Quantitative cancer image analysis relies on the accurate delineation of tumours, a very specialised and time-consuming task. For this reason, methods for automated segmentation of tumours in medical imaging have been extensively developed in recent years, being Computed Tomography one of the most popular imaging modalities explored. However, the large amount of 3D voxels in a typical scan is prohibitive for the entire volume to be analysed at once in conventional hardware. To overcome this issue, the processes of downsampling and/or resampling are generally implemented when using traditional convolutional neural networks in medical imaging. In this paper, we propose a new methodology that introduces a process of sparsification of the input images and submanifold sparse convolutional networks as an alternative to downsampling. As a proof of concept, we applied this new methodology to Computed Tomography images of renal cancer patients, obtaining performances of segmentations of kidneys and tumours competitive with previous methods (~84.6% Dice similarity coefficient), while achieving a significant improvement in computation time (2-3 min per training epoch).
翻译:定量癌症图像分析依赖于肿瘤的准确划分,这是一个非常专门和费时的任务。为此,近年来广泛开发了医学成像中肿瘤自动分解的方法,这是所探讨的最受欢迎的成像模式之一。然而,典型扫描中大量3D voxels对于用常规硬件同时分析整个体积来说是令人望而却步的。为解决这一问题,在医疗成像中使用传统神经神经网络时,一般会采用下取样和(或)再取样程序。在本文件中,我们提出了一种新的方法,采用输入图像和亚皮层稀有革命网络的过滤过程,作为下取样的替代方法。作为概念的证明,我们运用这一新方法对肾癌病人的成像进行合成成像分析,取得肾和肿瘤与以往方法具有竞争力的分解性功能(~84.6%狄克相似系数),同时在计算时间(每次培训2-3厘米)方面取得显著改进。