Literature DB >> 32374076

Using machine learning to predict stroke-associated pneumonia in Chinese acute ischaemic stroke patients.

X Li1,2, M Wu1,3, C Sun1,2, Z Zhao2, F Wang1,2, X Zheng1,2, W Ge1,3, J Zhou4, J Zou1,2.   

Abstract

BACKGROUND AND
PURPOSE: Stroke-associated pneumonia (SAP) is a common, severe but preventable complication after acute ischaemic stroke (AIS). Early identification of patients at high risk of SAP is especially necessary. However, previous prediction models have not been widely used in clinical practice. Thus, we aimed to develop a model to predict SAP in Chinese AIS patients using machine learning (ML) methods.
METHODS: Acute ischaemic stroke patients were prospectively collected at the National Advanced Stroke Center of Nanjing First Hospital (China) between September 2016 and November 2019, and the data were randomly subdivided into a training set and a testing set. With the training set, five ML models (logistic regression with regulation, support vector machine, random forest classifier, extreme gradient boosting (XGBoost) and fully connected deep neural network) were developed. These models were assessed by the area under the curve of receiver operating characteristic on the testing set. Our models were also compared with pre-stroke Independence (modified Rankin Scale), Sex, Age, National Institutes of Health Stroke Scale (ISAN) and Pneumonia Prediction (PNA) scores.
RESULTS: A total of 3160 AIS patients were eventually included in this retrospective study. Among the five ML models, the XGBoost model performed best. The area under the curve of the XGBoost model on the testing set was 0.841 (sensitivity, 81.0%; specificity, 73.3%). It also achieved significantly better performance than ISAN and PNA scores.
CONCLUSIONS: Our study demonstrated that the XGBoost model with six common variables can predict SAP in Chinese AIS patients more optimally than ISAN and PNA scores.
© 2020 European Academy of Neurology.

Entities:  

Keywords:  ischaemic stroke; machine learning; pneumonia; predict; stroke-associated pneumonia

Mesh:

Year:  2020        PMID: 32374076     DOI: 10.1111/ene.14295

Source DB:  PubMed          Journal:  Eur J Neurol        ISSN: 1351-5101            Impact factor:   6.089


  8 in total

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Authors:  Hae-Yeon Park; DoGyeom Park; Seungchul Lee; Sun Im; Hye Seon Kang; HyunBum Kim
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8.  Application of machine learning and natural language processing for predicting stroke-associated pneumonia.

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  8 in total

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