MRI-based automated machine learning model for preoperative identification of variant histology in muscle-invasive bladder carcinoma.
Jingwen HuangGuanxing ChenHaiqing LiuWei JiangSiyao MaiLingli ZhangHong ZengShaoxu WuCalvin Yu-Chian ChenZhuo WuPublished in: European radiology (2023)
• It is important to preoperatively diagnose variant histology from urothelial carcinoma in patients with muscle-invasive bladder carcinoma (MIBC), as their treatment strategy varies significantly. • An automated machine learning (AutoML) model based on baseline bladder MRI can identify the variant histology (squamous differentiation) from urothelial carcinoma preoperatively in patients with MIBC. • The developed AutoML model is a non-invasive and low-cost preoperative prediction tool, which may be useful for clinical decision-making.
Keyphrases