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Independent component analysis and neural networks applied for classification of malignant, benign and normal tissue in digital mammography.

作者信息

Campos L F A, Silva A C, Barros A K

机构信息

Laboratory for Biological Information Processing, University Federal of Maranhão, São Luis, Brazil.

出版信息

Methods Inf Med. 2007;46(2):212-5.

PMID:17347758
Abstract

OBJECTIVES

This paper proposes an efficient method for the discrimination and classification of mammograms with benign, malignant and normal tissues.

METHODS

The proposed method consists of selection of tissues, feature extraction using independent component analysis, feature selection by the forward-selection technique and classification of the tissue by the multilayer perceptron.

RESULTS

The method is tested for a mammogram set of the MIAS database, resulting in a 97.83% success rate, with 98.0% specificity and 97.5% sensitivity.

CONCLUSION

The proposed method showed a good classification rate. The method will be useful for early cancer diagnosis.

摘要

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