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Machine Learning Methods Applied to Predict Ventilator-Associated Pneumonia with Pseudomonas aeruginosa Infection via Sensor Array of Electronic Nose in Intensive Care Unit

机译:机器学习方法通​​过重症监护病房电子鼻传感器阵列预测铜绿假单胞菌感染的呼吸机相关性肺炎

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摘要

One concern to the patients is the off-line detection of pneumonia infection status after using the ventilator in the intensive care unit. Hence, machine learning methods for ventilator-associated pneumonia (VAP) rapid diagnose are proposed. A popular device, Cyranose 320 e-nose, is usually used in research on lung disease, which is a highly integrated system and sensor comprising 32 array using polymer and carbon black materials. In this study, a total of 24 subjects were involved, including 12 subjects who are infected with pneumonia, and the rest are non-infected. Three layers of back propagation artificial neural network and support vector machine (SVM) methods were applied to patients’ data to predict whether they are infected with VAP with Pseudomonas aeruginosa infection. Furthermore, in order to improve the accuracy and the generalization of the prediction models, the ensemble neural networks (ENN) method was applied. In this study, ENN and SVM prediction models were trained and tested. In order to evaluate the models’ performance, a fivefold cross-validation method was applied. The results showed that both ENN and SVM models have high recognition rates of VAP with Pseudomonas aeruginosa infection, with 0.9479 ± 0.0135 and 0.8686 ± 0.0422 accuracies, 0.9714 ± 0.0131, 0.9250 ± 0.0423 sensitivities, and 0.9288 ± 0.0306, 0.8639 ± 0.0276 positive predictive values, respectively. The ENN model showed better performance compared to SVM in the recognition of VAP with Pseudomonas aeruginosa infection. The areas under the receiver operating characteristic curve of the two models were 0.9842 ± 0.0058 and 0.9410 ± 0.0301, respectively, showing that both models are very stable and accurate classifiers. This study aims to assist the physician in providing a scientific and effective reference for performing early detection in Pseudomonas aeruginosa infection or other diseases.
机译:对患者的关注之一是在重症监护室中使用呼吸机后离线检测肺炎感染状况。因此,提出了用于呼吸机相关性肺炎(VAP)快速诊断的机器学习方法。流行的设备Cyranose 320 e-nose通常用于研究肺部疾病,它是一种高度集成的系统和传感器,包括使用聚合物和炭黑材料的32个阵列。在这项研究中,总共涉及24名受试者,包括12名感染了肺炎的受试者,其余未感染。将三层反向传播人工神经网络和支持向量机(SVM)方法应用于患者数据,以预测他们是否感染了铜绿假单胞菌感染的VAP。此外,为了提高预测模型的准确性和通用性,应用了集成神经网络(ENN)方法。在本研究中,对ENN和SVM预测模型进行了训练和测试。为了评估模型的性能,应用了五重交叉验证方法。结果表明,ENN和SVM模型对铜绿假单胞菌感染的VAP的识别率均很高,准确度为0.9479±0.0135和0.8686±0.0422,灵敏度为0.9714±0.0131,0.9250±0.0423,0.9288±0.0306,0.8639±0.0276阳性预测值, 分别。与SVM相比,ENN模型在识别铜绿假单胞菌感染的VAP方面表现出更好的性能。两种模型的接收器工作特性曲线下的面积分别为0.9842±0.0058和0.9410±0.0301,表明这两种模型都是非常稳定和准确的分类器。这项研究旨在帮助医生为铜绿假单胞菌感染或其他疾病的早期检测提供科学有效的参考。

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