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Using multiscale texture and density features for near-term breast cancer risk analysis.

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TLDR
The study results demonstrated a moderately high positive association between risk prediction scores generated by the quantitative multiscale mammographic image feature analysis and the actual risk of a woman having an image-detectable breast cancer in the next subsequent examinations.
Abstract
Purpose: To help improve efficacy of screening mammography by eventually establishing a new optimal personalized screening paradigm, the authors investigated the potential of using the quantitative multiscale texture and density feature analysis of digital mammograms to predict near-term breast cancer risk. Methods: The authors’ dataset includes digital mammograms acquired from 340 women. Among them, 141 were positive and 199 were negative/benign cases. The negative digital mammograms acquired from the “prior” screening examinations were used in the study. Based on the intensity value distributions, five subregions at different scales were extracted from each mammogram. Five groups of features, including density and texture features, were developed and calculated on every one of the subregions. Sequential forward floating selection was used to search for the effective combinations. Using the selected features, a support vector machine (SVM) was optimized using a tenfold validation method to predict the risk of each woman having image-detectable cancer in the next sequential mammography screening. The area under the receiver operating characteristic curve (AUC) was used as the performance assessment index. Results: From a total number of 765 features computed from multiscale subregions, an optimal feature set of 12 features was selected. Applying this feature set, a SVM classifier yielded performance of AUC = 0.729 ± 0.021. The positive predictive value was 0.657 (92 of 140) and the negative predictive value was 0.755 (151 of 200). Conclusions: The study results demonstrated a moderately high positive association between risk prediction scores generated by the quantitative multiscale mammographic image feature analysis and the actual risk of a woman having an image-detectable breast cancer in the next subsequent examinations.

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Citations
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Enhancing deep convolutional neural network scheme for breast cancer diagnosis with unlabeled data.

TL;DR: A graph based semi-supervised learning (SSL) scheme using deep convolutional neural network (CNN) for breast cancer diagnosis using data weighing, feature selection, dividing co-training data labeling, and CNN.
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Automatic feature learning using multichannel ROI based on deep structured algorithms for computerized lung cancer diagnosis

TL;DR: The study results showed the deep structured algorithms with automatically generated features can achieve desirable performance in lung nodule diagnosis with well-tuned parameters and large enough dataset, and the deep learning algorithms can have better performance than current popular CADx.
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Beyond breast density: a review on the advancing role of parenchymal texture analysis in breast cancer risk assessment

TL;DR: The advancing role of mammographic texture analysis is reviewed as a potential novel approach to characterize the breast parenchymal tissue to augment conventional density assessment in breast cancer risk estimation.
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Radiological images and machine learning: Trends, perspectives, and prospects.

TL;DR: The fundamental concepts behind various machine learning techniques and their applications in several radiological imaging areas are covered, such as medical image segmentation, brain function studies and neurological disease diagnosis, as well as computer-aided systems, image registration, and content-based image retrieval systems.
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Diagnostic Accuracy of Different Machine Learning Algorithms for Breast Cancer Risk Calculation: a Meta-Analysis

TL;DR: A meta-analysis of published research articles on diagnostic test accuracy of different machine learning algorithms for breast cancer risk calculation confirmed that the SVM algorithm is able to calculate Breast cancer risk with better accuracy value than other machinelearning algorithms.
References
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Journal ArticleDOI

LIBSVM: A library for support vector machines

TL;DR: Issues such as solving SVM optimization problems theoretical convergence multiclass classification probability estimates and parameter selection are discussed in detail.
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Textural Features for Image Classification

TL;DR: These results indicate that the easily computable textural features based on gray-tone spatial dependancies probably have a general applicability for a wide variety of image-classification applications.
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Cancer statistics, 2010

TL;DR: The American Cancer Society as mentioned in this paper estimated the number of new cancer cases and deaths expected in the United States in the current year and compiles the most recent data regarding cancer incidence, mortality, and survival based on incidence data from the National Cancer Institute, the Centers for Disease Control and Prevention, and the North American Association of Central Cancer Registries and mortality data from National Center for Health Statistics.
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Floating search methods in feature selection

TL;DR: Sequential search methods characterized by a dynamically changing number of features included or eliminated at each step, henceforth "floating" methods, are presented and are shown to give very good results and to be computationally more effective than the branch and bound method.
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