Cloud-Based Machine Learning Platform to Predict Clinical Outcomes at Home for Patients With Cardiovascular Conditions Discharged From Hospital: Clinical Trial.

Q2 Medicine JMIR Cardio Pub Date : 2024-03-01 DOI:10.2196/45130
Phillip C Yang, Alokkumar Jha, William Xu, Zitao Song, Patrick Jamp, Jeffrey J Teuteberg
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Abstract

Background: Hospitalizations account for almost one-third of the US $4.1 trillion health care cost in the United States. A substantial portion of these hospitalizations are attributed to readmissions, which led to the establishment of the Hospital Readmissions Reduction Program (HRRP) in 2012. The HRRP reduces payments to hospitals with excess readmissions. In 2018, >US $700 million was withheld; this is expected to exceed US $1 billion by 2022. More importantly, there is nothing more physically and emotionally taxing for readmitted patients and demoralizing for hospital physicians, nurses, and administrators. Given this high uncertainty of proper home recovery, intelligent monitoring is needed to predict the outcome of discharged patients to reduce readmissions. Physical activity (PA) is one of the major determinants for overall clinical outcomes in diabetes, hypertension, hyperlipidemia, heart failure, cancer, and mental health issues. These are the exact comorbidities that increase readmission rates, underlining the importance of PA in assessing the recovery of patients by quantitative measurement beyond the questionnaire and survey methods.

Objective: This study aims to develop a remote, low-cost, and cloud-based machine learning (ML) platform to enable the precision health monitoring of PA, which may fundamentally alter the delivery of home health care. To validate this technology, we conducted a clinical trial to test the ability of our platform to predict clinical outcomes in discharged patients.

Methods: Our platform consists of a wearable device, which includes an accelerometer and a Bluetooth sensor, and an iPhone connected to our cloud-based ML interface to analyze PA remotely and predict clinical outcomes. This system was deployed at a skilled nursing facility where we collected >17,000 person-day data points over 2 years, generating a solid training database. We used these data to train our extreme gradient boosting (XGBoost)-based ML environment to conduct a clinical trial, Activity Assessment of Patients Discharged from Hospital-I, to test the hypothesis that a comprehensive profile of PA would predict clinical outcome. We developed an advanced data-driven analytic platform that predicts the clinical outcome based on accurate measurements of PA. Artificial intelligence or an ML algorithm was used to analyze the data to predict short-term health outcome.

Results: We enrolled 52 patients discharged from Stanford Hospital. Our data demonstrated a robust predictive system to forecast health outcome in the enrolled patients based on their PA data. We achieved precise prediction of the patients' clinical outcomes with a sensitivity of 87%, a specificity of 79%, and an accuracy of 85%.

Conclusions: To date, there are no reliable clinical data, using a wearable device, regarding monitoring discharged patients to predict their recovery. We conducted a clinical trial to assess outcome data rigorously to be used reliably for remote home care by patients, health care professionals, and caretakers.

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基于云的机器学习平台可预测心血管疾病出院患者在家中的临床疗效:临床试验。
背景:在美国 4.1 万亿美元的医疗费用中,住院费用几乎占了三分之一。这些住院治疗中有很大一部分是由于再入院造成的,因此在 2012 年制定了 "减少再入院计划"(Hospital Readmissions Reduction Program,HRRP)。HRRP 减少了对再入院率过高的医院的支付。2018 年,扣缴金额>7 亿美元;预计到 2022 年,扣缴金额将超过 10 亿美元。更重要的是,没有比这更让再入院患者身心俱疲,更让医院医生、护士和管理人员士气低落的了。鉴于居家康复的不确定性很高,因此需要进行智能监测,预测出院病人的康复结果,以减少再入院率。体力活动(PA)是决定糖尿病、高血压、高脂血症、心力衰竭、癌症和心理健康问题整体临床结果的主要因素之一。这些正是增加再入院率的合并症,这就强调了除问卷和调查方法外,通过定量测量来评估患者康复情况的体力活动的重要性:本研究旨在开发一种远程、低成本、基于云的机器学习(ML)平台,以实现对 PA 的精准健康监测,这可能会从根本上改变家庭医疗服务的提供方式。为了验证这项技术,我们进行了一项临床试验,测试我们的平台预测出院患者临床结果的能力:我们的平台由一个可穿戴设备(包括一个加速度计和一个蓝牙传感器)和一个连接到我们基于云的 ML 界面的 iPhone 组成,用于远程分析 PA 和预测临床结果。该系统部署在一家专业护理机构,我们在两年内收集了超过 17,000 人天的数据点,从而生成了一个可靠的训练数据库。我们利用这些数据训练基于极端梯度提升(XGBoost)的 ML 环境,开展了一项名为 "出院患者活动评估-I "的临床试验,以检验 PA 的综合概况能否预测临床结果这一假设。我们开发了一个先进的数据驱动分析平台,可根据 PA 的精确测量结果预测临床预后。人工智能或 ML 算法用于分析数据以预测短期健康结果:我们招募了 52 名从斯坦福医院出院的患者。结果:我们招募了 52 名从斯坦福医院出院的患者。我们的数据显示,该系统具有强大的预测功能,可根据患者的 PA 数据预测其健康状况。我们实现了对患者临床结果的精确预测,灵敏度为 87%,特异度为 79%,准确度为 85%:迄今为止,还没有使用可穿戴设备监测出院患者以预测其康复情况的可靠临床数据。我们开展了一项临床试验,对结果数据进行严格评估,以便患者、医护人员和护理人员在远程家庭护理中可靠使用。
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来源期刊
JMIR Cardio
JMIR Cardio Computer Science-Computer Science Applications
CiteScore
3.50
自引率
0.00%
发文量
25
审稿时长
12 weeks
期刊最新文献
Comparison of Auscultation Quality Using Contemporary Digital Stethoscopes. The Development of Heart Failure Electronic-Message Driven Tips to Support Self-Management: Co-Design Case Study. Identifying the Severity of Heart Valve Stenosis and Regurgitation Among a Diverse Population Within an Integrated Health Care System: Natural Language Processing Approach. Smart Device Ownership and Use of Social Media, Wearable Trackers, and Health Apps Among Black Women With Hypertension in the United States: National Survey Study. A co-design case study of the development of heart failure e-TIPS to support self-management.
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