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Proceedings ArticleDOI

An adaptive threshold method for mass detection in mammographic images

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TLDR
An automatic scheme to perform both detection and segmentation of breast masses and achieves 100% sensitivity with average of 1.87 False Positive (FP) detections per image is presented.
Abstract
An early detection of abnormalities is the key point to improve the prognostic of breast Cancer Masses are among the most frequent abnormalities Their detection is however a very tedious and time-consuming task This paper presents an automatic scheme to perform both detection and segmentation of breast masses Firstly, the breast region is determined and extracted from the whole mammogram image Secondly, an adaptive algorithm is proposed to perform an accurate identification of the mass region Finally, a false positive reduction method is applied through a feature extraction method and classification using the advantages of multiresolution representations (curvelet and wavelet) The classification step is achieved using SVM and KNN classifiers to distinguish between normal and abnormal tissues The proposed method is tested on 118 images from mammographic images analysis society (MIAS) datasets The experimental results demonstrate that the proposed scheme achieves 100% sensitivity with average of 187 False Positive (FP) detections per image

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Citations
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Journal ArticleDOI

Breast Cancer Detection and Diagnosis Using Mammographic Data: Systematic Review

TL;DR: Although the DL methods show promising improvements in breast cancer diagnosis, there are still issues of data scarcity and computational cost, which have been overcome to a significant extent by applying data augmentation and improved computational power of DL algorithms.
Journal ArticleDOI

A semi-supervised fuzzy GrowCut algorithm to segment and classify regions of interest of mammographic images

TL;DR: A new semi-supervised segmentation algorithm based on the modification of the GrowCut algorithm to perform automatic mammographic image segmentation once a region of interest is selected by a specialist, being robust and as efficient as state of the art techniques.
Journal ArticleDOI

An adaptive semi-supervised Fuzzy GrowCut algorithm to segment masses of regions of interest of mammographic images

TL;DR: An adaptive semi-supervised version of the GrowCut algorithm is proposed, based on the modification of the automaton evolution rule by adding a Gaussian fuzzy membership function in order to model non-defined borders, which achieves better results for circumscribed, spiculated lesions and ill-defined lesions.
Journal ArticleDOI

Computer aided detection of mammographic mass using exact Gaussian–Hermite moments

TL;DR: A highly accurate CAD system based on extracting highly significant features using exact Gaussian–Hermite moments features for distinguishing between normal and abnormal lesions and the superiority of the moments features compared with the conventional methods is proposed.
Proceedings ArticleDOI

Random Walker with Fuzzy Initialization Applied to Segment Masses in Mammography Images

TL;DR: This work proposes an improvement on Random Walker algorithm to segment masses, by applying a fuzzy approach in the initialization stage, and shows that the proposed method obtained better segmentation results when compared with classical Random Walker, requiring lower user interaction.
References
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Journal ArticleDOI

Approaches for automated detection and classification of masses in mammograms

TL;DR: The methods for mass detection and classification for breast cancer diagnosis are discussed, and their advantages and drawbacks are compared.
Journal ArticleDOI

Markov random field for tumor detection in digital mammography

TL;DR: The algorithm was notably successful in the detection of minimal cancers manifested by masses, and an extensive study of the effects of the algorithm's parameters on its sensitivity and specificity was performed in order to optimize the method for a clinical, observer performance study.
Book ChapterDOI

Breast segmentation with pectoral muscle suppression on digital mammograms

TL;DR: This paper reviews most of the relevant work on breast tissue identification and abnormalities detection from 80's to nowadays and presents an automated technique for segmenting a digital mammogram into breast region and background, with pectoral muscle suppression.
Journal ArticleDOI

Automated detection of masses in mammograms by local adaptive thresholding

TL;DR: The proposed algorithm for detection of suspicious masses from mammographic images was tested on a database of 61 mammograms on which masses had previously been marked by experienced radiologists and showed a sensitivity of 95.91%.
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