Single-cell conventional pap smear image classification using pre-trained deep neural network architectures.

Mohammed Aliy Mohammed, Fetulhak Abdurahman, Yodit Abebe Ayalew
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引用次数: 9

Abstract

Background: Automating cytology-based cervical cancer screening could alleviate the shortage of skilled pathologists in developing countries. Up until now, computer vision experts have attempted numerous semi and fully automated approaches to address the need. Yet, these days, leveraging the astonishing accuracy and reproducibility of deep neural networks has become common among computer vision experts. In this regard, the purpose of this study is to classify single-cell Pap smear (cytology) images using pre-trained deep convolutional neural network (DCNN) image classifiers. We have fine-tuned the top ten pre-trained DCNN image classifiers and evaluated them using five class single-cell Pap smear images from SIPaKMeD dataset. The pre-trained DCNN image classifiers were selected from Keras Applications based on their top 1% accuracy.

Results: Our experimental result demonstrated that from the selected top-ten pre-trained DCNN image classifiers DenseNet169 outperformed with an average accuracy, precision, recall, and F1-score of 0.990, 0.974, 0.974, and 0.974, respectively. Moreover, it dashed the benchmark accuracy proposed by the creators of the dataset with 3.70%.

Conclusions: Even though the size of DenseNet169 is small compared to the experimented pre-trained DCNN image classifiers, yet, it is not suitable for mobile or edge devices. Further experimentation with mobile or small-size DCNN image classifiers is required to extend the applicability of the models in real-world demands. In addition, since all experiments used the SIPaKMeD dataset, additional experiments will be needed using new datasets to enhance the generalizability of the models.

Abstract Image

Abstract Image

Abstract Image

单细胞常规巴氏涂片图像分类使用预训练的深度神经网络架构。
背景:自动化细胞学为基础的宫颈癌筛查可以缓解发展中国家熟练病理学家的短缺。到目前为止,计算机视觉专家已经尝试了许多半自动和全自动的方法来满足需求。然而,如今,利用深度神经网络惊人的准确性和可重复性,在计算机视觉专家中已经变得很普遍。在这方面,本研究的目的是使用预训练的深度卷积神经网络(DCNN)图像分类器对单细胞巴氏涂片(细胞学)图像进行分类。我们对前10个预训练好的DCNN图像分类器进行了微调,并使用SIPaKMeD数据集中的5类单细胞巴氏涂片图像对它们进行了评估。从Keras应用程序中选择预训练的DCNN图像分类器,基于其前1%的准确率。结果:我们的实验结果表明,在选择的前10个预训练DCNN图像分类器中,DenseNet169的平均准确率、精密度、召回率和f1分数分别为0.990、0.974、0.974和0.974,表现优于DenseNet169。此外,它打破了数据集创建者提出的3.70%的基准准确率。结论:尽管DenseNet169的大小与实验预训练的DCNN图像分类器相比较小,但它并不适合移动或边缘设备。需要对移动或小尺寸DCNN图像分类器进行进一步的实验,以扩展模型在现实世界需求中的适用性。此外,由于所有实验都使用了SIPaKMeD数据集,因此需要使用新的数据集进行额外的实验,以增强模型的可泛化性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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