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Currently submitted to: JMIR mHealth and uHealth

Date Submitted: Jul 6, 2026
Open Peer Review Period: Jul 10, 2026 - Sep 4, 2026
(currently open for review)

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

A WeChat-Delivered, Supervised, Knowledge-Guided AI Intervention for COPD Self-Management Across the Hospital-to-Home Transition: Pilot Randomized Controlled Trial

  • Liping Liao; 
  • Yunhua Li; 
  • Tingting He; 
  • Zhen Xiao; 
  • Xia Shu; 
  • Ping Wang; 
  • Lijuan Qiu; 
  • Ping Li; 
  • Qiuhong Guo; 
  • Qing Yuan; 
  • Lifen Wang; 
  • Yan Guo; 
  • Jing Zhong; 
  • Yang Jiang; 
  • Xingyu Kong; 
  • Yiming Chen; 
  • Ju Wu; 
  • Yibo Wu

ABSTRACT

Background:

Chronic obstructive pulmonary disease (COPD) requires continuous self-management, particularly during the transition from hospital to home, when follow-up support may be fragmented. Artificial intelligence–enabled mobile health interventions may extend individualized support beyond hospitalization, but evidence regarding their clinical effects in patients with COPD remains limited.

Objective:

This pilot randomized controlled trial aimed to evaluate the preliminary effects of the Artificial Intelligence Health Education Accurately Linking System (AI-HEALS), a supervised, knowledge-guided intervention delivered through WeChat, on COPD-related health status, cough-related burden, and self-management–related outcomes during the hospital-to-home transition.

Methods:

We conducted a single-center, parallel-group, open-label pilot randomized controlled trial with blinded outcome assessment and data analysis. Fifty hospitalized adults with COPD were randomly assigned in a 1:1 ratio to receive usual care alone or usual care plus AI-HEALS for 3 months. AI-HEALS integrated knowledge-guided question answering, self-monitoring and weekly check-ins, personalized reminders, and tailored educational content, with daily review of interaction logs by research staff. The co-primary outcomes were COPD-related health status, assessed using the COPD Assessment Test (CAT) and the Cough Evaluation Test (CET). Secondary outcomes included dyspnea, psychological distress, perceived stress, perceived social support, self-efficacy, medication-taking behavior, dietary self-regulation, and health-related quality of life. Outcomes were assessed at baseline, discharge, and 3-month follow-up. Linear mixed-effects models and analysis of covariance were used, and analyses followed the intention-to-treat principle.

Results:

All 50 participants were randomized, with 25 assigned to each group, and no participants were lost to follow-up for the co-primary outcomes. At 3 months, CAT scores were lower in the intervention group in the unadjusted analysis (mean difference −4.44, 95% CI −8.04 to −0.84; P=.01). The covariate-adjusted estimate remained favorable but uncertain (mean difference −3.42, 95% CI −7.06 to 0.22; P=.06). CET scores also favored the intervention group, but the differences were not statistically significant in either the unadjusted analysis (mean difference −2.32, 95% CI −4.90 to 0.26; P=.07) or the adjusted analysis (mean difference −2.35, 95% CI −5.02 to 0.33; P=.08). In adjusted analyses, perceived stress was lower at 3 months (mean difference −2.03, 95% CI −3.86 to −0.21; P=.02), and self-efficacy was higher at discharge (mean difference 1.57, 95% CI 0.38 to 2.76; P=.01). No clear adjusted between-group differences were observed for the other secondary outcomes. The intervention group generated 991 chatbot interactions during the study period.

Conclusions:

AI-HEALS was associated with a greater unadjusted reduction in CAT scores at 3 months, although the adjusted estimate remained uncertain. CET scores showed a favorable but nonsignificant pattern. Preliminary signals were also observed for perceived stress and self-efficacy. These hypothesis-generating findings support further evaluation of supervised, knowledge-guided AI–enabled COPD self-management support in a fully powered, multicenter trial with longer follow-up and objective clinical outcomes. Clinical Trial: Chinese Clinical Trial Registry ChiCTR2400092829.


 Citation

Please cite as:

Liao L, Li Y, He T, Xiao Z, Shu X, Wang P, Qiu L, Li P, Guo Q, Yuan Q, Wang L, Guo Y, Zhong J, Jiang Y, Kong X, Chen Y, Wu J, Wu Y

A WeChat-Delivered, Supervised, Knowledge-Guided AI Intervention for COPD Self-Management Across the Hospital-to-Home Transition: Pilot Randomized Controlled Trial

JMIR Preprints. 06/07/2026:106359

DOI: 10.2196/preprints.106359

URL: https://preprints.jmir.org/preprint/106359

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