Al-Jabbar Mohammed, Alshahrani Mohammed, Senan Ebrahim Mohammed, Ahmed Ibrahim Abdulrab
Computer Department, Applied College, Najran University, Najran 66462, Saudi Arabia.
Department of Artificial Intelligence, Faculty of Computer Science and Information Technology, Alrazi University, Sana'a, Yemen.
Bioengineering (Basel). 2023 Mar 21;10(3):383. doi: 10.3390/bioengineering10030383.
Lung and colon cancer are among humanity's most common and deadly cancers. In 2020, there were 4.19 million people diagnosed with lung and colon cancer, and more than 2.7 million died worldwide. Some people develop lung and colon cancer simultaneously due to smoking which causes lung cancer, leading to an abnormal diet, which also causes colon cancer. There are many techniques for diagnosing lung and colon cancer, most notably the biopsy technique and its analysis in laboratories. Due to the scarcity of health centers and medical staff, especially in developing countries. Moreover, manual diagnosis takes a long time and is subject to differing opinions of doctors. Thus, artificial intelligence techniques solve these challenges. In this study, three strategies were developed, each with two systems for early diagnosis of histological images of the LC25000 dataset. Histological images have been improved, and the contrast of affected areas has been increased. The GoogLeNet and VGG-19 models of all systems produced high dimensional features, so redundant and unnecessary features were removed to reduce high dimensionality and retain essential features by the PCA method. The first strategy for diagnosing the histological images of the LC25000 dataset by ANN uses crucial features of GoogLeNet and VGG-19 models separately. The second strategy uses ANN with the combined features of GoogLeNet and VGG-19. One system reduced dimensions and combined, while the other combined high features and then reduced high dimensions. The third strategy uses ANN with fusion features of CNN models (GoogLeNet and VGG-19) and handcrafted features. With the fusion features of VGG-19 and handcrafted features, the ANN reached a sensitivity of 99.85%, a precision of 100%, an accuracy of 99.64%, a specificity of 100%, and an AUC of 99.86%.
肺癌和结肠癌是人类最常见且致命的癌症。2020年,全球有419万人被诊断出患有肺癌和结肠癌,超过270万人死亡。一些人由于吸烟导致肺癌,进而引发饮食异常,最终同时患上肺癌和结肠癌。诊断肺癌和结肠癌有多种技术,其中最显著的是活检技术及其在实验室中的分析。由于卫生中心和医务人员短缺,尤其是在发展中国家。此外,人工诊断耗时较长,且医生的意见存在差异。因此,人工智能技术解决了这些挑战。在本研究中,开发了三种策略,每种策略有两个用于早期诊断LC25000数据集组织学图像的系统。对组织学图像进行了改进,增加了受影响区域的对比度。所有系统的GoogLeNet和VGG - 19模型都产生了高维特征,因此通过主成分分析(PCA)方法去除了冗余和不必要的特征,以降低维度并保留关键特征。第一种诊断LC25000数据集组织学图像的策略是让人工神经网络(ANN)分别使用GoogLeNet和VGG - 19模型的关键特征。第二种策略是让ANN使用GoogLeNet和VGG - 19的组合特征。一个系统先降维再组合,另一个系统先组合高维特征再降维。第三种策略是让ANN使用卷积神经网络(CNN)模型(GoogLeNet和VGG - 19)的融合特征和手工制作的特征。通过VGG - 19的融合特征和手工制作的特征,ANN的灵敏度达到了99.85%,精确率达到了100%,准确率达到了99.64%,特异性达到了100%,曲线下面积(AUC)达到了99.86%。