Lv Zheng, Su Haoqiang, Zhu Meiying, Ou Jiayuan, Wang Lei
Department of Rehabilitation, Longgang District Central Hospital of Shenzhen, Shenzhen Clinical Medical College of Guangzhou University of Chinese Medicine, Shenzhen, Guangdong, People's Republic of China.
Int J Gen Med. 2025 Aug 20;18:4587-4599. doi: 10.2147/IJGM.S538424. eCollection 2025.
To evaluate the efficacy of stroke walking wearable devices based on artificial intelligence Internet of Things (AIoT) technology in the rehabilitation training of patients with ischemic stroke (IS).
A total of 777 patients with IS were recruited and followed up for 6 months. The participants were divided into control (671 cases) and AIoT group (106 cases) according to whether they received AIoT treatment or not. The primary outcomes were Holden walking function grading, lower limb modified Ashworth muscle tone grading, lower limb Brunnstrom grading, joint range of motion, and gait between two groups of patients within 3 days before treatment and 1 month after treatment. Propensity score matching (PSM) analysis was performed based on various factors such as gender, age, and course of illness at admission.
There was no significant difference (>0.05) in Holden walking function grading, lower limb modified Ashworth muscle tone grading, lower limb Brunnstrom grading, joint range of motion, and gait between the two groups before treatment. After one month of treatment, Holden walking function grading, lower limb modified Ashworth muscle tone grading, lower limb Brunnstrom grading, joint range of motion, and gait between the two groups improved compared to before treatment, and the AIoT group was better than the control group, with significance (<0.05). Moreover, logistic regression analysis showed that AIoT based walking wearable devices was independent risk factor for the development of 90-day readmission in patients with IS after rehabilitation training.
AIoT based walking wearable devices for stroke rehabilitation training is feasible and safe with satisfactory therapeutic effects. Moreover, further prospective multicenter trials are warranted before incorporating AIoT into routine rehabilitation training.
评估基于人工智能物联网(AIoT)技术的中风步行可穿戴设备在缺血性中风(IS)患者康复训练中的疗效。
共招募777例IS患者并随访6个月。参与者根据是否接受AIoT治疗分为对照组(671例)和AIoT组(106例)。主要结局指标为两组患者治疗前3天及治疗后1个月的Holden步行功能分级、下肢改良Ashworth肌张力分级、下肢Brunnstrom分级、关节活动度和步态。基于入院时的性别、年龄和病程等多种因素进行倾向评分匹配(PSM)分析。
治疗前两组患者的Holden步行功能分级、下肢改良Ashworth肌张力分级、下肢Brunnstrom分级、关节活动度和步态无显著差异(>0.05)。治疗1个月后,两组患者的Holden步行功能分级、下肢改良Ashworth肌张力分级、下肢Brunnstrom分级、关节活动度和步态较治疗前均有所改善,且AIoT组优于对照组,差异有统计学意义(<0.05)。此外,逻辑回归分析显示,基于AIoT的步行可穿戴设备是IS患者康复训练后90天再入院发生的独立危险因素。
基于AIoT的中风康复训练步行可穿戴设备可行且安全,治疗效果满意。此外,在将AIoT纳入常规康复训练之前,有必要进行进一步的前瞻性多中心试验。