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  • Serial Non-contrast Non-gated T2w MRI Datasets of Patient-derived Xenograft Cancer Models for Development of Tissue Characterization Algorithms (PDMR-Texture-Analysis)

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This collection contains serial non-contrast non-gated T2w MRI of 18 patient derived xenograft cancer models (514 images) for researchers to develop algorithms using neural networks, and classification techniques to improve tissue characterization (morphological changes) for the improvement in patient care through advances in precision medicine.

Characterization of tissue using non-invasive in vivo imaging techniques is used for detection and measurement of disease burden in oncology. Researchers have developed numerous algorithms, such as neural networks, and classification techniques to improve the characterization (morphological changes) of tissue. Unfortunately, to obtain statistical significance, large datasets are a requirement in this research endeavor due to tumor heterogeneity within the same histologic classification. Pre-clinical patient derived xenograft animal models can be a significant resource by providing collections with a more homogenous tumor genome across the collection with companion genomic and pathologic characterization available (https://pdmr.cancer.gov/), allowing determination of the variability of imaging characteristics.

This dataset of a patient derived xenograft models (below table) can be used for training algorithms for evaluating variations in tissue texture with respect to tumor growth and cancer model.

PDX Model Characterizations and Biweekly imaging sessions 


Biweekly imaging session Characterization 



Characterization

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5

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7

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Model  ID

CTEP SDC Description

Implant Date

Passage

Gender

# Mice imaged per biweekly imaging session

144126-210-T

Neuroendocrine cancer, NOS

2/14/2020

4

M

8

8

5

5

5

5



146476-266-R

Urothelial/bladder cancer, NOS

2/3/2020

4

M

17

16

13

10

11

4

4


165739-295-R

Adenocarcinoma-pancreas

5/4/2018

2

M

10

10

1






172845-121-T

Adenocarcinoma-colon

10/16/2020

4

F

20

20







172845-142-T

Adenocarcinoma-colon

8/24/2018

3

F

15

13

8

3





287954-098-R

Ewing sarcoma/Peripheral PNET

3/18/2021

6

M

10

8

1

1

1




466636-057-R

Adenocarcinoma-pancreas

12/15/2017

N/A

M

5

4

2

1





521955-158-R4

Adenocarcinoma-pancreas

9/30/2021

4

F

10

10

10

8

5

1

1


521955-158-R6

Adenocarcinoma-pancreas

3/27/2018

N/A

F

7

7

4






625472-104-R  

Adenocarcinoma-colon

8/27/2019

2

F

9

1







695669-166-R

Melanoma

4/16/2021

3

M

7

8

8

6

4

4

2

2

698357-238-R

Osteosarcoma

3/5/2021

6

F

7

4







765638-272-R

Squamous cell lung carcinoma

3/26/2021

4

F

7

8

5

3

1




779769-127-R

Adenocarcinoma-rectum

2/19/2020

5

F

5

5

5

5

3

4



833975-119-R

Adenocarcinoma-pancreas

10/23/2019

2

F

12

12

11

7





894883-131-R

Squamous cell carcinoma-anus

2/25/2022

5

F

6

6

6

1

1




997537-175-T

Adenocarcinoma-colon

10/25/2018

3

M

9

2







BL0382-F1232

Urothelial/bladder cancer, NOS

5/20/2020

4

F

9

6

4

1

1





In this study we performed non-contrast non-gated T2w MRI (SOP50101), initiated 2 weeks post implantation, and continued biweekly imaging sessions until their tumors reached a size requiring humane termination (ACUC guidance > 2 cm in any linear dimension by caliper or MRI measurement) or their clinical status required euthanasia. Fragments (2x2x2 mm3) from the NCI/DCTD PDMR repository are implanted into 5-10 donor mice (NOD.Cg-PrkdcscidIl2rgtm1Wjl/SzJ (NSG)). When tumors reach enrollment criteria (100 – 300 mm3), tumors are excised, cut into 2x2x2 mm3 fragments and implanted with Matrigel (per PDMR SOP50101) into NSG study mice. The multi-mouse non-gated DICOM dataset was split according to Tomography. 2021 Feb 5;7(1):1-9. doi: 10.3390/tomography7010001. eCollection 2021 Mar. PMID: 33681459 and retained their individual mouse DICOM header information.

The genomic and pathologic characteristics of these models, which is available from the National Cancer Institute Patient-Derived Models Repository (https://pdmr.cancer.gov/), can be used in conjunction with this publicly available dataset to guide the development of algorithms for enhanced characterization of tissue for precision medicine.

This collection contains serial non-contrast T2w MRI of 18 patient derived xenograft cancer models (518 images) for researchers to developed various algorithms using neural networks, and classification techniques to improve tissue characterization (morphological changes). The genomic and pathologic characteristics of these models, which is available from the National Cancer Institute Patient-Derived Models Repository (https://pdmr.cancer.gov/), can be used in conjunction with this publicly available dataset to guide their development of algorithms for enhanced characterization of tissue for precision medicine.

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titleData Access

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Images (DICOM, 11.8 GB)



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Additional Resources for this Dataset

The National Cancer Institute (NCI) has developed a national repository of Patient-Derived Models (PDMs) comprised of patient-derived xenografts (PDXs), in vitro patient-derived tumor cell cultures (PDCs) and cancer associated fibroblasts (CAFs) as well as patient-derived organoids (PDOrg). These models serve as a resource for public-private partnerships and for academic drug discovery efforts. These PDMs are clinically-annotated with molecular information and made available in the Patient-Derived Model Repository. Data related to the specific subjects in this Collection can be found at:

  • SOP50101_Tumor_Implantation_PDX
  • SOP50101_MRI T2 Weighted Non-Contrast Protocol_Single Mouse Pulmonary Gated and Multi-Mouse Non-Gated
  • PDX Model Characterizations used to review images, imaging sessions/dates and models
  • Links for each model in the NCI Patient-Derived Models Repository (PDMR)


The NCI Cancer Research Data Commons (CRDC) provides access to additional data and a cloud-based data science infrastructure that connects data sets with analytics tools to allow users to share, integrate, analyze, and visualize cancer research data.


Localtab
titleDetailed Description

Detailed Description

Image Statistics

Radiology Image Statistics

Modalities

MR, SR

Number of Patients

175

Number of Studies

689

Number of Series

1203

Number of Images

19343

Images Size (GB)11.8

In addition to images, this collection includes Raw Data Storage SOP Class instances with MR Modality, generated by a Philips MR scanner; this data is not useful to anyone without the proprietary software to interpret it.


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titleCitations & Data Usage Policy

Citations & Data Usage Policy

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titleData Citation

DOI goes here. Create using Datacite with information from Collection Approval form


Info
titleTCIA Citation

Clark, K., Vendt, B., Smith, K., Freymann, J., Kirby, J., Koppel, P., Moore, S., Phillips, S., Maffitt, D., Pringle, M., Tarbox, L., & Prior, F. (2013). The Cancer Imaging Archive (TCIA): Maintaining and Operating a Public Information Repository. In Journal of Digital Imaging (Vol. 26, Issue 6, pp. 1045–1057). Springer Science and Business Media LLC.https://doi.org/10.1007/s10278-013-9622-7

Other Publications Using This Data

TCIA maintains a list of publications which leverage TCIA data. If you have a manuscript you'd like to add please contact the TCIA Helpdesk.

  • Kalen, J. D., Clunie, D. A., Liu, Y., Tatum, J. L., Jacobs, P. M., Kirby, J., Freymann, J. B., Wagner, U., Smith, K. E., Suloway, C., & Doroshow, J. H. (2021). Design and Implementation of the Pre-Clinical DICOM Standard in Multi-Cohort Murine Studies. Tomography (Ann Arbor, Mich.), 7(1), 1–9. https://doi.org/10.3390/tomography7010001


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titleVersions

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Data TypeDownload all or Query/FilterLicense

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