儿童糖尿病酮症酸中毒的代谢组学特征:与临床变量相关的关键代谢物、途径和面板。

IF 6 2区 医学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Molecular Medicine Pub Date : 2024-12-20 DOI:10.1186/s10020-024-01046-9
Paolo Spagnolo, David Tweddell, Enis Cela, Mark Daley, Cheril Clarson, C Anthony Rupar, Saverio Stranges, Michael Bravo, Gediminas Cepinskas, Douglas D Fraser
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引用次数: 0

摘要

背景:糖尿病酮症酸中毒(DKA)是1型糖尿病(T1D)的严重并发症,由相对胰岛素缺乏引起,可导致高血糖、酮血症和代谢性酸中毒。早期发现和治疗对于预防严重后果至关重要。这项儿童病例对照研究利用血浆代谢组学来探索与DKA相关的代谢改变,并确定预测性代谢物模式。方法:我们检查了34名T1D参与者,包括17名入院的严重DKA患者和17名胰岛素控制状态下年龄和性别匹配的个体。采用质子核磁共振和直接进样液相色谱/质谱分析了215种血浆代谢物。采用多元统计方法、机器学习技术和生物信息学进行数据分析。结果:经过多次比较调整后,发现65种代谢物在组间有显著差异(28种增加,37种减少)。代谢组学分析在区分严重DKA和胰岛素控制状态方面证明了100%的准确性。随机森林分析表明,分类精度主要受酮体、酰基肉碱和磷脂酰胆碱变化的影响。此外,代谢物组(数量从8到18)与关键的临床和生化变量相关,包括pH、碳酸氢盐、葡萄糖、HbA1c和格拉斯哥昏迷量表评分。结论:这些发现强调了严重DKA患者显著的代谢紊乱及其与关键临床指标的关联。未来的研究应该探索严重DKA的代谢改变是否可以识别并发症风险增加的患者和/或指导未来的治疗干预。
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Metabolomic signature of pediatric diabetic ketoacidosis: key metabolites, pathways, and panels linked to clinical variables.

Background: Diabetic ketoacidosis (DKA) is a serious complication of type 1 diabetes (T1D), arising from relative insulin deficiency and leading to hyperglycemia, ketonemia, and metabolic acidosis. Early detection and treatment are essential to prevent severe outcomes. This pediatric case-control study utilized plasma metabolomics to explore metabolic alterations associated with DKA and to identify predictive metabolite patterns.

Methods: We examined 34 T1D participants, including 17 patients admitted with severe DKA and 17 age- and sex-matched individuals in insulin-controlled states. A total of 215 plasma metabolites were analyzed using proton nuclear magnetic resonance and direct-injection liquid chromatography/mass spectrometry. Multivariate statistical methods, machine learning techniques, and bioinformatics were employed for data analysis.

Results: After adjusting for multiple comparisons, 65 metabolites were found to differ significantly between the groups (28 increased and 37 decreased). Metabolomics profiling demonstrated 100% accuracy in differentiating severe DKA from insulin-controlled states. Random forest analysis indicated that classification accuracy was primarily influenced by changes in ketone bodies, acylcarnitines, and phosphatidylcholines. Additionally, groups of metabolites (ranging in number from 8 to 18) correlated with key clinical and biochemical variables, including pH, bicarbonate, glucose, HbA1c, and Glasgow Coma Scale scores.

Conclusions: These findings underscore significant metabolic disturbances in severe DKA and their associations with critical clinical indicators. Future investigations should explore if metabolic alterations in severe DKA can identify patients at increased risk of complications and/or guide future therapeutic interventions.

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来源期刊
Molecular Medicine
Molecular Medicine 医学-生化与分子生物学
CiteScore
8.60
自引率
0.00%
发文量
137
审稿时长
1 months
期刊介绍: Molecular Medicine is an open access journal that focuses on publishing recent findings related to disease pathogenesis at the molecular or physiological level. These insights can potentially contribute to the development of specific tools for disease diagnosis, treatment, or prevention. The journal considers manuscripts that present material pertinent to the genetic, molecular, or cellular underpinnings of critical physiological or disease processes. Submissions to Molecular Medicine are expected to elucidate the broader implications of the research findings for human disease and medicine in a manner that is accessible to a wide audience.
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