Institute of Actuarial Science and Data Analytics, UCSI University, Jalan Menara Gading, Cheras, 56000, Kuala Lumpur, Malaysia.
School of Business, Monash University Malaysia, Jalan Lagoon Selatan, Bandar Sunway, 47500, Subang Jaya, Malaysia.
Interdiscip Sci. 2024 Mar;16(1):16-38. doi: 10.1007/s12539-023-00589-5. Epub 2023 Nov 14.
As one of the most common female cancers, cervical cancer often develops years after a prolonged and reversible pre-cancerous stage. Traditional classification algorithms used for detection of cervical cancer often require cell segmentation and feature extraction techniques, while convolutional neural network (CNN) models demand a large dataset to mitigate over-fitting and poor generalization problems. To this end, this study aims to develop deep learning models for automated cervical cancer detection that do not rely on segmentation methods or custom features. Due to limited data availability, transfer learning was employed with pre-trained CNN models to directly operate on Pap smear images for a seven-class classification task. Thorough evaluation and comparison of 13 pre-trained deep CNN models were performed using the publicly available Herlev dataset and the Keras package in Google Collaboratory. In terms of accuracy and performance, DenseNet-201 is the best-performing model. The pre-trained CNN models studied in this paper produced good experimental results and required little computing time.
作为最常见的女性癌症之一,宫颈癌通常在经历了长时间且可逆转的癌前阶段后才会出现。传统的用于检测宫颈癌的分类算法通常需要细胞分割和特征提取技术,而卷积神经网络(CNN)模型则需要大量数据集来减轻过拟合和泛化能力差的问题。为此,本研究旨在开发不依赖于分割方法或自定义特征的用于自动宫颈癌检测的深度学习模型。由于数据有限,我们采用了迁移学习方法,使用预训练的 CNN 模型直接对巴氏涂片图像进行七分类任务操作。我们在 Google 协作平台的公开 Herlev 数据集上使用 13 个预训练的深度 CNN 模型进行了详细的评估和比较。在准确性和性能方面,DenseNet-201 是表现最好的模型。本文研究的预训练 CNN 模型取得了良好的实验效果,且所需的计算时间较少。