Abstract
In most variance-based sensitivity analysis (SA) approaches applied to biomechanical models, statistical independence of the model input is assumed. However, often the model inputs are correlated. This might alter the interpretation of the SA results, which may severely impact the guidance provided during model development and personalization. Potential reasons for the infrequent usage of SA techniques that account for input correlation are the associated high computational costs, especially for models with many parameters, and the fact that the input correlation structure is often unknown. The aim of this study was to propose an efficient correlated global sensitivity analysis method by applying a surrogate model-based approach. Furthermore, this article demonstrates how correlated SA should be interpreted and how the applied method can guide the modeler during model development and personalization, even when the correlation structure is not entirely known beforehand. The proposed methodology was applied to a typical example of a pulse wave propagation model and resulted in accurate SA results that could be obtained at a theoretically 27,000× lower computational cost compared to the correlated SA approach without employing a surrogate model. Furthermore, our results demonstrate that input correlations can significantly affect SA results, which emphasizes the need to thoroughly investigate the effect of input correlations during model development. We conclude that our proposed surrogate-based SA approach allows modelers to efficiently perform correlated SA to complex biomechanical models and allows modelers to focus on input prioritization, input fixing and model reduction, or assessing the dependency structure between parameters.
Original language | English |
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Article number | e3797 |
Number of pages | 29 |
Journal | International Journal for Numerical Methods in Biomedical Engineering |
Volume | 40 |
Issue number | 2 |
DOIs | |
Publication status | Published - Feb 2024 |
Funding
This study was supported by the European Union's Horizon 2020 research and innovation programme through the Research and Innovation Actions \u201CIn Silico World: Lowering barriers to ubiquitous adoption of In Silico Trials\u201D (grant agreement No. 101016503) and \u201CSIMCor: In\u2010Silico testing and validation of Cardiovascular IMplantable devices\u201D (grant agreement No. 101017578).
Keywords
- correlated input
- pulse wave propagation model
- sensitivity analysis
- surrogate modeling
- Uncertainty
- Analysis of Variance