利用代谢组学和机器学习算法预测接受他克莫司治疗的肾移植患者的移植后糖尿病。

Q2 Medicine
Medicine and Pharmacy Reports Pub Date : 2024-10-01 Epub Date: 2024-10-30 DOI:10.15386/mpr-2780
Dan Burghelea, Tudor Moisoiu, Cristina Ivan, Alina Elec, Adriana Munteanu, Raluca Tabrea, Oana Antal, Teodor Paul Kacso, Carmen Socaciu, Florin Ioan Elec, Ina Maria Kacso
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引用次数: 0

摘要

背景和目的:他克莫司(TAC)能显著提高移植后肾脏移植物的存活率,但它也有不良副作用。过度暴露于他克莫司导致的最常见并发症是新发糖尿病(DM),这种情况会对肾移植功能和患者预后产生负面影响。新发糖尿病与慢性移植功能障碍、心血管疾病发病率和死亡率的增加有关。尽管其潜在机制仍不清楚,但omics 领域的新兴研究显示了其前景。本研究的目的是通过超高效液相色谱-质谱联用仪(UHPLC-MS)和机器学习算法进行非靶向代谢组学分析,研究肾移植患者在TAC暴露后发生新生DM与未发生新生DM的代谢组学特征:方法:34 名肾移植患者接受了至少 6 个月的他克莫司治疗,研究人员收集了每位患者的血清样本。对血清代谢物进行了全面分析,从而将患者分为新发糖尿病组和非糖尿病组。使用超高效液相色谱-质谱对血清进行了代谢组学分析:结果:在 34 名患者中,16 人被诊断为 TAC 引起的糖尿病。血清样本中共鉴定出 334 种代谢物,其中 10 种与新发糖尿病组有显著相关性。这些代谢物大多与脂质代谢的改变有关:代谢组学在接受他克莫司治疗的肾移植患者中的应用既可行又有效,可以确定与新发糖尿病相关的代谢物。这种方法可为了解他克莫司诱发糖尿病的代谢改变提供有价值的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The use of metabolomics and machine learning algorithms to predict post-transplant diabetes mellitus in renal transplant patients on Tacrolimus therapy.

Background and aim: Tacrolimus (TAC) has significantly improved kidney graft survival following transplantation, though it is associated with adverse side effects. The most prevalent complication resulting from excessive TAC exposure is the onset of de novo diabetes mellitus (DM), a condition that can negatively impact both renal graft function and patient outcomes. De novo DM is linked to an increased risk of chronic transplant dysfunction, as well as cardiovascular morbidity and mortality. Although the underlying mechanisms remain unclear, emerging research in the field of omics shows promise. The aim of this study was to investigate the metabolomic profile of kidney transplant patients who developed de novo DM, in comparison to those who did not, following TAC exposure, using untargeted metabolomic analysis through ultra-high-performance liquid chromatography-mass spectrometry (UHPLC-MS) and machine learning algorithms.

Methods: A cohort of 34 kidney transplant patients on a Tacrolimus regimen for at least 6 months was enrolled in the study, with serum samples collected from each patient. Comprehensive profiling of serum metabolites was performed, enabling the classification of patients into de novo diabetes mellitus and non diabetes groups. The metabolomic analysis of serum was conducted using UHPLC-MS.

Results: Of the 34 patients, 16 were diagnosed with TAC-induced diabetes. A total of 334 metabolites were identified in the serum samples, of which 10 demonstrated a significant correlation with the de novo diabetes mellitus group. Most of these metabolites were linked to alterations in lipid metabolism.

Conclusion: The application of metabolomics in kidney transplant patients undergoing a Tacrolimus regimen is both feasible and effective in identifying metabolites associated with de novo diabetes mellitus. This approach may provide valuable insights into the metabolic alterations underlying TAC-induced diabetes.

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来源期刊
Medicine and Pharmacy Reports
Medicine and Pharmacy Reports Medicine-Medicine (all)
CiteScore
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