One-Class models for the prognosis of COVID-19 infection outcome
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Date
2021-10-08Author
Carbajo Escajadillo, Unai
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This project aims to address the prognosis prediction problem for COVID-19 patients making use of One-Class Classification techniques. Data retrieved from Spanish hospitals has been used for the development of models in the attempt to predict whether a prior COVID-19 positive inpatient will decease or not. This data collection includes clinical information (age, sex, first hearth rate check, etc.), diagnosis and procedural information, and laboratory findings (complete blood count variables, D-Dimer count, etc.) of 1,798 patients.
This project presents a machine learning workflow composed by a data filtering process, followed by a model hyperparameter optimization step, and eventually, the training, testing and evaluation steps of the final models. The workflow implements 3 relevant One-Class Classifiers: One-Class Support Vector Machine, Local Outlier Factor and Autoencoder. These models follow the One-Class Classification paradigm, which is a branch of unsupervised machine learning and it is based on making classifications with models entirely trained with data belonging to a single class.
The 3 experiments showed an overall ROC-AUC of 0.558(+-)0.101 and sensitivity of 0.567(+-)0.123. The analysis made after the classifications turned out to highlight the weak representation of deceased samples and strong similarity between deceased and discharged patients, a key issue in COVID-19 prognosis prediction problems.