Prediction of intraoperative hypotension using deep learning models based on non-invasive monitoring devices.

IF 2 3区 医学 Q2 ANESTHESIOLOGY
Heejoon Jeong, Donghee Kim, Dong Won Kim, Seungho Baek, Hyung-Chul Lee, Yusung Kim, Hyun Joo Ahn
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引用次数: 0

Abstract

Purpose: Intraoperative hypotension is associated with adverse outcomes. Predicting and proactively managing hypotension can reduce its incidence. Previously, hypotension prediction algorithms using artificial intelligence were developed for invasive arterial blood pressure monitors. This study tested whether routine non-invasive monitors could also predict intraoperative hypotension using deep learning algorithms.

Methods: An open-source database of non-cardiac surgery patients ( https://vitadb.net/dataset ) was used to develop the deep learning algorithm. The algorithm was validated using external data obtained from a tertiary Korean hospital. Intraoperative hypotension was defined as a systolic blood pressure less than 90 mmHg. The input data included five monitors: non-invasive blood pressure, electrocardiography, photoplethysmography, capnography, and bispectral index. The primary outcome was the performance of the deep learning model as assessed by the area under the receiver operating characteristic curve (AUROC).

Results: Data from 4754 and 421 patients were used for algorithm development and external validation, respectively. The fully connected model of Multi-head Attention architecture and the Globally Attentive Locally Recurrent model with Focal Loss function were able to predict intraoperative hypotension 5 min before its occurrence. The AUROC of the algorithm was 0.917 (95% confidence interval [CI], 0.915-0.918) for the original data and 0.833 (95% CI, 0.830-0.836) for the external validation data. Attention map, which quantified the contributions of each monitor, showed that our algorithm utilized data from each monitor with weights ranging from 8 to 22% for determining hypotension.

Conclusions: A deep learning model utilizing multi-channel non-invasive monitors could predict intraoperative hypotension with high accuracy. Future prospective studies are needed to determine whether this model can assist clinicians in preventing hypotension in patients undergoing surgery with non-invasive monitoring.

Abstract Image

利用基于无创监测设备的深度学习模型预测术中低血压。
目的:术中低血压与不良预后有关。预测并积极控制低血压可降低其发生率。此前,针对有创动脉血压监测仪开发了人工智能低血压预测算法。本研究测试了常规无创监护仪是否也能利用深度学习算法预测术中低血压:使用非心脏手术患者的开源数据库 ( https://vitadb.net/dataset ) 开发深度学习算法。该算法利用从韩国一家三级医院获得的外部数据进行了验证。术中低血压定义为收缩压低于 90 mmHg。输入数据包括五种监测器:无创血压、心电图、光电血压计、气管造影和双谱指数。主要结果是以接收者操作特征曲线下面积(AUROC)评估深度学习模型的性能:来自 4754 名和 421 名患者的数据分别用于算法开发和外部验证。多头注意力架构的全连接模型和具有焦点损失函数的全局注意力局部递归模型能够在术中低血压发生前 5 分钟预测术中低血压。原始数据的算法 AUROC 为 0.917(95% 置信区间 [CI],0.915-0.918),外部验证数据的算法 AUROC 为 0.833(95% 置信区间 [CI],0.830-0.836)。注意力图对每个监护仪的贡献进行了量化,它表明我们的算法在确定低血压时利用了每个监护仪的数据,权重从 8% 到 22% 不等:利用多通道无创监护仪的深度学习模型可以高精度预测术中低血压。未来还需要进行前瞻性研究,以确定该模型是否能帮助临床医生预防使用无创监护仪进行手术的患者出现低血压。
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来源期刊
CiteScore
4.30
自引率
13.60%
发文量
144
审稿时长
6-12 weeks
期刊介绍: The Journal of Clinical Monitoring and Computing is a clinical journal publishing papers related to technology in the fields of anaesthesia, intensive care medicine, emergency medicine, and peri-operative medicine. The journal has links with numerous specialist societies, including editorial board representatives from the European Society for Computing and Technology in Anaesthesia and Intensive Care (ESCTAIC), the Society for Technology in Anesthesia (STA), the Society for Complex Acute Illness (SCAI) and the NAVAt (NAVigating towards your Anaestheisa Targets) group. The journal publishes original papers, narrative and systematic reviews, technological notes, letters to the editor, editorial or commentary papers, and policy statements or guidelines from national or international societies. The journal encourages debate on published papers and technology, including letters commenting on previous publications or technological concerns. The journal occasionally publishes special issues with technological or clinical themes, or reports and abstracts from scientificmeetings. Special issues proposals should be sent to the Editor-in-Chief. Specific details of types of papers, and the clinical and technological content of papers considered within scope can be found in instructions for authors.
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