Explainable SE-MobileNet for Pneumonia detection integrated with robustness assessment using adversarial examples

Q2 Health Professions
Somak Saha , Chamak Saha , Mohammad Zavid Parvez , Md Tanzim Reza
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引用次数: 0

Abstract

Pneumonia is a detrimental disease, especially for children, which is caused due to bacterial infection. X-ray images are frequently observed manually to find out the existence of pneumonia in a patient’s body. However, diagnosing pneumonia using X-ray images through manual observation by different health professionals may lead to different conclusions. Thus, an efficient autonomic system is required to diagnose pneumonia from X-ray images, and deep learning techniques, such as CNN-based approaches are frequently used to create such autonomy. To ease the process of pneumonia diagnosis, in this study, we have proposed the SE-MobileNet approach. We compared the performance of the proposed SE-MobileNet with the default version of MobileNetV2 integrated with transfer learning. Using the publicly available Kaggle dataset, it is observed that SE-MobileNet obtained 97.4% accuracy on a select test set against the 96.4% accuracy of MobileNetV2, and in 10-fold cross-validation, SE-MobileNet achieved an average of 95.92% accuracy against the 92.35% accuracy of MobileNetV2. Further comparison analysis proves that the SE-MobileNet model not only performs much better than the vanilla MobileNetV2 but also performs competitively against the literature. In addition, robustness evaluation has been introduced in this study where Fast Gradient Sign Method (FGSM) is performed to generate adversarial images. It is found that in robustness evaluation, SE-MobileNet also performs better compared to MobileNetV2. Finally, to validate the appropriateness of the learning of the model, Explainable AI (XAI) based techniques have been employed.

可解释的 SE-MobileNet 用于肺炎检测,并利用对抗性实例进行鲁棒性评估
肺炎是一种有害疾病,尤其是对儿童而言,它是由细菌感染引起的。通常通过人工观察 X 光图像来发现患者体内是否存在肺炎。然而,不同的医疗专业人员通过人工观察 X 光图像诊断肺炎可能会得出不同的结论。因此,需要一种高效的自主系统来通过 X 光图像诊断肺炎,而深度学习技术(如基于 CNN 的方法)经常被用来创建这种自主系统。为了简化肺炎诊断过程,我们在本研究中提出了 SE-MobileNet 方法。我们比较了所提出的 SE-MobileNet 与集成了迁移学习的 MobileNetV2 默认版本的性能。通过使用公开的 Kaggle 数据集,我们发现 SE-MobileNet 在选定测试集上的准确率为 97.4%,而 MobileNetV2 为 96.4%;在 10 倍交叉验证中,SE-MobileNet 的平均准确率为 95.92%,而 MobileNetV2 为 92.35%。进一步的对比分析表明,SE-MobileNet 模型不仅比普通的 MobileNetV2 好得多,而且与文献相比也具有竞争力。此外,本研究还引入了鲁棒性评估,采用快速梯度符号法(FGSM)生成对抗图像。结果发现,在鲁棒性评估中,SE-MobileNet 的表现也优于 MobileNetV2。最后,为了验证模型学习的适当性,我们采用了基于可解释人工智能(XAI)的技术。
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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来源期刊
Smart Health
Smart Health Computer Science-Computer Science Applications
CiteScore
6.50
自引率
0.00%
发文量
81
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