Abstract:
Coal Worker Pneumoconiosis (CWP), commonly called Black Lung (BL), is an incurable respiratory disease caused by long-term inhalation of respirable dust. Privacy restrict...Show MoreMetadata
Abstract:
Coal Worker Pneumoconiosis (CWP), commonly called Black Lung (BL), is an incurable respiratory disease caused by long-term inhalation of respirable dust. Privacy restrictions and disease incidence placed limits on the available BL datasets, which introduces significant challenges for training deep learning (DL) models. Recently, transfer learning has been seen as an efficient DL method for automatic disease detection with small datasets. This paper investigates BL detection in chest X-rays using transfer DL knowledge from a CheXNet model on a small dataset. A training image set of real, segmented lung X-ray images, with and without BL, was used as a benchmark for detection accuracy. The training data set was then augmented using a Cycle-Consistent Adversarial Networks (CycleGAN) and Keras Image Data Generator, to generate training data with real, augmented and synthetic CWP radiographs to the CheXNet model (with and without pre-trained weights). The effects of different dropout nodes as a blocking factor was also investigated. The accuracy, sensitivity (recall or true positive rate), specificity (true negative rate) and error rate (ERR or incorrect prediction rate) using 3-fold cross-validation experiments was compared for each transfer learning experiment. The total execution time for binary classification of our model also measured. While no definitive conclusion could be reached regarding the effect of dropout rates, results indicated an improvement of classification accuracy from transfer learning.
Date of Conference: 02-04 December 2019
Date Added to IEEE Xplore: 16 January 2020
ISBN Information:
ISSN Information:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- Index Terms
- Neural Network ,
- Deep Neural Network ,
- Transfer Learning ,
- Black Lung ,
- Pulmonary Disease ,
- Training Data ,
- Deep Learning ,
- Training Dataset ,
- Dropout Rate ,
- Chest X-ray ,
- Deep Learning Models ,
- Small Datasets ,
- Training Images ,
- Improve Classification Accuracy ,
- Pre-trained Weights ,
- Total Execution Time ,
- 3-fold Cross-validation ,
- Respirable Dust ,
- Coal Workers ,
- Model Performance ,
- Coal Dust ,
- Chest X-ray Images ,
- Normal X-ray ,
- Deep Transfer Learning ,
- Model Weights ,
- Image Augmentation ,
- Interstitial Lung Disease ,
- Silicosis ,
- Computer-aided Diagnosis ,
- Lung Fields
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- Index Terms
- Neural Network ,
- Deep Neural Network ,
- Transfer Learning ,
- Black Lung ,
- Pulmonary Disease ,
- Training Data ,
- Deep Learning ,
- Training Dataset ,
- Dropout Rate ,
- Chest X-ray ,
- Deep Learning Models ,
- Small Datasets ,
- Training Images ,
- Improve Classification Accuracy ,
- Pre-trained Weights ,
- Total Execution Time ,
- 3-fold Cross-validation ,
- Respirable Dust ,
- Coal Workers ,
- Model Performance ,
- Coal Dust ,
- Chest X-ray Images ,
- Normal X-ray ,
- Deep Transfer Learning ,
- Model Weights ,
- Image Augmentation ,
- Interstitial Lung Disease ,
- Silicosis ,
- Computer-aided Diagnosis ,
- Lung Fields
- Author Keywords