Literature DB >> 15871086

[Self-organizing neural networks for automatic detection and classification of contrast (media) enhancement of lesions in dynamic MR-mammography].

T W Vomweg1, A Teifke, H U Kauczor, T Achenbach, O Rieker, W G Schreiber, K R Heitmann, T Beier, M Thelen.   

Abstract

PURPOSE: Investigation and statistical evaluation of "Self-Organizing Maps," a special type of neural networks in the field of artificial intelligence, classifying contrast enhancing lesions in dynamic MR-mammography.
MATERIAL AND METHODS: 176 investigations with proven histology after core biopsy or operation were randomly divided into two groups. Several Self-Organizing Maps were trained by investigations of the first group to detect and classify contrast enhancing lesions in dynamic MR-mammography. Each single pixel's signal/time curve of all patients within the second group was analyzed by the Self-Organizing Maps. The likelihood of malignancy was visualized by color overlays on the MR-images. At last assessment of contrast-enhancing lesions by each different network was rated visually and evaluated statistically.
RESULTS: A well balanced neural network achieved a sensitivity of 90.5 % and a specificity of 72.2 % in predicting malignancy of 88 enhancing lesions. Detailed analysis of false-positive results revealed that every second fibroadenoma showed a "typical malignant" signal/time curve without any chance to differentiate between fibroadenomas and malignant tissue regarding contrast enhancement alone; but this special group of lesions was represented by a well-defined area of the Self-Organizing Map. DISCUSSION: Self-Organizing Maps are capable of classifying a dynamic signal/time curve as "typical benign" or "typical malignant." Therefore, they can be used as second opinion. In view of the now known localization of fibroadenomas enhancing like malignant tumors at the Self-Organizing Map, these lesions could be passed to further analysis by additional post-processing elements (e.g., based on T2-weighted series or morphology analysis) in the future.

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Year:  2005        PMID: 15871086     DOI: 10.1055/s-2005-858090

Source DB:  PubMed          Journal:  Rofo        ISSN: 1438-9010


  4 in total

1.  Cluster analysis of signal-intensity time course in dynamic breast MRI: does unsupervised vector quantization help to evaluate small mammographic lesions?

Authors:  Gerda Leinsinger; Thomas Schlossbauer; Michael Scherr; Oliver Lange; Maximilian Reiser; Axel Wismüller
Journal:  Eur Radiol       Date:  2006-01-18       Impact factor: 5.315

2.  Classification of small contrast enhancing breast lesions in dynamic magnetic resonance imaging using a combination of morphological criteria and dynamic analysis based on unsupervised vector-quantization.

Authors:  Thomas Schlossbauer; Gerda Leinsinger; Axel Wismuller; Oliver Lange; Michael Scherr; Anke Meyer-Baese; Maximilian Reiser
Journal:  Invest Radiol       Date:  2008-01       Impact factor: 6.016

Review 3.  [Quantitative parametric analysis of contrast-enhanced lesions in dynamic MR mammography].

Authors:  E A M Hauth; H Jaeger; S Maderwald; A Mühler; R Kimmig; M Forsting
Journal:  Radiologe       Date:  2008-06       Impact factor: 0.635

4.  Isolated otitis media with effusion in adults: is biopsy of the postnasal space required?

Authors:  Amir H Sadr; K A Sanati; M Prior
Journal:  Eur Arch Otorhinolaryngol       Date:  2009-07-16       Impact factor: 2.503

  4 in total

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