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Establishment of clinical diagnostic models using glucose, lipid, and urinary polypeptides in gestational diabetes mellitus

机译:使用葡萄糖,脂质和尿液多肽在妊娠期糖尿病中建立临床诊断模型

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Background Gestational diabetes mellitus (GDM) has many adverse outcomes that seriously threaten the short-term and long-term health of mothers and infants. This study comprehensively analyzed the clinical diagnostic value of GDM-related clinical indexes and urine polypeptide research results, and established comprehensive index diagnostic models. Methods In this study, diagnostic values from the clinical indexes of serum triglyceride (TRIG), high-density lipoprotein cholesterol (HDL-C), fasting plasma glucose (FPG) and glycosylated hemoglobin (HbA1c), and 7 GDM-related urinary polypeptides were analyzed retrospectively. The multiple logistic regression equation, multilayer perceptron neural network model, radial basis function, and discriminant analysis function models of GDM-related indexes were established using machine language. Results The results showed that HbA1c had the highest diagnostic value for GDM, with an area under the curve (AUC) of 0.769. When the cut-off value was 4.95, the diagnostic sensitivity and specificity were 70.5% and 70.0%, respectively. Among the seven GDM-related urinary polypeptides, human hemopexin (HEMO) had the highest diagnostic value, with an AUC of 0.690. When the cut-off value was 368.5, the sensitivity and specificity were 79.5% and 43.3%, respectively. The AUC of the multilayer perceptron neural network model was 0.942, followed by binary logistic regression (0.938), radial basis function model (0.909), and the discriminant analysis function model (0.908). Conclusion The establishment of a GDM diagnostic model combining blood glucose, blood lipid, and urine polypeptide indexes can lay a foundation for exploring machine language and artificial intelligence in diagnostic systems.
机译:背景技术妊娠糖尿病Mellitus(GDM)具有许多不利结果,严重威胁着母亲和婴儿的短期和长期健康。本研究全面分析了GDM相关的临床指标和尿多肽研究结果的临床诊断价值,并建立了综合指数诊断模型。本研究中的方法,来自血清甘油三酯(Trig),高密度脂蛋白胆固醇(HDL-C),空腹血浆(FPG)和糖基化血红蛋白(HBA1C)和7GDM相关的泌尿多肽的诊断值回顾性分析。使用机器语言建立了多层回归方程,多层的感知性神经网络模型,径向基函数和GDM相关索引的判别分析函数模型。结果结果表明,HBA1C对GDM的诊断值最高,曲线下(AUC)为0.769。当截止值为4.95时,诊断敏感性和特异性分别为70.5%和70.0%。在七种GDM相关的尿上多肽中,人血红蛋白(HEMO)具有最高的诊断价值,AUC为0.690。当截止值为368.5时,敏感性和特异性分别为79.5%和43.3%。 Multidayer Perceptron神经网络模型的AUC为0.942,其次是二进制物流回归(0.938),径向基函数模型(0.909)和判别分析功能模型(0.908)。结论建立血糖,血脂和尿液多肽指标组合组合血糖,血脂和尿液多肽指标的基础,可以探索诊断系统中的机器语言和人工智能。

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