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Efficient Features for Effectively Detection of Leukemia Cells

机译:有效检测白血病细胞的有效特征

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Leukemia the disease of blood forming cells is a cancer that usually begin in the bone marrow. It results in high numbers of abnormal blood cells usually affecting the leukocytes, or white blood cells of a body. Oncologists and researchers are still working on appropriate reasons behind the cause of leukemia and its early detection as well. The contemporary techniques to detect leukemia are usually time consuming, laborious and subject oriented. In this research we presented a novel technique to detect the leukemia at its early stage. Detection of leukemia through images is quick and cost effective as there is no need of advanced lab testing and experts with in-depth knowledge. To identify whether the disease is acute or chronic, algorithmic techniques depend on the affected white blood cells. In our work, color filter is used as a preprocessing step to detect the region of interest that is white blood cells of ALL-IDB dataset. Then the structural feature (wavelet and curvelet descriptor) is used to detect the important features. This feature vector is trained on KNN and SVM classifier to check the correctness rate of this algorithm. Our approach achieved the accuracy of 92.7% which proved better in comparison with existing techniques in this field of medical research.
机译:白血病血液形成细胞的疾病是通常在骨髓中开始的癌症。它导致高血液细胞通常影响白细胞或身体的白细胞。肿瘤学家和研究人员仍在遵循白血病原因及其早期检测的适当原因。检测白血病的当代技术通常是耗时,艰苦的,受试者导向。在本研究中,我们提出了一种新颖的技术来在早期检测白血病。通过图像检测白血病是快速且成本效益,因为不需要具有深入知识的先进实验室测试和专家。为了确定疾病是否是急性或慢性的,算法技术取决于受影响的白细胞。在我们的工作中,滤色器被用作检测IDB数据集的白细胞的感兴趣区域的预处理步骤。然后使用结构特征(小波和曲线描述符)来检测重要特征。该特征向量在KNN和SVM分类器上培训,检查该算法的正确性率。我们的方法达到了92.7%的准确性,与该医学领域的现有技术相比,这证明了更好。

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