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Classification of Incidental Carcinoma of the Prostate Using Learning Vector Quantization and Support Vector Machines

The subclassification of incidental prostatic carcinoma into the categories T1a and T1b is of major prognostic and therapeutic relevance. In this paper an attempt was made to find out which properties mainly predispose to these two tumor categories, and whether it is possible to predict the category...

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Autores principales: Mattfeldt, Torsten, Trijic, Danilo, Gottfried, Hans‐Werner, Kestler, Hans A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: IOS Press 2004
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4612268/
https://www.ncbi.nlm.nih.gov/pubmed/15371656
http://dx.doi.org/10.1155/2004/982809
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author Mattfeldt, Torsten
Trijic, Danilo
Gottfried, Hans‐Werner
Kestler, Hans A.
author_facet Mattfeldt, Torsten
Trijic, Danilo
Gottfried, Hans‐Werner
Kestler, Hans A.
author_sort Mattfeldt, Torsten
collection PubMed
description The subclassification of incidental prostatic carcinoma into the categories T1a and T1b is of major prognostic and therapeutic relevance. In this paper an attempt was made to find out which properties mainly predispose to these two tumor categories, and whether it is possible to predict the category from a battery of clinical and histopathological variables using newer methods of multivariate data analysis. The incidental prostatic carcinomas of the decade 1990–99 diagnosed at our department were reexamined. Besides acquisition of routine clinical and pathological data, the tumours were scored by immunohistochemistry for proliferative activity and p53‐overexpression. Tumour vascularization (angiogenesis) and epithelial texture were investigated by quantitative stereology. Learning vector quantization (LVQ) and support vector machines (SVM) were used for the purpose of prediction of tumour category from a set of 10 input variables (age, Gleason score, preoperative PSA value, immunohistochemical scores for proliferation and p53‐overexpression, 3 stereological parameters of angiogenesis, 2 stereological parameters of epithelial texture). In a stepwise logistic regression analysis with the tumour categories T1a and T1b as dependent variables, only the Gleason score and the volume fraction of epithelial cells proved to be significant as independent predictor variables of the tumour category. Using LVQ and SVM with the information from all 10 input variables, more than 80 of the cases could be correctly predicted as T1a or T1b category with specificity, sensitivity, negative and positive predictive value from 74–92%. Using only the two significant input variables Gleason score and epithelial volume fraction, the accuracy of prediction was not worse. Thus, descriptive and quantitative texture parameters of tumour cells are of major importance for the extent of propagation in the prostate gland in incidental prostatic adenocarcinomas. Classical statistical tools and neuronal approaches led to consistent conclusions.
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spelling pubmed-46122682016-01-12 Classification of Incidental Carcinoma of the Prostate Using Learning Vector Quantization and Support Vector Machines Mattfeldt, Torsten Trijic, Danilo Gottfried, Hans‐Werner Kestler, Hans A. Cell Oncol Other The subclassification of incidental prostatic carcinoma into the categories T1a and T1b is of major prognostic and therapeutic relevance. In this paper an attempt was made to find out which properties mainly predispose to these two tumor categories, and whether it is possible to predict the category from a battery of clinical and histopathological variables using newer methods of multivariate data analysis. The incidental prostatic carcinomas of the decade 1990–99 diagnosed at our department were reexamined. Besides acquisition of routine clinical and pathological data, the tumours were scored by immunohistochemistry for proliferative activity and p53‐overexpression. Tumour vascularization (angiogenesis) and epithelial texture were investigated by quantitative stereology. Learning vector quantization (LVQ) and support vector machines (SVM) were used for the purpose of prediction of tumour category from a set of 10 input variables (age, Gleason score, preoperative PSA value, immunohistochemical scores for proliferation and p53‐overexpression, 3 stereological parameters of angiogenesis, 2 stereological parameters of epithelial texture). In a stepwise logistic regression analysis with the tumour categories T1a and T1b as dependent variables, only the Gleason score and the volume fraction of epithelial cells proved to be significant as independent predictor variables of the tumour category. Using LVQ and SVM with the information from all 10 input variables, more than 80 of the cases could be correctly predicted as T1a or T1b category with specificity, sensitivity, negative and positive predictive value from 74–92%. Using only the two significant input variables Gleason score and epithelial volume fraction, the accuracy of prediction was not worse. Thus, descriptive and quantitative texture parameters of tumour cells are of major importance for the extent of propagation in the prostate gland in incidental prostatic adenocarcinomas. Classical statistical tools and neuronal approaches led to consistent conclusions. IOS Press 2004 2004-07-14 /pmc/articles/PMC4612268/ /pubmed/15371656 http://dx.doi.org/10.1155/2004/982809 Text en Copyright © 2004 Hindawi Publishing Corporation and the authors.
spellingShingle Other
Mattfeldt, Torsten
Trijic, Danilo
Gottfried, Hans‐Werner
Kestler, Hans A.
Classification of Incidental Carcinoma of the Prostate Using Learning Vector Quantization and Support Vector Machines
title Classification of Incidental Carcinoma of the Prostate Using Learning Vector Quantization and Support Vector Machines
title_full Classification of Incidental Carcinoma of the Prostate Using Learning Vector Quantization and Support Vector Machines
title_fullStr Classification of Incidental Carcinoma of the Prostate Using Learning Vector Quantization and Support Vector Machines
title_full_unstemmed Classification of Incidental Carcinoma of the Prostate Using Learning Vector Quantization and Support Vector Machines
title_short Classification of Incidental Carcinoma of the Prostate Using Learning Vector Quantization and Support Vector Machines
title_sort classification of incidental carcinoma of the prostate using learning vector quantization and support vector machines
topic Other
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4612268/
https://www.ncbi.nlm.nih.gov/pubmed/15371656
http://dx.doi.org/10.1155/2004/982809
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