声学特征与脑容量之间的关系:弗雷明汉心脏研究

Huitong Ding, Alexander P. Hamel, C. Karjadi, T. F. Ang, Sophia Lu, Robert J. Thomas, Rhoda Au, Honghuang Lin
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摘要

尽管脑磁共振成像(MRI)是研究与神经变性相关的大脑结构变化的重要工具,但开发无创、经济有效的替代方法来检测早期认知障碍至关重要。人的声音已越来越多地被用作有效检测认知障碍的指标,但声学特征是否与神经影像结构相关仍不清楚。本研究旨在调查声学特征与脑容量之间的关联,并比较两者在大型社区人群中对轻度认知障碍(MCI)的预测能力。研究对象包括弗雷明汉心脏研究(FHS)中至少有一次语音记录和一次核磁共振成像扫描的参与者。使用 OpenSMILE 软件(v2.1.3)从每份语音记录中提取了 65 个声音特征。九项核磁共振成像测量是根据 FHS 核磁共振成像方案得出的。我们使用线性回归模型检验了声学特征与磁共振成像测量之间的关联,并对年龄、性别和教育程度进行了调整。声学综合评分是将与核磁共振成像测量结果显著相关的声学特征结合在一起得出的。通过建立随机森林模型并计算10倍交叉验证的接收器操作特征曲线下的平均面积(AUC),比较了声学综合评分和MRI测量的MCI预测能力。在9.3 ± 3.7年的随访期间,106名参与者被诊断为MCI。在对多重测试进行调整后,七种磁共振成像测量与20多种声学特征有明显关联。我们发现多个声学特征与核磁共振成像指标相关,这表明声学特征作为易于获取的数字生物标记物,在早期诊断MCI方面具有潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Association between acoustic features and brain volumes: the Framingham Heart Study
Although brain magnetic resonance imaging (MRI) is a valuable tool for investigating structural changes in the brain associated with neurodegeneration, the development of non-invasive and cost-effective alternative methods for detecting early cognitive impairment is crucial. The human voice has been increasingly used as an indicator for effectively detecting cognitive disorders, but it remains unclear whether acoustic features are associated with structural neuroimaging.This study aims to investigate the association between acoustic features and brain volume and compare the predictive power of each for mild cognitive impairment (MCI) in a large community-based population. The study included participants from the Framingham Heart Study (FHS) who had at least one voice recording and an MRI scan. Sixty-five acoustic features were extracted with the OpenSMILE software (v2.1.3) from each voice recording. Nine MRI measures were derived according to the FHS MRI protocol. We examined the associations between acoustic features and MRI measures using linear regression models adjusted for age, sex, and education. Acoustic composite scores were generated by combining acoustic features significantly associated with MRI measures. The MCI prediction ability of acoustic composite scores and MRI measures were compared by building random forest models and calculating the mean area under the receiver operating characteristic curve (AUC) of 10-fold cross-validation.The study included 4,293 participants (age 57 ± 13 years, 53.9% women). During 9.3 ± 3.7 years follow-up, 106 participants were diagnosed with MCI. Seven MRI measures were significantly associated with more than 20 acoustic features after adjusting for multiple testing. The acoustic composite scores can improve the AUC for MCI prediction to 0.794, compared to 0.759 achieved by MRI measures.We found multiple acoustic features were associated with MRI measures, suggesting the potential for using acoustic features as easily accessible digital biomarkers for the early diagnosis of MCI.
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