Automated Pulmonary Fibrosis Segmentation Using a 3D Multi-Scale Convolutional Encoder-Decoder Approach in Thoracic CT for the Rhesus Macaque with Radiation-Induced Lung Damage
Autor: | Baoshe Zhang, Dimitris N. Metaxas, Thomas J. MacVittie, Yin Zhang, Jinghao Zhou, B Yi, Dong Yang, Shifeng Chen, G Lasio |
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Rok vydání: | 2020 |
Předmět: |
Computer science
business.industry 020206 networking & telecommunications Pattern recognition 02 engineering and technology Image segmentation Convolutional neural network Cross-validation Theoretical Computer Science Hardware and Architecture Control and Systems Engineering Approximation error Modeling and Simulation Signal Processing Pattern recognition (psychology) 0202 electrical engineering electronic engineering information engineering 020201 artificial intelligence & image processing Segmentation Lung volumes Artificial intelligence business Information Systems Test data |
Zdroj: | Journal of Signal Processing Systems. 94:473-483 |
ISSN: | 1939-8115 1939-8018 |
DOI: | 10.1007/s11265-020-01605-3 |
Popis: | To develop an automated pulmonary fibrosis (PF) segmentation methodology using a 3D multi-scale convolutional encoder-decoder approach following the robust atlas-based active volume model in thoracic CT for Rhesus Macaques with radiation-induced lung damage. 152 thoracic computed tomography scans of Rhesus Macaques with radiation-induced lung damage were collected. The 3D input data are randomly augmented with the Gaussian blurring when applying the 3D multi-scale convolutional encoder-decoder (3D MSCED) segmentation method.PF in each scan was manually segmented in which 70% scans were used as training data, 20% scans were used as validation data, and 10% scans were used as testing data. The performance of the method is assessed based on a10-fold cross validation method. The workflow of the proposed method has two parts. First, the compromised lung volume with acute radiation-induced PF was segmented using a robust atlas-based active volume model. Next, a 3D multi-scale convolutional encoder-decoder segmentation method was developed which merged the higher spatial information from low-level features with the high-level object knowledge encoded in upper network layers. It included a bottom-up feed-forward convolutional neural network and a top-down learning mask refinement process. The quantitative results of our segmentation method achieved mean Dice score of (0.769, 0.853), mean accuracy of (0.996, 0.999), and mean relative error of (0.302, 0.512) with 95% confidence interval. The qualitative and quantitative comparisons show that our proposed method can achieve better segmentation accuracy with less variance in testing data. This method was extensively validated in NHP datasets. The results demonstrated that the approach is more robust relative to PF than other methods. It is a general framework which can easily be applied to segmentation other lung lesions. |
Databáze: | OpenAIRE |
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