Chinese Journal of Lung Cancer (Jun 2019)

Performance of Deep-learning-based Artificial Intelligence on Detection of Pulmonary Nodules in Chest CT

  • Xinling LI,
  • Fangfang GUO,
  • Zhen ZHOU,
  • Fandong ZHANG,
  • Qin WANG,
  • Zhijun PENG,
  • Datong SU,
  • Yaguang FAN,
  • Ying WANG

DOI
https://doi.org/10.3779/j.issn.1009-3419.2019.06.02
Journal volume & issue
Vol. 22, no. 6
pp. 336 – 340

Abstract

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Background and objective The detection of pulmonary nodules is a key step to achieving the early diagnosis and therapy of lung cancer. Deep learning based Artificial intelligence (AI) presents as the state of the art in the area of nodule detection, however, a validation with clinical data is necessary for further application. Therefore, the aim of this study is to evaluate the performance of AI in the detection of malignant and non-calcified nodules in chest CT. Methods Two hundred chest computed tomography (CT) data were randomly selected from a self-built nodule database from Tianjin Medical University General Hospital. Both the pathology confirmed lung cancers and the nodules in the process of follow-up were included. All CTs were processed by AI and the results were compared with that of radiologists retrieved from the original medical reports. The ground truths were further determined by two experienced radiologists. The size and characteristics of the nodules were evaluated as well. The sensitivity and false positive rate were used to evaluate the effectiveness of AI and radiologists in detecting nodules. The McNemar test was used to determine whether there was a significant difference. Results A total of 889 non-calcified nodules were determined by experts on chest CT, including 133 lung cancers. Of them, 442 nodules were less than 5 mm. The cancer detection rates of AI and radiologists are 100%. The sensitivity of AI on nodule detection was significantly higher than that of radiologists (99.1% vs 43%, P<0.001). The false-positive rate of AI was 4.9 per CT and decreased to 1.5 when nodules less than 5 mm were excluded. Conclusion AI achieves the detection of all malignancies and improve the sensitivity of pulmonary nodules detection beyond radiologists, with a low false positive rate after excluding small nodules.

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