| Literature DB >> 34631589 |
Bing Kang1,2, Xianshun Yuan1,2, Hexiang Wang3, Songnan Qin1,2, Xuelin Song4, Xinxin Yu1,2, Shuai Zhang5, Cong Sun2, Qing Zhou6, Ying Wei6, Feng Shi6, Shifeng Yang2, Ximing Wang2.
Abstract
OBJECTIVE: To develop and evaluate a deep learning model (DLM) for predicting the risk stratification of gastrointestinal stromal tumors (GISTs).Entities:
Keywords: X-ray computed; deep learning; gastrointestinal stromal tumors; prediction model; risk assessment; tomography
Year: 2021 PMID: 34631589 PMCID: PMC8496403 DOI: 10.3389/fonc.2021.750875
Source DB: PubMed Journal: Front Oncol ISSN: 2234-943X Impact factor: 6.244
Figure 1Flow chart of patient inclusion and exclusion.
Figure 2The overall gastrointestinal stromal tumors risk stratification framework. CAM, class activation mapping; A, arterial phase; V, venous phase; D, delayed phase; FC, fully connected layer; GAP, global average pooling layer.
Figure 3The structure of 3D SE-Residual Network.
Characteristics of patients.
| Characteristic | Training cohort | Testing cohort | External validation cohort |
|---|---|---|---|
| No. of patients | 241 | 104 | 388 |
| Age* (years) | 59.2 ± 10.5 | 58.9 ± 9.8 | 60.4 ± 9.9 |
| Gender | |||
| Male | 99 (41.1) | 53 (51.0) | 200 (51.5) |
| Female | 142 (58.9) | 51 (49.0) | 188 (48.5) |
| Site | |||
| Gastric | 192 (79.7) | 86 (82.7) | 236 (60.8) |
| Non-gastric | 49 (20.3) | 18 (17.3) | 152 (39.2) |
| Size (cm) | |||
| <2 | 44 (18.3) | 20 (19.2) | 19 (4.9) |
| 2.1–5.0 | 122 (50.6) | 53 (51.0) | 148 (38.1) |
| 5.1–10.0 | 59 (24.5) | 25 (24.0) | 138 (35.6) |
| >10 | 16 (6.6) | 6 (5.8) | 83 (21.4) |
| Mitotic count | |||
| ≤5/50 | 193 (80.1) | 82 (78.8) | 247 (63.7) |
| 6–10 | 27 (11.2) | 12 (11.5) | 73 (18.8) |
| >10 | 21 (8.7) | 10 (9.6) | 68 (17.5) |
Unless otherwise specified, data in parentheses are percentages.
*Numbers in parentheses are the range.
Figure 4ROC curves of the DLM and radiomics model. (A) ROC curve of the DLM for the testing cohort. (B) ROC curve of the DLM for the independent external validation cohort. (C) ROC curve of the radiomics model for the testing cohort. (D) ROC curve of the radiomics model for the independent external validation cohort. ROC, receiver operating characteristic; AUC, area under the curve; DLM, deep learning model.
Predictive performance of DLM in the testing and external validation cohorts.
| Results | Accuracy (%) | Sensitivity (%) | Specificity (%) | F1 score (%) |
|---|---|---|---|---|
| Testing cohort | ||||
| Low-malignant | 86 (89/104) [80, 92] | 93 (57/61) [87, 99] | 74 (32/43) [61, 88] | 88 |
| Intermediate-malignant | 87 (90/104) [81, 92] | 50 (9/18) [27, 74] | 94 (81/86) [88, 100] | 56 |
| High-malignant | 91 (95/104) [86, 97] | 76 (19/25) [58, 94] | 96 (76/79) [92, 100] | 81 |
| Overall result | 82 | 73 | 88 | 75 |
| External validation cohort | ||||
| Low-malignant | 81 (315/388) [77, 85] | 72 (98/137) [64, 79] | 86 (217/251) [83, 90] | 73 |
| Intermediate-malignant | 75 (292/388) [71, 79] | 24 (16/67) [14, 34] | 86 (276/321) [82, 90] | 25 |
| High-malignant | 77 (299/388) [73, 81] | 79 (145/184) [73, 85] | 75 (154/204) [70, 81] | 77 |
| Overall result | 67 | 58 | 83 | 58 |
Unless otherwise specified, data are percentages, with numbers of images in parentheses and 95% confidence intervals in brackets.
DLM, deep learning model.
Figure 5Confusion matrix of the DLM for risk stratification of gastrointestinal stromal tumors. (A) Confusion matrix for the testing cohort. (B) Confusion matrix for the independent external validation cohort. DLM, deep learning model.
Figure 6Attention heatmap drawn by gradient-weighted class activation mapping for the model interpretation. (A) CT images, tumor segmentations, and corresponding attention heatmaps in a 60-year-old woman with low-malignant GIST (the first column is arterial phase, the second column is venous phase, and the third column is delayed phase). (B) CT images, tumor segmentations, and corresponding attention heatmaps in a 66-year-old woman with intermediate-malignant GIST. (C) CT images, tumor segmentations, and corresponding attention heatmaps in a 43-year-old woman with high-malignant GIST. The red and yellow regions represent areas activated by the DLM and have the greatest predictive significance; the blue backgrounds reflect areas with weaker predictive values. GIST, gastrointestinal stromal tumor; DLM, deep learning model.
Predictive performance of radiomics model in the testing and external validation cohorts.
| Results | Accuracy (%) | Sensitivity (%) | Specificity (%) | F1 score (%) |
|---|---|---|---|---|
| Testing cohort | ||||
| Low-malignant | 83 (86/104) [75, 91] | 98 (60/61) [94, 100] | 60 (26/43) [47, 74] | 87 |
| Intermediate-malignant | 84 (87/104) [76, 92] | 6 (1/18) [2, 10] | 100 (86/86) [100, 100] | 11 |
| High-malignant | 84 (87/104) [76, 92] | 68 (17/25) [50, 86] | 89 (70/79) [81, 96] | 67 |
| Overall result | 75 | 57 | 83 | 55 |
| External validation cohort | ||||
| Low-malignant | 80 (311/388) [76, 84] | 87 (119/137) [81, 93] | 77 (192/251) [71, 82] | 76 |
| Intermediate-malignant | 80 (311/388) [76, 84] | 9 (6/67) [3, 15] | 95 (305/321) [93, 97] | 14 |
| High-malignant | 76 (296/388) [72, 80] | 76 (140/184) [70, 82] | 77 (156/204) [71, 82] | 75 |
| Overall result | 68 | 57 | 83 | 55 |
Unless otherwise specified, data are percentages, with numbers of images in parentheses and 95% confidence intervals in brackets.