OBJECTIVES: The objective of this study was to quantitatively assess the image quality of Advanced Modeled Iterative Reconstruction (ADMIRE) and the PixelShine (PS) deep learning algorithm for the optimization of low-dose computed tomography protocols in midfacial trauma.STUDY DESIGN: Six fresh frozen human cadaver head specimens were scanned by computed tomography using both standard and low-dose scan protocols. Three iterative reconstruction strengths were applied to reconstruct bone and soft tissue data sets and these were subsequently applied to the PS algorithm. Signal-to-noise ratios (SNRs) and contrast-to-noise ratios (CNRs) were calculated for each data set by using the image noise measurements of 10 consecutive image slices from a ...
Computed tomography (CT) is the primary imaging investigation for many neurologic conditions with a ...
To compare deep learning (True Fidelity, TF) and partial model based Iterative Reconstruction (ASiR-...
Objective: To compare the image quality of computed tomography angiography of the supra-aortic arter...
OBJECTIVES: The objective of this study was to quantitatively assess the image quality of Advanced M...
The structural similarity index metric is used to measure the similarity between two images. The aim...
International audiencePurpose: To compare the impact on CT image quality and dose reduction of two v...
Background: Radiation-related cancer risk is an object of concern in CT of trauma patients, as these...
Abstract Deep learning-based CT image reconstruction (DLR) is a state-of-the-art method for obtainin...
Introduction: Cadaveric studies provide a means of safely assessing new technologies and optimizing ...
The aim of this thesis is to assess the feasibility of using model-based iterative reconstruction (M...
Deep learning and machine learning provide more consistent tools and powerful functions for recognit...
PURPOSEWe aimed to evaluate the quality of chest computed tomography (CT) images obtained with low-d...
The reconstruction of computed tomography (CT) images is an active area of research. Following the r...
Abstract Objective Few studies have explored the clinical feasibility of using deep-learning reconst...
Minimally invasive image-guided interventions(IGIs) lead to improved treatment outcomes while signif...
Computed tomography (CT) is the primary imaging investigation for many neurologic conditions with a ...
To compare deep learning (True Fidelity, TF) and partial model based Iterative Reconstruction (ASiR-...
Objective: To compare the image quality of computed tomography angiography of the supra-aortic arter...
OBJECTIVES: The objective of this study was to quantitatively assess the image quality of Advanced M...
The structural similarity index metric is used to measure the similarity between two images. The aim...
International audiencePurpose: To compare the impact on CT image quality and dose reduction of two v...
Background: Radiation-related cancer risk is an object of concern in CT of trauma patients, as these...
Abstract Deep learning-based CT image reconstruction (DLR) is a state-of-the-art method for obtainin...
Introduction: Cadaveric studies provide a means of safely assessing new technologies and optimizing ...
The aim of this thesis is to assess the feasibility of using model-based iterative reconstruction (M...
Deep learning and machine learning provide more consistent tools and powerful functions for recognit...
PURPOSEWe aimed to evaluate the quality of chest computed tomography (CT) images obtained with low-d...
The reconstruction of computed tomography (CT) images is an active area of research. Following the r...
Abstract Objective Few studies have explored the clinical feasibility of using deep-learning reconst...
Minimally invasive image-guided interventions(IGIs) lead to improved treatment outcomes while signif...
Computed tomography (CT) is the primary imaging investigation for many neurologic conditions with a ...
To compare deep learning (True Fidelity, TF) and partial model based Iterative Reconstruction (ASiR-...
Objective: To compare the image quality of computed tomography angiography of the supra-aortic arter...