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A new approach for the detection of pneumonia in children using CXR images based on an real-time IoT system

机译:基于实时IOT系统的CXR图像检测儿童肺炎的新方法

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Pneumonia is responsible for high infant morbidity and mortality. This disease affects the small air sacs (alveoli) in the lung and requires prompt diagnosis and appropriate treatment. Chest X-rays are one of the most common tests used to detect pneumonia. In this work, we propose a real-time Internet of Things (IoT) system to detect pneumonia in chest X-ray images. The dataset used has 6000 chest X-ray images of children, and three medical specialists performed the validations. In this work, twelve different architectures of Convolutional Neural Networks (CNNs) trained on ImageNet were adapted to operate as the resource extractors. Subsequently, the CNNs were combined with consolidated learning methods, such as k-Nearest Neighbor (kNN), Naive Bayes, Random Forest, Multilayer Perceptron (MLP), and Support Vector Machine (SVM). The results showed that the VGG19 architecture with the SVM classifier using the RBF kernel was the best model to detect pneumonia in these chest radiographs. This combination reached 96.47%, 96.46%, and 96.46% for Accuracy, F1 score, and Precision values, respectively. Compared to other works in the literature, the proposed approach had better results for the metrics used. These results show that this approach for the detection of pneumonia in children using a real-time IoT system is efficient and is, therefore, a potential tool to aid in medical diagnoses. This approach will allow specialists to obtain faster and more accurate results and thus provide the appropriate treatment.
机译:肺炎负责高婴儿发病率和死亡率。这种疾病影响肺中的小气囊(肺泡),需要及时诊断和适当的治疗。胸部X射线是用于检测肺炎的最常见的测试之一。在这项工作中,我们提出了一种实时的东西互联网(物联网)系统来检测胸部X射线图像中的肺炎。使用的数据集具有6000个胸部X射线图像,以及三位医学专家进行了验证。在这项工作中,在想象集上培训的十二种不同型号的卷积神经网络(CNNS)被适应作为资源提取器操作。随后,CNN与综合学习方法组合,例如K-CORMALL邻居(KNN),幼稚贝叶斯,随机林,多层感知(MLP),以及支持向量机(SVM)。结果表明,使用RBF内核的SVM分类器的VGG19架构是在这些胸部射线照片中检测肺炎的最佳模型。这种组合分别达到96.47%,96.46%和96.46%,分别为精度,F1分数和精度值。与文献中的其他作品相比,所提出的方法对所使用的指标具有更好的结果。这些结果表明,这种使用实时物联网系统检测肺炎的肺炎的方法是有效的,因此是有助于医学诊断的潜在工具。这种方法将允许专家获得更快,更准确的结果,从而提供适当的治疗方法。

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