Construction of a risk stratification model integrating ctDNA to predict response and survival in neoadjuvant-treated breast cancer.
Zhaoyun LiuBo YuMu SuChenxi YuanCuicui LiuXinzhao WangXiang SongChao LiFukai WangJianli MaMeng WuDawei ChenJinming YuZhiyong YuPublished in: BMC medicine (2023)
In this study, we established a chemotherapy predictive model with a non-invasive tool that is built based on genomic features, ctDNA status, as well as clinical characteristics for predicting pCR to recognize the responders and non-responders to NAC, and also predicting prognosis for DFS in breast cancer. Adding pretreatment ctDNA levels to a model containing gene profile mutation and clinical characteristics significantly improves stratification over the clinical variables alone.