A small dataset commonly affects generalization, robustness, and overall performance of deep neural networks (DNNs) in medical imaging research. Since gathering large clinical databases is always difficult, we proposed an analytical method for producing a large realistic/diverse dataset. Clinical brain PET/CT/MR images including full-dose (FD), low-dose (LD) corresponding to only 5 % of events acquired in the FD scan, non-attenuated correction (NAC) and CT-based measured attenuation correction (MAC) PET images, CT images and T1 and T2 MR sequences of 35 patients were included. All images were registered to the Montreal Neurological Institute (MNI) template. Laplacian blending was used to make a natural presentation using information in the ...
Purpose: Reducing the injected activity and/or the scanning time is a desirable goal to minimize rad...
PURPOSE: While MR-only treatment planning using synthetic CTs (synCTs) offers potential for streamli...
With the steady progress of Deep Learning (DL), powerful tools are now present for sophisticated seg...
A small dataset commonly affects generalization, robustness, and overall performance of deep neural ...
A small dataset commonly affects generalization, robustness, and overall performance of deep neural ...
Introduction Robust and reliable attenuation correction (AC) is a prerequisite for accurate quantifi...
Purpose: To assess the performance of full dose (FD) positron emission tomography (PET) image synthe...
Our purpose was to assess the performance of full-dose (FD) PET image synthesis in both image and si...
Purpose Tendency is to moderate the injected activity and/or reduce acquisition time in PET examinat...
PurposeTo develop a deep-learning-based method to quantify multiple parameters in the brain from con...
Pre-print submitted to Physica Medica. Abstract Background: Synthetic computed tomography (sCT) h...
Purpose To enhance the image quality of oncology [18F]-FDG PET scans acquired in shorter times and r...
PET attenuation correction (AC) on systems lacking CT/transmission scanning, such as dedicated brain...
There has in recent years been interdisciplinary research on utilizing machine learning for detectin...
Deep learning (DL) methods have in recent years yielded impressive results in medical imaging, with ...
Purpose: Reducing the injected activity and/or the scanning time is a desirable goal to minimize rad...
PURPOSE: While MR-only treatment planning using synthetic CTs (synCTs) offers potential for streamli...
With the steady progress of Deep Learning (DL), powerful tools are now present for sophisticated seg...
A small dataset commonly affects generalization, robustness, and overall performance of deep neural ...
A small dataset commonly affects generalization, robustness, and overall performance of deep neural ...
Introduction Robust and reliable attenuation correction (AC) is a prerequisite for accurate quantifi...
Purpose: To assess the performance of full dose (FD) positron emission tomography (PET) image synthe...
Our purpose was to assess the performance of full-dose (FD) PET image synthesis in both image and si...
Purpose Tendency is to moderate the injected activity and/or reduce acquisition time in PET examinat...
PurposeTo develop a deep-learning-based method to quantify multiple parameters in the brain from con...
Pre-print submitted to Physica Medica. Abstract Background: Synthetic computed tomography (sCT) h...
Purpose To enhance the image quality of oncology [18F]-FDG PET scans acquired in shorter times and r...
PET attenuation correction (AC) on systems lacking CT/transmission scanning, such as dedicated brain...
There has in recent years been interdisciplinary research on utilizing machine learning for detectin...
Deep learning (DL) methods have in recent years yielded impressive results in medical imaging, with ...
Purpose: Reducing the injected activity and/or the scanning time is a desirable goal to minimize rad...
PURPOSE: While MR-only treatment planning using synthetic CTs (synCTs) offers potential for streamli...
With the steady progress of Deep Learning (DL), powerful tools are now present for sophisticated seg...