Taghavi Reza Moein, Shah Amol, Filkov Vladimir, Goldman Roger Eric
Department of Radiology, UC Davis School of Medicine, University of California, Davis, 4860 Y Street, Suite 3100, Sacramento, CA, 95817-2307, USA.
Department of Computer Science, University of California, Davis, Davis, CA, USA.
J Imaging Inform Med. 2025 Jan 9. doi: 10.1007/s10278-024-01351-z.
To explore the information in routine digital subtraction angiography (DSA) and evaluate deep learning algorithms for automated identification of anatomic location in DSA sequences.
DSA of the abdominal aorta, celiac, superior mesenteric, inferior mesenteric, and bilateral external iliac arteries was labeled with the anatomic location from retrospectively collected endovascular procedures performed between 2010 and 2020 at a tertiary care medical center. "Key" images within each sequence demonstrating the parent vessel and the first bifurcation were additionally labeled. Mode models aggregating single image predictions, trained with the full or "key" datasets, and a multiple instance learning (MIL) model were developed for location classification of the DSA sequences. Model performance was evaluated with a primary endpoint of multiclass classification accuracy and compared by McNemar's test.
A total of 819 unique angiographic sequences from 205 patients and 276 procedures were included in the training, validation, and testing data and split into partitions at the patient level to preclude data leakage. The data demonstrate substantial information sparsity as a minority of the images were designated as "key" with sufficient information for localization by a domain expert. A Mode model, trained and tested with "key" images, demonstrated an overall multiclass classification accuracy of 0.975 (95% CI 0.941-1). A MIL model, trained and tested with all data, demonstrated an overall multiclass classification accuracy of 0.966 (95% CI 0.932-0.992). Both the Mode model with "key" images (p < 0.001) and MIL model (p < 0.001) significantly outperformed a Mode model trained and tested with the full dataset. The MIL model additionally automatically identified a set of top-5 images with an average overlap of 92.5% to manually labelled "key" images.
Deep learning algorithms can identify anatomic locations in abdominopelvic DSA with high fidelity using manual or automatic methods to manage information sparsity.
探索常规数字减影血管造影(DSA)中的信息,并评估深度学习算法在DSA序列中自动识别解剖位置的能力。
对腹主动脉、腹腔干、肠系膜上动脉、肠系膜下动脉以及双侧髂外动脉的DSA进行标记,标记依据为2010年至2020年在一家三级医疗中心进行的回顾性收集的血管内手术中的解剖位置。每个序列中展示母血管和第一分支的“关键”图像被额外标记。开发了聚合单图像预测的模式模型,使用完整或“关键”数据集进行训练,以及一个多实例学习(MIL)模型用于DSA序列的位置分类。模型性能以多类分类准确率作为主要终点进行评估,并通过McNemar检验进行比较。
来自205名患者和276例手术的总共819个独特血管造影序列被纳入训练、验证和测试数据,并在患者层面进行划分以防止数据泄露。数据显示出大量的信息稀疏性,因为只有少数图像被领域专家指定为具有足够定位信息的“关键”图像。一个使用“关键”图像进行训练和测试的模式模型,其总体多类分类准确率为0.975(95%可信区间0.941 - 1)。一个使用所有数据进行训练和测试的MIL模型,其总体多类分类准确率为0.966(95%可信区间0.932 - 0.992)。使用“关键”图像的模式模型(p < 0.001)和MIL模型(p < )均显著优于使用完整数据集进行训练和测试的模式模型。MIL模型还自动识别出一组前5的图像,与手动标记的“关键”图像平均重叠率为92.5%。
深度学习算法可以使用手动或自动方法来管理信息稀疏性,从而在腹盆腔DSA中高保真地识别解剖位置。