首页> 美国卫生研究院文献>Frontiers in Aging Neuroscience >Differentiating Patients at the Memory Clinic With Simple Reaction Time Variables: A Predictive Modeling Approach Using Support Vector Machines and Bayesian Optimization
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Differentiating Patients at the Memory Clinic With Simple Reaction Time Variables: A Predictive Modeling Approach Using Support Vector Machines and Bayesian Optimization

机译:使用简单的反应时间变量区分记忆库中的患者:使用支持向量机和贝叶斯优化的预测建模方法

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摘要

>Background: Mild Cognitive Impairment (MCI) and dementia differ in important ways yet share a future of increased prevalence. Separating these conditions from each other, and from Subjective Cognitive Impairment (SCI), is important for clinical prognoses and treatment, socio-legal interventions, and family adjustments. With costly clinical investigations and an aging population comes a need for more cost-efficient differential diagnostics.>Methods: Using supervised machine learning, we investigated nine variables extracted from simple reaction time (SRT) data with respect to their single and conjoined ability to discriminate both MCI/dementia, and SCI/MCI/dementia, compared to—and together with—established psychometric tests. One-hundred-twenty elderly patients (age range = 65–95 years) were recruited when referred to full neuropsychological assessment at a specialized memory clinic in urban Sweden. A freely available SRT task served as index test and was administered and scored objectively by a computer before diagnosis of SCI (n = 17), MCI (n = 53), or dementia (n = 50). As reference standard, diagnosis was decided through the multidisciplinary memory clinic investigation. Bonferroni-Holm corrected P-values for constructed models against the null model are provided.>Results: Algorithmic feature selection for the two final multivariable models was performed through recursive feature elimination with 3 × 10-fold cross-validation resampling. For both models, this procedure selected seven predictors of which five were SRT variables. When used as input for a soft-margin, radial-basis support vector machine model tuned via Bayesian optimization, the leave-one-out cross-validated accuracy of the final model for MCI/dementia classification was good (Accuracy = 0.806 [0.716, INS [0].877], P < 0.001) and the final model for SCI/MCI/dementia classification held some merit (Accuracy = 0.650 [0.558, 0.735], P < 0.001). These two models are implemented in a freely available application for research and educatory use.>Conclusions: Simple reaction time variables hold some potential in conjunction with established psychometric tests for differentiating MCI/dementia, and SCI/MCI/dementia in these difficult-to-differentiate memory clinic patients. While external validation is needed, their implementation within diagnostic support systems is promising.
机译:>背景:轻度认知障碍(MCI)和痴呆症在重要方面有所不同,但共享患病率上升的未来。将这些条件与主观认知障碍(SCI)相互隔离,对于临床预后和治疗,社会法律干预以及家庭适应至关重要。随着昂贵的临床研究和人口老龄化,需要更加经济高效的鉴别诊断。>方法:使用监督式机器学习,我们调查了从简单反应时间(SRT)数据中提取的9个变量与既定的心理测验(以及与之一起)相比,具有区分MCI /痴呆症和SCI / MCI /痴呆症的单一和联合能力。当在瑞典城市的一家专门的记忆诊所接受全面的神经心理学评估时,招募了120名老年患者(年龄范围为65-95岁)。免费提供的SRT任务用作指标测试,并在诊断SCI(n = 17),MCI(n = 53)或痴呆(n = 50)之前由计算机进行客观管理和评分。作为参考标准,通过多学科记忆临床调查确定诊断。提供了针对虚模型的构造模型的Bonferroni-Holm校正后的P值。>结果:通过使用3×10倍交叉验证的递归特征消除,对两个最终的多变量模型进行了算法特征选择重采样。对于两个模型,此过程都选择了七个预测变量,其中五个是SRT变量。当用作通过贝叶斯优化调整的软边距,径向基支持向量机模型的输入时,MCI /痴呆症分类的最终模型的留一法交叉验证的准确性很好(准确性= 0.806 [0.716, INS [0] .877],P <0.001)和SCI / MCI /痴呆症分类的最终模型具有一定的优点(准确性= 0.650 [0.558,0.735],P <0.001)。这两个模型在免费的应用程序中实现,以供研究和教育用途。>结论:简单的反应时间变量与已建立的用于区分MCI /痴呆症和SCI / MCI /痴呆症的心理测验结合在一起,具有一定的潜力。这些难于区分记忆的门诊患者。尽管需要外部验证,但它们在诊断支持系统中的实施前景良好。

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