CancerImagingArchive (@tcia_news) 's Twitter Profile
CancerImagingArchive

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ID: 435936164

linkhttp://cancerimagingarchive.net calendar_today13-12-2011 16:13:42

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panorama.grand-challenge.org is using our “Healthy Pancreas CT” collection (doi.org/10.7937/K9/TCI…) to compare state-of-the-art AI algorithms against abdominal radiologists to evaluate the clinical viability of modern pancreas-AI solutions at PDAC detection and diagnosis in CECT.

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Here's another cool MICCAI Society competition using several TCIA datasets! "Learn2Reg 2024" seeks to develop a standardised benchmark for the best conventional and learning-based medical imaging registration methods: learn2reg.grand-challenge.org.

Here's another cool <a href="/MICCAI_Society/">MICCAI Society</a> competition using several TCIA datasets! "Learn2Reg 2024" seeks to develop a standardised benchmark for the best conventional and learning-based medical imaging registration methods: learn2reg.grand-challenge.org.
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Interested in lung cancer screening? The Imaging Data Commons team applied TotalSegmentator to 126,088 CT series from TCIA's National Lung Screening Trial dataset to segment a total of 9,565,554 anatomic structures which were then processed by pyradiomics! discourse.canceridc.dev/t/new-in-idc-v…

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The #SIIMHackathon Dataset uses TCIA's DICOM images to create fictitious, but believable, narratives that illustrate common concepts in radiology to provide a cohesive, rich dataset that will allow people to build interesting applications: github.com/ImagingInforma….

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Heading to #SIIM24? Register for our Hands-On Data Curation Learning Lab on Thursday morning! annualmeeting.siim.org/sessions/hands…

Heading to #SIIM24? Register for our Hands-On Data Curation Learning Lab on Thursday morning! annualmeeting.siim.org/sessions/hands…
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The recently published "Histological Hyperspectral Glioblastoma Dataset (HistologyHSI-GB)" dataset contains 13 H&E slides (20x magnification) from glioblastoma subjects which were annotated and used to create 469 hyperspectral images: doi.org/10.7937/Z1K6-V…

The recently published "Histological Hyperspectral Glioblastoma Dataset (HistologyHSI-GB)" dataset contains 13 H&amp;E slides (20x magnification) from glioblastoma subjects which were annotated and used to create 469 hyperspectral images: doi.org/10.7937/Z1K6-V…
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Glioblastoma is the most common and deadliest type of brain cancer. Researchers seeking to improve outcomes for these patients can leverage 14 unique datasets on TCIA including radiology & pathology imaging, analyses, & clinical data for ~2,000 subjects: cancerimagingarchive.net/browse-collect….

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New CPTAC-GBM data are helping illuminate key signaling pathways and tumor evolution in high-grade glioma: proteomics.cancer.gov/news_and_annou…. Access the data used in their study at doi.org/10.7937/K9/TCI… and doi.org/10.7937/ce1t-e….

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The "MR imaging of pediatric subjects with high-grade gliomas (DFCI-BCH-BWH-PEDs-HGG)" has been published on TCIA at doi.org/10.7937/v8h6-b…. This data was part of the ASNR-MICCAI BraTS Pediatrics Tumor Challenge which you can learn more about at synapse.org/Synapse:syn537…

The "MR imaging of pediatric subjects with high-grade gliomas (DFCI-BCH-BWH-PEDs-HGG)" has been published on TCIA at doi.org/10.7937/v8h6-b…. This data was part of the ASNR-MICCAI BraTS Pediatrics Tumor Challenge which you can learn more about at synapse.org/Synapse:syn537…
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We are gathering input on challenges and opportunities related to #ArtificialIntelligence enabled #PrecisionMedicine that integrates #MedicalImaging with other data types. #PrimeAI wants to hear from you! Submit your innovative ideas in by 9/23 go.nih.gov/0c7NxW4

We are gathering input on challenges and opportunities related to #ArtificialIntelligence enabled #PrecisionMedicine that integrates #MedicalImaging with other data types. #PrimeAI wants to hear from you! Submit your innovative ideas in by 9/23 go.nih.gov/0c7NxW4
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We've created a Jupyter Notebook in Python to make it easy to link clinical data in the Genomic Data Commons to images from TCIA! Examples use data from The Cancer Genome Atlas, which provides an opportunity to study links between genotypes & phenotypes. github.com/kirbyju/TCIA_N…

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The NCI Office of Data Sharing (ODS) is hosting their 2nd Annual Data Sharing Symposium on Oct. 15-16 on NIH’s Bethesda campus or online! We'll be there providing in-person demos of TCIA on the 16th. Agenda and registration are at events.cancer.gov/ods/annualdata…. Hope to see you there!

The NCI Office of Data Sharing (ODS) is hosting their 2nd Annual Data Sharing Symposium on Oct. 15-16 on NIH’s Bethesda campus or online! We'll be there providing in-person demos of TCIA on the 16th. Agenda and registration are at events.cancer.gov/ods/annualdata….  Hope to see you there!
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Check out this recently published manuscript on TCIA datasets which combined radiomics, clinical and mutation data from CPTAC Pancreatic cancer subjects to study their prognoses! p.s. Thank you Gian Maria Zaccaria for following our citation guidelines perfectly!

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The original REST API for TCIA DICOM data used Bindaas, which was deprecated in June 2022. We will fully retire this API on November 1, 2024. A migration guide is located at wiki.cancerimagingarchive.net/download/attac… and the newer NBIA API documentation is at wiki.cancerimagingarchive.net/x/NIIiAQ.

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Exciting new work from Google leveraging our NLST and LIDC-IDRI datasets to help simplify image analysis of axial CT data! research.google/blog/taking-me…

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"Mediastinal-Lymph-Node-SEG" is now available at doi.org/10.7937/QVAZ-J…! It contains chest CT scans from 513 patients with lymphadenopathy due to illness, such as cancer or infections. Segmentations are also included to help develop new tools from weakly annotated cases.

"Mediastinal-Lymph-Node-SEG" is now available at doi.org/10.7937/QVAZ-J…! It contains chest CT scans from 513 patients with lymphadenopathy due to illness, such as cancer or infections. Segmentations are also included to help develop new tools from weakly annotated cases.
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The 🧠BraTS-Africa🌍 dataset is now available at doi.org/10.7937/v8h6-8…. It contains MR images (T1, T1 CE, T2, and T2 FLAIR) and tumor segmentations from 146 patients, which provides insight into unique aspects of African brain cancer cohorts and imaging resource constraints.

The 🧠BraTS-Africa🌍 dataset is now available at doi.org/10.7937/v8h6-8…. It contains MR images (T1, T1 CE, T2, and T2 FLAIR) and tumor segmentations from 146 patients, which provides insight into unique aspects of African brain cancer cohorts and imaging resource constraints.
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🚨 New dataset 🚨 "Spine-Mets-CT-SEG" (doi.org/10.7937/kh36-d…) contains pre and post radiotherapy CT images with vertebrae segmentation, lesion classification, and demographic data from 55 patients diagnosed with various primary cancers and metastatic spine disease.

🚨 New dataset 🚨 "Spine-Mets-CT-SEG" (doi.org/10.7937/kh36-d…) contains pre and post radiotherapy CT images with vertebrae segmentation, lesion classification, and demographic data from 55 patients diagnosed with various primary cancers and metastatic spine disease.
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The recently published "RPA-Head-and-Neck-Lymph-Nodes" dataset includes CTs and RTSTRUCT contours of 7 lymph node levels from 46 subjects with definitive Oropharynx Cancer (OPX) to facilitate improved solutions for auto-contouring. Download it for free at doi.org/10.7937/FE3T-Z…

The recently published "RPA-Head-and-Neck-Lymph-Nodes" dataset includes CTs and RTSTRUCT contours of 7 lymph node levels from 46 subjects with definitive Oropharynx Cancer (OPX) to facilitate improved solutions for auto-contouring. Download it for free at doi.org/10.7937/FE3T-Z…