基于形状的深度变分自编码器用于前列腺干预的可变形Mri到经直肠超声配准

Sh. Shakeri, W. Le, C. Ménard, S. Kadoury
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引用次数: 1

摘要

前列腺癌是男性中最常见的癌症之一,其诊断是通过活检和组织病理学分析来证实的。诊断性T2-w MRI通常在术中经直肠超声(TRUS)中登记,以便在图像引导的活检程序或基于针的治疗干预(如近距离治疗)中有效靶向可疑病变。然而,在干预环境中,这一过程仍然具有挑战性和耗时。目前的工作提出了一种自动的3D可变形MRI到TRUS配准管道,该管道利用深度变分自编码器和非刚性迭代最近点配准方法。首先从三维TRUS图像中训练卷积FC-ResNet分割模型,在此过程中提取前列腺边界。然后使用匹配的MRI-TRUS 3D分割来生成形态之间腺体表面网格的矢量表示,用作10层密集变分自编码器模型的输入,以约束基于变形模式的潜在表示的预测变形。在配准过程的每次迭代中,使用自编码器的重建损失对扭曲的图像进行正则化,确保合理的解剖变形。基于对45名接受HDR近距离治疗的患者的5倍交叉验证策略,该方法的Dice评分为85.0±2.6,靶配准误差为3.9±1.4 mm,该方法的结果优于最先进的方法,且手术内干扰最小。
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Deformable Mri To Transrectal Ultrasound Registration For Prostate Interventions With Shape-Based Deep Variational Auto-Encoders
Prostate cancer is one of the most prevalent cancers in men, where diagnosis is confirmed through biopsies analyzed with histopathology. A diagnostic T2-w MRI is often registered to intra-operative transrectal ultrasound (TRUS) for effective targeting of suspicious lesions during image-guided biopsy procedures or needle-based therapeutic interventions such as brachytherapy. However, this process remains challenging and time-consuming in an interventional environment. The present work proposes an automated 3D deformable MRI to TRUS registration pipeline that leverages both deep variational auto-encoders with a non-rigid iterative closest point registration approach. A convolutional FC-ResNet segmentation model is first trained from 3D TRUS images to extract prostate boundaries during the procedure. Matched MRI-TRUS 3D segmentations are then used to generate a vector representation of the gland’s surface mesh between modalities, used as input to a 10layer dense variational autoencoder model to constrain the predicted deformations based on a latent representation of the deformation modes. At each iteration of the registration process, the warped image is regularized using the autoencoder’s reconstruction loss, ensuring plausible anatomical deformations. Based on a 5-fold cross-validation strategy with 45 patients undergoing HDR brachytherapy, the method yields a Dice score of 85.0 ± 2.6 with a target registration error of 3.9 ± 1.4 mm, with the proposed method yielding results outperforming the state-of-the-art, with minimal intra-procedural disruptions.
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