From Hume to Wuhan: An Epistemological Journey on the Problem of Induction in COVID-19 Machine Learning Models and its Impact Upon Medical Research

Advances in computer science have transformed the way artificial intelligence is employed in academia, with Machine Learning (ML) methods easily available to researchers from diverse areas thanks to intuitive frameworks that yield extraordinary results. Notwithstanding, current trends in the mainstr...

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Main Author: Carlos Vega
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9475449/
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spelling doaj-83e8d074283740cf80f98c621c0b91c02021-07-13T23:00:32ZengIEEEIEEE Access2169-35362021-01-019972439725010.1109/ACCESS.2021.30952229475449From Hume to Wuhan: An Epistemological Journey on the Problem of Induction in COVID-19 Machine Learning Models and its Impact Upon Medical ResearchCarlos Vega0https://orcid.org/0000-0002-7979-9921Luxembourg Centre for Systems Biomedicine, Bioinformatics Core Group, Universit&#x00E9; du Luxembourg, Esch-sur-Alzette, LuxembourgAdvances in computer science have transformed the way artificial intelligence is employed in academia, with Machine Learning (ML) methods easily available to researchers from diverse areas thanks to intuitive frameworks that yield extraordinary results. Notwithstanding, current trends in the mainstream ML community tend to emphasise <italic>wins</italic> over knowledge, putting the scientific method aside, and focusing on maximising metrics of interest. Methodological flaws lead to poor justification of method choice, which in turn leads to disregard the limitations of the methods employed, ultimately putting at risk the translation of solutions into real-world clinical settings. This work exemplifies the impact of the problem of induction in medical research, studying the methodological issues of recent solutions for computer-aided diagnosis of COVID-19 from chest X-Ray images.https://ieeexplore.ieee.org/document/9475449/Biomedical imagingmachine learningphilosophical considerationscomputational systems biologyX-rays
collection DOAJ
language English
format Article
sources DOAJ
author Carlos Vega
spellingShingle Carlos Vega
From Hume to Wuhan: An Epistemological Journey on the Problem of Induction in COVID-19 Machine Learning Models and its Impact Upon Medical Research
IEEE Access
Biomedical imaging
machine learning
philosophical considerations
computational systems biology
X-rays
author_facet Carlos Vega
author_sort Carlos Vega
title From Hume to Wuhan: An Epistemological Journey on the Problem of Induction in COVID-19 Machine Learning Models and its Impact Upon Medical Research
title_short From Hume to Wuhan: An Epistemological Journey on the Problem of Induction in COVID-19 Machine Learning Models and its Impact Upon Medical Research
title_full From Hume to Wuhan: An Epistemological Journey on the Problem of Induction in COVID-19 Machine Learning Models and its Impact Upon Medical Research
title_fullStr From Hume to Wuhan: An Epistemological Journey on the Problem of Induction in COVID-19 Machine Learning Models and its Impact Upon Medical Research
title_full_unstemmed From Hume to Wuhan: An Epistemological Journey on the Problem of Induction in COVID-19 Machine Learning Models and its Impact Upon Medical Research
title_sort from hume to wuhan: an epistemological journey on the problem of induction in covid-19 machine learning models and its impact upon medical research
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2021-01-01
description Advances in computer science have transformed the way artificial intelligence is employed in academia, with Machine Learning (ML) methods easily available to researchers from diverse areas thanks to intuitive frameworks that yield extraordinary results. Notwithstanding, current trends in the mainstream ML community tend to emphasise <italic>wins</italic> over knowledge, putting the scientific method aside, and focusing on maximising metrics of interest. Methodological flaws lead to poor justification of method choice, which in turn leads to disregard the limitations of the methods employed, ultimately putting at risk the translation of solutions into real-world clinical settings. This work exemplifies the impact of the problem of induction in medical research, studying the methodological issues of recent solutions for computer-aided diagnosis of COVID-19 from chest X-Ray images.
topic Biomedical imaging
machine learning
philosophical considerations
computational systems biology
X-rays
url https://ieeexplore.ieee.org/document/9475449/
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