B R Hemmelgarn1, B F Culleton, W A Ghali. 1. Division of Nephrology, Foothills Medical Center, 1403 29th Street NW, Calgary, Alberta T2N 2T9, Canada. brenda.hemmelgarn@calgaryhealthregion.ca
Abstract
BACKGROUND: Chronic kidney disease is common among the elderly, and these patients are at risk of progressive kidney dysfunction. AIM: To develop an index to predict rapid progression of kidney dysfunction. DESIGN: Community-based cohort divided into derivation (n = 6789) and validation (n = 3395) subsets. METHODS: We identified 10 184 subjects aged >/=66 years from computerized laboratory data. Prescription drug data was used to define disease categories and medication exposure, and an index for predicting rapid progression of kidney dysfunction (> or =25% decline in glomerular filtration rate over a 2-year period) was obtained from a logistic regression model in the derivation cohort. The risk score for each subject was calculated by summing the component variables together, which were subsequently categorized into five risk classes. RESULTS: Five predictors of rapid progression were identified: age >75 years, cardiac disease, diabetes mellitus, gout, and use of anti-emetic medications. Rates of rapid progression for risk classes I through V were 8.6%, 10.9%, 13.9%, 15.6%, and 24.1%, respectively, for the derivation cohort, and 8.4%, 11.6%, 15.5%, 17.3%, 21.9%, respectively, for the validation cohort. The risk index distinguished between low and high risk of rapid progression, with a 2.5-fold greater risk for the highest, compared to the lowest, risk decile. DISCUSSION: Readily available clinical data can be used to identify most elderly at risk of rapid progression of kidney dysfunction. This simple index could help clinicians to identify patients at risk, and implement strategies to slow the progression of kidney dysfunction.
BACKGROUND:Chronic kidney disease is common among the elderly, and these patients are at risk of progressive kidney dysfunction. AIM: To develop an index to predict rapid progression of kidney dysfunction. DESIGN: Community-based cohort divided into derivation (n = 6789) and validation (n = 3395) subsets. METHODS: We identified 10 184 subjects aged >/=66 years from computerized laboratory data. Prescription drug data was used to define disease categories and medication exposure, and an index for predicting rapid progression of kidney dysfunction (> or =25% decline in glomerular filtration rate over a 2-year period) was obtained from a logistic regression model in the derivation cohort. The risk score for each subject was calculated by summing the component variables together, which were subsequently categorized into five risk classes. RESULTS: Five predictors of rapid progression were identified: age >75 years, cardiac disease, diabetes mellitus, gout, and use of anti-emetic medications. Rates of rapid progression for risk classes I through V were 8.6%, 10.9%, 13.9%, 15.6%, and 24.1%, respectively, for the derivation cohort, and 8.4%, 11.6%, 15.5%, 17.3%, 21.9%, respectively, for the validation cohort. The risk index distinguished between low and high risk of rapid progression, with a 2.5-fold greater risk for the highest, compared to the lowest, risk decile. DISCUSSION: Readily available clinical data can be used to identify most elderly at risk of rapid progression of kidney dysfunction. This simple index could help clinicians to identify patients at risk, and implement strategies to slow the progression of kidney dysfunction.
Authors: Adam Shardlow; Natasha J McIntyre; Richard J Fluck; Christopher W McIntyre; Maarten W Taal Journal: PLoS Med Date: 2016-09-20 Impact factor: 11.069
Authors: Shiying Hao; Tianyun Fu; Qian Wu; Bo Jin; Chunqing Zhu; Zhongkai Hu; Yanting Guo; Yan Zhang; Yunxian Yu; Terry Fouts; Phillip Ng; Devore S Culver; Shaun T Alfreds; Frank Stearns; Karl G Sylvester; Eric Widen; Doff B McElhinney; Xuefeng B Ling Journal: JMIR Med Inform Date: 2017-07-26