Computed tomography produces sets of tomograms for medical interpretation. Typical interpretation consists of imaging and simple observation on a 2D display screen, so that feature extraction and tissue differentiation is based primarily on human expertise. Solid freeform fabrication offers the promise of fabrication of prostheses based on actual patient anatomy. Use of CT data for this purpose requires automated interpretation. This paper presents a system architecture based on neural networks for the segmentation and classification of tissues of interest in tomograms. This approach produces a quantitative recovery of the available information by applying a feed-forward neural net trained with the back-propagation algorithm. The neural net...
This paper provides an overview of the different deep convolutional neural network (DCNNs) architect...
Automated medical image processing, particularly of radiological images, can reduce the number of di...
In this paper, we propose a dedicated pipeline of pre-processing, deep learning-based segmentation a...
Computed tomography produces sets of tomograms for medical interpretation. Typical interpretation co...
Background: The most tedious and time-consuming task in medical additive manufacturing (AM) is image...
Automatising the process of semantic segmentation of anatomical structures in medical data is an act...
The paper is focused on automatic segmentation task of bone structures out of CT data series of pelv...
The quality of solving the problem of biomechanical modeling largely depends on the created solid-st...
This paper deals with a detection of anatomical structures in medical images using convolutional neu...
Computer-assisted surgery (CAS) is a novel treatment modality that allows clinicians to create perso...
Purpose: Proximal femur image analyses based on quantitative computed tomography (QCT) provide a met...
Deep learning methods for medical image segmentation are hindered by the lack of training data. This...
Purpose: In order to attain anatomical models, surgical guides and implants for computer-assisted su...
Identifying the shape and location of structures within medical images is useful for purposes such a...
Deep learning algorithms have improved the speed and quality of segmentation for certain tasks in me...
This paper provides an overview of the different deep convolutional neural network (DCNNs) architect...
Automated medical image processing, particularly of radiological images, can reduce the number of di...
In this paper, we propose a dedicated pipeline of pre-processing, deep learning-based segmentation a...
Computed tomography produces sets of tomograms for medical interpretation. Typical interpretation co...
Background: The most tedious and time-consuming task in medical additive manufacturing (AM) is image...
Automatising the process of semantic segmentation of anatomical structures in medical data is an act...
The paper is focused on automatic segmentation task of bone structures out of CT data series of pelv...
The quality of solving the problem of biomechanical modeling largely depends on the created solid-st...
This paper deals with a detection of anatomical structures in medical images using convolutional neu...
Computer-assisted surgery (CAS) is a novel treatment modality that allows clinicians to create perso...
Purpose: Proximal femur image analyses based on quantitative computed tomography (QCT) provide a met...
Deep learning methods for medical image segmentation are hindered by the lack of training data. This...
Purpose: In order to attain anatomical models, surgical guides and implants for computer-assisted su...
Identifying the shape and location of structures within medical images is useful for purposes such a...
Deep learning algorithms have improved the speed and quality of segmentation for certain tasks in me...
This paper provides an overview of the different deep convolutional neural network (DCNNs) architect...
Automated medical image processing, particularly of radiological images, can reduce the number of di...
In this paper, we propose a dedicated pipeline of pre-processing, deep learning-based segmentation a...