Evaluation of multiple deep neural networks for detection of intracranial dural arteriovenous fistula on susceptibility weighted angiography imaging.

IF 1.3 Q4 NEUROIMAGING Neuroradiology Journal Pub Date : 2024-08-01 DOI:10.1177/19714009241269491
Jithin Sivan Sulaja, Santhosh K Kannath, Viswanadh Kalaparti Sri Venkata Ganesh, Bejoy Thomas
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Abstract

Background: The natural history of intracranial dural arteriovenous fistula (DAVF) is variable and early diagnosis is crucial in order to positively impact the clinical course of aggressive DAVF. Artificial intelligence (AI) based techniques can be promising in this regard, and in this study, we used various deep neural network (DNN) architectures to determine whether DAVF could be reliably identified on susceptibility-weighted angiography images (SWAN).

Materials and methods: A total of 3965 SWAN image slices from 30 digital subtraction angiographically proven DAVF patients and 4380 SWAN image slices from 40 age-matched patients with normal MRI findings as control group were included. The images were categorized as either DAVF or normal and the data was trained using various DNN such as VGG-16, EfficientNet-B0, and ResNet-50.

Results: Various DNN architectures showed the accuracy of 95.96% (VGG-16), 91.75% (EfficientNet-B0), and 86.23% (ResNet-50) on the SWAN image dataset. ROC analysis yielded an area under the curve of 0.796 (p < .001), best for VGG-16 model. Criterion of seven consecutive positive slices for DAVF diagnosis yielded a sensitivity of 74.68% with a specificity of 69.15%, while setting eight slices improved the sensitivity to above 80.38%, with a decrease of specificity up to 56.38%. Based on seven consecutive positive slices criteria, EfficientNet-B0 yielded a sensitivity of 73.21% with a specificity of 45.92% and ResNet-50 yielded a sensitivity of 72.39% with a specificity of 67.42%.

Conclusion: This study shows that DNN can extract discriminative features of SWAN for the classification of DAVF from normal with good accuracy, reasonably good sensitivity and specificity.

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评估多种深度神经网络在感性加权血管造影成像中检测颅内硬脑膜动静脉瘘的效果。
背景:颅内硬脑膜动静脉瘘(DAVF)的自然病史多变,为了对侵袭性 DAVF 的临床病程产生积极影响,早期诊断至关重要。基于人工智能(AI)的技术在这方面大有可为,在本研究中,我们使用了各种深度神经网络(DNN)架构来确定能否在感度加权血管造影图像(SWAN)上可靠地识别出 DAVF:共纳入了 30 名经数字减影血管造影证实的 DAVF 患者的 3965 张 SWAN 图像切片,以及作为对照组的 40 名年龄匹配、磁共振成像结果正常的患者的 4380 张 SWAN 图像切片。这些图像被归类为 DAVF 或正常图像,并使用各种 DNN(如 VGG-16、EfficientNet-B0 和 ResNet-50)对数据进行训练:各种 DNN 架构在 SWAN 图像数据集上的准确率分别为 95.96%(VGG-16)、91.75%(EfficientNet-B0)和 86.23%(ResNet-50)。ROC 分析得出的曲线下面积为 0.796(p < .001),VGG-16 模型最佳。DAVF 诊断标准为连续 7 个阳性切片,灵敏度为 74.68%,特异度为 69.15%,而设置 8 个切片则将灵敏度提高到 80.38% 以上,特异度降低到 56.38%。基于七个连续阳性切片标准,EfficientNet-B0 的灵敏度为 73.21%,特异度为 45.92%;ResNet-50 的灵敏度为 72.39%,特异度为 67.42%:本研究表明,DNN 可以提取 SWAN 的判别特征,用于 DAVF 和正常人的分类,具有良好的准确性、合理的灵敏度和特异性。
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来源期刊
Neuroradiology Journal
Neuroradiology Journal NEUROIMAGING-
CiteScore
2.50
自引率
0.00%
发文量
101
期刊介绍: NRJ - The Neuroradiology Journal (formerly Rivista di Neuroradiologia) is the official journal of the Italian Association of Neuroradiology and of the several Scientific Societies from all over the world. Founded in 1988 as Rivista di Neuroradiologia, of June 2006 evolved in NRJ - The Neuroradiology Journal. It is published bimonthly.
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