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基于功能近红外光谱的时间序列数据特征提取及深度学习在阿尔茨海默病相关轻度认知障碍患者分类中的性能比较:一项诊断性介入试验的事后分析。

Feature extraction of time series data on functional near-infrared spectroscopy and comparison of deep learning performance for classifying patients with Alzheimer's-related mild cognitive impairment: a post-hoc analysis of a diagnostic interventional trial.

机构信息

Department of Biomedical Science and Engineering, Gwangju Institute of Science and Technology, Gwangju, South Korea.

出版信息

Eur Rev Med Pharmacol Sci. 2023 Jul;27(14):6824-6830. doi: 10.26355/eurrev_202307_33153.

Abstract

OBJECTIVE

This study aimed to define a method of classifying patients with mild cognitive impairment caused by Alzheimer's disease by the retrieval of functional near-infrared spectroscopy (fNIRS) signal characteristics obtained during olfactory stimulation and the validation of deep learning findings.

PATIENTS AND METHODS

Participants were recruited for the study from March 02 and August 30, 2021. A total of 78 participants met the criteria for categorization. The Mini-Mental State Examination and the Seoul Neuropsychological Scale were used to distinguish between patients with mild Alzheimer's disease-related cognitive impairment and healthy controls. fNIRS data received during olfactory stimulation were used to create 1,680 time-series sample values. A total of 150 indices with a p-value ≤ 0.1 were used as deep learning features to construct the result values for 120 models accounting for all conceivable combinations of data ratios.

RESULTS

For this trial, 78 participants were recruited for the original intervention trial. The average accuracy of the 120 deep-learning models for classifying patients with Alzheimer's-related mild cognitive impairment ranged from 0.78 to 0.90. Sensitivity ranged from 0.88 to 0.96 for the 120 models, while specificity ranged from 0.86 to 0.94. The F1 scores ranged from 0.74 to 0.88. At 0.78 to 0.90, the precision and recall were equivalent.

CONCLUSIONS

This trial using a deep-learning model found that the representative value extracted from the time series data of each channel could distinguish between healthy people and patients with mild cognitive impairment caused by Alzheimer's disease.

摘要

目的

本研究旨在通过对嗅觉刺激期间获得的功能近红外光谱(fNIRS)信号特征的检索和深度学习结果的验证,定义一种分类由阿尔茨海默病引起的轻度认知障碍患者的方法。

患者和方法

2021 年 3 月 2 日至 8 月 30 日期间招募了研究参与者。共有 78 名参与者符合分类标准。使用简易精神状态检查和首尔神经心理量表来区分轻度阿尔茨海默病相关认知障碍患者和健康对照者。使用嗅觉刺激期间获得的 fNIRS 数据创建了 1680 个时间序列样本值。共有 150 个 p 值≤0.1 的指数被用作深度学习特征,以构建涵盖所有数据比率组合的 120 个模型的结果值。

结果

对于该试验,共招募了 78 名参与者参加原始干预试验。120 个深度学习模型对阿尔茨海默病相关轻度认知障碍患者进行分类的平均准确率为 0.78 至 0.90。120 个模型的敏感性范围为 0.88 至 0.96,特异性范围为 0.86 至 0.94。F1 分数范围为 0.74 至 0.88。在 0.78 至 0.90 之间,精度和召回率相当。

结论

本试验使用深度学习模型发现,从每个通道的时间序列数据中提取的代表值可以区分健康人和由阿尔茨海默病引起的轻度认知障碍患者。

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