Acessibilidade / Reportar erro

Automatic 2D segmentation of airways in thorax computed tomography images

INTRODUCTION: Much of the world population is affected by pulmonary diseases, such as the bronchial asthma, bronchitis and bronchiectasis. The bronchial diagnosis is based on the airways state. In this sense, the automatic segmentation of the airways in Computed Tomography (CT) scans is a critical step in the aid to diagnosis of these diseases. METHODS: This paper evaluates algorithms for airway automatic segmentation, using Neural Network Multilayer Perceptron (MLP) and Lung Densities Analysis (LDA) for detecting airways, along with Region Growing (RG), Active Contour Method (ACM) Balloon and Topology Adaptive to segment them. RESULTS: We obtained results in three stages: comparative analysis of the detection algorithms MLP and LDA, with a gold standard acquired by three physicians with expertise in CT imaging of the chest; comparative analysis of segmentation algorithms ACM Balloon, ACM Topology Adaptive, MLP and RG; and evaluation of possible combinations between segmentation and detection algorithms, resulting in the complete method for automatic segmentation of the airways in 2D. CONCLUSION: The low incidence of false negative and the significant reduction of false positive, results in similarity coefficient and sensitivity exceeding 91% and 87% respectively, for a combination of algorithms with satisfactory segmentation quality.

Airways segmentation; CT; Active contours method; Lung densities analysis


SBEB - Sociedade Brasileira de Engenharia Biomédica Sociedade Brasileira de Engenharia Biomédica, Centro de Tecnologia, , bloco H, sala 327 - Cidade Universitária, 21941-914 Rio de Janeiro - RJ , Tel./Fax.:: (55 21) 2562-8591 - Rio de Janeiro - RJ - Brazil
E-mail: rbeb@rbeb.org.br