Purpose: We investigate, by an extensive quality evaluation approach, performances and potential side effects introduced in Computed Tomography (CT) images by Deep Learning (DL) processing. Method: We selected two relevant processing steps, denoise and segmentation, implemented by two Convolutional Neural Networks (CNNs) models based on autoencoder architecture (encoder-decoder and UNet) and trained for the two tasks. In order to limit the number of uncontrolled variables, we designed a phantom containing cylindrical inserts of different sizes, filled with iodinated contrast media. A large CT image dataset was collected at different acquisition settings and two reconstruction algorithms. We characterized the CNNs behavior using metrics f...
Abstract Goal PET is a relatively noisy process compa...
Deep learning has revolutionized the field of digital image processing. However, training a Convolut...
PurposeA general problem of machine-learning algorithms based on the convolutional- neural-network (...
Purpose: We investigate, by an extensive quality evaluation approach, performances and potential sid...
International audiencePurpose: To compare the impact on CT image quality and dose reduction of two v...
Computed Tomography (CT) is commonly used for cancer screening as it utilizes low radiation for the ...
Deep Learning is a subfield of machine learning concerned with algorithms that learn hierarchical da...
Medical imaging is a complex process that capitulates images created by X-rays, ultrasound imaging, ...
Identifying the presence of intravenous contrast material on CT scans is an important component of d...
A promising new technology in medical imaging is photon-counting detectors (PCD). Itcould allow for ...
Background: Magnetic resonance imaging (MRI) is predominant in the therapeutic management of cancer ...
Purpose: Computed tomography (CT) image noise is usually determined by standard deviation (SD) of pi...
Background and purpose. This study evaluated a modified specialized convolutional neural network (CN...
Deep learning has shown superb performance in detecting objects and classifying images, ensuring a g...
Deep learning has shown superb performance in detecting objects and classifying images, ensuring a g...
Abstract Goal PET is a relatively noisy process compa...
Deep learning has revolutionized the field of digital image processing. However, training a Convolut...
PurposeA general problem of machine-learning algorithms based on the convolutional- neural-network (...
Purpose: We investigate, by an extensive quality evaluation approach, performances and potential sid...
International audiencePurpose: To compare the impact on CT image quality and dose reduction of two v...
Computed Tomography (CT) is commonly used for cancer screening as it utilizes low radiation for the ...
Deep Learning is a subfield of machine learning concerned with algorithms that learn hierarchical da...
Medical imaging is a complex process that capitulates images created by X-rays, ultrasound imaging, ...
Identifying the presence of intravenous contrast material on CT scans is an important component of d...
A promising new technology in medical imaging is photon-counting detectors (PCD). Itcould allow for ...
Background: Magnetic resonance imaging (MRI) is predominant in the therapeutic management of cancer ...
Purpose: Computed tomography (CT) image noise is usually determined by standard deviation (SD) of pi...
Background and purpose. This study evaluated a modified specialized convolutional neural network (CN...
Deep learning has shown superb performance in detecting objects and classifying images, ensuring a g...
Deep learning has shown superb performance in detecting objects and classifying images, ensuring a g...
Abstract Goal PET is a relatively noisy process compa...
Deep learning has revolutionized the field of digital image processing. However, training a Convolut...
PurposeA general problem of machine-learning algorithms based on the convolutional- neural-network (...