4.6 Article

Segmenting computed tomograms for cardiac ablation using machine learning leveraged by domain knowledge encoding

Journal

FRONTIERS IN CARDIOVASCULAR MEDICINE
Volume 10, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fcvm.2023.1189293

Keywords

cardiac CT segmentation; machine learning; mathematical modeling; domain knowledge; atrial fibrillation; ablation

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This study combines mathematical models with machine learning and domain knowledge to segment cardiac CT images. The approach reduces the need for large training datasets while maintaining accuracy. The method was validated in independent datasets and showed promising results in a prospective study of atrial fibrillation ablation.
Background :Segmentation of computed tomography (CT) is important for many clinical procedures including personalized cardiac ablation for the management of cardiac arrhythmias. While segmentation can be automated by machine learning (ML), it is limited by the need for large, labeled training data that may be difficult to obtain. We set out to combine ML of cardiac CT with domain knowledge, which reduces the need for large training datasets by encoding cardiac geometry, which we then tested in independent datasets and in a prospective study of atrial fibrillation (AF) ablation.Methods :We mathematically represented atrial anatomy with simple geometric shapes and derived a model to parse cardiac structures in a small set of N = 6 digital hearts. The model, termed virtual dissection, was used to train ML to segment cardiac CT in N = 20 patients, then tested in independent datasets and in a prospective study.Results: In independent test cohorts (N = 160) from 2 Institutions with different CT scanners, atrial structures were accurately segmented with Dice scores of 96.7% in internal (IQR: 95.3%-97.7%) and 93.5% in external (IQR: 91.9%-94.7%) test data, with good agreement with experts (r = 0.99; p < 0.0001). In a prospective study of 42 patients at ablation, this approach reduced segmentation time by 85% (2.3 +/- 0.8 vs. 15.0 +/- 6.9 min, p < 0.0001), yet provided similar Dice scores to experts (93.9% (IQR: 93.0%-94.6%) vs. 94.4% (IQR: 92.8%-95.7%), p = NS).Conclusions: Encoding cardiac geometry using mathematical models greatly accelerated training of ML to segment CT, reducing the need for large training sets while retaining accuracy in independent test data. Combining ML with domain knowledge may have broad applications.

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