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Random forest-based tuberculosis bacteria classification in images of ZN-stained sputum smear samples - Springer

机译:ZN染色痰涂片样本图像中基于森林的随机结核病细菌分类-Springer

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摘要

The World Health Organization suggests visual examination of stained sputum smear samples as a preliminary and basic diagnostic technique for diagnosing tuberculosis. The visual examination process requires much time of laboratorian, and also, it is prone to mistakes. For this purpose, this paper proposes a novel random forest (RF)-based segmentation and classification approaches for the automated classification of Mycobacterium tuberculosis in microscopic images of Ziehl–Neelsen-stained sputum smears obtained using a light-field microscope. The RF supervised learning method is improved to classify each pixel depending on local color distributions as a part of candidate bacilli regions. Therefore, each pixel is labeled as either a candidate tuberculosis (TB) bacilli pixel or not. The candidate pixels are grouped together using connected component analysis. Each pixel group is then rotated, resized and centrally positioned within a bounding box, respectively, in order to utilize appearance-based tuberculosis bacteria identification algorithms. Finally, each region is classified by using the proposed RF learning algorithm trained on manually marked TB bacteria regions in the training images. The algorithm produces results that agree well with manual segmentation and identification. Different two-class pixel and object classifiers are also compared to show the performance of the proposed RF-based pixel segmentation and bacilli objects identification algorithm. The sensitivity and specificity of the proposed classifier are above 75.77 and 96.97 % for the segmentation of the pixels, respectively. It is also revealed that the sensitivity increases over 93 % when the staining is performed in accordance with the procedure. Moreover, these measures are above 89.34 and 62.89 % for the identification of bacilli objects. The results show that the proposed novel method is quite successful when compared to the other applied methods.
机译:世界卫生组织建议对痰涂片样本进行目测检查,作为诊断结核病的初步和基本诊断技术。目视检查过程需要很多时间,而且容易出错。为此,本文提出了一种新颖的基于随机森林(RF)的分割和分类方法,用于在使用光场显微镜获得的Ziehl–Neelsen染色痰涂片的显微镜图像中对结核分枝杆菌进行自动分类。改进了射频监督学习方法,以根据局部颜色分布将每个像素分类为候选杆菌区域的一部分。因此,每个像素都标记为候选结核(TB)杆菌像素或不标记为候选结核杆菌像素。使用连接的分量分析将候选像素分组在一起。然后,每个像素组分别旋转,调整大小并在边界框内居中定位,以便利用基于外观的结核菌识别算法。最后,通过使用在训练图像中手动标记的TB细菌区域上训练的拟议RF学习算法对每个区域进行分类。该算法产生的结果与手动分割和识别非常吻合。还比较了不同的两类像素和对象分类器,以显示所提出的基于RF的像素分割和杆菌目标识别算法的性能。提出的分类器对像素分割的灵敏度和特异性分别高于75.77%和96.97%。还表明,按照程序进行染色时,灵敏度提高了93%以上。此外,这些措施用于鉴定细菌物体的比例高于89.34和62.89%。结果表明,与其他应用方法相比,该新方法非常成功。

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