Total variation denoisingIn signal processing, particularly , total variation denoising, also known as total variation regularization or total variation filtering, is a noise removal process (filter). It is based on the principle that signals with excessive and possibly spurious detail have high total variation, that is, the integral of the absolute is high. According to this principle, reducing the total variation of the signal—subject to it being a close match to the original signal—removes unwanted detail whilst preserving important details such as .
Imagerie par résonance magnétiqueL'imagerie par résonance magnétique (IRM) est une technique d' permettant d'obtenir des vues en deux ou en trois dimensions de l'intérieur du corps de façon non invasive avec une résolution en contraste relativement élevée. L'IRM repose sur le principe de la résonance magnétique nucléaire (RMN) qui utilise les propriétés quantiques des noyaux atomiques pour la spectroscopie en analyse chimique. L'IRM nécessite un champ magnétique puissant et stable produit par un aimant supraconducteur qui crée une magnétisation des tissus par alignement des moments magnétiques de spin.
Computed tomography of the thyroidIn CT scan of the thyroid, focal and diffuse thyroid abnormalities are commonly encountered. These findings can often lead to a diagnostic dilemma, as the CT reflects nonspecific appearances. Ultrasound (US) examination has a superior spatial resolution and is considered the modality of choice for thyroid evaluation. Nevertheless, CT detects incidental thyroid nodules (ITNs) and plays an important role in the evaluation of thyroid cancer. This pictorial review covers a wide spectrum of common and uncommon, incidental and non-incidental thyroid findings from CT scans.
Feature (computer vision)In computer vision and , a feature is a piece of information about the content of an image; typically about whether a certain region of the image has certain properties. Features may be specific structures in the image such as points, edges or objects. Features may also be the result of a general neighborhood operation or feature detection applied to the image. Other examples of features are related to motion in image sequences, or to shapes defined in terms of curves or boundaries between different image regions.
Computational anatomyComputational anatomy is an interdisciplinary field of biology focused on quantitative investigation and modelling of anatomical shapes variability. It involves the development and application of mathematical, statistical and data-analytical methods for modelling and simulation of biological structures. The field is broadly defined and includes foundations in anatomy, applied mathematics and pure mathematics, machine learning, computational mechanics, computational science, biological imaging, neuroscience, physics, probability, and statistics; it also has strong connections with fluid mechanics and geometric mechanics.
Medical image computingMedical image computing (MIC) is an interdisciplinary field at the intersection of computer science, information engineering, electrical engineering, physics, mathematics and medicine. This field develops computational and mathematical methods for solving problems pertaining to medical images and their use for biomedical research and clinical care. The main goal of MIC is to extract clinically relevant information or knowledge from medical images.
Méthode de Monte-Carlo par chaînes de MarkovLes méthodes de Monte-Carlo par chaînes de Markov, ou méthodes MCMC pour Markov chain Monte Carlo en anglais, sont une classe de méthodes d'échantillonnage à partir de distributions de probabilité. Ces méthodes de Monte-Carlo se basent sur le parcours de chaînes de Markov qui ont pour lois stationnaires les distributions à échantillonner. Certaines méthodes utilisent des marches aléatoires sur les chaînes de Markov (algorithme de Metropolis-Hastings, échantillonnage de Gibbs), alors que d'autres algorithmes, plus complexes, introduisent des contraintes sur les parcours pour essayer d'accélérer la convergence (Monte Carlo Hybride, Surrelaxation successive).
Similarity measureIn statistics and related fields, a similarity measure or similarity function or similarity metric is a real-valued function that quantifies the similarity between two objects. Although no single definition of a similarity exists, usually such measures are in some sense the inverse of distance metrics: they take on large values for similar objects and either zero or a negative value for very dissimilar objects. Though, in more broad terms, a similarity function may also satisfy metric axioms.
Magnetic resonance angiographyMagnetic resonance angiography (MRA) is a group of techniques based on magnetic resonance imaging (MRI) to image blood vessels. Magnetic resonance angiography is used to generate images of arteries (and less commonly veins) in order to evaluate them for stenosis (abnormal narrowing), occlusions, aneurysms (vessel wall dilatations, at risk of rupture) or other abnormalities. MRA is often used to evaluate the arteries of the neck and brain, the thoracic and abdominal aorta, the renal arteries, and the legs (the latter exam is often referred to as a "run-off").
Champ aléatoire conditionnelLes champs aléatoires conditionnels (conditional random fields ou CRFs) sont une classe de modèles statistiques utilisés en reconnaissance des formes et plus généralement en apprentissage statistique. Les CRFs permettent de prendre en compte l'interaction de variables « voisines ». Ils sont souvent utilisés pour des données séquentielles (langage naturel, séquences biologiques, vision par ordinateur). Les CRFs sont un exemple de réseau probabiliste non orienté.