急性白血病卖照片的方法和措施

Nursanti Novi Arisa, Chastine Fatichah
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引用次数: 3

摘要

白血病是一种可导致死亡的危险疾病。白血病的类型之一是急性白血病,包括ALL(一种急性淋巴细胞白血病)和AML(急性髓细胞白血病)。通过计算和分析白细胞类型,可以最快地识别这种疾病。然而,人工计数和鉴定白细胞类型仍然受到时间的限制。因此,为了更快、更准确地得到结果,有必要进行自动计数过程。先前的研究表明,在急性白血病细胞图像的自动计数过程中,存在着一些障碍,即接触细胞的存在以及几何特征的实现无法产生准确的计数。这是因为细胞的形状多种多样。本研究提出了一种利用基于种子检测(质心)和K-Means方法的多遍投票法(MPV)对急性白血病细胞图像进行白细胞计数和接触细胞分离的方法。用于分离前景和背景区域的初始分割是精明的边缘检测。下一阶段是使用多遍投票方法的种子检测(质心)。白细胞的计数是基于产生的质心的结果。使用K-Means方法分离接触单元的存在,初始质心的确定基于Multi-Pass Voting方法的结果。基于40幅急性白血病数据集图像的评估结果,该方法能够正确地基于质心进行计算。它还能够将触摸单元分离为单个单元。白细胞计数结果的准确率约为98.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PERHITUNGAN DAN PEMISAHAN SEL DARAH PUTIH BERDASARKAN CENTROID DENGAN MENGGUNAKAN METODE MULTI PASS VOTING DAN K-MEANS PADA CITRA SEL ACUTE LEUKEMIA
Leukemia is one of the dangerous diseases that can cause death. One of the types of leukemia is acute leukemia that includes ALL ( A cute L ymphoblastic L eukemia) and AML (Acute Myeloid Leukemia). The fastest identification against this disease can be done by computing and analysing white blood cell types. However, the manual c ounting and identification of the white blood cell types are still limited by time. Therefore, automatic counting process is necessary to be conducted in order to get the results more quickly and accurately. Previous studies showed that automatic counting process in the image of Acute Leukemia cells faced some obstacles, the existence of touching cell and the implementation of  geometry feature that cannot produce an accurate counting. It is because the shapes of the cell are various. This study proposed a method for the counting of white blood cells and the separation of touching cells on Acute Leukemia cells image by using Multi Pass Voting method (MPV) based on seed detection (centroid) and K-Means method. Initial segmentation used for separating foreground and background area is canny edge detection. The next stage is seed detection (centroid) using Multi Pass Voting method. The co unting of white blood cells is based on the results of the centroid produced. The existence of the touching cells are  separated using K-Means method, the determination of the initial centroid  is based on the results of the Multi Pass Voting method. Based on the evaluation results of 40 images of Acute Leukemia dataset, the proposed method is capable to properly compute based on the centroid. It is also able to separate the touching cell into a single cell. The accuracy of the white blood cell counting result is about 98,6%.
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