妇女健康倡议》中乳腺癌和结直肠癌风险的代谢物预测指标。

IF 3.4 3区 生物学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY Metabolites Pub Date : 2024-08-20 DOI:10.3390/metabo14080463
Sandi L Navarro, Brian D Williamson, Ying Huang, G A Nagana Gowda, Daniel Raftery, Lesley F Tinker, Cheng Zheng, Shirley A A Beresford, Hayley Purcell, Danijel Djukovic, Haiwei Gu, Howard D Strickler, Fred K Tabung, Ross L Prentice, Marian L Neuhouser, Johanna W Lampe
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引用次数: 0

摘要

代谢组学已被广泛用于捕捉暴露组。我们研究了在妇女健康倡议骨矿密度亚队列中,758 名患有已判定癌症的妇女(n = 577 名乳腺癌 (BC) 和 n = 181 名结直肠癌 (CRC))和 n = 758 名有可用标本(平均在诊断前 7.2 年采集)的对照组中,前瞻性测量的代谢物是否比已确定的风险因素更具预测力。空腹样本通过 LC-MS/MS 和血清中的脂质组学以及 24 小时尿液中的 GC-MS 和 NMR 进行分析。在特征选择方面,我们采用了 LASSO 回归和超级学习者算法。随后使用逻辑回归和超级学习器程序推导出预测模型,并使用交叉验证(CV)评估其性能。对 BC 而言,代谢物的预测效果并没有超过既有的风险因素(CV-AUCs~0.57)。对 CRC 而言,添加代谢物后,预测效果有所提高(各平台的 CV-AUC 中值从 ~0.54 提高到 ~0.60)。与能量代谢相关的代谢物:腺苷、2-羟基戊二酸、N-乙酰甘氨酸、牛磺酸、苏氨酸、LPC (FA20:3)、乙酸盐和甘油酸盐;蛋白质代谢:组氨酸、亮氨酸、异亮氨酸、N-乙酰谷氨酸、尿囊素、N-乙酰神经氨酸、羟脯氨酸和尿嘧啶;以及膳食/微生物代谢物:肌醇、三甲胺-N-氧化物和 7-甲基鸟嘌呤。能量代谢可能在 CRC 的发展过程中起着关键作用,并且可能在疾病发展之前就已显现。
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Metabolite Predictors of Breast and Colorectal Cancer Risk in the Women's Health Initiative.

Metabolomics has been used extensively to capture the exposome. We investigated whether prospectively measured metabolites provided predictive power beyond well-established risk factors among 758 women with adjudicated cancers [n = 577 breast (BC) and n = 181 colorectal (CRC)] and n = 758 controls with available specimens (collected mean 7.2 years prior to diagnosis) in the Women's Health Initiative Bone Mineral Density subcohort. Fasting samples were analyzed by LC-MS/MS and lipidomics in serum, plus GC-MS and NMR in 24 h urine. For feature selection, we applied LASSO regression and Super Learner algorithms. Prediction models were subsequently derived using logistic regression and Super Learner procedures, with performance assessed using cross-validation (CV). For BC, metabolites did not increase predictive performance over established risk factors (CV-AUCs~0.57). For CRC, prediction increased with the addition of metabolites (median CV-AUC across platforms increased from ~0.54 to ~0.60). Metabolites related to energy metabolism: adenosine, 2-hydroxyglutarate, N-acetyl-glycine, taurine, threonine, LPC (FA20:3), acetate, and glycerate; protein metabolism: histidine, leucic acid, isoleucine, N-acetyl-glutamate, allantoin, N-acetyl-neuraminate, hydroxyproline, and uracil; and dietary/microbial metabolites: myo-inositol, trimethylamine-N-oxide, and 7-methylguanine, consistently contributed to CRC prediction. Energy metabolism may play a key role in the development of CRC and may be evident prior to disease development.

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来源期刊
Metabolites
Metabolites Biochemistry, Genetics and Molecular Biology-Molecular Biology
CiteScore
5.70
自引率
7.30%
发文量
1070
审稿时长
17.17 days
期刊介绍: Metabolites (ISSN 2218-1989) is an international, peer-reviewed open access journal of metabolism and metabolomics. Metabolites publishes original research articles and review articles in all molecular aspects of metabolism relevant to the fields of metabolomics, metabolic biochemistry, computational and systems biology, biotechnology and medicine, with a particular focus on the biological roles of metabolites and small molecule biomarkers. Metabolites encourages scientists to publish their experimental and theoretical results in as much detail as possible. Therefore, there is no restriction on article length. Sufficient experimental details must be provided to enable the results to be accurately reproduced. Electronic material representing additional figures, materials and methods explanation, or supporting results and evidence can be submitted with the main manuscript as supplementary material.
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