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Detection of sickle cell anaemia and thalassaemia causing abnormalities in thin smear of human blood sample using image processing

机译:使用图像处理检测镰状细胞贫血和地中海贫血患者血液样品薄涂片异常

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About 3.2 million people suffer from sickle-cell disease. Aim of this paper is to detect sickle cell anaemia and thalassaemia. The proposed method involves acquisition of the thin blood smear microscopic images, pre-processing by applying median filter, segmentation of overlapping erythrocytes using marker-controlled watershed segmentation, applying morphological operations to enhance the image, extraction of features such as metric value, aspect ratio, radial signature and its variance, and finally training the K-nearest neighbor classifier to test the images. The algorithm processes the infected cells increasing the speed, effectiveness and efficiency of training and testing. The K-Nearest Neighbour classifier is trained with 100 images to detect three different types of distorted erythrocytes namely sickle cells, dacrocytes and elliptocytes responsible for sickle cell anaemia and thalassemia with an accuracy of 80.6% and sensitivity of 87.6%.
机译:大约320万人患有镰状细胞疾病。本文的目的是检测镰状细胞贫血和地中海贫血。所提出的方法涉及采集薄血液涂片微观图像,通过施加中值过滤器,使用标记控制的流域分割进行重叠红细胞的分割,施加形态学操作来增强图像,提取等特征,宽高比,径向签名及其方差,最后训练k最近邻分类器来测试图像。该算法处理受感染的细胞增加训练和测试的速度,有效性和效率。 K-CirsteL邻分类器培训,有100张图像培训,以检测三种不同类型的扭曲红细胞,即负责镰状细胞贫血和地中海贫血的镰状细胞,德科细胞和椭圆形,精度为80.6%,敏感性为87.6%。

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