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Maria Fernanda Braggion-Santos, Dirk Lossnitzer, Sebastian Buss, Stephanie Lehrke, Andreas Doesch, Evangelos Giannitsis, Grigorios Korosoglou, Hugo A. Katus, Henning Steen, Late gadolinium enhancement assessed by cardiac magnetic resonance imaging in heart transplant recipients with different stages of cardiac allograft vasculopathy, European Heart Journal - Cardiovascular Imaging, Volume 15, Issue 10, October 2014, Pages 1125–1132, https://doi.org/10.1093/ehjci/jeu090
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Abstract
Cardiac allograft vasculopathy (CAV), which limits long-term survival after heart transplantation (HTX), is usually evaluated by coronary angiography (CA). Late gadolinium enhancement cardiac magnetic resonance (LGE-CMR) is a non-invasive technique that can detect CAV-related myocardial infarctions. We aimed to investigate the presence of LGE infarct-typical patterns in a large sample of HTX recipients and to correlate these findings with the severity of CAV assessed by CA.
LGE-CMR was performed in 132 HTX patients on a 1.5-T MRI scanner (Philips, Best, the Netherlands). Infarct-typical LGE areas were identified as bright lesions with subendocardial involvement. Infarct-atypical LGE was classified as follows: (i) right ventricle (RV) insertion, (ii) intramural, (iii) epicardial, and (iv) diffuse. CA was performed for the assessment of CAV (CAV0 = no lesion, CAV1 = mild lesions, CAV2 = moderate lesions, CAV3 = severe lesions, or mild/moderate lesions with allograft dysfunction). Infarct-typical LGE patterns were detected in 29 (22%) patients distributed in all groups and they were already present in nearly every fifth CAV0 patient, increasing significantly among CAV groups (CAV0 = 19%, CAV1 = 10%, CAV2 = 36%, and CAV3 = 71%; P < 0.01).
LGE-CMR was useful to identify myocardial scar possibly related to early CAV in a significant proportion of HTX recipients, otherwise classified as low-risk patients based on CA. Therefore, LGE-CMR could be helpful to intensify CAV monitoring, medical therapy, and clinical risk stratification.