Department of ICT, MIT, Manipal University, Manipal, India.
Med Biol Eng Comput. 2018 Mar;56(3):483-489. doi: 10.1007/s11517-017-1708-9. Epub 2017 Aug 17.
Red blood cell count plays a vital role in identifying the overall health of the patient. Hospitals use the hemocytometer to count the blood cells. Conventional method of placing the smear under microscope and counting the cells manually lead to erroneous results, and medical laboratory technicians are put under stress. A computer-aided system will help to attain precise results in less amount of time. This research work proposes an image-processing technique for counting the number of red blood cells. It aims to examine and process the blood smear image, in order to support the counting of red blood cells and identify the number of normal and abnormal cells in the image automatically. K-medoids algorithm which is robust to external noise is used to extract the WBCs from the image. Granulometric analysis is used to separate the red blood cells from the white blood cells. The red blood cells obtained are counted using the labeling algorithm and circular Hough transform. The radius range for the circle-drawing algorithm is estimated by computing the distance of the pixels from the boundary which automates the entire algorithm. A comparison is done between the counts obtained using the labeling algorithm and circular Hough transform. Results of the work showed that circular Hough transform was more accurate in counting the red blood cells than the labeling algorithm as it was successful in identifying even the overlapping cells. The work also intends to compare the results of cell count done using the proposed methodology and manual approach. The work is designed to address all the drawbacks of the previous research work. The research work can be extended to extract various texture and shape features of abnormal cells identified so that diseases like anemia of inflammation and chronic disease can be detected at the earliest.
红细胞计数在确定患者的整体健康状况方面起着至关重要的作用。医院使用血细胞计数器来计数血液细胞。传统的在显微镜下放置涂片并手动计数细胞的方法会导致错误的结果,并且会给医学实验室技术人员带来压力。计算机辅助系统将有助于在更短的时间内获得更精确的结果。这项研究工作提出了一种用于计数红细胞数量的图像处理技术。它旨在检查和处理血液涂片图像,以支持红细胞的计数,并自动识别图像中正常和异常细胞的数量。该算法对外部噪声具有鲁棒性,用于从图像中提取 WBC。使用粒度分析将红细胞与白细胞分离。使用标记算法和圆形 Hough 变换对获得的红细胞进行计数。通过计算像素与边界的距离来估计圆形绘制算法的半径范围,从而实现整个算法的自动化。对使用标记算法和圆形 Hough 变换获得的计数进行了比较。结果表明,圆形 Hough 变换在计数红细胞方面比标记算法更准确,因为它成功地识别了即使是重叠的细胞。该工作还打算比较使用提出的方法和手动方法进行的细胞计数结果。这项工作旨在解决以前研究工作的所有缺点。该研究工作可以扩展到提取异常细胞的各种纹理和形状特征,以便尽早检测出贫血、炎症和慢性疾病等疾病。