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Histological heterogeneity of human glioblastomas investigated with an unsupervised neural network (SOM)
2005
Histology and Histopathology
The histological variability of Glioblastomas (GB) precludes the modern assimilation of theses tumors into a single histological tumor group. As an alternative to statistical histological evaluation, we investigated 1489 human GB in order to discover whether they could be correctly classified using Self-Organizing Maps (SOM). In all tumors 50 histological features, as well as the age and sex of the patients, were examined. Four clusters of GB with a significance of 52 (maximal significance 60)
doi:10.14670/hh-20.351
pmid:15736037
fatcat:o4g5i2ka6fawvgdopnjj5uuay4