Journal
MEDICAL IMAGE ANALYSIS
Volume 80, Issue -, Pages -Publisher
ELSEVIER
DOI: 10.1016/j.media.2022.102491
Keywords
Lung pathology segmentation; Healthy image generation; Prior-aware deep learning
Categories
Funding
- Swedish Childhood Cancer Foundation [MT2019-0019]
- Swedish innovation agency Vinnova [2017-01247]
- Swedish Research Council (VR) [2018-04375]
- Swedish Research Council [2018-04375] Funding Source: Swedish Research Council
- Vinnova [2018-04375, 2017-01247] Funding Source: Vinnova
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The study proposes a deep learning framework for lung pathology segmentation, which can reconstruct pathology-free images and guide the model to perform more accurate segmentation by learning the distribution of healthy lung regions.
Segmentation of lung pathology in Computed Tomography (CT) images is of great importance for lung disease screening. However, the presence of different types of lung pathologies with a wide range of heterogeneities in size, shape, location, and texture, on one side, and their visual similarity with respect to surrounding tissues, on the other side, make it challenging to perform reliable automatic lesion seg-mentation. To leverage segmentation performance, we propose a deep learning framework comprising a Normal Appearance Autoencoder (NAA) model to learn the distribution of healthy lung regions and re-construct pathology-free images from the corresponding pathological inputs by replacing the pathological regions with the characteristics of healthy tissues. Detected regions that represent prior information re-garding the shape and location of pathologies are then integrated into a segmentation network to guide the attention of the model into more meaningful delineations. The proposed pipeline was tested on three types of lung pathologies, including pulmonary nodules, Non-Small Cell Lung Cancer (NSCLC), and Covid-19 lesion on five comprehensive datasets. The results show the superiority of the proposed prior model, which outperformed the baseline segmentation models in all the cases with significant margins. On av-erage, adding the prior model improved the Dice coefficient for the segmentation of lung nodules by 0.038, NSCLCs by 0.101, and Covid-19 lesions by 0.041. We conclude that the proposed NAA model pro-duces reliable prior knowledge regarding the lung pathologies, and integrating such knowledge into a prior segmentation network leads to more accurate delineations.(c) 2022 The Author(s). Published by Elsevier B.V. This is an open access article under the CC BY license ( http://creativecommons.org/licenses/by/4.0/ )
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