As deep convolutional networks (ConvNets) reach spectacular results on a multitude of computer vision tasks and perform almost as well as a human rater on the task of segmenting gliomas in the brain, I investigated the applicability for detecting and segmenting brain metastases. I trained networks with increasing depth to improve the detection rate and introduced a border-pair-scheme to reduce oversegmentation. A constraint on the time for segmenting a complete brain scan required the utilization of fully convolutional networks which reduced the time from 90 minutes to 40 seconds. Despite some present noise and label errors in the 490 full brain MRI scans, the final network achieves a true positive rate of 82.8% and 0.05 misclassifications ...
International audienceBrain tumor segmentation through MRI images analysis is one of the most challe...
Nowadays health is an essential factor in human life, among all the health complexities brain tumors...
State-of-the-art convolutional neural network architectures and their application to brain tumor seg...
Recently, several efforts have been made to develop the deep learning (DL) algorithms for automatic ...
Deep learning-based automated detection and segmentation of brain metastases in malignant melanoma y...
Manual analysis of brain tumors magnetic resonance images is usually accompanied by some problem. Se...
Accurate and automatic brain metastases target delineation is a key step for efficient and effective...
Analysing brain tumour with no human intervention is considered as a vital area of research. However...
In this study, brain tumor substructures are segmented using 2D fully convolutional neural networks....
Primary tumors have a high likelihood of developing metastases in the liver, and early detection of ...
Magnetic Resonance Imaging (MRI) is used in medical imaging for detection of tumours and visualize b...
In this report a fully Convolution Neural Network (CNN) architecture is used to segment multi-modal ...
The classification and segmentation of images have received a lot of attention. For this, a variety ...
Nowadays the leading techniques for diagnosing and revealing the different diseases are image proces...
In their most aggressive form, the mortality rate of gliomas is high. Accurate segmentation is impor...
International audienceBrain tumor segmentation through MRI images analysis is one of the most challe...
Nowadays health is an essential factor in human life, among all the health complexities brain tumors...
State-of-the-art convolutional neural network architectures and their application to brain tumor seg...
Recently, several efforts have been made to develop the deep learning (DL) algorithms for automatic ...
Deep learning-based automated detection and segmentation of brain metastases in malignant melanoma y...
Manual analysis of brain tumors magnetic resonance images is usually accompanied by some problem. Se...
Accurate and automatic brain metastases target delineation is a key step for efficient and effective...
Analysing brain tumour with no human intervention is considered as a vital area of research. However...
In this study, brain tumor substructures are segmented using 2D fully convolutional neural networks....
Primary tumors have a high likelihood of developing metastases in the liver, and early detection of ...
Magnetic Resonance Imaging (MRI) is used in medical imaging for detection of tumours and visualize b...
In this report a fully Convolution Neural Network (CNN) architecture is used to segment multi-modal ...
The classification and segmentation of images have received a lot of attention. For this, a variety ...
Nowadays the leading techniques for diagnosing and revealing the different diseases are image proces...
In their most aggressive form, the mortality rate of gliomas is high. Accurate segmentation is impor...
International audienceBrain tumor segmentation through MRI images analysis is one of the most challe...
Nowadays health is an essential factor in human life, among all the health complexities brain tumors...
State-of-the-art convolutional neural network architectures and their application to brain tumor seg...