医学
化疗引起恶心呕吐
止吐药
恶心
接收机工作特性
内科学
逻辑回归
前瞻性队列研究
化疗
呕吐
曲线下面积
作者
George Dranitsaris,Nathaniel Bouganim,Carolyn Milano,Lisa Vandermeer,Susan Dent,Paul Wheatley‐Price,J. M. A. Laporte,Karen-Ann Oxborough,Mark Clemons
出处
期刊:The journal of supportive oncology
[Frontline Medical Communications, Inc.]
日期:2012-07-01
被引量:37
标识
DOI:10.1016/j.suponc.2012.05.001
摘要
Even with modern antiemetic regimens, up to 20% of cancer patients suffer from moderate to severe chemotherapy-induced nausea and vomiting (CINV) (> or = grade 2). We previously developed chemotherapy cycle-based risk predictive models for > or = grade 2 acute and delayed CINV. In this study, the prospective validation of the prediction models and associated scoring systems is described.Our objective was to prospectively validate prediction models designed to identify patients at high risk for moderate to severe CINV.Patients receiving chemotherapy were provided with CINV symptom diaries. Prior to each cycle of chemotherapy, the acute and delayed CINV scoring systems were used to stratify patients into low- and high-risk groups. Logistic regression was used to compare the occurrence of > or = grade 2 CINV between patients considered by the model to be at high vs low risk. The external validity of each system was assessed via an area under the receiver operating characteristic (AUROC) curve analysis.Outcome data were collected from 97 patients following 401 cycles of chemotherapy. The incidence of > or =grade 2 acute and delayed CINV was 13.5% and 21.4%, respectively. There was a significant correlation between the risk score and the probability of developing acute and delayed CINV following chemotherapy. Both the acute and delayed scoring systems had good predictive accuracy when applied to the validation sample (acute, AUROC = 0.70, 95% CI, 0.62-0.77; delayed, AUROC = 0.75, 95% CI, 0.69-0.80). Patients who were identified as high risk were 3.1 (P = .006) and 4.2 (P< .001) times more likely to develop - grade 2 acute and delayed CINV than were those identified as low risk.This study demonstrates that the scoring systems are able to accurately identify patients at high risk for acute and delayed CINV.
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