基于预训练MobileNet模型的宫颈病变分类

Tianxiang Xu, Ping Li, Xiao-xi Wang
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引用次数: 0

摘要

本文旨在建立宫颈癌筛查的智能诊断模型,解决目前医生和传统计算机辅助诊断方法的不足。我们提出了一种基于迁移学习的计算机辅助诊断方法,该方法使用预先训练好的MobileNetV2模型对阴道镜图像进行分类。首先对数据进行增强和归一化处理,然后利用ImageNet上预训练的MobileNetV2模型实现阴道镜图像中宫颈病变的分类诊断。最后将诊断结果与阴道镜医师的诊断结果进行比较。实验表明,该方法可有效诊断CIN2+病变,准确率为75.00%,高于阴道镜医师的平均诊断水平。该方法在一定程度上克服了医生诊断的不足。CIN2+病变分类对阴道镜影像的效率优于其他主流模型,对当前宫颈病变筛查具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cervical Lesions Classification Based on Pre-trained MobileNet Model
This paper aims to establish an intelligent diagnosis model of cervical cancer screening and to solve the shortcomings of the physician and traditional computer-aided diagnosis methods in the current. We propose a computer-aided diagnosis method based on transfer learning, which uses the pre-trained MobileNetV2 model to classify colposcopic images. Firstly, the data is augmented and normalized, and then the MobileNetV2 model pre-trained on ImageNet is used to realize the classification diagnosis of cervical lesions in colposcopic images. Finally, the diagnosis results are compared with those of colposcopic physicians. Experiments show that this method can effectively diagnose CIN2+ lesions with an accuracy rate of 75.00%, which is higher than the average level of diagnosis by colposcopy physicians. This method overcomes the shortcomings of physicians’ diagnoses to a certain extent. The efficiency of CIN2+ lesion classification for colposcopy images is superior to other mainstream models, which is greatly significant for the current cervical lesion screening.
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