--- license: cc-by-nc-nd-4.0 task_categories: - image-segmentation modality: - MRI language: [] tags: - medical-imaging - neonatal-brain - hypoxic-ischemic-encephalopathy - HIE - lesion-segmentation - diffusion-MRI - ADC - 3D pretty_name: BONBID-HIE size_categories: - n<1K configs: - config_name: default data_files: - split: train path: data/train-* - split: val path: data/val-* dataset_info: features: - name: subject_id dtype: string - name: split dtype: string - name: num_slices dtype: int32 - name: lesion_voxels dtype: int32 - name: preview_slice_idx dtype: int32 - name: adc_slice dtype: image - name: zadc_slice dtype: image - name: lesion_mask dtype: image - name: overlay dtype: image splits: - name: train num_bytes: 1370200 num_examples: 85 - name: val num_bytes: 42629 num_examples: 4 download_size: 1449540 dataset_size: 1412829 --- # BONBID-HIE **BONBID-HIE** (BOston Neonatal Brain Injury Dataset for Hypoxic Ischemic Encephalopathy) is a curated MRI dataset for neonatal HIE lesion segmentation, released as part of the MICCAI 2023 BONBID-HIE challenge. ## Dataset Summary | Field | Details | |---|---| | Modality | Diffusion MRI (ADC-derived maps) | | Body Part | Neonatal brain (term/late-preterm with HIE) | | Subjects (Train) | 85 | | Subjects (Val) | 4 (Docker sanity-check split) | | Subjects (Test) | 44 (password-encrypted, not redistributed here) | | Format | MetaImage `.mha` (3D volumes) | | Total Size | ~1.3 GB | | Scanners | GE 1.5T Signa, Siemens 3T Trio | | License | CC BY-NC-ND 4.0 | ## Data Structure Each split contains three parallel directories: - `1ADC_ss/` — skull-stripped Apparent Diffusion Coefficient map (model **input**) - `2Z_ADC/` — Z-score normalized ADC map (additional input/aid; **NOT ground truth**) - `3LABEL/` — manual expert lesion annotation (**recommended ground truth**, train/val only) File naming: - `1ADC_ss/MGHNICU_{ID}-VISIT_01-ADC_ss.mha` - `2Z_ADC/Zmap_MGHNICU_{ID}-VISIT_01-ADC_smooth2mm_clipped10.mha` - `3LABEL/MGHNICU_{ID}-VISIT_01_lesion.mha` Plus `BONBID2023_clinicaldata_val.xlsx` (clinical metadata for the val split). ## Ground Truth The recommended ground truth is the **manual expert lesion annotation** in `3LABEL/`, drawn by a trained physician using MRICroN. For 27 uncertain cases, consensus was reached among three pediatric neuroradiologists. The `2Z_ADC/` map is provided as an algorithm-development aid and is NOT a ground-truth annotation. ## Notes - Test split is omitted: it was distributed only to MICCAI 2023 challenge participants and is password-encrypted on Zenodo. Training samples (n=85) plus validation (n=4) are reproduced here. - Val split is small (n=4) — intended as a Docker sanity-check, not a statistical validation set. Cross-validation on the train split is the typical evaluation strategy. ## Citation ```bibtex @article{bao2024bonbid, title = {{BOston Neonatal Brain Injury Data for Hypoxic Ischemic Encephalopathy (BONBID-HIE): I. MRI and Lesion Labeling}}, author = {Bao, Rina and Song, Ya'nan and Bates, Sara V. and others}, journal = {Scientific Data}, publisher = {Nature}, year = {2024}, doi = {10.1038/s41597-024-03986-7}, url = {https://www.nature.com/articles/s41597-024-03986-7} } ``` ## Source Original release: [Zenodo record 10602767](https://zenodo.org/records/10602767) (V3, paper-cited) Challenge portal: [bonbid-hie2023.grand-challenge.org](https://bonbid-hie2023.grand-challenge.org/)