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. 2021 Mar 9;21(5):1908. doi: 10.3390/s21051908

Table 1.

A list of algorithms that are related to the proposed method.

Authors Brief Description
Lung Nodule Segmentation
Kostis et al. 2003 [10] Applied iterative morphological filtering to remove vessels affixed to solid nodules
Kuhnigk et al. 2006 [11] Employed morphological correction allowing to manage nodules regardless of size
Dehmeshki et al. 2008 [13] Proposed a contrast based region growing method, that employs a fuzzy connectivity map
Chan and Vese 2001 [14] Formulated segmentation as an energy minimization of an evolving contour seen as a level set
Farag et al. 2013 [15] Used shape prior hypothesis along with level sets
Boykov and Kolmogorov et al. 2004 [16] Framed the problem within a maximum flow optimization framework and used a graph cut method
Miao et al. 2016 [17] GGO lung nodule segmentation with expectation–maximization algorithm
Miao et al. 2017 [18] GGO lung nodule segmentation with ACM, solid and non-solid parts treated separately and combined
Li et al. 2020 [19] Nodule segmentation with fuzzy C-means clustering and Gaussian mixture models
Wang et al. 2021 [21] Enhanced total-variance pyramid and grab cut, boundary extraction with Gibbs energy functional
Lu et al. 2011 [22] Proposed a stratified learning framework including supervised image segmentation
Hu et al. 2016 [23] Utilized a Hessian-based vascular feature extraction procedure and classified nodules with a neural network
Gonçalves et al. 2016 [24] Hessian-based strategies with a multiscale process that uses the central medialness adaptive principle
Jung et al. 2017 [25] Separate solid and non-solid in GGO nodules using an asymmetric multi-phase deformable mode
Wang et al. 2017 [26] MVCNN for nodule segmentation, which extracts features from axial, coronal and sagittal views
Ronneberger et al. 2015 [27] U-Net architecture specialized for biomedical imaging
Wang et al. 2017 [28] Central focused convolutional neural network for lung nodule segmentation
Cao et al. 2020 [29] Dual-branch residual network for lung nodule segmentation
Qi et al. 2020 [30] GGO nodules segmentation using CAD system based on CCN, analyzing growth and risk factors.
Funke et al. 2020 [31] Trained a 3D-UNet model using using the STAPLE algorithm
Xiao et al. 2020 [32] Combined the 3D-UNet and Res2Net architectures to create a new model
Hu et al. 2021 [33] Hybrid attention mechanism and densely connected convolutional networks
Lung Segmentation
Kavitha et al. 2019 [36] Novel strip and marker-watershed based on PSO and fuzzy c-means clustering for lung segmentation
Kim et al. 2021 [37] U-Net with self-attention for lung segmentation in chest X-rays.
Lung Nodule Detection and Segmentation
Mekali et al. 2021 [20] Lung boundary pixels and concave points extraction, separation of attached pleural from nodule
Huang et al. 2019 [38] Detection with regional-CNN and segmentation with a FCN.
Other Pulmonary Disease Detection
Polap et al. 2018 [39] Diseased tissue detection via lung segmentation and bio-inspired algorithm
Ke et al. 2019 [40] Detection of pulmonary disease with neuro-heuristic method
Santoso et al. 2020 [41] ANFIS for detection of pneumonia and pulmonary tuberculosis
Ukaoha et al. 2020 [42] ANFIS for diagnosis of COVID-19
Akram et al. 2021 [43] COVID-19 diagnosis in X-rays via optimized genetic algorithm selector and naive Bayes classifier
Wang et al. 2020 [44] Deep convolutional network for COVID-19 detection in X-rays