2008
DOI: 10.1016/j.artmed.2008.03.002
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Supervised pattern recognition for the prediction of contrast-enhancement appearance in brain tumors from multivariate magnetic resonance imaging and spectroscopy

Abstract: Objective: The purpose of this study was to develop a pattern classification algorithm for use in predicting the location of new contrast-enhancement in brain tumor patients using data obtained via multivariate magnetic resonance imaging from a prior scan. We also explore the use of feature selection or weighting in improving the accuracy of the pattern classifier. Methods and materials:Contrast-enhanced MR images, perfusion images, diffusion images, and proton spectroscopic imaging data were obtained from 26 … Show more

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Cited by 33 publications
(18 citation statements)
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“…On other hand, Lee and Nelson [55] used the CHC algorithm to found optimal feature weights of a pattern recognition technique for the prediction of contrast-enhancement appearance in brain tumors from multivariate magnetic resonance imaging and spectroscopy.…”
Section: Optimization Techniques In Biomedical Applicationsmentioning
confidence: 99%
See 1 more Smart Citation
“…On other hand, Lee and Nelson [55] used the CHC algorithm to found optimal feature weights of a pattern recognition technique for the prediction of contrast-enhancement appearance in brain tumors from multivariate magnetic resonance imaging and spectroscopy.…”
Section: Optimization Techniques In Biomedical Applicationsmentioning
confidence: 99%
“…In this study, evolutionary and direct-search algorithms which had been successfully used in optimization problems in the biomedical field [50,51,52,53,54,55,56,57,58,59,60,61,62,63] were selected for their comparison. Simulations were performed fixing as stopping criterion a maximum number of evaluations of the analyzed cost functions.…”
Section: Optimization Algorithmsmentioning
confidence: 99%
“…[35][36][37][38] This cross-validation technique is designed to measure the expected accuracy of models in cases with limited data and involves setting one experiment aside for validation, using the remaining experiments to train the model, and repeating the procedure until each experiment is used once for validation. This ensures that a lucky selection of a validation set does not produce overly optimistic accuracy results, or vice versa.…”
Section: Validation Of the Modelsmentioning
confidence: 99%
“…The HME was shown to improve prediction of tissue outcome compared to the GLM 58 . Non-parametric approaches such as k-nearest neighbors (kNN) algorithm have been proposed for combining multivariate data for both stroke 56, 59 and for tumor patient evaluation 60 . The kNN algorithm, which does not have a previous assumption regarding data distribution, classifies each new input vector according to the label of its k-nearest neighbors in the training data, in which distance is often measured with a Euclidean metric.…”
Section: Tissue Theme Map Calculationmentioning
confidence: 99%
“…The kNN algorithm, which does not have a previous assumption regarding data distribution, classifies each new input vector according to the label of its k-nearest neighbors in the training data, in which distance is often measured with a Euclidean metric. For a human stroke study (N=14) 59 , the label was “infarcted” or “non-infarcted” tissue on follow-up imaging (more than 5-days from onset), while for the tumor study in grade IV tumor patients (N=26) 60 , the label was “enhanced” or “non-enhanced” tissue on post-radiotherapy imaging (within one month of conclusion of therapy) for tissue that was originally non-enhancing. The number of labels can be more than two, as was the case for the experimental stroke study for which the labels were normal, abnormal, or CSF 56 .…”
Section: Tissue Theme Map Calculationmentioning
confidence: 99%