| Literature DB >> 32732963 |
Muhammad Usman1,2, Byoung-Dai Lee3, Shi-Sub Byon2, Sung-Hyun Kim2, Byung-Il Lee2, Yeong-Gil Shin1.
Abstract
Accurate quantification of pulmonary nodules can greatly assist the early diagnosis of lung cancer, enhancing patient survival possibilities. A number of nodule segmentation techniques, which either rely on a radiologist-provided 3-D volume of interest (VOI) or use the constant region of interests (ROIs) for all the slices, are proposed; however, these techniques can only investigate the presence of nodule voxels within the given VOI. Such approaches restrain the solutions to freely investigate the nodule presence outside the given VOI and also include the redundant structures (non-nodule) into VOI, which limits the segmentation accuracy. In this work, a novel semi-automated approach for 3-D segmentation of lung nodule in computerized tomography scans, has been proposed. The technique is segregated into two stages. In the first stage, a 2-D ROI containing the nodule is provided as an input to perform a patch-wise exploration along the axial axis using a novel adaptive ROI algorithm. This strategy enables the dynamic selection of the ROI in the surrounding slices to investigate the presence of nodules using a Deep Residual U-Net architecture. This stage provides the initial estimation of the nodule utilized to extract the VOI. In the second stage, the extracted VOI is further explored along the coronal and sagittal axes, in patchwise fashion, with Residual U-Nets. All the estimated masks are then fed into a consensus module to produce a final volumetric segmentation of the nodule. The algorithm is rigorously evaluated on LIDC-IDRI dataset, which is the largest publicly available dataset. The proposed approach achieved the average dice score of 87.5%, which is significantly higher than the existing state-of-the-art techniques.Entities:
Year: 2020 PMID: 32732963 PMCID: PMC7393083 DOI: 10.1038/s41598-020-69817-y
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Multiple visual appearances of the pulmonary nodule are shown. The intra-nodule variation in slices of axial view is depicted from column (a) to (e), and the inter-nodule difference is presented from rows (i) to (iii).
Figure 2An illustration of the stages of the proposed method. At stage I, a manual ROI along the axial axis is provided by the user, and a Deep Residual U-Net along with the adaptive ROI algorithm is employed to extract the volume of interest (VOI). After getting the VOI during stage II, a patch-wise segmentation of the nodule is performed along the coronal and sagittal axes. Eventually, a consensus module is employed on all estimated segmentation masks to obtain the final 3-D nodule segmentation mask.
Figure 3The change in position and shape of the ROI after employing our A-ROI algorithm, is presented. The current and next slice of VOI have been shown in figure (a,b), respectively. The red ROI demonstrates the change in size of ROI by A-ROI algorithm while the change in position of the ROI is depicted by green ROI.
Figure 4The margins on the four sides of the predicted mask are highlighted as and , for the left, right, top, and bottom margins of the predicted nodule segmentation, respectively.
Figure 5The constant and adaptive region of interests (ROIs) have been shown in a sequence of slices in which nodule is present. Blue and red boxes represent the constant ROIs, while green boxes depict the adaptive ROI.
Figure 6The architecture of Deep Residual U-Net, which is employed along the axial axis with the A-ROI algorithm to perform the lung nodule segmentation.
The network structure of the Deep Residual U-Net that performs patch-wise segmentation along the axial axis.
| Unit level | Conv layer | Filter | Stride | Output size |
|---|---|---|---|---|
| Level 1 | Conv 1 Conv 2 | 1 | ||
| 1 | ||||
| Level 2 | Conv 3 Conv 4 | 2 | ||
| 1 | ||||
| Level 3 | Conv 5 Conv 6 | 2 | ||
| 1 | ||||
| Level 4 | Conv 7 Conv 8 | 2 | ||
| 1 | ||||
| Level 5 | Conv 9 Conv 10 | 2 | ||
| 1 | ||||
| Level 6 | Conv 11 Conv 12 | 1 | ||
| 1 | ||||
| Level 7 | Conv 13 Conv 14 | 1 | ||
| 1 | ||||
| Level 8 | Conv 15 Conv 16 | 1 | ||
| 1 | ||||
| Level 9 | Conv 17 Conv 18 | 1 | ||
| 1 | ||||
| Conv 19 | 1 | |||
The network structure of the Deep Residual U-Net to perform patch-wise segmentation along the coronal and sagittal axes.
| Unit level | Conv layer | Filter | Stride | Output size |
|---|---|---|---|---|
| Level 1 | Conv 1 Conv 2 | 1 | ||
| 1 | ||||
| Level 2 | Conv 3 Conv 4 | 2 | ||
| 1 | ||||
| Level 3 | Conv 5 Conv 6 | 2 | ||
| 1 | ||||
| Level 4 | Conv 7 Conv 8 | 2 | ||
| 1 | ||||
| Level 5 | Conv 9 Conv 10 | 1 | ||
| 1 | ||||
| Level 6 | Conv 11 Conv 12 | 1 | ||
| 1 | ||||
| Level 7 | Conv 13 Conv 14 | 1 | ||
| 1 | ||||
| Conv 15 | 1 | |||
Figure 7The graph of training and validation accuracy vs. the number of training epochs of Res-UNet.
Figure 8The graph between various values of and the corresponding performances in term of % DSC on the validation data.
The mean ± standard deviation for quantitative results of various segmentation methods with the best performance indicated in bold.
| Methodology | DSC (%) | SEN (%) | PPV (%) |
|---|---|---|---|
| Central focused CNN[ | 78.55 ± 12.49 | 86.01 ± 15.22 | 75.79 ± 14.73 |
| Multi-crop CNN[ | 77.51 ± 11.40 | 88.83 ± 12.34 | 71.42 ± 14.78 |
| Multi-view CNN[ | 75.89 ± 12.99 | 87.16 ± 12.91 | 70.81 ± 17.57 |
| Multi-view deep CNN[ | 77.85 ± 12.94 | 86.96 ± 15.73 | 77.33 ± 13.26 |
| Multichannel ROI based on deep structured algorithms[ | 77.01 ± 12.93 | 85.45 ± 15.97 | 73.52 ± 14.62 |
| Cascaded dual-pathway Res-Net[ | 81.58 ± 11.05 | 87.30 ± 14.30 | 79.71 ± 13.59 |
| Unsupervised metaheuristic search[ | 82.34 ± 5.40 | 87.10 ± 9.78 | 85.59 ± 11.06 |
| Constant ROI with multi-view deep residual learning | 84.35 ± 11.72 | 89.02 ± 8.91 | 86.73 ± 10.11 |
| A-ROI with multi-view deep residual learning | 87.55 ± 10.58 | 91.62 ± 8.47 | 88.24 ± 9.52 |
Average DSC for different nodule types in the LIDC-IDRI testing set.
| Characteristics | Characteristic scores | |||||
|---|---|---|---|---|---|---|
| 1 | 2 | 3 | 4 | 5 | 6 | |
| Calcification | _ | _ | 84.61 [18] | 83.88 [42] | 86.24 [27] | 88.15[405] |
| Internal structure | 87.62 [487] | 79.27 [3] | _ | 81.48 [2] | _ | _ |
| Lobulation | 86.96 [201] | 88.78 [164] | 86.56 [78] | 85.94 [31] | 89.74 [18] | _ |
| Malignancy | 85.67 [39] | 86.56 [114] | 89.26 [163] | 86.67 [98] | 87.52 [78] | _ |
| Margin | 86.42 [9] | 85.61 [37] | 86.73 [78] | 88.21 [232] | 87.51 [136] | _ |
| Sphericity | _ | 86.79 [38] | 85.28 [153] | 89.16 [218] | 88.12 [83] | _ |
| Speculation | 89.29 [257] | 85.18 [165] | 86.96 [32] | 86.37 [14] | 86.68 [24] | _ |
| Subtlety | 80.52 [4] | 82.65 [22] | 87.51 [131] | 87.09 [238] | 90.17 [97] | _ |
| Texture | 82.18 [11] | 85.67 [18] | 86.54 [26] | 87.55 [107] | 87.93 [330] | _ |
Figure 9The segmentation results of proposed approach, at different stages (i.e., after employing segmentation along axial, coronal, sagittal axis) and finally the segmentation outputs of consensus module have been presented with their respective dice scores.
Average dice score and Hausdorff distance for each stage of the proposed approach.
| Axial | Coronal | Sagittal | Consensus | |
|---|---|---|---|---|
| Dice score (%) | ||||
| Hausdorff distance (mm) |
Figure 10The segmentation performance of our proposed approach on each slice of a single nodule with the corresponding dice scores. From columns 1–9, the sequence of slices is observed with the nodule seen in columns 2–7 and no nodule in columns 1 and 9. The squares marked in the predicted segmentation row depict the ROIs, where yellow represents the initial (manually provided) ROI, and blue represents the adaptive ROIs.
Figure 11Visual examples of pulmonary nodule segmentation results on which the proposed method failed to accurately segment the nodule boundary.