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基于人工智能的重症监护病房患者死亡率预测模型:一项范围综述

Artificial Intelligence-Based Models for Prediction of Mortality in ICU Patients: A Scoping Review.

作者信息

Olang Orkideh, Mohseni Sana, Shahabinezhad Ali, Hamidianshirazi Yasaman, Goli Amireza, Abolghasemian Mansour, Shafiee Mohammad Ali, Aarabi Mehdi, Alavinia Mohammad, Shaker Pouyan

机构信息

Division of General Internal Medicine, Department of Medicine, University Health Network, Toronto General Hospital, 200 Elizabeth Street, 14 EN-208, Toronto, ON, Canada, M5G 2C4.

Division of Orthopedic Surgery, Department of Surgery, University of Alberta, Room 404 Community Service Centre, Royal Alexandra Hospital, 10240 Kingsway Avenue, Edmonton, Alberta, Canada, T5H 3V9.

出版信息

J Intensive Care Med. 2024 Aug 16:8850666241277134. doi: 10.1177/08850666241277134.

Abstract

BACKGROUND AND OBJECTIVE

Healthcare professionals may be able to anticipate more accurately a patient's timing of death and assess their possibility of recovery by implementing a real-time clinical decision support system. Using such a tool, the healthcare system can better understand a patient's condition and make more informed judgements about distributing limited resources. This scoping review aimed to analyze various death prediction AI (Artificial Intelligence) algorithms that have been used in ICU (Intensive Care Unit) patient populations.

METHODS

The search strategy of this study involved keyword combinations of outcome and patient setting such as mortality, survival, ICU, terminal care. These terms were used to perform database searches in MEDLINE, Embase, and PubMed up to July 2022. The variables, characteristics, and performance of the identified predictive models were summarized. The accuracy of the models was compared using their Area Under the Curve (AUC) values.

RESULTS

Databases search yielded an initial pool of 8271 articles. A two-step screening process was then applied: first, titles and abstracts were reviewed for relevance, reducing the pool to 429 articles. Next, a full-text review was conducted, further narrowing down the selection to 400 key studies. Out of 400 studies on different tools or models for prediction of mortality in ICUs, 16 papers focused on AI-based models which were ultimately included in this study that have deployed different AI-based and machine learning models to make a prediction about negative patient outcome. The accuracy and performance of the different models varied depending on the patient populations and medical conditions. It was found that AI models compared with traditional tools like SAP3 or APACHE IV score were more accurate in death prediction, with some models achieving an AUC of up to 92.9%. The overall mortality rate ranged from 5% to more than 60% in different studies.

CONCLUSION

We found that AI-based models exhibit varying performance across different patient populations. To enhance the accuracy of mortality prediction, we recommend customizing models for specific patient groups and medical contexts. By doing so, healthcare professionals may more effectively assess mortality risk and tailor treatments accordingly. Additionally, incorporating additional variables-such as genetic information-into new models can further improve their accuracy.

摘要

背景与目的

医疗保健专业人员或许能够通过实施实时临床决策支持系统,更准确地预测患者的死亡时间,并评估其康复的可能性。借助这样一种工具,医疗保健系统能够更好地了解患者的病情,并在分配有限资源时做出更明智的判断。本综述旨在分析已用于重症监护病房(ICU)患者群体的各种死亡预测人工智能(AI)算法。

方法

本研究的检索策略涉及结局和患者环境的关键词组合,如死亡率、生存率、ICU、临终关怀。截至2022年7月,这些术语被用于在MEDLINE、Embase和PubMed中进行数据库检索。对所识别的预测模型的变量、特征和性能进行了总结。使用模型的曲线下面积(AUC)值比较模型的准确性。

结果

数据库检索最初得到8271篇文章。然后应用两步筛选过程:首先,审查标题和摘要的相关性,将文章池减少到429篇。接下来,进行全文审查,进一步将选择范围缩小到400项关键研究。在400项关于ICU死亡率预测的不同工具或模型的研究中,16篇论文聚焦于基于AI的模型,这些模型最终被纳入本研究,它们采用了不同的基于AI和机器学习的模型来预测患者的不良结局。不同模型的准确性和性能因患者群体和医疗状况而异。结果发现,与SAP3或APACHE IV评分等传统工具相比,AI模型在死亡预测方面更准确,一些模型的AUC高达92.9%。不同研究中的总体死亡率从5%到60%以上不等。

结论

我们发现基于AI的模型在不同患者群体中表现各异。为提高死亡率预测的准确性,我们建议针对特定患者群体和医疗背景定制模型。这样做,医疗保健专业人员可以更有效地评估死亡风险并相应地调整治疗方案。此外,将诸如基因信息等额外变量纳入新模型可以进一步提高其准确性。

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