Development of physiologically‐informed computational coronary artery plaques for use in virtual imaging trials

Background As a leading cause of death, worldwide, cardiovascular disease is of great clinical importance. Among cardiovascular diseases, coronary artery disease (CAD) is a key contributor, and it is the attributed cause of death for 10% of all deaths annually. The prevalence of CAD is commensurate...

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Veröffentlicht in:Medical physics (Lancaster) 2024-03, Vol.51 (3), p.1583-1596
Hauptverfasser: Sauer, Thomas J., Buckler, Andrew J., Abadi, Ehsan, Daubert, Melissa, Douglas, Pamela S., Samei, Ehsan, Segars, William P.
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container_issue 3
container_start_page 1583
container_title Medical physics (Lancaster)
container_volume 51
creator Sauer, Thomas J.
Buckler, Andrew J.
Abadi, Ehsan
Daubert, Melissa
Douglas, Pamela S.
Samei, Ehsan
Segars, William P.
description Background As a leading cause of death, worldwide, cardiovascular disease is of great clinical importance. Among cardiovascular diseases, coronary artery disease (CAD) is a key contributor, and it is the attributed cause of death for 10% of all deaths annually. The prevalence of CAD is commensurate with the rise in new medical imaging technologies intended to aid in its diagnosis and treatment. The necessary clinical trials required to validate and optimize these technologies require a large cohort of carefully controlled patients, considerable time to complete, and can be prohibitively expensive. A safer, faster, less expensive alternative is using virtual imaging trials (VITs), utilizing virtual patients or phantoms combined with accurate computer models of imaging devices. Purpose In this work, we develop realistic, physiologically‐informed models for coronary plaques for application in cardiac imaging VITs. Methods Histology images of plaques at micron‐level resolution were used to train a deep convolutional generative adversarial network (DC‐GAN) to create a library of anatomically variable plaque models with clinical anatomical realism. The stability of each plaque was evaluated by finite element analysis (FEA) in which plaque components and vessels were meshed as volumes, modeled as specialized tissues, and subjected to the range of normal coronary blood pressures. To demonstrate the utility of the plaque models, we combined them with the whole‐body XCAT computational phantom to perform initial simulations comparing standard energy‐integrating detector (EID) CT with photon‐counting detector (PCD) CT. Results Our results show the network is capable of generating realistic, anatomically variable plaques. Our simulation results provide an initial demonstration of the utility of the generated plaque models as targets to compare different imaging devices. Conclusions Vast, realistic, and variable CAD pathologies can be generated to incorporate into computational phantoms for VITs. There they can serve as a known truth from which to optimize and evaluate cardiac imaging technologies quantitatively.
doi_str_mv 10.1002/mp.16959
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Among cardiovascular diseases, coronary artery disease (CAD) is a key contributor, and it is the attributed cause of death for 10% of all deaths annually. The prevalence of CAD is commensurate with the rise in new medical imaging technologies intended to aid in its diagnosis and treatment. The necessary clinical trials required to validate and optimize these technologies require a large cohort of carefully controlled patients, considerable time to complete, and can be prohibitively expensive. A safer, faster, less expensive alternative is using virtual imaging trials (VITs), utilizing virtual patients or phantoms combined with accurate computer models of imaging devices. Purpose In this work, we develop realistic, physiologically‐informed models for coronary plaques for application in cardiac imaging VITs. Methods Histology images of plaques at micron‐level resolution were used to train a deep convolutional generative adversarial network (DC‐GAN) to create a library of anatomically variable plaque models with clinical anatomical realism. The stability of each plaque was evaluated by finite element analysis (FEA) in which plaque components and vessels were meshed as volumes, modeled as specialized tissues, and subjected to the range of normal coronary blood pressures. To demonstrate the utility of the plaque models, we combined them with the whole‐body XCAT computational phantom to perform initial simulations comparing standard energy‐integrating detector (EID) CT with photon‐counting detector (PCD) CT. Results Our results show the network is capable of generating realistic, anatomically variable plaques. Our simulation results provide an initial demonstration of the utility of the generated plaque models as targets to compare different imaging devices. Conclusions Vast, realistic, and variable CAD pathologies can be generated to incorporate into computational phantoms for VITs. 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Among cardiovascular diseases, coronary artery disease (CAD) is a key contributor, and it is the attributed cause of death for 10% of all deaths annually. The prevalence of CAD is commensurate with the rise in new medical imaging technologies intended to aid in its diagnosis and treatment. The necessary clinical trials required to validate and optimize these technologies require a large cohort of carefully controlled patients, considerable time to complete, and can be prohibitively expensive. A safer, faster, less expensive alternative is using virtual imaging trials (VITs), utilizing virtual patients or phantoms combined with accurate computer models of imaging devices. Purpose In this work, we develop realistic, physiologically‐informed models for coronary plaques for application in cardiac imaging VITs. Methods Histology images of plaques at micron‐level resolution were used to train a deep convolutional generative adversarial network (DC‐GAN) to create a library of anatomically variable plaque models with clinical anatomical realism. The stability of each plaque was evaluated by finite element analysis (FEA) in which plaque components and vessels were meshed as volumes, modeled as specialized tissues, and subjected to the range of normal coronary blood pressures. To demonstrate the utility of the plaque models, we combined them with the whole‐body XCAT computational phantom to perform initial simulations comparing standard energy‐integrating detector (EID) CT with photon‐counting detector (PCD) CT. Results Our results show the network is capable of generating realistic, anatomically variable plaques. Our simulation results provide an initial demonstration of the utility of the generated plaque models as targets to compare different imaging devices. Conclusions Vast, realistic, and variable CAD pathologies can be generated to incorporate into computational phantoms for VITs. 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Among cardiovascular diseases, coronary artery disease (CAD) is a key contributor, and it is the attributed cause of death for 10% of all deaths annually. The prevalence of CAD is commensurate with the rise in new medical imaging technologies intended to aid in its diagnosis and treatment. The necessary clinical trials required to validate and optimize these technologies require a large cohort of carefully controlled patients, considerable time to complete, and can be prohibitively expensive. A safer, faster, less expensive alternative is using virtual imaging trials (VITs), utilizing virtual patients or phantoms combined with accurate computer models of imaging devices. Purpose In this work, we develop realistic, physiologically‐informed models for coronary plaques for application in cardiac imaging VITs. Methods Histology images of plaques at micron‐level resolution were used to train a deep convolutional generative adversarial network (DC‐GAN) to create a library of anatomically variable plaque models with clinical anatomical realism. The stability of each plaque was evaluated by finite element analysis (FEA) in which plaque components and vessels were meshed as volumes, modeled as specialized tissues, and subjected to the range of normal coronary blood pressures. To demonstrate the utility of the plaque models, we combined them with the whole‐body XCAT computational phantom to perform initial simulations comparing standard energy‐integrating detector (EID) CT with photon‐counting detector (PCD) CT. Results Our results show the network is capable of generating realistic, anatomically variable plaques. Our simulation results provide an initial demonstration of the utility of the generated plaque models as targets to compare different imaging devices. Conclusions Vast, realistic, and variable CAD pathologies can be generated to incorporate into computational phantoms for VITs. There they can serve as a known truth from which to optimize and evaluate cardiac imaging technologies quantitatively.</abstract><cop>United States</cop><pmid>38306457</pmid><doi>10.1002/mp.16959</doi><tpages>14</tpages></addata></record>
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source Wiley Online Library Journals Frontfile Complete
subjects cardiac plaque
cardiovascular disease
computer phantom
coronary artery disease
finite element analysis
medical imaging simulation
title Development of physiologically‐informed computational coronary artery plaques for use in virtual imaging trials
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