4.5 Article

Model-based computation of total stressed blood volume from a preload reduction manoeuvre

期刊

MATHEMATICAL BIOSCIENCES
卷 265, 期 -, 页码 28-39

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.mbs.2015.03.015

关键词

Stressed blood volume; Parameter identification; Cardiovascular system; Fluid therapy; Mathematical model

资金

  1. French Community of Belgium (Actions de Recherches Concertees)
  2. Belgian Funds for Scientific Research (F.R.S.-FNRS)
  3. EU Marie Curie Actions ( FP7-PEOPLE-IRSES)

向作者/读者索取更多资源

Total stressed blood volume is an important parameter for both doctors and engineers. From a medical point of view, it has been associated with the success or failure of fluid therapy, a primary treatment to manage acute circulatory failure. From an engineering point of view, it dictates the cardiovascular system's behavior in changing physiological situations. Current methods to determine this parameter involve repeated phases of circulatory arrests followed by fluid administration. In this work, a more straightforward method is developed using data from a preload reduction manoeuvre. A simple six-chamber cardiovascular system model is used and its parameters are adjusted to pig experimental data. The parameter adjustment process has three steps: (I) compute nominal values for all model parameters; (2) determine the five most sensitive parameters; and (3) adjust only these five parameters. Stressed blood volume was selected by the algorithm, which emphasizes the importance of this parameter. The model was able to track experimental trends with a maximal root mean squared error of 29.2%. Computed stressed blood volume equals 486 +/- 117 ml or 15.7 +/- 3.6 ml/kg, which matches previous independent experiments on pigs, dogs and humans. The method proposed in this work thus provides a simple way to compute total stressed blood volume from usual hemodynamic data. (C) 2015 Elsevier Inc. All rights reserved.

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