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Compound computer vision workflow for efficient and automated immunohistochemical analysis of whole slide images
by
Lee, Michael Kyung Ik
, Rabindranath, Madhumitha
, Yao, Jennie
, Diamandis, Phedias
, Gershon, Ariel
, Alsafwani, Noor
, Faust, Kevin
in
Automation
/ Biomarkers
/ Brain cancer
/ Brain Neoplasms
/ Cell cycle
/ Classification
/ Computer vision
/ computer-assisted
/ Computers
/ diagnostic techniques and procedures
/ Humans
/ image processing
/ Image Processing, Computer-Assisted
/ immunohistochemistry
/ Ki-67 Antigen
/ Metastasis
/ molecular
/ Neural networks
/ Neural Networks, Computer
/ Original research
/ Stains & staining
/ Workflow
2023
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Compound computer vision workflow for efficient and automated immunohistochemical analysis of whole slide images
by
Lee, Michael Kyung Ik
, Rabindranath, Madhumitha
, Yao, Jennie
, Diamandis, Phedias
, Gershon, Ariel
, Alsafwani, Noor
, Faust, Kevin
in
Automation
/ Biomarkers
/ Brain cancer
/ Brain Neoplasms
/ Cell cycle
/ Classification
/ Computer vision
/ computer-assisted
/ Computers
/ diagnostic techniques and procedures
/ Humans
/ image processing
/ Image Processing, Computer-Assisted
/ immunohistochemistry
/ Ki-67 Antigen
/ Metastasis
/ molecular
/ Neural networks
/ Neural Networks, Computer
/ Original research
/ Stains & staining
/ Workflow
2023
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Compound computer vision workflow for efficient and automated immunohistochemical analysis of whole slide images
by
Lee, Michael Kyung Ik
, Rabindranath, Madhumitha
, Yao, Jennie
, Diamandis, Phedias
, Gershon, Ariel
, Alsafwani, Noor
, Faust, Kevin
in
Automation
/ Biomarkers
/ Brain cancer
/ Brain Neoplasms
/ Cell cycle
/ Classification
/ Computer vision
/ computer-assisted
/ Computers
/ diagnostic techniques and procedures
/ Humans
/ image processing
/ Image Processing, Computer-Assisted
/ immunohistochemistry
/ Ki-67 Antigen
/ Metastasis
/ molecular
/ Neural networks
/ Neural Networks, Computer
/ Original research
/ Stains & staining
/ Workflow
2023
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Compound computer vision workflow for efficient and automated immunohistochemical analysis of whole slide images
Journal Article
Compound computer vision workflow for efficient and automated immunohistochemical analysis of whole slide images
2023
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Overview
AimsImmunohistochemistry (IHC) assessment of tissue is a central component of the modern pathology workflow, but quantification is challenged by subjective estimates by pathologists or manual steps in semi-automated digital tools. This study integrates various computer vision tools to develop a fully automated workflow for quantifying Ki-67, a standard IHC test used to assess cell proliferation on digital whole slide images (WSIs).MethodsWe create an automated nuclear segmentation strategy by deploying a Mask R-CNN classifier to recognise and count 3,3′-diaminobenzidine positive and negative nuclei. To further improve automation, we replaced manual selection of regions of interest (ROIs) by aligning Ki-67 WSIs with corresponding H&E-stained sections, using scale-invariant feature transform (SIFT) and a conventional histomorphological convolutional neural networks to define tumour-rich areas for quantification.ResultsThe Mask R-CNN was tested on 147 images generated from 34 brain tumour Ki-67 WSIs and showed a high concordance with aggregate pathologists’ estimates ( n=3 assessors; y=0.9712x−1.945, r=0.9750). Concordance of each assessor’s Ki-67 estimates was higher when compared with the Mask R-CNN than between individual assessors (ravg=0.9322 vs 0.8703; p=0.0213). Coupling the Mask R-CNN with SIFT-CNN workflow demonstrated ROIs can be automatically chosen and partially sampled to improve automation and dramatically decrease computational time (average: 88.55–19.28 min; p<0.0001).ConclusionsWe show how innovations in computer vision can be serially compounded to automate and improve implementation in clinical workflows. Generalisation of this approach to other ancillary studies has significant implications for computational pathology.
Publisher
BMJ Publishing Group Ltd and Association of Clinical Pathologists,BMJ Publishing Group LTD
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