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Development and technical validation of an artificial intelligence model for quantitative analysis of histopathologic features of eosinophilic esophagitis

BACKGROUND: In an attempt to provide quantitative, reproducible, and standardized analyses in cases of eosinophilic esophagitis (EoE), we have developed an artificial intelligence (AI) digital pathology model for the evaluation of histologic features in the EoE/esophageal eosinophilia spectrum. Here...

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Autores principales: Archila, Luisa Ricaurte, Smith, Lindsey, Sihvo, Hanna-Kaisa, Westerling-Bui, Thomas, Koponen, Ville, O’Sullivan, Donnchadh M., Fernandez, Maria Camila Cardenas, Alexander, Erin E., Wang, Yaohong, Sivasubramaniam, Priyadharshini, Patil, Ameya, Hopson, Puanani E., Absah, Imad, Ravi, Karthik, Mounajjed, Taofic, Pai, Rish, Hagen, Catherine, Hartley, Christopher, Graham, Rondell P., Moreira, Roger K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9577132/
https://www.ncbi.nlm.nih.gov/pubmed/36268110
http://dx.doi.org/10.1016/j.jpi.2022.100144
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author Archila, Luisa Ricaurte
Smith, Lindsey
Sihvo, Hanna-Kaisa
Westerling-Bui, Thomas
Koponen, Ville
O’Sullivan, Donnchadh M.
Fernandez, Maria Camila Cardenas
Alexander, Erin E.
Wang, Yaohong
Sivasubramaniam, Priyadharshini
Patil, Ameya
Hopson, Puanani E.
Absah, Imad
Ravi, Karthik
Mounajjed, Taofic
Pai, Rish
Hagen, Catherine
Hartley, Christopher
Graham, Rondell P.
Moreira, Roger K.
author_facet Archila, Luisa Ricaurte
Smith, Lindsey
Sihvo, Hanna-Kaisa
Westerling-Bui, Thomas
Koponen, Ville
O’Sullivan, Donnchadh M.
Fernandez, Maria Camila Cardenas
Alexander, Erin E.
Wang, Yaohong
Sivasubramaniam, Priyadharshini
Patil, Ameya
Hopson, Puanani E.
Absah, Imad
Ravi, Karthik
Mounajjed, Taofic
Pai, Rish
Hagen, Catherine
Hartley, Christopher
Graham, Rondell P.
Moreira, Roger K.
author_sort Archila, Luisa Ricaurte
collection PubMed
description BACKGROUND: In an attempt to provide quantitative, reproducible, and standardized analyses in cases of eosinophilic esophagitis (EoE), we have developed an artificial intelligence (AI) digital pathology model for the evaluation of histologic features in the EoE/esophageal eosinophilia spectrum. Here, we describe the development and technical validation of this novel AI tool. METHODS: A total of 10 726 objects and 56.2 mm(2) of semantic segmentation areas were annotated on whole-slide images, utilizing a cloud-based, deep learning artificial intelligence platform (Aiforia Technologies, Helsinki, Finland). Our training set consisted of 40 carefully selected digitized esophageal biopsy slides which contained the full spectrum of changes typically seen in the setting of esophageal eosinophilia, ranging from normal mucosa to severe abnormalities with regard to each specific features included in our model. A subset of cases was reserved as independent “test sets” in order to assess the validity of the AI model outside the training set. Five specialized experienced gastrointestinal pathologists scored each feature blindly and independently of each other and of AI model results. RESULTS: The performance of the AI model for all cell type features was similar/non-inferior to that of our group of GI pathologists (F1-scores: 94.5–94.8 for AI vs human and 92.6–96.0 for human vs human). Segmentation area features were rated for accuracy using the following scale: 1. “perfect or nearly perfect” (95%–100%, no significant errors), 2. “very good” (80%–95%, only minor errors), 3. “good” (70%–80%, significant errors but still captures the feature well), 4. “insufficient” (less than 70%, significant errors compromising feature recognition). Rating scores for tissue (1.01), spongiosis (1.15), basal layer (1.05), surface layer (1.04), lamina propria (1.15), and collagen (1.11) were in the “very good” to “perfect or nearly perfect” range, while degranulation (2.23) was rated between “good” and “very good”. CONCLUSION: Our newly developed AI-based tool showed an excellent performance (non-inferior to a group of experienced GI pathologists) for the recognition of various histologic features in the EoE/esophageal mucosal eosinophilia spectrum. This tool represents an important step in creating an accurate and reproducible method for semi-automated quantitative analysis to be used in the evaluation of esophageal biopsies in this clinical context.
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spelling pubmed-95771322022-10-19 Development and technical validation of an artificial intelligence model for quantitative analysis of histopathologic features of eosinophilic esophagitis Archila, Luisa Ricaurte Smith, Lindsey Sihvo, Hanna-Kaisa Westerling-Bui, Thomas Koponen, Ville O’Sullivan, Donnchadh M. Fernandez, Maria Camila Cardenas Alexander, Erin E. Wang, Yaohong Sivasubramaniam, Priyadharshini Patil, Ameya Hopson, Puanani E. Absah, Imad Ravi, Karthik Mounajjed, Taofic Pai, Rish Hagen, Catherine Hartley, Christopher Graham, Rondell P. Moreira, Roger K. J Pathol Inform Original Research Article BACKGROUND: In an attempt to provide quantitative, reproducible, and standardized analyses in cases of eosinophilic esophagitis (EoE), we have developed an artificial intelligence (AI) digital pathology model for the evaluation of histologic features in the EoE/esophageal eosinophilia spectrum. Here, we describe the development and technical validation of this novel AI tool. METHODS: A total of 10 726 objects and 56.2 mm(2) of semantic segmentation areas were annotated on whole-slide images, utilizing a cloud-based, deep learning artificial intelligence platform (Aiforia Technologies, Helsinki, Finland). Our training set consisted of 40 carefully selected digitized esophageal biopsy slides which contained the full spectrum of changes typically seen in the setting of esophageal eosinophilia, ranging from normal mucosa to severe abnormalities with regard to each specific features included in our model. A subset of cases was reserved as independent “test sets” in order to assess the validity of the AI model outside the training set. Five specialized experienced gastrointestinal pathologists scored each feature blindly and independently of each other and of AI model results. RESULTS: The performance of the AI model for all cell type features was similar/non-inferior to that of our group of GI pathologists (F1-scores: 94.5–94.8 for AI vs human and 92.6–96.0 for human vs human). Segmentation area features were rated for accuracy using the following scale: 1. “perfect or nearly perfect” (95%–100%, no significant errors), 2. “very good” (80%–95%, only minor errors), 3. “good” (70%–80%, significant errors but still captures the feature well), 4. “insufficient” (less than 70%, significant errors compromising feature recognition). Rating scores for tissue (1.01), spongiosis (1.15), basal layer (1.05), surface layer (1.04), lamina propria (1.15), and collagen (1.11) were in the “very good” to “perfect or nearly perfect” range, while degranulation (2.23) was rated between “good” and “very good”. CONCLUSION: Our newly developed AI-based tool showed an excellent performance (non-inferior to a group of experienced GI pathologists) for the recognition of various histologic features in the EoE/esophageal mucosal eosinophilia spectrum. This tool represents an important step in creating an accurate and reproducible method for semi-automated quantitative analysis to be used in the evaluation of esophageal biopsies in this clinical context. Elsevier 2022-09-27 /pmc/articles/PMC9577132/ /pubmed/36268110 http://dx.doi.org/10.1016/j.jpi.2022.100144 Text en © 2022 Published by Elsevier Inc. on behalf of Association for Pathology Informatics. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Original Research Article
Archila, Luisa Ricaurte
Smith, Lindsey
Sihvo, Hanna-Kaisa
Westerling-Bui, Thomas
Koponen, Ville
O’Sullivan, Donnchadh M.
Fernandez, Maria Camila Cardenas
Alexander, Erin E.
Wang, Yaohong
Sivasubramaniam, Priyadharshini
Patil, Ameya
Hopson, Puanani E.
Absah, Imad
Ravi, Karthik
Mounajjed, Taofic
Pai, Rish
Hagen, Catherine
Hartley, Christopher
Graham, Rondell P.
Moreira, Roger K.
Development and technical validation of an artificial intelligence model for quantitative analysis of histopathologic features of eosinophilic esophagitis
title Development and technical validation of an artificial intelligence model for quantitative analysis of histopathologic features of eosinophilic esophagitis
title_full Development and technical validation of an artificial intelligence model for quantitative analysis of histopathologic features of eosinophilic esophagitis
title_fullStr Development and technical validation of an artificial intelligence model for quantitative analysis of histopathologic features of eosinophilic esophagitis
title_full_unstemmed Development and technical validation of an artificial intelligence model for quantitative analysis of histopathologic features of eosinophilic esophagitis
title_short Development and technical validation of an artificial intelligence model for quantitative analysis of histopathologic features of eosinophilic esophagitis
title_sort development and technical validation of an artificial intelligence model for quantitative analysis of histopathologic features of eosinophilic esophagitis
topic Original Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9577132/
https://www.ncbi.nlm.nih.gov/pubmed/36268110
http://dx.doi.org/10.1016/j.jpi.2022.100144
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