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Applying Serum Cytokine Levels to Predict Pain Severity in Cancer Patients

机译:应用血清细胞因子水平预测癌症患者的疼痛严重程度

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Background and Aim: Cancers originating in the breast, lung and prostate often metastasize to the bone, frequently resulting in cancer-induced bone pain that can be challenging to manage despite conventional analgesic therapy. This exploratory study’s aim was to identify potential biomarkers associated with cancer-induced pain by examining a sample population of breast cancer patients undergoing bisphosphonate therapy. Methods: A secondary analysis of the primary study was performed to quantify serum cytokine levels for correlation to pain scores. Cytokines with statistically significant correlations were then input into a stepwise regression analysis to generate a predictive equation for a patient’s pain severity. In an effort to find additional potential biomarkers, correlation analysis was performed between these factors and a more comprehensive panel of cytokines and chemokines from breast, lung, and prostate cancer patients. Results: Statistical analysis identified nine cytokines (GM-CSF, IFNγ, IL-1β, IL-2, IL-4, IL-5, IL-12p70, IL-17A, and IL-23) that had significant negative correlations with pain scores and they could best predict pain severity through a predictive equation generated for this specific evaluation. After performing a correlation analysis between these factors and a larger panel of cytokines and chemokines, samples from breast, lung and prostate patients showed distinct correlation profiles, highlighting the clinical challenge of applying pain-associated cytokines related to more defined nociceptive states, such as arthritis, to a cancer pain state. Conclusion: Exploratory analyses such as the ones presented here will be a beneficial tool to expand insights into potential cancer-specific nociceptive mechanisms and to develop novel therapeutics.
机译:背景和目的:源自乳腺癌,肺和前列腺常剧的癌症经常导致癌症诱导的骨疼痛,尽管常规镇痛治疗尽管仍然有挑战性。该探索性研究的目的是通过检查接受双膦酸盐疗法的乳腺癌患者的样本群体来确定与癌症诱导的疼痛相关的潜在生物标志物。方法:进行初步研究的二次分析以量化血清细胞因子水平以相关与疼痛评分。然后输入具有统计学上显着相关性的细胞因子进入逐步回归分析以产生患者疼痛严重程度的预测方程。为了寻找额外的潜在生物标志物,在这些因素和来自乳腺癌,肺癌和前列腺癌患者的细胞因子和趋化因子之间进行相关分析。结果:统计分析鉴定九种细胞因子(GM-CSF,IFNγ,IL-1β,IL-2,IL-4,IL-5,IL-12P70,IL-17A和IL-23)与疼痛具有显着的负相关性分数,它们可以通过针对该特定评估产生的预测方程来最佳地预测疼痛严重程度。在这些因素和较大面板的细胞因子和趋化因子之间进行相关分析后,来自乳腺癌,肺和前列腺患者的样本表现出不同的相关性曲线,突出了应用疼痛相关细胞因子相关的临床挑战,这些疾病患者有关的痛苦状态(如关节炎) ,癌症疼痛状态。结论:探索性分析如这里所示的探索性分析将是一个有益的工具,可以扩展潜在的癌症特异性伤害机制并开发新的治疗方法。

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