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Image Analysis Using Machine Learning for Automated Detection of Hemoglobin H Inclusions in Blood Smears – A Method for Morphologic Detection of Rare Cells

BACKGROUND: Morphologic rare cell detection is a laborious, operator-dependent process which has the potential to be improved by the use of image analysis using artificial intelligence. Detection of rare hemoglobin H (HbH) inclusions in red cells in the peripheral blood is a common screening method...

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Autores principales: Lee, Shir Ying, Chen, Crystal M. E., Lim, Elaine Y. P., Shen, Liang, Sathe, Aneesh, Singh, Aahan, Sauer, Jan, Taghipour, Kaveh, Yip, Christina Y. C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Wolters Kluwer - Medknow 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8240546/
https://www.ncbi.nlm.nih.gov/pubmed/34221634
http://dx.doi.org/10.4103/jpi.jpi_110_20
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author Lee, Shir Ying
Chen, Crystal M. E.
Lim, Elaine Y. P.
Shen, Liang
Sathe, Aneesh
Singh, Aahan
Sauer, Jan
Taghipour, Kaveh
Yip, Christina Y. C.
author_facet Lee, Shir Ying
Chen, Crystal M. E.
Lim, Elaine Y. P.
Shen, Liang
Sathe, Aneesh
Singh, Aahan
Sauer, Jan
Taghipour, Kaveh
Yip, Christina Y. C.
author_sort Lee, Shir Ying
collection PubMed
description BACKGROUND: Morphologic rare cell detection is a laborious, operator-dependent process which has the potential to be improved by the use of image analysis using artificial intelligence. Detection of rare hemoglobin H (HbH) inclusions in red cells in the peripheral blood is a common screening method for alpha-thalassemia. This study aims to develop a convolutional neural network-based algorithm for the detection of HbH inclusions. METHODS: Digital images of HbH-positive and HbH-negative blood smears were used to train and test the software. The software performance was tested on images obtained at various magnifications and on different scanning platforms. Another model was developed for total red cell counting and was used to confirm HbH cell frequency in alpha-thalassemia trait. The threshold minimum red cells to image for analysis was determined by Poisson modeling and validated on image sets. RESULTS: The sensitivity and specificity of the software for HbH+ cells on images obtained at ×100, ×60, and ×40 objectives were close to 91% and 99%, respectively. When an AI-aided diagnostic model was tested on a pilot of 40 whole slide images (WSIs), good inter-rater reliability and high sensitivity and specificity of slide-level classification were obtained. Using the lowest frequency of HbH+ cells (1 in 100,000) observed in our study, we estimated that a minimum of 2.4 × 10(6) red cells would need to be analyzed to reduce misclassification at the slide level. The minimum required smear size was validated on 78 image sets which confirmed its validity. CONCLUSIONS: WSI image analysis can be utilized effectively for morphologic rare cell detection. The software can be further developed on WISs and evaluated in future clinical validation studies comparing AI-aided diagnosis with the routine diagnostic method.
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spelling pubmed-82405462021-07-02 Image Analysis Using Machine Learning for Automated Detection of Hemoglobin H Inclusions in Blood Smears – A Method for Morphologic Detection of Rare Cells Lee, Shir Ying Chen, Crystal M. E. Lim, Elaine Y. P. Shen, Liang Sathe, Aneesh Singh, Aahan Sauer, Jan Taghipour, Kaveh Yip, Christina Y. C. J Pathol Inform Technical Note BACKGROUND: Morphologic rare cell detection is a laborious, operator-dependent process which has the potential to be improved by the use of image analysis using artificial intelligence. Detection of rare hemoglobin H (HbH) inclusions in red cells in the peripheral blood is a common screening method for alpha-thalassemia. This study aims to develop a convolutional neural network-based algorithm for the detection of HbH inclusions. METHODS: Digital images of HbH-positive and HbH-negative blood smears were used to train and test the software. The software performance was tested on images obtained at various magnifications and on different scanning platforms. Another model was developed for total red cell counting and was used to confirm HbH cell frequency in alpha-thalassemia trait. The threshold minimum red cells to image for analysis was determined by Poisson modeling and validated on image sets. RESULTS: The sensitivity and specificity of the software for HbH+ cells on images obtained at ×100, ×60, and ×40 objectives were close to 91% and 99%, respectively. When an AI-aided diagnostic model was tested on a pilot of 40 whole slide images (WSIs), good inter-rater reliability and high sensitivity and specificity of slide-level classification were obtained. Using the lowest frequency of HbH+ cells (1 in 100,000) observed in our study, we estimated that a minimum of 2.4 × 10(6) red cells would need to be analyzed to reduce misclassification at the slide level. The minimum required smear size was validated on 78 image sets which confirmed its validity. CONCLUSIONS: WSI image analysis can be utilized effectively for morphologic rare cell detection. The software can be further developed on WISs and evaluated in future clinical validation studies comparing AI-aided diagnosis with the routine diagnostic method. Wolters Kluwer - Medknow 2021-04-07 /pmc/articles/PMC8240546/ /pubmed/34221634 http://dx.doi.org/10.4103/jpi.jpi_110_20 Text en Copyright: © 2021 Journal of Pathology Informatics https://creativecommons.org/licenses/by-nc-sa/4.0/This is an open access journal, and articles are distributed under the terms of the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 License, which allows others to remix, tweak, and build upon the work non-commercially, as long as appropriate credit is given and the new creations are licensed under the identical terms.
spellingShingle Technical Note
Lee, Shir Ying
Chen, Crystal M. E.
Lim, Elaine Y. P.
Shen, Liang
Sathe, Aneesh
Singh, Aahan
Sauer, Jan
Taghipour, Kaveh
Yip, Christina Y. C.
Image Analysis Using Machine Learning for Automated Detection of Hemoglobin H Inclusions in Blood Smears – A Method for Morphologic Detection of Rare Cells
title Image Analysis Using Machine Learning for Automated Detection of Hemoglobin H Inclusions in Blood Smears – A Method for Morphologic Detection of Rare Cells
title_full Image Analysis Using Machine Learning for Automated Detection of Hemoglobin H Inclusions in Blood Smears – A Method for Morphologic Detection of Rare Cells
title_fullStr Image Analysis Using Machine Learning for Automated Detection of Hemoglobin H Inclusions in Blood Smears – A Method for Morphologic Detection of Rare Cells
title_full_unstemmed Image Analysis Using Machine Learning for Automated Detection of Hemoglobin H Inclusions in Blood Smears – A Method for Morphologic Detection of Rare Cells
title_short Image Analysis Using Machine Learning for Automated Detection of Hemoglobin H Inclusions in Blood Smears – A Method for Morphologic Detection of Rare Cells
title_sort image analysis using machine learning for automated detection of hemoglobin h inclusions in blood smears – a method for morphologic detection of rare cells
topic Technical Note
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8240546/
https://www.ncbi.nlm.nih.gov/pubmed/34221634
http://dx.doi.org/10.4103/jpi.jpi_110_20
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