Review of Interpretable Machine Learning Models for Disease Prognosis
Jinzhi Shen, Ke Ma

TL;DR
This review discusses how interpretable machine learning models are being used to predict respiratory disease prognosis, especially COVID-19, emphasizing their role in clinical decision making and future outbreak preparedness.
Contribution
It provides a comprehensive overview of interpretable ML models for disease prognosis, highlighting their applications, benefits, and potential for future research in healthcare.
Findings
Models incorporate clinical knowledge effectively.
Interpretable ML improves decision transparency.
Potential for better outbreak management.
Abstract
In response to the COVID-19 pandemic, the integration of interpretable machine learning techniques has garnered significant attention, offering transparent and understandable insights crucial for informed clinical decision making. This literature review delves into the applications of interpretable machine learning in predicting the prognosis of respiratory diseases, particularly focusing on COVID-19 and its implications for future research and clinical practice. We reviewed various machine learning models that are not only capable of incorporating existing clinical domain knowledge but also have the learning capability to explore new information from the data. These models and experiences not only aid in managing the current crisis but also hold promise for addressing future disease outbreaks. By harnessing interpretable machine learning, healthcare systems can enhance their…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Machine Learning in Healthcare
