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人工智能在医疗保健领域的健康经济评估的系统评价:龟兔赛跑。

Systematic Review of Health Economic Evaluations Focused on Artificial Intelligence in Healthcare: The Tortoise and the Cheetah.

机构信息

Department of Health Technology and Services Research, Technical Medical Centre, University of Twente, Enschede, The Netherlands; Department of Research and Development, Netherlands Comprehensive Cancer Organisation, Utrecht, The Netherlands.

Multi-Modality Medical Imaging, Technical Medical Centre, University of Twente, Enschede, The Netherlands; Department of Radiology, Ziekenhuisgroep Twente, Almelo, The Netherlands.

出版信息

Value Health. 2022 Mar;25(3):340-349. doi: 10.1016/j.jval.2021.11.1362. Epub 2021 Dec 16.

Abstract

OBJECTIVES

This study aimed to systematically review recent health economic evaluations (HEEs) of artificial intelligence (AI) applications in healthcare. The aim was to discuss pertinent methods, reporting quality and challenges for future implementation of AI in healthcare, and additionally advise future HEEs.

METHODS

A systematic literature review was conducted in 2 databases (PubMed and Scopus) for articles published in the last 5 years. Two reviewers performed independent screening, full-text inclusion, data extraction, and appraisal. The Consolidated Health Economic Evaluation Reporting Standards and Philips checklist were used for the quality assessment of included studies.

RESULTS

A total of 884 unique studies were identified; 20 were included for full-text review, covering a wide range of medical specialties and care pathway phases. The most commonly evaluated type of AI was automated medical image analysis models (n = 9, 45%). The prevailing health economic analysis was cost minimization (n = 8, 40%) with the costs saved per case as preferred outcome measure. A total of 9 studies (45%) reported model-based HEEs, 4 of which applied a time horizon >1 year. The evidence supporting the chosen analytical methods, assessment of uncertainty, and model structures was underreported. The reporting quality of the articles was moderate as on average studies reported on 66% of Consolidated Health Economic Evaluation Reporting Standards items.

CONCLUSIONS

HEEs of AI in healthcare are limited and often focus on costs rather than health impact. Surprisingly, model-based long-term evaluations are just as uncommon as model-based short-term evaluations. Consequently, insight into the actual benefits offered by AI is lagging behind current technological developments.

摘要

目的

本研究旨在系统回顾人工智能(AI)在医疗保健中应用的近期健康经济评估(HEE)。目的是讨论相关方法、报告质量和未来在医疗保健中实施 AI 的挑战,并为未来的 HEE 提供建议。

方法

在 PubMed 和 Scopus 两个数据库中进行了系统文献回顾,检索近 5 年内发表的文章。两名评审员独立进行筛选、全文纳入、数据提取和评估。采用统一的健康经济评估报告标准和飞利浦清单对纳入研究进行质量评估。

结果

共确定了 884 项独特的研究;20 项研究纳入全文审查,涵盖了广泛的医学专业和护理路径阶段。评估最多的 AI 类型是自动化医疗图像分析模型(n=9,45%)。最常见的健康经济分析是成本最小化(n=8,40%),首选的结果衡量标准是每个病例节省的成本。共有 9 项研究(45%)报告了基于模型的 HEE,其中 4 项应用了超过 1 年的时间范围。所选分析方法、不确定性评估和模型结构的证据报告不足。文章的报告质量中等,平均报告了统一的健康经济评估报告标准项目的 66%。

结论

医疗保健中 AI 的 HEE 有限,通常侧重于成本而非健康影响。令人惊讶的是,基于模型的长期评估与基于模型的短期评估一样罕见。因此,对 AI 实际效益的了解落后于当前的技术发展。

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