基于深度学习的常规子宫颈抹片图像分类集合方法

Paisit Khanarsa, Satanat Kitsiranuwat
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引用次数: 0

摘要

宫颈癌筛查可在宫颈癌前异常发展为浸润性癌症之前发现早期征兆。子宫颈抹片检查是一种广泛使用的早期发现和预防子宫颈癌的筛查方法。在许多偏远地区,可用于解读子宫颈抹片筛查检测结果的细胞学专家人数不足。人员不足使得检测判读非常耗时。为解决这一问题,人们采用了深度学习技术来检测宫颈癌细胞并为细胞学专家提供支持。因此,有人提出了一种深度学习模型与宫颈细胞最大发生率和最大概率得分等集合技术的综合方法。通过对巴氏涂片的多细胞评估,可以使用所提出的方法对单个宫颈细胞图像进行综合预测。比较了预先训练的深度学习模型和提出的方法的分类结果。在实验结果中,拟议方法的准确率可达 97% 以上,而最佳预训练深度学习模型的准确率可达 85% 以上。因此,所提出的方法有可能帮助医生或细胞学专家对巴氏涂片图像的宫颈细胞类型进行分类。
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Deep Learning-based Ensemble Approach for Conventional Pap Smear Image Classification
Cervical cancer screening allows the early signs of precancerous abnormalities in the cervix before they develop into invasive cancer. The Pap Smear is a widely used screening for early detection and prevention of cervical cancer. In many remote areas, the number of cytologists available to interpret pap smear screening tests is insufficient. This lack of personnel makes the test interpretation very time-consuming. To address this, deep learning techniques have been employed to detect cervical cancer cells and support cytologists. Therefore, an integrative approach with deep learning models and the ensemble techniques such as the maximum occurrence and the maximum probability score of cervical cells was proposed. The multi-cell assessment of the Pap smear slide allowed aggregate predictions of single cervical cell images using the proposed method. The classification results between pre-trained deep learning models and the proposed method were compared. In the experimental results, the proposed method can achieve an accuracy score of more than 97%, while the best pre-trained deep learning model can attain an accuracy score of more than 85%. Hence, the proposed method may have the potential to assist physicians or cytologists in the classification of cervical cell types for Pap Smear images.
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