论文标题

使用数据驱动的非线性前术模拟对软组织变形的实时预测

Real-time Prediction of Soft Tissue Deformations Using Data-driven Nonlinear Presurgical Simulations

论文作者

Liu, Haolin, Han, Ye, Emerson, Daniel, Majditehran, Houriyeh, Wang, Qi, Rabin, Yoed, Kara, Levent Burak

论文摘要

成像方式为临床医生提供了对最低侵入性手术的目的解剖区域(ROI)的实时可视化。在该过程中,以高分辨率术前3D重建来获取低分辨率图像数据,以指导手术预制剂的执行。不幸的是,由于软化生物组织变形中潜在的较大菌株和非线性,在术前和术中成像阶段的ROI形状之间可能会观察到显着的不匹配,从而使外科手术预抗素的前素很容易失效。为了弥合两个成像阶段之间的差距,本文提出了一种基于人工神经网络的数据驱动方法,用于通过稀疏注册的基准标记实时预测ROI变形。对于平均最大位移为30 mm的头颈肿瘤模型,使用拟议方法的98%的测试用例在基准和预测之间的最大表面偏移量低于1.0 mm,这是高质量介入超声的典型分辨率。每个预测过程的需要小于0.5 s。通过产生的预测准确性和计算效率,提出的方法证明了其在临床上相关的潜力。

Imaging modalities provide clinicians with real-time visualization of anatomical regions of interest (ROI) for the purpose of minimally invasive surgery. During the procedure, low-resolution image data are acquired and registered with high-resolution preoperative 3D reconstruction to guide the execution of surgical preplan. Unfortunately, due to the potential large strain and nonlinearities in the deformation of soft biological tissues, significant mismatch may be observed between ROI shapes during pre- and intra-operative imaging stages, making the surgical preplan prone to failure. In an effort to bridge the gap between the two imaging stages, this paper presents a data-driven approach based on artificial neural network for predicting the ROI deformation in real-time with sparsely registered fiducial markers. For a head-and-neck tumor model with an average maximum displacement of 30 mm, the maximum surface offsets between benchmarks and predictions using the proposed approach for 98% of the test cases are under 1.0 mm, which is the typical resolution of high-quality interventional ultrasound. Each of the prediction processes takes less than 0.5 s. With the resulting prediction accuracy and computational efficiency, the proposed approach demonstrates its potential to be clinically relevant.

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