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Exploring the potential of artificial intelligence in improving skin lesion diagnosis in primary care

Dermatological conditions are a relevant health problem. Machine learning (ML) models are increasingly being applied to dermatology as a diagnostic decision support tool using image analysis, especially for skin cancer detection and disease classification. The objective of this study was to perform...

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Autores principales: Escalé-Besa, Anna, Yélamos, Oriol, Vidal-Alaball, Josep, Fuster-Casanovas, Aïna, Miró Catalina, Queralt, Börve, Alexander, Ander-Egg Aguilar, Ricardo, Fustà-Novell, Xavier, Cubiró, Xavier, Rafat, Mireia Esquius, López-Sanchez, Cristina, Marin-Gomez, Francesc X.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10015524/
https://www.ncbi.nlm.nih.gov/pubmed/36922556
http://dx.doi.org/10.1038/s41598-023-31340-1
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author Escalé-Besa, Anna
Yélamos, Oriol
Vidal-Alaball, Josep
Fuster-Casanovas, Aïna
Miró Catalina, Queralt
Börve, Alexander
Ander-Egg Aguilar, Ricardo
Fustà-Novell, Xavier
Cubiró, Xavier
Rafat, Mireia Esquius
López-Sanchez, Cristina
Marin-Gomez, Francesc X.
author_facet Escalé-Besa, Anna
Yélamos, Oriol
Vidal-Alaball, Josep
Fuster-Casanovas, Aïna
Miró Catalina, Queralt
Börve, Alexander
Ander-Egg Aguilar, Ricardo
Fustà-Novell, Xavier
Cubiró, Xavier
Rafat, Mireia Esquius
López-Sanchez, Cristina
Marin-Gomez, Francesc X.
author_sort Escalé-Besa, Anna
collection PubMed
description Dermatological conditions are a relevant health problem. Machine learning (ML) models are increasingly being applied to dermatology as a diagnostic decision support tool using image analysis, especially for skin cancer detection and disease classification. The objective of this study was to perform a prospective validation of an image analysis ML model, which is capable of screening 44 skin diseases, comparing its diagnostic accuracy with that of General Practitioners (GPs) and teledermatology (TD) dermatologists in a real-life setting. Prospective, diagnostic accuracy study including 100 consecutive patients with a skin problem who visited a participating GP in central Catalonia, Spain, between June 2021 and October 2021. The skin issue was first assessed by the GPs. Then an anonymised skin disease picture was taken and uploaded to the ML application, which returned a list with the Top-5 possible diagnosis in order of probability. The same image was then sent to a dermatologist via TD for diagnosis, as per clinical practice. The GPs Top-3, ML model’s Top-5 and dermatologist’s Top-3 assessments were compared to calculate the accuracy, sensitivity, specificity and diagnostic accuracy of the ML models. The overall Top-1 accuracy of the ML model (39%) was lower than that of GPs (64%) and dermatologists (72%). When the analysis was limited to the diagnoses on which the algorithm had been explicitly trained (n = 82), the balanced Top-1 accuracy of the ML model increased (48%) and in the Top-3 (75%) was comparable to the GPs Top-3 accuracy (76%). The Top-5 accuracy of the ML model (89%) was comparable to the dermatologist Top-3 accuracy (90%). For the different diseases, the sensitivity of the model (Top-3 87% and Top-5 96%) is higher than that of the clinicians (Top-3 GPs 76% and Top-3 dermatologists 84%) only in the benign tumour pathology group, being on the other hand the most prevalent category (n = 53). About the satisfaction of professionals, 92% of the GPs considered it as a useful diagnostic support tool (DST) for the differential diagnosis and in 60% of the cases as an aid in the final diagnosis of the skin lesion. The overall diagnostic accuracy of the model in this study, under real-life conditions, is lower than that of both GPs and dermatologists. This result aligns with the findings of few existing prospective studies conducted under real-life conditions. The outcomes emphasize the significance of involving clinicians in the training of the model and the capability of ML models to assist GPs, particularly in differential diagnosis. Nevertheless, external testing in real-life conditions is crucial for data validation and regulation of these AI diagnostic models before they can be used in primary care.
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spelling pubmed-100155242023-03-15 Exploring the potential of artificial intelligence in improving skin lesion diagnosis in primary care Escalé-Besa, Anna Yélamos, Oriol Vidal-Alaball, Josep Fuster-Casanovas, Aïna Miró Catalina, Queralt Börve, Alexander Ander-Egg Aguilar, Ricardo Fustà-Novell, Xavier Cubiró, Xavier Rafat, Mireia Esquius López-Sanchez, Cristina Marin-Gomez, Francesc X. Sci Rep Article Dermatological conditions are a relevant health problem. Machine learning (ML) models are increasingly being applied to dermatology as a diagnostic decision support tool using image analysis, especially for skin cancer detection and disease classification. The objective of this study was to perform a prospective validation of an image analysis ML model, which is capable of screening 44 skin diseases, comparing its diagnostic accuracy with that of General Practitioners (GPs) and teledermatology (TD) dermatologists in a real-life setting. Prospective, diagnostic accuracy study including 100 consecutive patients with a skin problem who visited a participating GP in central Catalonia, Spain, between June 2021 and October 2021. The skin issue was first assessed by the GPs. Then an anonymised skin disease picture was taken and uploaded to the ML application, which returned a list with the Top-5 possible diagnosis in order of probability. The same image was then sent to a dermatologist via TD for diagnosis, as per clinical practice. The GPs Top-3, ML model’s Top-5 and dermatologist’s Top-3 assessments were compared to calculate the accuracy, sensitivity, specificity and diagnostic accuracy of the ML models. The overall Top-1 accuracy of the ML model (39%) was lower than that of GPs (64%) and dermatologists (72%). When the analysis was limited to the diagnoses on which the algorithm had been explicitly trained (n = 82), the balanced Top-1 accuracy of the ML model increased (48%) and in the Top-3 (75%) was comparable to the GPs Top-3 accuracy (76%). The Top-5 accuracy of the ML model (89%) was comparable to the dermatologist Top-3 accuracy (90%). For the different diseases, the sensitivity of the model (Top-3 87% and Top-5 96%) is higher than that of the clinicians (Top-3 GPs 76% and Top-3 dermatologists 84%) only in the benign tumour pathology group, being on the other hand the most prevalent category (n = 53). About the satisfaction of professionals, 92% of the GPs considered it as a useful diagnostic support tool (DST) for the differential diagnosis and in 60% of the cases as an aid in the final diagnosis of the skin lesion. The overall diagnostic accuracy of the model in this study, under real-life conditions, is lower than that of both GPs and dermatologists. This result aligns with the findings of few existing prospective studies conducted under real-life conditions. The outcomes emphasize the significance of involving clinicians in the training of the model and the capability of ML models to assist GPs, particularly in differential diagnosis. Nevertheless, external testing in real-life conditions is crucial for data validation and regulation of these AI diagnostic models before they can be used in primary care. Nature Publishing Group UK 2023-03-15 /pmc/articles/PMC10015524/ /pubmed/36922556 http://dx.doi.org/10.1038/s41598-023-31340-1 Text en © The Author(s) 2023 https://creativecommons.org/licenses/by/4.0/Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Article
Escalé-Besa, Anna
Yélamos, Oriol
Vidal-Alaball, Josep
Fuster-Casanovas, Aïna
Miró Catalina, Queralt
Börve, Alexander
Ander-Egg Aguilar, Ricardo
Fustà-Novell, Xavier
Cubiró, Xavier
Rafat, Mireia Esquius
López-Sanchez, Cristina
Marin-Gomez, Francesc X.
Exploring the potential of artificial intelligence in improving skin lesion diagnosis in primary care
title Exploring the potential of artificial intelligence in improving skin lesion diagnosis in primary care
title_full Exploring the potential of artificial intelligence in improving skin lesion diagnosis in primary care
title_fullStr Exploring the potential of artificial intelligence in improving skin lesion diagnosis in primary care
title_full_unstemmed Exploring the potential of artificial intelligence in improving skin lesion diagnosis in primary care
title_short Exploring the potential of artificial intelligence in improving skin lesion diagnosis in primary care
title_sort exploring the potential of artificial intelligence in improving skin lesion diagnosis in primary care
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10015524/
https://www.ncbi.nlm.nih.gov/pubmed/36922556
http://dx.doi.org/10.1038/s41598-023-31340-1
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