Department of Computer Engineering, Pimpri Chinchwad College of Engineering, Pune, Maharashtra, India.
Math Biosci Eng. 2022 Apr 24;19(7):6415-6434. doi: 10.3934/mbe.2022301.
Cervical cancer is the second most commonly seen cancer in women. It affects the cervix portion of the vagina. The most preferred diagnostic test required for screening cervical cancer is the pap smear test. Pap smear is a time-consuming test as it requires detailed analysis by expert cytologists. Cytologists can screen around 100 to 1000 slides depending upon the availability of advanced equipment. Due to this reason Artificial intelligence (AI) based computer-aided diagnosis system for the classification of pap smear images is needed. There are some AI-based solutions proposed in the literature, still an effective and accurate system is under research. In this paper, the deep learning-based hybrid methodology namely DeepCyto is proposed for the classification of pap smear cytology images. The DeepCyto extracts the feature fusion vectors from pre-trained models and passes these to two workflows. Workflow-1 applies principal component analysis and machine learning ensemble to classify the pap smear images. Workflow-2 takes feature fusion vectors as an input and applies an artificial neural network for classification. The experiments are performed on three benchmark datasets namely Herlev, SipakMed, and LBCs. The performance measures of accuracy, precision, recall and F1-score are used to evaluate the effectiveness of the DeepCyto. The experimental results depict that Workflow-2 has given the best performance on all three datasets even with a smaller number of epochs. Also, the performance of the DeepCyto Workflow 2 on multi-cell images of LBCs is better compared to single cell images of other datasets. Thus, DeepCyto is an efficient method for accurate feature extraction as well as pap smear image classification.
宫颈癌是女性中第二常见的癌症。它影响阴道的宫颈部分。筛查宫颈癌最需要的首选诊断测试是巴氏涂片检查。巴氏涂片检查是一项耗时的测试,因为它需要专家细胞病理学家进行详细分析。细胞病理学家可以根据先进设备的可用性筛选 100 到 1000 张幻灯片。由于这个原因,需要基于人工智能 (AI) 的计算机辅助诊断系统来对巴氏涂片图像进行分类。文献中有一些基于 AI 的解决方案,但仍在研究有效且准确的系统。在本文中,提出了一种基于深度学习的混合方法,即 DeepCyto,用于巴氏涂片细胞学图像的分类。DeepCyto 从预训练模型中提取特征融合向量,并将这些向量传递给两个工作流程。工作流程-1 应用主成分分析和机器学习集成来对巴氏涂片图像进行分类。工作流程-2 将特征融合向量作为输入,并应用人工神经网络进行分类。实验在三个基准数据集 Herlev、SipakMed 和 LBCs 上进行。使用准确性、精度、召回率和 F1 分数等性能指标来评估 DeepCyto 的有效性。实验结果表明,即使在较少的时期内,工作流程-2 也在所有三个数据集上都取得了最佳性能。此外,DeepCyto 工作流程 2 在 LBCs 的多细胞图像上的性能优于其他数据集的单细胞图像。因此,DeepCyto 是一种用于准确特征提取和巴氏涂片图像分类的有效方法。