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基于半乳糖凝集素-3和CVAI的2型糖尿病认知障碍预测模型的开发与验证

Development and validation of Galectin-3 and CVAI-based model for predicting cognitive impairment in type 2 diabetes.

作者信息

Zhou Xueling, Dai Ning, Yu Dandan, Niu Tong, Wang Shaohua

机构信息

School of Medicine, Southeast University, Nanjing, China.

Department of Endocrinology, Affiliated Zhongda Hospital of Southeast University, Nanjing, China.

出版信息

J Endocrinol Invest. 2025 Apr;48(4):1017-1031. doi: 10.1007/s40618-024-02506-z. Epub 2024 Nov 20.

Abstract

OBJECTIVE

The objective of this study is to develop a predictive model combining multiple indicators to quantify the risk of mild cognitive impairment (MCI) in T2DM patients.

METHODS

This study included Chinese T2DM patients who were hospitalized at Zhongda Hospital between November 2021 and May 2023. Clinical data, including demographics, medical history, biochemical tests, and cognitive status, were collected. Cognitive assessment was performed using neuropsychological tests, and MCI was diagnosed based on the Montreal Cognitive Assessment (MoCA) scores. The dataset was randomly divided into a training set and a validation set in a 7:3 ratio. Logistic regression analysis was conducted to identify factors influencing MCI in the training set. A nomogram-based scoring model was then developed by integrating these findings with high-risk clinical variables, and its performance was validated in the validation set.

RESULTS

In this study, T2DM patients were divided into a training set and a validation set in a 7:3 ratio. There were no significant differences in MCI incidence, demographics, or clinical characteristics between the two groups, confirming the appropriateness of model construction. In the training set, Galectin-3 and CVAI were significantly negatively correlated with cognitive function (MoCA and MMSE scores), and this negative correlation remained after adjusting for confounding variables. Logistic regression analysis revealed that age, CVAI, and Galectin-3 significantly increased the risk of MCI, while years of education had a protective effect. The constructed nomogram model, which integrated age, sex, education level, hypertension, CVAI, and Galectin-3 levels, exhibited high predictive performance (C-index of 0.816), with AUCs of 0.816 in the training set and 0.858 in the validation set, outperforming single indicators. PR curve analysis further validated the superiority of the nomogram model.

CONCLUSION

The straightforward, highly accurate, and interactive nomogram model developed in this study facilitate the early risk prediction of MCI in individuals with T2DM by incorporating Galectin-3, CVAI, and other common clinical risk factors.

摘要

目的

本研究旨在开发一种结合多种指标的预测模型,以量化2型糖尿病(T2DM)患者轻度认知障碍(MCI)的风险。

方法

本研究纳入了2021年11月至2023年5月期间在中大医院住院的中国T2DM患者。收集了包括人口统计学、病史、生化检查和认知状态在内的临床数据。使用神经心理学测试进行认知评估,并根据蒙特利尔认知评估(MoCA)评分诊断MCI。数据集以7:3的比例随机分为训练集和验证集。在训练集中进行逻辑回归分析以确定影响MCI的因素。然后通过将这些结果与高风险临床变量相结合,开发了基于列线图的评分模型,并在验证集中对其性能进行了验证。

结果

在本研究中,T2DM患者以7:3的比例分为训练集和验证集。两组之间的MCI发病率、人口统计学或临床特征无显著差异,证实了模型构建的合理性。在训练集中,半乳糖凝集素-3和CVAI与认知功能(MoCA和MMSE评分)显著负相关,在调整混杂变量后,这种负相关仍然存在。逻辑回归分析显示,年龄、CVAI和半乳糖凝集素-3显著增加了MCI的风险,而受教育年限具有保护作用。构建的列线图模型整合了年龄、性别、教育水平、高血压、CVAI和半乳糖凝集素-3水平,表现出较高的预测性能(C指数为0.816),训练集的AUC为0.816,验证集的AUC为0.858,优于单一指标。PR曲线分析进一步验证了列线图模型的优越性。

结论

本研究开发的简单、高度准确且交互式的列线图模型,通过纳入半乳糖凝集素-3、CVAI和其他常见临床风险因素,有助于对T2DM个体的MCI进行早期风险预测。

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