The Past, Current, and Future of Neonatal Intensive Care Units with
Artificial Intelligence
- URL: http://arxiv.org/abs/2302.00225v2
- Date: Fri, 20 Oct 2023 17:02:09 GMT
- Title: The Past, Current, and Future of Neonatal Intensive Care Units with
Artificial Intelligence
- Authors: Elif Keles and Ulas Bagci
- Abstract summary: Machine learning and deep learning involve teaching computers to learn and make decisions from any sort of data.
Deep learning has proven revolutionary in almost all fields, from computer vision to health sciences.
We review recently developed machine learning and deep learning-based solutions for neonatology applications.
- Score: 1.1136100002577292
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Machine learning and deep learning are two subsets of artificial intelligence
that involve teaching computers to learn and make decisions from any sort of
data. Most recent developments in artificial intelligence are coming from deep
learning, which has proven revolutionary in almost all fields, from computer
vision to health sciences. The effects of deep learning in medicine have
changed the conventional ways of clinical application significantly. Although
some sub-fields of medicine, such as pediatrics, have been relatively slow in
receiving the critical benefits of deep learning, related research in
pediatrics has started to accumulate to a significant level, too. Hence, in
this paper, we review recently developed machine learning and deep
learning-based solutions for neonatology applications. We systematically
evaluate the roles of both classical machine learning and deep learning in
neonatology applications, define the methodologies, including algorithmic
developments, and describe the remaining challenges in the assessment of
neonatal diseases by using PRISMA 2020 guidelines. To date, the primary areas
of focus in neonatology regarding AI applications have included survival
analysis, neuroimaging, analysis of vital parameters and biosignals, and
retinopathy of prematurity diagnosis. We have categorically summarized 106
research articles from 1996 to 2022 and discussed their pros and cons,
respectively. In this systematic review, we aimed to further enhance the
comprehensiveness of the study. We also discuss possible directions for new AI
models and the future of neonatology with the rising power of AI, suggesting
roadmaps for the integration of AI into neonatal intensive care units.
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