Engineering (Oct 2020)

A Deep Learning System to Screen Novel Coronavirus Disease 2019 Pneumonia

  • Xiaowei Xu,
  • Xiangao Jiang,
  • Chunlian Ma,
  • Peng Du,
  • Xukun Li,
  • Shuangzhi Lv,
  • Liang Yu,
  • Qin Ni,
  • Yanfei Chen,
  • Junwei Su,
  • Guanjing Lang,
  • Yongtao Li,
  • Hong Zhao,
  • Jun Liu,
  • Kaijin Xu,
  • Lingxiang Ruan,
  • Jifang Sheng,
  • Yunqing Qiu,
  • Wei Wu,
  • Tingbo Liang,
  • Lanjuan Li

Journal volume & issue
Vol. 6, no. 10
pp. 1122 – 1129

Abstract

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The real-time reverse transcription-polymerase chain reaction (RT-PCR) detection of viral RNA from sputum or nasopharyngeal swab had a relatively low positive rate in the early stage of coronavirus disease 2019 (COVID-19). Meanwhile, the manifestations of COVID-19 as seen through computed tomography (CT) imaging show individual characteristics that differ from those of other types of viral pneumonia such as influenza-A viral pneumonia (IAVP). This study aimed to establish an early screening model to distinguish COVID-19 from IAVP and healthy cases through pulmonary CT images using deep learning techniques. A total of 618 CT samples were collected: 219 samples from 110 patients with COVID-19 (mean age 50 years; 63 (57.3%) male patients); 224 samples from 224 patients with IAVP (mean age 61 years; 156 (69.6%) male patients); and 175 samples from 175 healthy cases (mean age 39 years; 97 (55.4%) male patients). All CT samples were contributed from three COVID-19-designated hospitals in Zhejiang Province, China. First, the candidate infection regions were segmented out from the pulmonary CT image set using a 3D deep learning model. These separated images were then categorized into the COVID-19, IAVP, and irrelevant to infection (ITI) groups, together with the corresponding confidence scores, using a location-attention classification model. Finally, the infection type and overall confidence score for each CT case were calculated using the Noisy-OR Bayesian function. The experimental result of the benchmark dataset showed that the overall accuracy rate was 86.7% in terms of all the CT cases taken together. The deep learning models established in this study were effective for the early screening of COVID-19 patients and were demonstrated to be a promising supplementary diagnostic method for frontline clinical doctors.

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