Munera Nicolás, Garcia-Gallo Esteban, Gonzalez Álvaro, Zea José, Fuentes Yuli V, Serrano Cristian, Ruiz-Cuartas Alejandra, Rodriguez Alejandro, Reyes Luis F
Arkangel AI, Bogotá, Colombia.
Joint first authors.
ERJ Open Res. 2022 Jun 27;8(2). doi: 10.1183/23120541.00010-2022. eCollection 2022 Apr.
Patients with coronavirus disease 2019 (COVID-19) could develop severe disease requiring admission to the intensive care unit (ICU). This article presents a novel method that predicts whether a patient will need admission to the ICU and assesses the risk of in-hospital mortality by training a deep-learning model that combines a set of clinical variables and features in chest radiographs.
This was a prospective diagnostic test study. Patients with confirmed severe acute respiratory syndrome coronavirus 2 infection between March 2020 and January 2021 were included. This study was designed to build predictive models obtained by training convolutional neural networks for chest radiograph images using an artificial intelligence (AI) tool and a random forest analysis to identify critical clinical variables. Then, both architectures were connected and fine-tuned to provide combined models.
2552 patients were included in the clinical cohort. The variables independently associated with ICU admission were age, fraction of inspired oxygen ( ) on admission, dyspnoea on admission and obesity. Moreover, the variables associated with hospital mortality were age, on admission and dyspnoea. When implementing the AI model to interpret the chest radiographs and the clinical variables identified by random forest, we developed a model that accurately predicts ICU admission (area under the curve (AUC) 0.92±0.04) and hospital mortality (AUC 0.81±0.06) in patients with confirmed COVID-19.
This automated chest radiograph interpretation algorithm, along with clinical variables, is a reliable alternative to identify patients at risk of developing severe COVID-19 who might require admission to the ICU.
2019冠状病毒病(COVID-19)患者可能会发展为需要入住重症监护病房(ICU)的严重疾病。本文提出了一种新方法,通过训练一个结合了一组临床变量和胸部X光片特征的深度学习模型,预测患者是否需要入住ICU,并评估院内死亡风险。
这是一项前瞻性诊断试验研究。纳入了2020年3月至2021年1月期间确诊感染严重急性呼吸综合征冠状病毒2的患者。本研究旨在构建预测模型,该模型通过使用人工智能(AI)工具对胸部X光图像训练卷积神经网络以及进行随机森林分析来识别关键临床变量而获得。然后,将这两种架构连接并微调以提供联合模型。
临床队列纳入了2552例患者。与入住ICU独立相关的变量为年龄、入院时吸氧分数( )、入院时呼吸困难和肥胖。此外,与医院死亡率相关的变量为年龄、入院时 和呼吸困难。当实施AI模型来解读胸部X光片和随机森林识别出的临床变量时,我们开发了一个模型,可准确预测确诊COVID-19患者的ICU入住情况(曲线下面积(AUC)0.92±0.04)和医院死亡率(AUC 0.81±0.06)。
这种自动胸部X光片解读算法与临床变量一起,是识别可能需要入住ICU的有发展为严重COVID-19风险患者的可靠替代方法。