PURPOSE: To evaluate robustness of a radiomics-based support vector machine (SVM) model for detection of visually occult PDA on pre-diagnostic CTs by simulating common variations in image acquisition and radiomics workflow using image perturbation methods. METHODS: Eighteen algorithmically generated-perturbations, which simulated variations in image noise levels (Ï, 2Ï, 3Ï, 5Ï), image rotation [both CT image and the corresponding pancreas segmentation mask by 45° and 90° in axial plane], voxel resampling (isotropic and anisotropic), gray-level discretization [bin width (BW) 32 and 64)], and pancreas segmentation (sequential erosions by 3, 4, 6, and 8 pixels and dilations by 3, 4, and 6 pixels from the boundary), were introduced to the original (unperturbed) test subset (nâ=â128; 45 pre-diagnostic CTs, 83 control CTs with normal pancreas). Radiomic features were extracted from pancreas masks of these additional test subsets, and the model's performance was compared vis-a-vis the unperturbed test subset. RESULTS: The model correctly classified 43 out of 45 pre-diagnostic CTs and 75 out of 83 control CTs in the unperturbed test subset, achieving 92.2% accuracy and 0.98 AUC. Model's performance was unaffected by a three-fold increase in noise level except for sensitivity declining to 80% at 3Ï (pâ=â0.02). Performance remained comparable vis-a-vis the unperturbed test subset despite variations in image rotation (pâ=â0.99), voxel resampling (pâ=â0.25-0.31), change in gray-level BW to 32 (pâ=â0.31-0.99), and erosions/dilations up to 4 pixels from the pancreas boundary (pâ=â0.12-0.34). CONCLUSION: The model's high performance for detection of visually occult PDA was robust within a broad range of clinically relevant variations in image acquisition and radiomics workflow.
Assessing the robustness of a machine-learning model for early detection of pancreatic adenocarcinoma (PDA): evaluating resilience to variations in image acquisition and radiomics workflow using image perturbation methods.
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作者:Mukherjee Sovanlal, Korfiatis Panagiotis, Patnam Nandakumar G, Trivedi Kamaxi H, Karbhari Aashna, Suman Garima, Fletcher Joel G, Goenka Ajit H
| 期刊: | Abdom Radiol (NY) | 影响因子: | 0.000 |
| 时间: | 2024 | 起止号: | 2024 Mar;49(3):964-974 |
| doi: | 10.1007/s00261-023-04127-1 | ||
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