Literature DB >> 22171932

A simple prediction score for kidney disease in the Korean population.

Keun-Sang Kwon1, Heejung Bang, Andrew S Bomback, Dai-Ha Koh, Jung-Ho Yum, Ju-Hyung Lee, Sik Lee, Sung K Park, Keun-Young Yoo, Sue K Park, Soung-Hoon Chang, Hyun-Sul Lim, Joong Myung Choi, Abhijit V Kshirsagar.   

Abstract

AIM: Screening algorithms for chronic kidney disease have been developed and validated in American populations. Given the worldwide burden of kidney disease, developing algorithms for populations outside the USA is needed.
METHODS: Using simple, non-invasive questions, we developed a prediction model for chronic kidney disease from national population samples in Korea. The Korean National Health and Nutrition Examination Survey (n = 6565) was used for model development while validation was performed in two independent population samples, internal (n = 2921) and external datasets (n = 8166). Chronic kidney disease was defined as glomerular filtration rate < 60 mL/min per 1.73 m(2).
RESULTS: Seven factors - age, female gender, anaemia, hypertension, diabetes mellitus, cardiovascular disease and proteinuria - were significantly associated with prevalent chronic kidney disease. Integer scores were assigned to variables based on the magnitude of associations: 2 for age 50-59 years, 3 for age 60-69 years and 4 for age 70 years or older, and 1 for female gender, anaemia, hypertension, diabetes, proteinuria and cardiovascular dis ase. Based on the Youden index, a value of 4 or greater defined a high risk population with sensitivity 89%, specificity 71%, and positive predictive value 19%, and negative predictive value 99%. The area under the curve was 0.83 for the development set, and 0.87 and 0.78 in the two validation datasets.
CONCLUSION: This prediction algorithm, weighted towards common non-invasive variables, had good performance characteristics in an Asian population, and provides new evidence of the similarity of the algorithms for Western and Eastern populations.
© 2011 The Authors. Nephrology © 2011 Asian Pacific Society of Nephrology.

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Year:  2012        PMID: 22171932     DOI: 10.1111/j.1440-1797.2011.01552.x

Source DB:  PubMed          Journal:  Nephrology (Carlton)        ISSN: 1320-5358            Impact factor:   2.506


  11 in total

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2.  An external validation of models to predict the onset of chronic kidney disease using population-based electronic health records from Salford, UK.

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4.  Evaluation of the Scored Questionnaire to Identify Individuals with Chronic Kidney Disease in a Community-based Screening Program in Rural North Carolina.

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6.  Performance of Diabetes and Kidney Disease Screening Scores in Contemporary United States and Korean Populations.

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Review 7.  Risk models to predict chronic kidney disease and its progression: a systematic review.

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8.  Predicting the prevalence of chronic kidney disease in the English population: a cross-sectional study.

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9.  Early detection of chronic kidney disease in low-income and middle-income countries: development and validation of a point-of-care screening strategy for India.

Authors:  Christina Bradshaw; Dimple Kondal; Maria E Montez-Rath; Jialin Han; Yuanchao Zheng; Roopa Shivashankar; Ruby Gupta; Nikhil Srinivasapura Venkateshmurthy; Prashant Jarhyan; Sailesh Mohan; Viswanathan Mohan; Mohammed K Ali; Shivani Patel; K M Venkat Narayan; Nikhil Tandon; Dorairaj Prabhakaran; Shuchi Anand
Journal:  BMJ Glob Health       Date:  2019-09-03

10.  Dietary intake, anthropometric measurements, biochemistry profile and their associations with chronic kidney disease and diabetes mellitus.

Authors:  Emily de S Ferreira; Luciana S da Silva; Glauce D da Costa; Tiago R Moreira; Luíza D Borges; Rosângela M M Cotta
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