以下为卖家选择提供的数据验证报告:
数据描述
This dataset contains metadata extracted from train image dicom files relevant to the RSNA 2022 Cervical Spine Fracture Detection competition.
- meta-train - original metadata extracted (ignore this file)
- meta-train-clean - cleaned version of meta-train (easier to use)
- meta-segmentations - meta-data for images with segmentations (including correct labels C1-C7 extracted from unique values in segmentations)
- meta-segmentation-clean - cleaned version of meta-segmentations.
- meta-train-with-vertebrae - meta-data for all train images (with 88% accurate RF predictions of which vertebrae is in each image)
- train-segmented - meta-data for all train images (with 95% accurate EffNetV2 predictions of which vertebrae is in each image from this notebook)
- train-vert-fold4 - this is similar to 6. train-segmented, made by cleaning the segmentations and training an image+tabular model. Also includes additional columns created from feature engineering.
- train-vert - ensembled predictions of train-segmented and train-vert-fold4.
The notebooks used to create these files are below:

RSNA 2022 Spine Fracture Detection - Metadata
118.53MB
申请报告