Global and Local Interpretation of black-box Machine Learning models to determine prognostic factors from early COVID-19 data
Ananya Jana, Carlos D. Minacapelli, Vinod Rustgi, Dimitris Metaxas

TL;DR
This paper combines local and global interpretability techniques to analyze machine learning models predicting COVID-19 severity, uncovering key prognostic factors and providing mathematical expressions for model insights.
Contribution
It introduces the first application of symbolic metamodeling to COVID-19 severity prediction and uncovers important features and their interactions.
Findings
Identified key prognostic factors: AKI, ALBI, ASTI, TBILI, DIMER.
Uncovered mathematical expressions of models predicting COVID-19 severity.
Applied state-of-the-art interpretability techniques to enhance understanding.
Abstract
The COVID-19 corona virus has claimed 4.1 million lives, as of July 24, 2021. A variety of machine learning models have been applied to related data to predict important factors such as the severity of the disease, infection rate and discover important prognostic factors. Often the usefulness of the findings from the use of these techniques is reduced due to lack of method interpretability. Some recent progress made on the interpretability of machine learning models has the potential to unravel more insights while using conventional machine learning models. In this work, we analyze COVID-19 blood work data with some of the popular machine learning models; then we employ state-of-the-art post-hoc local interpretability techniques(e.g.- SHAP, LIME), and global interpretability techniques(e.g. - symbolic metamodeling) to the trained black-box models to draw interpretable conclusions. In…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Machine Learning in Healthcare · COVID-19 diagnosis using AI
MethodsShapley Additive Explanations
