SAROS: A dataset for whole-body region and organ segmentation in CT imaging.
Sven KoitkaGiulia BaldiniLennard KrollNatalie van LandeghemOlivia B PollokJohannes HauboldObioma PelkaMoon KimJens KleesiekFelix NensaRené HoschPublished in: Scientific data (2024)
The Sparsely Annotated Region and Organ Segmentation (SAROS) dataset was created using data from The Cancer Imaging Archive (TCIA) to provide a large open-access CT dataset with high-quality annotations of body landmarks. In-house segmentation models were employed to generate annotation proposals on randomly selected cases from TCIA. The dataset includes 13 semantic body region labels (abdominal/thoracic cavity, bones, brain, breast implant, mediastinum, muscle, parotid/submandibular/thyroid glands, pericardium, spinal cord, subcutaneous tissue) and six body part labels (left/right arm/leg, head, torso). Case selection was based on the DICOM series description, gender, and imaging protocol, resulting in 882 patients (438 female) for a total of 900 CTs. Manual review and correction of proposals were conducted in a continuous quality control cycle. Only every fifth axial slice was annotated, yielding 20150 annotated slices from 28 data collections. For the reproducibility on downstream tasks, five cross-validation folds and a test set were pre-defined. The SAROS dataset serves as an open-access resource for training and evaluating novel segmentation models, covering various scanner vendors and diseases.
Keyphrases
- deep learning
- convolutional neural network
- spinal cord
- high resolution
- image quality
- quality control
- computed tomography
- end stage renal disease
- electronic health record
- newly diagnosed
- magnetic resonance imaging
- minimally invasive
- spinal cord injury
- squamous cell carcinoma
- peritoneal dialysis
- skeletal muscle
- photodynamic therapy
- prognostic factors
- rna seq
- patient reported outcomes
- machine learning
- fluorescence imaging
- brain injury
- multiple sclerosis
- positron emission tomography
- virtual reality
- lymph node metastasis