简化器官捐赠:脑死亡后基于人工智能的方案的影响。

IF 1.6 Q4 HEALTH CARE SCIENCES & SERVICES
Srikanth Er, Jaisankar P, Shalini Nair
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引用次数: 0

摘要

背景:脑死亡(BD)后器官取出延迟会损害器官活力,增加移植后并发症的风险。2021年,印度泰米尔纳德邦移植管理局实施了一项基于人工智能(AI)的应用程序,旨在加快数据验证,以减少延误并提高器官采购的透明度。这项回顾性观察性研究评估了这种干预措施的效果,并确定了导致延迟的关键因素。方法:收集2018年1月至2023年12月期间根据神经学标准(DND)宣布死亡的器官捐献者的数据。捐助者被分为两组:人工智能实施前(P1)和人工智能实施后(P2)。导致延迟的因素可分为家庭因素、医生因素、机构因素和政府因素四个方面。使用鱼骨分析来确定根本原因。结果:共分析了45例DND病例。从第一次呼吸暂停测试到器官获取的中位时间为1657 (IQR, 1499-1899) min。P2时获取器官的时间有统计学意义的增加:P1时1587 (IQR, 1328-1779) min, P2时1660 min (IQR, 1556-1959) (p=0.04)。这一增长主要是由于在法律验证后将患者转移到手术室的延误时间更长,从125分钟(IQR, 96-231)增加到384分钟(IQR, 186-457)分钟(p=0.002)。结论:本研究强调了影响中低收入患者器官摘取时间的关键因素。虽然基于人工智能的协议增强了数据验证和透明度,但它也引入了意想不到的程序延迟。人工智能工具的持续评估和迭代改进对于优化器官获取效率和临床结果至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Streamlining organ donation: impact of an artificial intelligence-based protocol post-brain death.

Streamlining organ donation: impact of an artificial intelligence-based protocol post-brain death.

Streamlining organ donation: impact of an artificial intelligence-based protocol post-brain death.

Background: Delays in organ retrieval following brain death (BD) can compromise organ viability, increasing the risk of post-transplant complications. In 2021, the Transplant Authority of Tamil Nadu, India, implemented an artificial intelligence (AI)-based application aimed at expediting data verification to reduce delays and improve transparency in organ procurement. This retrospective observational study evaluated the effect of this intervention and identified key factors contributing to delays.

Methods: Data were collected from organ donors declared dead by neurological criteria (DND) between January 2018 and December 2023. Donors were categorised into two groups: pre-AI implementation (P1) and post-AI implementation (P2). Factors leading to delay were classified into four domains: family-related, physician-related, institution-related and government-related domains. A fishbone analysis was used to identify root causes.

Results: A total of 45 DND cases were analysed. The median time from the first apnoea test to organ procurement was 1657 (IQR, 1499-1899) min. A statistically significant increase in the retrieval time was observed at P2: 1587 (IQR, 1328-1779) min at P1 vs 1660 min (IQR, 1556-1959) at P2 (p=0.04). This increase was primarily driven by longer delays in transferring patients to the operating room after legal verification, which rose from 125 (IQR, 96-231) to 384 (IQR, 186-457) min (p=0.002).

Conclusion: This study underscores critical factors affecting organ retrieval timelines in a low-income to middle-income setting. While the AI-based protocol enhanced data verification and transparency, it also introduced unanticipated procedural delays. Ongoing evaluation and iterative refinement of AI tools are essential to optimise organ procurement efficiency and clinical outcomes.

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来源期刊
BMJ Open Quality
BMJ Open Quality Nursing-Leadership and Management
CiteScore
2.20
自引率
0.00%
发文量
226
审稿时长
20 weeks
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