Habtemariam Lidiya Wubshet, Zewde Elbetel Taye, Simegn Gizeaddis Lamesgin
Biomedical Imaging Unit, School of Biomedical Engineering, Jimma Institute of Technology, Jimma University, Jimma, Ethiopia.
AI and Biomedical Imaging Research unit, Jimma Institute of Technology, Jimma University, Jimma, Ethiopia.
Med Devices (Auckl). 2022 Jun 16;15:163-176. doi: 10.2147/MDER.S366303. eCollection 2022.
Cervical cancer is the 4th most common cancer among women, worldwide. Incidence and mortality rates are consistently increasing, especially in developing countries, due to the shortage of screening facilities, limited skilled professionals, and lack of awareness. Cervical cancer is screened using visual inspection after application of acetic acid (VIA), papanicolaou (Pap) test, human papillomavirus (HPV) test and histopathology test. Inter- and intra-observer variability may occur during the manual diagnosis procedure, resulting in misdiagnosis. The purpose of this study was to develop an integrated and robust system for automatic cervix type and cervical cancer classification using deep learning techniques.
4005 colposcopy images and 915 histopathology images were collected from different local health facilities and online public datasets. Different pre-trained models were trained and compared for cervix type classification. Prior to classification, the region of interest (ROI) was extracted from cervix images by training and validating a lightweight MobileNetv2-YOLOv3 model to detect the transformation region. The extracted cervix images were then fed to the EffecientNetb0 model for cervix type classification. For cervical cancer classification, an EffecientNetB0 pre-trained model was trained and validated using histogram matched histopathological images.
Mean average precision (mAP) of 99.88% for the region of interest (ROI) extraction, and test accuracies of 96.84% and 94.5% were achieved for the cervix type and cervical cancer classification, respectively.
The experimental results demonstrate that the proposed system can be used as a decision support tool in the diagnosis of cervical cancer, especially in low resources settings, where the expertise and the means are limited.
宫颈癌是全球女性中第四大常见癌症。由于筛查设施短缺、专业技术人员有限以及意识缺乏,其发病率和死亡率持续上升,尤其是在发展中国家。宫颈癌的筛查方法包括醋酸应用后视觉检查(VIA)、巴氏涂片检查(Pap)、人乳头瘤病毒(HPV)检测和组织病理学检测。在人工诊断过程中可能会出现观察者间和观察者内的变异性,从而导致误诊。本研究的目的是使用深度学习技术开发一个集成且强大的系统,用于自动进行宫颈类型和宫颈癌分类。
从不同的当地卫生机构和在线公共数据集中收集了4005张阴道镜图像和915张组织病理学图像。对不同的预训练模型进行训练并比较宫颈类型分类效果。在分类之前,通过训练和验证一个轻量级的MobileNetv2 - YOLOv3模型来检测转化区域,从宫颈图像中提取感兴趣区域(ROI)。然后将提取的宫颈图像输入到EffecientNetb0模型进行宫颈类型分类。对于宫颈癌分类,使用直方图匹配的组织病理学图像对一个EffecientNetB0预训练模型进行训练和验证。
感兴趣区域(ROI)提取的平均精度(mAP)为99.88%,宫颈类型和宫颈癌分类的测试准确率分别达到96.84%和94.5%。
实验结果表明,所提出的系统可作为宫颈癌诊断的决策支持工具,特别是在资源有限、专业知识和手段匮乏的环境中。