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机器学习方法预测门诊手术患者术后阿片类药物需求。

Machine learning approach to predict postoperative opioid requirements in ambulatory surgery patients.

机构信息

Lakeside High School, Seattle, WA, United States of America.

Department of Electrical Engineering and Computer Sciences, University of California, Berkeley, CA, United States of America.

出版信息

PLoS One. 2020 Jul 31;15(7):e0236833. doi: 10.1371/journal.pone.0236833. eCollection 2020.

Abstract

Opioids play a critical role in acute postoperative pain management. Our objective was to develop machine learning models to predict postoperative opioid requirements in patients undergoing ambulatory surgery. To develop the models, we used a perioperative dataset of 13,700 patients (≥ 18 years) undergoing ambulatory surgery between the years 2016-2018. The data, comprising of patient, procedure and provider factors that could influence postoperative pain and opioid requirements, was randomly split into training (80%) and validation (20%) datasets. Machine learning models of different classes were developed to predict categorized levels of postoperative opioid requirements using the training dataset and then evaluated on the validation dataset. Prediction accuracy was used to differentiate model performances. The five types of models that were developed returned the following accuracies at two different stages of surgery: 1) Prior to surgery-Multinomial Logistic Regression: 71%, Naïve Bayes: 67%, Neural Network: 30%, Random Forest: 72%, Extreme Gradient Boost: 71% and 2) End of surgery-Multinomial Logistic Regression: 71%, Naïve Bayes: 63%, Neural Network: 32%, Random Forest: 72%, Extreme Gradient Boost: 70%. Analyzing the sensitivities of the best performing Random Forest model showed that the lower opioid requirements are predicted with better accuracy (89%) as compared with higher opioid requirements (43%). Feature importance (% relative importance) of model predictions showed that the type of procedure (15.4%), medical history (12.9%) and procedure duration (12.0%) were the top three features contributing to model predictions. Overall, the contribution of patient and procedure features towards model predictions were 65% and 35% respectively. Machine learning models could be used to predict postoperative opioid requirements in ambulatory surgery patients and could potentially assist in better management of their postoperative acute pain.

摘要

阿片类药物在急性术后疼痛管理中起着关键作用。我们的目标是开发机器学习模型来预测接受日间手术的患者的术后阿片类药物需求。为了开发这些模型,我们使用了一个包含 13700 名(≥18 岁)接受日间手术的患者的围手术期数据集,这些患者的数据包括可能影响术后疼痛和阿片类药物需求的患者、手术和提供者因素。该数据被随机分为训练(80%)和验证(20%)数据集。使用训练数据集开发了不同类别的机器学习模型,以预测术后阿片类药物需求的分类水平,然后在验证数据集中进行评估。使用预测准确性来区分模型性能。开发的五种类型的模型在手术的两个不同阶段返回了以下准确性:1)手术前-多项逻辑回归:71%,朴素贝叶斯:67%,神经网络:30%,随机森林:72%,极端梯度提升:71%和 2)手术后-多项逻辑回归:71%,朴素贝叶斯:63%,神经网络:32%,随机森林:72%,极端梯度提升:70%。分析表现最佳的随机森林模型的灵敏度表明,较低的阿片类药物需求预测准确性更高(89%),而较高的阿片类药物需求预测准确性较低(43%)。模型预测的特征重要性(相对重要性百分比)显示,手术类型(15.4%)、病史(12.9%)和手术持续时间(12.0%)是对模型预测贡献最大的前三个特征。总体而言,患者和手术特征对模型预测的贡献分别为 65%和 35%。机器学习模型可用于预测日间手术患者的术后阿片类药物需求,并可能有助于更好地管理他们的术后急性疼痛。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4e3a/7394436/8d998bc97a27/pone.0236833.g001.jpg

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