利用可解释人工智能,利用历史电子健康记录及早预测血流感染。

PLOS digital health Pub Date : 2024-11-14 eCollection Date: 2024-11-01 DOI:10.1371/journal.pdig.0000506
Rajeev Bopche, Lise Tuset Gustad, Jan Egil Afset, Birgitta Ehrnström, Jan Kristian Damås, Øystein Nytrø
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引用次数: 0

摘要

血流感染(BSI)是一种严重的公共卫生威胁,因为它们会迅速发展为败血症等危重症。本研究提出了一种新颖的可解释人工智能(XAI)框架,利用历史电子健康记录(EHR)预测 BSI。该框架利用挪威特隆赫姆圣奥拉夫斯医院(St. Olavs Hospital)包含 35,591 名患者的数据集,整合了人口统计学、实验室和综合病史数据,将患者分为高风险和低风险 BSI 组别。通过避免对实时临床数据的依赖,我们的模型提高了在各种医疗环境(包括资源有限的环境)中的可扩展性。XAI 框架的性能明显优于传统模型,尤其是基于树的算法,在 BSI 预测方面表现出卓越的特异性和灵敏度。这种方法有望优化资源分配,降低医疗成本,同时为临床决策提供可解释性,使其成为医院系统早期干预和改善患者预后的重要工具。
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Leveraging explainable artificial intelligence for early prediction of bloodstream infections using historical electronic health records.

Bloodstream infections (BSIs) are a severe public health threat due to their rapid progression into critical conditions like sepsis. This study presents a novel eXplainable Artificial Intelligence (XAI) framework to predict BSIs using historical electronic health records (EHRs). Leveraging a dataset from St. Olavs Hospital in Trondheim, Norway, encompassing 35,591 patients, the framework integrates demographic, laboratory, and comprehensive medical history data to classify patients into high-risk and low-risk BSI groups. By avoiding reliance on real-time clinical data, our model allows for enhanced scalability across various healthcare settings, including resource-limited environments. The XAI framework significantly outperformed traditional models, particularly with tree-based algorithms, demonstrating superior specificity and sensitivity in BSI prediction. This approach promises to optimize resource allocation and potentially reduce healthcare costs while providing interpretability for clinical decision-making, making it a valuable tool in hospital systems for early intervention and improved patient outcomes.

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