Inicio  /  Cancers  /  Vol: 13 Par: 14 (2021)  /  Artículo
ARTÍCULO
TITULO

Assessing Versatile Machine Learning Models for Glioma Radiogenomic Studies across Hospitals

Risa K. Kawaguchi    
Masamichi Takahashi    
Mototaka Miyake    
Manabu Kinoshita    
Satoshi Takahashi    
Koichi Ichimura    
Ryuji Hamamoto    
Yoshitaka Narita and Jun Sese    

Resumen

Radiogenomics enables prediction of the status and prognosis of patients using non-invasively obtained imaging data. Current machine learning (ML) methods used in radiogenomics require huge datasets, which involve the handling of large heterogeneous datasets from multiple cohorts/hospitals. In this study, two different glioma datasets were used to test various ML and image pre-processing methods to confirm whether the models trained on one dataset are universally applicable to other datasets. Our result suggested that the ML method that yielded the highest accuracy in a single dataset was likely to be overfitted. We demonstrated that implementation of standardization and dimension reduction procedures prior to classification, enabled the development of ML methods that are less affected by the multiple cohort difference. We advocate using caution in interpreting the results of radiogenomic studies of the training and testing datasets that are small or mixed, with a view to implementing practical ML methods in radiogenomics.

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