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白质结构和衍生网络特性可用于预测老年人从轻度认知障碍向阿尔茨海默病的进展。

White matter structure and derived network properties are used to predict the progression from mild cognitive impairment of older adults to Alzheimer's disease.

机构信息

Center for Rehabilitation Medicine, Department of Radiology, Zhejiang Provincial People's Hospital (Affiliated People's Hospital, Hangzhou Medical College), Hangzhou, Zhejiang, China.

Jinzhou Medical University, Jinzhou, Liaoning Province, China.

出版信息

BMC Geriatr. 2024 Aug 19;24(1):691. doi: 10.1186/s12877-024-05293-7.

Abstract

OBJECTIVE

To identify white matter fiber injury and network changes that may lead to mild cognitive impairment (MCI) progression, then a joint model was constructed based on neuropsychological scales to predict high-risk individuals for Alzheimer's disease (AD) progression among older adults with MCI.

METHODS

A total of 173 MCI patients were included from the Alzheimer's Disease Neuroimaging Initiative(ADNI) database and randomly divided into training and testing cohorts. Forty-five progressed to AD during a 4-year follow-up period. Diffusion tensor imaging (DTI) techniques extracted relevant DTI quantitative features for each patient. In addition, brain networks were constructed based on white matter fiber bundles to extract network property features. Ensemble dimensionality reduction was applied to reduce both DTI quantitative features and network features from the training cohort, and machine learning algorithms were added to construct white matter signature. In addition, 52 patients from the National Alzheimer's Coordinating Center (NACC) database were used for external validation of white matter signature. A joint model was subsequently generated by combining with scale scores, and its performance was evaluated using data from the testing cohort.

RESULTS

Based on multivariate logistic regression, clinical dementia rating and Alzheimer's disease assessment scales (CDRS and ADAS, respectively) were selected as independent predictive factors. A joint model was constructed in combination with the white matter signature. The AUC, sensitivity, and specificity in the training cohort were 0.938, 0.937, and 0.91, respectively, and the AUC, sensitivity, and specificity in the test cohort were 0.905, 0.923, and 0.872, respectively. The Delong test showed a statistically significant difference between the joint model and CDRS or ADAS scores (P < 0.05), yet no significant difference between the joint model and the white matter signature (P = 0.341).

CONCLUSION

The present results demonstrate that a joint model combining neuropsychological scales can be constructed by using machine learning and DTI technology to identify MCI patients who are at high-risk of progressing to AD.

摘要

目的

识别可能导致轻度认知障碍(MCI)进展的白质纤维损伤和网络变化,然后构建一个联合模型,基于神经心理学量表预测 MCI 老年人中阿尔茨海默病(AD)进展的高危个体。

方法

从阿尔茨海默病神经影像学倡议(ADNI)数据库中纳入 173 名 MCI 患者,并随机分为训练和测试队列。45 名患者在 4 年随访期间进展为 AD。弥散张量成像(DTI)技术提取每个患者的相关 DTI 定量特征。此外,基于白质纤维束构建脑网络,提取网络属性特征。应用集成降维方法从训练队列中减少 DTI 定量特征和网络特征,并添加机器学习算法构建白质特征。此外,使用来自国家阿尔茨海默病协调中心(NACC)数据库的 52 名患者对白质特征进行外部验证。随后,通过联合量表评分生成联合模型,并使用测试队列的数据评估其性能。

结果

基于多变量逻辑回归,选择临床痴呆评定量表(CDRS)和阿尔茨海默病评估量表(ADAS)作为独立预测因素。构建了一个联合模型,结合白质特征。在训练队列中,AUC、敏感性和特异性分别为 0.938、0.937 和 0.91,在测试队列中,AUC、敏感性和特异性分别为 0.905、0.923 和 0.872。Delong 检验显示联合模型与 CDRS 或 ADAS 评分之间存在统计学差异(P<0.05),但与白质特征之间无统计学差异(P=0.341)。

结论

本研究结果表明,通过使用机器学习和 DTI 技术构建联合模型,结合神经心理学量表,可以识别出有进展为 AD 高危风险的 MCI 患者。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d812/11331623/179a87088ef0/12877_2024_5293_Fig1_HTML.jpg

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