Litcius/Paper detail

Function-on-Function Kriging, With Applications to Three-Dimensional Printing of Aortic Tissues

Jialei Chen, Simon Mak, V. Roshan Joseph, Chuck Zhang

2020Technometrics23 citationsDOIOpen Access PDF

Abstract

Three-dimensional printed medical prototypes, which use synthetic metamaterials to mimic biological tissue, are becoming increasingly important in urgent surgical applications. However, the mimicking of tissue mechanical properties via three-dimensional printed metamaterial can be difficult and time-consuming, due to the functional nature of both inputs (metamaterial structure) and outputs (mechanical response curve). To deal with this, we propose a novel function-on-function kriging model for efficient emulation and tissue-mimicking optimization. For functional inputs, a key novelty of our model is the spectral-distance (SpeD) correlation function, which captures important spectral differences between two functional inputs. Dependencies for functional outputs are then modeled via a co-kriging framework. We further adopt shrinkage priors on both the input spectra and the output co-kriging covariance matrix, which allows the emulator to learn and incorporate important physics (e.g., dominant input frequencies, output curve properties). Finally, we demonstrate the effectiveness of the proposed SpeD emulator in a real-world study on mimicking human aortic tissue, and show that it can provide quicker and more accurate tissue-mimicking performance compared to existing methods in the medical literature.

Topics & Concepts

EmulationComputer scienceNoveltyCovariancePrior probabilityKey (lock)Biomedical engineeringArtificial intelligenceAlgorithmBiological systemMetamaterialDataflowPattern recognition (psychology)Realization (probability)Flexibility (engineering)Model Reduction and Neural Networks3D Shape Modeling and AnalysisComputer Graphics and Visualization Techniques