Machine learning techniques to predict different levels of hospital care of CoVid-19

被引:0
作者
Elena Hernández-Pereira
Oscar Fontenla-Romero
Verónica Bolón-Canedo
Brais Cancela-Barizo
Bertha Guijarro-Berdiñas
Amparo Alonso-Betanzos
机构
[1] Universidade da Coruña. CITIC Research and Development Laboratory in Artificial Intelligence (LIDIA) Facultad de informática,
来源
Applied Intelligence | 2022年 / 52卷
关键词
CoVid-19; Machine learning; Supervised classification; Feature selection;
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学科分类号
摘要
In this study, we analyze the capability of several state of the art machine learning methods to predict whether patients diagnosed with CoVid-19 (CoronaVirus disease 2019) will need different levels of hospital care assistance (regular hospital admission or intensive care unit admission), during the course of their illness, using only demographic and clinical data. For this research, a data set of 10,454 patients from 14 hospitals in Galicia (Spain) was used. Each patient is characterized by 833 variables, two of which are age and gender and the other are records of diseases or conditions in their medical history. In addition, for each patient, his/her history of hospital or intensive care unit (ICU) admissions due to CoVid-19 is available. This clinical history will serve to label each patient and thus being able to assess the predictions of the model. Our aim is to identify which model delivers the best accuracies for both hospital and ICU admissions only using demographic variables and some structured clinical data, as well as identifying which of those are more relevant in both cases. The results obtained in the experimental study show that the best models are those based on oversampling as a preprocessing phase to balance the distribution of classes. Using these models and all the available features, we achieved an area under the curve (AUC) of 76.1% and 80.4% for predicting the need of hospital and ICU admissions, respectively. Furthermore, feature selection and oversampling techniques were applied and it has been experimentally verified that the relevant variables for the classification are age and gender, since only using these two features the performance of the models is not degraded for the two mentioned prediction problems.
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页码:6413 / 6431
页数:18
相关论文
共 95 条
[1]  
Aljaaf AJ(2021)A fusion of data science and feed-forward neural network-based modelling of covid-19 outbreak forecasting in iraq J Biomed Inform 118 103766-185
[2]  
Mohsin TM(1992)An introduction to kernel and nearest-neighbor nonparametric regression Amer Stat 46 175-139
[3]  
Al-Jumeily D(2020)Using machine learning to predict ICU transfer in hospitalized covid-19 patients J Clin Med 9 1668-109
[4]  
Alloghani M(2020)Can we predict the occurrence of covid-19 cases? considerations using a simple model of growth Sci Total Environ 728 138834-2700
[5]  
Altman NS(2014)Machine learning, medical diagnosis, and biomedical engineering research-commentary Biomed Eng Online 13 94-937
[6]  
Cheng FY(1997)A decision-theoretic generalization of on-line learning and an application to boosting J Comput Syst Sci 55 119-2687
[7]  
Joshi H(2001)Machine learning for medical diagnosis: history, state of the art and perspective Artif Intell Med 23 89-118
[8]  
Tandon P(2020)Early stage machine learning-based prediction of us county vulnerability to the COVID-19, pandemic: Machine learning approach JMIR Publ Health Surveill 6 e19446-22
[9]  
Freeman R(2020)Covid-19 outbreak:application of multi-gene genetic programming to country-based prediction models Electron J Gen Med 17 247-undefined
[10]  
Reich DL(2020)Deep learning covid-19 features on cxr using limited training data sets IEEE Trans Med Imaging 39 2688-undefined