Deep Learning for High Speed Optical Coherence Elastography With a Fiber Scanning Endoscope

Maximilian Neidhardt;Sarah Latus;Tim Eixmann;Gereon Hüttmann;Alexander Schlaefer
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Abstract

Tissue stiffness is related to soft tissue pathologies and can be assessed through palpation or via clinical imaging systems, e.g., ultrasound or magnetic resonance imaging. Typically, the image based approaches are not suitable during interventions, particularly for minimally invasive surgery. To this end, we present a miniaturized fiber scanning endoscope for fast and localized elastography. Moreover, we propose a deep learning based signal processing pipeline to account for the intricate data and the need for real-time estimates. Our elasticity estimation approach is based on imaging complex and diffuse wave fields that encompass multiple wave frequencies and propagate in various directions. We optimize the probe design to enable different scan patterns. To maximize temporal sampling while maintaining three-dimensional information we define a scan pattern in a conical shape with a temporal frequency of 5.05kHz. To efficiently process the image sequences of complex wave fields we consider a spatio-temporal deep learning network. We train the network in an end-to-end fashion on measurements from phantoms representing multiple elasticities. The network is used to obtain localized and robust elasticity estimates, allowing to create elasticity maps in real-time. For 2D scanning, our approach results in a mean absolute error of 6.31(576)kPa compared to 11.33(1278)kPa for conventional phase tracking. For scanning without estimating the wave direction, the novel 3D method reduces the error to 4.48(363)kPa compared to 19.75(2182)kPa for the conventional 2D method. Finally, we demonstrate feasibility of elasticity estimates in ex-vivo porcine tissue.
使用光纤扫描内窥镜进行高速光学相干弹性成像的深度学习
组织硬度与软组织病理有关,可通过触诊或临床成像系统(如超声或磁共振成像)进行评估。通常,基于图像的入路不适用于干预,特别是微创手术。为此,我们提出了一种小型纤维扫描内窥镜,用于快速和局部弹性成像。此外,我们提出了一个基于深度学习的信号处理管道,以考虑复杂的数据和实时估计的需求。我们的弹性估计方法是基于成像复波和漫射波场,包括多个波频率,并在各个方向传播。我们优化探针设计,以实现不同的扫描模式。为了在保持三维信息的同时最大化时间采样,我们定义了一个时间频率为5.05kHz的锥形扫描模式。为了有效地处理复杂波场的图像序列,我们考虑了一个时空深度学习网络。我们以端到端方式对代表多个弹性的幻影的测量进行训练。该网络用于获得局部和鲁棒弹性估计,允许实时创建弹性图。对于二维扫描,我们的方法的平均绝对误差为6.31(576)kPa,而传统相位跟踪的平均绝对误差为11.33(1278)kPa。在不估计波向的情况下,三维扫描方法的误差从传统二维扫描方法的19.75(2182)kPa减小到4.48(363)kPa。最后,我们证明了弹性估计在离体猪组织中的可行性。
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