Literature DB >> 14989489

Classification of prostatic carcinoma with artificial neural networks using comparative genomic hybridization and quantitative stereological data.

Torsten Mattfeldt1, Hans-Werner Gottfried, Hubertus Wolter, Volker Schmidt, Hans A Kestler, Johannes Mayer.   

Abstract

Staging of prostate cancer is a mainstay of treatment decisions and prognostication. In the present study, 50 pT2N0 and 28 pT3N0 prostatic adenocarcinomas were characterized by Gleason grading, comparative genomic hybridization (CGH), and histological texture analysis based on principles of stereology and stochastic geometry. The cases were classified by learning vector quantization and support vector machines. The quality of classification was tested by cross-validation. Correct prediction of stage from primary tumor data was possible with an accuracy of 74-80% from different data sets. The accuracy of prediction was similar when the Gleason score was used as input variable, when stereological data were used, or when a combination of CGH data and stereological data was used. The results of classification by learning vector quantization were slightly better than those by support vector machines. A method is briefly sketched by which training of neural networks can be adapted to unequal sample sizes per class. Progression from pT2 to pT3 prostate cancer is correlated with complex changes of the epithelial cells in terms of volume fraction, of surface area, and of second-order stereological properties. Genetically, this progression is accompanied by a significant global increase in losses and gains of DNA, and specifically by increased numerical aberrations on chromosome arms 1q, 7p, and 8p.

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Year:  2003        PMID: 14989489     DOI: 10.1078/0344-0338-00496

Source DB:  PubMed          Journal:  Pathol Res Pract        ISSN: 0344-0338            Impact factor:   3.250


  7 in total

1.  Stereological evaluation of the volume and volume fraction of newborns' brain compartment and brain in magnetic resonance images.

Authors:  Mehtap Nisari; Tolga Ertekin; Ozlem Ozçelik; Serife Cınar; Selim Doğanay; Niyazi Acer
Journal:  Surg Radiol Anat       Date:  2012-04-18       Impact factor: 1.246

2.  Volumetric evaluation of the relations among the cerebrum, cerebellum and brain stem in young subjects: a combination of stereology and magnetic resonance imaging.

Authors:  Nihat Ekinci; Niyazi Acer; Akcan Akkaya; Seref Sankur; Taner Kabadayi; Bünyamin Sahin
Journal:  Surg Radiol Anat       Date:  2008-05-14       Impact factor: 1.246

3.  Prediction of the axillary lymph node status in mammary cancer on the basis of clinicopathological data and flow cytometry.

Authors:  T Mattfeldt; H A Kestler; H P Sinn
Journal:  Med Biol Eng Comput       Date:  2004-11       Impact factor: 2.602

4.  Predicting neuroendocrine tumor (carcinoid) neoplasia using gene expression profiling and supervised machine learning.

Authors:  Ignat Drozdov; Mark Kidd; Boaz Nadler; Robert L Camp; Shrikant M Mane; Oyvind Hauso; Bjorn I Gustafsson; Irvin M Modlin
Journal:  Cancer       Date:  2009-04-15       Impact factor: 6.860

5.  The identification of gut neuroendocrine tumor disease by multiple synchronous transcript analysis in blood.

Authors:  Irvin M Modlin; Ignat Drozdov; Mark Kidd
Journal:  PLoS One       Date:  2013-05-15       Impact factor: 3.240

6.  A new classification method using array Comparative Genome Hybridization data, based on the concept of Limited Jumping Emerging Patterns.

Authors:  Tomasz Gambin; Krzysztof Walczak
Journal:  BMC Bioinformatics       Date:  2009-01-30       Impact factor: 3.169

7.  Dimensional study of prostate cancer using stereological tools.

Authors:  Luis Santamaría; Ildefonso Ingelmo; Fernando Teba
Journal:  J Anat       Date:  2021-08-05       Impact factor: 2.610

  7 in total

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