基于Hounsfield单位衰减和深度学习的CT/MRI图像肝脏病变分类改进

IF 1 4区 生物学 Q4 DEVELOPMENTAL BIOLOGY
Anh-Cang Phan , Hung-Phi Cao , Thi-Nguu-Huynh Le , Thanh-Ngoan Trieu , Thuong-Cang Phan
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引用次数: 3

摘要

肝脏病变的早期体征检测在预防、诊断和治疗肝脏疾病中起着极其重要的作用。事实上,放射科医生主要考虑Hounsfield单位来定位肝脏病变。然而,大多数研究都集中在未增强计算机断层扫描图像的分析上,而没有考虑造影剂注射前后Hounsfield单位之间的衰减差异。因此,这项工作的目的是开发一种改进的方法,基于深度学习技术和计算机断层扫描中Hounsfield单位密度的变化,自动检测和分类常见肝脏病变。我们设计并实现了一个多阶段分类模型,该模型是在基于更快区域的卷积神经网络(更快R–CNN)、基于区域的全卷积网络(R–FCN)和具有迁移学习方法的单点检测器网络(SSD)上开发的。该模型考虑了造影剂注射前后四个阶段(平扫、动脉、静脉和延迟)计算机断层扫描中Hounsfield单位密度的变化。实验对三种常见的肝脏病变进行,包括肝囊肿、血管瘤和肝细胞癌。实验结果表明,该方法能够准确定位和分类常见肝脏病变。Hounsfield单位检测肝脏病变的准确率高达100%。同时,病变分类的准确率达到95.1%。有希望的结果表明了所提出的方法在肝脏病变自动检测和分类中的适用性。与之前的一些方法相比,所提出的方法提高了肝脏病变检测和分类的准确性。它对于帮助医生诊断肝脏病变的实用系统是有用的。在我们的进一步研究中,可以通过大数据分析来构建实时处理系统,并将这项研究扩展到检测人体各个部位的病变,而不仅仅是肝脏。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving liver lesions classification on CT/MRI images based on Hounsfield Units attenuation and deep learning

The early sign detection of liver lesions plays an extremely important role in preventing, diagnosing, and treating liver diseases. In fact, radiologists mainly consider Hounsfield Units to locate liver lesions. However, most studies focus on the analysis of unenhanced computed tomography images without considering an attenuation difference between Hounsfield Units before and after contrast injection. Therefore, the purpose of this work is to develop an improved method for the automatic detection and classification of common liver lesions based on deep learning techniques and the variations of the Hounsfield Units density on computed tomography scans. We design and implement a multi-phase classification model developed on the Faster Region-based Convolutional Neural Networks (Faster R–CNN), Region-based Fully Convolutional Networks (R–FCN), and Single Shot Detector Networks (SSD) with the transfer learning approach. The model considers the variations of the Hounsfield Unit density on computed tomography scans in four phases before and after contrast injection (plain, arterial, venous, and delay). The experiments are conducted on three common types of liver lesions including liver cysts, hemangiomas, and hepatocellular carcinoma. Experimental results show that the proposed method accurately locates and classifies common liver lesions. The liver lesions detection with Hounsfield Units gives high accuracy of 100%. Meanwhile, the lesion classification achieves an accuracy of 95.1%. The promising results show the applicability of the proposed method for automatic liver lesions detection and classification. The proposed method improves the accuracy of liver lesions detection and classification compared with some preceding methods. It is useful for practical systems to assist doctors in the diagnosis of liver lesions. In our further research, an improvement can be made with big data analysis to build real-time processing systems and we expand this study to detect lesions from all parts of the human body, not just the liver.

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来源期刊
Gene Expression Patterns
Gene Expression Patterns 生物-发育生物学
CiteScore
2.30
自引率
0.00%
发文量
42
审稿时长
35 days
期刊介绍: Gene Expression Patterns is devoted to the rapid publication of high quality studies of gene expression in development. Studies using cell culture are also suitable if clearly relevant to development, e.g., analysis of key regulatory genes or of gene sets in the maintenance or differentiation of stem cells. Key areas of interest include: -In-situ studies such as expression patterns of important or interesting genes at all levels, including transcription and protein expression -Temporal studies of large gene sets during development -Transgenic studies to study cell lineage in tissue formation
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