Altini Nicola, Brunetti Antonio, Napoletano Valeria Pia, Girardi Francesca, Allegretti Emanuela, Hussain Sardar Mehboob, Brunetti Gioacchino, Triggiani Vito, Bevilacqua Vitoantonio, Buongiorno Domenico
Department of Electrical and Information Engineering (DEI), Polytechnic University of Bari, 70126 Bari, BA, Italy.
Apulian Bioengineering s.r.l., Via delle Violette n.14, 70026 Modugno, BA, Italy.
Bioengineering (Basel). 2022 Jul 26;9(8):343. doi: 10.3390/bioengineering9080343.
In prostate cancer, fusion biopsy, which couples magnetic resonance imaging (MRI) with transrectal ultrasound (TRUS), poses the basis for targeted biopsy by allowing the comparison of information coming from both imaging modalities at the same time. Compared with the standard clinical procedure, it provides a less invasive option for the patients and increases the likelihood of sampling cancerous tissue regions for the subsequent pathology analyses. As a prerequisite to image fusion, segmentation must be achieved from both MRI and TRUS domains. The automatic contour delineation of the prostate gland from TRUS images is a challenging task due to several factors including unclear boundaries, speckle noise, and the variety of prostate anatomical shapes. Automatic methodologies, such as those based on deep learning, require a huge quantity of training data to achieve satisfactory results. In this paper, the authors propose a novel optimization formulation to find the best superellipse, a deformable model that can accurately represent the prostate shape. The advantage of the proposed approach is that it does not require extensive annotations, and can be used independently of the specific transducer employed during prostate biopsies. Moreover, in order to show the clinical applicability of the method, this study also presents a module for the automatic segmentation of the prostate gland from MRI, exploiting the nnU-Net framework. Lastly, segmented contours from both imaging domains are fused with a customized registration algorithm in order to create a tool that can help the physician to perform a targeted prostate biopsy by interacting with the graphical user interface.
在前列腺癌中,融合活检将磁共振成像(MRI)与经直肠超声(TRUS)相结合,通过同时比较来自两种成像方式的信息,为靶向活检奠定了基础。与标准临床程序相比,它为患者提供了侵入性较小的选择,并增加了采集癌组织区域用于后续病理分析的可能性。作为图像融合的前提条件,必须在MRI和TRUS领域都实现分割。由于包括边界不清晰、斑点噪声和前列腺解剖形状多样等多种因素,从TRUS图像中自动勾勒前列腺轮廓是一项具有挑战性的任务。自动方法,如基于深度学习的方法,需要大量的训练数据才能取得满意的结果。在本文中,作者提出了一种新颖的优化公式来找到最佳超椭圆,这是一种可变形模型,能够准确表示前列腺形状。所提出方法的优点是它不需要大量注释,并且可以独立于前列腺活检期间使用的特定换能器使用。此外,为了展示该方法的临床适用性,本研究还提出了一个利用nnU-Net框架从MRI自动分割前列腺的模块。最后,来自两个成像领域的分割轮廓通过定制的配准算法进行融合,以创建一个工具,帮助医生通过与图形用户界面交互来进行靶向前列腺活检。