Modality-agnostic, patient-specific digital twins modeling temporally varying digestive motion
Jorge Tapias Gomez, Nishant Nadkarni, Lando S. Bosma, Jue Jiang, Ergys D. Subashi, William P. Segars, James M. Balter, Mert R Sabuncu, Neelam Tyagi, Harini Veeraraghavan

TL;DR
This study develops patient-specific digital twins simulating GI motion to evaluate deformable image registration accuracy and dose warping in dynamic, complex regions, using a semi-automated pipeline across multiple imaging modalities.
Contribution
The paper introduces a pipeline for creating realistic, patient-specific digital twins of GI motion, enabling detailed validation of DIR methods and dose mapping accuracy in highly mobile organs.
Findings
Generated digital twins closely match real gastric motion amplitudes.
Pipeline provides detailed quantitative metrics for DIR performance.
Enables rigorous testing of dose warping accuracy in dynamic regions.
Abstract
Objective: Clinical implementation of deformable image registration (DIR) requires voxel-based spatial accuracy metrics such as manually identified landmarks, which are challenging to implement for highly mobile gastrointestinal (GI) organs. To address this, patient-specific digital twins (DT) modeling temporally varying motion were created to assess the accuracy of DIR methods. Approach: 21 motion phases simulating digestive GI motion as 4D sequences were generated from static 3D patient scans using published analytical GI motion models through a semi-automated pipeline. Eleven datasets, including six T2w FSE MRI (T2w MRI), two T1w 4D golden-angle stack-of-stars, and three contrast-enhanced CT scans. The motion amplitudes of the DTs were assessed against real patient stomach motion amplitudes extracted from independent 4D MRI datasets. The generated DTs were then used to assess six…
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