Infermedica, Inc, San Antonio, TX, United States.
Infermedica, Inc, Wroclaw, Poland.
Front Public Health. 2024 May 13;12:1362246. doi: 10.3389/fpubh.2024.1362246. eCollection 2024.
To evaluate the extent to which patient-users reporting symptoms of five severe/acute conditions requiring emergency care to an AI-based virtual triage (VT) engine had no intention to get such care, and whose acuity perception was misaligned or decoupled from actual risk of life-threatening symptoms.
A dataset of 3,022,882 VT interviews conducted over 16 months was evaluated to quantify and describe patient-users reporting symptoms of five potentially life-threatening conditions whose pre-triage healthcare intention was other than seeking urgent care, including myocardial infarction, stroke, asthma exacerbation, pneumonia, and pulmonary embolism.
Healthcare intent data was obtained for 12,101 VT patient-user interviews. Across all five conditions a weighted mean of 38.5% of individuals whose VT indicated a condition requiring emergency care had no pre-triage intent to consult a physician. Furthermore, 61.5% intending to possibly consult a physician had no intent to seek emergency medical care. After adjustment for 13% VT safety over-triage/referral to ED, a weighted mean of 33.5% of patient-users had no intent to seek professional care, and 53.5% had no intent to seek emergency care.
AI-based VT may offer a vehicle for early detection and care acuity alignment of severe evolving pathology by engaging patients who believe their symptoms are not serious, and for accelerating care referral and delivery for life-threatening conditions where patient misunderstanding of risk, or indecision, causes care delay. A next step will be clinical confirmation that when decoupling of patient care intent from emergent care need occurs, VT can influence patient behavior to accelerate care engagement and/or emergency care dispatch and treatment to improve clinical outcomes.
评估向基于人工智能的虚拟分诊 (VT) 引擎报告五种需要紧急护理的严重/急性病症的患者用户中,有多少人没有寻求此类护理的意愿,以及他们的严重程度感知与实际危及生命症状的风险是否不一致或脱钩。
评估了一个由 3022882 次 VT 访谈组成的数据集,以量化和描述向 VT 报告五种潜在危及生命病症(包括心肌梗死、中风、哮喘恶化、肺炎和肺栓塞)症状且预先分诊的医疗保健意向不是寻求紧急护理的患者用户。
对 12101 次 VT 患者用户访谈获得了医疗保健意向数据。在所有五种情况下,VT 表明需要紧急护理的患者中,加权平均值有 38.5%的人预先分诊时没有咨询医生的意向。此外,61.5%打算可能咨询医生的人也没有寻求紧急医疗护理的意向。在调整了 13%的 VT 安全过度分诊/转至 ED 后,加权平均值有 33.5%的患者用户没有寻求专业护理的意向,53.5%的患者用户没有寻求紧急护理的意向。
基于人工智能的 VT 可以通过吸引那些认为自己的症状不严重的患者,通过早期发现和护理严重程度调整来提供一种方法,对严重的进行性病理进行检测和护理,对于因患者对风险的误解或犹豫不决而导致护理延迟的危及生命的病症,加快护理转诊和交付。下一步将是临床确认,当患者的护理意图与紧急护理需求脱钩时,VT 可以影响患者行为,以加快护理参与和/或紧急护理派遣和治疗,从而改善临床结果。