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  3. Radiomics for glioblastoma survival analysis in pre-operative MRI: exploring feature robustness, class boundaries, and machine learning techniques
 

Radiomics for glioblastoma survival analysis in pre-operative MRI: exploring feature robustness, class boundaries, and machine learning techniques

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BORIS DOI
10.7892/boris.145825
Date of Publication
August 5, 2020
Publication Type
Article
Division/Institute

ARTORG Center for Bio...

ARTORG Center - Biome...

Institut für Patholog...

Universitätsklinik fü...

Universitätsinstitut ...

Contributor
Suter, Yannick Raphael
ARTORG Center for Biomedical Engineering Research
Knecht, Urspeter
ARTORG Center - Biomechanics
Alao, Mariana
ARTORG Center - Biomechanics
Valenzuela, Waldo Enrique
ARTORG Center - Biomechanics
Hewer, Ekkehard Walter
Institut für Pathologie
Schucht, Philippe
Universitätsklinik für Neurochirurgie
Wiest, Roland Gerhard Rudi
Universitätsinstitut für Diagnostische und Interventionelle Neuroradiologie
Reyes Aguirre, Mauricio Antonio
ARTORG Center for Biomedical Engineering Research
Subject(s)

500 - Science::570 - ...

600 - Technology::610...

000 - Computer scienc...

600 - Technology::620...

Series
Cancer imaging : the official publication of the International Cancer Imaging Society
ISSN or ISBN (if monograph)
1470-7330
Publisher
BioMed Central
Language
en
Publisher DOI
10.1186/s40644-020-00329-8
PubMed ID
32758279
Uncontrolled Keywords

Glioblastoma multifor...

MRI radiomics

Overall survival clas...

Multi-center

Robustness

Description
Background:
This study aims to identify robust radiomic features for Magnetic Resonance Imaging (MRI), assess feature selection and machine learning methods for overall survival classification of Glioblastoma multiforme patients, and to robustify models trained on single-center data when applied to multi-center data.

Methods:
Tumor regions were automatically segmented on MRI data, and 8327 radiomic features extracted from these regions. Single-center data was perturbed to assess radiomic feature robustness, with over 16 million tests of typical perturbations. Robust features were selected based on the Intraclass Correlation Coefficient to measure agreement across perturbations. Feature selectors and machine learning methods were compared to classify overall survival. Models trained on single-center data (63 patients) were tested on multi-center data (76 patients). Priors using feature robustness and clinical knowledge were evaluated.

Results:
We observed a very large performance drop when applying models trained on single-center on unseen multi-center data, e.g. a decrease of the area under the receiver operating curve (AUC) of 0.56 for the overall survival classification boundary at 1 year. By using robust features alongside priors for two overall survival classes, the AUC drop could be reduced by 21.2%. In contrast, sensitivity was 12.19% lower when applying a prior.

Conclusions:
Our experiments show that it is possible to attain improved levels of robustness and accuracy when models need to be applied to unseen multi-center data. The performance on multi-center data of models trained on single-center data can be increased by using robust features and introducing prior knowledge. For successful model robustification, tailoring perturbations for robustness testing to the target dataset is key.
Handle
https://boris-portal.unibe.ch/handle/20.500.12422/55210
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