Long-Term Efficacy of an AI-Based Health Coaching Mobile App in Slowing the Progression of Nondialysis-Dependent Chronic Kidney Disease: Retrospective Cohort Study.

IF 5.8 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Journal of Medical Internet Research Pub Date : 2024-11-25 DOI:10.2196/54206
Jianwei Ma, Jiangyuan Wang, Jiapei Ying, Shasha Xie, Qin Su, Tianmeng Zhou, Fuman Han, Jiayan Xu, Siyi Zhu, Chenyi Yuan, Ziyuan Huang, Jingfang Xu, Xuyong Chen, Xueyan Bian
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Abstract

Background: Chronic kidney disease (CKD) is a significant public health concern. Therefore, practical strategies for slowing CKD progression and improving patient outcomes are imperative. There is limited evidence to substantiate the efficacy of mobile app-based nursing systems for decelerating CKD progression.

Objective: This study aimed to evaluate the long-term efficacy of the KidneyOnline intelligent care system in slowing the progression of nondialysis-dependent CKD.

Methods: In this retrospective study, the KidneyOnline app was used for patients with CKD in China who were registered between January 2017 and April 2023. Patients were divided into 2 groups: an intervention group using the app's nurse-led, patient-oriented management system and a conventional care group that did not use the app. Patients' uploaded health data were processed via deep learning optical character recognition, and the artificial intelligence (AI) system provided personalized health care plans and interventions. Conversely, the conventional care group received suggestions from nephrologists during regular visits without AI. Monitoring extended for an average duration of 2.1 (SD 1.4) years. The study's objective is to assess the app's effectiveness in preserving kidney function. The primary outcome was the estimated glomerular filtration rate slope over the follow-up period, and secondary outcomes included changes in albumin-to-creatinine ratio (ACR) and mean arterial pressure.

Results: A total of 12,297 eligible patients were enrolled for the analysis. Among them, 808 patients were successfully matched using 1:1 propensity score matching, resulting in 404 (50%) patients in the KidneyOnline care system group and another 404 (50%) patients in the conventional care group. The estimated glomerular filtration rate slope in the KidneyOnline care group was significantly lower than that in the conventional care group (odds ratio -1.3, 95% CI -2.4 to -0.1 mL/min/1.73 m2 per year vs odds ratio -2.8, 95% CI -3.8 to -1.9 mL/min/1.73 m2 per year; P=.009). Subgroup analysis revealed that the effect of the KidneyOnline care group was more significant in male patients, patients older than 45 years, and patients with worse baseline kidney function, higher blood pressure, and heavier proteinuria. After 3 and 6 months, the mean arterial pressure in the KidneyOnline care group decreased to 85.6 (SD 9.2) and 83.6 (SD 10.5) mm Hg, respectively, compared to 94.9 (SD 10.6) and 95.2 (SD 11.6) mm Hg in the conventional care group (P<.001). The ACR in the KidneyOnline care group showed a more significant reduction after 3 and 6 months (736 vs 980 mg/g and 572 vs 840 mg/g; P=.07 and P=.03); however, there was no significant difference in ACR between the two groups at the end of the follow-up period (618 vs 639 mg/g; P=.90).

Conclusions: The utilization of KidneyOnline, an AI-based, nurse-led, patient-centered care system, may be beneficial in slowing the progression of nondialysis-dependent CKD.

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基于人工智能的健康指导移动应用程序在延缓非透析依赖型慢性肾脏病进展方面的长期疗效:一项回顾性队列研究。
背景:慢性肾脏病(CKD)是一个重大的公共卫生问题,全球发病率不断上升,从 11% 上升到 13%。因此,必须采取切实可行的策略来减缓慢性肾脏病的进展并改善患者的预后。目前能证明基于手机应用的护理系统对延缓慢性肾功能衰竭的疗效的证据还很有限:本研究旨在评估 KidneyOnline 智能护理系统在延缓非透析依赖型 CKD 进展方面的长期疗效:在这项回顾性研究中,肾脏在线应用程序被用于2017年1月至2023年4月期间登记的中国CKD患者。患者被分为两组:使用该应用以护士为主导、以患者为导向的管理系统的干预组和不使用该应用的常规护理组。患者上传的健康数据通过深度学习光学字符识别进行处理,人工智能系统提供个性化的医疗保健计划和干预措施。相反,传统护理组在没有人工智能协助的情况下,在定期就诊时接受肾病专家的建议。该研究的目标是评估该应用在保护肾功能方面的有效性。主要结果是随访期间的 eGFR 斜率,次要结果包括白蛋白-肌酐比值(ACR)和平均动脉压(MAP)的变化:从2017年1月至2023年4月,共有12297名符合条件的患者在肾脏在线应用程序上注册,并纳入分析。其中,808名患者通过1:1倾向得分匹配成功配对,404名(50%)患者进入肾脏在线护理系统组,另外404名(50%)患者进入常规护理组。肾脏在线护理组的eGFR斜率显著低于常规护理组(-1.3,95% CI: -2.4, -0.1 mL/min/1.73 m2 per year vs. -2.8,95% CI: -3.8, -1.9 mL/min/1.73 m2 per year,P=.009)。亚组分析显示,KidneyOnline 护理组对男性、45 岁以上患者以及基线肾功能较差、血压较高和蛋白尿较多的患者的效果更为显著。3 个月和 6 个月后,KidneyOnline 护理组的 MAP 分别降至 85.6(标清 9.2)和 83.6(标清 10.5)mmHg,而常规护理组的 MAP 分别为 94.9(标清 10.6)和 95.2(标清 11.6)mmHg(PConclusions:KidneyOnline是一个以人工智能为基础、以护士为主导、以患者为中心的护理系统,它的使用可能有利于减缓非透析依赖型CKD的进展:
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来源期刊
CiteScore
14.40
自引率
5.40%
发文量
654
审稿时长
1 months
期刊介绍: The Journal of Medical Internet Research (JMIR) is a highly respected publication in the field of health informatics and health services. With a founding date in 1999, JMIR has been a pioneer in the field for over two decades. As a leader in the industry, the journal focuses on digital health, data science, health informatics, and emerging technologies for health, medicine, and biomedical research. It is recognized as a top publication in these disciplines, ranking in the first quartile (Q1) by Impact Factor. Notably, JMIR holds the prestigious position of being ranked #1 on Google Scholar within the "Medical Informatics" discipline.
期刊最新文献
Long-Term Efficacy of an AI-Based Health Coaching Mobile App in Slowing the Progression of Nondialysis-Dependent Chronic Kidney Disease: Retrospective Cohort Study. Antihypertensive Drug Recommendations for Reducing Arterial Stiffness in Patients With Hypertension: Machine Learning-Based Multicohort (RIGIPREV) Study. Identification of a Susceptible and High-Risk Population for Postoperative Systemic Inflammatory Response Syndrome in Older Adults: Machine Learning-Based Predictive Model. Hospital Length of Stay Prediction for Planned Admissions Using Observational Medical Outcomes Partnership Common Data Model: Retrospective Study. Development and Validation of a Machine Learning-Based Early Warning Model for Lichenoid Vulvar Disease: Prediction Model Development Study.
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