2022
DOI: 10.21203/rs.3.rs-1182055/v1
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Using Machine Learning to Discover Unexpected Patterns in Clinical Data: A Case Study in COVID-19 Sub-cohort Discovery

Abstract: As clinicians are faced with a deluge of new information, data science can play a key role in highlighting key features towards developing new clinical hypotheses. Indeed, insights derived from machine learning can serve as a clinical support tool by connecting care providers with results from big data analysis to identify latent patterns that may not be easily detected by even skilled human observers. In this work, we show an example of collaboration between clinicians and data scientists during the COVID-19 … Show more

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“…Carrillo-Larco and Castillo-Cara (2020) and Wei et al (2021) are other studies to use unsupervised ML algorithms to group countries based on the number of confirmed/increasing number of COVID cases. Khan et al (2022) and Cowley et al (2022) are some of the other studies devoted to the studies and predictions related to the pandemic.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Carrillo-Larco and Castillo-Cara (2020) and Wei et al (2021) are other studies to use unsupervised ML algorithms to group countries based on the number of confirmed/increasing number of COVID cases. Khan et al (2022) and Cowley et al (2022) are some of the other studies devoted to the studies and predictions related to the pandemic.…”
Section: Literature Reviewmentioning
confidence: 99%