From coarse to fine: a deep 3D probability volume contours framework for tumour segmentation and dose painting in PET images.

Frontiers in radiology Pub Date : 2023-09-05 eCollection Date: 2023-01-01 DOI:10.3389/fradi.2023.1225215
Wenhui Zhang, Surajit Ray
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引用次数: 0

Abstract

With the increasing integration of functional imaging techniques like Positron Emission Tomography (PET) into radiotherapy (RT) practices, a paradigm shift in cancer treatment methodologies is underway. A fundamental step in RT planning is the accurate segmentation of tumours based on clinical diagnosis. Furthermore, novel tumour control methods, such as intensity modulated radiation therapy (IMRT) dose painting, demand the precise delineation of multiple intensity value contours to ensure optimal tumour dose distribution. Recently, convolutional neural networks (CNNs) have made significant strides in 3D image segmentation tasks, most of which present the output map at a voxel-wise level. However, because of information loss in subsequent downsampling layers, they frequently fail to precisely identify precise object boundaries. Moreover, in the context of dose painting strategies, there is an imperative need for reliable and precise image segmentation techniques to delineate high recurrence-risk contours. To address these challenges, we introduce a 3D coarse-to-fine framework, integrating a CNN with a kernel smoothing-based probability volume contour approach (KsPC). This integrated approach generates contour-based segmentation volumes, mimicking expert-level precision and providing accurate probability contours crucial for optimizing dose painting/IMRT strategies. Our final model, named KsPC-Net, leverages a CNN backbone to automatically learn parameters in the kernel smoothing process, thereby obviating the need for user-supplied tuning parameters. The 3D KsPC-Net exploits the strength of KsPC to simultaneously identify object boundaries and generate corresponding probability volume contours, which can be trained within an end-to-end framework. The proposed model has demonstrated promising performance, surpassing state-of-the-art models when tested against the MICCAI 2021 challenge dataset (HECKTOR).

Abstract Image

Abstract Image

Abstract Image

从粗到细:用于PET图像中肿瘤分割和剂量绘制的深度3D概率体积轮廓框架。
随着正电子发射断层扫描(PET)等功能成像技术日益融入放射治疗(RT)实践,癌症治疗方法的范式转变正在进行中。RT计划的一个基本步骤是根据临床诊断准确分割肿瘤。此外,新的肿瘤控制方法,如强度调制放射治疗(IMRT)剂量绘制,需要精确描绘多个强度值轮廓,以确保最佳的肿瘤剂量分布。最近,卷积神经网络(CNNs)在3D图像分割任务中取得了重大进展,其中大多数都在体素水平上呈现输出图。然而,由于后续下采样层中的信息丢失,它们经常无法准确识别精确的对象边界。此外,在剂量绘制策略的背景下,迫切需要可靠和精确的图像分割技术来描绘高复发风险轮廓。为了解决这些挑战,我们引入了一个3D从粗到细的框架,将CNN与基于核平滑的概率体积轮廓方法(KsPC)相结合。这种集成方法生成基于轮廓的分割体积,模拟专家级的精度,并提供精确的概率轮廓,这对于优化剂量绘制/IMRT策略至关重要。我们的最终模型名为KsPC-Net,它利用CNN主干来自动学习内核平滑过程中的参数,从而消除了对用户提供的调整参数的需求。3D KsPC-Net利用KsPC的强度来同时识别对象边界并生成相应的概率体积轮廓,这些轮廓可以在端到端的框架内进行训练。当与MICCAI 2021挑战数据集(HECKTOR)进行测试时,所提出的模型表现出了良好的性能,超过了最先进的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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