一种利用锌染色痰涂片图像自动评估结核感染程度的新算法

Rohit Nayak, V. Shenoy, R. R. Galigekere
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引用次数: 38

摘要

本文提出了一种通过计算锌染色痰涂片彩色图像中抗酸杆菌(AFB)数量来自动评估结核菌感染程度的新算法。该算法分为两个阶段。第一个(“预处理”)阶段包括利用颜色信息从背景中分割图像中的候选AFB,基于HSI色彩空间中使用马氏距离的像素分类。在此背景下,我们引入了一种新的“分而治之”策略来提高颜色分类的鲁棒性。预处理阶段之后是连接组件标记,大小阈值去除噪声对象,使用新的接近测试算法进行接近分组,以及基于区域的分类。我们的算法可以识别和计算AFB的数量,而不考虑它们的形状,可以处理具有串珠结构的杆菌(这是重要的,并且是结核病的特异性),并且在分离团块方面显示出合理的成功。我们的实验共考虑了来自12例以上患者的205张锌染色痰涂片图像。基于其他36张图像构建的HSI聚类,169张图像的结果令人鼓舞。用于建立数据库和验证的一些图像包括印度政府为培训目的发送的图像。
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A new algorithm for automatic assessment of the degree of TB-infection using images of ZN-stained sputum smear
This paper describes a new algorithm for automatic assessment of the degree of TB-infection, by counting the number of Mycobacteria i.e., acid fast bacilli (AFB) in the color images of ZN-stained sputum smear. This algorithm consists of two stages. The first (“pre-processing”) stage involves exploiting color information to segment the candidate AFB in the image from the background, based on classification of pixels in the HSI color-space using Mahalanobis distance. In this context, we introduce a novel “divide and conquer” strategy to improve the robustness of color-classification. The pre-processing stage is followed by connected component labeling, size-thresholding to remove noisy objects, proximity-grouping by using a novel proximity-test algorithm, and area-based classification. Our algorithm identifies and counts the number of AFB irrespective of their shapes, can handle bacilli with beaded structure (which are important and are specific to TB) and has shown reasonable success in isolating clumps. A total of 205 images of ZN-stained sputum smears taken from more than 12 patients were considered in our experiments. Results on 169 images, based on HSI clusters built from 36 other images, are encouraging. Some of the images used in building the data-base and also in validation, include those sent by the RNTCP (Govt. of India) for training-purposes.
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