医学
危险系数
比例危险模型
一致性
阶段(地层学)
肿瘤科
梅克尔细胞癌
免疫抑制
内科学
多元微积分
置信区间
癌
生物
工程类
控制工程
古生物学
作者
Aubriana M. McEvoy,Daniel S. Hippe,Kristina Lachance,Song Park,Kelsey Cahill,Mary W. Redman,Ted Gooley,Michael W. Kattan,Paul Nghiem
标识
DOI:10.1016/j.jaad.2023.11.020
摘要
Merkel cell carcinoma (MCC) recurs in 40% of patients. In addition to stage, factors known to affect recurrence risk include: sex, immunosuppression, unknown primary status, age, site of primary tumor, and time since diagnosis.Create a multivariable model and web-based calculator to predict MCC recurrence risk more accurately than stage alone.Data from 618 patients in a prospective cohort were used in a competing risk regression model to estimate recurrence risk using stage and other factors.In this multivariable model, the most impactful recurrence risk factors were: American Joint Committee on Cancer stage (P < .001), immunosuppression (hazard ratio 2.05; P < .001), male sex (1.59; P = .003) and unknown primary (0.65; P = .064). Compared to stage alone, the model improved prognostic accuracy (concordance index for 2-year risk, 0.66 vs 0.70; P < .001), and modified estimated recurrence risk by up to 4-fold (18% for low-risk stage IIIA vs 78% for high-risk IIIA over 5 years).Lack of an external data set for model validation.As demonstrated by this multivariable model, accurate recurrence risk prediction requires integration of factors beyond stage. An online calculator based on this model (at merkelcell.org/recur) integrates time since diagnosis and provides new data for optimizing surveillance for MCC patients.
科研通智能强力驱动
Strongly Powered by AbleSci AI