论文标题

基于机器学习的肺和结肠癌检测,使用深度提取和合奏学习

Machine Learning-based Lung and Colon Cancer Detection using Deep Feature Extraction and Ensemble Learning

论文作者

Talukder, Md. Alamin, Islam, Md. Manowarul, Uddin, Md Ashraf, Akhter, Arnisha, Hasan, Khondokar Fida, Moni, Mohammad Ali

论文摘要

癌症是由遗传疾病和多种生化异常的结合引起的致命疾病。肺癌和结肠癌已成为人类死亡和残疾的两个主要原因。这种恶性肿瘤的组织病理学检测通常是确定最佳作用方案的最重要组成部分。在任一方面的疾病的早期发现大大降低了死亡的可能性。机器学习和深度学习技术可用于加快此类癌症检测的速度,使研究人员可以以更短的时间和较低的成本研究大量患者。在这项研究工作中,我们引入了一种混合集合特征提取模型,以有效鉴定肺癌和结肠癌。它将深度特征提取和集合学习与癌症图像数据集的高性能过滤整合在一起。该模型对组织病理学(LC25000)和结肠数据集进行了评估。根据研究的结果,我们的混合模型可以检测到肺,结肠和(肺和结肠)癌症,精度率分别为99.05%,100%和99.30%。该研究的发现表明,我们提出的策略的表现大大优于现有模型。因此,这些模型可能适用于诊所,以支持医生诊断癌症。

Cancer is a fatal disease caused by a combination of genetic diseases and a variety of biochemical abnormalities. Lung and colon cancer have emerged as two of the leading causes of death and disability in humans. The histopathological detection of such malignancies is usually the most important component in determining the best course of action. Early detection of the ailment on either front considerably decreases the likelihood of mortality. Machine learning and deep learning techniques can be utilized to speed up such cancer detection, allowing researchers to study a large number of patients in a much shorter amount of time and at a lower cost. In this research work, we introduced a hybrid ensemble feature extraction model to efficiently identify lung and colon cancer. It integrates deep feature extraction and ensemble learning with high-performance filtering for cancer image datasets. The model is evaluated on histopathological (LC25000) lung and colon datasets. According to the study findings, our hybrid model can detect lung, colon, and (lung and colon) cancer with accuracy rates of 99.05%, 100%, and 99.30%, respectively. The study's findings show that our proposed strategy outperforms existing models significantly. Thus, these models could be applicable in clinics to support the doctor in the diagnosis of cancers.

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