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ReRNet:一种用于血细胞分类的深度学习网络。

ReRNet: A Deep Learning Network for Classifying Blood Cells.

机构信息

School of Computing and Mathematical Sciences, 4488University of Leicester, Leicester, UK.

School of Computer Science and Technology, Henan Polytechnic University, Jiaozuo, P R China.

出版信息

Technol Cancer Res Treat. 2023 Jan-Dec;22:15330338231165856. doi: 10.1177/15330338231165856.

Abstract

AIMS

Blood cell classification helps detect various diseases. However, the current classification model of blood cells cannot always get great results. A network that automatically classifies blood cells can provide doctors with data as one of the criteria for diagnosing patients' disease types and severity. If doctors diagnose blood cells, doctors could spend lots of time on the diagnosis. The diagnosis progress is very tedious. Doctors can make some mistakes when they feel tired. On the other hand, different doctors may have different points on the same patient.

METHODS

We propose a ResNet50-based ensemble of randomized neural networks (ReRNet) for blood cell classification. ResNet50 is used as the backbone model for feature extraction. The extracted features are fed to 3 randomized neural networks (RNNs): Schmidt neural network, extreme learning machine, and dRVFL. The outputs of the ReRNet are the ensemble of these 3 RNNs based on the majority voting mechanism. The 5 × 5-fold cross-validation is applied to validate the proposed network.

RESULTS

The average-accuracy, average-sensitivity, average-precision, and average-F1-score are 99.97%, 99.96%, 99.98%, and 99.97%, respectively.

CONCLUSIONS

The ReRNet is compared with 4 state-of-the-art methods and achieves the best classification performance. The ReRNet is an effective method for blood cell classification based on these results.

摘要

目的

血细胞分类有助于检测各种疾病。然而,目前的血细胞分类模型并不总是能取得很好的效果。自动分类血细胞的网络可以为医生提供数据,作为诊断患者疾病类型和严重程度的标准之一。如果医生诊断血细胞,医生可能会在诊断上花费大量时间。诊断过程非常繁琐。医生在疲劳时可能会犯一些错误。另一方面,不同的医生可能对同一患者有不同的看法。

方法

我们提出了一种基于 ResNet50 的随机神经网络(ReRNet)集成方法,用于血细胞分类。ResNet50 被用作特征提取的骨干模型。提取的特征被馈送到 3 个随机神经网络(RNN):Schmidt 神经网络、极限学习机和 dRVFL。ReRNet 的输出是基于多数投票机制的这 3 个 RNN 的集成。采用 5×5 折交叉验证来验证所提出的网络。

结果

平均准确率、平均灵敏度、平均精度和平均 F1 分数分别为 99.97%、99.96%、99.98%和 99.97%。

结论

ReRNet 与 4 种最先进的方法进行了比较,取得了最佳的分类性能。根据这些结果,ReRNet 是一种有效的血细胞分类方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b3a9/10061646/ad02547afae8/10.1177_15330338231165856-fig1.jpg

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