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乳腺癌患者化疗引起的恶心和呕吐:使用分类与回归树(CART)的危险因素及预测模型

Chemotherapy-Induced Nausea and Vomiting in Patients With Breast Cancer: Risk Factor and Predictive Model Using Classification and Regression Tree (CART).

作者信息

Ng Bryant, Astari Yufi Kartika, Adrian Wiranata Juan, Leo Benedreky, Hutajulu Susanna H, Hardianti Mardiah S, Taroeno-Hariadi Kartika W, Kurnianda Johan, Purwanto Ibnu

机构信息

Medicine Study Program, Faculty of Medicine, Public Health and Nursing, Universitas Gadjah Mada, Yogyakarta, IDN.

Research Scholar, Division of Hematology and Medical Oncology, Department of Internal Medicine, Dr. Sardjito General Hospital, Yogyakarta, IDN.

出版信息

Cureus. 2023 Aug 31;15(8):e44438. doi: 10.7759/cureus.44438. eCollection 2023 Aug.

Abstract

Introduction Chemotherapy-induced nausea and vomiting (CINV) is a common and debilitating adverse effect of breast cancer chemotherapy. The incidence of CINV in the first cycle of chemotherapy is essential, as it sets the tone for anticipatory CINV and the overall patients' treatment experience. We aimed to investigate the risk factors of first cycle CINV in breast cancer patients and to develop a classification and regression tree (CART) model to predict its occurrence. Methods This is a cross-sectional study that nested in a prospective cohort. One hundred and thirty-seven female breast cancer patients receiving highly emetogenic chemotherapy were included. We used the Common Toxicity Criteria for Adverse Events (CTCAE) version 4.0 to assess patient-reported nausea and vomiting in the first chemotherapy cycle. The proportional difference of CINV between sociodemographic and clinicopathologic variables was analyzed using chi-square, and the strength and direction of the relationship with CINV were analyzed using bivariable logistic regression analysis. Multivariable logistic regression and CART analysis included variables with a p-value <0.250. Results The incidence of first-cycle CINV was 43.1%. The chi-square test revealed a significant association between insurance status and CINV (p<0.001) and between the stage at diagnosis and CINV (p<0.001). Underweight to normal body mass index (BMI) patients are significantly associated with an increased risk of first-cycle CINV (OR =2.17, 95% CI 1.03-4.56, p =0.041). In hierarchical order, three variables (stage at diagnosis, BMI, and age) were included in the CART model, which significantly influenced the probability of first cycle CINV. With an accuracy of 61.3%, the CART model had a sensitivity of 28.8%, a specificity of 85.9%, a positive predictive value of 60.7%, a negative predictive value of 61.5%, and an area under curve (AUC) of 0.602.  Conclusion Breast cancer patients with an underweight to normal BMI have a higher risk of developing first-cycle CINV. Our CART model was better at identifying patients who would not develop CINV than those who would. The CART model may provide a simple and effective way to individualize patient care for first-cycle CINV.

摘要

引言 化疗引起的恶心和呕吐(CINV)是乳腺癌化疗常见且使人衰弱的不良反应。化疗第一周期CINV的发生率至关重要,因为它为预期性CINV和患者的整体治疗体验定下基调。我们旨在调查乳腺癌患者第一周期CINV的危险因素,并建立一个分类回归树(CART)模型来预测其发生情况。方法 这是一项嵌套在前瞻性队列中的横断面研究。纳入了137名接受高致吐性化疗的女性乳腺癌患者。我们使用不良事件通用毒性标准(CTCAE)第4.0版来评估患者报告的第一个化疗周期中的恶心和呕吐情况。使用卡方检验分析社会人口统计学和临床病理变量之间CINV的比例差异,并使用双变量逻辑回归分析来分析与CINV关系的强度和方向。多变量逻辑回归和CART分析纳入了p值<0.250的变量。结果 第一周期CINV的发生率为43.1%。卡方检验显示保险状况与CINV之间存在显著关联(p<0.001),诊断阶段与CINV之间也存在显著关联(p<0.001)。体重过轻至正常体重指数(BMI)的患者与第一周期CINV风险增加显著相关(OR =2.17,95% CI 1.03 - 4.56,p =0.041)。按层次顺序,CART模型纳入了三个变量(诊断阶段、BMI和年龄),这些变量对第一周期CINV的概率有显著影响。CART模型的准确率为61.3%,敏感性为28.8%,特异性为85.9%,阳性预测值为60.7%,阴性预测值为61.5%,曲线下面积(AUC)为0.602。结论 体重过轻至正常BMI的乳腺癌患者发生第一周期CINV的风险较高。我们的CART模型在识别不会发生CINV的患者方面比识别会发生CINV的患者表现更好。CART模型可能为第一周期CINV的患者个体化护理提供一种简单有效的方法。

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