Data underlying the MSc thesis: Deep learning segmentation of 3D ultrasound thyroid imaging
doi: 10.4121/265d24f7-a02f-43bd-9807-aa731dad6431
3D ultrasound data acquired with a matrix probe and philips system in february 2023.
Dataset_PHILIPS_save3D_and_saveMPR:
Left and right thyroid lobe scan of 57 healthy volunteers.
Data is ordered by participant numbers, containing 10 files per patient:
3 MPR files (axial, coronal and saggital orientation) per lobe (higher resolution)
1 Save3D DICOM (philips) file per lobe (more slices)
This data was not altered after collection from the US system.
Contains the first 27 subjects of the folder Dataset_PHILIPS_save3D_and_saveMPR_35GB. Philips DICOM tags were changed to regular DICOM tags and samples were rotated. Contains one annotation file per subject containing thyroid, jugular vein and cartid artery.
More information can be found in my thesis: deep learning segmentation of 3D ultrasound thyroid imaging
- 2023-10-03 first online, published, posted
DATA
- 951 bytesMD5:
dc98d72ff11a8542dec19755a1d5b104
README.txt - 6,172,119,314 bytesMD5:
d4f6342ae0cc249206b46dff9466e80d
Annotated 27 subjects.zip - 4,502,055,448 bytesMD5:
fe1d643b9a12a64caee2db4d8e5578f0
Dataset_PHILIPS_save3D_and_saveMPR.zip -
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