Kaur Harmanpreet, Sharma Reecha, Kaur Jagroop
Department of Computer Science & Engineering, Punjabi University, Patiala, India.
Department of Electronics and Communication Engineering, Punjabi University, Patiala, India.
Sci Rep. 2025 Jan 31;15(1):3945. doi: 10.1038/s41598-024-74531-0.
Cervical cancer is one of the most commonly diagnosed cancers worldwide, and it is particularly prevalent among women living in developing countries. Traditional classification algorithms often require segmentation and feature extraction techniques to detect cervical cancer. In contrast, convolutional neural networks (CNN) models require large datasets to reduce overfitting and poor generalization. Based on limited datasets, transfer learning was applied directly to pap smear images to perform a classification task. A comprehensive comparison of 16 pre-trained models (VGG16, VGG19, ResNet50, ResNet50V2, ResNet101, ResNet101V2, ResNet152, ResNet152V2, DenseNet121, DenseNet169, DenseNet201, MobileNet, XceptionNet, InceptionV3, and InceptionResNetV2) were carried out for cervical cancer classification by relying on the Herlev dataset and Sipakmed dataset. A comparison of the results revealed that ResNet50 achieved 95% accuracy both for 2-class classification and for 7-class classification using the Herlev dataset. Based on the Sipakmed dataset, VGG16 obtained an accuracy of 99.95% for 2-class and 5-class classification, DenseNet121 achieved an accuracy of 97.65% for 3-class classification. Our findings indicate that DTL models are suitable for automating cervical cancer screening, providing more accurate and efficient results than manual screening.
宫颈癌是全球最常被诊断出的癌症之一,在发展中国家的女性中尤为普遍。传统分类算法通常需要分割和特征提取技术来检测宫颈癌。相比之下,卷积神经网络(CNN)模型需要大型数据集来减少过拟合和泛化能力差的问题。基于有限的数据集,迁移学习被直接应用于巴氏涂片图像以执行分类任务。通过依赖赫勒夫数据集和西帕克梅德数据集,对16个预训练模型(VGG16、VGG19、ResNet50、ResNet50V2、ResNet101、ResNet101V2、ResNet152、ResNet152V2、DenseNet121、DenseNet169、DenseNet201、MobileNet、XceptionNet、InceptionV3和InceptionResNetV2)进行了宫颈癌分类的全面比较。结果比较显示,使用赫勒夫数据集时,ResNet50在二类分类和七类分类中均达到了95%的准确率。基于西帕克梅德数据集,VGG16在二类和五类分类中准确率达到99.95%,DenseNet121在三类分类中准确率达到97.65%。我们的研究结果表明,深度迁移学习(DTL)模型适用于宫颈癌筛查自动化,比人工筛查能提供更准确、高效的结果。