Pneumonia Detection on X-Ray Imaging using Softmax Output in Multilevel Meta Ensemble Algorithm of Deep Convolutional Neural Network Transfer Learning Models

Simeon Yuda Prasetyo, Ghinaa Zain Nabiilah, Zahra Nabila Izdihar, S. M. Isa
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Abstract

Pneumonia is the leading cause of death from a single infection worldwide in children. A proven clinical method for diagnosing pneumonia is through a chest X-ray. However, the resulting X-ray images often need clarification, resulting in subjective judgments. In addition, the process of diagnosis requires a longer time. One technique can be applied by applying advanced deep learning, namely, Transfer Learning with Deep Convolutional Neural Network (Deep CNN) and modified Multilevel Meta Ensemble Learning using Softmax. The purpose of this research was to improve the accuracy of the pneumonia classification model. This study proposes a classification model with a meta-ensemble approach using five classification algorithms: Xception, Resnet 15V2, InceptionV3, VGG16, and VGG19. The ensemble stage used two different concepts, where the first level ensemble combined the output of the Xception, ResNet15V2, and InceptionV3 algorithms. Then the output from the first ensemble level is reused for the following learning process, combined with the output from other algorithms, namely VGG16 and VGG19. This process is called ensemble level two. The classification algorithm used at this stage is the same as the previous stage, using KNN as a classification model. Based on experiments, the model proposed in this study has better accuracy than the others, with a test accuracy value of 98.272%. The benefit of this research could help doctors as a recommendation tool to make more accurate and timely diagnoses, thus speeding up the treatment process and reducing the risk of complications.
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在深度卷积神经网络迁移学习模型的多级元集成算法中使用Softmax输出对x射线成像进行肺炎检测
肺炎是全世界儿童因单一感染而死亡的主要原因。诊断肺炎的临床方法是通过胸部x光检查。然而,所得到的x射线图像往往需要澄清,从而导致主观判断。此外,诊断过程需要较长的时间。一种技术可以通过应用高级深度学习来应用,即使用深度卷积神经网络(deep CNN)的迁移学习和使用Softmax的改进多级元集成学习。本研究的目的是提高肺炎分类模型的准确性。本研究提出了一种基于元集成方法的分类模型,该模型使用了5种分类算法:Xception、Resnet 15V2、InceptionV3、VGG16和VGG19。集成阶段使用了两个不同的概念,其中第一级集成组合了Xception、ResNet15V2和InceptionV3算法的输出。然后,将第一个集成层的输出与其他算法(即VGG16和VGG19)的输出结合起来,用于后续的学习过程。这个过程称为集成级别2。这一阶段使用的分类算法与前一阶段相同,使用KNN作为分类模型。实验表明,本文提出的模型具有较好的准确率,测试准确率值为98.272%。这项研究的好处可以帮助医生作为一种推荐工具,做出更准确和及时的诊断,从而加快治疗过程,降低并发症的风险。
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
CiteScore
3.00
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0.00%
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