Pulmonary response prediction through personalized basis functions in a virtual patient model

Trudy Caljé-van der Klei*, Qianhui Sun, J Geoffrey Chase, Cong Zhou, Merryn H Tawhai, Jennifer L Knopp, Knut Möller, Serge J Heines, Dennis C Bergmans, Geoffrey M Shaw

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

7 Downloads (Pure)

Abstract

BACKGROUND AND OBJECTIVE: Recruitment maneuvers with subsequent positive-end-expiratory-pressure (PEEP) have proven effective in recruiting lung volume and preventing alveoli collapse. However, determining a safe, effective, and patient-specific PEEP is not standardized, and this more optimal PEEP level evolves with patient condition, requiring personalised monitoring and care approaches to maintain optimal ventilation settings. METHODS: This research examines 3 physiologically relevant basis function sets (exponential, parabolic, cumulative) to enable better prediction of elastance evolution for a virtual patient or digital twin model of MV lung mechanics, including novel elements to model and predict distension elastance. Prediction accuracy and robustness are validated against recruitment maneuver data from 18 volume-controlled ventilation (VCV) patients at 7 different baseline PEEP levels (0 to 12 cmH O) and 14 pressure-controlled ventilation (PCV) patients at 4 different baseline PEEP levels (6 to 12 cmH O), yielding 623 and 294 prediction cases, respectively. Predictions were made up to 12 cmH O of added PEEP ahead, covering 6 × 2 cmH O PEEP steps. RESULTS: The 3 basis function sets yield median absolute peak inspiratory pressure (PIP) prediction error of 1.63 cmH O for VCV patients, and median peak inspiratory volume (PIV) prediction error of 0.028 L for PCV patients. The exponential basis function set yields a better trade-off of overall performance across VCV and PCV prediction than parabolic and cumulative basis function sets from other studies. Comparing predicted and clinically measured distension prediction in VCV demonstrated consistent, robust high accuracy with R  = 0.90-0.95. CONCLUSIONS: The results demonstrate recruitment mechanics are best captured by an exponential basis function across different mechanical ventilation modes, matching physiological expectations, and accurately capture, for the first time, distension mechanics to within 5-10 % accuracy. Enabling the risk of lung injury to be predicted before changing ventilator settings. The overall outcomes significantly extend and more fully validate this digital twin or virtual mechanical ventilation patient model.
Original languageEnglish
Article number107988
Number of pages15
JournalComputer Methods and Programs in Biomedicine
Volume244
DOIs
Publication statusPublished - Feb 2024

Keywords

  • Basis function
  • Critical care
  • Digital twin
  • Dynamic functional residual capacity
  • Elastance
  • Lung distension
  • Mechanical ventilation
  • Prediction
  • Pressure-volume loop
  • VILI
  • Virtual patient

Cite this