Literature DB >> 35652117

Deep Learning-based Detection of Intravenous Contrast Enhancement on CT Scans.

Zezhong Ye1, Jack M Qian1, Ahmed Hosny1, Roman Zeleznik1, Deborah Plana1, Jirapat Likitlersuang1, Zhongyi Zhang1, Raymond H Mak1, Hugo J W L Aerts1, Benjamin H Kann1.   

Abstract

Identifying the presence of intravenous contrast material on CT scans is an important component of data curation for medical imaging-based artificial intelligence model development and deployment. Use of intravenous contrast material is often poorly documented in imaging metadata, necessitating impractical manual annotation by clinician experts. Authors developed a convolutional neural network (CNN)-based deep learning platform to identify intravenous contrast enhancement on CT scans. For model development and validation, authors used six independent datasets of head and neck (HN) and chest CT scans, totaling 133 480 axial two-dimensional sections from 1979 scans, which were manually annotated by clinical experts. Five CNN models were trained first on HN scans for contrast enhancement detection. Model performances were evaluated at the patient level on a holdout set and external test set. Models were then fine-tuned on chest CT data and externally validated. This study found that Digital Imaging and Communications in Medicine metadata tags for intravenous contrast material were missing or erroneous for 1496 scans (75.6%). An EfficientNetB4-based model showed the best performance, with areas under the curve (AUCs) of 0.996 and 1.0 in HN holdout (n = 216) and external (n = 595) sets, respectively, and AUCs of 1.0 and 0.980 in the chest holdout (n = 53) and external (n = 402) sets, respectively. This automated, scan-to-prediction platform is highly accurate at CT contrast enhancement detection and may be helpful for artificial intelligence model development and clinical application. Keywords: CT, Head and Neck, Supervised Learning, Transfer Learning, Convolutional Neural Network (CNN), Machine Learning Algorithms, Contrast Material Supplemental material is available for this article. © RSNA, 2022.
© 2022 by the Radiological Society of North America, Inc.

Entities:  

Keywords:  CT; Contrast Material; Convolutional; Head and Neck; Machine Learning Algorithms; Neural Network (CNN); Supervised Learning; Transfer Learning

Year:  2022        PMID: 35652117      PMCID: PMC9152686          DOI: 10.1148/ryai.210285

Source DB:  PubMed          Journal:  Radiol Artif Intell        ISSN: 2638-6100


  11 in total

1.  A discriminative-generative model for detecting intravenous contrast in CT images.

Authors:  Antonio Criminisi; Krishna Juluru; Sayan Pathak
Journal:  Med Image Comput Comput Assist Interv       Date:  2011

2.  Automatic contrast phase estimation in CT volumes.

Authors:  Michal Sofka; Dijia Wu; Michael Sühling; David Liu; Christian Tietjen; Grzegorz Soza; S Kevin Zhou
Journal:  Med Image Comput Comput Assist Interv       Date:  2011

3.  DICOM Metadata repository for technical information in digital medical images.

Authors:  Hans-Erik Källman; Erik Halsius; Magnus Olsson; Mats Stenström
Journal:  Acta Oncol       Date:  2009       Impact factor: 4.089

4.  Comparison of radiomic features in diagnostic CT images with and without contrast enhancement in the delayed phase for NSCLC patients.

Authors:  Ryo Kakino; Mitsuhiro Nakamura; Takamasa Mitsuyoshi; Takashi Shintani; Hideaki Hirashima; Yukinori Matsuo; Takashi Mizowaki
Journal:  Phys Med       Date:  2020-01-06       Impact factor: 2.685

5.  Radiomic Biomarkers to Refine Risk Models for Distant Metastasis in HPV-related Oropharyngeal Carcinoma.

Authors:  Jennifer Yin Yee Kwan; Jie Su; Shao Hui Huang; Laleh S Ghoraie; Wei Xu; Biu Chan; Kenneth W Yip; Meredith Giuliani; Andrew Bayley; John Kim; Andrew J Hope; Jolie Ringash; John Cho; Andrea McNiven; Aaron Hansen; David Goldstein; John R de Almeida; Hugo J Aerts; John N Waldron; Benjamin Haibe-Kains; Brian O'Sullivan; Scott V Bratman; Fei-Fei Liu
Journal:  Int J Radiat Oncol Biol Phys       Date:  2018-02-01       Impact factor: 7.038

Review 6.  Artificial intelligence in radiology.

Authors:  Ahmed Hosny; Chintan Parmar; John Quackenbush; Lawrence H Schwartz; Hugo J W L Aerts
Journal:  Nat Rev Cancer       Date:  2018-08       Impact factor: 60.716

7.  Effects of contrast-enhancement, reconstruction slice thickness and convolution kernel on the diagnostic performance of radiomics signature in solitary pulmonary nodule.

Authors:  Lan He; Yanqi Huang; Zelan Ma; Cuishan Liang; Changhong Liang; Zaiyi Liu
Journal:  Sci Rep       Date:  2016-10-10       Impact factor: 4.379

Review 8.  Artificial intelligence in cancer imaging: Clinical challenges and applications.

Authors:  Wenya Linda Bi; Ahmed Hosny; Matthew B Schabath; Maryellen L Giger; Nicolai J Birkbak; Alireza Mehrtash; Tavis Allison; Omar Arnaout; Christopher Abbosh; Ian F Dunn; Raymond H Mak; Rulla M Tamimi; Clare M Tempany; Charles Swanton; Udo Hoffmann; Lawrence H Schwartz; Robert J Gillies; Raymond Y Huang; Hugo J W L Aerts
Journal:  CA Cancer J Clin       Date:  2019-02-05       Impact factor: 508.702

9.  Preparing Medical Imaging Data for Machine Learning.

Authors:  Martin J Willemink; Wojciech A Koszek; Cailin Hardell; Jie Wu; Dominik Fleischmann; Hugh Harvey; Les R Folio; Ronald M Summers; Daniel L Rubin; Matthew P Lungren
Journal:  Radiology       Date:  2020-02-18       Impact factor: 11.105

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  1 in total

1.  Clinical validation of deep learning algorithms for radiotherapy targeting of non-small-cell lung cancer: an observational study.

Authors:  Ahmed Hosny; Danielle S Bitterman; Christian V Guthier; Jack M Qian; Hannah Roberts; Subha Perni; Anurag Saraf; Luke C Peng; Itai Pashtan; Zezhong Ye; Benjamin H Kann; David E Kozono; David Christiani; Paul J Catalano; Hugo J W L Aerts; Raymond H Mak
Journal:  Lancet Digit Health       Date:  2022-09
  1 in total

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