Fangyuan ZhaoEric C. PolleyJulian McClellanFrederick M. HowardOlufunmilayo I. OlopadeDezheng Huo
The study developed a machine learning model ( https://huolab.cri.uchicago.edu/sample-apps/pcrmodel ) to predict pCR in breast cancer patients undergoing NACT that demonstrated robust discrimination and calibration performance. The model performed particularly well among patients with HR+/HER2- breast cancer, having the potential to identify patients who are less likely to achieve pCR and can consider alternative treatment strategies over chemotherapy. The model can also serve as a robust baseline model that can be integrated with smaller datasets containing additional granular features in future research.
Xiaoxian LiUma KrishnamurtiShristi BhattaraiSergey KlimovMichelle D. ReidRuth M. O'ReganRitu Aneja
Rayhan Erlangga RahadianHong Qi TanBryan Shihan HoArjunan KumaranAndre VillanuevaJoy SngRyan TanTira J. TanVeronique Kiak Mien TanBenita Kiat Tee TanGeok Hoon LimYiyu CaiWen Long NeiFuh Yong Wong
Xue-Yan WangJia-Xin HuangFeng-Tao LiuHuining HuangJingsi MeiGui-Ling HuangYu-Ting ZhangMeiqin XiaoYan-Fen XuMing-Jie WeiXiao‐Qing Pei
Ji‐Yeon KimEunjoo JeonSoonhwan KwonHyungsik JungSunghoon JooYoungmin ParkSe Kyung LeeJoon JeongSeok Jin NamEun Yoon ChoYeon Hee ParkJin Seok AhnYoung‐Hyuck Im