子宫颈细胞分类的半监督深度学习方法

Siqi Zhao, Yongjun He, Jian Qin, Zixuan Wang
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引用次数: 7

摘要

目前,薄壁细胞学检查(TCT)是最流行的宫颈癌细胞学检查技术。它可以检测癌前病变和微生物感染。但该技术完全依靠人工操作和医生肉眼观察,工作量大,准确率低。为了解决这一问题,近年来出现了病理自动诊断。宫颈细胞分类是智能宫颈癌诊断系统的关键技术。训练基于深度神经网络的分类模型需要大量的数据。然而,宫颈细胞标记需要专科医生,且标记成本高,导致该领域缺乏足够的标记数据。为了解决这一问题,我们提出了一种方法,通过引入人工特征和投票机制来实现半监督学习中的数据扩展,从而在少量标记数据的情况下保证宫颈细胞分类的高精度。该方法包括三个主要步骤:使用清晰度函数过滤出高质量的宫颈细胞图像,对少量图像进行注释,以及使用投票机制平衡训练数据。在标记数据较少的情况下,本文方法的准确率可达91.94%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Semi-supervised Deep Learning Method for Cervical Cell Classification
Currently, the Thinprep cytologic test (TCT) is the most popular cervical cancer cytology test technique. It can detect precancerous conditions and microbial infections. However, this technique entirely relies on manual operation and doctors' naked eye observation, resulting in a heavy workload and low accuracy rate. Recently, automatic pathological diagnosis has been developed to solve this problem. Cervical cell classification is a key technology in the intelligent cervical cancer diagnosis system. Training a deep neural network-based classification model requires a large amount of data. However, cervical cell labeling requires specialized physicians and the cost of labeling is high, resulting in a lack of sufficient labeling data in this field. To address this problem, we propose a method to ensure high accuracy in cervical cell classification with a small amount of labeled data by introducing manual features and a voting mechanism to achieve data expansion in semi-supervised learning. The method consists of three main steps, using a clarity function to filter out high-quality cervical cell images, annotating a small amount of them, and balancing the training data using a voting mechanism. With a small amount of labeled data, the accuracy of the proposed method in this paper can reach to 91.94%.
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