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Metabolomic Characterization of Ovarian Epithelial Carcinomas by HRMAS-NMR Spectroscopy

机译:HRMAS-NMR光谱法对卵巢上皮癌的代谢组学表征

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摘要

Objectives. The objectives of the present study are to determine if a metabolomic study by HRMAS-NMR can (i) discriminate between different histological types of epithelial ovarian carcinomas and healthy ovarian tissue, (ii) generate statistical models capable of classifying borderline tumors and (iii) establish a potential relationship with patient's survival or response to chemotherapy. Methods. 36 human epithelial ovarian tumor biopsies and 3 healthy ovarian tissues were studied using 1H HRMAS NMR spectroscopy and multivariate statistical analysis. Results. The results presented in this study demonstrate that the three histological types of epithelial ovarian carcinomas present an effective metabolic pattern difference. Furthermore, a metabolic signature specific of serous (N-acetyl-aspartate) and mucinous (N-acetyl-lysine) carcinomas was found. The statistical models generated in this study are able to predict borderline tumors characterized by an intermediate metabolic pattern similar to the normal ovarian tissue. Finally and importantly, the statistical model of serous carcinomas provided good predictions of both patient's survival rates and the patient's response to chemotherapy. Conclusions. Despite the small number of samples used in this study, the results indicate that metabolomic analysis of intact tissues by HRMAS-NMR is a promising technique which might be applicable to the therapeutic management of patients.
机译:目标。本研究的目的是确定通过HRMAS-NMR进行的代谢组学研究能否(i)区分上皮性卵巢癌和健康的卵巢组织的不同组织学类型,(ii)生成能够对边缘性肿瘤进行分类的统计模型,以及(iii)与患者的生存或对化疗的反应建立潜在的关系。方法。使用 1 H HRMAS NMR光谱学和多元统计分析研究了36例人上皮性卵巢肿瘤活检组织和3例健康卵巢组织。结果。这项研究中提出的结果表明,三种组织学类型的上皮性卵巢癌表现出有效的代谢模式差异。此外,发现了浆液性(N-乙酰基-天冬氨酸)和粘液性(N-乙酰基-赖氨酸)癌的代谢特征。在这项研究中生成的统计模型能够预测以类似于正常卵巢组织的中间代谢模式为特征的边缘性肿瘤。最后且重要的是,浆液性癌的统计模型可以很好地预测患者的存活率和患者对化疗的反应。结论。尽管本研究中使用的样品数量很少,但结果表明,通过HRMAS-NMR对完整组织进行代谢组学分析是一种有前途的技术,可能适用于患者的治疗管理。

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