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Image analysis for malaria parasite detection from microscopic images of thick blood smear

机译:从浓血涂片的显微图像中检测疟原虫的图像分析

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Malaria is a major health issue and causes millions of deaths a year worldwide. Since the diagnosis of malaria is predominately done using light microscopy method, well-trained microscopists are required. By using thick blood smear, a large amount of blood can be examined quickly and easily. This work deals with the automatic estimation of parasite density in `parasites per microliter of blood' from the microscopic images of Giemsa-stained thick blood smear. The algorithm is primarily divided into three steps: (1) preprocessing & segmentation, (2) feature extraction and (3) classification. In the preprocessing step, an attempt is made to reduce variations due to various factors like lighting conditions and concentration of staining solution. The image is segmented using adaptive thresholding, followed by several mathematical morphological operations. In the second step, various features based on shape, texture, color and frequency domain are extracted. Using the classification step, the parasite candidate is classified into its correct life stage or classified as leukocytes. The novelty of the algorithm is that it can detect all the life stages (ring, trophozoite, schizont, gametocyte) of parasites and leukocytes unlike detecting only ring life stage in the state-of-the-art algorithms. The discrepancy in the automated parasite count by the proposed algorithm is 7.14%, which is suitable for computer aided diagnosis (CAD) of malaria according to world health organization (WHO) quality control standards.
机译:疟疾是一个主要的健康问题,全世界每年造成数百万人死亡。由于疟疾的诊断主要是使用光学显微镜方法进行的,因此需要训练有素的显微镜专家。通过使用浓稠的血液涂片,可以快速轻松地检查大量血液。这项工作涉及根据吉姆萨染色的浓血涂片的显微图像自动估算“每微升血液中的寄生虫”中的寄生虫密度。该算法主要分为三个步骤:(1)预处理和分割,(2)特征提取和(3)分类。在预处理步骤中,尝试减少由于各种因素(例如光照条件和染色液的浓度)而引起的变化。使用自适应阈值分割图像,然后进行一些数学形态学运算。在第二步中,提取基于形状,纹理,颜色和频域的各种特征。使用分类步骤,将寄生虫候选物分类到其正确的生命阶段或分类为白细胞。该算法的新颖之处在于,它可以检测到寄生虫和白细胞的所有生命阶段(环,滋养体,裂殖体,配子细胞),而与现有技术中仅检测环生命阶段不同。所提出的算法在自动寄生虫计数上的差异为7.14%,根据世界卫生组织(WHO)的质量控制标准,适用于疟疾的计算机辅助诊断(CAD)。

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