Department of Nursing, School of Medicine, Xiamen University, Xiamen, China.
Department of Chronic Non-infectious Diseases and Endemic Diseases Control, Xiamen Center for Disease Control and Prevention, Xiamen, China.
J Med Internet Res. 2022 Mar 9;24(3):e35768. doi: 10.2196/35768.
Accurate prediction of survival is crucial for both physicians and women with breast cancer to enable clinical decision making on appropriate treatments. The currently available survival prediction tools were developed based on demographic and clinical data obtained from specific populations and may underestimate or overestimate the survival of women with breast cancer in China.
This study aims to develop and validate a prognostic app to predict the overall survival of women with breast cancer in China.
Nine-year (January 2009-December 2017) clinical data of women with breast cancer who received surgery and adjuvant therapy from 2 hospitals in Xiamen were collected and matched against the death data from the Xiamen Center of Disease Control and Prevention. All samples were randomly divided (7:3 ratio) into a training set for model construction and a test set for model external validation. Multivariable Cox regression analysis was used to construct a survival prediction model. The model performance was evaluated by receiver operating characteristic (ROC) curve and Brier score. Finally, by running the survival prediction model in the app background thread, the prognostic app, called iCanPredict, was developed for women with breast cancer in China.
A total of 1592 samples were included for data analysis. The training set comprised 1114 individuals and the test set comprised 478 individuals. Age at diagnosis, clinical stage, molecular classification, operative type, axillary lymph node dissection, chemotherapy, and endocrine therapy were incorporated into the model, where age at diagnosis (hazard ratio [HR] 1.031, 95% CI 1.011-1.051; P=.002), clinical stage (HR 3.044, 95% CI 2.347-3.928; P<.001), and endocrine therapy (HR 0.592, 95% CI 0.384-0.914; P=.02) significantly influenced the survival of women with breast cancer. The operative type (P=.81) and the other 4 variables (molecular classification [P=.91], breast reconstruction [P=.36], axillary lymph node dissection [P=.32], and chemotherapy [P=.84]) were not significant. The ROC curve of the training set showed that the model exhibited good discrimination for predicting 1- (area under the curve [AUC] 0.802, 95% CI 0.713-0.892), 5- (AUC 0.813, 95% CI 0.760-0.865), and 10-year (AUC 0.740, 95% CI 0.672-0.808) overall survival. The Brier scores at 1, 5, and 10 years after diagnosis were 0.005, 0.055, and 0.103 in the training set, respectively, and were less than 0.25, indicating good predictive ability. The test set externally validated model discrimination and calibration. In the iCanPredict app, when physicians or women input women's clinical information and their choice of surgery and adjuvant therapy, the corresponding 10-year survival prediction will be presented.
This survival prediction model provided good model discrimination and calibration. iCanPredict is the first tool of its kind in China to provide survival predictions to women with breast cancer. iCanPredict will increase women's awareness of the similar survival rate of different surgeries and the importance of adherence to endocrine therapy, ultimately helping women to make informed decisions regarding treatment for breast cancer.
准确预测生存对于医生和乳腺癌患者都至关重要,这有助于做出适当治疗的临床决策。目前可用的生存预测工具是基于特定人群的人口统计学和临床数据开发的,可能会低估或高估中国乳腺癌患者的生存情况。
本研究旨在开发和验证一个用于预测中国乳腺癌患者总生存的预后应用程序。
收集了来自厦门 2 家医院接受手术和辅助治疗的乳腺癌女性患者的 9 年(2009 年 1 月至 2017 年 12 月)临床数据,并与厦门市疾病预防控制中心的死亡数据相匹配。所有样本均随机(7:3 比例)分为训练集用于模型构建和测试集用于模型外部验证。使用多变量 Cox 回归分析构建生存预测模型。通过接受者操作特征(ROC)曲线和 Brier 评分评估模型性能。最后,通过在应用程序后台线程中运行生存预测模型,开发了适用于中国乳腺癌女性的预后应用程序,命名为 iCanPredict。
共纳入 1592 例样本进行数据分析。训练集包含 1114 例,测试集包含 478 例。年龄、临床分期、分子分类、手术类型、腋窝淋巴结清扫、化疗和内分泌治疗被纳入模型,其中年龄(HR 1.031,95%CI 1.011-1.051;P=.002)、临床分期(HR 3.044,95%CI 2.347-3.928;P<.001)和内分泌治疗(HR 0.592,95%CI 0.384-0.914;P=.02)显著影响乳腺癌患者的生存。手术类型(P=.81)和其他 4 个变量(分子分类 [P=.91]、乳房重建 [P=.36]、腋窝淋巴结清扫 [P=.32]和化疗 [P=.84])没有显著影响。训练集的 ROC 曲线显示,该模型在预测 1 年(AUC 0.802,95%CI 0.713-0.892)、5 年(AUC 0.813,95%CI 0.760-0.865)和 10 年(AUC 0.740,95%CI 0.672-0.808)总生存方面表现出良好的区分度。诊断后 1、5 和 10 年的 Brier 评分分别为 0.005、0.055 和 0.103,均小于 0.25,表明预测能力良好。测试集对外验证了模型的区分度和校准度。在 iCanPredict 应用程序中,当医生或女性输入女性的临床信息以及她们选择的手术和辅助治疗时,将呈现相应的 10 年生存预测。
该生存预测模型具有良好的模型区分度和校准度。iCanPredict 是中国首款为乳腺癌患者提供生存预测的工具。iCanPredict 将提高女性对不同手术相似生存率的认识以及对内分泌治疗依从性的重要性,最终帮助女性做出关于乳腺癌治疗的知情决策。