Shen Qiu-Ming, Li Zhuo-Ying, Wang Jing, Zou Yi-Xin, Fang Jie, Gao Li-Feng, Tan Yu-Ting, Li Hong-Lan, Xiang Yong-Bing
State Key Laboratory of Systems Medicine for Cancer, Shanghai Cancer Institute, Renji Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
Department of Epidemiology, Shanghai Cancer Institute, Shanghai, China.
Int J Cancer. 2025 Jun 23. doi: 10.1002/ijc.70004.
Present knowledge on metabolic perturbation prior to liver cancer is limited, with most studies unable to quantify the absolute concentrations of metabolites and lacking a focus on female-specific findings. We conducted a 1:1 matched nested case-control study (187 pairs of cases and controls) within the Shanghai Women's Health Study. A targeted metabolomics method was used to quantify 186 metabolites in plasma samples collected at recruitment. A multivariable conditional logistic regression model was utilized to estimate the odds ratio (OR) and 95% confidence interval (CI). Restricted cubic spline function was used to characterize the dose-response associations. A pathway analysis was conducted to identify the most relevant pathways. A metabolic score was calculated via a linear combination of metabolites with nonzero coefficients in the LASSO logistic regression model. After adjustment for potential confounders and correction for multiple testing, 27 metabolites were associated with liver cancer risk and a non-linear association was observed for glutamic acid. Primary bile acid biosynthesis and amino acid biosynthesis and metabolism were important pathways involved in the etiology. A metabolic score derived from 10 metabolites showed a positive linear association with liver cancer risk (OR: 8.44, 95% CI: 4.09-17.39). The metabolic score significantly improved the predictive performance of the model based on established risk factors alone, which included age, excess body weight, smoking, alcohol use, and medical history of hepatitis. Our findings reveal female-specific metabolic perturbations prior to liver cancer diagnosis and contribute to a better understanding of the etiology and prevention of liver cancer in women.
目前关于肝癌发生前代谢紊乱的知识有限,大多数研究无法量化代谢物的绝对浓度,且未关注女性特异性研究结果。我们在上海女性健康研究中开展了一项1:1匹配的巢式病例对照研究(187对病例和对照)。采用靶向代谢组学方法对招募时采集的血浆样本中的186种代谢物进行定量。利用多变量条件逻辑回归模型估计比值比(OR)和95%置信区间(CI)。使用受限立方样条函数来描述剂量反应关联。进行通路分析以识别最相关的通路。通过LASSO逻辑回归模型中系数非零的代谢物的线性组合计算代谢评分。在对潜在混杂因素进行调整并校正多重检验后,27种代谢物与肝癌风险相关,并且观察到谷氨酸存在非线性关联。初级胆汁酸生物合成以及氨基酸生物合成与代谢是病因学中涉及的重要通路。由10种代谢物得出的代谢评分与肝癌风险呈正线性关联(OR:8.44,95%CI:4.09 - 17.39)。该代谢评分显著提高了仅基于已确定的风险因素(包括年龄、超重、吸烟、饮酒和肝炎病史)的模型的预测性能。我们的研究结果揭示了肝癌诊断前女性特异性的代谢紊乱情况,有助于更好地理解女性肝癌的病因和预防。