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token
stringlengths
1
14
position
stringclasses
1 value
config
stringclasses
3 values
match_type
stringclasses
4 values
lstv_label
stringclasses
4 values
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1 class
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bool
2 classes
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int64
0
6
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22
29
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25
32
qc_file
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26
lstv_pelvic
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1 class
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int64
0
3
167
unknown
fused
fused
LUMBARIZATION
true
true
6
0167_unknown_ct.nii.gz
0167_unknown_label.nii.gz
0167_unknown_qc.png
NORMAL
LUMBARIZATION
excluded_lumbarization_not_in_pelvic_protocol
false
0
672
unknown
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6
0672_unknown_spine_ct.nii.gz
0672_unknown_spine_label.nii.gz
0672_unknown_spine_qc.png
NORMAL
LUMBARIZATION
excluded_lumbarization_not_in_pelvic_protocol
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0
175
unknown
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6
0175_unknown_spine_ct.nii.gz
0175_unknown_spine_label.nii.gz
0175_unknown_spine_qc.png
NORMAL
LUMBARIZATION
excluded_lumbarization_not_in_pelvic_protocol
false
0
175
unknown
pelvic_native
separate
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true
false
0
0175_unknown_pelvic_ct.nii.gz
0175_unknown_pelvic_label.nii.gz
0175_unknown_pelvic_qc.png
NORMAL
LUMBARIZATION
excluded_lumbarization_not_in_pelvic_protocol
false
0
149
unknown
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true
true
6
0149_unknown_ct.nii.gz
0149_unknown_label.nii.gz
0149_unknown_qc.png
UNKNOWN
LUMBARIZATION
na
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1
261
unknown
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true
false
0
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0261_unknown_pelvic_label.nii.gz
0261_unknown_pelvic_qc.png
NORMAL
LUMBARIZATION
excluded_lumbarization_not_in_pelvic_protocol
false
0
587
unknown
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true
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6
0587_unknown_spine_ct.nii.gz
0587_unknown_spine_label.nii.gz
0587_unknown_spine_qc.png
NORMAL
LUMBARIZATION
excluded_lumbarization_not_in_pelvic_protocol
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0
267
unknown
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true
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0
0267_unknown_pelvic_ct.nii.gz
0267_unknown_pelvic_label.nii.gz
0267_unknown_pelvic_qc.png
NORMAL
LUMBARIZATION
excluded_lumbarization_not_in_pelvic_protocol
false
0
587
unknown
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LUMBARIZATION
true
false
0
0587_unknown_pelvic_ct.nii.gz
0587_unknown_pelvic_label.nii.gz
0587_unknown_pelvic_qc.png
NORMAL
LUMBARIZATION
excluded_lumbarization_not_in_pelvic_protocol
false
0
215
unknown
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LUMBARIZATION
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6
0215_unknown_spine_ct.nii.gz
0215_unknown_spine_label.nii.gz
0215_unknown_spine_qc.png
NORMAL
LUMBARIZATION
excluded_lumbarization_not_in_pelvic_protocol
false
0
267
unknown
spine_only
separate
LUMBARIZATION
true
true
6
0267_unknown_spine_ct.nii.gz
0267_unknown_spine_label.nii.gz
0267_unknown_spine_qc.png
NORMAL
LUMBARIZATION
excluded_lumbarization_not_in_pelvic_protocol
false
0
215
unknown
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true
false
0
0215_unknown_pelvic_ct.nii.gz
0215_unknown_pelvic_label.nii.gz
0215_unknown_pelvic_qc.png
NORMAL
LUMBARIZATION
excluded_lumbarization_not_in_pelvic_protocol
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0
737
unknown
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spine_only
LUMBARIZATION
true
true
6
0737_unknown_ct.nii.gz
0737_unknown_label.nii.gz
0737_unknown_qc.png
UNKNOWN
LUMBARIZATION
na
false
1
344
unknown
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spine_only
LUMBARIZATION
true
true
6
0344_unknown_ct.nii.gz
0344_unknown_label.nii.gz
0344_unknown_qc.png
UNKNOWN
LUMBARIZATION
na
false
1
32
unknown
fused
fused
SACRALIZATION
true
false
5
0032_unknown_ct.nii.gz
0032_unknown_label.nii.gz
0032_unknown_qc.png
SACRALIZATION
NORMAL
disagree
false
3
125
unknown
fused
fused
SACRALIZATION
true
false
5
0125_unknown_ct.nii.gz
0125_unknown_label.nii.gz
0125_unknown_qc.png
SACRALIZATION
NORMAL
disagree
false
3
4
unknown
spine_only
separate
SACRALIZATION
true
true
6
0004_unknown_spine_ct.nii.gz
0004_unknown_spine_label.nii.gz
0004_unknown_spine_qc.png
SACRALIZATION
LUMBARIZATION
excluded_lumbarization_not_in_pelvic_protocol
false
3
110
unknown
pelvic_native
separate
SACRALIZATION
true
false
0
0110_unknown_pelvic_ct.nii.gz
0110_unknown_pelvic_label.nii.gz
0110_unknown_pelvic_qc.png
NORMAL
SACRALIZATION
disagree
false
0
67
unknown
pelvic_native
separate
SACRALIZATION
true
false
0
0067_unknown_pelvic_ct.nii.gz
0067_unknown_pelvic_label.nii.gz
0067_unknown_pelvic_qc.png
SACRALIZATION
LUMBARIZATION
excluded_lumbarization_not_in_pelvic_protocol
false
3
104
unknown
spine_only
separate
SACRALIZATION
true
false
4
0104_unknown_spine_ct.nii.gz
0104_unknown_spine_label.nii.gz
0104_unknown_spine_qc.png
NORMAL
SACRALIZATION
disagree
false
0
6
unknown
pelvic_native
separate
SACRALIZATION
true
false
0
0006_unknown_pelvic_ct.nii.gz
0006_unknown_pelvic_label.nii.gz
0006_unknown_pelvic_qc.png
SACRALIZATION
NORMAL
disagree
false
3
721
unknown
pelvic_native
separate
SACRALIZATION
true
false
0
0721_unknown_pelvic_ct.nii.gz
0721_unknown_pelvic_label.nii.gz
0721_unknown_pelvic_qc.png
NORMAL
SACRALIZATION
disagree
false
0
555
unknown
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separate
SACRALIZATION
true
false
4
0555_unknown_spine_ct.nii.gz
0555_unknown_spine_label.nii.gz
0555_unknown_spine_qc.png
NORMAL
SACRALIZATION
disagree
false
0
64
unknown
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spine_only
SACRALIZATION
true
false
4
0064_unknown_ct.nii.gz
0064_unknown_label.nii.gz
0064_unknown_qc.png
UNKNOWN
SACRALIZATION
na
false
3
4
unknown
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SACRALIZATION
true
false
0
0004_unknown_pelvic_ct.nii.gz
0004_unknown_pelvic_label.nii.gz
0004_unknown_pelvic_qc.png
SACRALIZATION
LUMBARIZATION
excluded_lumbarization_not_in_pelvic_protocol
false
3
554
unknown
pelvic_native
separate
SACRALIZATION
true
false
0
0554_unknown_pelvic_ct.nii.gz
0554_unknown_pelvic_label.nii.gz
0554_unknown_pelvic_qc.png
NORMAL
SACRALIZATION
disagree
false
0
15
unknown
spine_only
separate
SACRALIZATION
true
false
5
0015_unknown_spine_ct.nii.gz
0015_unknown_spine_label.nii.gz
0015_unknown_spine_qc.png
SACRALIZATION
NORMAL
disagree
false
3
67
unknown
spine_only
separate
SACRALIZATION
true
true
6
0067_unknown_spine_ct.nii.gz
0067_unknown_spine_label.nii.gz
0067_unknown_spine_qc.png
SACRALIZATION
LUMBARIZATION
excluded_lumbarization_not_in_pelvic_protocol
false
3
120
unknown
pelvic_native
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SEMI_SACRALIZATION
true
false
0
0120_unknown_pelvic_ct.nii.gz
0120_unknown_pelvic_label.nii.gz
0120_unknown_pelvic_qc.png
SEMI_SACRALIZATION
NORMAL
disagree
false
0
104
unknown
pelvic_native
separate
SACRALIZATION
true
false
0
0104_unknown_pelvic_ct.nii.gz
0104_unknown_pelvic_label.nii.gz
0104_unknown_pelvic_qc.png
NORMAL
SACRALIZATION
disagree
false
0
537
unknown
spine_only
separate
SACRALIZATION
true
false
4
0537_unknown_spine_ct.nii.gz
0537_unknown_spine_label.nii.gz
0537_unknown_spine_qc.png
NORMAL
SACRALIZATION
disagree
false
0
555
unknown
pelvic_native
separate
SACRALIZATION
true
false
0
0555_unknown_pelvic_ct.nii.gz
0555_unknown_pelvic_label.nii.gz
0555_unknown_pelvic_qc.png
NORMAL
SACRALIZATION
disagree
false
0
554
unknown
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separate
SACRALIZATION
true
false
4
0554_unknown_spine_ct.nii.gz
0554_unknown_spine_label.nii.gz
0554_unknown_spine_qc.png
NORMAL
SACRALIZATION
disagree
false
0
123
unknown
pelvic_native
separate
SACRALIZATION
true
false
0
0123_unknown_pelvic_ct.nii.gz
0123_unknown_pelvic_label.nii.gz
0123_unknown_pelvic_qc.png
SACRALIZATION
NORMAL
disagree
false
3
140
unknown
pelvic_native
pelvic_only
SACRALIZATION
true
false
0
0140_unknown_ct.nii.gz
0140_unknown_label.nii.gz
0140_unknown_qc.png
SACRALIZATION
UNKNOWN
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false
3
22
unknown
pelvic_native
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SEMI_SACRALIZATION
true
false
0
0022_unknown_pelvic_ct.nii.gz
0022_unknown_pelvic_label.nii.gz
0022_unknown_pelvic_qc.png
SEMI_SACRALIZATION
UNKNOWN
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false
0
757
unknown
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NORMAL
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false
5
0757_unknown_ct.nii.gz
0757_unknown_label.nii.gz
0757_unknown_qc.png
NORMAL
NORMAL
agree
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0
451
unknown
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NORMAL
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false
5
0451_unknown_ct.nii.gz
0451_unknown_label.nii.gz
0451_unknown_qc.png
NORMAL
NORMAL
agree
false
0
100
unknown
fused
fused
NORMAL
true
false
5
0100_unknown_ct.nii.gz
0100_unknown_label.nii.gz
0100_unknown_qc.png
NORMAL
NORMAL
agree
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0
252
unknown
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fused
NORMAL
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false
5
0252_unknown_ct.nii.gz
0252_unknown_label.nii.gz
0252_unknown_qc.png
NORMAL
NORMAL
agree
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0
17
unknown
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NORMAL
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5
0017_unknown_ct.nii.gz
0017_unknown_label.nii.gz
0017_unknown_qc.png
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NORMAL
agree
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0
394
unknown
fused
fused
NORMAL
true
false
5
0394_unknown_ct.nii.gz
0394_unknown_label.nii.gz
0394_unknown_qc.png
NORMAL
NORMAL
agree
false
0
630
unknown
fused
fused
NORMAL
true
false
5
0630_unknown_ct.nii.gz
0630_unknown_label.nii.gz
0630_unknown_qc.png
NORMAL
NORMAL
agree
false
0
487
unknown
fused
fused
NORMAL
true
false
5
0487_unknown_ct.nii.gz
0487_unknown_label.nii.gz
0487_unknown_qc.png
NORMAL
NORMAL
agree
false
0
640
unknown
fused
fused
NORMAL
true
false
5
0640_unknown_ct.nii.gz
0640_unknown_label.nii.gz
0640_unknown_qc.png
NORMAL
NORMAL
agree
false
0
758
unknown
fused
fused
NORMAL
true
false
5
0758_unknown_ct.nii.gz
0758_unknown_label.nii.gz
0758_unknown_qc.png
NORMAL
NORMAL
agree
false
0
523
unknown
fused
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NORMAL
true
false
5
0523_unknown_ct.nii.gz
0523_unknown_label.nii.gz
0523_unknown_qc.png
NORMAL
NORMAL
agree
false
0
376
unknown
fused
fused
NORMAL
true
false
5
0376_unknown_ct.nii.gz
0376_unknown_label.nii.gz
0376_unknown_qc.png
NORMAL
NORMAL
agree
false
0
137
unknown
fused
fused
NORMAL
true
false
5
0137_unknown_ct.nii.gz
0137_unknown_label.nii.gz
0137_unknown_qc.png
NORMAL
NORMAL
agree
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0
13
unknown
fused
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NORMAL
true
false
5
0013_unknown_ct.nii.gz
0013_unknown_label.nii.gz
0013_unknown_qc.png
NORMAL
NORMAL
agree
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0
361
unknown
fused
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NORMAL
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false
5
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NORMAL
agree
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0
365
unknown
fused
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NORMAL
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false
5
0365_unknown_ct.nii.gz
0365_unknown_label.nii.gz
0365_unknown_qc.png
NORMAL
NORMAL
agree
false
0
740
unknown
fused
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NORMAL
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false
5
0740_unknown_ct.nii.gz
0740_unknown_label.nii.gz
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NORMAL
NORMAL
agree
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0
568
unknown
fused
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NORMAL
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false
5
0568_unknown_ct.nii.gz
0568_unknown_label.nii.gz
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NORMAL
NORMAL
agree
false
0
579
unknown
fused
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NORMAL
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false
5
0579_unknown_ct.nii.gz
0579_unknown_label.nii.gz
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NORMAL
NORMAL
agree
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0
639
unknown
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NORMAL
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false
5
0639_unknown_ct.nii.gz
0639_unknown_label.nii.gz
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NORMAL
NORMAL
agree
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0
396
unknown
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NORMAL
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false
5
0396_unknown_ct.nii.gz
0396_unknown_label.nii.gz
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NORMAL
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0
323
unknown
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NORMAL
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5
0323_unknown_ct.nii.gz
0323_unknown_label.nii.gz
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NORMAL
NORMAL
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0
36
unknown
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NORMAL
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5
0036_unknown_ct.nii.gz
0036_unknown_label.nii.gz
0036_unknown_qc.png
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381
unknown
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NORMAL
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0381_unknown_ct.nii.gz
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715
unknown
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240
unknown
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NORMAL
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388
unknown
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NORMAL
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5
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171
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207
unknown
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NORMAL
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5
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560
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NORMAL
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212
unknown
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NORMAL
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311
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NORMAL
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0311_unknown_ct.nii.gz
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368
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679
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End of preview. Expand in Data Studio

CTSpinoPelvic1K

A large-scale CT dataset for unified lumbar spine and pelvis segmentation, with dedicated coverage of lumbosacral transitional vertebrae (LSTV).

Derived from CTSpine1K and CTPelvic1K, fused into a single 10-class label scheme and matched to original TCIA DICOM series using world-space affine registration. Every volume pair is guaranteed to be voxel-aligned with identical affines — no resampling needed at training time.


At a Glance

Property Value
Modality CT (computed tomography)
Anatomy Lumbar spine (L1–L6) + sacrum + bilateral hips
Label format NIfTI-1 .nii.gz, integer labels, single file per case
Orientation PIR — Posterior · Inferior · Right (canonical)
Voxel grid Native TCIA DICOM resolution (typically 512×512×N, 0.625–0.977 mm in-plane, 0.8–1.0 mm slice)
Alignment CT and label saved with identical affines — zero-cost overlay
LSTV coverage Sacralization, lumbarization, and semi-LSTV cases explicitly labelled
Splits 70/15/15 train/val/test, LSTV-stratified, seed-fixed
License CC BY-NC 4.0

Label Scheme

Every label volume uses a unified 10-class integer scheme:

Value Structure Notes
0 Background
1 L1
2 L2
3 L3
4 L4
5 L5
6 L6 LSTV only — lumbarized S1 in lumbarization phenotype
7 Sacrum Pelvic sacrum label takes priority over spine sacrum
8 Left hip Ilium/acetabulum
9 Right hip Ilium/acetabulum

LSTV note: In sacralization cases, L5 (class 5) is fused to the sacrum and no L6 exists. In lumbarization cases, the transitional segment is labeled L6 (class 6). In both phenotypes, the sacrum (class 7) is always present. The has_l6 field in the manifest flags lumbarization cases explicitly.


Orientation

All volumes are stored in PIR orientation (Posterior–Inferior–Right):

Axis 0  →  P (Posterior)    — coronal axis
Axis 1  →  I (Inferior)     — axial/slice axis
Axis 2  →  R (Right)        — sagittal axis

This is the canonical orientation produced by nibabel's as_reoriented(). Tensor shape after loading is (P, I, R). When adding a channel dimension for a model: ct[None](1, P, I, R).


Repository Layout

CTSpinoPelvic1K/
├── ct/
│   ├── 0001_supine_ct.nii.gz
│   ├── 0002_supine_ct.nii.gz
│   └── ...
├── labels/
│   ├── 0001_supine_label.nii.gz
│   ├── 0002_supine_label.nii.gz
│   └── ...
├── manifest.json          # per-case metadata (token, config, LSTV label, splits, etc.)
├── manifest.csv           # same as manifest.json, CSV format
├── splits.json            # train/val/test file lists (LSTV-stratified)
└── dataset_interface.py   # self-contained Python interface (no extra dependencies)

QC figures (qc/) are excluded from this repository to minimize download size. They can be regenerated locally using export_hf.py --skip_export --out_dir <path>.


Installation

pip install nibabel numpy huggingface_hub

# Optional: 3–5× faster downloads
pip install hf_transfer

No other dependencies are required to load and iterate the dataset. MONAI or PyTorch are only needed for the training helper functions.


Quick Start

Load from HuggingFace (recommended)

from dataset_interface import CTSpinoPelvic1K

# Download and load in one line
# Files are cached at ~/.cache/huggingface/datasets/CTSpinoPelvic1K
ds = CTSpinoPelvic1K.from_hub()

# Specify a custom local directory
ds = CTSpinoPelvic1K.from_hub(local_dir="/data/ctspinopelvic1k")

# Private or gated repo
ds = CTSpinoPelvic1K.from_hub(token="hf_xxx")
# or: export HF_TOKEN=hf_xxx

Load from a local export directory

from dataset_interface import CTSpinoPelvic1K

ds = CTSpinoPelvic1K("/data/ctspinopelvic1k")
print(ds.stats())

Load a single case

case = ds[0]

# Arrays — ct.shape == lbl.shape guaranteed
ct, lbl = case.load()
print(ct.shape, lbl.shape, ct.dtype, lbl.dtype)
# → (512, 512, 347) (512, 512, 347) float32 int16

# nibabel images (with affine)
ct_img, lbl_img = case.load_nib()
print(ct_img.affine)

Case Metadata

Each Case object exposes the following fields:

case.token            # str  — patient identifier (de-identified)
case.position         # str  — "supine" | "prone" | "unknown"
case.config           # str  — "fused" | "spine_only" | "pelvic_native"
case.match_type       # str  — original placement: "fused" | "separate" |
                      #         "spine_only" | "pelvic_only"
case.lstv_label       # str  — "normal" | "sacralization" | "lumbarization" | "semi"
case.has_l6           # bool — True if L6 label present (lumbarization only)
case.n_lumbar_labels  # int  — number of lumbar classes present (1–6)
case.alignment_ok     # bool — CT/label affine alignment check passed
case.is_lstv          # bool — any LSTV phenotype
case.is_fused         # bool — full 10-class ground truth available
case.ct_path          # Path
case.label_path       # Path
case.qc_path          # Path | None  (None when qc/ not present)
case.exists()         # bool — both files present on disk

Filtering

# By export config
fused         = ds.filter(config="fused")          # full 10-class ground truth
spine_only    = ds.filter(config="spine_only")     # lumbar labels only
pelvic_native = ds.filter(config="pelvic_native")  # sacrum + hip labels only

# By original placement match_type
# "separate" = spine and pelvic placed on DIFFERENT CTs (prone/supine mismatch)
# These export as two entries sharing the same patient token
separate = ds.filter(match_type="separate")

# By LSTV phenotype
lstv          = ds.filter(lstv=True)
normal        = ds.filter(lstv=False)
sacralization = ds.filter(lstv_class="sacralization")
lumbarization = ds.filter(lstv_class="lumbarization")
semi          = ds.filter(lstv_class="semi")

# Combined filters
fused_lstv    = ds.filter(config="fused", lstv=True)
fused_sacral  = ds.filter(config="fused", lstv_class="sacralization")

# Patient position
supine = ds.filter(position="supine")
prone  = ds.filter(position="prone")

# Cases with L6 label (lumbarization)
has_l6 = ds.filter(has_l6=True)

# By patient token — returns all entries for one patient
patient_cases = ds.by_token("42")

# Exclude missing files (default: True)
present = ds.filter(config="fused", present_only=True)

Splits

Splits are 70/15/15 LSTV-stratified with a fixed random seed for reproducibility. Val and test contain fused cases only (full 10-class ground truth). Train contains fused + all partial cases.

train, val, test = ds.splits()

print(f"Train: {len(train)}  Val: {len(val)}  Test: {len(test)}")

# Inspect LSTV balance
from collections import Counter
print(Counter(c.lstv_label for c in test))

Training Integration

Phase 1 — Fused ground truth (full supervision)

from dataset_interface import CTSpinoPelvic1K, make_monai_datalist
from monai.data import CacheDataset, DataLoader
from monai.transforms import (
    Compose, LoadImaged, EnsureChannelFirstd,
    ScaleIntensityRanged, RandCropByPosNegLabeld,
    RandFlipd, RandRotate90d, ToTensord,
)

ds = CTSpinoPelvic1K.from_hub()
train, val, _ = ds.splits()

# MONAI datalist: {"image": str, "label": str, "weight": float, "meta": dict}
train_list = make_monai_datalist(train, pseudo_weight=1.0)

transforms = Compose([
    LoadImaged(keys=["image", "label"]),
    EnsureChannelFirstd(keys=["image", "label"]),
    ScaleIntensityRanged(
        keys=["image"], a_min=-175, a_max=250,
        b_min=0.0, b_max=1.0, clip=True,
    ),
    RandCropByPosNegLabeld(
        keys=["image", "label"],
        label_key="label", spatial_size=(96, 96, 96),
        pos=1, neg=1, num_samples=4,
    ),
    RandFlipd(keys=["image", "label"], prob=0.5, spatial_axis=0),
    RandRotate90d(keys=["image", "label"], prob=0.5, max_k=3),
    ToTensord(keys=["image", "label"]),
])

dataset    = CacheDataset(train_list, transform=transforms, cache_rate=0.1)
dataloader = DataLoader(dataset, batch_size=2, shuffle=True, num_workers=4)

Phase 2 — Curriculum with pseudo-label partials

In Phase 2, partial cases (spine_only, pelvic_native) are included with a reduced loss weight to provide soft supervision for their labelled classes while ignoring unlabelled regions.

from dataset_interface import CTSpinoPelvic1K, make_monai_datalist

ds = CTSpinoPelvic1K.from_hub()
train, val, _ = ds.splits()

# All cases: fused get weight=1.0, partials get weight=0.5
phase2_list = make_monai_datalist(ds.all(), pseudo_weight=0.5)

# Access per-sample weight in your loss function
for sample in dataloader:
    image  = sample["image"]   # (B, 1, P, I, R)
    label  = sample["label"]   # (B, 1, P, I, R)
    weight = sample["weight"]  # (B,) — 1.0 for fused, 0.5 for partials

    loss = criterion(pred, label)
    loss = (loss * weight.view(-1, 1, 1, 1, 1)).mean()
    loss.backward()

PyTorch Dataset (no MONAI)

from dataset_interface import CTSpinoPelvic1K, make_torch_dataset
import torch
from torch.utils.data import DataLoader

ds = CTSpinoPelvic1K.from_hub()
train, val, _ = ds.splits()

torch_ds = make_torch_dataset(train, pseudo_weight=0.5)
loader   = DataLoader(torch_ds, batch_size=2, shuffle=True, num_workers=4)

for batch in loader:
    image  = batch["image"]   # (B, 1, P, I, R) float32
    label  = batch["label"]   # (B, 1, P, I, R) int64
    weight = batch["weight"]  # (B,) float32
    meta   = batch["meta"]    # dict of per-sample metadata

Custom transforms

import torch
from monai.transforms import MapTransform

class MaskUnlabelledClasses(MapTransform):
    """
    Zero-out classes not present in a partial case before computing loss.
    Prevents the model from learning background for unlabelled regions.
    """
    def __call__(self, data):
        config = data["meta"]["config"]
        label  = data["label"]

        if config == "spine_only":
            # Mask out pelvic classes (7, 8, 9) — not labelled in this case
            label[(label == 7) | (label == 8) | (label == 9)] = 0
        elif config == "pelvic_native":
            # Mask out lumbar classes (1–6) — not labelled in this case
            label[(label >= 1) & (label <= 6)] = 0

        data["label"] = label
        return data

Evaluation

Evaluate a directory of predictions

from dataset_interface import (
    CTSpinoPelvic1K,
    evaluate_predictions,
    print_results_table,
)

ds = CTSpinoPelvic1K.from_hub()

# Evaluate on fused test set (ground truth)
_, _, test = ds.splits()
results = evaluate_predictions(ds, pred_dir="data/predictions", subset=test)
print_results_table(results)

Score a single case

from dataset_interface import score_case, junction_dice, CLASS_NAMES

dsc = score_case(
    pred_path="data/predictions/0001_supine_label.nii.gz",
    gt_path="data/ctspinopelvic1k/labels/0001_supine_label.nii.gz",
)

for cls_id, dice in sorted(dsc.items()):
    print(f"  {CLASS_NAMES[cls_id]:12s}  Dice={dice:.3f}")

# L5/S1 junction Dice (±40mm window)
jxn = junction_dice(
    pred_path="data/predictions/0001_supine_label.nii.gz",
    gt_path="data/ctspinopelvic1k/labels/0001_supine_label.nii.gz",
    window_mm=40.0,
)
print(f"Junction DSC: {jxn}")

Dataset Statistics

Property Value
Total CT volumes 1,194
Fused (full 10-class) 338
Spine-only 450
Pelvic-native 376
Unique patients 804
LSTV cases 53 (6.6%)
Sacralization 28
Lumbarization 22
Semi-sacralization 3
Alignment failures 0
Train / Val / Test 236 fused + partials / 51 / 51

Data Construction

CTSpinoPelvic1K was constructed from three public TCIA datasets:

Source Cohort Cases Content
CTSpine1K COLONOG 784 Lumbar vertebrae (VerSe IDs 20–26)
CTPelvic1K COLONOG 714 Sacrum + bilateral hips (4-class)
TCIA COLONOG 825 Reference CT DICOM series

Matching pipeline:

  1. Each mask is matched to the TCIA DICOM series maximising bone coverage (HU > 200) under the placed label, via world-space affine resampling across all intrapatient candidate series.
  2. Fused cases (spine + pelvic on same CT) produce a single 10-class label. Separate cases (different CTs, typically prone vs. supine) export as two independent entries.
  3. All label maps are remapped to 10-class, reoriented to PIR, and stripped of PHI.

Label merge priority: Pelvic sacrum/hips written first; lumbar L1–L6 overwrite; spine sacrum fills remaining background only.


Separate Cases (Prone/Supine Mismatch)

match_type="separate" cases are patients whose spine and pelvic masks were registered to different CT acquisitions of the same patient. These export as two entries sharing the same token:

tok = list({c.token for c in ds.filter(match_type="separate")})[0]
for case in ds.by_token(tok):
    print(f"  {case.config:20s}  pos={case.position}  n_labels={case.n_lumbar_labels}")
# →   spine_only           pos=prone    n_labels=5
# →   pelvic_native        pos=supine   n_labels=0

Manifest Fields

manifest.json is a list of records, one per exported CT volume:

{
  "token":           "42",
  "position":        "supine",
  "config":          "fused",
  "match_type":      "fused",
  "lstv_label":      "sacralization",
  "has_l6":          false,
  "n_lumbar_labels": 5,
  "alignment_ok":    true,
  "ct_file":         "0042_supine_ct.nii.gz",
  "label_file":      "0042_supine_label.nii.gz",
  "qc_file":         "0042_supine_qc.png"
}

Licence and Attribution

This dataset is released under CC BY-NC 4.0 (non-commercial research use).

Derived from:

  • CTSpine1K — Liu et al., 2021 (ar5iv), CC BY 3.0
  • CTPelvic1K — Liu et al., 2021 (ar5iv), CC BY 3.0
  • TCIA COLONOG — Clark et al., 2013 (DOI), CC BY 3.0

If you use CTSpinoPelvic1K in your research, please cite:

@dataset{ctspinopelvic1k_2026,
  title     = {{CTSpinoPelvic1K}: A CT-Native Benchmark for Lumbosacral
               Transitional Vertebra Segmentation via Patient-Anchored,
               Registration-Free Multi-Dataset Label Fusion},
  author    = {Anonymous},
  year      = {2026},
  publisher = {HuggingFace},
  url       = {https://huggingface.co/datasets/anonymous-mlhc/CTSpinoPelvic1K}
}

@article{liu2021ctspine1k,
  title  = {{CTSpine1K}: A Large-Scale Dataset for Spinal Vertebrae
            Segmentation in Diverse {CT} Scenarios},
  author = {Liu, Yang and others},
  year   = {2021},
  note   = {ar5iv: https://ar5iv.labs.arxiv.org/html/2105.14711}
}

@article{liu2021ctpelvic1k,
  title  = {{CTPelvic1K}: A Large-Scale Benchmark for Pelvic Bone
            Segmentation in {CT} Images},
  author = {Liu, Yang and others},
  year   = {2021},
  note   = {ar5iv: https://ar5iv.labs.arxiv.org/html/2012.08721}
}

Known Issues

  • Token 85 — degenerate dcm2niix output (2-slice localizer series), excluded.
  • 89 cases carry lstv_label="unknown" from the CTPelvic1K source annotation (annotator could not determine LSTV status). Treated as normal for training; excluded from LSTV subgroup evaluation.
  • LSTV classification is derived from CTPelvic1K filename metadata and has not been independently verified by a radiologist for all cases. Use lstv_label as a weakly supervised signal, not a ground truth clinical diagnosis.

Contact

Dataset curation: anonymous submission. For issues, open a discussion on the HuggingFace repository page.

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