A system theory based digital model for predicting the cumulative fluid balance course in intensive care patients

被引:0
|
作者
Polz, Mathias [1 ]
Bergmoser, Katharina [1 ,2 ]
Horn, Martin [3 ]
Schoerghuber, Michael [4 ]
Lozanovic, Jasmina [1 ]
Rienmueller, Theresa [1 ]
Baumgartner, Christian [1 ]
机构
[1] Graz Univ Technol, Inst Hlth Care Engn, European Testing Ctr Med Devices, Graz, STM, Austria
[2] CBmed Ctr Biomarker Res Med, Graz, STM, Austria
[3] Graz Univ Technol, Inst Automat & Control, Graz, STM, Austria
[4] Med Univ Graz, Dept Anesthesiol & Intens Care Med, Graz, STM, Austria
关键词
fluid balance; system theory; transfer function model; prediction; intensive care; decision; support; CLOSED-LOOP CONTROL; CRITICALLY-ILL PATIENTS; ACUTE KIDNEY INJURY; SEPTIC SHOCK; ARTIFICIAL-INTELLIGENCE; INSULIN DELIVERY; SEVERE SEPSIS; MANAGEMENT; MORTALITY; THERAPY;
D O I
10.3389/fphys.2023.1101966
中图分类号
Q4 [生理学];
学科分类号
071003 ;
摘要
Background: Surgical interventions can cause severe fluid imbalances in patients undergoing cardiac surgery, affecting length of hospital stay and survival. Therefore, appropriate management of daily fluid goals is a key element of postoperative intensive care in these patients. Because fluid balance is influenced by a complex interplay of patient-, surgery- and intensive care unit (ICU)-specific factors, fluid prediction is difficult and often inaccurate. Methods: A novel system theory based digital model for cumulative fluid balance (CFB) prediction is presented using recorded patient fluid data as the sole parameter source by applying the concept of a transfer function. Using a retrospective dataset of n = 618 cardiac intensive care patients, patientindividual models were created and evaluated. RMSE analyses and error calculations were performed for reasonable combinations of model estimation periods and clinically relevant prediction horizons for CFB. Results: Our models have shown that a clinically relevant time horizon for CFB prediction with the combination of 48 h estimation time and 8-16 h prediction time achieves high accuracy. With an 8-h prediction time, nearly 50% of CFB predictions are within +/- 0.5 L, and 77% are still within the clinically acceptable range of +/- 1.0 L. Conclusion: Our study has provided a promising proof of principle and may form the basis for further efforts in the development of computational models for fluid prediction that do not require large datasets for training and validation, as is the case with machine learning or AI-based models. The adaptive transfer function approach allows estimation of CFB course on a dynamically changing patient fluid balance system by simulating the response to the current fluid management regime, providing a useful digital tool for clinicians in daily intensive care.
引用
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页数:11
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