| Literature DB >> 29872706 |
Ugljesa Djuric1,2, Gelareh Zadeh1, Kenneth Aldape1,2,3, Phedias Diamandis1,2,3.
Abstract
Entities:
Year: 2017 PMID: 29872706 PMCID: PMC5871847 DOI: 10.1038/s41698-017-0022-1
Source DB: PubMed Journal: NPJ Precis Oncol ISSN: 2397-768X
Fig. 1Diagnostic decision-making algorithms in pathology. a Digital image of a H&E stained slide showing classic histologic features of an anaplastic oligodendroglioma, WHO grade III. b Unaided human-based classification algorithms utilize simple and highly reproducible decision tree-based approaches. Even with new more objective molecular tools, the need for highly uniform and reproducible diagnostic reporting limits the number of alterations that can be extracted from data-rich molecular data sets. c, d Machine learning-based approaches may allow for multi-parametric feature extraction and aggregation that permit even subtle but reproducible groups of features to be integrated into classification schemes. DNNs may thus tolerate reliable extraction of a larger number of unappreciated features that can be correlated with specific entities, outcomes, and molecular changes. IDH isocitrate dehydrogenase, IDH-mut IDH-mutated, IDH-wt IDH-wildtype, CIC capicua, Oligo oligodendroglioma, Astro astrocytoma, Oligoastro oligoastrocytoma, WHO World Health Organization malignancy grading scheme