Datasets:
patient_id string | ct_series_uid string | rt_series_uid string | num_ct_slices int32 | slice_index int32 | n_observers int32 | consensus_voxels int64 | mean_pairwise_dice float32 | obs1_voxels int64 | obs2_voxels int64 | obs3_voxels int64 | obs4_voxels int64 | obs5_voxels int64 | image image | mask image | overlay image | agreement image |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
interobs05 | 1.3.6.1.4.1.9590.100.1.2.170217758912108379426621313680109428629 | 1.2.246.352.71.2.494841863751.4253616.20190218155318 | 178 | 95 | 5 | 18,717 | 0.8724 | 17,628 | 15,277 | 15,240 | 17,410 | 22,766 | ||||
interobs06 | 1.3.6.1.4.1.9590.100.1.2.19542105113113424032729279010352601133 | 1.2.246.352.71.2.494841863751.4253617.20190218155826 | 178 | 93 | 5 | 2,977 | 0.7844 | 2,703 | 1,822 | 1,941 | 2,981 | 3,975 | ||||
interobs08 | 1.3.6.1.4.1.9590.100.1.2.256207950013763638838026128851666959014 | 1.2.246.352.71.2.494841863751.4253618.20190218160154 | 178 | 96 | 5 | 79,760 | 0.9138 | 76,647 | 69,587 | 67,191 | 82,006 | 77,000 | ||||
interobs10 | 1.3.6.1.4.1.9590.100.1.2.99703178712084378434031648251378087426 | 1.2.246.352.71.2.494841863751.4253619.20190218160735 | 178 | 103 | 5 | 1,131 | 0.7691 | 1,012 | 748 | 773 | 1,187 | 1,139 | ||||
interobs11 | 1.3.6.1.4.1.9590.100.1.2.103517357412192184039370205801611698844 | 1.2.246.352.71.2.494841863751.4253620.20190218161046 | 178 | 92 | 5 | 3,909 | 0.7819 | 3,604 | 2,399 | 2,335 | 3,694 | 4,723 | ||||
interobs12 | 1.3.6.1.4.1.9590.100.1.2.126072644212862244236902542423439119902 | 1.2.246.352.71.2.494841863751.4253621.20190218161318 | 178 | 108 | 5 | 48,793 | 0.8421 | 44,890 | 40,903 | 32,795 | 47,642 | 59,874 | ||||
interobs13 | 1.3.6.1.4.1.9590.100.1.2.207527316713132545922329476332843617807 | 1.2.246.352.71.2.494841863751.4253622.20190218161509 | 178 | 106 | 5 | 13,014 | 0.8805 | 12,636 | 10,234 | 10,750 | 13,060 | 12,710 | ||||
interobs14 | 1.3.6.1.4.1.9590.100.1.2.104944544212885163035410420623434076037 | 1.2.246.352.71.2.494841863751.4253623.20190218161655 | 178 | 93 | 5 | 7,563 | 0.7055 | 5,724 | 4,035 | 3,824 | 7,937 | 9,685 | ||||
interobs15 | 1.3.6.1.4.1.9590.100.1.2.69389017211361571732356663660290477399 | 1.2.246.352.71.2.494841863751.4253624.20190218161842 | 178 | 101 | 5 | 8,005 | 0.8768 | 7,761 | 6,697 | 6,430 | 7,201 | 8,501 | ||||
interobs18 | 1.3.6.1.4.1.9590.100.1.2.334166138111645307239309672271490624973 | 1.2.246.352.71.2.494841863751.4253625.20190218162021 | 178 | 112 | 5 | 55,403 | 0.8376 | 56,640 | 42,852 | 38,290 | 58,246 | 47,016 | ||||
interobs19 | 1.3.6.1.4.1.9590.100.1.2.399551495810403316122253244710311837878 | 1.2.246.352.71.2.494841863751.4253656.20190218162218 | 178 | 94 | 5 | 38,767 | 0.8988 | 35,669 | 32,905 | 31,450 | 40,128 | 40,138 | ||||
interobs20 | 1.3.6.1.4.1.9590.100.1.2.225349584810746484442230063763125504055 | 1.2.246.352.71.2.494841863751.4253657.20190218163259 | 154 | 97 | 5 | 14,080 | 0.7587 | 13,533 | 9,085 | 8,007 | 14,236 | 14,811 | ||||
interobs21 | 1.3.6.1.4.1.9590.100.1.2.312859839510594333037831384621238337400 | 1.2.246.352.71.2.494841863751.4253671.20190218174401 | 178 | 117 | 5 | 45,820 | 0.9091 | 42,559 | 43,284 | 44,525 | 42,269 | 42,209 | ||||
interobs22 | 1.3.6.1.4.1.9590.100.1.2.246252902512547747113736956591790566660 | 1.2.246.352.71.2.494841863751.4253672.20190218174805 | 154 | 97 | 5 | 15,723 | 0.8772 | 15,219 | 12,452 | 12,645 | 17,218 | 14,632 | ||||
interobs27 | 1.3.6.1.4.1.9590.100.1.2.217239506211479020130282290141250209791 | 1.2.246.352.71.2.494841863751.4253673.20190218175102 | 178 | 93 | 5 | 2,405 | 0.824 | 2,141 | 1,556 | 2,058 | 2,170 | 2,825 | ||||
interobs28 | 1.3.6.1.4.1.9590.100.1.2.64814606312798695601484663522565551631 | 1.2.246.352.71.2.494841863751.4253674.20190218175523 | 178 | 110 | 5 | 4,136 | 0.7836 | 3,297 | 2,834 | 2,829 | 4,903 | 4,130 | ||||
interobs29 | 1.3.6.1.4.1.9590.100.1.2.186711903211065327036747959520490174143 | 1.2.246.352.71.2.494841863751.4253675.20190218180014 | 154 | 92 | 5 | 8,871 | 0.8348 | 8,100 | 5,420 | 7,617 | 9,100 | 8,626 | ||||
interobs31 | 1.3.6.1.4.1.9590.100.1.2.105951370712458734402536137543291787737 | 1.2.246.352.71.2.494841863751.4253676.20190218180226 | 178 | 109 | 5 | 8,953 | 0.8291 | 8,206 | 6,956 | 7,083 | 8,226 | 8,969 | ||||
interobs32 | 1.3.6.1.4.1.9590.100.1.2.386467496010272708136369658170137437765 | 1.2.246.352.71.2.494841863751.4253677.20190218180523 | 178 | 117 | 5 | 22,307 | 0.9139 | 21,668 | 18,160 | 20,355 | 22,436 | 21,852 | ||||
interobs33 | 1.3.6.1.4.1.9590.100.1.2.341224071112807093529546215772592223737 | 1.2.246.352.71.2.494841863751.4253678.20190218180737 | 178 | 117 | 5 | 1,240 | 0.7053 | 1,148 | 429 | 967 | 1,202 | 1,316 | ||||
interobs34 | 1.3.6.1.4.1.9590.100.1.2.311975965511998913225397513362068633129 | 1.2.246.352.71.2.494841863751.4253679.20190218180929 | 178 | 115 | 5 | 4,641 | 0.672 | 4,277 | 2,769 | 2,238 | 3,189 | 6,843 |
NSCLC-Radiomics-Interobserver1
Multiple-delineation inter-observer / inter-method variability study of
gross-tumour-volume (GTV) contouring on pre-treatment thoracic CT of
non-small-cell lung cancer (NSCLC). For each tumour, five radiation
oncologists independently delineated the GTV twice — once manually
(vis) and once auto-segmentation-assisted then edited (auto) — giving up
to 10 GTV delineations per patient. The collection exists specifically to
quantify contouring variability, so there is no single gold-standard mask by
design; all delineations are retained.
⚠️ This is NOT the main NSCLC-Radiomics ("Lung1", n=422) collection. It is the separate Interobserver1 sub-collection (22 patients) from the same Maastricht/Dana-Farber radiomics programme. It is also distinct from the RIDER-LungCT-Seg test/retest arm. See "Relationship to other collections".
Dataset Details
| Field | Value |
|---|---|
| Modality | CT (pre-treatment, radiotherapy-planning thorax; mostly contrast-enhanced) |
| Body part | Thorax / lung |
| Task | 3D tumour (GTV) segmentation; inter-observer variability study |
| Patients | 22 (21 with delineations; interobs09 is CT-only) |
| Series | 64 total — 22 CT, 21 RTSTRUCT, 21 DICOM SEG |
| CT slices | 3,844 |
| Observers | 5 radiation oncologists (obs 1 & 3 = trainees; 2, 4, 5 = experienced) |
| Methods | 2 per observer: vis (manual) and auto (auto-assisted + manual edit) |
| Format | DICOM (CT + RTSTRUCT). DICOM SEG omitted from this mirror — see below |
| License | CC BY-NC 3.0 Unported (Data Citation Required) |
| Source | The Cancer Imaging Archive (TCIA), official author upload |
This HuggingFace mirror is a LEAN raw-DICOM copy: it contains the CT images
(images/) and the RTSTRUCT contour objects (segmentations/). The
collection's DICOM SEG objects — a rasterised duplicate of the same RTSTRUCT
contours — are not included here; RTSTRUCT carries every delineation
losslessly. A v3 (2020-08-31) revision of the original collection fixed an
inadvertent label mismatch between the DICOM SEG and RTSTRUCT objects; this
mirror was downloaded after that fix (REST API serves the current version).
Annotation structure (RTSTRUCT ROI names)
Each patient's RTSTRUCT encodes the delineations in its ROI names:
| ROI name pattern | Meaning |
|---|---|
GTV-1vis-{1..5} |
Primary/index tumour, manual delineation by observer 1–5 — present for all 21 annotated patients |
GTV-1auto-{1..5} |
Primary tumour, auto-assisted delineation by observer 1–5 (20/21; interobs19 has none) |
| `GTV-2{vis | auto}-{1..5}` |
suv2,5 / suv_2.5 |
Auxiliary PET SUV-2.5 threshold auto-contour (not an observer delineation) |
treshold0,34 / treshhold0,34 / tresh_34% |
Auxiliary PET 34%-SUVmax threshold auto-contour |
treshold-pr / treshold-ln |
Auxiliary PET threshold contour (primary / lymph node) |
The auxiliary PET-threshold ROIs are part of the original radiotherapy-planning structure sets but are not the manual observer delineations and should be excluded from inter-observer analyses.
Recommended ground truth
Because the study is about variability, all observer delineations are kept.
For benchmarking that needs a single reference mask, the recommended default is
the STAPLE consensus of the five manual delineations of the index tumour
(GTV-1vis-1 … GTV-1vis-5) — a principled probabilistic consensus across all
five experts, using the pure-manual (not auto-assisted) contours, available for
every annotated patient. Individual per-observer (vis/auto) contours remain
available in the RTSTRUCT for variability studies; second-tumour (GTV-2*) and
PET-threshold ROIs are present but excluded from the default reference.
Relationship to other collections
- NSCLC-Radiomics ("Lung1", n=422) — different cohort. Interobserver1
PatientIDs use the
interobsNNnamespace (e.g.interobs01), disjoint from Lung1'sLUNG1-xxx, and use a different CT protocol (contrast-enhanced RT-planning vs. Lung1 non-contrast). No ID-level collision. Still, dedup byPatientID/SeriesInstanceUIDbefore any joint benchmark. - RIDER-LungCT-Seg — the test/retest arm of the same parent radiomics programme; potential shared provenance if both are used together.
series_to_patient.jsonpreservesPatientID,SeriesInstanceUID,StudyInstanceUID,Modality, and per-series metadata for cross-referencing.
Structure
images/<PatientID>/<SeriesInstanceUID>/*.dcm # 22 CT series
segmentations/<PatientID>/<SeriesInstanceUID>/*.dcm # 21 RTSTRUCT (Modality=RTSTRUCT)
series_to_patient.json # per-series metadata + cross-ref IDs
PatientID ranges over interobs01 … interobs33 (non-contiguous). Each
RTSTRUCT references its source CT series via
ReferencedFrameOfReferenceSequence → RTReferencedStudySequence → RTReferencedSeriesSequence → SeriesInstanceUID.
Splits
The collection does not prescribe train/val/test splits.
Source
- TCIA collection: https://www.cancerimagingarchive.net/collection/nsclc-radiomics-interobserver1/
- DOI:
10.7937/tcia.2019.cwvlpd26 - Fully public — no registration required.
Citation
@misc{wee2019nsclcinterobserver1,
author = {Wee, Leonard and Aerts, Hugo J. W. L. and Kalendralis, Petros and Dekker, Andre},
title = {Data From NSCLC-Radiomics-Interobserver1 [Data set]},
year = {2019},
publisher = {The Cancer Imaging Archive},
doi = {10.7937/tcia.2019.cwvlpd26}
}
@article{kalendralis2020fair,
author = {Kalendralis, Petros and Shi, Zhenwei and Traverso, Alberto and others},
title = {FAIR-compliant clinical, radiomics and DICOM metadata of RIDER,
interobserver, Lung1 and head-Neck1 TCIA collections},
journal = {Medical Physics},
volume = {47},
number = {11},
pages = {5931--5940},
year = {2020},
doi = {10.1002/mp.14322}
}
@article{aerts2014decoding,
author = {Aerts, Hugo J. W. L. and Velazquez, Emmanuel Rios and Leijenaar, Ralph T. H. and others},
title = {Decoding tumour phenotype by noninvasive imaging using a
quantitative radiomics approach},
journal = {Nature Communications},
volume = {5},
pages = {4006},
year = {2014},
doi = {10.1038/ncomms5006}
}
@article{clark2013tcia,
author = {Clark, Kenneth and Vendt, Bruce and Smith, Kirk and others},
title = {The Cancer Imaging Archive (TCIA): Maintaining and Operating a
Public Information Repository},
journal = {Journal of Digital Imaging},
volume = {26},
number = {6},
pages = {1045--1057},
year = {2013},
doi = {10.1007/s10278-013-9622-7}
}
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