Cargando…

Analysis of cellularity in H&E-stained rat bone marrow tissue via deep learning

Our objective was to develop an automated deep-learning-based method to evaluate cellularity in rat bone marrow hematoxylin and eosin whole slide images for preclinical safety assessment. We trained a shallow CNN for segmenting marrow, 2 Mask R-CNN models for segmenting megakaryocytes (MKCs), and sm...

Descripción completa

Detalles Bibliográficos
Autores principales: Shiffman, Smadar, Rios Piedra, Edgar A., Adedeji, Adeyemi O., Ruff, Catherine F., Andrews, Rachel N., Katavolos, Paula, Liu, Evan, Forster, Ashley, Brumm, Jochen, Fuji, Reina N., Sullivan, Ruth
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10514468/
https://www.ncbi.nlm.nih.gov/pubmed/37743975
http://dx.doi.org/10.1016/j.jpi.2023.100333
_version_ 1785108735205572608
author Shiffman, Smadar
Rios Piedra, Edgar A.
Adedeji, Adeyemi O.
Ruff, Catherine F.
Andrews, Rachel N.
Katavolos, Paula
Liu, Evan
Forster, Ashley
Brumm, Jochen
Fuji, Reina N.
Sullivan, Ruth
author_facet Shiffman, Smadar
Rios Piedra, Edgar A.
Adedeji, Adeyemi O.
Ruff, Catherine F.
Andrews, Rachel N.
Katavolos, Paula
Liu, Evan
Forster, Ashley
Brumm, Jochen
Fuji, Reina N.
Sullivan, Ruth
author_sort Shiffman, Smadar
collection PubMed
description Our objective was to develop an automated deep-learning-based method to evaluate cellularity in rat bone marrow hematoxylin and eosin whole slide images for preclinical safety assessment. We trained a shallow CNN for segmenting marrow, 2 Mask R-CNN models for segmenting megakaryocytes (MKCs), and small hematopoietic cells (SHCs), and a SegNet model for segmenting red blood cells. We incorporated the models into a pipeline that identifies and counts MKCs and SHCs in rat bone marrow. We compared cell segmentation and counts that our method generated to those that pathologists generated on 10 slides with a range of cell depletion levels from 10 studies. For SHCs, we compared cell counts that our method generated to counts generated by Cellpose and Stardist. The median Dice and object Dice scores for MKCs using our method vs pathologist consensus and the inter- and intra-pathologist variation were comparable, with overlapping first-third quartile ranges. For SHCs, the median scores were close, with first-third quartile ranges partially overlapping intra-pathologist variation. For SHCs, in comparison to Cellpose and Stardist, counts from our method were closer to pathologist counts, with a smaller 95% limits of agreement range. The performance of the bone marrow analysis pipeline supports its incorporation into routine use as an aid for hematotoxicity assessment by pathologists. The pipeline could help expedite hematotoxicity assessment in preclinical studies and consequently could expedite drug development. The method may enable meta-analysis of rat bone marrow characteristics from future and historical whole slide images and may generate new biological insights from cross-study comparisons.
format Online
Article
Text
id pubmed-10514468
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-105144682023-09-23 Analysis of cellularity in H&E-stained rat bone marrow tissue via deep learning Shiffman, Smadar Rios Piedra, Edgar A. Adedeji, Adeyemi O. Ruff, Catherine F. Andrews, Rachel N. Katavolos, Paula Liu, Evan Forster, Ashley Brumm, Jochen Fuji, Reina N. Sullivan, Ruth J Pathol Inform Original Research Article Our objective was to develop an automated deep-learning-based method to evaluate cellularity in rat bone marrow hematoxylin and eosin whole slide images for preclinical safety assessment. We trained a shallow CNN for segmenting marrow, 2 Mask R-CNN models for segmenting megakaryocytes (MKCs), and small hematopoietic cells (SHCs), and a SegNet model for segmenting red blood cells. We incorporated the models into a pipeline that identifies and counts MKCs and SHCs in rat bone marrow. We compared cell segmentation and counts that our method generated to those that pathologists generated on 10 slides with a range of cell depletion levels from 10 studies. For SHCs, we compared cell counts that our method generated to counts generated by Cellpose and Stardist. The median Dice and object Dice scores for MKCs using our method vs pathologist consensus and the inter- and intra-pathologist variation were comparable, with overlapping first-third quartile ranges. For SHCs, the median scores were close, with first-third quartile ranges partially overlapping intra-pathologist variation. For SHCs, in comparison to Cellpose and Stardist, counts from our method were closer to pathologist counts, with a smaller 95% limits of agreement range. The performance of the bone marrow analysis pipeline supports its incorporation into routine use as an aid for hematotoxicity assessment by pathologists. The pipeline could help expedite hematotoxicity assessment in preclinical studies and consequently could expedite drug development. The method may enable meta-analysis of rat bone marrow characteristics from future and historical whole slide images and may generate new biological insights from cross-study comparisons. Elsevier 2023-08-25 /pmc/articles/PMC10514468/ /pubmed/37743975 http://dx.doi.org/10.1016/j.jpi.2023.100333 Text en © 2023 Genentech, Inc. 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
Shiffman, Smadar
Rios Piedra, Edgar A.
Adedeji, Adeyemi O.
Ruff, Catherine F.
Andrews, Rachel N.
Katavolos, Paula
Liu, Evan
Forster, Ashley
Brumm, Jochen
Fuji, Reina N.
Sullivan, Ruth
Analysis of cellularity in H&E-stained rat bone marrow tissue via deep learning
title Analysis of cellularity in H&E-stained rat bone marrow tissue via deep learning
title_full Analysis of cellularity in H&E-stained rat bone marrow tissue via deep learning
title_fullStr Analysis of cellularity in H&E-stained rat bone marrow tissue via deep learning
title_full_unstemmed Analysis of cellularity in H&E-stained rat bone marrow tissue via deep learning
title_short Analysis of cellularity in H&E-stained rat bone marrow tissue via deep learning
title_sort analysis of cellularity in h&e-stained rat bone marrow tissue via deep learning
topic Original Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10514468/
https://www.ncbi.nlm.nih.gov/pubmed/37743975
http://dx.doi.org/10.1016/j.jpi.2023.100333
work_keys_str_mv AT shiffmansmadar analysisofcellularityinhestainedratbonemarrowtissueviadeeplearning
AT riospiedraedgara analysisofcellularityinhestainedratbonemarrowtissueviadeeplearning
AT adedejiadeyemio analysisofcellularityinhestainedratbonemarrowtissueviadeeplearning
AT ruffcatherinef analysisofcellularityinhestainedratbonemarrowtissueviadeeplearning
AT andrewsracheln analysisofcellularityinhestainedratbonemarrowtissueviadeeplearning
AT katavolospaula analysisofcellularityinhestainedratbonemarrowtissueviadeeplearning
AT liuevan analysisofcellularityinhestainedratbonemarrowtissueviadeeplearning
AT forsterashley analysisofcellularityinhestainedratbonemarrowtissueviadeeplearning
AT brummjochen analysisofcellularityinhestainedratbonemarrowtissueviadeeplearning
AT fujireinan analysisofcellularityinhestainedratbonemarrowtissueviadeeplearning
AT sullivanruth analysisofcellularityinhestainedratbonemarrowtissueviadeeplearning