Diagnosis of pregnancy disorder in the first-trimester patient plasma with Raman spectroscopy and protein analysis

IF 6.1 2区 医学 Q1 ENGINEERING, BIOMEDICAL
Ansuja P. Mathew, Gabriel Cutshaw, Olivia Appel, Meghan Funk, Lilly Synan, Joshua Waite, Saman Ghazvini, Xiaona Wen, Soumik Sarkar, Mark Santillan, Donna Santillan, Rizia Bardhan
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Abstract

Gestational diabetes mellitus (GDM) is a pregnancy disorder associated with short- and long-term adverse outcomes in both mothers and infants. The current clinical test of blood glucose levels late in the second trimester is inadequate for early detection of GDM. Here we show the utility of Raman spectroscopy (RS) for rapid and highly sensitive maternal metabolome screening for GDM in the first trimester. Key metabolites, including phospholipids, carbohydrates, and major amino acids, were identified with RS and validated with mass spectrometry, enabling insights into associated metabolic pathway enrichment. Using classical machine learning (ML) approaches, we showed the performance of the RS metabolic model (cross-validation AUC 0.97) surpassed that achieved with patients' clinical data alone (cross-validation AUC 0.59) or prior studies with single biomarkers. Further, we analyzed novel proteins and identified fetuin-A as a promising candidate for early GDM prediction. A correlation analysis showed a moderate to strong correlation between multiple metabolites and proteins, suggesting a combined protein-metabolic analysis integrated with ML would enable a powerful screening platform for first trimester diagnosis. Our study underscores RS metabolic profiling as a cost-effective tool that can be integrated into the current clinical workflow for accurate risk stratification of GDM and to improve both maternal and neonatal outcomes.

Abstract Image

利用拉曼光谱和蛋白质分析诊断初产妇血浆中的妊娠紊乱症
妊娠糖尿病(GDM)是一种与母婴短期和长期不良后果相关的妊娠疾病。目前临床上对妊娠后期血糖水平的检测不足以早期发现 GDM。在这里,我们展示了拉曼光谱(RS)在妊娠头三个月快速、高灵敏地筛查 GDM 的母体代谢组的实用性。利用拉曼光谱鉴定了包括磷脂、碳水化合物和主要氨基酸在内的关键代谢物,并通过质谱分析进行了验证,从而了解了相关代谢途径的丰富程度。使用经典的机器学习(ML)方法,我们发现 RS 代谢模型的性能(交叉验证 AUC 0.97)超过了仅使用患者临床数据(交叉验证 AUC 0.59)或之前使用单一生物标记物进行的研究。此外,我们还分析了新型蛋白质,发现胎蛋白-A 是预测早期 GDM 的理想候选蛋白。相关性分析表明,多种代谢物与蛋白质之间存在中度到高度的相关性,这表明蛋白质代谢分析与 ML 的结合将为孕前三个月的诊断提供一个强大的筛查平台。我们的研究强调了 RS 代谢图谱分析是一种具有成本效益的工具,可以整合到当前的临床工作流程中,对 GDM 进行准确的风险分层,并改善孕产妇和新生儿的预后。
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来源期刊
Bioengineering & Translational Medicine
Bioengineering & Translational Medicine Pharmacology, Toxicology and Pharmaceutics-Pharmaceutical Science
CiteScore
8.40
自引率
4.10%
发文量
150
审稿时长
12 weeks
期刊介绍: Bioengineering & Translational Medicine, an official, peer-reviewed online open-access journal of the American Institute of Chemical Engineers (AIChE) and the Society for Biological Engineering (SBE), focuses on how chemical and biological engineering approaches drive innovative technologies and solutions that impact clinical practice and commercial healthcare products.
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