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Improved Glomerular Filtration Rate Estimation by an Artificial Neural Network

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Listed:
  • Xun Liu
  • Xiaohua Pei
  • Ningshan Li
  • Yunong Zhang
  • Xiang Zhang
  • Jinxia Chen
  • Linsheng Lv
  • Huijuan Ma
  • Xiaoming Wu
  • Weihong Zhao
  • Tanqi Lou

Abstract

Background: Accurate evaluation of glomerular filtration rates (GFRs) is of critical importance in clinical practice. A previous study showed that models based on artificial neural networks (ANNs) could achieve a better performance than traditional equations. However, large-sample cross-sectional surveys have not resolved questions about ANN performance. Methods: A total of 1,180 patients that had chronic kidney disease (CKD) were enrolled in the development data set, the internal validation data set and the external validation data set. Additional 222 patients that were admitted to two independent institutions were externally validated. Several ANNs were constructed and finally a Back Propagation network optimized by a genetic algorithm (GABP network) was chosen as a superior model, which included six input variables; i.e., serum creatinine, serum urea nitrogen, age, height, weight and gender, and estimated GFR as the one output variable. Performance was then compared with the Cockcroft-Gault equation, the MDRD equations and the CKD-EPI equation. Results: In the external validation data set, Bland-Altman analysis demonstrated that the precision of the six-variable GABP network was the highest among all of the estimation models; i.e., 46.7 ml/min/1.73 m2 vs. a range from 71.3 to 101.7 ml/min/1.73 m2, allowing improvement in accuracy (15% accuracy, 49.0%; 30% accuracy, 75.1%; 50% accuracy, 90.5% [P

Suggested Citation

  • Xun Liu & Xiaohua Pei & Ningshan Li & Yunong Zhang & Xiang Zhang & Jinxia Chen & Linsheng Lv & Huijuan Ma & Xiaoming Wu & Weihong Zhao & Tanqi Lou, 2013. "Improved Glomerular Filtration Rate Estimation by an Artificial Neural Network," PLOS ONE, Public Library of Science, vol. 8(3), pages 1-9, March.
  • Handle: RePEc:plo:pone00:0058242
    DOI: 10.1371/journal.pone.0058242
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