The accuracy and quality of image-based artificial intelligence for muscle-invasive bladder cancer prediction.
Chunlei HeHui XuEnyu YuanLei YeYuntian ChenJin YaoXijiao LiuPublished in: Insights into imaging (2024)
Image-based artificial intelligence models could aid in the identification of muscle-invasive bladder cancer. Current studies had low reporting quality, low methodological quality, and a high risk of bias. Future studies could focus on larger sample sizes and more transparent reporting of pathological evaluation, model explanation, and failure and sensitivity analyses.