Publication | Closed Access
A Generic Support Vector Machine Model for Preoperative Glioma Survival Associations
110
Citations
21
References
2014
Year
Machine learning by means of SVM in combination with whole-tumor rCBV histogram analysis can be used to identify early patient survival in aggressive gliomas. The SVM model returned higher diagnostic accuracy values than an expert reader, and the model appears to be insensitive to patient, observer, and institutional variations.
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