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Benchmarking Deep Learning Models and Automated Model Design for COVID-19 Detection with Chest CT Scans
Xin He; Shihao Wang; Shaohuai Shi; Xiaowen Chu; Jiangping Tang; Xin Liu; Chenggang Yan; Jiyong Zhang; Guiguang Ding.
Afiliação
  • Xin He; Hong Kong Baptist University
  • Shihao Wang; Hong Kong Baptist University
  • Shaohuai Shi; Hong Kong Baptist University
  • Xiaowen Chu; Hong Kong Baptist University
  • Jiangping Tang; Hangzhou Dianzi University
  • Xin Liu; Hangzhou Dianzi University
  • Chenggang Yan; Hangzhou Dianzi University
  • Jiyong Zhang; Hangzhou Dianzi University
  • Guiguang Ding; Tsinghua University
Preprint em Inglês | medRxiv | ID: ppmedrxiv-20125963
ABSTRACT
COVID-19 pandemic has spread all over the world for months. As its transmissibility and high pathogenicity seriously threaten peoples lives, the accurate and fast detection of the COVID-19 infection is crucial. Although many recent studies have shown that deep learning based solutions can help detect COVID-19 based on chest CT scans, there lacks a consistent and systematic comparison and evaluation on these techniques. In this paper, we first build a clean and segmented CT dataset called Clean-CC-CCII by fixing the errors and removing some noises in a large CT scan dataset CC-CCII with three classes novel coronavirus pneumonia (NCP), common pneumonia (CP), and normal controls (Normal). After cleaning, our dataset consists of a total of 340,190 slices of 3,993 scans from 2,698 patients. Then we benchmark and compare the performance of a series of state-of-the-art (SOTA) 3D and 2D convolutional neural networks (CNNs). The results show that 3D CNNs outperform 2D CNNs in general. With extensive effort of hyperparameter tuning, we find that the 3D CNN model DenseNet3D121 achieves the highest accuracy of 88.63% (F1-score is 88.14% and AUC is 0.940), and another 3D CNN model ResNet3D34 achieves the best AUC of 0.959 (accuracy is 87.83% and F1-score is 86.04%). We further demonstrate that the mixup data augmentation technique can largely improve the model performance. At last, we design an automated deep learning methodology to generate a lightweight deep learning model MNas3DNet41 that achieves an accuracy of 87.14%, F1-score of 87.25%, and AUC of 0.957, which are on par with the best models made by AI experts. The automated deep learning design is a promising methodology that can help health-care professionals develop effective deep learning models using their private data sets. Our Clean-CC-CCII dataset and source code are available at https//github.com/HKBU-HPML/HKBU_HPML_COVID-19.
Licença
cc_by
Texto completo: Disponível Coleções: Preprints Base de dados: medRxiv Tipo de estudo: Experimental_studies / Estudo prognóstico / Revisão sistemática Idioma: Inglês Ano de publicação: 2020 Tipo de documento: Preprint
Texto completo: Disponível Coleções: Preprints Base de dados: medRxiv Tipo de estudo: Experimental_studies / Estudo prognóstico / Revisão sistemática Idioma: Inglês Ano de publicação: 2020 Tipo de documento: Preprint
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