基于多数投票技术的血液涂片显微图像中b淋巴母细胞与正常b淋巴前体分类的自动检测模型

Sci. Program. Pub Date : 2022-01-04 DOI:10.1155/2022/4801671
M. Ghaderzadeh, Azamossadat Hosseini, F. Asadi, H. Abolghasemi, D. Bashash, Arash Roshanpoor
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引用次数: 7

摘要

介绍。急性淋巴细胞白血病(ALL)是最常见的白血病类型,是一种影响人类骨髓的致命白细胞疾病。早期的ALL检测总是充满了复杂性和困难。外周血涂片(PBS)检查是ALL诊断开始时常用的方法,是一个耗时且繁琐的过程,主要取决于专家的经验。材料与方法。本文提出了一种基于深度学习(DL)的快速、高效、全面的模型,通过实现8种著名的卷积神经网络(CNN)模型对所有图像进行特征提取,并对B-ALL淋巴母细胞和正常细胞进行分类。在评估其性能后,选择四个表现最好的CNN模型,通过结合每个分类器的预训练模型能力组成一个集成分类器。结果。由于癌细胞和正常细胞的细胞核非常相似,单独使用CNN模型对这两类的诊断灵敏度较低,性能较差。采用基于多数投票技术提出的模型对CNN模型进行组合。该模型的灵敏度为99.4,特异性为96.7,AUC为98.3,准确率为98.5。结论。在对正常血细胞和癌细胞进行分类时,该方法可以在不需要操作者干预的情况下获得较高的准确率。因此,它可以被推荐为一种特殊的工具,用于分析数字实验室设备中的血液样本,以协助实验室专家。
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Automated Detection Model in Classification of B-Lymphoblast Cells from Normal B-Lymphoid Precursors in Blood Smear Microscopic Images Based on the Majority Voting Technique
Introduction. Acute lymphoblastic leukemia (ALL) is the most common type of leukemia, a deadly white blood cell disease that impacts the human bone marrow. ALL detection in its early stages has always been riddled with complexity and difficulty. Peripheral blood smear (PBS) examination, a common method applied at the outset of ALL diagnosis, is a time-consuming and tedious process that largely depends on the specialist’s experience. Materials and Methods. Herein, a fast, efficient, and comprehensive model based on deep learning (DL) was proposed by implementing eight well-known convolutional neural network (CNN) models for feature extraction on all images and classification of B-ALL lymphoblast and normal cells. After evaluating their performance, four best-performing CNN models were selected to compose an ensemble classifier by combining each classifier’s pretrained model capabilities. Results. Due to the close similarity of the nuclei of cancerous and normal cells, CNN models alone had low sensitivity and poor performance in diagnosing these two classes. The proposed model based on the majority voting technique was adopted to combine the CNN models. The resulting model achieved a sensitivity of 99.4, specificity of 96.7, AUC of 98.3, and accuracy of 98.5. Conclusion. In classifying cancerous blood cells from normal cells, the proposed method can achieve high accuracy without the operator’s intervention in cell feature determination. It can thus be recommended as an extraordinary tool for the analysis of blood samples in digital laboratory equipment to assist laboratory specialists.
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