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--- |
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license: cc-by-4.0 |
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language: |
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- en |
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tags: |
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- medical |
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- MRI |
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- spine |
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- image segmentation |
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- computer vision |
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size_categories: |
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- n<1K |
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pretty_name: 'SPIDER: Spine MRI Segmentation' |
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--- |
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# Spine Segmentation: Discs, Vertebrae and Spinal Canal (SPIDER) |
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The SPIDER dataset contains (human) lumbar spine magnetic resonance images (MRI) and segmentation masks described in the following paper: |
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- van der Graaf, J.W., van Hooff, M.L., Buckens, C.F.M. et al. *Lumbar spine segmentation in MR images: a dataset and a public benchmark.* |
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Sci Data 11, 264 (2024). https://doi.org/10.1038/s41597-024-03090-w |
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Original data are available on [Zenodo](https://zenodo.org/records/8009680). More information can be found at [SPIDER Grand Challenge](https://spider.grand-challenge.org/). |
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<figure> |
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<img src="docs/ex1.png" alt="Example MRI Image" style="height:300px;"> |
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<figcaption>Example MRI scan (at three different depths)</figcaption> |
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</figure> |
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<figure> |
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<img src="docs/ex2.png" alt="Example MRI Image with Segmentation Mask" style="height:300px;"> |
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<figcaption>Example MRI scan with segmentation masks</figcaption> |
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</figure> |
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# Dataset Description |
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- **Published Paper:** [Lumbar spine segmentation in MR images: a dataset and a public benchmark](https://www.nature.com/articles/s41597-024-03090-w) |
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- **ArXiv Link:** https://arxiv.org/abs/2306.12217 |
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- **Repository:** [Zenodo](https://zenodo.org/records/8009680) |
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- **Grand Challenge:** [SPIDER Grand Challenge](https://spider.grand-challenge.org/) |
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# Tutorials |
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In addition to the information in this README, several detailed tutorials are provided in the [tutorials](tutorials) folder: |
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1. [Loading the Dataset](tutorials/load_data.ipynb) |
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2. [Applying the U-Net Image Segmentation Model to SPIDER](tutorials/UNet_with_SPIDER.ipynb) |
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<br> |
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# Table of Contents (TOC) |
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1. [Getting Started](https://huggingface.co/datasets/cdoswald/SPIDER#getting-started) |
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2. [Dataset Summary](https://huggingface.co/datasets/cdoswald/SPIDER#dataset-summary) |
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3. [Data Modifications](https://huggingface.co/datasets/cdoswald/SPIDER#data-modifications) |
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4. [Dataset Structure](https://huggingface.co/datasets/cdoswald/SPIDER#dataset-structure) |
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- [Data Instances](https://huggingface.co/datasets/cdoswald/SPIDER#data-instances) |
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- [Data Schema](https://huggingface.co/datasets/cdoswald/SPIDER#data-schema) |
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- [Data Splits](https://huggingface.co/datasets/cdoswald/SPIDER#data-splits) |
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5. [Image Resolution](https://huggingface.co/datasets/cdoswald/SPIDER#image-resolution) |
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6. [Additional Information](https://huggingface.co/datasets/cdoswald/SPIDER#additional-information) |
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- [License](https://huggingface.co/datasets/cdoswald/SPIDER#license) |
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- [Citation](https://huggingface.co/datasets/cdoswald/SPIDER#citation) |
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- [Disclaimer](https://huggingface.co/datasets/cdoswald/SPIDER#disclaimer) |
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- [Known Issues/Bugs](https://huggingface.co/datasets/cdoswald/SPIDER#known-issuesbugs) |
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<br> |
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# Getting Started |
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First, you will need to install the following dependencies: |
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* `datasets >= 2.18.0` |
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* `scikit-image >= 0.19.3` |
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* `SimpleITK >= 2.3.1` |
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Then you can load the SPIDER dataset as follows: |
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```python |
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from datasets import load_dataset |
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dataset = load_dataset("cdoswald/SPIDER, name="default", trust_remote_code=True) |
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``` |
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See the [Loading the Dataset](tutorials/load_data.ipynb) tutorial for more information. |
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# Dataset Summary |
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The dataset includes 447 sagittal T1 and T2 MRI series collected from 218 patients across four hospitals. |
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Segmentation masks indicating the vertebrae, intervertebral discs (IVDs), and spinal canal are also included. |
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Segmentation masks were created manually by a medical trainee under the supervision of a medical imaging expert and an experienced musculoskeletal radiologist. |
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In addition to MR images and segmentation masks, additional metadata (e.g., scanner manufacturer, pixel bandwidth, etc.), limited |
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patient characteristics (biological sex and age, when available), and radiological gradings indicating specific degenerative |
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changes can be loaded with the corresponding image data. |
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# Data Modifications |
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This version of the SPIDER dataset (i.e., available through the HuggingFace `datasets` library) differs from the original |
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data available on [Zenodo](https://zenodo.org/records/8009680) in two key ways: |
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1. Image Rescaling/Resizing: The original 3D volumetric MRI data (images and masks) are stored as .mha files and do not have a standardized height, width, depth, and image resolution. |
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To enable the data to be loaded through the HuggingFace `datasets` library, all 447 MRI series and masks are standardized to have size `(512, 512, 30)` and resolution `[0, 255]` (unisgned 8-bit integers); therefore, |
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n-dimensional interpolation is used to resize and/or rescale the images (via the `skimage.transform.resize` and `skimage.img_as_ubyte` functions). |
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If you need a different standardization, you have two options: |
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i. Pass your preferred standardization size as a `Tuple[int, int, int]` to the `resize_shape` argument in `load_dataset` (see the [LoadData Tutorial](placeholder)); OR |
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ii. After loading the dataset from HuggingFace, use the `SimpleITK` library to import each image using the file path of the locally cached .mha file. |
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The local cache file path is provided for each example when iterating over the dataset (again, see the [LoadData Tutorial](placeholder)). |
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2. Train, Validation, and Test Set: The original dataset contained 257 unique studies (i.e., patients) that were partitioned into 218 (85%) studies for the public training/validation set |
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and 39 (15%) studies for the SPIDER Grand Challenge [hidden test set](https://spider.grand-challenge.org/data/). To enable users to train, validate, and test their models prior to submitting |
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their models to the SPIDER Grand Challenge, the original 218 studies that comprised the public training/validation set were further partitioned using a 60%/20%/20% split. The original split |
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for each study (i.e., training or validation set) is recorded in the `OrigSubset` variable in the study's linked metadata. |
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# Dataset Structure |
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### Data Instances |
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There are 447 images and corresponding segmentation masks for 218 unique patients. |
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### Data Schema |
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The format for each generated data instance is as follows: |
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1. **patient_id**: a unique ID number indicating the specific patient (note that many patients have more than one scan in the data) |
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2. **scan_type**: an indicator for whether the image is a T1-weighted, T2-weighted, or T2-SPACE MRI |
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3. **image**: a 3-dimensional volumetric array (height, width, depth) of values indicating pixel intensities of MRI scan |
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4. **mask**: a 3-dimensional volumetric array (height, width, depth) of values indicating the following segmented anatomical feature(s): |
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- 0 = background |
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- 1-25 = vertebrae (numbered from the bottom, i.e., L5 = 1) |
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- 100 = spinal canal |
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- 101-125 = partially visible vertebrae |
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- 201-225 = intervertebral discs (numbered from the bottom, i.e., L5/S1 = 201) |
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See the [SPIDER Grand Challenge](https://grand-challenge.org/algorithms/spider-baseline-iis/) documentation for more details. |
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6. **image_path**: path to the local cache containing the original (non-rescaled and non-resized) MRI image |
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7. **mask_path**: path to the local cache containing the original (non-rescaled and non-resized) segementation mask |
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8. **metadata**: a dictionary of metadata of image, patient, and scanner characteristics: |
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- number of vertebrae |
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- number of discs |
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- biological sex |
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- age |
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- manufacturer |
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- manufacturer model name |
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- serial number |
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- software version |
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- echo numbers |
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- echo time |
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- echo train length |
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- flip angle |
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- imaged nucleus |
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- imaging frequency |
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- inplane phase encoding direction |
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- MR acquisition type |
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- magnetic field strength |
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- number of phase encoding steps |
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- percent phase field of view |
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- percent sampling |
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- photometric interpretation |
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- pixel bandwidth |
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- pixel spacing |
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- repetition time |
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- specific absorption rate (SAR) |
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- samples per pixel |
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- scanning sequence |
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- sequence name |
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- series description |
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- slice thickness |
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- spacing between slices |
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- specific character set |
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- transmit coil name |
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- window center |
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- window width |
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9. **rad_gradings**: radiological gradings by an expert musculoskeletal radiologist indicating specific degenerative |
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changes at all intervertebral disc (IVD) levels (see page 3 of the [original paper](https://www.nature.com/articles/s41597-024-03090-w) |
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for more details). The data are provided as a dictionary of lists; an element's position in the list indicates the IVD level. Some elements |
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are ratings while others are binary indicators. For consistency, each list will have 10 elements, but some IVD levels may not be applicable |
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to every image (which will be indicated with an empty string). |
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### Data Splits |
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The dataset is split as follows: |
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- Training set: |
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- 149 unique patients |
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- 304 total images |
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- Sagittal T1: 133 images |
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- Sagittal T2: 145 images |
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- Sagittal T2-SPACE: 26 images |
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- Validation set: |
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- 37 unique patients |
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- 75 total images |
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- Sagittal T1: 34 images |
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- Sagittal T2: 34 images |
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- Sagittal T2-SPACE: 7 images |
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- Test set: |
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- 32 unique patients |
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- 68 total images |
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- Sagittal T1: 29 images |
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- Sagittal T2: 31 images |
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- Sagittal T2-SPACE: 8 images |
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An additional hidden test set provided by the paper authors |
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(i.e., not available via HuggingFace) is available on the |
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[SPIDER Grand Challenge](https://spider.grand-challenge.org/spiders-challenge/). |
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# Image Resolution |
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> Standard sagittal T1 and T2 image resolution ranges from 3.3 x 0.33 x 0.33 mm to 4.8 x 0.90 x 0.90 mm. |
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> Sagittal T2 SPACE sequence images had a near isotropic spatial resolution with a voxel size of 0.90 x 0.47 x 0.47 mm. |
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> (https://spider.grand-challenge.org/data/) |
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Note that all images are rescaled to have pixel intensities in the range `[0, 255]` (i.e., unsigned 8-bit integers) |
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for compatibility with the HuggingFace `datasets` library. If you want to use the original resolution, you can |
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load the original images from the local cache indicated in each example's `image_path` and `mask_path` features. |
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See the [tutorial](tutorials/load_data.ipynb) for more information. |
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# Additional Information |
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### License |
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The dataset is published under a CC-BY 4.0 license: https://creativecommons.org/licenses/by/4.0/legalcode. |
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### Citation |
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- van der Graaf, J.W., van Hooff, M.L., Buckens, C.F.M. et al. Lumbar spine segmentation in MR images: a dataset and a public benchmark. Sci Data 11, 264 (2024). https://doi.org/10.1038/s41597-024-03090-w. |
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### Disclaimer |
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I am not affiliated in any way with the aforementioned paper, researchers, or organizations. Please validate any findings using this curated dataset |
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against the original data provided by the researchers on [Zenodo](https://zenodo.org/records/8009680).) |
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### Known Issues/Bugs |
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1. Serializing data into Apache Arrow format is required to make the dataset available via HuggingFace's `datasets` library. However, it introduces some segmentation |
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mask integer values that do not map exactly to a defined [anatomical feature category](https://grand-challenge.org/algorithms/spider-baseline-iis/). |
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See the data loading [tutorial](tutorials/load_data.ipynb) for more information and temporary work-arounds. |
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