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使用人工智能对重症监护患者的疼痛进行半自动跟踪:一项回顾性观察研究。

Semi-automated tracking of pain in critical care patients using artificial intelligence: a retrospective observational study.

机构信息

Department of Anesthesiology and Perioperative Medicine, Tohoku University Graduate School of Medicine, 2-1 Seiryo-machi, Aoba-ku, Sendai, Miyagi, 980-8575, Japan.

Hitachi Solutions East Japan, Ltd., Sendai, Miyagi, Japan.

出版信息

Sci Rep. 2021 Mar 4;11(1):5229. doi: 10.1038/s41598-021-84714-8.

Abstract

Monitoring the pain intensity in critically ill patients is crucial because intense pain can cause adverse events, including poor survival rates; however, continuous pain evaluation is difficult. Vital signs have traditionally been considered ineffective in pain assessment; nevertheless, the use of machine learning may automate pain assessment using vital signs. This retrospective observational study was performed at a university hospital in Sendai, Japan. Objective pain assessments were performed in eligible patients using the Critical-Care Pain Observation Tool (CPOT). Three machine-learning methods-random forest (RF), support vector machine (SVM), and logistic regression (LR)-were employed to predict pain using parameters, such as vital signs, age group, and sedation levels. Prediction accuracy was calculated as the harmonic mean of sensitivity, specificity, and area under the receiver operating characteristic curve (AUROC). Furthermore, 117,190 CPOT assessments were performed in 11,507 eligible patients (median age: 65 years; 58.0% males). We found that pain prediction was possible with all three machine-learning methods. RF demonstrated the highest AUROC for the test data (RF: 0.853, SVM: 0.823, and LR: 0.787). With this method, pain can be objectively, continuously, and semi-automatically evaluated in critically ill patients.

摘要

监测危重症患者的疼痛强度至关重要,因为剧烈疼痛会导致不良事件,包括生存率降低;然而,连续的疼痛评估较为困难。传统上认为生命体征在疼痛评估中无效;然而,使用机器学习可以使用生命体征来自动进行疼痛评估。这项回顾性观察性研究在日本仙台的一所大学医院进行。使用重症监护疼痛观察工具(CPOT)对符合条件的患者进行了客观的疼痛评估。使用三种机器学习方法——随机森林(RF)、支持向量机(SVM)和逻辑回归(LR)——使用生命体征、年龄组和镇静水平等参数来预测疼痛。预测准确性计算为敏感性、特异性和接收者操作特征曲线(AUROC)下面积的调和平均值。此外,在 11507 名符合条件的患者中进行了 117190 次 CPOT 评估(中位数年龄:65 岁;58.0%为男性)。我们发现所有三种机器学习方法都可以进行疼痛预测。RF 在测试数据中的 AUROC 最高(RF:0.853,SVM:0.823,LR:0.787)。使用这种方法,可以在危重症患者中客观、连续、半自动地评估疼痛。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3af8/7933166/124af0870001/41598_2021_84714_Fig1_HTML.jpg

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