The paper aims at improving the support of medical researchers in the context of in-vivo cancer imaging. Morphological and functional parameters obtained by dynamic contrast-enhanced MRI (DCE-MRI) techniques are analyzed, which aim at investigating the development of tumor microvessels. The main contribution consists in proposing a machine learning methodology to segment automatically these MRI data, by isolating tumor areas with different meaning, in a histological sense. METHODS: The proposed approach is based on a three-step procedure: i) robust feature extraction from raw time-intensity curves, ii) voxel segmentation, and iii) voxel classification based on a learning-by-example approach. In the first step, few robust features that comp...
The combination of Dynamic Contrast Enhanced (DCE) images with Diffusion Tensor Images (DTI) has sho...
Nattkemper TW, Arnrich B, Lichte O, et al. Evaluation of radiological features for breast tumour cla...
As the second most leading cause of cancer death in women, breast cancer has attracted wide attentio...
The application of machine learning techniquesto open problems in different medical researchfields a...
The paper proposes a learning approach to support, medical researchers in the context of in-vivo can...
A novel approach is introduced for clustering tumor regions with similar signal-time series measured...
Typically, prostate evaluation is done by using different imaging sequences of magnetic resonance im...
This master thesis is a part of a project at the MR group at the department of physics at NTNU. The ...
Dynamic contrast-enhanced MRI (DCE-MRI) is a well established, high-performance, imaging modality fo...
Twellmann T, Saalbach A, Müller C, Nattkemper TW, Wismuller A. Detection of suspicious lesions in dy...
International audienceWe propose a new computer aided detection framework for tumours acquired on DC...
We present a novel method for the segmentation of enhancing breast tissue, suspicious of malignancy,...
Nattkemper TW, Wismüller A. Tumour feature analysis with unsupervised machine learning. Medical Imag...
Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) is increasingly being used for the de...
We performed a systematic review of several pattern analysis approaches for classifying breast lesio...
The combination of Dynamic Contrast Enhanced (DCE) images with Diffusion Tensor Images (DTI) has sho...
Nattkemper TW, Arnrich B, Lichte O, et al. Evaluation of radiological features for breast tumour cla...
As the second most leading cause of cancer death in women, breast cancer has attracted wide attentio...
The application of machine learning techniquesto open problems in different medical researchfields a...
The paper proposes a learning approach to support, medical researchers in the context of in-vivo can...
A novel approach is introduced for clustering tumor regions with similar signal-time series measured...
Typically, prostate evaluation is done by using different imaging sequences of magnetic resonance im...
This master thesis is a part of a project at the MR group at the department of physics at NTNU. The ...
Dynamic contrast-enhanced MRI (DCE-MRI) is a well established, high-performance, imaging modality fo...
Twellmann T, Saalbach A, Müller C, Nattkemper TW, Wismuller A. Detection of suspicious lesions in dy...
International audienceWe propose a new computer aided detection framework for tumours acquired on DC...
We present a novel method for the segmentation of enhancing breast tissue, suspicious of malignancy,...
Nattkemper TW, Wismüller A. Tumour feature analysis with unsupervised machine learning. Medical Imag...
Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) is increasingly being used for the de...
We performed a systematic review of several pattern analysis approaches for classifying breast lesio...
The combination of Dynamic Contrast Enhanced (DCE) images with Diffusion Tensor Images (DTI) has sho...
Nattkemper TW, Arnrich B, Lichte O, et al. Evaluation of radiological features for breast tumour cla...
As the second most leading cause of cancer death in women, breast cancer has attracted wide attentio...