利用神经集合和记忆深度特征优化进行 ALL 分类

Muhammad Awais, Riaz Ahmad, Nabeela Kausar, A. Alzahrani, Nasser Alalwan, Anum Masood
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引用次数: 0

摘要

急性淋巴细胞白血病(ALL)是一种致命的血液疾病,其特征是起源于骨髓的未成熟白细胞过度增殖。要对急性淋巴细胞白血病进行有效的预后和治疗,就必须对其进行准确及时的检测。深度卷积神经网络(CNN)在数字病理学领域取得了可喜的成果。然而,由于不同亚型白血病在形态上存在细微差别,因此它们在对不同亚型白血病进行分类时面临挑战。本研究提出了一种改进的管道,用于从血液涂片图像中对 ALL 进行二元检测和亚型分类。首先,提出了一种定制的 88 层深度 CNN,并利用迁移学习与 GoogleNet CNN 一起进行训练,以创建特征集合。此外,本研究还将特征选择问题建模为组合优化问题,并提出了二元鲸优化算法的记忆版本,结合基于差分进化的局部搜索方法,以增强对特征搜索空间的探索和利用。所提出的方法利用公开的标准数据集进行了验证,这些数据集包含各种类型 ALL 的外周血涂片图像。在特征向量减少 85% 的情况下,ALL 二元分类的总体最佳平均准确率达到 99.15%,精确度为 99%,灵敏度为 98.8%。对于 B-ALL 亚型分类,最佳准确率为 98.69%,精确度为 98.7%,特异度为 99.57%。与现有的几项研究相比,所提出的方法显示出更好的性能指标。
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ALL classification using neural ensemble and memetic deep feature optimization
Acute lymphoblastic leukemia (ALL) is a fatal blood disorder characterized by the excessive proliferation of immature white blood cells, originating in the bone marrow. An effective prognosis and treatment of ALL calls for its accurate and timely detection. Deep convolutional neural networks (CNNs) have shown promising results in digital pathology. However, they face challenges in classifying different subtypes of leukemia due to their subtle morphological differences. This study proposes an improved pipeline for binary detection and sub-type classification of ALL from blood smear images. At first, a customized, 88 layers deep CNN is proposed and trained using transfer learning along with GoogleNet CNN to create an ensemble of features. Furthermore, this study models the feature selection problem as a combinatorial optimization problem and proposes a memetic version of binary whale optimization algorithm, incorporating Differential Evolution-based local search method to enhance the exploration and exploitation of feature search space. The proposed approach is validated using publicly available standard datasets containing peripheral blood smear images of various classes of ALL. An overall best average accuracy of 99.15% is achieved for binary classification of ALL with an 85% decrease in the feature vector, together with 99% precision and 98.8% sensitivity. For B-ALL sub-type classification, the best accuracy of 98.69% is attained with 98.7% precision and 99.57% specificity. The proposed methodology shows better performance metrics as compared with several existing studies.
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