Assessment of mammographic lesions characterization with CAD (Computer-Aided Diagnosis) systems

Computer-Aided Systems can assist differentiation and classification of breast benign and malignant lesions enhanced the performance of breast cancer diagnosis. Breast lesions are strongly correlated with their shape: benign lesions present regular shape, although malignant lesions tend to present i...

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Bibliographic Details
Main Authors: Ana Catarina Perre, Luís Freire
Format: Article
Language:English
Published: Escola Superior de Tecnologia da Saúde de Lisboa 2015-12-01
Series:Saúde & Tecnologia
Subjects:
Online Access:https://web.estesl.ipl.pt/ojs/index.php/ST/article/view/984
Description
Summary:Computer-Aided Systems can assist differentiation and classification of breast benign and malignant lesions enhanced the performance of breast cancer diagnosis. Breast lesions are strongly correlated with their shape: benign lesions present regular shape, although malignant lesions tend to present irregular shape. Therefore, the use of quantitative measures, such as fractal dimension (FD), can help characterizing the smoothness or the roughness of lesion shape. The main purpose of this work is to assess if the concomitant use of FD measure (contour FD) with a proposed FD measure (area FD) can improve the classification of lesions according to the BIRADS (Breast Imaging Reporting and Data System) scale and lesion type. Both FD measures were calculated through the box-counting method, directly from manually segmented lesions, and after applying a region growing/erosion algorithm. The last FD measure is based on the normalized difference between the FD measures before and after application of region growing/erosion algorithm. Results indicate that the contour FD is a useful measure in the differentiation of lesions according to the BIRADS scale and type, although, in some situations, errors occur. The combined use of contour FD with the four proposed FD measures can improve the classification of lesions.
ISSN:1646-9704