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AutoDVT: Joint Real-Time Classification for Vein Compressibility Analysis in Deep Vein Thrombosis Ultrasound Diagnostics

机译:AutoDVT:联合实时分类,用于深静脉血栓形成超声诊断中的静脉可压缩性分析

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We propose a dual-task convolutional neural network (CNN) to fully automate the real-time diagnosis of deep vein thrombosis (DVT). DVT can be reliably diagnosed through evaluation of vascular compressibility at anatomically defined landmarks in streams of ultrasound (US) images. The combined real-time evaluation of these tasks has never been achieved before. As proof-of-concept, we evaluate our approach on two selected landmarks of the femoral vein, which can be identified with high accuracy by our approach. Our CNN is able to identify if a vein fully compresses with a F1 score of more than 90% while applying manual pressure with the ultrasound probe. Fully compressible veins robustly rule out DVT and such patients do not need to be referred to further specialist examination. We have evaluated our method on 1150 5-10s compression image sequences from 115 healthy volunteers, which results in a data set size of approximately 200k labelled images. Our method yields a theoretical inference frame rate of more than 500 fps and we thoroughly evaluate the performance of 15 possible configurations.
机译:我们提出了双任务卷积神经网络(CNN),以完全自动化深静脉血栓形成(DVT)的实时诊断。通过评估超声(US)图像流中解剖定义的界标处的血管可压缩性,可以可靠地诊断DVT。以前从未实现过对这些任务的实时综合评估。作为概念验证,我们在两个选定的股静脉界标上评估我们的方法,该方法可以通过我们的方法高精度地进行识别。我们的CNN能够识别出在使用超声波探头施加手动压力的同时,静脉是否以F1分数超过90%完全受压。完全可压缩的静脉强有力地排除了DVT,因此此类患者无需接受进一步的专科检查。我们对115位健康志愿者的1150个5-10s压缩图像序列进行了评估,得出的数据集大小约为200k标记图像。我们的方法产生的理论推断帧速率超过500 fps,并且我们全面评估了15种可能配置的性能。

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