Segmenting Liver Volume for Surgical Analysis

Ayman Al-Kababji, F. Bensaali, S. Dakua
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Abstract

Introduction: Almost two million people worldwide die annually due to hepatic-related diseases. Half of these diseases are attributed to cirrhosis and the other half are related to hepatitis and hepatocellular carcinoma (HCC). The liver is also a metastasis hub from adjacent organs. This research aims to create an accurate high-quality delineation of the human liver and prepare them to be 3D printed for medical analysis to help aid medical practitioners in pre-procedural planning. Materials and Methods: Convolutional neural networks (ConvNets) are used to perform the liver tissues delineation. A famous ConvNet, named U-net, is used as the basis benchmark architecture that is also known for its great outcomes in the medical segmentation field. Contrast-enhanced computerized tomography (CT) scans are used from the famous Medical Segmentation Decathlon Challenge (Task 8: Hepatic Vessel), abbreviated as MSDC-T8. It contains 443 CT scans, which is considered the largest dataset that contains both the tumors and vessels ground-truth segmentation. Some researchers also generated the liver masks for this dataset, making it a complete dataset that contains all the relevant tissues’ ground-truth masks. Results: Currently, the liver delineation has been successfully done with very high DICE = 98.12% (higher than the state-of-the-art results DICE = 97.61%), where a comparison between two famous schedulers namely, ReduceLRonPlateau and OneCycleLR has been conducted. Moreover, the 3D liver volume creation has also been completed and built via the marching cube algorithm. Conclusions/Future Directions: The developed ConvNet can segment livers with high confidence. The tumor(s) and vessels tissues segmentation are also under investigation now. Moreover, newly devised self-organized neural networks (Self-ONN) look promising and will be investigated soon. Lastly, a GUI will be built so that the medical practitioner can just insert the CT volume and get the 3D liver volume with all the segmented tissues.
肝体积分割用于外科分析
导言:全世界每年有近200万人死于与肝脏有关的疾病。这些疾病中一半归因于肝硬化,另一半与肝炎和肝细胞癌(HCC)有关。肝脏也是邻近器官的转移中枢。这项研究的目的是创建一个准确的高质量的人体肝脏描绘,并准备将其3D打印用于医学分析,以帮助医生在术前规划。材料和方法:使用卷积神经网络(ConvNets)进行肝组织描绘。一个著名的卷积神经网络,称为U-net,被用作基准基准架构,该架构也因其在医疗分割领域的巨大成果而闻名。对比增强计算机断层扫描(CT)扫描来自著名的医学分割十项全能挑战(任务8:肝血管),简称MSDC-T8。它包含443个CT扫描,被认为是包含肿瘤和血管ground-truth分割的最大数据集。一些研究人员还为这个数据集生成了肝脏面具,使其成为一个完整的数据集,其中包含了所有相关组织的真实面具。结果:目前已经成功完成了肝脏的划定,DICE = 98.12%(高于目前最先进的结果DICE = 97.61%),其中比较了两个著名的调度程序,即ReduceLRonPlateau和OneCycleLR。此外,还通过行进立方体算法完成了肝脏三维体积的创建和构建。结论/未来发展方向:所开发的ConvNet可以高置信度地分割肝脏。肿瘤和血管组织的分割也正在研究中。此外,新设计的自组织神经网络(Self-ONN)看起来很有希望,并将很快进行研究。最后,将构建GUI,使医生只需插入CT体积,即可获得包含所有分割组织的3D肝脏体积。
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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