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一种基于卷积神经网络的Inception Restnet-V3用于白细胞图像分类的集成自动化测试方法。

An integrated and automated testing approach on Inception Restnet-V3 based on convolutional neural network for leukocytes image classification.

作者信息

Palanivel Silambarasi, Nallasamy Viswanathan

机构信息

Department of Electronics and Communication Engineering, Mahendra Engineering College for Women, Tamil Nadu, India.

Department of Electronics and Communication Engineering, Mahendra Engineering College, Tamil Nadu, India.

出版信息

Biomed Tech (Berl). 2022 Oct 5;68(2):165-174. doi: 10.1515/bmt-2022-0297. Print 2023 Apr 25.

Abstract

OBJECTIVES

The leukocyte is a specialized immune cell that functions as the foundation of the immune system and keeps the body healthy. The WBC classification plays a vital role in diagnosing various disorders in the medical area, including infectious diseases, immune deficiencies, leukemia, and COVID-19. A few decades ago, Machine Learning algorithms classified WBC types required for image segmentation, and the feature extraction stages, but this new approach becomes automatic while existing models can be fine-tuned for specific classifications.

METHODS

The inception architecture and deep learning model-based Resnet connection are integrated into this article. Our proposed method, inception Resnet-v3, was used to classify WBCs into five categories using 15.7k images. Pathologists made diagnoses of all images so a model could be trained to classify five distinct types of cells.

RESULTS

After implementing the proposed architecture on a large dataset of 5 categories of human peripheral white blood cells, it achieved high accuracy than VGG, U-Net and Resnet. We tested our model with WBC images from additional public datasets such as the Kaagel data sets and Raabin data sets of which the accuracy was 98.80% and 98.95%.

CONCLUSIONS

Considering the large sample sizes, we believe the proposed method can be used for improving the diagnostic performance of clinical blood examinations as well as a promising alternative for machine learning. Test results obtained with the system have been satisfying, with outstanding values for Accuracy, Precision, Recall, Specificity and F1 Score.

摘要

目的

白细胞是一种特殊的免疫细胞,是免疫系统的基础,能保持身体健康。白细胞分类在诊断医学领域的各种疾病中起着至关重要的作用,包括传染病、免疫缺陷、白血病和新冠肺炎。几十年前,机器学习算法对图像分割和特征提取阶段所需的白细胞类型进行分类,但这种新方法变得自动化,而现有模型可针对特定分类进行微调。

方法

本文将初始架构和基于深度学习模型的Resnet连接进行了整合。我们提出的方法,即初始Resnet-v3,使用15700张图像将白细胞分为五类。病理学家对所有图像进行诊断,以便训练模型对五种不同类型的细胞进行分类。

结果

在一个包含五类人类外周血白细胞的大型数据集上实施所提出的架构后,它比VGG、U-Net和Resnet取得了更高的准确率。我们用来自其他公共数据集(如Kaagel数据集和Raabin数据集)的白细胞图像测试了我们的模型,其准确率分别为98.80%和98.95%。

结论

考虑到样本量较大,我们认为所提出的方法可用于提高临床血液检查的诊断性能,也是机器学习的一个有前景的替代方法。该系统获得的测试结果令人满意,在准确率、精确率、召回率、特异性和F1分数方面都有出色的值。

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