Detection of Liver Cancer through Computed Tomography Images using Deep Convolutional Neural Networks

Zunaira Naaqvi, Shahzad Akbar, Syed Ale Hassan, Qurat ul Ain
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引用次数: 7

Abstract

Liver cancer is the fifth most common type of tumor in men and the ninth most common type of tumor in women. After taking a sample of liver tissue, imaging tests like computed tomography (CT), ultrasound, and magnetic resonance imaging (MRI), can be used to diagnose the liver tumor. In recent studies, accurate detection of liver cancer with minimum computational time and computational complexity is a major issue remained the challenge. This research proposes a framework to segment the cancerous area through CT scan images using entropy thresholding technique. Additionally, it uses two CNN models, U-Net and Google-Net, for the classification of liver cancer. The proposed method employs the 3D-IRCADb01 dataset, which consists of CT slices of liver tumor patients. The U-Net performed better than other networks with 98.5% accuracy, 0.83 DSC, 99.5% recall, and 98.75% F1. Biotechnology uses this method for an early and accurate diagnosis of liver tumors that is likely to save many lives. Proposed method outperformed than existing state-of-art methods and is suitable for clinical applications to assist doctors in diagnosing liver cancer.
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基于深度卷积神经网络的计算机断层图像肝癌检测
肝癌是男性中第五常见的肿瘤类型,女性中第九常见的肿瘤类型。在取肝组织样本后,可以使用计算机断层扫描(CT)、超声波和磁共振成像(MRI)等影像学检查来诊断肝脏肿瘤。在最近的研究中,以最小的计算时间和计算复杂度准确检测肝癌是一个主要的问题,仍然是一个挑战。本研究提出了一种利用熵阈值技术对CT扫描图像进行癌变区域分割的框架。此外,它还使用了两个CNN模型,U-Net和Google-Net,用于肝癌的分类。该方法采用3D-IRCADb01数据集,该数据集由肝脏肿瘤患者的CT切片组成。U-Net的准确率为98.5%,DSC为0.83,召回率为99.5%,F1为98.75%,优于其他网络。生物技术利用这种方法对肝脏肿瘤进行早期和准确的诊断,可能挽救许多生命。该方法优于现有的最先进的方法,适合临床应用,以协助医生诊断肝癌。
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