Quantifying uncertainty bounds in anesthetic PKPD models

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Abstract

A major challenge faced when designing controllers to automate anesthetic drug delivery is the large variability that exists between and within patients. This intra- and inter-patient variability have been reported to lead to instability. Hence, defining and quantifying uncertainty bounds provides a mean to validate the control design, ensure its stability and assess performance. In this work, the intra- and inter-patient variability measured from thiopental induction data is used to define uncertainty bounds. It is shown that these bounds can be reduced by up to 40% when using a patient-specific model as compared to a population-normed model. It is also shown that identifying only the overall static gain of the patient system already decreases significantly this uncertainty.

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Bibian, S., Dumont, G. A., Huzmezan, M., & Ries, C. R. (2004). Quantifying uncertainty bounds in anesthetic PKPD models. In Annual International Conference of the IEEE Engineering in Medicine and Biology - Proceedings (Vol. 26 I, pp. 786–789). https://doi.org/10.1109/iembs.2004.1403276

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