神经运动障碍患者康复期间参与预测的人工智能工具。

IF 5.2 2区 医学 Q1 ENGINEERING, BIOMEDICAL Journal of NeuroEngineering and Rehabilitation Pub Date : 2024-12-19 DOI:10.1186/s12984-024-01519-2
Simone Costantini, Anna Falivene, Mattia Chiappini, Giorgia Malerba, Carla Dei, Silvia Bellazzecca, Fabio A Storm, Giuseppe Andreoni, Emilia Ambrosini, Emilia Biffi
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引用次数: 0

摘要

背景:机器人辅助步态康复(RAGR)是一种成熟的临床实践,旨在促进神经运动障碍患者的神经可塑性。然而,由机器人施加的重复任务可能会引起无聊,影响临床结果。因此,使用生理数据和主观评价对康复参与进行定量评估变得越来越重要。本研究旨在方法学上探索应用于心率变异性(HRV)和皮肤电活动(EDA)特征组成的结构化数据集的人工智能(AI)算法的性能,以预测RAGR期间患者的参与水平。方法:本研究共招募受试者46例(未成年人38例,年龄10.3±4.0岁;8名患有神经运动障碍的成人(43.0±19.0岁),使用Lokomat进行了15至20次RAGR治疗。在其中的2到3次会议中,对患者和治疗师进行了特别的问卷调查,以调查他们对患者参与状态的看法。他们的结果被用来建立两个参与分类目标:自我感知和治疗师感知,都由三个层次组成:“挑战不足”、“挑战最小”和“挑战”。利用Empatica E4腕带采集的原始数据对患者HRV和EDA生理信号进行处理,提取33个特征。比较了五种不同的人工智能分类器在两个分类目标上的性能结果。采用嵌套k-fold交叉验证方法进行模型选择和优化。最后,测试了单峰或双峰方法、特征约简和数据增强等三种数据集准备技术对分类器性能的影响。结果:研究发现,与单峰数据集相比,将HRV和EDA特征结合到一个综合数据集中可以提高敬业度的协同表示。此外,特征缩减并没有产生任何优势,而数据增强却始终如一地增强了分类器的性能。支持向量机和极端梯度增强模型被发现是预测自我感知参与和治疗师感知参与最有效的架构,其宏观平均F1得分分别为95.6%和95.4%。结论:本研究显示基于心理生理学的人工智能模型在预测康复参与方面的有效性,从而促进其在个性化护理和改善临床健康结果方面的实际应用。
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Artificial intelligence tools for engagement prediction in neuromotor disorder patients during rehabilitation.

Background: Robot-Assisted Gait Rehabilitation (RAGR) is an established clinical practice to encourage neuroplasticity in patients with neuromotor disorders. Nevertheless, tasks repetition imposed by robots may induce boredom, affecting clinical outcomes. Thus, quantitative assessment of engagement towards rehabilitation using physiological data and subjective evaluations is increasingly becoming vital. This study aimed at methodologically exploring the performance of artificial intelligence (AI) algorithms applied to structured datasets made of heart rate variability (HRV) and electrodermal activity (EDA) features to predict the level of patient engagement during RAGR.

Methods: The study recruited 46 subjects (38 underage, 10.3 ± 4.0 years old; 8 adults, 43.0 ± 19.0 years old) with neuromotor impairments, who underwent 15 to 20 RAGR sessions with Lokomat. During 2 or 3 of these sessions, ad hoc questionnaires were administered to both patients and therapists to investigate their perception of a patient's engagement state. Their outcomes were used to build two engagement classification targets: self-perceived and therapist-perceived, both composed of three levels: "Underchallenged", "Minimally Challenged", and "Challenged". Patient's HRV and EDA physiological signals were processed from raw data collected with the Empatica E4 wristband, and 33 features were extracted from the conditioned signals. Performance outcomes of five different AI classifiers were compared for both classification targets. Nested k-fold cross-validation was used to deal with model selection and optimization. Finally, the effects on classifiers performance of three dataset preparation techniques, such as unimodal or bimodal approach, feature reduction, and data augmentation, were also tested.

Results: The study found that combining HRV and EDA features into a comprehensive dataset improved the synergistic representation of engagement compared to unimodal datasets. Additionally, feature reduction did not yield any advantages, while data augmentation consistently enhanced classifiers performance. Support Vector Machine and Extreme Gradient Boosting models were found to be the most effective architectures for predicting self-perceived engagement and therapist-perceived engagement, with a macro-averaged F1 score of 95.6% and 95.4%, respectively.

Conclusion: The study displayed the effectiveness of psychophysiology-based AI models in predicting rehabilitation engagement, thus promoting their practical application for personalized care and improved clinical health outcomes.

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来源期刊
Journal of NeuroEngineering and Rehabilitation
Journal of NeuroEngineering and Rehabilitation 工程技术-工程:生物医学
CiteScore
9.60
自引率
3.90%
发文量
122
审稿时长
24 months
期刊介绍: Journal of NeuroEngineering and Rehabilitation considers manuscripts on all aspects of research that result from cross-fertilization of the fields of neuroscience, biomedical engineering, and physical medicine & rehabilitation.
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