| Literature DB >> 28780553 |
Aminu K Bello1, Paul E Ronksley2, Navdeep Tangri3, Alexander Singer4, Allan Grill5, Dorothea Nitsch6, John A Queenan7, Cliff Lindeman8, Boglarka Soos9, Elizabeth Freiheit10, Delphine Tuot11, Dee Mangin12, Neil Drummond8.
Abstract
INTRODUCTION: Effective 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 ANALYSIS: The 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 DISSEMINATION: The 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. © Article author(s) (or their employer(s) unless otherwise stated in the text of the article) 2017. All rights reserved. No commercial use is permitted unless otherwise expressly granted.Entities:
Keywords: chronic renal failure; nephrology; quality in health care
Mesh:
Year: 2017 PMID: 28780553 PMCID: PMC5629677 DOI: 10.1136/bmjopen-2017-016267
Source DB: PubMed Journal: BMJ Open ISSN: 2044-6055 Impact factor: 2.692
Figure 1Map of Canada showing CPCSSN networks distribution. CPCSSN, Canadian Primary Care Sentinel Surveillance Network.
Data variables
| Domain | Variables |
| Patient |
Patient ID (unique patient number generated by CPCSSN) Sex Month and year of birth Occupation Highest education Housing status Postal code EMR status—active, deceased, duplicate, inactive, unknown Language Race/ethnicity Deceased tear Date created (date this record was created) Time since last visit—6, 12, 24 or 36 months CPCSSN conditions—yes/no for diabetes, depression, osteoarthritis, COPD, hypertension, dementia, Parkinson's, epilepsy CPCSSN conditions—count (ie, numeric value) Disease case indicator—disease (diabetes, depression, osteoarthritis, COPD, hypertension, dementia, Parkinson's, epilepsy) Disease case indicator—indicator type (billing, encounter diagnosis, health conditions, laboratory result (HbA1C, fasting glucose), medication) Disease case indicator—indicator value (numeric value of HbA1C and/or fasting glucose) |
| Patient–provider pairing |
Patient ID (unique patient number generated by CPCSSN) Provider ID (unique provider number generated by CPCSSN; primary provider of patient) Start date End date |
| Provider information |
Provider ID (unique provider number generated by CPCSSN) Sex Birth year |
| Billing data |
Patient ID (unique patient number generated by CPCSSN) Date created Service date Diagnosis text—cleaned Diagnosis text—original Diagnosis code type (ie, ICD-9, ICD-10) Diagnosis code (ie, 401) |
| Clinical encounters |
Patient ID (unique patient number generated by CPCSSN) Provider ID (unique provider number of the attending provider generated by CPCSSN) Encounter date Encounter type—academic clinic, community clinic Reason for visit—cleaned Reason for visit—original |
| Encounter diagnoses |
Patient ID (unique patient number generated by CPCSSN) Created date Diagnosis text—cleaned Diagnosis text—original Diagnosis code type (ie, ICD-9) Diagnosis code (ie, 401) |
| Physical examination data |
Patient ID (unique patient number generated by CPCSSN) Exam name—systolic BP, diastolic BP, height, weight, BMI, waist circumference, waist to hip ratio (all values) Result—cleaned numeric value Result—original numeric value Unit of measure Most recent value—yes, no |
| Health condition |
Patient ID (unique patient number generated by CPCSSN) Created date Onset date Diagnosis text—cleaned Diagnosis text—original Diagnosis code type (ie, ICD-9) Diagnosis code (ie, 401) |
| Laboratory data |
Patient ID (unique patient number generated by CPCSSN) Date performed Laboratory name—cleaned text (fasting glucose, glucose tolerance, HbA1C, HDL, LDL, total cholesterol, triglycerides, microalbumin, urine albumin to creatinine ratio, haemoglobin, creatinine, eGFR/GFR) Laboratory name—original text Laboratory result—numeric value Unit of measure Most recent value—yes, no |
| Medical/surgical procedure |
Patient ID (unique patient number generated by CPCSSN) Date created Date performed Procedure name—cleaned text Procedure name—original text |
| Medication records |
Patient ID (unique patient number generated by CPCSSN) Start date Stop date Medication name—cleaned text Medication name—original text Medication code—ATC code Time since (initial prescription) DIN (drug identification number) Strength Dose Frequency Unit of measure |
| Referral data |
Patient ID (unique patient number generated by CPCSSN) Date created Date completed Referral name—cleaned text Referral name—original text |
| Risk factor data |
Patient ID (the unique patient number generated by CPCSSN) Date created Start date Stop date Most recent—yes, no Risk factor name—cleaned text (smoking, alcohol, diet, exercise, obesity) Risk factor name—original text Status—cleaned (current, never, n/a, not current, past, unknown) Status—original Value—cleaned Frequency Duration End |
BMI, body mass index; BP, blood pressure; COPD, chronic obstructive pulmonary disease; CPCSSN, Canadian Primary Care Sentinel Surveillance Network; eGFR, estimated glomerular filtration rate; EMR, electronic medical records; HbA1C, glycated haemoglobin concentration; HDL, high density lipoprotein; ICD, International Classification of Diseases; LDL, low density lipoprotein.
Figure 2The project concept.
Elements of high-quality CKD care as defined by standard national and international CKD guidelines25 44–48
| Domain | Objective | Measures |
| Identification of CKD risk factors | To establish an organised system for identification of people with risk factors and evaluated for the presence of CKD markers | Percentage of patients with risk factors* (present for at least 1 year) tested for CKD within the last 12 months |
| Identification of CKD | To establish an organised system where people with CKD are appropriately identified | Proportion of patients with CKD correctly diagnosed and appropriately coded (validated based on KDIGO definition standard of using Scr measurements to derive eGFR <60 mL/min based on two measures at least 90 days apart based on CKD-EPI equation. |
| Management of CKD: Monitoring of risk factors for progression and CVD | To establish an organised system to ensure patients with CKD are receiving guideline-concordant care appropriate for the stage of CKD. This implies that those with early stages are being monitored appropriately in primary care. | Proportion of patients receiving appropriate testing and monitoring: Percentage of patients with urinary albumin tested within 6 months of index GFR <60 mL/min/1.73 m2 Percentage of patients with index GFR <60 mL/min/1.73 m2 and diabetes mellitus who have glycated haemoglobin tested at least annually Frequency of eGFR and albuminuria testing in patients with a baseline of eGFR <60 mL/min and/or ACR of 70 mg/mmol (<1 year, 1–2 years, >2 years) Percentage of patients >50 years of age and eGFR <45 mL/min and/or CVD history on a statin medication Percentage of patients with diabetes and proteinuria on an ACEi or ARB Percentage of patients with history of CVD on appropriate secondary prevention (aspirin, beta-locker, ACEi, statin) Percentage of patients with diabetes and/or proteinuria (ACR>70 mg/mmol) achieving a target BP of ≤130/80 mm Hg Percentage of patients with eGFR <60 mL/min achieving a target BP of ≤140/90 mm Hg Percentage of patients with proteinuria (ACR>70 mg/mmol) achieving a target reduction to 50% of baseline Percentage of patients with diabetes achieving a target HbA1c~7% |
| Appropriate referral system | To develop a system where patients with CKD that need specialist input to care are appropriately identified and referred. | Proportion of patients appropriately referred for specialist care (defined by any visit to nephrologist or multidisciplinary CKD clinic within the last 12 months, for those patients that meet the KDIGO referral criteria)† |
*Diabetes, hypertension, CVD, nephrotoxic medications (non-steroidal anti-inflammatory drugs, calcineurin inhibitors, lithium), certain urological disease (eg, kidney stones, prostatic hypertrophy), multisystem diseases (eg, lupus) and family history of kidney disease.
†This would include advanced stages of CKD (eGFR<30 mL/min/1.73 m2), significant albuminuria (ACR≥70 mg/mmol), rapid loss of eGFR (>15 mL/min/1.73 m2) refractory hypertension and history of acute kidney injury.
ACEi, ACE inhibitor; ACR, albumin to creatinine ratio; ARB, angiotensin-receptor blocker; BP, blood pressure; CKD, chronic kidney disease; CVD, cardiovascular disease; eGFR, estimated glomerular filtration rate; EPI, Epidemiology Collaboration; HbA1c, glycated haemoglobin concentration; KDIGO, Kidney Disease Improving Global Outcomes; Scr, serum creatinine.
Figure 3Project timeline/milestones.
Examples of existing CKD surveillance programs
| Programme | Year of inception | Approach/methodology | Data sources | Spread | Funding |
| US CDC* | 2006 | Passive surveillance approach leveraging existing data sources | Administrative surveys (NHANES) | National | Governmental support |
| England QoF | 2006 | An incentive-based system (pay-for-performance system) that required all PCPs to establish a register for adults with CKD stages 3–5 and achieve guideline-concordant treatment targets. | Routine primary care records | National | Governmental support |
| CKD-JAC | 2008 | Routine care data across select CKD clinics across Japan | Practice data | National | Japanese Society of Nephrology and Industry |
| CKD Queensland Registry | 2009 | Routine clinical care data | Practice data | Regional (state of Queensland) | Research organisations and industry |
| CPCSSN-CKD* | 2017 | Passive surveillance using routine practice database | Routine primary care databases | National (multiple regions and territories) | Research organisations and government (PHAC, CIHR) |
*Main database development started in 2005.
CIHR, Canadian Institutes of Health Research; CKD-JAC, Chronic Kidney Disease Japan Cohort; CKD, chronic kidney disease; CPCSSN, Canadian Primary Care Sentinel Surveillance Network; NHANES, National Health and Nutrition Examination Survey; PCP, primary care practice; QoF, Quality and Outcomes Framework; US CDC, US Centres for Disease Control and Prevention CKD Surveillance System.