COVID-19 in differential diagnosis of online symptom assessments
Anitha Kannan, Richard Chen, Vignesh Venkataraman, Geoffrey J. Tso,, Xavier Amatriain

TL;DR
This paper introduces a hybrid AI approach combining expert systems and deep learning to improve COVID-19 differential diagnosis in online symptom assessments, enabling quick adaptation to evolving data and knowledge.
Contribution
It presents a novel hybrid model that leverages prior knowledge and data to enhance differential diagnosis accuracy for COVID-19 and other conditions.
Findings
Accurately models new COVID-19 data while maintaining past condition accuracy
Adapts quickly to changing scientific knowledge and data
Demonstrates flexibility beyond COVID-19 diagnosis
Abstract
The COVID-19 pandemic has magnified an already existing trend of people looking for healthcare solutions online. One class of solutions are symptom checkers, which have become very popular in the context of COVID-19. Traditional symptom checkers, however, are based on manually curated expert systems that are inflexible and hard to modify, especially in a quickly changing situation like the one we are facing today. That is why all COVID-19 existing solutions are manual symptom checkers that can only estimate the probability of this disease and cannot contemplate alternative hypothesis or come up with a differential diagnosis. While machine learning offers an alternative, the lack of reliable data does not make it easy to apply to COVID-19 either. In this paper we present an approach that combines the strengths of traditional AI expert systems and novel deep learning models. In doing so…
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Taxonomy
TopicsMachine Learning in Healthcare · Explainable Artificial Intelligence (XAI) · COVID-19 diagnosis using AI
