整合心率变异性改善基于机器学习的恐慌症症状严重程度预测。

IF 2.4 4区 医学 Q3 NEUROSCIENCES
Clinical Psychopharmacology and Neuroscience Pub Date : 2025-08-31 Epub Date: 2025-03-25 DOI:10.9758/cpn.24.1261
Jin Goo Lee, Jae-Jin Kim, Jeong-Ho Seok, Eunjoo Kim, Jooyoung Oh, Chang-Bae Bang, Byung-Hoon Kim
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引用次数: 0

摘要

目的:惊恐障碍(PD)与心率变异性(HRV)之间的关系一直被研究,重点关注自主神经系统的失衡。本研究旨在证明HRV在使用机器学习确定PD严重程度方面的预测能力。方法:对入选的507例PD患者进行心理量表和各种HRV成分的测量。我们设计了三个不同输入特征集的实验进行比较。每个实验的输入特征为:1)心理测量量表和HRV同时存在(ExSH),或2)仅存在量表(ExS),或3)仅存在HRV成分。在每个实验中,使用9个机器学习模型来预测恐慌障碍严重程度量表。通过统计分析三个实验中模型的性能指标,比较了三组输入特征的预测能力。进一步采用SHapley加性解释(SHAP)来评估输入特征的重要性。结果:结合心理测量量表和HRV的ExSH随机森林模型获得了最高的f1得分(76.50%)和灵敏度(75.35%)。ExSH的敏感性和f1评分明显高于ExS。在ExSH的RF模型中,汉密尔顿焦虑量表(Hamilton Rating Scale For Anxiety)的SHAP重要性值最高,其次是汉密尔顿抑郁量表(Hamilton Depression Rating Scale)和低频功率(LF)。结论:我们的研究结果表明,将HRV与心理测量量表相结合可以改善基于机器学习的PD严重程度预测。我们还强调LF是HRV成分中一个有希望的变量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating Heart Rate Variability Improves Machine Learning-based Prediction of Panic Disorder Symptom Severity.

Objective: The association between panic disorder (PD) and heart rate variability (HRV) has long been studied with a focus on the imbalance of the autonomic nervous system. This study aims to demonstrate the predictive capability of HRV in determining PD severity using machine learning.

Methods: Psychometric scales and various HRV components were measured from 507 PD patients who were recruited. We designed three experiments with different sets of input features for comparison. The input features of each experiment were 1) both psychometric scales and HRV together (ExSH), or 2) only the scales (ExS), or 3) only the HRV components. In each experiment, nine machine learning models were used to predict the Panic Disorder Severity Scale. We compared the predictive capability of the three sets of input features by statistically analyzing the performance metrics of the models in the three experiments. SHapley Additive exPlanation (SHAP) was further employed to assess the importance of the input features.

Results: The Random Forest model in ExSH, which incorporated both psychometric scales and HRV, achieved the highest f1-score (76.50%) and sensitivity (75.35%). ExSH showed significantly higher sensitivity and f1-score compared to ExS. For the RF model of ExSH, the highest SHAP importance value was found for the Hamilton Rating Scale for Anxiety, followed by the Hamilton Depression Rating Scale, and the low-frequency power (LF).

Conclusion: Our findings demonstrate that integrating HRV with psychometric scales improves machine learning-based prediction of PD severity. We also highlighted LF as a promising variable among HRV components.

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来源期刊
Clinical Psychopharmacology and Neuroscience
Clinical Psychopharmacology and Neuroscience NEUROSCIENCESPHARMACOLOGY & PHARMACY-PHARMACOLOGY & PHARMACY
CiteScore
4.70
自引率
12.50%
发文量
81
期刊介绍: Clinical Psychopharmacology and Neuroscience (Clin Psychopharmacol Neurosci) launched in 2003, is the official journal of The Korean College of Neuropsychopharmacology (KCNP), and the associate journal for Asian College of Neuropsychopharmacology (AsCNP). This journal aims to publish evidence-based, scientifically written articles related to clinical and preclinical studies in the field of psychopharmacology and neuroscience. This journal intends to foster and encourage communications between psychiatrist, neuroscientist and all related experts in Asia as well as worldwide. It is published four times a year at the last day of February, May, August, and November.
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