使用迁移学习识别白血病亚型和使用有效的机器学习方法提取可区分特征

Tahsen Islam Sajon, Maria Chowdhury, Azmain Yakin Srizon, Md. Farukuzzaman Faruk, S. M. Mahedy Hasan, Abu Sayeed, A. F. M. Minhazur Rahman
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引用次数: 1

摘要

尽管对白血病进行了广泛的研究,但每年仍有超过35万人死于这种疾病。自动化白血病诊断可能会改变这种情况,因为可以立即采取行动;因此,白血病的准确检测一直是研究人员感兴趣的课题。随着统计数据的增长和扩大,对精确白血病识别的需求继续增加。在这项研究中,我们调查了一个使用世界卫生组织分类方案的白血病数据集。我们开发了一种改进的DenseNet201设计,在不依赖数据增强的情况下实现了99.69%的总体准确率。此外,我们通过使用三种特征提取方法(即hu矩、haralick纹理和无参数阈值邻接统计)和几种机器学习分类器(即高斯过程、支持向量机、k近邻或KNN、额外树分类器和逻辑回归)识别和验证白血病分类的关键特征,这些分类器优于早期基于特征提取的技术。
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Recognition of Leukemia Sub-types Using Transfer Learning and Extraction of Distinguishable Features Using an Effective Machine Learning Approach
Although extensive research has been conducted on leukemia, the disease still accounts for more than 350,000 fatalities annually. Automated Leukemia diagnosis may alter the situation because actions can be taken immediately; as a result, accurate detection of Leukemia has been a subject of interest for researchers. As statistics grow and expand, the need for precise leukemia identification continues to increase. In this study, we investigated a dataset of leukemia that used the WHO classification scheme. We developed a modified DenseNet201 design that achieved an overall accuracy of 99.69% without relying on data augmentation. Additionally, we identified and validated key features for leukemia classification by utilizing three feature extraction approaches (i.e., hu moments, haralick texture and parameter-free threshold adjacency statistics) and several machine learning classifiers (i.e., Gaussian Process, Support Vector Machine, K-Nearest Neighbor or KNN, Extra Trees Classifier, and Logistic regression) that outperformed earlier feature extraction-based techniques.
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