Department of Electrical and Electronic Engineering, Universiti Teknologi PETRONAS, 32610 Seri Iskandar, Perak, Malaysia.
Department of Electrical Engineering and Biomedical Engineering Research Center, Yuan Ze University, Jungli 32003, Taiwan.
Comput Methods Programs Biomed. 2021 Jul;206:106114. doi: 10.1016/j.cmpb.2021.106114. Epub 2021 Apr 14.
BACKGROUND AND OBJECTIVE: The increased incidence of colorectal cancer (CRC) and its mortality rate have attracted interest in the use of artificial intelligence (AI) based computer-aided diagnosis (CAD) tools to detect polyps at an early stage. Although these CAD tools have thus far achieved a good accuracy level to detect polyps, they still have room to improve further (e.g. sensitivity). Therefore, a new CAD tool is developed in this study to detect colonic polyps accurately. METHODS: In this paper, we propose a novel approach to distinguish colonic polyps by integrating several techniques, including a modified deep residual network, principal component analysis and AdaBoost ensemble learning. A powerful deep residual network architecture, ResNet-50, was investigated to reduce the computational time by altering its architecture. To keep the interference to a minimum, median filter, image thresholding, contrast enhancement, and normalisation techniques were exploited on the endoscopic images to train the classification model. Three publicly available datasets, i.e., Kvasir, ETIS-LaribPolypDB, and CVC-ClinicDB, were merged to train the model, which included images with and without polyps. RESULTS: The proposed approach trained with a combination of three datasets achieved Matthews Correlation Coefficient (MCC) of 0.9819 with accuracy, sensitivity, precision, and specificity of 99.10%, 98.82%, 99.37%, and 99.38%, respectively. CONCLUSIONS: These results show that our method could repeatedly classify endoscopic images automatically and could be used to effectively develop computer-aided diagnostic tools for early CRC detection.
背景与目的:结直肠癌(CRC)发病率的增加及其死亡率引起了人们对使用基于人工智能(AI)的计算机辅助诊断(CAD)工具来早期检测息肉的兴趣。尽管这些 CAD 工具迄今为止已经达到了很好的检测息肉的准确性水平,但它们仍有进一步提高的空间(例如敏感性)。因此,本研究开发了一种新的 CAD 工具来准确检测结肠息肉。
方法:在本文中,我们提出了一种通过集成多种技术来区分结肠息肉的新方法,包括改进的深度残差网络、主成分分析和 AdaBoost 集成学习。研究了强大的深度残差网络架构 ResNet-50,通过改变其架构来减少计算时间。为了将干扰降至最低,对内窥镜图像进行了中值滤波、图像阈值处理、对比度增强和归一化处理,以训练分类模型。合并了三个公开可用的数据集,即 Kvasir、ETIS-LaribPolypDB 和 CVC-ClinicDB,以训练包括有和无息肉的图像的模型。
结果:使用三个数据集的组合训练的提出方法的马修斯相关系数(MCC)为 0.9819,准确率、敏感性、精度和特异性分别为 99.10%、98.82%、99.37%和 99.38%。
结论:这些结果表明,我们的方法可以重复自动分类内窥镜图像,并且可以有效地开发用于早期 CRC 检测的计算机辅助诊断工具。
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