Literature DB >> 9821520

Evolving artificial neural networks for screening features from mammograms.

D B Fogel1, E C Wasson, E M Boughton, V W Porto.   

Abstract

Disagreement or inconsistencies in mammographic interpretation motivates utilizing computerized pattern recognition algorithms to aid the assessment of radiographic features. We have studied the potential for using artificial neural networks (ANNs) to analyze interpreted radiographic features from film screen mammograms. Attention was given to 216 cases (mammogram series) that presented suspicious characteristics. The domain expert (Wasson) quantified up to 12 radiographic features for each case based on guidelines from previous literature. Patient age was also included. The existence or absence of malignancy was confirmed in each case via open surgical biopsy (111 malignant, 105 benign). ANNs of various complexity were trained via evolutionary programming to indicate whether or not a malignancy was present given a vector of scored input features in a statistical cross validation procedure. For suspicious masses, the best evolved ANNs generated a mean area under the receiver operating characteristic curve (AZ) of 0.9196 +/- 0.0040 (1 S.E.), with a mean specificity of 0.6269 +/- 0.0272 at 0.95 sensitivity. Results when microcalcifications were included were not quite as good (AZ = 0.8464), however, ANNs with only two hidden nodes performed as well as more complex ANNs and better than ANNs with only one hidden node. The performance of the evolved ANNs was comparable to prior literature, but with an order of magnitude less complexity. The success of small ANNs in diagnosing breast cancer offers the promise that suitable explanations for the ANN's behavior can be induced, leading to a greater acceptance by physicians.

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Year:  1998        PMID: 9821520     DOI: 10.1016/s0933-3657(98)00040-2

Source DB:  PubMed          Journal:  Artif Intell Med        ISSN: 0933-3657            Impact factor:   5.326


  4 in total

1.  New statistical learning theory paradigms adapted to breast cancer diagnosis/classification using image and non-image clinical data.

Authors:  Walker H Land; John J Heine; Tom Raway; Alda Mizaku; Nataliya Kovalchuk; Jack Y Yang; Mary Qu Yang
Journal:  Int J Funct Inform Personal Med       Date:  2008-01

2.  Detection of microcalcification clusters using Hessian matrix and foveal segmentation method on multiscale analysis in digital mammograms.

Authors:  Balakumaran Thangaraju; Ila Vennila; Gowrishankar Chinnasamy
Journal:  J Digit Imaging       Date:  2012-10       Impact factor: 4.056

3.  Cloud-Based Breast Cancer Prediction Empowered with Soft Computing Approaches.

Authors:  Farrukh Khan; Muhammad Adnan Khan; Sagheer Abbas; Atifa Athar; Shahan Yamin Siddiqui; Abdul Hannan Khan; Muhammad Anwaar Saeed; Muhammad Hussain
Journal:  J Healthc Eng       Date:  2020-05-18       Impact factor: 2.682

4.  Convolutional neural network for breast cancer diagnosis using diffuse optical tomography.

Authors:  Qiwen Xu; Xin Wang; Huabei Jiang
Journal:  Vis Comput Ind Biomed Art       Date:  2019-05-08
  4 in total

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