Serum bone metabolism biomarkers in predicting tumor bone metastasis risk and their association with cancer pain: a retrospective study.

IF 2.5 Q2 CLINICAL NEUROLOGY
Frontiers in pain research (Lausanne, Switzerland) Pub Date : 2025-03-28 eCollection Date: 2025-01-01 DOI:10.3389/fpain.2025.1514459
Sijia Zhang, Kai Huang, Tian Zhou, Yao Wang, Yunqing Xu, Quan Tang, Guangqin Xiao
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引用次数: 0

Abstract

Background: This study aims to develop a novel nomogram predictive model utilizing serum bone metabolism biomarkers to accurately predict and diagnose tumor bone metastasis. The creation of this model holds significant clinical implications, supporting the development of targeted intervention strategies, providing robust laboratory data, and guiding early patient treatment.

Methods: A retrospective cohort study was conducted involving 266 patients treated at hospitals from September 2021 to January 2024. Patients were classified into three groups based on disease characteristics: tumor patients without bone metastasis, tumor patients with bone metastasis, and a control group consisting of individuals with neither tumor nor bone metabolism-related conditions. The primary serum bone metabolism biomarkers assessed included the N-terminal mid fragment of osteocalcin (NMID), the total N-terminal propeptide of type I procollagen (TPINP), and the C-terminal telopeptide of type I collagen β-special sequence (β-CTX). Multivariate statistical methods, including logistic regression and Cox regression, were employed for data analysis, while the nomogram model was rigorously evaluated using a variety of tools such as receiver operating characteristic (ROC) curves.

Results: The study found that the levels of NMID, TPINP, and β-CTX were significantly elevated in patients with bone metastasis compared to the other groups. These biomarkers were strongly associated with the incidence of tumor bone metastasis and identified as independent risk factors for this condition. The nomogram model demonstrated exceptional predictive performance, characterized by high area under the AUC values, robust time-dependent ROC curves, accurate calibration curves, and effective decision curve analysis. Notably, a positive correlation was observed between NMID, TPINP, β-CTX, and numeric rating scale (NRS) pain scores, providing valuable biomarkers for evaluating and managing pain associated with tumor bone metastasis.

Conclusion: This study successfully established a nomogram predictive model based on serum bone metabolism biomarkers, with NMID, TPINP, and β-CTX emerging as critical indicators. The correlation between these biomarkers and NRS pain scores offers a novel understanding of the pain mechanisms associated with tumor bone metastasis, providing clinicians with essential reference points for diagnostic and therapeutic decision-making, thereby enhancing the practical application of the model in clinical settings.

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血清骨代谢生物标志物预测肿瘤骨转移风险及其与癌痛的关系:一项回顾性研究。
背景:本研究旨在利用血清骨代谢生物标志物建立一种新的nomogram预测模型,以准确预测和诊断肿瘤骨转移。该模型的创建具有重要的临床意义,支持有针对性的干预策略的发展,提供可靠的实验室数据,并指导早期患者治疗。方法:采用回顾性队列研究,纳入2021年9月至2024年1月在医院就诊的266例患者。根据疾病特征将患者分为三组:无骨转移的肿瘤患者,有骨转移的肿瘤患者,以及由既没有肿瘤也没有骨代谢相关疾病的个体组成的对照组。评估的主要血清骨代谢生物标志物包括骨钙素n端中间片段(NMID)、I型前胶原总n端前肽(TPINP)和I型胶原β-特殊序列c端末端肽(β-CTX)。采用logistic回归、Cox回归等多元统计方法进行数据分析,并采用受试者工作特征(ROC)曲线等多种工具对nomogram模型进行严格评价。结果:研究发现骨转移患者的NMID、TPINP、β-CTX水平较其他组明显升高。这些生物标志物与肿瘤骨转移的发生率密切相关,并被确定为该疾病的独立危险因素。该模型具有AUC下面积大、随时间变化的ROC曲线鲁棒性强、校正曲线准确、决策曲线分析有效等特点。值得注意的是,NMID、TPINP、β-CTX和数值评定量表(NRS)疼痛评分之间存在正相关,为评估和管理与肿瘤骨转移相关的疼痛提供了有价值的生物标志物。结论:本研究成功建立了以NMID、TPINP、β-CTX为关键指标的基于血清骨代谢生物标志物的nomogram预测模型。这些生物标志物与NRS疼痛评分之间的相关性提供了与肿瘤骨转移相关的疼痛机制的新理解,为临床医生提供了诊断和治疗决策的基本参考点,从而增强了该模型在临床环境中的实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.10
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