Incremental learning with SVM for multimodal classification of prostatic adenocarcinoma.

Robust detection of prostatic cancer is a challenge due to the multitude of variants and their representation in MR images. We propose a pattern recognition system with an incremental learning ensemble algorithm using support vector machines (SVM) tackling this problem employing multimodal MR images...

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Main Authors: José Fernando García Molina, Lei Zheng, Metin Sertdemir, Dietmar J Dinter, Stefan Schönberg, Matthias Rädle
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/24699716/pdf/?tool=EBI
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spelling doaj-8f9eb8535df6447e906a1a7b74306a2f2021-03-03T20:14:53ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0194e9360010.1371/journal.pone.0093600Incremental learning with SVM for multimodal classification of prostatic adenocarcinoma.José Fernando García MolinaLei ZhengMetin SertdemirDietmar J DinterStefan SchönbergMatthias RädleRobust detection of prostatic cancer is a challenge due to the multitude of variants and their representation in MR images. We propose a pattern recognition system with an incremental learning ensemble algorithm using support vector machines (SVM) tackling this problem employing multimodal MR images and a texture-based information strategy. The proposed system integrates anatomic, texture, and functional features. The data set was preprocessed using B-Spline interpolation, bias field correction and intensity standardization. First- and second-order angular independent statistical approaches and rotation invariant local phase quantization (RI-LPQ) were utilized to quantify texture information. An incremental learning ensemble SVM was implemented to suit working conditions in medical applications and to improve effectiveness and robustness of the system. The probability estimation of cancer structures was calculated using SVM and the corresponding optimization was carried out with a heuristic method together with a 3-fold cross-validation methodology. We achieved an average sensitivity of 0.844 ± 0.068 and a specificity of 0.780 ± 0.038, which yielded superior or similar performance to current state of the art using a total database of only 41 slices from twelve patients with histological confirmed information, including cancerous, unhealthy non-cancerous and healthy prostate tissue. Our results show the feasibility of an ensemble SVM being able to learn additional information from new data while preserving previously acquired knowledge and preventing unlearning. The use of texture descriptors provides more salient discriminative patterns than the functional information used. Furthermore, the system improves selection of information, efficiency and robustness of the classification. The generated probability map enables radiologists to have a lower variability in diagnosis, decrease false negative rates and reduce the time to recognize and delineate structures in the prostate.https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/24699716/pdf/?tool=EBI
collection DOAJ
language English
format Article
sources DOAJ
author José Fernando García Molina
Lei Zheng
Metin Sertdemir
Dietmar J Dinter
Stefan Schönberg
Matthias Rädle
spellingShingle José Fernando García Molina
Lei Zheng
Metin Sertdemir
Dietmar J Dinter
Stefan Schönberg
Matthias Rädle
Incremental learning with SVM for multimodal classification of prostatic adenocarcinoma.
PLoS ONE
author_facet José Fernando García Molina
Lei Zheng
Metin Sertdemir
Dietmar J Dinter
Stefan Schönberg
Matthias Rädle
author_sort José Fernando García Molina
title Incremental learning with SVM for multimodal classification of prostatic adenocarcinoma.
title_short Incremental learning with SVM for multimodal classification of prostatic adenocarcinoma.
title_full Incremental learning with SVM for multimodal classification of prostatic adenocarcinoma.
title_fullStr Incremental learning with SVM for multimodal classification of prostatic adenocarcinoma.
title_full_unstemmed Incremental learning with SVM for multimodal classification of prostatic adenocarcinoma.
title_sort incremental learning with svm for multimodal classification of prostatic adenocarcinoma.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description Robust detection of prostatic cancer is a challenge due to the multitude of variants and their representation in MR images. We propose a pattern recognition system with an incremental learning ensemble algorithm using support vector machines (SVM) tackling this problem employing multimodal MR images and a texture-based information strategy. The proposed system integrates anatomic, texture, and functional features. The data set was preprocessed using B-Spline interpolation, bias field correction and intensity standardization. First- and second-order angular independent statistical approaches and rotation invariant local phase quantization (RI-LPQ) were utilized to quantify texture information. An incremental learning ensemble SVM was implemented to suit working conditions in medical applications and to improve effectiveness and robustness of the system. The probability estimation of cancer structures was calculated using SVM and the corresponding optimization was carried out with a heuristic method together with a 3-fold cross-validation methodology. We achieved an average sensitivity of 0.844 ± 0.068 and a specificity of 0.780 ± 0.038, which yielded superior or similar performance to current state of the art using a total database of only 41 slices from twelve patients with histological confirmed information, including cancerous, unhealthy non-cancerous and healthy prostate tissue. Our results show the feasibility of an ensemble SVM being able to learn additional information from new data while preserving previously acquired knowledge and preventing unlearning. The use of texture descriptors provides more salient discriminative patterns than the functional information used. Furthermore, the system improves selection of information, efficiency and robustness of the classification. The generated probability map enables radiologists to have a lower variability in diagnosis, decrease false negative rates and reduce the time to recognize and delineate structures in the prostate.
url https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/24699716/pdf/?tool=EBI
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