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Journal ArticleDOI

An automatic method to discriminate malignant masses from normal tissue in digital mammograms.

TLDR
A number of features were defined that are related to image characteristics that radiologists use to discriminate real lesions from normal tissue that were successful in discriminating tumours from false positive detections in mammography.
Abstract
Specificity levels of automatic mass detection methods in mammography are generally rather low, because suspicious looking normal tissue is often hard to discriminate from real malignant masses. In this work a number of features were defined that are related to image characteristics that radiologists use to discriminate real lesions from normal tissue. An artificial neural network was used to map the computed features to a measure of suspiciousness for each region that was found suspicious by a mass detection method. Two data sets were used to test the method. The first set of 72 malignant cases (132 films) was a consecutive series taken from the Nijmegen screening programme, 208 normal films were added to improve the estimation of the specificity of the method. The second set was part of the new DDSM data set from the University of South Florida. A total of 193 cases (772 films) with 372 annotated malignancies was used. The measure of suspiciousness that was computed using the image characteristics was successful in discriminating tumours from false positive detections. Approximately 75% of all cancers were detected in at least one view at a specificity level of 0.1 false positive per image.

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Citations
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Journal ArticleDOI

Image processing with neural networks–a review

TL;DR: The various applications of neural networks in image processing are categorised into a novel two-dimensional taxonomy for image processing algorithms and their specific conditions are discussed in detail.
Journal ArticleDOI

Large scale deep learning for computer aided detection of mammographic lesions

TL;DR: A head‐to‐head comparison between a state‐of‐the art in mammography CAD system, relying on a manually designed feature set and a Convolutional Neural Network (CNN), aiming for a system that can ultimately read mammograms independently.
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

Deep learning for image-based cancer detection and diagnosis − A survey

TL;DR: The survey provides an overview on deep learning and the popular architectures used for cancer detection and diagnosis and presents four popular deep learning architectures, including convolutional neural networks, fully Convolutional networks, auto-encoders, and deep belief networks in the survey.
Journal ArticleDOI

Quantifying tumour heterogeneity with CT.

TL;DR: Emerging studies show that CT texture analysis has the potential to be a useful adjunct in clinical oncologic imaging, providing important information about tumour characterization, prognosis and treatment prediction and response.
References
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Journal ArticleDOI

Deformable models in medical image analysis: a survey

TL;DR: The rapidly expanding body of work on the development and application of deformable models to problems of fundamental importance in medical image analysis, including segmentation, shape representation, matching and motion tracking is reviewed.
Journal ArticleDOI

Analysis of cancers missed at screening mammography.

R E Bird, +2 more
- 01 Sep 1992 - 
TL;DR: Analysis of 320 cancers found in a screened population between August 1985 and May 1990 revealed 77 cancers that were "missed" at screening mammography, which occurred in women with denser breasts, were less likely to demonstrate malignant microcalcifications, and were more likely to demonstrating a developing opacity as an indication of cancer.
Book ChapterDOI

Current Status of the Digital Database for Screening Mammography

TL;DR: The Digital Database for Screening Mammography is a resource for use by researchers investigating mammogram image analysis, focused on the context of image analysis to aid in screening for breast cancer.
Journal ArticleDOI

A discrete dynamic contour model

TL;DR: A discrete dynamic model for defining contours in 2-D images is developed and the final shape of the model is a reproducible approximation of the desired contour.
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