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Real-time ultrasound transducer localization in fluoroscopy images by transfer learning from synthetic training data.

机译:通过从综合训练数据中转移学习,可以在荧光检查图像中实时定位超声换能器。

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摘要

The fusion of image data from trans-esophageal echography (TEE) and X-ray fluoroscopy is attracting increasing interest in minimally-invasive treatment of structural heart disease. In order to calculate the needed transformation between both imaging systems, we employ a discriminative learning (DL) based approach to localize the TEE transducer in X-ray images. The successful application of DL methods is strongly dependent on the available training data, which entails three challenges: (1) the transducer can move with six degrees of freedom meaning it requires a large number of images to represent its appearance, (2) manual labeling is time consuming, and (3) manual labeling has inherent errors. This paper proposes to generate the required training data automatically from a single volumetric image of the transducer. In order to adapt this system to real X-ray data, we use unlabeled fluoroscopy images to estimate differences in feature space density and correct covariate shift by instance weighting. Two approaches for instance weighting, probabilistic classification and Kullback-Leibler importance estimation (KLIEP), are evaluated for different stages of the proposed DL pipeline. An analysis on more than 1900 images reveals that our approach reduces detection failures from 7.3% in cross validation on the test set to zero and improves the localization error from 1.5 to 0.8mm. Due to the automatic generation of training data, the proposed system is highly flexible and can be adapted to any medical device with minimal efforts.
机译:来自经食道回波描记术(TEE)和X射线透视的图像数据融合在结构性心脏病的微创治疗中引起了越来越多的兴趣。为了计算两个成像系统之间所需的变换,我们采用基于判别学习(DL)的方法在X射线图像中定位TEE换能器。 DL方法的成功应用在很大程度上取决于可用的训练数据,这带来了三个挑战:(1)换能器可以以六个自由度移动,这意味着它需要大量图像来表示其外观;(2)手动标记这很耗时,并且(3)手动标记存在固有的错误。本文建议从换能器的单个体积图像自动生成所需的训练数据。为了使该系统适应实际的X射线数据,我们使用了未标记的透视图像来估计特征空间密度的差异并通过实例加权来纠正协变量偏移。对于提议的DL管道的不同阶段,评估了两种方法,例如加权,概率分类和Kullback-Leibler重要性估计(KLIEP)。对超过1900张图像的分析表明,我们的方法将在测试集上的交叉验证中的检测失败率从7.3%减少到零,并将定位误差从1.5mm改善到0.8mm。由于训练数据的自动生成,因此所提出的系统具有高度的灵活性,并且可以以最小的努力适用于任何医疗设备。

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