Litcius/Paper detail

Machine learning-based prediction of glioma margin from 5-ALA induced PpIX fluorescence spectroscopy

Pierre Leclerc, Cédric Ray, Laurent Mahieu-Williame, Laure Alston, Carole Frindel, Pierre‐François Brevet, David Meyronet, Jacques Guyotat, Bruno Montcel, David Rousseau

2020Scientific Reports29 citationsDOIOpen Access PDF

Abstract

Gliomas are infiltrative brain tumors with a margin difficult to identify. 5-ALA induced PpIX fluorescence measurements are a clinical standard, but expert-based classification models still lack sensitivity and specificity. Here a fully automatic clustering method is proposed to discriminate glioma margin. This is obtained from spectroscopic fluorescent measurements acquired with a recently introduced intraoperative set up. We describe a data-driven selection of best spectral features and show how this improves results of margin prediction from healthy tissue by comparison with the standard biomarker-based prediction. This pilot study based on 10 patients and 50 samples shows promising results with a best performance of 77% of accuracy in healthy tissue prediction from margin tissue.

Topics & Concepts

Margin (machine learning)GliomaSensitivity (control systems)Artificial intelligenceComputer scienceSupport vector machineCluster analysisPattern recognition (psychology)Brain tissueData setSet (abstract data type)Machine learningMedicineBiomedical engineeringEngineeringProgramming languageElectronic engineeringCancer researchGlioma Diagnosis and TreatmentAdvanced MRI Techniques and ApplicationsMRI in cancer diagnosis