基于技术的心脏康复对冠状动脉疾病患者运动能力和依从性的影响:人工智能分析

IF 1.9
Dilara Saklica, Naciye Vardar-Yagli, Melda Saglam, Deniz Yuce, Ahmet Hakan Ates, Hikmet Yorgun
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引用次数: 0

摘要

背景:运动训练方案可提高冠状动脉疾病(CAD)患者的运动能力和生活质量。尽管人工智能(AI)已被用于设计此类程序,但评估其有效性的研究仍然很少。目的:本研究使用人工智能进行数据分析,比较基于技术和传统的心脏康复(CR)方案对CAD患者运动能力和参与的影响。方法:52例CAD患者随机分为3组:远程康复组(TRG) (n=18);ii)移动应用组(MAG) (n=13);iii)对照组(CG),只接受体育活动建议(n=21)。TRG和MAG的参与者完成了一项为期12周的计划,包括每周三次的健美操和阻力练习。使用增量穿梭步行测试(ISWT)评估运动能力,使用短表36 (SF-36)测量生活质量。使用微调的基于bert的自然语言处理(NLP)模型分析患者反馈。应用异常检测方法来发现自我报告的依从性与ISWT结果之间的不匹配。结果:TRG[44.4%女性](Δ=87.2±15.2 m)和MAG[50%女性](Δ=89.4±70.4 m)与CG[47.6%女性](Δ=10.9±28.2 m)相比,ISWT均有显著改善(p=0.001)。TRG组(100%)和MAG组(80%)的依从性高于CG组(30%)。结论:基于技术的CR计划提高了CAD患者的运动能力和依从性,支持了人工智能驱动工具的使用。NLP分析有助于将患者反馈与运动结果联系起来,并发现不一致之处,显示其在增强CR评估中的价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Impact of Technology-Based Cardiac Rehabilitation on Exercise Capacity and Adherence in Patients with Coronary Artery Disease: An Artificial Intelligence Analysis.

Background: Exercise training programs improve exercise capacity and quality of life (QoL) in patients with coronary artery disease (CAD). Although artificial intelligence (AI) has been used to design such programs, there are still few studies evaluating their effectiveness.

Objectives: This study compared the effects of technology-based and traditional programs for cardiac rehabilitation (CR) on exercise capacity and participation in patients with CAD using AI for data analysis.

Methods: A total of 52 patients with CAD were randomly assigned to three groups: i) telerehabilitation group (TRG) (n=18); ii) mobile application group (MAG) (n=13); and iii) control group (CG), which received only physical activity recommendations (n=21). TRG and MAG participants completed a 12-week program with calisthenic and resistance exercises three times a week. Exercise capacity was assessed using the Incremental Shuttle Walk Test (ISWT), and QoL was measured with the Short Form-36 (SF-36). Patient feedback was analyzed using a fine-tuned BERT-based natural language processing (NLP) model. Anomaly detection methods were applied to find mismatches between self-reported adherence and ISWT results. Statistical significance was set at p<0.05.

Results: Both TRG [44.4% female] (Δ=87.2±15.2 m) and MAG [50% female] (Δ=89.4±70.4 m) had significant ISWT improvements compared to CG [47.6% female] (Δ=10.9±28.2 m) (p=0.001). Adherence was higher in TRG (100%) and MAG (80%) than in CG (30%) (p<0.001). Patient-reported satisfaction, analyzed via NLP, showed a significant positive correlation with ISWT improvements (r=0.75, p<0.001). Findings show the potential of AI to support outcome assessment in CR.

Conclusions: Technology-based CR programs improve exercise capacity and adherence in patients with CAD, supporting the use of AI-driven tools. NLP analysis helped link patient feedback to exercise outcomes and detect inconsistencies, showing its value in enhancing CR evaluation.

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