Danielle Candelieri,Anna Hung,Julie A. Lynch,Kathryn M. Pridgen,Fatai Agiri,Weiyan Li,Himani Aggarwal,Tori Anglin-Foote,Kyung Min Lee,Cristina Díaz-Agero Pérez,Shelby D. Reed,Scott L. DuVall,Yu‐Ning Wong,Patrick R. Alba
出处
期刊:JCO clinical cancer informatics [American Society of Clinical Oncology] 日期:2023-09-01卷期号: (7)
Several novel therapies for castration-resistant prostate cancer (CRPC) have been approved with randomized phase III studies with continuing observational research either planned or ongoing. Accurately identifying patients with CRPC in electronic health care data is critical for quality observational research, resource allocation, and quality improvement. Previous work in this area has relied on either structured laboratory results and medication data or natural language processing (NLP) methods. However, a computable phenotype using both structured data and NLP identifies these patients with more accuracy.