| Literature DB >> 26427894 |
Francesco Bertè1, Giuseppe Lamponi1, Placido Bramanti1, Rocco S Calabrò2.
Abstract
Brain computed tomography (CT) is useful diagnostic tool for the evaluation of several neurological disorders due to its accuracy, reliability, safety and wide availability. In this field, a potentially interesting research topic is the automatic segmentation and recognition of medical regions of interest (ROIs). Herein, we propose a novel automated method, based on the use of the active appearance model (AAM) for the segmentation of brain matter in CT images to assist radiologists in the evaluation of the images. The method described, that was applied to 54 CT images coming from a sample of outpatients affected by cognitive impairment, enabled us to obtain the generation of a model overlapping with the original image with quite good precision. Since CT neuroimaging is in widespread use for detecting neurological disease, including neurodegenerative conditions, the development of automated tools enabling technicians and physicians to reduce working time and reach a more accurate diagnosis is needed.Entities:
Keywords: Segmentation; active appearance model; cerebral ventricles; clinical decision-making; medical imaging
Mesh:
Year: 2015 PMID: 26427894 PMCID: PMC4757225 DOI: 10.1177/1971400915609346
Source DB: PubMed Journal: Neuroradiol J ISSN: 1971-4009