Methylation‐based algorithms for diagnosis: experience from neuro‐oncology

Brain tumours are the most common tumour‐related cause of death in young people. Survivors are at risk of significant disability, at least in part related to the effects of treatment. Therefore, there is a need for a precise diagnosis that stratifies patients for the most suitable treatment, matched...

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Veröffentlicht in:The Journal of pathology 2020-04, Vol.250 (5), p.510-517
Hauptverfasser: Pickles, Jessica C, Stone, Thomas J, Jacques, Thomas S
Format: Artikel
Sprache:eng
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Zusammenfassung:Brain tumours are the most common tumour‐related cause of death in young people. Survivors are at risk of significant disability, at least in part related to the effects of treatment. Therefore, there is a need for a precise diagnosis that stratifies patients for the most suitable treatment, matched to the underlying biology of their tumour. Although traditional histopathology has been accurate in predicting treatment responses in many cases, molecular profiling has revealed a remarkable, previously unappreciated, level of biological complexity in the classification of these tumours. Among different molecular technologies, DNA methylation profiling has had the most pronounced impact on brain tumour classification. Furthermore, using machine learning‐based algorithms, DNA methylation profiling is changing diagnostic practice. This can be regarded as an exemplar for how molecular pathology can influence diagnostic practice and illustrates some of the unanticipated benefits and risks. © 2020 Pathological Society of Great Britain and Ireland. Published by John Wiley & Sons, Ltd.
ISSN:0022-3417
1096-9896
DOI:10.1002/path.5397