A Multi-Scale and Multi-Resolution Approach for Liver Tumor Segmentation in CT Scans

A. Orazbayev, Huer Wen
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引用次数: 1

Abstract

Hepatocellular carcinoma currently causes over 800 000 fatalities per year worldwide – and the number of cases is increasing. An early diagnosis and treatment play a crucial role in saving patients’ lives. The purpose of this study is the exploration of a robust and precise computer-aided diagnosis (CAD) method using deep learning algorithms for liver tumor localization and segmentation. The difficulty of liver tumor segmentation lies within the recognition of the contrast between healthy and malignant tissues. This study proposes an implementation of a two-phased multi-scale and multi-resolution training pipeline to perform high accuracy in medical imaging segmentation tasks. For the experiments, the Liver Tumor Segmentation challenge (LiTS) public dataset was used. It contains 131 computed tomography (CT) images, out of which 82% show liver tumors with various shapes of lesion distribution. The final results show a dice per case score of 96.3% for liver segmentation and 72.5% for tumor segmentation when compared to the top LiTS results.
肝脏肿瘤CT多尺度多分辨率分割方法研究
肝细胞癌目前在全世界每年造成80多万人死亡,而且病例数量正在增加。早期诊断和治疗在挽救患者生命方面起着至关重要的作用。本研究的目的是探索一种鲁棒和精确的计算机辅助诊断(CAD)方法,使用深度学习算法进行肝脏肿瘤定位和分割。肝肿瘤分割的难点在于识别健康组织与恶性组织的对比。本研究提出了一种两阶段多尺度、多分辨率训练流水线的实现方法,以实现医学影像分割任务的高精度。实验使用肝脏肿瘤分割挑战(Liver Tumor Segmentation challenge, LiTS)公共数据集。它包含131张计算机断层扫描(CT)图像,其中82%显示肝脏肿瘤,病变分布形状各异。最终结果显示,与前几组结果相比,肝脏分割的每例骰子得分为96.3%,肿瘤分割的每例骰子得分为72.5%。
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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