Deep learning model based on contrast-enhanced ultrasound for predicting early recurrence after thermal ablation of colorectal cancer liver metastasis.
Qin-Xian ZhaoXue-Lei HeKun WangZhi-Gang ChengZhi-Yu HanFang-Yi LiuXiao-Ling YuZhong HuiJie YuAn ChaoPing LiangPublished in: European radiology (2022)
• This is an exploratory study in which ablation-related contrast-enhanced ultrasound (CEUS) data from consecutive patients with colorectal cancer liver metastasis (CRLM) were collected simultaneously at multiple institutions. • The deep learning combining with clinical (DL-C) model provided desirable performance for the prediction of early recurrence (ER) after thermal ablation (TA). • The DL-C model based on CEUS provides guidance for TA indication selection and making therapeutic decisions.