Balanced Convolutional Neural Networks for Pneumoconiosis Detection.

Journal: International journal of environmental research and public health
Published Date:

Abstract

Pneumoconiosis remains one of the most common and harmful occupational diseases in China, leading to huge economic losses to society with its high prevalence and costly treatment. Diagnosis of pneumoconiosis still strongly depends on the experience of radiologists, which affects rapid detection on large populations. Recent research focuses on computer-aided detection based on machine learning. These have achieved high accuracy, among which artificial neural network (ANN) shows excellent performance. However, due to imbalanced samples and lack of interpretability, wide utilization in clinical practice meets difficulty. To address these problems, we first establish a pneumoconiosis radiograph dataset, including both positive and negative samples. Second, deep convolutional diagnosis approaches are compared in pneumoconiosis detection, and a balanced training is adopted to promote recall. Comprehensive experiments conducted on this dataset demonstrate high accuracy (88.6%). Third, we explain diagnosis results by visualizing suspected opacities on pneumoconiosis radiographs, which could provide solid diagnostic reference for surgeons.

Authors

  • Chaofan Hao
    Department of Automation, Tsinghua University, Beijing 100084, China.
  • Nan Jin
    Chongqing Center for Disease Control and Prevention, Department of Occupational Health and Radiation Health, Chongqing 400042, China.
  • Cuijuan Qiu
    Chongqing Center for Disease Control and Prevention, Department of Occupational Health and Radiation Health, Chongqing 400042, China.
  • Kun Ba
    Department of Automation, Tsinghua University, Beijing 100084, China.
  • Xiaoxi Wang
    State Grid Management College, Beijing, China.
  • Huadong Zhang
    Chongqing Center for Disease Control and Prevention, Department of Occupational Health and Radiation Health, Chongqing 400042, China.
  • Qi Zhao
  • Biqing Huang
    Department of Automation, Tsinghua University, Beijing, PR China.