An Adaptive Data Processing Framework for Cost-Effective COVID-19 and Pneumonia Detection

Kin Wai Lee, R. Chin
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引用次数: 6

Abstract

Medical imaging modalities have been showing great potentials for faster and efficient disease transmission control and containment. In the paper, we propose a cost-effective COVID-19 and pneumonia detection framework using CT scans acquired from several hospitals. To this end, we incorporate a novel data processing framework that utilizes 3D and 2D CT scans to diversify the trainable inputs in a resource-limited setting. Moreover, we empirically demonstrate the significance of several data processing schemes for our COVID-19 and pneumonia detection network. Experiment results show that our proposed pneumonia detection network is comparable to other pneumonia detection tasks integrated with imaging modalities, with 93% mean AUC and 85.22% mean accuracy scores on generalized datasets. Additionally, our proposed data processing framework can be easily adapted to other applications of CT modality, especially for cost-effective and resource-limited scenarios, such as breast cancer detection, pulmonary nodules diagnosis, etc.
成本效益高的COVID-19和肺炎检测自适应数据处理框架
医学成像方式在更快、更有效地控制和遏制疾病传播方面显示出巨大的潜力。在本文中,我们提出了一个具有成本效益的COVID-19和肺炎检测框架,使用从几家医院获得的CT扫描。为此,我们采用了一种新的数据处理框架,该框架利用3D和2D CT扫描,在资源有限的情况下使可训练的输入多样化。此外,我们通过实证证明了几种数据处理方案对我们的COVID-19和肺炎检测网络的意义。实验结果表明,我们提出的肺炎检测网络与其他集成了成像模式的肺炎检测任务相当,在广义数据集上平均AUC为93%,平均准确率为85.22%。此外,我们提出的数据处理框架可以很容易地适应CT模式的其他应用,特别是在成本效益和资源有限的情况下,如乳腺癌检测,肺结节诊断等。
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