Impact of SUSAN Denoising and ComBat Harmonization on Machine Learning Model Performance for Malignant Brain Neoplasms.
Girish BathlaNeetu SoniIan T MarkYanan LiuNicholas B LarsonBlake A KassmeyerSuyash MohanJohn C BensonSaima RathoreAmit Kumar AgarwalPublished in: AJNR. American journal of neuroradiology (2024)
The use of image-preprocessing steps such as SUSAN denoising and Combining Batches harmonization may be more useful in a multi-institutional setting to improve model generalizability. Models derived from only T1 contrast-enhanced images showed comparable performance to models derived from multiparametric MRI.