Hu Yuchen, Tang Junfeng, Liu Xiaofeng, Sun Yusheng, Gong Baojun, Gao Qing
Department of Orthopedics, Lu'an People's Hospital of Anhui Province, Lu'an Hospital of Anhui Medical University, No. 21, West Wanxi Road, Jin'an District, Lu'an City, 237000, Anhui Province, China.
Sci Rep. 2025 Feb 8;15(1):4678. doi: 10.1038/s41598-025-89222-7.
Breast cancer is currently the most common malignant tumor affecting women's health worldwide. The rise in breast cancer metastases among patients is attributed to the inherent variability in metastatic behavior. In breast cancer, bones are the primary location for distant metastases, significantly impacting the survival rates of elderly (≥ 65) patients. The use of surgery and chemotherapy in this population is controversial. This study seeks to create a tool for forecasting overall survival (OS) in older breast cancer patients with bone metastases and to determine the optimal candidates for surgery and chemotherapy. Elderly female breast cancer patients with bone metastases from the Surveillance, Epidemiology, and End Results (SEER) database were included in this study and categorized into a training cohort and a validation cohort using R software. To identify independent predictors of OS in this population, both univariate and multivariate Cox regression analyses were conducted. Subsequently, a prognostic nomogram was created to estimate OS at 12, 24, and 36 months. The nomogram's accuracy and practical value were assessed using a calibration curve, area under the curve (AUC), and decision curve analysis (DCA). At the same time, a mortality risk classification system based on the nomogram was created to divide the population into high and low mortality risk categories, and subgroups were analyzed to determine the optimal candidates for surgery and chemotherapy. This study encompassed 2257 elderly female breast cancer patients with bone metastases, divided into 1581 participants for the training cohort and 676 for the validation cohort. Both univariate and multivariate Cox regression analyses validated those variables such as age, race, marital status, histological type, tumor grade, ER status, PR status, breast subtype, distant metastases (lung, liver, and brain), and treatment methods (surgery and chemotherapy) independently predicted OS in elderly female breast cancer patients with bone metastases (p < 0.05). Utilizing these independent predictors, a prognostic nomogram was developed to estimate OS at 12, 24, and 36 months. The calibration curves indicated that the nomogram's predictions closely matched the observed outcomes. The nomogram's AUC for forecasting OS at 12, 24, and 36 months was 0.753, 0.748, and 0.745 in the training cohort, and 0.744, 0.723, and 0.723 in the validation cohort. Additionally, the nomogram's AUC surpassed that of any individual independent predictor. DCA showed that the nomogram could achieve more net clinical benefit over a broader range of threshold probabilities. The nomogram-based risk classification system effectively sorted patients into two categories: low risk (≤ 820) and high risk (> 820). Subgroup analysis indicated that individuals classified as low-risk experienced the greatest advantage from surgery and chemotherapy (p < 0.05), whereas the high-risk group did not exhibit a statistically significant difference (p > 0.05). Drawing from the clinicopathological characteristics of elderly female breast cancer patients with bone metastases, this study developed a novel prognostic nomogram to forecast OS at 12, 24, and 36 months, enabling precise survival predictions. In addition, this study also constructed a mortality risk classification system, which can effectively help clinicians screen out the optimal candidates to benefit from surgery and chemotherapy and rationalize the allocation of medical resources.
乳腺癌是目前全球影响女性健康的最常见恶性肿瘤。患者中乳腺癌转移的增加归因于转移行为的内在变异性。在乳腺癌中,骨骼是远处转移的主要部位,对老年(≥65岁)患者的生存率有显著影响。在这一人群中使用手术和化疗存在争议。本研究旨在创建一种工具,用于预测老年骨转移乳腺癌患者的总生存期(OS),并确定手术和化疗的最佳候选者。本研究纳入了监测、流行病学和最终结果(SEER)数据库中的老年女性骨转移乳腺癌患者,并使用R软件将其分为训练队列和验证队列。为了确定该人群中OS的独立预测因素,进行了单变量和多变量Cox回归分析。随后,创建了一个预后列线图,以估计12、24和36个月时的OS。使用校准曲线、曲线下面积(AUC)和决策曲线分析(DCA)评估列线图的准确性和实用价值。同时,基于列线图创建了一个死亡风险分类系统,将人群分为高死亡风险和低死亡风险类别,并对亚组进行分析,以确定手术和化疗的最佳候选者。本研究纳入了2257例老年女性骨转移乳腺癌患者,其中1581例纳入训练队列,676例纳入验证队列。单变量和多变量Cox回归分析均验证了年龄、种族、婚姻状况、组织学类型、肿瘤分级、雌激素受体(ER)状态、孕激素受体(PR)状态、乳腺亚型、远处转移(肺、肝和脑)以及治疗方法(手术和化疗)等变量可独立预测老年女性骨转移乳腺癌患者的OS(p<0.05)。利用这些独立预测因素,开发了一个预后列线图,以估计12、24和36个月时的OS。校准曲线表明,列线图的预测与观察结果密切匹配。在训练队列中,列线图预测12、24和36个月时OS的AUC分别为0.753、0.748和0.745,在验证队列中分别为0.744、0.723和0.723。此外,列线图的AUC超过了任何单个独立预测因素。DCA表明,在更广泛的阈值概率范围内,列线图可以实现更多的净临床获益。基于列线图的风险分类系统有效地将患者分为两类:低风险(≤820)和高风险(>820)。亚组分析表明,被归类为低风险的个体从手术和化疗中获益最大(p<0.05),而高风险组没有显示出统计学上的显著差异(p>0.05)。本研究根据老年女性骨转移乳腺癌患者的临床病理特征,开发了一种新的预后列线图,以预测12、24和36个月时的OS,实现精确的生存预测。此外,本研究还构建了一个死亡风险分类系统,可有效帮助临床医生筛选出从手术和化疗中获益的最佳候选者,合理分配医疗资源。