医学
中性粒细胞减少症
乳腺癌
肿瘤科
化疗
风险评估
癌症
内科学
重症监护医学
计算机安全
计算机科学
作者
Li-Lu Chang,Susan Schneider,Shao‐Chin Chiang,Cheng‐Fang Horng
出处
期刊:Cancer Nursing
[Lippincott Williams & Wilkins]
日期:2012-12-20
卷期号:36 (3): 198-205
被引量:2
标识
DOI:10.1097/ncc.0b013e3182642d98
摘要
Several studies have documented the efficacy of prophylactic granulocyte colony-stimulating factor in reducing rates of infections and risk of febrile neutropenia. An appropriate risk assessment model is pivotal to identify high-risk patients who would require granulocyte colony-stimulating factor prophylaxis.The objectives of the study were to develop, implement, and evaluate a risk assessment model for neutropenic events in breast cancer patients who were receiving myelosuppressive chemotherapy.During the study period, neutropenia risk was assessed for breast cancer patients by using an innovative risk model before the first cycle of chemotherapy. A stepwise logistic regression model was performed to determine significant factors for the prediction.A total of 119 patients were evaluated for neutropenia risk between August 2010 and December 2010. Twenty-nine percent (35/119) of the patients have experienced at least 1 neutropenic event during the initial 3 cycles of chemotherapy. Based on the logistic regression model, only the risk score was retained as the significant predictor; the probability of an individual patient developing neutropenic events increased 1.24 times by increasing 1 score number (odds ratio, 1.24; with 95% confidence interval, 1.063-1.457).Based on the examination of different cutoff points, the performance of the risk model is best when the risk threshold is set at 6, which was found to have a sensitivity of 0.49 and a specificity of 0.69; the misclassification rate was 0.37, with a positive predictive value of 0.40 and a negative predictive value of 0.76.The results of this project support incorporating the discussed risk assessment model into routine nursing assessments to prevent neutropenic complications.
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