International audienceBuilding an accurate training database is challenging in supervised classification. For instance, in medical imaging, radiologists often delineate malignant and benign tissues without access to the histological ground truth, leading to uncertain data sets. This paper addresses the pattern classification problem arising when available target data include some uncertainty information. Target data considered here are both qualitative (a class label) or quantitative (an estimation of the posterior probability). In this context, usual discriminative methods, such as the support vector machine (SVM), fail either to learn a robust classifier or to predict accurate probability estimates. We generalize the regular SVM by introd...
Abstract Background Following visible successes on a wide range of predictive tasks, machine learnin...
<div><p>Clinical trials increasingly employ medical imaging data in conjunction with supervised clas...
Motivated by improvements of diseases and cancers depiction that will be facilitated by an ability t...
International audienceBuilding an accurate training database is challenging in supervised classifica...
Robust detection of prostatic cancer is a challenge due to the multitude of variants and their repre...
Robust detection of prostatic cancer is a challenge due to the multitude of variants and their repre...
International audienceRadiomics refers to the quantification of images by the extraction and analysi...
We introduce machine learning techniques, more specifically kernel methods, and show how they can be...
International audienceThis paper aims at presenting results of a computer-aided diagnostic (CAD) sys...
In medical applications such as recognizing the type of a tumor as Malignant or Benign, a wrong diag...
International audienceWe propose a new computer-aided detection scheme for prostate cancer screening...
International audienceThis paper addresses the pattern classification problem arising when available...
Kernel methods are a broad class of algorithms that are applied in a host of scientific computing fi...
Clinical trials increasingly employ medical imaging data in conjunction with supervised classifiers,...
Abstract Background Following visible successes on a wide range of predictive tasks, machine learnin...
<div><p>Clinical trials increasingly employ medical imaging data in conjunction with supervised clas...
Motivated by improvements of diseases and cancers depiction that will be facilitated by an ability t...
International audienceBuilding an accurate training database is challenging in supervised classifica...
Robust detection of prostatic cancer is a challenge due to the multitude of variants and their repre...
Robust detection of prostatic cancer is a challenge due to the multitude of variants and their repre...
International audienceRadiomics refers to the quantification of images by the extraction and analysi...
We introduce machine learning techniques, more specifically kernel methods, and show how they can be...
International audienceThis paper aims at presenting results of a computer-aided diagnostic (CAD) sys...
In medical applications such as recognizing the type of a tumor as Malignant or Benign, a wrong diag...
International audienceWe propose a new computer-aided detection scheme for prostate cancer screening...
International audienceThis paper addresses the pattern classification problem arising when available...
Kernel methods are a broad class of algorithms that are applied in a host of scientific computing fi...
Clinical trials increasingly employ medical imaging data in conjunction with supervised classifiers,...
Abstract Background Following visible successes on a wide range of predictive tasks, machine learnin...
<div><p>Clinical trials increasingly employ medical imaging data in conjunction with supervised clas...
Motivated by improvements of diseases and cancers depiction that will be facilitated by an ability t...