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A Lightweight Convolutional Neural Network Model for Child Pneumonia Classification

机译:儿童肺炎分类轻量级卷积神经网络模型

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Pneumonia is still a serious threat for children including newborns. Each year many children died of pneumonia. Physicians diagnose pneumonia through some process including reviewing chest X-rays of patients. While reviewing, a single diagnostic mistake may cause a serious threat and do significant harm to patients. In recent years, Computer-aided detection system (CAD) and medical image classification are progressively turning into another research territory. CAD can reduce the physician's effort and help to review chest X-rays fast and error-free. Currently, Researchers build various models to detect pneumonia from chest X-rays. However, there is still a lack of computationally efficient models to diagnose pediatric pneumonia. Further, some off-the-shelf or pre-trained models are not always suitable for mobile and embedded vision applications since these models are not lightweight. In our research, a lightweight convolutional neural network model was built from scratch using basic building blocks which able to learn lung texture features and detect pediatric pneumonia. Our proposed model performance was compared with some off-the-shelf models. The proposed model achieved the best AUC (99.0%), test accuracy (94.6 %), F1 (94.7 %), precision (93.2 %) and specificity (93.1%) scores. Moreover, Several data augmentation algorithms were employed to increase the model's classification ability.
机译:肺炎仍然是对包括新生儿在内的儿童的严重威胁。每年有许多孩子死于肺炎。医师通过一些过程诊断肺炎,包括审查患者的胸部X射线。在审查时,单一的诊断错误可能会对患者造成严重威胁并对患者进行重大危害。近年来,计算机辅助检测系统(CAD)和医学图像分类逐步转变为另一个研究领域。 CAD可以减少医生的努力,并帮助您快速且无错误地查看胸部X射线。目前,研究人员建立了各种模型来检测来自胸部X射线的肺炎。然而,仍然缺乏诊断小儿肺炎的计算上有效的模型。此外,一些现成或预先训练的模型并不总是适用于移动和嵌入式视觉应用,因为这些模型不重量轻。在我们的研究中,使用能够学习肺部纹理特征和检测小儿肺炎的基本构建块来构建轻量级卷积神经网络模型。我们提出的模型性能与一些现成的模型进行了比较。所提出的模型实现了最佳的AUC(99.0%),测试精度(94.6%),F1(94.7%),精确度(93.2%)和特异性(93.1%)。此外,采用了几种数据增强算法来提高模型的分类能力。

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