Awodutire Phillip Oluwatobi, Kattan Michael W, Ilori Oluwatosin Stephen, Ilori Oluwatosin Ruth
Cleveland Clinic, Cleveland, OH 44195, USA.
Ladoke Akintola University of Technology Teaching Hospital, Ogbomosho 212102, Nigeria.
Cancers (Basel). 2024 Feb 4;16(3):668. doi: 10.3390/cancers16030668.
This study addresses the significant challenge of low survival rates in patients with cause-specific lung cancer accompanied by bone or brain metastases. Recognizing the critical need for an effective predictive model, the research aims to establish survival prediction models using both parametric and non-parametric approaches.
Clinical data from lung cancer patients with at least one bone or brain metastasis between 2000 and 2020 from the SEER database were utilized. Four models were constructed: Cox proportional hazard, Weibull accelerated failure time (AFT), log-normal AFT, and Zografos-Balakrishnan log-normal (ZBLN). Independent prognostic factors for cause-specific survival were identified, and model fit was evaluated using Akaike's and Bayesian information criteria. Internal validation assessed predictive accuracy and discriminability through the Harriel Concordance Index (C-index) and calibration plots.
A total of 20,412 patients were included, with 14,290 (70%) as the training cohort and 6122 (30%) validation. Independent prognostic factors selected for the study were age, race, sex, primary tumor site, disease grade, total malignant tumor in situ, metastases, treatment modality, and histology. Among the accelerated failure time (AFT) models considered, the ZBLN distribution exhibited the most robust model fit for the 3- and 5-year survival, as evidenced by the lowest values of Akaike's information criterion of 6322 and 79,396, and the Bayesian information criterion of 63,495 and 79,396, respectively. This outperformed other AFT and Cox models (AIC = [156,891, 211,125]; BIC = [158,848, 211,287]). Regarding predictive accuracy, the ZBLN AFT model achieved the highest concordance C-index (0.682, 0.667), a better performance than the Cox model (0.669, 0.643). The calibration curves of the ZBLN AFT model demonstrated a high degree of concordance between actual and predicted values. All variables considered in this study demonstrated significance at the 0.05 level for the ZBLN AFT model. However, differences emerged in the significant variations in survival times between subgroups. The study revealed that patients with only bone metastases have a higher chance of survival compared to only brain and those with bone and brain metastases.
The study highlights the underutilized but accurate nature of the accelerated failure time model in predicting lung cancer survival and identifying prognostic factors. These findings have implications for individualized clinical decisions, indicating the potential for screening and professional care of lung cancer patients with at least one bone or brain metastasis in the future.
本研究应对特定病因肺癌伴骨或脑转移患者生存率低这一重大挑战。认识到有效预测模型的迫切需求,该研究旨在使用参数和非参数方法建立生存预测模型。
利用监测、流行病学和最终结果(SEER)数据库中2000年至2020年期间至少有一处骨或脑转移的肺癌患者的临床数据。构建了四个模型:Cox比例风险模型、威布尔加速失效时间(AFT)模型、对数正态AFT模型和佐格拉福斯 - 巴拉克里什南对数正态(ZBLN)模型。确定特定病因生存的独立预后因素,并使用赤池信息准则和贝叶斯信息准则评估模型拟合度。内部验证通过Harriel一致性指数(C指数)和校准图评估预测准确性和辨别力。
共纳入20412例患者,其中14290例(70%)作为训练队列,6122例(30%)作为验证队列。本研究选择的独立预后因素为年龄、种族、性别、原发肿瘤部位、疾病分级、原位恶性肿瘤总数、转移情况、治疗方式和组织学类型。在所考虑的加速失效时间(AFT)模型中,ZBLN分布在3年和5年生存率方面表现出最稳健的模型拟合,赤池信息准则值分别为6322和79396,贝叶斯信息准则值分别为63495和79396,这优于其他AFT模型和Cox模型(AIC = [156891, 211125];BIC = [158848, 211287])。在预测准确性方面,ZBLN AFT模型实现了最高的一致性C指数(0.682, 0.667),比Cox模型(0.669, 0.643)表现更好。ZBLN AFT模型的校准曲线显示实际值与预测值之间高度一致。本研究中考虑的所有变量在ZBLN AFT模型中均在0.05水平上具有显著性。然而,亚组之间生存时间的显著差异出现了。研究表明,仅发生骨转移的患者比仅发生脑转移以及同时发生骨和脑转移的患者有更高的生存机会。
该研究突出了加速失效时间模型在预测肺癌生存和识别预后因素方面未得到充分利用但准确的特性。这些发现对个体化临床决策具有启示意义,表明未来对至少有一处骨或脑转移的肺癌患者进行筛查和专业护理的潜力。