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基于多中心神经心理学测试数据的深度学习预测认知障碍。

Prediction of cognitive impairment via deep learning trained with multi-center neuropsychological test data.

机构信息

Department of Neurology, Seoul National University College of Medicine & Seoul National University Bundang Hospital, Seoul, South Korea.

Department of Neurology, Veterans Health Service Medical Center, Seoul, South Korea.

出版信息

BMC Med Inform Decis Mak. 2019 Nov 21;19(1):231. doi: 10.1186/s12911-019-0974-x.

Abstract

BACKGROUND

Neuropsychological tests (NPTs) are important tools for informing diagnoses of cognitive impairment (CI). However, interpreting NPTs requires specialists and is thus time-consuming. To streamline the application of NPTs in clinical settings, we developed and evaluated the accuracy of a machine learning algorithm using multi-center NPT data.

METHODS

Multi-center data were obtained from 14,926 formal neuropsychological assessments (Seoul Neuropsychological Screening Battery), which were classified into normal cognition (NC), mild cognitive impairment (MCI) and Alzheimer's disease dementia (ADD). We trained a machine learning model with artificial neural network algorithm using TensorFlow (https://www.tensorflow.org) to distinguish cognitive state with the 46-variable data and measured prediction accuracies from 10 randomly selected datasets. The features of the NPT were listed in order of their contribution to the outcome using Recursive Feature Elimination.

RESULTS

The ten times mean accuracies of identifying CI (MCI and ADD) achieved by 96.66 ± 0.52% of the balanced dataset and 97.23 ± 0.32% of the clinic-based dataset, and the accuracies for predicting cognitive states (NC, MCI or ADD) were 95.49 ± 0.53 and 96.34 ± 1.03%. The sensitivity to the detection CI and MCI in the balanced dataset were 96.0 and 96.0%, and the specificity were 96.8 and 97.4%, respectively. The 'time orientation' and '3-word recall' score of MMSE were highly ranked features in predicting CI and cognitive state. The twelve features reduced from 46 variable of NPTs with age and education had contributed to more than 90% accuracy in predicting cognitive impairment.

CONCLUSIONS

The machine learning algorithm for NPTs has suggested potential use as a reference in differentiating cognitive impairment in the clinical setting.

摘要

背景

神经心理学测试(NPTs)是为认知障碍(CI)诊断提供信息的重要工具。然而,解释 NPT 需要专家,因此耗时。为了简化 NPT 在临床环境中的应用,我们使用多中心 NPT 数据开发并评估了机器学习算法的准确性。

方法

多中心数据来自 14926 次正式神经心理学评估(首尔神经心理学筛查测验),分为正常认知(NC)、轻度认知障碍(MCI)和阿尔茨海默病痴呆(ADD)。我们使用 TensorFlow(https://www.tensorflow.org)的人工神经网络算法训练机器学习模型,使用 46 个变量数据来区分认知状态,并从 10 个随机选择的数据集测量预测准确率。使用递归特征消除按对结果的贡献列出 NPT 的特征。

结果

在平衡数据集和临床数据集上,识别 CI(MCI 和 ADD)的十次平均准确率分别为 96.66±0.52%和 97.23±0.32%,预测认知状态(NC、MCI 或 ADD)的准确率分别为 95.49±0.53%和 96.34±1.03%。在平衡数据集中,CI 和 MCI 的检测灵敏度分别为 96.0%和 96.0%,特异性分别为 96.8%和 97.4%。MMSE 的“时间定向”和“3 字回忆”评分在预测 CI 和认知状态方面是高度相关的特征。从 46 个 NPT 变量中减少的 12 个特征,年龄和教育因素对预测认知障碍的准确率超过 90%。

结论

NPT 的机器学习算法有望成为临床区分认知障碍的参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/47ed/6873409/18d48763dcee/12911_2019_974_Fig1_HTML.jpg

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