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A Lightweight Deep Learning-Based Pneumonia Detection Approach for Energy-Efficient Medical Systems

机译:基于轻质深度学习的肺炎的节能医疗系统检测方法

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Early detection of pneumonia disease can increase the survival rate of lung patients. Chest X-ray (CXR) images are the primarily means of detecting and diagnosing pneumonia. Detecting pneumonia from CXR images by a trained radiologist is a challenging task. It needs an automatic computer-aided diagnostic system to improve the accuracy of diagnosis. Developing a lightweight automatic pneumonia detection approach for energy-efficient medical systems plays an important role in improving the quality of healthcare with reduced costs and speedier response. Recent works have proposed to develop automated detection models using deep learning (DL) methods. However, the efficiency and effectiveness of these models need to be improved because they depend on the values of the models’ hyperparameters. Choosing suitable hyperparameter values is a critical task for constructing a lightweight and accurate model. In this paper, a lightweight DL approach is proposed using a pretrained DenseNet-121-based feature extraction method and a deep neural network- (DNN-) based method with a random search fine-tuning technique. The DenseNet-121 model is selected due to its ability to provide the best representation of lung features. The use of random search makes the tuning process faster and improves the efficiency and accuracy of the DNN model. An extensive set of experiments are conducted on a public dataset of CXR images using a set of evaluation metrics. The experiments show that the approach achieved 98.90% accuracy with an increase of 0.47% compared to the latest approach on the same dataset. Moreover, the experimental results demonstrate the approach that the average execution time for detection is very low, confirming its suitability for energy-efficient medical systems.
机译:早期检测肺炎病可以增加肺患者的存活率。胸部X射线(CXR)图像主要是检测和诊断肺炎的方法。由受过训练的放射检测从CXR图像肺炎是一项艰巨的任务。它需要自动计算机辅助诊断系统来提高诊断的准确性。开发轻质的自动肺炎检测方法,用于节能医疗系统在提高成本降低和速度迅速的反应方面发挥着重要作用。最近的作品已经建议使用深度学习(DL)方法开发自动检测模型。但是,需要提高这些模型的效率和有效性,因为它们取决于模型的超级参数的值。选择合适的超参数值是构造轻量级和准确模型的关键任务。本文使用基于普雷雷尼特-121的特征提取方法和基于深神经网络(DNN-)的方法提出了一种轻量级DL方法,具有随机搜索微调技术。由于其提供最佳肺部特征表示,因此选择了DenSenet-121模型。随机搜索的使用使调谐过程更快并提高DNN模型的效率和准确性。使用一组评估指标在CXR图像的公共数据集上进行广泛的实验。实验表明,与相同数据集上的最新方法相比,该方法的准确性提高0.47%。此外,实验结果证明了检测的平均执行时间非常低的方法,确认其适用于节能医疗系统。

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