A deep-learning approach for myocardial fibrosis detection in early contrast-enhanced cardiac CT images

Marco Penso*, Mario Babbaro, Sara Moccia, Andrea Baggiano, Maria Ludovica Carerj, Marco Guglielmo, Laura Fusini, Saima Mushtaq, Daniele Andreini, Mauro Pepi, Gianluca Pontone, Enrico G. Caiani

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

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Abstract

Aims: Diagnosis of myocardial fibrosis is commonly performed with late gadolinium contrast-enhanced (CE) cardiac magnetic resonance (CMR), which might be contraindicated or unavailable. Coronary computed tomography (CCT) is emerging as an alternative to CMR. We sought to evaluate whether a deep learning (DL) model could allow identification of myocardial fibrosis from routine early CE-CCT images. Methods and results: Fifty consecutive patients with known left ventricular (LV) dysfunction (LVD) underwent both CE-CMR and (early and late) CE-CCT. According to the CE-CMR patterns, patients were classified as ischemic (n = 15, 30%) or non-ischemic (n = 35, 70%) LVD. Delayed enhancement regions were manually traced on late CE-CCT using CE-CMR as reference. On early CE-CCT images, the myocardial sectors were extracted according to AHA 16-segment model and labeled as with scar or not, based on the late CE-CCT manual tracing. A DL model was developed to classify each segment. A total of 44,187 LV segments were analyzed, resulting in accuracy of 71% and area under the ROC curve of 76% (95% CI: 72%−81%), while, with the bull’s eye segmental comparison of CE-CMR and respective early CE-CCT findings, an 89% agreement was achieved. Conclusions: DL on early CE-CCT acquisition may allow detection of LV sectors affected with myocardial fibrosis, thus without additional contrast-agent administration or radiational dose. Such tool might reduce the user interaction and visual inspection with benefit in both efforts and time.

Original languageEnglish
Article number1151705
JournalFrontiers in Cardiovascular Medicine
Volume10
DOIs
Publication statusPublished - 2023

Keywords

  • artificial intelligence
  • cardiac computed tomography
  • deep learning
  • delayed enhancement
  • myocardial fibrosis
  • scar tissue classification

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