肺部CT扫描用于covid - 19疾病分类的2D-CNN设置优化

K. Kirana, S. Wibawanto, Ahmad Hamdan, Wahyu Nur Hidayat
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引用次数: 0

摘要

RT-PCR被认为是最好的诊断工具。之前的研究已经证明了CNN在分类分类方面的可靠性,但是CNN需要大量的训练数据。同时,在CT扫描诊所,病人是有限的。因此,提出探索2D-CNN设置,优化CNN在有限数据下的性能。我们比较:(1)激活模型,(2)每层的输出形状,(3)dropout层,(4)早期停止值。实验结果表明,RELU的活化效果优于Sigmoid。对于scala (64x64)和(256x256)来说,重新缩放(128x128)更好,这会影响每个层的输出形状模型。在这个学习阶段,在CNN体系结构中使用dropouts比忽略dropouts的体系结构获得了鲁棒的精度。早停15次的使用效果优于其他值的比较。使用该方法对20幅肺炎和20幅covid图像进行了测试,准确率达到87.50%,精密度为80.00%,召回率为100%,F1-Score为99.89%。我们的方法在正确率、精密度、召回率和f1-score方面均优于对比法,分别达到85%、70%、100%和82.35%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of 2D-CNN Setting for the classification of covid disease using Lung CT Scan
RT-PCR is considered the best diagnostic tool. Previous studies have demonstrated the reliability of CNN in classifying classifications, but CNN requires a lot of training data. Meanwhile, at the CT Scan clinic, patients are limited. Therefore, exploration of 2D-CNN settings is proposed to optimize CNN performance on limited data. We compare: (1) activation models, (2) output shapes per layer, (3) dropout layers, and (4) early stopping values. The test results show that RELU activation is better than Sigmoid. Rescaling (128x128) is better for scala (64x64) and (256x256) which affects the output shape model of each layer. In this learning stage, the use of dropouts in the CNN architecture achieves robust accuracy than the architecture that ignores dropouts. The use of 15 early stoppings is better than other values compared. 20 images of pneumonia and 20 images of covid have been tested using the proposed method and achieved 87.50% accuracy, 80.00% precision, 100% recall, and 99.89% F1-Score. Our method is superior to the the comparison method in terms of accuracy, precision, recall, and f1-score, which achieves 85%, 70%, 100%, and 82.35%, respectively.
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