Diagnoses supported by a computerised diagnostic decision support system versus conventional diagnoses in emergency patients (DDX-BRO): a multicentre, multiple-period, double-blind, cluster-randomised, crossover superiority trial

IF 24.1 1区 医学 Q1 MEDICAL INFORMATICS Lancet Digital Health Pub Date : 2025-02-01 DOI:10.1016/S2589-7500(24)00250-4
Wolf E Hautz MD , Thimo Marcin PhD , Stefanie C Hautz PhD , Stefan K Schauber PhD , Prof Gert Krummrey MD , Martin Müller MD , Thomas C Sauter MD , Cornelia Lambrigger RN , David Schwappach PhD , Prof Mathieu Nendaz MD , Gregor Lindner MD , Simon Bosbach MD , Ines Griesshammer MD , Philipp Schönberg MD , Emanuel Plüss MD , Valerie Romann MD , Svenja Ravioli MD , Nadine Werthmüller MD , Fabian Kölbener MD , Prof Aristomenis K Exadaktylos MD , Laura Zwaan PhD
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Abstract

Background

Diagnostic error is a frequent and clinically relevant health-care problem. Whether computerised diagnostic decision support systems (CDDSSs) improve diagnoses is controversial, and prospective randomised trials investigating their effectiveness in routine clinical practice are scarce. We hypothesised that diagnoses made with a CDDSS in the emergency department setting would be superior to unsupported diagnoses.

Methods

This multicentre, multiple-period, double-blind, cluster-randomised, crossover superiority trial was done in four emergency departments in Switzerland. Eligible patients were adults (aged ≥18 years) presenting with abdominal pain, fever of unknown origin, syncope, or non-specific symptoms. Emergency departments were randomly assigned (1:1) to one of two predefined sequences of six alternating periods of intervention or control. Patients presenting during an intervention period were diagnosed with the aid of a CDDSS, whereas patients presenting during a control period were diagnosed without a CDDSS (usual care). Patients and personnel assessing outcomes were masked to group allocation; treating physicians were not. The primary binary outcome (false or true) was a composite score indicating a risk of reduced diagnostic quality, which was deemed to be present if any of the following occurred within 14 days: unscheduled medical care, a change in diagnosis, an unexpected intensive care unit admission within 24 h if initially admitted to hospital, or death. We assessed superiority of supported versus unsupported diagnoses in all consenting patients using a generalised linear mixed effects model. All participants who received any study treatment (including control) and completed the study were included in the safety analysis. This trial is registered with ClinicalTrials.gov (NCT05346523) and is closed to accrual.

Findings

Between June 9, 2022, and June 23, 2023, 15 845 patients were screened and 1204 (591 [49·1%] female and 613 [50·9%] male) were included in the primary efficacy analysis. The median age of participants was 53 years (IQR 34–69). Diagnostic quality risk was observed in 100 (18%) of 559 patients with CDDSS-supported diagnoses and 119 (18%) of 645 with unsupported diagnoses (adjusted odds ratio 0·96 [95% CI 0·71–1·3]). 94 (7·8%) patients suffered a serious adverse event, none related to the study.

Interpretation

Use of a CDDSS did not reduce the occurrence of diagnostic quality risk compared with the usual diagnostic process in adults presenting to emergency departments. Future research should aim to identify specific contexts in which CDDSSs are effective and how existing CDDSSs can be adapted to improve patient outcomes.

Funding

Swiss National Science Foundation and University Hospital Bern.
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由计算机化诊断决策支持系统支持的诊断与急诊患者的传统诊断(DDX-BRO):一项多中心、多期、双盲、集群随机、交叉优势试验。
背景:诊断错误是临床常见的卫生保健问题。计算机化诊断决策支持系统(cddss)是否能改善诊断是有争议的,调查其在常规临床实践中有效性的前瞻性随机试验很少。我们假设在急诊科使用CDDSS做出的诊断要优于无证据支持的诊断。方法:这项多中心、多期、双盲、集群随机、交叉优势试验在瑞士的4个急诊科进行。符合条件的患者是有腹痛、不明原因发热、晕厥或非特异性症状的成年人(年龄≥18岁)。急诊科被随机(1:1)分配到两个预定义的六个交替干预或控制周期的序列之一。在干预期间出现的患者在CDDSS的帮助下进行诊断,而在对照期间出现的患者在没有CDDSS(常规护理)的情况下进行诊断。评估结果的患者和人员不受分组分配的影响;而主治医生则不然。主要的二元结局(假或真)是一个综合评分,表明诊断质量降低的风险,如果14天内发生以下任何情况,则认为存在:计划外的医疗护理,诊断改变,如果最初入院,24小时内意外入住重症监护病房,或死亡。我们使用广义线性混合效应模型评估了所有同意患者中支持与不支持诊断的优越性。所有接受任何研究治疗(包括对照组)并完成研究的参与者都被纳入安全性分析。该试验已在ClinicalTrials.gov注册(NCT05346523),并已结束累积。结果:在2022年6月9日至2023年6月23日期间,筛查了15845例患者,其中1204例(591例[49.1%]女性,613例[50.9%]男性)纳入了主要疗效分析。参与者的中位年龄为53岁(IQR 34-69)。559例支持cddss诊断的患者中有100例(18%)存在诊断质量风险,645例不支持cddss诊断的患者中有119例(18%)存在诊断质量风险(校正优势比0.96 [95% CI 0.71 - 3])。94例(7.8%)患者发生严重不良事件,与本研究无关。解释:与通常的诊断过程相比,在急诊科就诊的成年人中,使用CDDSS并没有减少诊断质量风险的发生。未来的研究应旨在确定cddss有效的具体情况,以及如何适应现有的cddss来改善患者的预后。资助:瑞士国家科学基金会和伯尔尼大学医院。
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来源期刊
CiteScore
41.20
自引率
1.60%
发文量
232
审稿时长
13 weeks
期刊介绍: The Lancet Digital Health publishes important, innovative, and practice-changing research on any topic connected with digital technology in clinical medicine, public health, and global health. The journal’s open access content crosses subject boundaries, building bridges between health professionals and researchers.By bringing together the most important advances in this multidisciplinary field,The Lancet Digital Health is the most prominent publishing venue in digital health. We publish a range of content types including Articles,Review, Comment, and Correspondence, contributing to promoting digital technologies in health practice worldwide.
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