通过半监督学习改进内窥镜图像的多类分类

Hang Wu, Li Tong, May D Wang
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引用次数: 0

摘要

光学内窥镜(OE)是一种新兴的生物医学成像模式,可帮助医生对患者的发育不良程度做出实时的临床决策。然而,将医学影像分类应用于计算机辅助诊断的性能主要受到缺乏标记图像的限制。为了提高分类性能,我们提出了一种半监督学习算法,该算法可结合大量未标记图像集。我们的真实世界内窥镜成像数据集包括 425 张标注图像和 2826 张未标注图像。利用半监督学习算法,我们在所有评估指标(即精确度、召回率、F1 分数和 Cohen-Kappa 统计量)上都比监督学习算法的多类分类性能提高了约 10%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Improving Multi-class Classification for Endomicroscopic Images by Semi-supervised Learning.

Improving Multi-class Classification for Endomicroscopic Images by Semi-supervised Learning.

Improving Multi-class Classification for Endomicroscopic Images by Semi-supervised Learning.

Improving Multi-class Classification for Endomicroscopic Images by Semi-supervised Learning.

Optical Endomicroscopy (OE) is a newly-emerged biomedical imaging modality that can help physicians make real-time clinical decisions about patients' grade of dysplasia. However, the performance of applying medical imaging classification for computer-aided diagnosis is primarily limited by the lack of labeled images. To improve the classification performance, we propose a semi-supervised learning algorithm that can incorporate large sets of unlabeled images. Our real-world endo-microscopic imaging datasets consist of 425 labeled images and 2,826 unlabeled ones. With semi-supervised learning algorithms, we improved multi-class classification performance over supervised learning algorithms by around 10% in all evaluation metrics, namely precision, recall, F1 score and Cohen-Kappa statistics.

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