Segmentation of X‐ray coronary angiography with an artificial intelligence deep learning model: Impact in operator visual assessment of coronary stenosis severity

Catheterization and Cardiovascular Interventions(2023)

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摘要
Abstract Background Visual assessment of the percentage diameter stenosis (%DS VE ) of lesions is essential in coronary angiography (CAG) interpretation. We have previously developed an artificial intelligence (AI) model capable of accurate CAG segmentation. We aim to compare operators’ %DS VE in angiography versus AI‐segmented images. Methods Quantitative coronary analysis (QCA) %DS (%DS QCA ) was previously performed in our published validation dataset. Operators were asked to estimate %DS VE of lesions in angiography versus AI‐segmented images in separate sessions and differences were assessed using angiography %DS QCA as reference. Results A total of 123 lesions were included. %DS VE was significantly higher in both the angiography (77% ± 20% vs. 56% ± 13%, p < 0.001) and segmentation groups (59% ± 20% vs. 56% ± 13%, p < 0.001), with a much smaller absolute %DS difference in the latter. For lesions with %DS QCA of 50%–70% (60% ± 5%), an even higher discrepancy was found (angiography: 83% ± 13% vs. 60% ± 5%, p < 0.001; segmentation: 63% ± 15% vs. 60% ± 5%, p < 0.001). Similar, less pronounced, findings were observed for %DS QCA < 50% lesions, but not %DS QCA > 70% lesions. Agreement between %DS QCA /%DS VE across %DS QCA strata (<50%, 50%–70%, >70%) was approximately twice in the segmentation group (60.4% vs. 30.1%; p < 0.001). %DS VE inter‐operator differences were smaller with segmentation. Conclusion %DS VE was much less discrepant with segmentation versus angiography. Overestimation of %DS QCA < 70% lesions with angiography was especially common. Segmentation may reduce %DS VE overestimation and thus unwarranted revascularization.
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关键词
coronary angiography,deep learning,visual assessment,deep learning model,segmentation
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