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Computer vision quantitation of erythrocyte shape abnormalities provides diagnostic, prognostic, and mechanistic insight

Examination of red blood cell (RBC) morphology in peripheral blood smears can help diagnose hematologic diseases, even in resource-limited settings, but this analysis remains subjective and semiquantitative with low throughput. Prior attempts to develop automated tools have been hampered by their po...

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Autores principales: Foy, Brody H., Stefely, Jonathan A., Bendapudi, Pavan K., Hasserjian, Robert P., Al-Samkari, Hanny, Louissaint, Abner, Fitzpatrick, Megan J., Hutchison, Bailey, Mow, Christopher, Collins, Julia, Patel, Hasmukh R., Patel, Chhaya H., Patel, Nikita, Ho, Samantha N., Kaufman, Richard M., Dzik, Walter H., Higgins, John M., Makar, Robert S.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The American Society of Hematology 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10448422/
https://www.ncbi.nlm.nih.gov/pubmed/37146262
http://dx.doi.org/10.1182/bloodadvances.2022008967
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author Foy, Brody H.
Stefely, Jonathan A.
Bendapudi, Pavan K.
Hasserjian, Robert P.
Al-Samkari, Hanny
Louissaint, Abner
Fitzpatrick, Megan J.
Hutchison, Bailey
Mow, Christopher
Collins, Julia
Patel, Hasmukh R.
Patel, Chhaya H.
Patel, Nikita
Ho, Samantha N.
Kaufman, Richard M.
Dzik, Walter H.
Higgins, John M.
Makar, Robert S.
author_facet Foy, Brody H.
Stefely, Jonathan A.
Bendapudi, Pavan K.
Hasserjian, Robert P.
Al-Samkari, Hanny
Louissaint, Abner
Fitzpatrick, Megan J.
Hutchison, Bailey
Mow, Christopher
Collins, Julia
Patel, Hasmukh R.
Patel, Chhaya H.
Patel, Nikita
Ho, Samantha N.
Kaufman, Richard M.
Dzik, Walter H.
Higgins, John M.
Makar, Robert S.
author_sort Foy, Brody H.
collection PubMed
description Examination of red blood cell (RBC) morphology in peripheral blood smears can help diagnose hematologic diseases, even in resource-limited settings, but this analysis remains subjective and semiquantitative with low throughput. Prior attempts to develop automated tools have been hampered by their poor reproducibility and limited clinical validation. Here, we present a novel, open-source machine-learning approach (denoted as RBC-diff) to quantify abnormal RBCs in peripheral smear images and generate an RBC morphology differential. RBC-diff cell counts showed high accuracy for single-cell classification (mean AUC, 0.93) and quantitation across smears (mean R(2), 0.76 compared with experts, interexperts R(2), 0.75). RBC-diff counts were concordant with the clinical morphology grading for 300 000+ images and recovered the expected pathophysiologic signals in diverse clinical cohorts. Criteria using RBC-diff counts distinguished thrombotic thrombocytopenic purpura and hemolytic uremic syndrome from other thrombotic microangiopathies, providing greater specificity than clinical morphology grading (72% vs 41%; P < .001) while maintaining high sensitivity (94% to 100%). Elevated RBC-diff schistocyte counts were associated with increased 6-month all-cause mortality in a cohort of 58 950 inpatients (9.5% mortality for schist. >1%, vs 4.7% for schist; <0.5%; P < .001) after controlling for comorbidities, demographics, clinical morphology grading, and blood count indices. RBC-diff also enabled the estimation of single-cell volume-morphology distributions, providing insight into the influence of morphology on routine blood count measures. Our codebase and expert-annotated images are included here to spur further advancement. These results illustrate that computer vision can enable rapid and accurate quantitation of RBC morphology, which may provide value in both clinical and research contexts.
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spelling pubmed-104484222023-08-25 Computer vision quantitation of erythrocyte shape abnormalities provides diagnostic, prognostic, and mechanistic insight Foy, Brody H. Stefely, Jonathan A. Bendapudi, Pavan K. Hasserjian, Robert P. Al-Samkari, Hanny Louissaint, Abner Fitzpatrick, Megan J. Hutchison, Bailey Mow, Christopher Collins, Julia Patel, Hasmukh R. Patel, Chhaya H. Patel, Nikita Ho, Samantha N. Kaufman, Richard M. Dzik, Walter H. Higgins, John M. Makar, Robert S. Blood Adv Red Cells, Iron, and Erythropoiesis Examination of red blood cell (RBC) morphology in peripheral blood smears can help diagnose hematologic diseases, even in resource-limited settings, but this analysis remains subjective and semiquantitative with low throughput. Prior attempts to develop automated tools have been hampered by their poor reproducibility and limited clinical validation. Here, we present a novel, open-source machine-learning approach (denoted as RBC-diff) to quantify abnormal RBCs in peripheral smear images and generate an RBC morphology differential. RBC-diff cell counts showed high accuracy for single-cell classification (mean AUC, 0.93) and quantitation across smears (mean R(2), 0.76 compared with experts, interexperts R(2), 0.75). RBC-diff counts were concordant with the clinical morphology grading for 300 000+ images and recovered the expected pathophysiologic signals in diverse clinical cohorts. Criteria using RBC-diff counts distinguished thrombotic thrombocytopenic purpura and hemolytic uremic syndrome from other thrombotic microangiopathies, providing greater specificity than clinical morphology grading (72% vs 41%; P < .001) while maintaining high sensitivity (94% to 100%). Elevated RBC-diff schistocyte counts were associated with increased 6-month all-cause mortality in a cohort of 58 950 inpatients (9.5% mortality for schist. >1%, vs 4.7% for schist; <0.5%; P < .001) after controlling for comorbidities, demographics, clinical morphology grading, and blood count indices. RBC-diff also enabled the estimation of single-cell volume-morphology distributions, providing insight into the influence of morphology on routine blood count measures. Our codebase and expert-annotated images are included here to spur further advancement. These results illustrate that computer vision can enable rapid and accurate quantitation of RBC morphology, which may provide value in both clinical and research contexts. The American Society of Hematology 2023-05-07 /pmc/articles/PMC10448422/ /pubmed/37146262 http://dx.doi.org/10.1182/bloodadvances.2022008967 Text en © 2023 by The American Society of Hematology. Licensed under Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0), permitting only noncommercial, nonderivative use with attribution. All other rights reserved. 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 Red Cells, Iron, and Erythropoiesis
Foy, Brody H.
Stefely, Jonathan A.
Bendapudi, Pavan K.
Hasserjian, Robert P.
Al-Samkari, Hanny
Louissaint, Abner
Fitzpatrick, Megan J.
Hutchison, Bailey
Mow, Christopher
Collins, Julia
Patel, Hasmukh R.
Patel, Chhaya H.
Patel, Nikita
Ho, Samantha N.
Kaufman, Richard M.
Dzik, Walter H.
Higgins, John M.
Makar, Robert S.
Computer vision quantitation of erythrocyte shape abnormalities provides diagnostic, prognostic, and mechanistic insight
title Computer vision quantitation of erythrocyte shape abnormalities provides diagnostic, prognostic, and mechanistic insight
title_full Computer vision quantitation of erythrocyte shape abnormalities provides diagnostic, prognostic, and mechanistic insight
title_fullStr Computer vision quantitation of erythrocyte shape abnormalities provides diagnostic, prognostic, and mechanistic insight
title_full_unstemmed Computer vision quantitation of erythrocyte shape abnormalities provides diagnostic, prognostic, and mechanistic insight
title_short Computer vision quantitation of erythrocyte shape abnormalities provides diagnostic, prognostic, and mechanistic insight
title_sort computer vision quantitation of erythrocyte shape abnormalities provides diagnostic, prognostic, and mechanistic insight
topic Red Cells, Iron, and Erythropoiesis
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10448422/
https://www.ncbi.nlm.nih.gov/pubmed/37146262
http://dx.doi.org/10.1182/bloodadvances.2022008967
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