med Access, Nightingale, and PS Suite). For the total sample, sensitivity ranged from 78% (osteoarthritis) to more than 95% (diabetes, epilepsy, and parkinsonism); specificity was greater than 94% for all diseases; PPV ranged from 72% (dementia) to 93% (hypertension); NPV ranged from 86% (hypertension) to greater than 99% (diabetes, dementia, epilepsy, and parkinsonism). CONCLUSIONS: The CPCSSN diagnostic algorithms showed excellent sensitivity and specificity for hypertension, diabetes, epilepsy, and parkinsonism and acceptable values for the other conditions. CPCSSN data are appropriate for use in public health surveillance, primary care, and health services research, as well as to inform policy for these diseases.
PURPOSE: The Canadian Primary Care Sentinel Surveillance Network (CPCSSN) is Canada's first national chronic disease surveillance system based on electronic health record (EHR) data. The purpose of this study was to develop and validate case definitions and case-finding algorithms used to identify 8 common chronic conditions in primary care: chronic obstructive pulmonary disease (COPD), dementia, depression, diabetes, hypertension, osteoarthritis, parkinsonism, and epilepsy. METHODS: Using a cross-sectional data validation study design, regional and local CPCSSN networks from British Columbia, Alberta (2), Ontario, Nova Scotia, and Newfoundland participated in validating EHR case-finding algorithms. A random sample of EHR charts were reviewed, oversampling for patients older than 60 years and for those with epilepsy or parkinsonism. Charts were reviewed by trained research assistants and residents who were blinded to the algorithmic diagnosis. Sensitivity, specificity, and positive and negative predictive values (PPVs, NPVs) were calculated. RESULTS: We obtained data from 1,920 charts from 4 different EHR systems (Wolf, Med Access, Nightingale, and PS Suite). For the total sample, sensitivity ranged from 78% (osteoarthritis) to more than 95% (diabetes, epilepsy, and parkinsonism); specificity was greater than 94% for all diseases; PPV ranged from 72% (dementia) to 93% (hypertension); NPV ranged from 86% (hypertension) to greater than 99% (diabetes, dementia, epilepsy, and parkinsonism). CONCLUSIONS: The CPCSSN diagnostic algorithms showed excellent sensitivity and specificity for hypertension, diabetes, epilepsy, and parkinsonism and acceptable values for the other conditions. CPCSSN data are appropriate for use in public health surveillance, primary care, and health services research, as well as to inform policy for these diseases.
Authors: Nhi-Ha T Trinh; Soo Jeong Youn; Jessica Sousa; Susan Regan; C Andres Bedoya; Trina E Chang; Maurizio Fava; Albert Yeung Journal: Int J Med Inform Date: 2011-04-22 Impact factor: 4.046
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Authors: Sue Ross; Hilary Fast; Stephanie Garies; Deb Slade; Dave Jackson; Meghan Doraty; Rebecca Miyagishima; Boglarka Soos; Matt Taylor; Tyler Williamson; Neil Drummond Journal: CMAJ Open Date: 2020-05-28
Authors: Sabrina T Wong; Donna Manca; David Barber; Rachael Morkem; Shahriar Khan; Jyoti Kotecha; Tyler Williamson; Richard Birtwhistle; Scott Patten Journal: CMAJ Open Date: 2014-10-01