利用CNN模型对急性淋巴细胞白血病进行有效的检测和分类

Premalatha S, K. K, Jayasudha K
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摘要

急性淋巴细胞白血病(Acute lymphoblastic leukemia, ALL)是一种普遍存在的白血病,它是一种具有潜在致命性的血液恶性肿瘤,其特点是外周血和骨髓干细胞中过早淋巴细胞的不可控增殖。传统的急性淋巴细胞白血病诊断是由有能力的检查人员利用外周血涂片的显微图像来完成的,这是一项劳动密集型和耗时的工作。CNN(卷积神经网络)是目前组织病理学图像处理的优先选择。为了达到优异的性能,传统的CNN通常需要大量的数据库进行足够的训练。本文提出了一种快速、密集的CNN架构来解决这些问题,从而更好地识别ALL。提出了一个独特的基于概率的参数,该参数对Vgg16、GoogleNet和AlexNet的灵巧杂交有很大的影响,同时保留了每种方法的优点。在此基础上,利用各种参数对模型进行训练和验证,并将最佳参数算法应用于测试集。其中,GoogleNet、AlexNet和VGG-16的准确率分别达到97%、96.52%和98%。该模型对健康和白血病患者的白细胞也显示出较高的精确度和召回值。结果表明,该方法确实可以通过检测未成熟白细胞有效地辅助ALL的诊断试验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Detection and Classification of Acute Lymphoblastic Leukemia using CNN models
One of the major ubiquitous kinds of leukemia is ALL (Acute lymphoblastic leukemia) and potentially lethal hematological malignancy is distinguished by the uncontrollable proliferation of premature lymphocytes in peripheral blood and bone marrow stem. Traditional Acute lymphoblastic leukemia diagnosis, which is done by competent examiners employing microscopic images of a smear of the peripheral blood, is labor-intensive and time-consuming. CNN(Convolutional Neural Networks) is currently the prioritized option for histopathology image processing. Conventional CNN typically requires massive databases for adequate training in order to achieve excellent performance. This paper suggests a prompt, intense CNN architecture to address which concern and achieve better identification of ALL. A unique probability-based parameter is proposed, which has a substantial impact in dexterously hybridizing Vgg16, GoogleNet, and AlexNet while preserving the advantages of each individual approach. Further, the models are trained and validated with various parameters, the algorithms with the best parameters were applied to the test set. Among models, GoogleNet, AlexNet, and VGG-16 achieved 97%, 96.52%, and 98% accuracy, respectively. The model also shows high precision and recall values for both healthy and leukemia-affected WBC. The result shows that the proposed method could indeed aid in the diagnostic test of ALL by inspecting immature leukocytes efficiently.
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