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Performance of a Predictive Model for Long-Term Hemoglobin Response to Darbepoetin and Iron Administration in a Large Cohort of Hemodialysis Patients

Author

Listed:
  • Carlo Barbieri
  • Elena Bolzoni
  • Flavio Mari
  • Isabella Cattinelli
  • Francesco Bellocchio
  • José D Martin
  • Claudia Amato
  • Andrea Stopper
  • Emanuele Gatti
  • Iain C Macdougall
  • Stefano Stuard
  • Bernard Canaud

Abstract

Anemia management, based on erythropoiesis stimulating agents (ESA) and iron supplementation, has become an increasingly challenging problem in hemodialysis patients. Maintaining hemodialysis patients within narrow hemoglobin targets, preventing cycling outside target, and reducing ESA dosing to prevent adverse outcomes requires considerable attention from caregivers. Anticipation of the long-term response (i.e. at 3 months) to the ESA/iron therapy would be of fundamental importance for planning a successful treatment strategy. To this end, we developed a predictive model designed to support decision-making regarding anemia management in hemodialysis (HD) patients treated in center. An Artificial Neural Network (ANN) algorithm for predicting hemoglobin concentrations three months into the future was developed and evaluated in a retrospective study on a sample population of 1558 HD patients treated with intravenous (IV) darbepoetin alfa, and IV iron (sucrose or gluconate). Model inputs were the last 90 days of patients’ medical history and the subsequent 90 days of darbepoetin/iron prescription. Our model was able to predict individual variation of hemoglobin concentration 3 months in the future with a Mean Absolute Error (MAE) of 0.75 g/dL. Error analysis showed a narrow Gaussian distribution centered in 0 g/dL; a root cause analysis identified intercurrent and/or unpredictable events associated with hospitalization, blood transfusion, and laboratory error or misreported hemoglobin values as the main reasons for large discrepancy between predicted versus observed hemoglobin values. Our ANN predictive model offers a simple and reliable tool applicable in daily clinical practice for predicting the long-term response to ESA/iron therapy of HD patients.

Suggested Citation

  • Carlo Barbieri & Elena Bolzoni & Flavio Mari & Isabella Cattinelli & Francesco Bellocchio & José D Martin & Claudia Amato & Andrea Stopper & Emanuele Gatti & Iain C Macdougall & Stefano Stuard & Berna, 2016. "Performance of a Predictive Model for Long-Term Hemoglobin Response to Darbepoetin and Iron Administration in a Large Cohort of Hemodialysis Patients," PLOS ONE, Public Library of Science, vol. 11(3), pages 1-18, March.
  • Handle: RePEc:plo:pone00:0148938
    DOI: 10.1371/journal.pone.0148938
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