A hybrid machine learning/deep learning COVID-19 severity predictive
model from CT images and clinical data
- URL: http://arxiv.org/abs/2105.06141v1
- Date: Thu, 13 May 2021 08:39:56 GMT
- Title: A hybrid machine learning/deep learning COVID-19 severity predictive
model from CT images and clinical data
- Authors: Matteo Chieregato, Fabio Frangiamore, Mauro Morassi, Claudia Baresi,
Stefania Nici, Chiara Bassetti, Claudio Bn\`a and Marco Galelli
- Abstract summary: We developed a hybrid machine learning/deep learning model to classify patients in two outcome categories, non-ICU and ICU.
A fully 3D patient-level CNN classifier on baseline CT images is used as feature extractor.
The model aims to provide clinical decision support to medical doctors, with the probability score of belonging to an outcome class and with case-based SHAP interpretation of features importance.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: COVID-19 clinical presentation and prognosis are highly variable, ranging
from asymptomatic and paucisymptomatic cases to acute respiratory distress
syndrome and multi-organ involvement. We developed a hybrid machine
learning/deep learning model to classify patients in two outcome categories,
non-ICU and ICU (intensive care admission or death), using 558 patients
admitted in a northern Italy hospital in February/May of 2020. A fully 3D
patient-level CNN classifier on baseline CT images is used as feature
extractor. Features extracted, alongside with laboratory and clinical data, are
fed for selection in a Boruta algorithm with SHAP game theoretical values. A
classifier is built on the reduced feature space using CatBoost gradient
boosting algorithm and reaching a probabilistic AUC of 0.949 on holdout test
set. The model aims to provide clinical decision support to medical doctors,
with the probability score of belonging to an outcome class and with case-based
SHAP interpretation of features importance.
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