{ "schema": "https://github.com/Project-MONAI/MONAI-extra-test-data/releases/download/0.8.1/meta_schema_20220324.json", "version": "0.1.0", "changelog": { "0.1.0": "complete the model package" }, "monai_version": "1.2.0", "pytorch_version": "1.13.1", "numpy_version": "1.24.3", "optional_packages_version": { "nibabel": "5.1.0", "pytorch-ignite": "0.4.11", "einops": "0.6.1", "fire": "0.5.0", "torchvision": "0.14.1" }, "name": "Segmentation of renal structures based on contrast computed tomography scans", "task": "Renal structures segmentation", "description": "A UNET-based model for renal segmentation from contrast enhanced CT image", "authors": "Sechenov university", "copyright": "Copyright (c) Sechenov university", "data_source": "AVUCTK_cases.zip", "data_type": "nibabel", "image_classes": "three channel data, intensity scaled to [0, 1]", "label_classes": "1: artery, 2: vein, 3: ureter, 4: cyst, 5: tumor, 6: parenchyma", "pred_classes": "1: artery, 2: vein, 3: ureter, 4: neoplasm, 5: parenchyma", "eval_metrics": { "mean_dice": 0.79 }, "intended_use": "This is PoC, not to be used for diagnostic purposes", "references": [ "Chernenkiy I. M. et al. Segmentation of renal structures based on contrast computed tomography scans using a convolutional neural network //Sechenov Medical Journal. \u2013 2023. \u2013 \u0422. 14. \u2013 \u2116. 1. \u2013 \u0421. 39-49. URL - https://www.sechenovmedj.com/jour/article/view/899" ], "network_data_format": { "inputs": { "image": { "type": "image", "format": "hounsfield", "modality": "CT", "num_channels": 3, "spatial_shape": [ 96, 96, 96 ], "dtype": "float32", "value_range": [ 0, 1 ], "is_patch_data": true, "channel_def": { "0": "image" } } }, "outputs": { "pred": { "type": "image", "format": "segmentation", "num_channels": 6, "spatial_shape": [ 96, 96, 96 ], "dtype": "float32", "value_range": [ 0, 1 ], "is_patch_data": true, "channel_def": { "0": "background", "1": "artery", "2": "vein", "3": "ureter", "4": "neoplasm", "5": "parenchyma" } } } } }