作者
Adam Yala, Peter G Mikhael, Fredrik Strand, Gigin Lin, Siddharth Satuluru, Thomas Kim, Imon Banerjee, Judy Gichoya, Hari Trivedi, Constance D Lehman, Kevin Hughes, David J Sheedy, Lisa M Matthis, Bipin Karunakaran, Karen E Hegarty, Silvia Sabino, Thiago B Silva, Maria C Evangelista, Renato F Caron, Bruno Souza, Edmundo C Mauad, Tal Patalon, Sharon Handelman-Gotlib, Michal Guindy, Regina Barzilay
发表日期
2022/6/1
期刊
Journal of Clinical Oncology
卷号
40
期号
16
页码范围
1732-1740
出版商
Wolters Kluwer Health
简介
PURPOSE
Accurate risk assessment is essential for the success of population screening programs in breast cancer. Models with high sensitivity and specificity would enable programs to target more elaborate screening efforts to high-risk populations, while minimizing overtreatment for the rest. Artificial intelligence (AI)-based risk models have demonstrated a significant advance over risk models used today in clinical practice. However, the responsible deployment of novel AI requires careful validation across diverse populations. To this end, we validate our AI-based model, Mirai, across globally diverse screening populations.
METHODS
We collected screening mammograms and pathology-confirmed breast cancer outcomes from Massachusetts General Hospital, USA; Novant, USA; Emory, USA; Maccabi-Assuta, Israel; Karolinska, Sweden; Chang Gung Memorial Hospital, Taiwan; and Barretos, Brazil. We …
引用总数
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