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Clinical Validation of an Artificial Intelligence-Based Decision Support System for Diagnosis and Risk Stratification of Heart Failure (STRATIFYHF): a Protocol for a Prospective, Multicentre Longitudinal Study

Sarah Jane Charman,Nduka C. OkwoseDjordje G. Jakovljevic, STRATIFYHF investigators

BMJ OPEN(2025)

Newcastle Univ | Coventry Univ Coventry Campus | Univ Med Ctr Utrecht | Careggi Univ Hosp | Univ Hosp Regensburg | Univ Novi Sad | Hosp Univ Ramon & Cajal | Univ Cambridge | AquaVis Engn | Univ Barcelona | Univ Ljubljana | Fdn Res & Technol Hellas | Univ Hosp Coventry & Warwickshire NHS Trust | Newcastle Tyne Hosp NHS Fdn Trust | Univ Firenze | Univ Belgrade | BioIRC

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Abstract
Introduction Heart failure (HF) is a complex clinical syndrome. Accurate risk stratification and early diagnosis of HF are challenging as its signs and symptoms are non-specific. We propose to address this global challenge by developing the STRATIFYHF artificial intelligence-driven decision support system (DSS), which uses novel analytical methods in determining the risk, diagnosis and prognosis of HF. The primary aim of the present study is to collect prospective clinical data to validate the STRATIFYHF DSS (in terms of diagnostic accuracy, sensitivity and specificity) as a tool to predict the risk, diagnosis and progression of HF. The secondary outcomes are the demographic and clinical predictors of risk, diagnosis and progression of HF.Methods and analysis STRATIFYHF is a prospective, multicentre, longitudinal study that will recruit up to 1600 individuals (n=800 suspected/at risk of HF and n=800 diagnosed with HF) aged ≥45 years old, with up to 24 months of follow-up observations. Individuals suspected of HF will be divided into two categories based on current definitions and predefined inclusion criteria. All participants will have their medical history recorded, along with data on physical examination (signs and symptoms), blood tests including serum natriuretic peptides levels, ECG and echocardiogram results, as well as demographic, socioeconomic and lifestyle data, and use of complete novel technologies (cardiac output response to stress test and voice recognition biomarkers). All measurements will be recorded at baseline and at 12-month follow-up, with medical history and hospitalisation also recorded at 24-month follow-up. Cardiovascular MRI assessment will be completed in a subset of participants (n=20–40) from eligible clinical centres only at baseline. Each clinical centre will recruit a subset of participants (n=30) who will complete a 6-month home-based monitoring of clinical characteristics and accelerometry (wrist-worn monitor) to determine the feasibility and acceptability of the STRATIFYHF mobile application. Focus groups and semistructured interviews will be conducted with up to 15 healthcare professionals and up to 20 study participants (10 at risk of HF and 10 diagnosed with HF) to explore the needs of patients and healthcare professionals prior to the development of the STRATIFYHF DSS and to evaluate the acceptability of this mobile application.Ethics and dissemination Ethical approval has been granted by the East Midlands - Leicester Central Research Ethics Committee (24/EM/0101). Dissemination activities will include journal publications and presentations at conferences, as well as development of training materials and delivery of focused training on the STRATIFYHF DSS and mobile application. We will develop and propose policy guidelines for integration of the STRATIFYHF DSS and mobile application into the standard of care in the HF care pathway.Trial registration number NCT06377319.
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Key words
Heart failure,Risk management,Artificial Intelligence,Clinical Decision-Making
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要点】:本研究旨在开发并验证STRATIFYHF人工智能决策支持系统,用于心衰的诊断和风险分层,通过前瞻性、多中心、纵向研究收集临床数据以验证其诊断准确性、敏感性和特异性。

方法】:采用前瞻性、多中心、纵向研究方法,计划招募至少1600名年龄≥45岁的个体(其中800名疑似/心衰风险个体和800名已确诊心衰个体),进行长达24个月的随访观察。

实验】:所有参与者将记录病史、体检数据、血液检测(包括血清钠肽水平)、心电图和超声心动图结果,以及人口统计、社会经济和生活方式数据,还将使用全新技术(压力测试中心输出响应和语音识别生物标志物)。在基线和12个月随访时记录所有测量值,24个月随访时记录病史和住院情况。心血管MRI评估将在符合条件的研究中心的一组参与者(n=20-40)中完成。每个研究中心还将招募一组参与者(n=30)进行6个月的家庭监测,以评估STRATIFYHF移动应用的可行性和可接受性。此外,将通过焦点小组和半结构化访谈了解患者和医疗专业人员的需求,并评估移动应用的接受度。研究已获得伦理批准,并将通过期刊发表、会议演讲、培训材料开发及培训活动进行成果传播,同时拟议政策指南以将STRATIFYHF系统融入心衰护理标准路径。试验注册编号为NCT06377319。