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A noble technique for detecting anemia through classification of red blood cells in blood smear

机译:通过对血涂片中的红细胞进行分类来检测贫血的一种高贵技术

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Anemia is responsible for various health hazards. Anemia decreases and also alters the shape of red blood cells (RBCs) present in our blood. Different type of RBC shapes account for different type of anemia. Automated blood cell analyzers can detect anemia and provide RBC, WBC and platelet count but anemia type identification, which requires classification of RBCs is carried out manually. The classification of RBCs provides invaluable information to pathologists for diagnosis and treatment of various types of anemia. The manual visual inspection is tedious, time consuming, repetitive and prone to human error. In this paper we have performed the automated classification of RBCs as falling into one of the anemia type. The segmentation and classification of the RBCs are the most important stages. The proposed system identifies RBCs using intensity ratio transformation followed by centroid contour distance for segmentation of RBC. Due to the large RBC shape variations, a shape independent framework for identification and segmentation is required. The proposed method can successfully separate the agglomerates of RBCs in spite of grouping of non-uniform RBC shapes. Two geometric features are used to distinguish between normal and anemic RBCs: Aspect Ratio and Fourier Descriptors. The Euclidean distance measure is used as a criterion to determine the similarity degree between the templates and testing samples. Also the presence of high number of nucleated RBCs (NRBCs) in severe anemic patients gives erroneous WBC count in automated cell-analyzers and requires correction which is carried out manually. This paper also presents the automated NRBC count and provides automatic solution of WBC count correction obtained from automated hematology analyzers.
机译:贫血是造成各种健康危害的原因。贫血会减少,还会改变我们血液中存在的红细胞(RBC)的形状。不同类型的RBC形状可导致不同类型的贫血。自动化血细胞分析仪可以检测贫血并提供RBC,WBC和血小板计数,但是需要手动对RBC进行分类的贫血类型识别。红细胞的分类为病理学家诊断和治疗各种类型的贫血提供了宝贵的信息。手动目视检查是繁琐,耗时,重复且容易发生人为错误的。在本文中,我们已将RBC自动分类为一种贫血类型。红细胞的分割和分类是最重要的阶段。所提出的系统使用强度比变换和质心轮廓距离进行RBC分割来识别RBC。由于RBC形状变化较大,因此需要用于识别和分割的形状独立框架。尽管对不均匀的RBC形状进行了分组,但所提出的方法仍可以成功地分离RBC的附聚物。有两种几何特征可用来区分正常和贫血RBC:长宽比和傅立叶描述符。欧几里德距离度量用作确定模板和测试样本之间相似度的标准。此外,严重贫血患者中大量有核红细胞(NRBC)的存在会在自动细胞分析仪中产生错误的WBC计数,需要手动进行校正。本文还介绍了自动NRBC计数,并提供了从自动血液分析仪获得的WBC计数校正的自动解决方案。

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