Multi-modal medical image segmentation is a crucial task in oncology that enables the precise localization and quantification of tumors. The aim of this work is to present a meta-analysis of the use of multi-modal medical Transformers for medical image segmentation in oncology, specifically focusing on multi-parametric MR brain tumor segmentation (BraTS2021), and head and neck tumor segmentation using PET-CT images (HECKTOR2021). The multi-modal medical Transformer architectures presented in this work exploit the idea of modality interaction schemes based on visio-linguistic representations: (i) single-stream, where modalities are jointly processed by one Transformer encoder, and (ii) multiple-stream, where the inputs are encoded separately...
Pour caractériser les lésions hépatiques, les radiologues s’appuient sur plusieurs images acquises s...
We propose a modality invariant method to obtain high quality semantic object segmentation of human ...
Transformer, as a new generation of neural architecture, has demonstrated remarkable performance in ...
Multi-modal medical image segmentation is a crucial task in oncology that enables the precise locali...
Cancer is one of the leading causes of death worldwide, and head and neck (H&N) cancer is amongst th...
Over the past decade, convolutional neural networks (CNN) have shown very competitive performance in...
Segmenting brain tumors in MR modalities is an important step in treatment planning. Recently, the m...
Radiotherapy (RT) combined with cetuximab is the standard treatment for patients with inoperable hea...
Background: Deep learning methods have shown great potential in processing multi-modal Magnetic Reso...
An important aim of research in medical imaging is the development of computer aided diagnosis (CAD)...
Brain tumor segmentation (BTS) in magnetic resonance image (MRI) is crucial for brain tumor diagnosi...
A brain tumor is an abnormal cell population that occurs in the brain. Identifying the abnormal regi...
Multi-modal three-dimensional (3-D) image segmentation is used in many medical applications, such as...
We propose a novel transformer, capable of segmenting medical images of varying modalities. Challeng...
Medical image segmentation techniques are vital to medical image processing and analysis. Considerin...
Pour caractériser les lésions hépatiques, les radiologues s’appuient sur plusieurs images acquises s...
We propose a modality invariant method to obtain high quality semantic object segmentation of human ...
Transformer, as a new generation of neural architecture, has demonstrated remarkable performance in ...
Multi-modal medical image segmentation is a crucial task in oncology that enables the precise locali...
Cancer is one of the leading causes of death worldwide, and head and neck (H&N) cancer is amongst th...
Over the past decade, convolutional neural networks (CNN) have shown very competitive performance in...
Segmenting brain tumors in MR modalities is an important step in treatment planning. Recently, the m...
Radiotherapy (RT) combined with cetuximab is the standard treatment for patients with inoperable hea...
Background: Deep learning methods have shown great potential in processing multi-modal Magnetic Reso...
An important aim of research in medical imaging is the development of computer aided diagnosis (CAD)...
Brain tumor segmentation (BTS) in magnetic resonance image (MRI) is crucial for brain tumor diagnosi...
A brain tumor is an abnormal cell population that occurs in the brain. Identifying the abnormal regi...
Multi-modal three-dimensional (3-D) image segmentation is used in many medical applications, such as...
We propose a novel transformer, capable of segmenting medical images of varying modalities. Challeng...
Medical image segmentation techniques are vital to medical image processing and analysis. Considerin...
Pour caractériser les lésions hépatiques, les radiologues s’appuient sur plusieurs images acquises s...
We propose a modality invariant method to obtain high quality semantic object segmentation of human ...
Transformer, as a new generation of neural architecture, has demonstrated remarkable performance in ...