数字化显微外周血涂片血小板分类的比较

Z. E. Fitri, I. Purnama, Eko Pramunanto, Mauridhi Hery Pumomo
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引用次数: 14

摘要

血小板疾病通常是由异常引起的,如血小板数量和形态畸形的异常。血小板异常的例子包括Wiskottldrich综合征中的小血小板、某些慢性骨髓增生性疾病中的巨血小板、Benard Soulier综合征和灰色血小板综合征中的巨血小板减少症。全自动红细胞计数分析的常见问题是血小板形态异常无法检测,因此需要使用外周血涂片进行显微镜检查。但显微检查也存在主观依赖于医学分析师/病理学家等缺点。结合二阶统计特征提取和几种方法的比较,提出了一种从数字化显微外周血涂片中准确分类血小板的方法。比较方法有k近邻法(KNN)和学习向量量化法(LVQ)。在特征提取中,我们使用灰度共生矩阵(GLCM)得到角秒矩(ASM)、反差矩(IDM)和熵值。将这些值作为输入插入KNN分类器方法中,对外周血涂片中的血细胞进行分类。基于特征提取值的细胞分类分为三类(白细胞、正常血小板和巨血小板)。实验结果表明,两种方法均能在所有颜色通道上对血小板进行分类,KNN的平均准确率为83.67%,LVQ的平均准确率为74.75%。因此,KNN分类法对外周血涂片血小板的分类效果优于LVQ。
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A comparison of platelets classification from digitalization microscopic peripheral blood smear
Thrombocyte disease is usually caused by abnormalities, such as abnormalities based on the number and morphological deformities of platelets. Examples of platelet abnormalities include small platelets in Wiskottldrich syndrome, giant platelets in some chronic myeloproliferative diseases, Benard Soulier syndrome and Macrothrombocytopenia in gray platelet syndrome. The usual problem of automatic FBC analysis is that undetectable morphological abnormalities of platelets so the microscopic examination is required using peripheral blood smear. But microscopic examination also has some weakness such as subjective depend on medical analyst/pathologist. We propose an accurate method to classify plateles from digitalization microscopic peripheral blood smear using combination of second order statistic feature extraction and comparing several methods. The comparing methods are K-Nearest Neighbor (KNN) and Learning Vector Quantization (LVQ). In this feature extraction, we use Gray Level Co-occurrence Matrix (GLCM) to get Angular Second Moment (ASM), Invers Different Moment (IDM) and entropi values. Those values will be inserted as input in KNN classifier method to classify blood cell in peripheral blood smear. Classify of cells based on feature extraction values is divided into three classes (leukocytes, normal platelets and giant platelets). Based on the result of experiments, both of methods can classify platelets on all color channels with average accuracy are 83.67% for KNN and 74.75% for LVQ. So, The KNN classification method is better able than LVQ to classify platelets in peripheral blood smear.
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