DCNET: A Novel Implementation of Gastric Cancer Detection System through Deep Learning Convolution Networks

S. Sharanyaa, S. Vijayalakshmi, M. Therasa, U. Kumaran, R. Deepika
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引用次数: 3

Abstract

To evaluate the Early Gastric Cancer (EGC) detection in humans one of the most common diseases that act as neoplastic disease and second-largest fatal tumor-based disease. Medical imaging techniques and screening equipment such as endoscopy, Computer tomography scanning help the medical industry to detect gastric cancer. The system focuses on implementing a robust prediction scheme that uses image processing techniques to detect the early stage of cancer through lightweight techniques. The test image from the pathology database named BioGPS is preprocessed initially to remove the noisy part of the pixels. The extraction of color features is done using the color threshold algorithm by tuning the image color bands separately. From the R, G, B band the extracted unique feature pixels are mapped in the feature vectors. The cancer part is highlighted by the combination of the R band that associates more with Red pixel points. These formulated pixel vectors are unique and more precise. This is further fetched to the deep Color-Net model (Deep CNET) that compares the training vector with the test vector to find the maximum correlation. The higher the match score the classified results determine the presence of gastric cancer and highlight the spread area from the given test pathology data. Further the system performance is measured using accuracy, precision, recall and F1-Score.
一种基于深度学习卷积网络的胃癌检测系统
早期胃癌(EGC)是人类最常见的肿瘤疾病之一,也是第二大致命的肿瘤基础疾病。医学成像技术和筛查设备,如内窥镜,计算机断层扫描帮助医疗行业检测胃癌。该系统专注于实现一个强大的预测方案,该方案使用图像处理技术通过轻量级技术检测早期癌症。来自病理数据库BioGPS的测试图像首先进行预处理,去除像素的噪声部分。颜色特征的提取采用颜色阈值算法,分别对图像颜色带进行调整。从R、G、B波段提取的唯一特征像素映射到特征向量中。癌症部分通过与红色像素点更多关联的R波段组合来突出显示。这些制定的像素向量是独特的和更精确的。这进一步被提取到deep Color-Net模型(deep CNET),该模型将训练向量与测试向量进行比较,以找到最大的相关性。匹配分数越高,分类结果确定胃癌的存在,并从给定的测试病理数据中突出显示扩散区域。此外,系统性能通过准确性、精密度、召回率和F1-Score来衡量。
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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