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Medical Professional Enhancement Using Explainable Artificial Intelligence in Fetal Cardiac Ultrasound Screening

Diagnostic support tools based on artificial intelligence (AI) have exhibited high performance in various medical fields. However, their clinical application remains challenging because of the lack of explanatory power in AI decisions (black box problem), making it difficult to build trust with medi...

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Autores principales: Sakai, Akira, Komatsu, Masaaki, Komatsu, Reina, Matsuoka, Ryu, Yasutomi, Suguru, Dozen, Ai, Shozu, Kanto, Arakaki, Tatsuya, Machino, Hidenori, Asada, Ken, Kaneko, Syuzo, Sekizawa, Akihiko, Hamamoto, Ryuji
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8945208/
https://www.ncbi.nlm.nih.gov/pubmed/35327353
http://dx.doi.org/10.3390/biomedicines10030551
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author Sakai, Akira
Komatsu, Masaaki
Komatsu, Reina
Matsuoka, Ryu
Yasutomi, Suguru
Dozen, Ai
Shozu, Kanto
Arakaki, Tatsuya
Machino, Hidenori
Asada, Ken
Kaneko, Syuzo
Sekizawa, Akihiko
Hamamoto, Ryuji
author_facet Sakai, Akira
Komatsu, Masaaki
Komatsu, Reina
Matsuoka, Ryu
Yasutomi, Suguru
Dozen, Ai
Shozu, Kanto
Arakaki, Tatsuya
Machino, Hidenori
Asada, Ken
Kaneko, Syuzo
Sekizawa, Akihiko
Hamamoto, Ryuji
author_sort Sakai, Akira
collection PubMed
description Diagnostic support tools based on artificial intelligence (AI) have exhibited high performance in various medical fields. However, their clinical application remains challenging because of the lack of explanatory power in AI decisions (black box problem), making it difficult to build trust with medical professionals. Nevertheless, visualizing the internal representation of deep neural networks will increase explanatory power and improve the confidence of medical professionals in AI decisions. We propose a novel deep learning-based explainable representation “graph chart diagram” to support fetal cardiac ultrasound screening, which has low detection rates of congenital heart diseases due to the difficulty in mastering the technique. Screening performance improves using this representation from 0.966 to 0.975 for experts, 0.829 to 0.890 for fellows, and 0.616 to 0.748 for residents in the arithmetic mean of area under the curve of a receiver operating characteristic curve. This is the first demonstration wherein examiners used deep learning-based explainable representation to improve the performance of fetal cardiac ultrasound screening, highlighting the potential of explainable AI to augment examiner capabilities.
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spelling pubmed-89452082022-03-25 Medical Professional Enhancement Using Explainable Artificial Intelligence in Fetal Cardiac Ultrasound Screening Sakai, Akira Komatsu, Masaaki Komatsu, Reina Matsuoka, Ryu Yasutomi, Suguru Dozen, Ai Shozu, Kanto Arakaki, Tatsuya Machino, Hidenori Asada, Ken Kaneko, Syuzo Sekizawa, Akihiko Hamamoto, Ryuji Biomedicines Article Diagnostic support tools based on artificial intelligence (AI) have exhibited high performance in various medical fields. However, their clinical application remains challenging because of the lack of explanatory power in AI decisions (black box problem), making it difficult to build trust with medical professionals. Nevertheless, visualizing the internal representation of deep neural networks will increase explanatory power and improve the confidence of medical professionals in AI decisions. We propose a novel deep learning-based explainable representation “graph chart diagram” to support fetal cardiac ultrasound screening, which has low detection rates of congenital heart diseases due to the difficulty in mastering the technique. Screening performance improves using this representation from 0.966 to 0.975 for experts, 0.829 to 0.890 for fellows, and 0.616 to 0.748 for residents in the arithmetic mean of area under the curve of a receiver operating characteristic curve. This is the first demonstration wherein examiners used deep learning-based explainable representation to improve the performance of fetal cardiac ultrasound screening, highlighting the potential of explainable AI to augment examiner capabilities. MDPI 2022-02-25 /pmc/articles/PMC8945208/ /pubmed/35327353 http://dx.doi.org/10.3390/biomedicines10030551 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Sakai, Akira
Komatsu, Masaaki
Komatsu, Reina
Matsuoka, Ryu
Yasutomi, Suguru
Dozen, Ai
Shozu, Kanto
Arakaki, Tatsuya
Machino, Hidenori
Asada, Ken
Kaneko, Syuzo
Sekizawa, Akihiko
Hamamoto, Ryuji
Medical Professional Enhancement Using Explainable Artificial Intelligence in Fetal Cardiac Ultrasound Screening
title Medical Professional Enhancement Using Explainable Artificial Intelligence in Fetal Cardiac Ultrasound Screening
title_full Medical Professional Enhancement Using Explainable Artificial Intelligence in Fetal Cardiac Ultrasound Screening
title_fullStr Medical Professional Enhancement Using Explainable Artificial Intelligence in Fetal Cardiac Ultrasound Screening
title_full_unstemmed Medical Professional Enhancement Using Explainable Artificial Intelligence in Fetal Cardiac Ultrasound Screening
title_short Medical Professional Enhancement Using Explainable Artificial Intelligence in Fetal Cardiac Ultrasound Screening
title_sort medical professional enhancement using explainable artificial intelligence in fetal cardiac ultrasound screening
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8945208/
https://www.ncbi.nlm.nih.gov/pubmed/35327353
http://dx.doi.org/10.3390/biomedicines10030551
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