about
Probabilistic evaluation of target dose deterioration in dose painting by numbers for stage II/III lung cancer.Review of ultrasound image guidance in external beam radiotherapy part II: intra-fraction motion management and novel applications.Critical assessment of intramodality 3D ultrasound imaging for prostate IGRT compared to fiducial markers.On the significance of density-induced speed of sound variations on US-guided radiotherapy.Simulation of pseudo-CT images based on deformable image registration of ultrasound images: A proof of concept for transabdominal ultrasound imaging of the prostate during radiotherapy.Automated Computed Tomography-Ultrasound Cross-Modality 3-D Contouring Algorithm for Prostate.Consequences of Intermodality Registration Errors for Intramodality 3D Ultrasound IGRT.The Use of Ultrasound Imaging in the External Beam Radiotherapy Workflow of Prostate Cancer Patients.Automated patient-specific transperineal ultrasound probe setups for prostate cancer patients undergoing radiotherapyOccupational radiation exposure to nursing staff during cardiovascular fluoroscopic procedures: A review of the literatureReal-time adaptive planning method for radiotherapy treatment delivery for prostate cancer patients, based on a library of plans accounting for possible anatomy configuration changesDeep Learning-Based Femoral Cartilage Automatic Segmentation in Ultrasound Imaging for Guidance in Robotic Knee ArthroscopyAutomatic Quality Assessment of Transperineal Ultrasound Images of the Male Pelvic Region, Using Deep LearningComparison between Conventional IMRT Planning and a Novel Real-Time Adaptive Planning Strategy in Hypofractionated Regimes for Prostate Cancer: A Proof-of-Concept Planning StudyThe importance of blood rheology in patient-specific computational fluid dynamics simulation of stenotic carotid arteriesOccupational radiation exposure to the head is higher for scrub nurses than cardiologists during cardiac angiographySiam-U-Net: encoder-decoder siamese network for knee cartilage tracking in ultrasound imagesDeep learning for US image quality assessment based on femoral cartilage boundaries detection in autonomous knee arthroscopySegmentation of Femoral Cartilage from Knee Ultrasound Images Using Mask R-CNNUltrasound guidance in minimally invasive robotic procedures
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description
investigador
@es
researcher
@en
wetenschapper
@nl
name
Davide Fontanarosa
@en
Davide Fontanarosa
@nl
type
label
Davide Fontanarosa
@en
Davide Fontanarosa
@nl
prefLabel
Davide Fontanarosa
@en
Davide Fontanarosa
@nl
P31
P496
0000-0001-6986-3718