Abstract

Background: The identification of aortic dissection (AD) at baseline plays a crucial role in clinical practice. Non-contrast CT scans are widely available, convenient, and easy to perform. However, the detection of AD on non-contrast CT scans by radiologists currently lacks sensitivity and is suboptimal.Methods: A total of 452 patients who underwent aortic CT angiography (CTA) were enrolled retrospectively from two medical centers in China to form the internal cohort (341 patients, 139 patients with AD, 202 patients with non-AD) and the external testing cohort (111 patients, 46 patients with AD, 65 patients with non-AD). The internal cohort was divided into the training cohort (n = 238), validation cohort (n = 35), and internal testing cohort (n = 68). Morphological characteristics were extracted from the aortic segmentation. A deep-integrated model based on the Gaussian Naive Bayes algorithm was built to differentiate AD from non-AD, using the combination of the three-dimensional (3D) deep-learning model score and morphological characteristics. The areas under the receiver operating characteristic curve (AUCs), accuracy, sensitivity, and specificity were used to evaluate the model performance. The proposed model was also compared with the subjective assessment of radiologists.Results: After the combination of all the morphological characteristics, our proposed deep-integrated model significantly outperformed the 3D deep-learning model (AUC: 0.948 vs. 0.803 in the internal testing cohort and 0.969 vs. 0.814 in the external testing cohort, both p < 0.05). The accuracy, sensitivity, and specificity of our model reached 0.897, 0.862, and 0.923 in the internal testing cohort and 0.730, 0.978, and 0.554 in the external testing cohort, respectively. The accuracy for AD detection showed no significant difference between our model and the radiologists (p > 0.05).Conclusion: The proposed model presented good performance for AD detection on non-contrast CT scans; thus, early diagnosis and prompt treatment would be available.

Highlights

  • Aortic dissection (AD) is a life-threatening disease for which early diagnosis and treatment are critical

  • The accuracy for AD detection showed no significant difference between our model and the radiologists (p > 0.05)

  • The presence of AD was confirmed by the CT angiography (CTA) interpretation results and 191 patients were diagnosed with AD

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Summary

Introduction

Aortic dissection (AD) is a life-threatening disease for which early diagnosis and treatment are critical. Patients may present with symptoms such as sudden onset of severe chest pain or back pain. CT angiography (CTA) is the best imaging modality for identifying displaced intimal flaps in contrast-enhanced scans, with a sensitivity and specificity approaching 100% [2, 3]. Many patients who present atypical or asymptomatic AD in the early stages have been missed diagnosed and deteriorate rapidly [5]. Technical level of the radiologists for AD detection on non-contrast CT scans is suboptimal and currently lacks sensitivity [9]. Non-contrast CT scans are widely available, convenient, and easy to perform. The detection of AD on non-contrast CT scans by radiologists currently lacks sensitivity and is suboptimal

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