Literature DB >> 15754987

A study on several machine-learning methods for classification of malignant and benign clustered microcalcifications.

Liyang Wei1, Yongyi Yang, Robert M Nishikawa, Yulei Jiang.   

Abstract

In this paper, we investigate several state-of-the-art machine-learning methods for automated classification of clustered microcalcifications (MCs). The classifier is part of a computer-aided diagnosis (CADx) scheme that is aimed to assisting radiologists in making more accurate diagnoses of breast cancer on mammograms. The methods we considered were: support vector machine (SVM), kernel Fisher discriminant (KFD), relevance vector machine (RVM), and committee machines (ensemble averaging and AdaBoost), of which most have been developed recently in statistical learning theory. We formulated differentiation of malignant from benign MCs as a supervised learning problem, and applied these learning methods to develop the classification algorithm. As input, these methods used image features automatically extracted from clustered MCs. We tested these methods using a database of 697 clinical mammograms from 386 cases, which included a wide spectrum of difficult-to-classify cases. We analyzed the distribution of the cases in this database using the multidimensional scaling technique, which reveals that in the feature space the malignant cases are not trivially separable from the benign ones. We used receiver operating characteristic (ROC) analysis to evaluate and to compare classification performance by the different methods. In addition, we also investigated how to combine information from multiple-view mammograms of the same case so that the best decision can be made by a classifier. In our experiments, the kernel-based methods (i.e., SVM, KFD, and RVM) yielded the best performance (Az = 0.85, SVM), significantly outperforming a well-established, clinically-proven CADx approach that is based on neural network (Az = 0.80).

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Year:  2005        PMID: 15754987     DOI: 10.1109/tmi.2004.842457

Source DB:  PubMed          Journal:  IEEE Trans Med Imaging        ISSN: 0278-0062            Impact factor:   10.048


  48 in total

1.  Retrieval boosted computer-aided diagnosis of clustered microcalcifications for breast cancer.

Authors:  Hao Jing; Yongyi Yang; Robert M Nishikawa
Journal:  Med Phys       Date:  2012-02       Impact factor: 4.071

2.  A swarm optimized neural network system for classification of microcalcification in mammograms.

Authors:  J Dheeba; S Tamil Selvi
Journal:  J Med Syst       Date:  2011-09-23       Impact factor: 4.460

3.  Automated detection of coarctation of aorta in neonates from two-dimensional echocardiograms.

Authors:  Franklin Pereira; Alejandra Bueno; Andrea Rodriguez; Douglas Perrin; Gerald Marx; Michael Cardinale; Ivan Salgo; Pedro Del Nido
Journal:  J Med Imaging (Bellingham)       Date:  2017-01-24

4.  Automated regional registration and characterization of corresponding microcalcification clusters on temporal pairs of mammograms for interval change analysis.

Authors:  Peter Filev; Lubomir Hadjiiski; Heang-Ping Chan; Berkman Sahiner; Jun Ge; Mark A Helvie; Marilyn Roubidoux; Chuan Zhou
Journal:  Med Phys       Date:  2008-12       Impact factor: 4.071

5.  Global detection approach for clustered microcalcifications in mammograms using a deep learning network.

Authors:  Juan Wang; Robert M Nishikawa; Yongyi Yang
Journal:  J Med Imaging (Bellingham)       Date:  2017-04-22

6.  Multi-Objective-Based Radiomic Feature Selection for Lesion Malignancy Classification.

Authors:  Zhiguo Zhou; Shulong Li; Genggeng Qin; Michael Folkert; Steve Jiang; Jing Wang
Journal:  IEEE J Biomed Health Inform       Date:  2019-02-28       Impact factor: 5.772

7.  Machine learning for predicting the response of breast cancer to neoadjuvant chemotherapy.

Authors:  Subramani Mani; Yukun Chen; Xia Li; Lori Arlinghaus; A Bapsi Chakravarthy; Vandana Abramson; Sandeep R Bhave; Mia A Levy; Hua Xu; Thomas E Yankeelov
Journal:  J Am Med Inform Assoc       Date:  2013-04-24       Impact factor: 4.497

8.  Analysis of perceived similarity between pairs of microcalcification clusters in mammograms.

Authors:  Juan Wang; Hao Jing; Miles N Wernick; Robert M Nishikawa; Yongyi Yang
Journal:  Med Phys       Date:  2014-05       Impact factor: 4.071

9.  Impact of Machine Learning With Multiparametric Magnetic Resonance Imaging of the Breast for Early Prediction of Response to Neoadjuvant Chemotherapy and Survival Outcomes in Breast Cancer Patients.

Authors:  Amirhessam Tahmassebi; Georg J Wengert; Thomas H Helbich; Zsuzsanna Bago-Horvath; Sousan Alaei; Rupert Bartsch; Peter Dubsky; Pascal Baltzer; Paola Clauser; Panagiotis Kapetas; Elizabeth A Morris; Anke Meyer-Baese; Katja Pinker
Journal:  Invest Radiol       Date:  2019-02       Impact factor: 6.016

10.  AdaBoost-based multiple SVM-RFE for classification of mammograms in DDSM.

Authors:  Sejong Yoon; Saejoon Kim
Journal:  BMC Med Inform Decis Mak       Date:  2009-11-03       Impact factor: 2.796

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