Login / Signup

Development and evaluation of machine learning models based on X-ray radiomics for the classification and differentiation of malignant and benign bone tumors.

Claudio E von SchackyNikolas J WilhelmValerie S SchäferYannik LeonhardtMatthias JungPia M JungmannMaximilian F RusseSarah C ForemanFelix G GassertFlorian T GassertBenedikt J SchwaigerCarolin MoglerCarolin KnebelRuediger von Eisenhart-RotheMarcus R MakowskiKlaus WoertlerRainer BurgkartAlexandra S Gersing
Published in: European radiology (2022)
• The developed machine learning model could differentiate benign from malignant bone tumors using radiography with an AUC of 0.90 on the external test set. • Machine learning models that used radiomic features or demographic information alone performed worse than those that used both radiomic features and demographic information as input, highlighting the importance of building comprehensive machine learning models. • An artificial neural network that combined both radiomic and demographic information achieved the best performance and its performance was compared to radiology readers on an external test set.
Keyphrases