Room: Exhibit Hall | Forum 8
Purpose: This study differentiated high-grade glioma (HGG) and brain metastases (BM) by characterization of non-contrast-enhanced T1-/T2-weighted magnetic resonance (MR) images using persistent homology and analysis of the data using machine learning models.
Methods: This retrospective study was approved by the ethics committee of our university hospital. Non-contrast-enhanced T1-/T2-weighted MR images of 44 brain tumors, obtained from May 2007 to September 2017, were assessed. The lesions included 22 HGGs and 22 BMs found in 21 and 16 patients, respectively. For classification, persistence diagrams for the tumors were generated from the MR images of each lesion. Then, input vectors were obtained from vectorized persistence diagrams to apply machine learning models. We used two models (i.e., logistic classifier model with an elastic net penalty and extreme gradient boosting [XGBoost]) to classify HGG and BM and evaluate the classification abilities.
Results: In classification of T1-weighted (resp. T2-weighted) MR images of HGG and BM, we obtained the highest classification accuracy (±SD) of 83.0±0.0% (resp. 93.2±0.0%) when the degree 2 (degree 1) vectors were used, with the sensitivity, specificity, and area under the receiver operating characteristic curve of 88.6±6.8% (resp. 93.2±2.3%), 77.3±13.6% (resp. 93.2±2.3%), and 0.860±0.037 (0.868±0.000), respectively. Our method using persistent homology allows for classification of HGG and BM only from non-contrast-enhanced MR images of the brain with considerable accuracy.
Conclusion: This method may increase usefulness when utilized in the computer-aided diagnosis of brain tumors with MR imaging.
Funding Support, Disclosures, and Conflict of Interest: This work was supported in part by Japan Society for the Promotion of Science (JSPS) KAKENHI Grant No. 18K07646.
Not Applicable / None Entered.
Not Applicable / None Entered.