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Three-stage segmentation of lung region from CT images using deep neural networks
- Source :
- BMC Medical Imaging, BMC Medical Imaging, Vol 21, Iss 1, Pp 1-19 (2021)
- Publication Year :
- 2021
- Publisher :
- BMC, 2021.
-
Abstract
- Background Lung region segmentation is an important stage of automated image-based approaches for the diagnosis of respiratory diseases. Manual methods executed by experts are considered the gold standard, but it is time consuming and the accuracy is dependent on radiologists’ experience. Automated methods are relatively fast and reproducible with potential to facilitate physician interpretation of images. However, these benefits are possible only after overcoming several challenges. The traditional methods that are formulated as a three-stage segmentation demonstrate promising results on normal CT data but perform poorly in the presence of pathological features and variations in image quality attributes. The implementation of deep learning methods that can demonstrate superior performance over traditional methods is dependent on the quantity, quality, cost and the time it takes to generate training data. Thus, efficient and clinically relevant automated segmentation method is desired for the diagnosis of respiratory diseases. Methods We implement each of the three stages of traditional methods using deep learning methods trained on five different configurations of training data with ground truths obtained from the 3D Image Reconstruction for Comparison of Algorithm Database (3DIRCAD) and the Interstitial Lung Diseases (ILD) database. The data was augmented with the Lung Image Database Consortium (LIDC-IDRI) image collection and a realistic phantom. A convolutional neural network (CNN) at the preprocessing stage classifies the input into lung and none lung regions. The processing stage was implemented using a CNN-based U-net while the postprocessing stage utilize another U-net and CNN for contour refinement and filtering out false positives, respectively. Results The performance of the proposed method was evaluated on 1230 and 1100 CT slices from the 3DIRCAD and ILD databases. We investigate the performance of the proposed method on five configurations of training data and three configurations of the segmentation system; three-stage segmentation and three-stage segmentation without a CNN classifier and contrast enhancement, respectively. The Dice-score recorded by the proposed method range from 0.76 to 0.95. Conclusion The clinical relevance and segmentation accuracy of deep learning models can improve though deep learning-based three-stage segmentation, image quality evaluation and enhancement as well as augmenting the training data with large volume of cheap and quality training data. We propose a new and novel deep learning-based method of contour refinement.
- Subjects :
- Lung Diseases
Lung regions
Image quality
Computer science
Lung contours
ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION
Convolutional neural network
Imaging phantom
030218 nuclear medicine & medical imaging
03 medical and health sciences
Deep Learning
0302 clinical medicine
Classifier (linguistics)
Medical technology
False positive paradox
Humans
Preprocessor
Radiology, Nuclear Medicine and imaging
Segmentation
R855-855.5
Computed tomography
Computed tomography (CT)
Lung
business.industry
Deep learning
Pattern recognition
Lung contour
Three-stage segmentations
Deep learning network
Lung region
030220 oncology & carcinogenesis
Three-stage segmentation
Deep learning networks
Neural Networks, Computer
Artificial intelligence
Tomography, X-Ray Computed
business
Algorithms
Research Article
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Journal :
- BMC Medical Imaging, BMC Medical Imaging, Vol 21, Iss 1, Pp 1-19 (2021)
- Accession number :
- edsair.doi.dedup.....73791dd0b1b6dea80d5686bf11ee9f27