Structural and Metabolic Pattern Classification for Detection of Glioblastoma Recurrence and Treatment-Related Effects
- Авторы: Jovanovic M.1, Selmic M.2, Macura D.2, Lavrnic S.1, Gavrilovic S.1, Dakovic M.3, Radenkovic S.4, Soldatovic I.5,6, Stosic-Opincal T.6, Maksimovic R.1,6
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Учреждения:
- Clinical Centre of Serbia, MRI Centre
- Faculty of Transport and Traffic Engineering, University of Belgrade
- Faculty of Physical Chemistry, University of Belgrade
- Institute of Oncology and Radiology of Serbia, Department of Radiation Oncology and Diagnostics
- Institute for Medical Statistics and Informatics
- Medical Faculty, University of Belgrade
- Выпуск: Том 48, № 9 (2017)
- Страницы: 921-931
- Раздел: Original Paper
- URL: https://journals.rcsi.science/0937-9347/article/view/247836
- DOI: https://doi.org/10.1007/s00723-017-0913-x
- ID: 247836
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Аннотация
Artificial neuronal network (ANN) in classification of glioblastoma multiforme (GBM) recurrence from treatment effects using advanced magnetic resonance imaging techniques was evaluated. In 56 patients with treated GBM, normalised minimal and mean apparent-diffusion coefficient (ADC) values, vessels number on susceptibility-weighted images (SWI) and Cho/Cr ratio were analysed statistically and by ANN. Significant correlation exists between normalised minimal and mean ADC values, and no correlation between ADC and Cho/Cr values. Cut-off values for tumour presence were: 1.14 for normalised minimal ADC (54% sensitivity, 71% specificity), 1.13 for normalised mean ADC (51% sensitivity, 71% specificity), 1.8 for Cho/Cr ratio (92% sensitivity, 82% specificity), grade 2 for SWI (87% sensitivity, 82% specificity). An accurate prediction of ANN to classify patients into GBM progression or treatment effects group was 99% during the training and 96.8% during the testing phase. Multi-parametric ANN allows distinction between GBM recurrence and treatment effects, and can be used in clinical practice.
Об авторах
Marija Jovanovic
Clinical Centre of Serbia, MRI Centre
Автор, ответственный за переписку.
Email: macvanskimarija@yahoo.com
ORCID iD: 0000-0003-3014-6775
Сербия, Pasterova 2, Belgrade
Milica Selmic
Faculty of Transport and Traffic Engineering, University of Belgrade
Email: macvanskimarija@yahoo.com
Сербия, Vojvode Stepe 305, Belgrade
Dragana Macura
Faculty of Transport and Traffic Engineering, University of Belgrade
Email: macvanskimarija@yahoo.com
Сербия, Vojvode Stepe 305, Belgrade
Slobodan Lavrnic
Clinical Centre of Serbia, MRI Centre
Email: macvanskimarija@yahoo.com
Сербия, Pasterova 2, Belgrade
Svetlana Gavrilovic
Clinical Centre of Serbia, MRI Centre
Email: macvanskimarija@yahoo.com
Сербия, Pasterova 2, Belgrade
Marko Dakovic
Faculty of Physical Chemistry, University of Belgrade
Email: macvanskimarija@yahoo.com
Сербия, Studentski trg 12-16, Belgrade
Sandra Radenkovic
Institute of Oncology and Radiology of Serbia, Department of Radiation Oncology and Diagnostics
Email: macvanskimarija@yahoo.com
Сербия, Pasterova 14, Belgrade
Ivan Soldatovic
Institute for Medical Statistics and Informatics; Medical Faculty, University of Belgrade
Email: macvanskimarija@yahoo.com
Сербия, Dr Subotica 15, Belgrade; Dr Subotica 8, Belgrade
Tatjana Stosic-Opincal
Medical Faculty, University of Belgrade
Email: macvanskimarija@yahoo.com
Сербия, Dr Subotica 8, Belgrade
Ruzica Maksimovic
Clinical Centre of Serbia, MRI Centre; Medical Faculty, University of Belgrade
Email: macvanskimarija@yahoo.com
Сербия, Pasterova 2, Belgrade; Dr Subotica 8, Belgrade
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