首页> 外文期刊>JMIR mHealth and uHealth >Impact of Social Determinants of Health and Demographics on Refill Requests by Medicare Patients Using a Conversational Artificial Intelligence Text Messaging Solution: Cross-Sectional Study
【24h】

Impact of Social Determinants of Health and Demographics on Refill Requests by Medicare Patients Using a Conversational Artificial Intelligence Text Messaging Solution: Cross-Sectional Study

机译:健康和人口统计数据社会决定因素对使用会话人工智能短信解决方案的Medicare患者再填充请求的影响:横截面研究

获取原文
           

摘要

Background Nonadherence among patients with chronic disease continues to be a significant concern, and the use of text message refill reminders has been effective in improving adherence. However, questions remain about how differences in patient characteristics and demographics might influence the likelihood of refill using this channel. Objective The aim of this study was to evaluate the efficacy of an SMS-based refill reminder solution using conversational artificial intelligence (AI; an automated system that mimics human conversations) with a large Medicare patient population and to explore the association and impact of patient demographics (age, gender, race/ethnicity, language) and social determinants of health on successful engagement with the solution to improve refill adherence. Methods The study targeted 99,217 patients with chronic disease, median age of 71 years, for medication refill using the mPulse Mobile interactive SMS text messaging solution from December 2016 to February 2019. All patients were partially adherent or nonadherent Medicare Part D members of Kaiser Permanente, Southern California, a large integrated health plan. Patients received SMS reminders in English or Spanish and used simple numeric or text responses to validate their identity, view their medication, and complete a refill request. The refill requests were processed by Kaiser Permanente pharmacists and support staff, and refills were picked up at the pharmacy or mailed to patients. Descriptive statistics and predictive analytics were used to examine the patient population and their refill behavior. Qualitative text analysis was used to evaluate quality of conversational AI. Results Over the course of the study, 273,356 refill reminders requests were sent to 99,217 patients, resulting in 47,552 refill requests (17.40%). This was consistent with earlier pilot study findings. Of those who requested a refill, 54.81% (26,062/47,552) did so within 2 hours of the reminder. There was a strong inverse relationship ( r 10=?0.93) between social determinants of health and refill requests. Spanish speakers (5149/48,156, 10.69%) had significantly lower refill request rates compared with English speakers (42,389/225,060, 18.83%; Xsup2/supsub1/sub [n=273,216]=1829.2; P 2/supsub6/sub [n=268,793]=1460.3; P .001), with younger patients requesting refills at a higher rate. Finally, the vast majority (284,598/307,484, 92.23%) of patient responses were handled using conversational AI. Conclusions Multiple factors impacted refill request rates, including a strong association between social determinants of health and refill rates. The findings suggest that higher refill requests are linked to language, race/ethnicity, age, and social determinants of health, and that English speakers, whites, those younger than 75 years, and those with lower social determinants of health barriers are significantly more likely to request a refill via SMS. A neural network–based predictive model with an accuracy level of 78% was used to identify patients who might benefit from additional outreach to narrow identified gaps based on demographic and socioeconomic factors.
机译:慢性病患者的背景不正常仍然是一个重要的问题,并且使用短信补充提醒的使用在改善遵守方面已经有效。但是,仍然存在患者特征和人口统计学的差异可能影响使用该渠道的差异的差异。目的本研究的目的是使用会话人工智能(AI;模仿人类对话的自动化系统)评估基于SMS的补充提醒提醒解决方案的功效,并探讨了患者人口统计学的协会和影响(年龄,性别,种族/种族,语言)和健康的社会决定因素与解决方案成功参与,以改善补充依从性。方法研究患有99,217名慢性病患者,71岁的中位数,使用MPULSE移动互动短信短信解决于2016年12月至2019年2月。所有患者都是部分贴壁垒或非恋医疗保险部分D成员Kaiser Permanene,南加州综合综合健康计划。患者以英语或西班牙语接受短信提醒,并使用简单的数字或文本响应来验证其身份,查看其药物,并完成重新填充请求。通过Kaiser Permanente药剂师和支持人员加工的再填充请求,并在药房挑选重新填充或邮寄给患者。描述性统计和预测分析用于检查患者人口及其重新填充行为。定性文本分析用于评估会话AI的质量。结果在该研究过程中,273,356款再填充提醒请求被送至99,217名患者,导致47,552次refill请求(17.40%)。这与早期的试验研究结果一致。那些要求补充的人,54.81%(26,062 / 47,552)在提醒后2小时内完成。健康和再填充请求的社会决定因素之间存在强烈的反相(R 10 = 0.93)。与英语扬声器相比,西班牙语演讲者(5149 / 48,156,10.69%)的再填充请求率明显降低(42,389 / 225,060,18.83%; x 2 1 [n = 273,216] = 1829.2; p 2 6 [n = 268,793] = 1460.3; p <.001),具有更高的患者的患者更高的患者。最后,使用会话AI处理绝大多数(284,598 / 307,484,92.23%)的患者反应。结论影响征收征求率的多个因素,包括健康和补充率的社会决定因素之间的强烈关联。调查结果表明,较高的补充请求与卫生的语言,种族/种族,年龄和社会决定因素相关联,英语扬声器,白人,年龄较小的人,健康障碍社会的社会决定因素较低的人通过短信申请重新填充。用于精度为78%的基于神经网络的预测模型,用于识别可能从额外的外联受益于基于人口统计和社会经济因素的额外外展的患者。

著录项

相似文献

  • 外文文献
  • 中文文献
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号