Prediction Model for Polyneuropathy in Recent-Onset Diabetes Based on Serum Neurofilament Light Chain, Fibroblast Growth Factor-19 and Standard Anthropometric and Clinical Variables

IF 4.6 2区 医学 Q1 ENDOCRINOLOGY & METABOLISM Diabetes/Metabolism Research and Reviews Pub Date : 2024-11-27 DOI:10.1002/dmrr.70009
Haifa Maalmi, Phong B. H. Nguyen, Alexander Strom, Gidon J. Bönhof, Wolfgang Rathmann, Dan Ziegler, Michael P. Menden, Michael Roden, Christian Herder, GDS Group
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Abstract

Background

Diabetic sensorimotor polyneuropathy (DSPN) is often asymptomatic and remains undiagnosed. The ability of clinical and anthropometric variables to identify individuals likely to have DSPN might be limited. Here, we aimed to integrate protein biomarkers for reliably predicting present DSPN.

Methods

Using the proximity extension assay, we measured 135 neurological and protein biomarkers of inflammation in blood samples of 423 individuals with recent-onset diabetes from the German Diabetes Study (GDS). DSPN was diagnosed based on the Toronto Consensus Criteria. We constructed (i) a protein-based prediction model using LASSO logistic regression, (ii) an optimised traditional risk model with age, sex, waist circumference, height and diabetes type and (iii) a model combining both. All models were bootstrapped to assess the robustness, and optimism-corrected AUCs (95% CI) were reported.

Results

DSPN was present in 16% of the study population. LASSO logistic regression selected the neurofilament light chain (NFL) and fibroblast growth factor-19 (FGF-19) as the most predictive protein biomarkers for detecting DSPN in individuals with recent-onset diabetes. The protein-based model achieved an AUC of 0.66 (0.59, 0.73), while the traditional risk model had an AUC of 0.66 (0.61, 0.74). However, combined features boosted the model performance to an AUC of 0.72 (0.67, 0.79).

Conclusion

We developed a prediction model for DSPN in recent-onset diabetes based on two protein biomarkers and five standard anthropometric, demographic and clinical variables. The model has a fair discrimination performance and might be used to inform the referral of patients for further testing.

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基于血清神经丝轻链、成纤维细胞生长因子-19 以及标准人体测量和临床变量的新发糖尿病多发性神经病预测模型
背景:糖尿病感觉运动性多发性神经病(DSPN)通常无症状,仍未得到诊断。临床和人体测量变量识别可能患有 DSPN 的个体的能力可能有限。在此,我们旨在整合蛋白质生物标志物,以可靠地预测目前的 DSPN:方法:我们使用近距离延伸测定法,测量了德国糖尿病研究(GDS)中 423 名新发糖尿病患者血液样本中的 135 种神经和炎症蛋白生物标志物。DSPN 的诊断依据是多伦多共识标准。我们构建了(i)基于蛋白质的预测模型(使用 LASSO 逻辑回归)、(ii)优化的传统风险模型(包含年龄、性别、腰围、身高和糖尿病类型)和(iii)两者相结合的模型。所有模型都经过引导以评估其稳健性,并报告了乐观校正后的AUC(95% CI):结果:16%的研究对象存在DSPN。LASSO逻辑回归选择了神经丝蛋白轻链(NFL)和成纤维细胞生长因子-19(FGF-19)作为检测新发糖尿病患者DSPN的最具预测性的蛋白质生物标记物。基于蛋白质的模型的AUC为0.66(0.59,0.73),而传统风险模型的AUC为0.66(0.61,0.74)。然而,综合特征将模型性能提高到了 0.72 (0.67, 0.79):我们根据两个蛋白质生物标记物和五个标准人体测量、人口统计学和临床变量建立了一个新发糖尿病 DSPN 预测模型。该模型具有良好的鉴别性能,可用于为转诊患者提供进一步检测的信息。
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来源期刊
Diabetes/Metabolism Research and Reviews
Diabetes/Metabolism Research and Reviews 医学-内分泌学与代谢
CiteScore
17.20
自引率
2.50%
发文量
84
审稿时长
4-8 weeks
期刊介绍: Diabetes/Metabolism Research and Reviews is a premier endocrinology and metabolism journal esteemed by clinicians and researchers alike. Encompassing a wide spectrum of topics including diabetes, endocrinology, metabolism, and obesity, the journal eagerly accepts submissions ranging from clinical studies to basic and translational research, as well as reviews exploring historical progress, controversial issues, and prominent opinions in the field. Join us in advancing knowledge and understanding in the realm of diabetes and metabolism.
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Prediction Model for Polyneuropathy in Recent-Onset Diabetes Based on Serum Neurofilament Light Chain, Fibroblast Growth Factor-19 and Standard Anthropometric and Clinical Variables A New Quantitative Neuropad for Early Diagnosis of Diabetic Peripheral Neuropathy One in Five Atherosclerotic Cardiovascular Disease Events in Individuals With Diabetes Attributed to Elevated Remnant Cholesterol Performance of Continuous Glucose Monitoring System Among Patients With Acute Ischaemic Stroke Treated With Mechanical Thrombectomy Postprandial Plasma Glucose With a Fasting Time of 4–7.9 h Is Positively Associated With Cancer Mortality in US Adults
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