评估和消除炎症细胞:数字细胞学中的机器学习方法

Jing Ke, Junwei Deng, Yizhou Lu, Dadong Wang, Yang Song, Huijuan Zhang
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引用次数: 0

摘要

在细胞学图像自动诊断中,假阳性或假阴性常伴有炎性细胞,使异常或正常细胞的鉴别模糊不清。这些表型在形状、颜色和纹理上呈现出与细胞相似的外观。在本文中,为了评估炎症并消除它们对识别感兴趣的细胞的干扰,我们提出了一个两阶段框架,其中包含一个基于深度学习的神经网络来检测和估计炎症细胞的比例,以及一个基于形态学的图像处理架构来从带有图像喷漆的数字图像中消除炎症细胞。为了进行性能评估,我们将该框架应用于我们收集的具有各种复杂性的真实临床细胞学幻灯片。我们对来自不同患者的49张阳性和49张阴性载玻片的亚图像进行了测试,每张载玻片的放大倍率为40倍。实验显示了整个幻灯片图像中炎症覆盖的准确概况,以及它们在图像中呈现的所有细胞中的比例。细胞技术专家证实,超过96.0%的炎症细胞在像素水平上被成功检测到,并且在细胞学图像中被很好地绘制,没有带来新的识别问题。
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Assessment and Elimination of Inflammatory Cell: A Machine Learning Approach in Digital Cytology
In automatic cytology image diagnosis, the false-positive or false-negative often come up with inflammatory cells that obscure the identification of abnormal or normal cells. These phenotypes are presented in the similar appearance in shape, color and texture with cells to detect. In this paper, to evaluate the inflammation and eliminate their disturbances of recognizing cells of interests, we propose a two-stage framework containing a deep learning based neural network to detect and estimate the proportions of inflammatory cells, and a morphology based image processing architecture to eliminate them from the digital images with image inpainting. For performance evaluation, we apply the framework to our collected real-life clinical cytology slides presented with a variety of complexities. We evaluate the tests on sub-images cropped from 49 positive and 49 negative slides from different patients, each at the magnification rate of 40×. The experiments shows an accurate profile of the coverage of inflammation in the whole slide images, as well as their proportion in all the cells presented in the image. Confirmed by cytotechnologists, more than 96.0% of inflammatory cells are successfully detected at pixel level and well-inpainted in the cytology images without bringing new recognition problem.
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