Software with artificial intelligence-derived algorithms for analysing CT brain scans in people with a suspected acute stroke: a systematic review and cost-effectiveness analysis.

IF 3.5 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Health technology assessment Pub Date : 2024-03-01 DOI:10.3310/RDPA1487
Marie Westwood, Bram Ramaekers, Sabine Grimm, Nigel Armstrong, Ben Wijnen, Charlotte Ahmadu, Shelley de Kock, Caro Noake, Manuela Joore
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Abstract

Background: Artificial intelligence-derived software technologies have been developed that are intended to facilitate the review of computed tomography brain scans in patients with suspected stroke.

Objectives: To evaluate the clinical and cost-effectiveness of using artificial intelligence-derived software to support review of computed tomography brain scans in acute stroke in the National Health Service setting.

Methods: Twenty-five databases were searched to July 2021. The review process included measures to minimise error and bias. Results were summarised by research question, artificial intelligence-derived software technology and study type. The health economic analysis focused on the addition of artificial intelligence-derived software-assisted review of computed tomography angiography brain scans for guiding mechanical thrombectomy treatment decisions for people with an ischaemic stroke. The de novo model (developed in R Shiny, R Foundation for Statistical Computing, Vienna, Austria) consisted of a decision tree (short-term) and a state transition model (long-term) to calculate the mean expected costs and quality-adjusted life-years for people with ischaemic stroke and suspected large-vessel occlusion comparing artificial intelligence-derived software-assisted review to usual care.

Results: A total of 22 studies (30 publications) were included in the review; 18/22 studies concerned artificial intelligence-derived software for the interpretation of computed tomography angiography to detect large-vessel occlusion. No study evaluated an artificial intelligence-derived software technology used as specified in the inclusion criteria for this assessment. For artificial intelligence-derived software technology alone, sensitivity and specificity estimates for proximal anterior circulation large-vessel occlusion were 95.4% (95% confidence interval 92.7% to 97.1%) and 79.4% (95% confidence interval 75.8% to 82.6%) for Rapid (iSchemaView, Menlo Park, CA, USA) computed tomography angiography, 91.2% (95% confidence interval 77.0% to 97.0%) and 85.0 (95% confidence interval 64.0% to 94.8%) for Viz LVO (Viz.ai, Inc., San Fransisco, VA, USA) large-vessel occlusion, 83.8% (95% confidence interval 77.3% to 88.7%) and 95.7% (95% confidence interval 91.0% to 98.0%) for Brainomix (Brainomix Ltd, Oxford, UK) e-computed tomography angiography and 98.1% (95% confidence interval 94.5% to 99.3%) and 98.2% (95% confidence interval 95.5% to 99.3%) for Avicenna CINA (Avicenna AI, La Ciotat, France) large-vessel occlusion, based on one study each. These studies were not considered appropriate to inform cost-effectiveness modelling but formed the basis by which the accuracy of artificial intelligence plus human reader could be elicited by expert opinion. Probabilistic analyses based on the expert elicitation to inform the sensitivity of the diagnostic pathway indicated that the addition of artificial intelligence to detect large-vessel occlusion is potentially more effective (quality-adjusted life-year gain of 0.003), more costly (increased costs of £8.61) and cost-effective for willingness-to-pay thresholds of £3380 per quality-adjusted life-year and higher.

Limitations and conclusions: The available evidence is not suitable to determine the clinical effectiveness of using artificial intelligence-derived software to support the review of computed tomography brain scans in acute stroke. The economic analyses did not provide evidence to prefer the artificial intelligence-derived software strategy over current clinical practice. However, results indicated that if the addition of artificial intelligence-derived software-assisted review for guiding mechanical thrombectomy treatment decisions increased the sensitivity of the diagnostic pathway (i.e. reduced the proportion of undetected large-vessel occlusions), this may be considered cost-effective.

Future work: Large, preferably multicentre, studies are needed (for all artificial intelligence-derived software technologies) that evaluate these technologies as they would be implemented in clinical practice.

Study registration: This study is registered as PROSPERO CRD42021269609.

Funding: This award was funded by the National Institute for Health and Care Research (NIHR) Evidence Synthesis programme (NIHR award ref: NIHR133836) and is published in full in Health Technology Assessment; Vol. 28, No. 11. See the NIHR Funding and Awards website for further award information.

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用于分析疑似急性中风患者 CT 脑部扫描的人工智能衍生算法软件:系统综述与成本效益分析。
背景:已开发出人工智能衍生软件技术,旨在为疑似中风患者的计算机断层扫描脑部扫描复查提供便利:评估在国民健康服务环境中使用人工智能衍生软件支持对急性中风患者进行计算机断层扫描脑部扫描的临床和成本效益:检索了截至 2021 年 7 月的 25 个数据库。方法:检索了 25 个数据库,截止日期为 2021 年 7 月。结果按研究问题、人工智能衍生软件技术和研究类型进行了总结。健康经济分析的重点是增加人工智能衍生软件对计算机断层扫描血管成像脑部扫描的辅助审查,以指导缺血性中风患者的机械取栓治疗决策。新模型(在 R Shiny 中开发,R 基金会用于统计计算,奥地利维也纳)由决策树(短期)和状态转换模型(长期)组成,用于计算缺血性脑卒中和疑似大血管闭塞患者的平均预期成本和质量调整生命年,并将人工智能衍生的软件辅助复查与常规护理进行比较:共有 22 项研究(30 篇出版物)被纳入综述;18/22 项研究涉及人工智能衍生软件,用于解读计算机断层扫描血管造影以检测大血管闭塞。没有一项研究对本评估纳入标准中规定使用的人工智能衍生软件技术进行评估。仅就人工智能衍生软件技术而言,Rapid (iSchemaView, Menlo Park, CA, USA)计算机断层扫描血管造影检测近端前循环大血管闭塞的灵敏度和特异性估计值分别为 95.4%(95% 置信区间为 92.7% 至 97.1%)和 79.4%(95% 置信区间为 75.8% 至 82.6%),Viz LVO (Viz.ai, Inc., San Fransisco, VA, USA)计算机断层扫描血管造影检测近端前循环大血管闭塞的灵敏度和特异性估计值分别为 91.2%(95% 置信区间为 77.0% 至 97.0%)和 85.0(95% 置信区间为 64.0% 至 94.8%)、Viz LVO(Viz.ai, Inc., San Fransisco, VA, USA)的大血管闭塞率为 83.8%(95% 置信区间为 77.3% 至 88.7%),Brainomix(Brainomix Ltd, Oxford, UK)的电子计算机断层扫描血管造影率为 95.7%(95% 置信区间为 91.0% 至 98.0%)。根据一项研究,Avicenna CINA (Avicenna AI, La Ciotat, France) 的大血管闭塞率分别为 98.1%(95% 置信区间为 94.5% 至 99.3%)和 98.2%(95% 置信区间为 95.5% 至 99.3%)。这些研究被认为不适合作为成本效益建模的依据,但它们构成了人工智能加人类阅读器的准确性的专家意见基础。基于专家意见的概率分析为诊断路径的灵敏度提供了依据,结果表明,增加人工智能检测大血管闭塞可能更有效(质量调整生命年收益为0.003)、更昂贵(成本增加8.61英镑),在支付意愿阈值为每质量调整生命年3380英镑及以上时具有成本效益:现有证据不适合确定使用人工智能衍生软件支持急性卒中计算机断层扫描脑部扫描审查的临床有效性。经济分析没有提供证据表明人工智能衍生软件策略优于当前的临床实践。不过,结果表明,如果增加人工智能衍生软件辅助审查以指导机械取栓治疗决策,可提高诊断路径的敏感性(即降低未发现大血管闭塞的比例),则可认为具有成本效益:今后的工作:需要开展大型、最好是多中心的研究(针对所有人工智能衍生软件技术),以评估这些技术在临床实践中的应用情况:本研究已注册为 PROSPERO CRD42021269609:该奖项由国家健康与护理研究所(NIHR)的证据合成计划(NIHR奖项编号:NIHR133836)资助,全文发表于《健康技术评估》(Health Technology Assessment)第28卷第11期。如需了解更多奖项信息,请参阅 NIHR Funding and Awards 网站。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Health technology assessment
Health technology assessment 医学-卫生保健
CiteScore
6.90
自引率
0.00%
发文量
94
审稿时长
>12 weeks
期刊介绍: Health Technology Assessment (HTA) publishes research information on the effectiveness, costs and broader impact of health technologies for those who use, manage and provide care in the NHS.
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