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Deep learning to detect catheter tips in vivo during photoacoustic-guided catheter interventions : Invited Presentation

机译:深度学习在光声引导的导管干预过程中检测体内导管尖端:特邀演讲

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Catheter guidance is typically performed with fluoroscopy, which requires patient and operator exposure to ionizing radiation. Our group is exploring robotic photoacoustic imaging as an alternative to fluoroscopy to track catheter tips. However, the catheter tip segmentation step in the photoacoustic-based robotic visual servoing algorithm is limited by the presence of confusing photoacoustic artifacts. We previously demonstrated that a deep neural network is capable of detecting photoacoustic sources in the presence of artifacts in simulated, phantom, and in vivo data. This paper directly compares the in vivo results obtained with linear and phased ultrasound receiver arrays. Two convolutional neural networks (CNNs) were trained to detect point sources in simulated photoacoustic channel data and tested with in vivo images from a swine catheterization procedure. The CNN trained with a linear array receiver model correctly classified 88.8% of sources, and the CNN trained with a phased array receiver model correctly classified 91.4% of sources. These results demonstrate that a deep learning approach to photoacoustic image formation is capable of detecting catheter tips during interventional procedures. Therefore, the proposed approach is a promising replacement to the segmentation step in photoacoustic-based robotic visual servoing algorithms.
机译:导管的引导通常采用荧光检查法进行,这需要患者和操作人员暴露于电离辐射下。我们的小组正在探索机器人光声成像技术,以替代荧光透视跟踪导管尖端。但是,基于光声的机器人视觉伺服算法中的导管尖端分割步骤受到光声伪影混乱的限制。我们先前证明了深层神经网络能够在模拟,幻像和体内数据中存在伪像的情况下检测光声源。本文直接比较了使用线性和相控超声接收器阵列获得的体内结果。训练了两个卷积神经网络(CNN),以检测模拟的光声通道数据中的点源,并使用来自猪导管插入程序的体内图像进行测试。用线性阵列接收机模型训练的CNN正确分类了88.8%的源,使用相控阵接收机模型训练的CNN正确分类了91.4%的源。这些结果表明,用于光声图像形成的深度学习方法能够在介入过程中检测导管尖端。因此,提出的方法是基于光声的机器人视觉伺服算法中分割步骤的有希望的替代方法。

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