利用计算智能诊断白血病

Sunita Chand, V. P. Vishwakarma
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引用次数: 4

摘要

白血病是一种致命的疾病,常见于儿童和55岁以上的成年人。它也被称为血癌或骨髓癌。[1]根据受累细胞的不同,可分为骨髓性白血病和淋巴细胞性白血病。由于该病的症状非常常见,如发烧、疲劳和身体疼痛,因此在早期阶段不易发现,而在后期阶段则是致命的。因此,早期诊断对疾病的预后至关重要。本文对广泛使用的机器学习算法SVM和相对较新的机器学习算法即极限学习机进行了比较分析。该分类基于对公开数据集ALL-IDB1的血液涂片图像的分割。结果表明,ELM的准确率为92.2448%,优于准确率为86.3636%的SVM。
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Leukemia Diagnosis using Computational Intelligence
Leukemia is a fatal disease that is commonly found in children and also in adults above 55 years of age. It is also known as cancer of blood or bone marrow. [1] It can be categorized into myelogenous leukemia or lymphocytic on the basis of the cells affected by the disease. As the symptoms of the disease are very common like fever, fatigue and body ache, it is not easily detectable at early stages which prove fatal at later stages. So diagnosing it at early stage is crucial for the better prognosis of disease. The paper presents a comparative analysis of extensively used machine learning (ML) algorithm SVM and the relatively new ML algorithm i.e., extreme learning machine for predicting Leukemia. The classification is based on the segmentation of blood smear images publically available dataset ALL-IDB1. The results shows that ELM with an accuracy of 92.2448% outperforms SVM with accuracy 86.3636%.
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