Veyron Jacques-Henri, Deparis François, Al Zayat Marie Noel, Belmin Joël, Havreng-Théry Charlotte
Presage, Paris, France.
Arpavie, Issy-les-Moulineaux, France.
J Med Internet Res. 2024 Dec 10;26:e55460. doi: 10.2196/55460.
The proportion of very old adults in the population is increasing, representing a significant challenge. Due to their vulnerability, there is a higher frequency of unplanned hospitalizations in this population, leading to adverse events. Digital tools based on artificial intelligence (AI) can help to identify early signs of vulnerability and unfavorable health events and can contribute to earlier and optimized management.
This study aims to report the implementation in assisted living facilities of an innovative monitoring system (Presage Care) for predicting the short-term risk of emergency hospitalization. We describe its use and assess its performance.
An uncontrolled multicenter intervention study was conducted between March and August 2022 in 7 assisted living facilities in France that house very old and vulnerable adults. The monitoring system was set up to provide alerts in cases of a high risk of emergency hospitalization. Nurse assistants (NAs) at the assisted living facilities used a smartphone app to complete a questionnaire on the functional status of the patients, comprising electronic patient-reported outcome measures (ePROMs); these were analyzed in real time by a previously designed machine learning algorithm. This remote monitoring of patients using ePROMs allowed notification of a coordinating nurse or a coordinating NA who subsequently informed the patient's nurses or physician. The primary outcomes were the acceptability and feasibility of the monitoring system in the context and confirmation of the effectiveness and efficiency of AI in risk prevention and detection in practical, real-life scenarios. The secondary outcome was the hospitalization rate after alert-triggered interventions.
In this study, 118 of 194 (61%) eligible patients were included who had at least 1 follow-up visit. A total of 38 emergency hospitalizations were documented. The system generated 92 alerts for 47 of the 118 (40%) patients. Of these 92 alerts, 46 (50%) led to 46 health care interventions for 14 of the 118 (12%) patients and resulted in 4 hospitalizations. The other 46 of the 92 (50%) alerts did not trigger a health care intervention and resulted in 25 hospitalizations (P<.001). Almost all hospitalizations were associated with a lack of alert-triggered interventions (P<.001). System performance to predict hospitalization had a high specificity (96%) and negative predictive value (99.4%).
The Presage Care system has been implemented with success in assisted living facilities. It was well accepted by coordinating nurses and performed well in predicting emergency hospitalizations. However, its use by NAs was less than expected. Overall, the system performed well in terms of performance and clinical impact in this setting. Nevertheless, further work is needed to improve the moderate use rate by NAs.
ClinicalTrials.gov NCT05221697; https://clinicaltrials.gov/study/NCT05221697.
老年人口在总人口中的比例不断增加,这是一个重大挑战。由于他们的脆弱性,这一人群中计划外住院的频率较高,会导致不良事件。基于人工智能(AI)的数字工具有助于识别脆弱性的早期迹象和不良健康事件,并有助于更早和更优化的管理。
本研究旨在报告一种创新监测系统(Presage Care)在辅助生活设施中的实施情况,该系统用于预测紧急住院的短期风险。我们描述其使用情况并评估其性能。
2022年3月至8月在法国7家辅助生活设施中进行了一项非对照多中心干预研究,这些设施收容非常年老且脆弱的成年人。该监测系统的设置是为了在紧急住院风险较高的情况下发出警报。辅助生活设施中的护士助理使用智能手机应用程序完成一份关于患者功能状态的问卷,其中包括电子患者报告结局指标(ePROMs);这些数据由先前设计的机器学习算法进行实时分析。通过ePROMs对患者进行这种远程监测,能够通知协调护士或协调护士助理,随后他们会通知患者的护士或医生。主要结局是监测系统在这种情况下的可接受性和可行性,以及在实际现实场景中确认AI在风险预防和检测方面的有效性和效率。次要结局是警报触发干预后的住院率。
在本研究中,194名符合条件的患者中有118名(61%)被纳入,他们至少有1次随访。共记录了38次紧急住院。该系统为118名患者中的47名(40%)生成了92次警报。在这92次警报中,46次(50%)导致对118名患者中的14名(12%)进行了46次医疗干预,并导致4次住院。92次警报中的另外46次(50%)未触发医疗干预,导致25次住院(P<0.001)。几乎所有住院都与未进行警报触发的干预有关(P<0.001)。该系统预测住院的性能具有高特异性(96%)和阴性预测值(99.4%)。
Presage Care系统已在辅助生活设施中成功实施。它得到了协调护士的良好接受,并且在预测紧急住院方面表现良好。然而,护士助理对其使用低于预期。总体而言,该系统在这种环境下的性能和临床影响方面表现良好。尽管如此,仍需要进一步努力提高护士助理的适度使用率。
ClinicalTrials.gov NCT05221697;https://clinicaltrials.gov/study/NCT05221697 。