Annotated test-retest dataset of lung cancer CT scan images reconstructed at multiple imaging parameters

Abstract Quantitative imaging biomarkers (QIB) are increasingly used in clinical research to advance precision medicine approaches in oncology. Computed tomography (CT) is a modality of choice for cancer diagnosis, prognosis, and response assessment due to its reliability and global accessibility. H...

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Main Authors: Binsheng Zhao, Laurent Dercle, Hao Yang, Gregory J. Riely, Mark G. Kris, Lawrence H. Schwartz
Format: Article
Language:English
Published: Nature Portfolio 2024-11-01
Series:Scientific Data
Online Access:https://doi.org/10.1038/s41597-024-04085-3
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author Binsheng Zhao
Laurent Dercle
Hao Yang
Gregory J. Riely
Mark G. Kris
Lawrence H. Schwartz
author_facet Binsheng Zhao
Laurent Dercle
Hao Yang
Gregory J. Riely
Mark G. Kris
Lawrence H. Schwartz
author_sort Binsheng Zhao
collection DOAJ
description Abstract Quantitative imaging biomarkers (QIB) are increasingly used in clinical research to advance precision medicine approaches in oncology. Computed tomography (CT) is a modality of choice for cancer diagnosis, prognosis, and response assessment due to its reliability and global accessibility. Here, we contribute to the cancer imaging community through The Cancer Imaging Archive (TCIA) by providing investigator-initiated, same-day repeat CT scan images of 32 non–small cell lung cancer (NSCLC) patients, along with radiologist-annotated lesion contours as a reference standard. Each scan was reconstructed into 6 image settings using various combinations of three slice thicknesses (1.25 mm, 2.5 mm, 5 mm) and two reconstruction kernels (lung, standard; GE CT equipment), which spans a wide range of CT imaging reconstruction parameters commonly used in lung cancer clinical practice and clinical trials. This holds considerable value for advancing the development of robust Radiomics, Artificial Intelligence (AI) and machine learning (ML) methods.
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id doaj-art-4181a98c7c7641a5b8698cc85c01ef0b
institution Kabale University
issn 2052-4463
language English
publishDate 2024-11-01
publisher Nature Portfolio
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spelling doaj-art-4181a98c7c7641a5b8698cc85c01ef0b2024-11-24T12:10:16ZengNature PortfolioScientific Data2052-44632024-11-011111510.1038/s41597-024-04085-3Annotated test-retest dataset of lung cancer CT scan images reconstructed at multiple imaging parametersBinsheng Zhao0Laurent Dercle1Hao Yang2Gregory J. Riely3Mark G. Kris4Lawrence H. Schwartz5Memorial Sloan-Kettering Cancer CenterMemorial Sloan-Kettering Cancer CenterMemorial Sloan-Kettering Cancer CenterMemorial Sloan-Kettering Cancer CenterMemorial Sloan-Kettering Cancer CenterMemorial Sloan-Kettering Cancer CenterAbstract Quantitative imaging biomarkers (QIB) are increasingly used in clinical research to advance precision medicine approaches in oncology. Computed tomography (CT) is a modality of choice for cancer diagnosis, prognosis, and response assessment due to its reliability and global accessibility. Here, we contribute to the cancer imaging community through The Cancer Imaging Archive (TCIA) by providing investigator-initiated, same-day repeat CT scan images of 32 non–small cell lung cancer (NSCLC) patients, along with radiologist-annotated lesion contours as a reference standard. Each scan was reconstructed into 6 image settings using various combinations of three slice thicknesses (1.25 mm, 2.5 mm, 5 mm) and two reconstruction kernels (lung, standard; GE CT equipment), which spans a wide range of CT imaging reconstruction parameters commonly used in lung cancer clinical practice and clinical trials. This holds considerable value for advancing the development of robust Radiomics, Artificial Intelligence (AI) and machine learning (ML) methods.https://doi.org/10.1038/s41597-024-04085-3
spellingShingle Binsheng Zhao
Laurent Dercle
Hao Yang
Gregory J. Riely
Mark G. Kris
Lawrence H. Schwartz
Annotated test-retest dataset of lung cancer CT scan images reconstructed at multiple imaging parameters
Scientific Data
title Annotated test-retest dataset of lung cancer CT scan images reconstructed at multiple imaging parameters
title_full Annotated test-retest dataset of lung cancer CT scan images reconstructed at multiple imaging parameters
title_fullStr Annotated test-retest dataset of lung cancer CT scan images reconstructed at multiple imaging parameters
title_full_unstemmed Annotated test-retest dataset of lung cancer CT scan images reconstructed at multiple imaging parameters
title_short Annotated test-retest dataset of lung cancer CT scan images reconstructed at multiple imaging parameters
title_sort annotated test retest dataset of lung cancer ct scan images reconstructed at multiple imaging parameters
url https://doi.org/10.1038/s41597-024-04085-3
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AT gregoryjriely annotatedtestretestdatasetoflungcancerctscanimagesreconstructedatmultipleimagingparameters
AT markgkris annotatedtestretestdatasetoflungcancerctscanimagesreconstructedatmultipleimagingparameters
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