2016
DOI: 10.1007/978-3-319-43775-0_28
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Clustering of MRI Radiomics Features for Glioblastoma Multiforme: An Initial Study

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“…A representative feature was selected from each of the k clusters of the optimum number previously established by one of two methods: medoid or univariate prognostic power. With the medoid selection process, the Spearman correlation among cluster members was calculated, and the feature with the highest average correlation was selected (Parmar et al 2015, Li et al 2016. For the univariate prognostic power selection, a log likelihood ratio test was performed comparing the model with each individual feature to the model containing only the intercept, and the feature with the most significant log likelihood p -value was selected as the representative feature (Fave et al 2017).…”
Section: Feature Selection and Reductionmentioning
confidence: 99%
“…A representative feature was selected from each of the k clusters of the optimum number previously established by one of two methods: medoid or univariate prognostic power. With the medoid selection process, the Spearman correlation among cluster members was calculated, and the feature with the highest average correlation was selected (Parmar et al 2015, Li et al 2016. For the univariate prognostic power selection, a log likelihood ratio test was performed comparing the model with each individual feature to the model containing only the intercept, and the feature with the most significant log likelihood p -value was selected as the representative feature (Fave et al 2017).…”
Section: Feature Selection and Reductionmentioning
confidence: 99%