A machine learning PROGRAM to identify COVID-19 and other diseases from hematology data
Aim: We propose a method for screening full blood count metadata for evidence of communicable and noncommunicable diseases using machine learning (ML). Materials & methods: High dimensional hematology metadata was extracted over an 11-month period from Sysmex hematology analyzers from 43,761 pat...
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| Main Authors: | Patrick A Gladding, Zina Ayar, Kevin Smith, Prashant Patel, Julia Pearce, Shalini Puwakdandawa, Dianne Tarrant, Jon Atkinson, Elizabeth McChlery, Merit Hanna, Nick Gow, Hasan Bhally, Kerry Read, Prageeth Jayathissa, Jonathan Wallace, Sam Norton, Nick Kasabov, Cristian S Calude, Deborah Steel, Colin Mckenzie |
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| Format: | Article |
| Language: | English |
| Published: |
Taylor & Francis Group
2021-08-01
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| Series: | Future Science OA |
| Subjects: | |
| Online Access: | https://www.future-science.com/doi/10.2144/fsoa-2020-0207 |
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