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Machine Learning-Driven Prediction of Brain Age for Alzheimer's Risk: APOE4 Genotype and Gender Effects

Bioengineering (Basel, Switzerland)(2024)

Univ Missouri | Univ Nebraska | Washington Univ

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Abstract
Background: Alzheimer’s disease (AD) is a leading cause of dementia, and it is significantly influenced by the apolipoprotein E4 (APOE4) gene and gender. This study aimed to use machine learning (ML) algorithms to predict brain age and assess AD risk by considering the effects of the APOE4 genotype and gender. Methods: We collected brain volumetric MRI data and medical records from 1100 cognitively unimpaired individuals and 602 patients with AD. We applied three ML regression models—XGBoost, random forest (RF), and linear regression (LR)—to predict brain age. Additionally, we introduced two novel metrics, brain age difference (BAD) and integrated difference (ID), to evaluate the models’ performances and analyze the influences of the APOE4 genotype and gender on brain aging. Results: Patients with AD displayed significantly older brain ages compared to their chronological ages, with BADs ranging from 6.5 to 10 years. The RF model outperformed both XGBoost and LR in terms of accuracy, delivering higher ID values and more precise predictions. Comparing the APOE4 carriers with noncarriers, the models showed enhanced ID values and consistent brain age predictions, improving the overall performance. Gender-specific analyses indicated slight enhancements, with the models performing equally well for both genders. Conclusions: This study demonstrates that robust ML models for brain age prediction can play a crucial role in the early detection of AD risk through MRI brain structural imaging. The significant impact of the APOE4 genotype on brain aging and AD risk is also emphasized. These findings highlight the potential of ML models in assessing AD risk and suggest that utilizing AI for AD identification could enable earlier preventative interventions.
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Key words
brain age prediction,Alzheimer’s disease,apolipoprotein E4 alleles,magnetic resonance imaging,machine learning,random forest,XGBoost,regression models,cross-validation
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要点】:本研究利用机器学习算法预测大脑年龄,以评估阿尔茨海默病风险,并发现APOE4基因型和性别对大脑老化有显著影响。

方法】:通过应用XGBoost、随机森林(RF)和线性回归(LR)三种机器学习回归模型预测大脑年龄,并引入脑年龄差(BAD)和综合差异(ID)两项新指标来评估模型性能。

实验】:使用1100名认知未受损个体和602名阿尔茨海默病患者的脑部容积MRI数据及医疗记录,随机森林模型表现最优,APOE4携带者与非携带者模型表现有显著差异,性别对模型性能有轻微影响。