A Critical Review of Multimodal-multisensor Analytics for Anxiety Assessment

Hashini Senaratne, S. Oviatt, K. Ellis, Glenn Melvin
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引用次数: 2

Abstract

Recently, interest has grown in the assessment of anxiety that leverages human physiological and behavioral data to address the drawbacks of current subjective clinical assessments. Complex experiences of anxiety vary on multiple characteristics, including triggers, responses, duration and severity, and impact differently on the risk of anxiety disorders. This article reviews the past decade of studies that objectively analyzed various anxiety characteristics related to five common anxiety disorders in adults utilizing features of cardiac, electrodermal, blood pressure, respiratory, vocal, posture, movement, and eye metrics. Its originality lies in the synthesis and interpretation of consistently discovered heterogeneous predictors of anxiety and multimodal-multisensor analytics based on them. We reveal that few anxiety characteristics have been evaluated using multimodal-multisensor metrics, and many of the identified predictive features are confounded. As such, objective anxiety assessments are not yet complete or precise. That said, few multimodal-multisensor systems evaluated indicate an approximately 11.73% performance gain compared to unimodal systems, highlighting a promising powerful tool. We suggest six high-priority future directions to address the current gaps and limitations in infrastructure, basic knowledge, and application areas. Action in these directions will expedite the discovery of rich, accurate, continuous, and objective assessments and their use in impactful end-user applications.
用于焦虑评估的多模式多传感器分析综述
最近,人们对利用人类生理和行为数据来解决当前主观临床评估的缺陷的焦虑评估越来越感兴趣。焦虑的复杂体验有多种特征,包括触发因素、反应、持续时间和严重程度,对焦虑症风险的影响也不同。本文回顾了过去十年的研究,这些研究利用心脏、皮肤电、血压、呼吸、声音、姿势、运动和眼睛指标的特征,客观分析了与成人五种常见焦虑症相关的各种焦虑特征。它的独创性在于综合和解释了一致发现的焦虑的异质预测因子,以及基于它们的多模态多传感器分析。我们发现,很少有人使用多模式多传感器指标来评估焦虑特征,而且许多已识别的预测特征都是混淆的。因此,客观的焦虑评估尚不完整或准确。也就是说,与单峰系统相比,很少有多模态多传感器系统的性能增益约为11.73%,这突出了一个有前景的强大工具。我们提出了六个高度优先的未来方向,以解决当前基础设施、基础知识和应用领域的差距和局限性。这些方向的行动将加快发现丰富、准确、连续和客观的评估,并将其用于有影响力的最终用户应用程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
10.30
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