© 2019 American Association of Physicists in Medicine Purpose: Real-time image-guided adaptive radiation therapy (IGART) requires accurate marker segmentation to resolve three-dimensional (3D) motion based on two-dimensional (2D) fluoroscopic images. Most common marker segmentation methods require prior knowledge of marker properties to construct a template. If marker properties are not known, an additional learning period is required to build the template which exposes the patient to an additional imaging dose. This work investigates a deep learning-based fiducial marker classifier for use in real-time IGART that requires no prior patient-specific data or additional learning periods. The proposed tracking system uses convolutional neural n...
Objective. Delineation of relevant normal tissues is a bottleneck in image-guided precision radiothe...
According to the Center for Disease Control, more people die from lung cancer than any other cancer ...
124 pagesMachine learning and deep learning have recently witnessed great successes in various field...
Purpose/Objective(s)To achieve high treatment accuracy in respiratory-gated radiotherapy, it is impo...
Purpose. The aim of this study was to assess the feasibility of the development and training of a de...
Purpose: To improve respiratory gating accuracy and treatment throughput, we developed a fluoroscopi...
Purpose: This paper describes a novel method for simultaneous intrafraction tracking of multiple fid...
Identification of prostate gold fiducial markers in magnetic resonance imaging (MRI) images is chall...
Background: Convolutional neural networks (CNNs) have been shown to be powerful tools to assist with...
External radiotherapy treats cancer by pointing a source of radiation(either photons or protons) at ...
Thin-cap fibroatheroma (TCFA) is a prominent risk factor for plaque rupture. Intravascular optical c...
Background<p>Convolutional neural networks (CNNs) have been shown to be powerful tools to assist wit...
Medical imaging is a key tool used in healthcare to diagnose and prognose patients by aiding the det...
For the Cyberknife radiation therapy treatment modality, the gold standard of real-time tracking of ...
Minimally invasive endovascular procedures require accurate tracking and localization of tools under...
Objective. Delineation of relevant normal tissues is a bottleneck in image-guided precision radiothe...
According to the Center for Disease Control, more people die from lung cancer than any other cancer ...
124 pagesMachine learning and deep learning have recently witnessed great successes in various field...
Purpose/Objective(s)To achieve high treatment accuracy in respiratory-gated radiotherapy, it is impo...
Purpose. The aim of this study was to assess the feasibility of the development and training of a de...
Purpose: To improve respiratory gating accuracy and treatment throughput, we developed a fluoroscopi...
Purpose: This paper describes a novel method for simultaneous intrafraction tracking of multiple fid...
Identification of prostate gold fiducial markers in magnetic resonance imaging (MRI) images is chall...
Background: Convolutional neural networks (CNNs) have been shown to be powerful tools to assist with...
External radiotherapy treats cancer by pointing a source of radiation(either photons or protons) at ...
Thin-cap fibroatheroma (TCFA) is a prominent risk factor for plaque rupture. Intravascular optical c...
Background<p>Convolutional neural networks (CNNs) have been shown to be powerful tools to assist wit...
Medical imaging is a key tool used in healthcare to diagnose and prognose patients by aiding the det...
For the Cyberknife radiation therapy treatment modality, the gold standard of real-time tracking of ...
Minimally invasive endovascular procedures require accurate tracking and localization of tools under...
Objective. Delineation of relevant normal tissues is a bottleneck in image-guided precision radiothe...
According to the Center for Disease Control, more people die from lung cancer than any other cancer ...
124 pagesMachine learning and deep learning have recently witnessed great successes in various field...