Identification of tuberculosis bacteria based on shape and color

Manuel G. Forero , Filip Sroubek , Gabriel Cristóbal
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引用次数: 164

Abstract

Tuberculosis and other mycobacteriosis are serious illnesses which control is based on early diagnosis. A technique commonly used consists of analyzing sputum images for detecting bacilli. However, the analysis of sputum is time consuming and requires highly trained personnel to avoid high errors. Image-processing techniques provide a good tool for improving the manual screening of samples. In this paper, a new autofocus algorithm and a new bacilli detection technique is presented with the aim to attain a high specificity rate and reduce the time consumed to analyze such sputum samples. This technique is based on the combined use of some invariant shape features together with a simple thresholding operation on the chromatic channels. Some feature descriptors have been extracted from bacilli shape using an edited dataset of samples. A k-means clustering technique was applied for classification purposes and the sensitivity vs specificity results were evaluated using a standard ROC analysis procedure.

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基于形状和颜色的结核细菌鉴定
结核病和其他分枝杆菌病是严重的疾病,控制的基础是早期诊断。一种常用的技术包括分析痰图像以检测杆菌。然而,痰液的分析是耗时的,需要训练有素的人员来避免高误差。图像处理技术为改进人工筛选样品提供了一个很好的工具。本文提出了一种新的自动聚焦算法和一种新的杆菌检测技术,以获得高特异性和减少分析此类痰样本所需的时间。该技术是基于结合使用一些不变的形状特征以及对彩色通道进行简单的阈值处理。使用编辑的样本数据集从杆菌形状中提取了一些特征描述符。采用k-均值聚类技术进行分类,并使用标准ROC分析程序对敏感性和特异性结果进行评估。
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