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Post-Acquisition Hyperpolarized (29)Silicon Magnetic Resonance Image Processing for Visualization of Colorectal Lesions Using a User-Friendly Graphical Interface

Medical imaging devices often use automated processing that creates and displays a self-normalized image. When improperly executed, normalization can misrepresent information or result in an inaccurate analysis. In the case of diagnostic imaging, a false positive in the absence of disease, or a nega...

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Autores principales: McCowan, Caitlin V., Salmon, Duncan, Hu, Jingzhe, Pudakalakatti, Shivanand, Whiting, Nicholas, Davis, Jennifer S., Carson, Daniel D., Zacharias, Niki M., Bhattacharya, Pratip K., Farach-Carson, Mary C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8947341/
https://www.ncbi.nlm.nih.gov/pubmed/35328163
http://dx.doi.org/10.3390/diagnostics12030610
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author McCowan, Caitlin V.
Salmon, Duncan
Hu, Jingzhe
Pudakalakatti, Shivanand
Whiting, Nicholas
Davis, Jennifer S.
Carson, Daniel D.
Zacharias, Niki M.
Bhattacharya, Pratip K.
Farach-Carson, Mary C.
author_facet McCowan, Caitlin V.
Salmon, Duncan
Hu, Jingzhe
Pudakalakatti, Shivanand
Whiting, Nicholas
Davis, Jennifer S.
Carson, Daniel D.
Zacharias, Niki M.
Bhattacharya, Pratip K.
Farach-Carson, Mary C.
author_sort McCowan, Caitlin V.
collection PubMed
description Medical imaging devices often use automated processing that creates and displays a self-normalized image. When improperly executed, normalization can misrepresent information or result in an inaccurate analysis. In the case of diagnostic imaging, a false positive in the absence of disease, or a negative finding when disease is present, can produce a detrimental experience for the patient and diminish their health prospects and prognosis. In many clinical settings, a medical technical specialist is trained to operate an imaging device without sufficient background information or understanding of the fundamental theory and processes involved in image creation and signal processing. Here, we describe a user-friendly image processing algorithm that mitigates user bias and allows for true signal to be distinguished from background. For proof-of-principle, we used antibody-targeted molecular imaging of colorectal cancer (CRC) in a mouse model, expressing human MUC1 at tumor sites. Lesion detection was performed using targeted magnetic resonance imaging (MRI) of hyperpolarized silicon particles. Resulting images containing high background and artifacts were then subjected to individualized image post-processing and comparative analysis. Post-acquisition image processing allowed for co-registration of the targeted silicon signal with the anatomical proton magnetic resonance (MR) image. This new methodology allows users to calibrate a set of images, acquired with MRI, and reliably locate CRC tumors in the lower gastrointestinal tract of living mice. The method is expected to be generally useful for distinguishing true signal from background for other cancer types, improving the reliability of diagnostic MRI.
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spelling pubmed-89473412022-03-25 Post-Acquisition Hyperpolarized (29)Silicon Magnetic Resonance Image Processing for Visualization of Colorectal Lesions Using a User-Friendly Graphical Interface McCowan, Caitlin V. Salmon, Duncan Hu, Jingzhe Pudakalakatti, Shivanand Whiting, Nicholas Davis, Jennifer S. Carson, Daniel D. Zacharias, Niki M. Bhattacharya, Pratip K. Farach-Carson, Mary C. Diagnostics (Basel) Article Medical imaging devices often use automated processing that creates and displays a self-normalized image. When improperly executed, normalization can misrepresent information or result in an inaccurate analysis. In the case of diagnostic imaging, a false positive in the absence of disease, or a negative finding when disease is present, can produce a detrimental experience for the patient and diminish their health prospects and prognosis. In many clinical settings, a medical technical specialist is trained to operate an imaging device without sufficient background information or understanding of the fundamental theory and processes involved in image creation and signal processing. Here, we describe a user-friendly image processing algorithm that mitigates user bias and allows for true signal to be distinguished from background. For proof-of-principle, we used antibody-targeted molecular imaging of colorectal cancer (CRC) in a mouse model, expressing human MUC1 at tumor sites. Lesion detection was performed using targeted magnetic resonance imaging (MRI) of hyperpolarized silicon particles. Resulting images containing high background and artifacts were then subjected to individualized image post-processing and comparative analysis. Post-acquisition image processing allowed for co-registration of the targeted silicon signal with the anatomical proton magnetic resonance (MR) image. This new methodology allows users to calibrate a set of images, acquired with MRI, and reliably locate CRC tumors in the lower gastrointestinal tract of living mice. The method is expected to be generally useful for distinguishing true signal from background for other cancer types, improving the reliability of diagnostic MRI. MDPI 2022-03-01 /pmc/articles/PMC8947341/ /pubmed/35328163 http://dx.doi.org/10.3390/diagnostics12030610 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
McCowan, Caitlin V.
Salmon, Duncan
Hu, Jingzhe
Pudakalakatti, Shivanand
Whiting, Nicholas
Davis, Jennifer S.
Carson, Daniel D.
Zacharias, Niki M.
Bhattacharya, Pratip K.
Farach-Carson, Mary C.
Post-Acquisition Hyperpolarized (29)Silicon Magnetic Resonance Image Processing for Visualization of Colorectal Lesions Using a User-Friendly Graphical Interface
title Post-Acquisition Hyperpolarized (29)Silicon Magnetic Resonance Image Processing for Visualization of Colorectal Lesions Using a User-Friendly Graphical Interface
title_full Post-Acquisition Hyperpolarized (29)Silicon Magnetic Resonance Image Processing for Visualization of Colorectal Lesions Using a User-Friendly Graphical Interface
title_fullStr Post-Acquisition Hyperpolarized (29)Silicon Magnetic Resonance Image Processing for Visualization of Colorectal Lesions Using a User-Friendly Graphical Interface
title_full_unstemmed Post-Acquisition Hyperpolarized (29)Silicon Magnetic Resonance Image Processing for Visualization of Colorectal Lesions Using a User-Friendly Graphical Interface
title_short Post-Acquisition Hyperpolarized (29)Silicon Magnetic Resonance Image Processing for Visualization of Colorectal Lesions Using a User-Friendly Graphical Interface
title_sort post-acquisition hyperpolarized (29)silicon magnetic resonance image processing for visualization of colorectal lesions using a user-friendly graphical interface
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8947341/
https://www.ncbi.nlm.nih.gov/pubmed/35328163
http://dx.doi.org/10.3390/diagnostics12030610
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