Construction and validation of risk prediction model for breast cancer bone metastasis
Objective To identify the risk factors of bone metastasis in breast cancer and construct a predictive model.Methods The data of breast cancer patients met inclusion and exclusion criteria from 2010 to 2015 were obtained from the SEER*Stat database.Additionally,the data of breast cancer patients diagnosed with distant metastasis in the Affiliated Hospital of Southwest Medical University from 2021 to 2023 were collected.The patients from the SEER database were randomly divided into training(70%)and validation(30%)sets using R software,and the breast cancer patients from the Affiliated Hospital of Southwest Medical University were included in the validation set.The univariate and multivariate logistic regressions were used to identify risk factors of breast cancer bone metastasis.A nomogram predictive model was then constructed based on these factors.The predictive effect of the nomogram was evaluated using the area under the receiver operating characteristic curve(AUC),calibration curve,and decision curve analysis.Results The study included 8 637 breast cancer patients,with 5 998 in the training set and 2 639(including 68 patients in the Affiliated Hospital of Southwest Medical University)in the validation set.The statistical differences in the race and N stage were observed between the training and validation sets(P<0.05).The multivariate logistic regression analysis revealed that being of white race,having a low histological grade(Ⅰ-Ⅱ),positive estrogen and progesterone receptors status,negative human epidermal growth factor receptor 2 status,and non-undergoing surgery for the primary breast cancer site increased the risk of breast cancer bone metastasis(P<0.05).The nomogram based on these risk factors showed that the AUC(95%CI)of the training and validation sets was 0.676(0.533,0.744)and 0.690(0.549,0.739),respectively.The internal calibration using 1 000 Bootstrap samples demonstrated that the calibration curves for both sets closely approximated the ideal 45-degree reference line.The decision curve analysis indicated a stronger clinical utility within a certain probability threshold range.Conclusions This study constructs a nomogram predictive model based on factors related to the risk of breast cancer bone metastasis,which demonstrates a good consistency between actual and predicted outcomes in both training and validation sets.The nomogram shows a stronger clinical utility,but further analysis is needed to understand the reasons of the lower differentiation of nomogram in both sets.
breast cancerbone metastasisrisk factorpredictive model