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Digital immunohistochemistry platform for the staining variation monitoring based on integration of image and statistical analyses with laboratory information system

BACKGROUND: Digital immunohistochemistry (IHC) is one of the most promising applications brought by new generation image analysis (IA). While conventional IHC staining quality is monitored by semi-quantitative visual evaluation of tissue controls, IA may require more sensitive measurement. We design...

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Autores principales: Laurinaviciene, Aida, Plancoulaine, Benoit, Baltrusaityte, Indra, Meskauskas, Raimundas, Besusparis, Justinas, Lesciute-Krilaviciene, Daiva, Raudeliunas, Darius, Iqbal, Yasir, Herlin, Paulette, Laurinavicius, Arvydas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4305968/
https://www.ncbi.nlm.nih.gov/pubmed/25565007
http://dx.doi.org/10.1186/1746-1596-9-S1-S10
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author Laurinaviciene, Aida
Plancoulaine, Benoit
Baltrusaityte, Indra
Meskauskas, Raimundas
Besusparis, Justinas
Lesciute-Krilaviciene, Daiva
Raudeliunas, Darius
Iqbal, Yasir
Herlin, Paulette
Laurinavicius, Arvydas
author_facet Laurinaviciene, Aida
Plancoulaine, Benoit
Baltrusaityte, Indra
Meskauskas, Raimundas
Besusparis, Justinas
Lesciute-Krilaviciene, Daiva
Raudeliunas, Darius
Iqbal, Yasir
Herlin, Paulette
Laurinavicius, Arvydas
author_sort Laurinaviciene, Aida
collection PubMed
description BACKGROUND: Digital immunohistochemistry (IHC) is one of the most promising applications brought by new generation image analysis (IA). While conventional IHC staining quality is monitored by semi-quantitative visual evaluation of tissue controls, IA may require more sensitive measurement. We designed an automated system to digitally monitor IHC multi-tissue controls, based on SQL-level integration of laboratory information system with image and statistical analysis tools. METHODS: Consecutive sections of TMA containing 10 cores of breast cancer tissue were used as tissue controls in routine Ki67 IHC testing. Ventana slide label barcode ID was sent to the LIS to register the serial section sequence. The slides were stained and scanned (Aperio ScanScope XT), IA was performed by the Aperio/Leica Colocalization and Genie Classifier/Nuclear algorithms. SQL-based integration ensured automated statistical analysis of the IA data by the SAS Enterprise Guide project. Factor analysis and plot visualizations were performed to explore slide-to-slide variation of the Ki67 IHC staining results in the control tissue. RESULTS: Slide-to-slide intra-core IHC staining analysis revealed rather significant variation of the variables reflecting the sample size, while Brown and Blue Intensity were relatively stable. To further investigate this variation, the IA results from the 10 cores were aggregated to minimize tissue-related variance. Factor analysis revealed association between the variables reflecting the sample size detected by IA and Blue Intensity. Since the main feature to be extracted from the tissue controls was staining intensity, we further explored the variation of the intensity variables in the individual cores. MeanBrownBlue Intensity ((Brown+Blue)/2) and DiffBrownBlue Intensity (Brown-Blue) were introduced to better contrast the absolute intensity and the colour balance variation in each core; relevant factor scores were extracted. Finally, tissue-related factors of IHC staining variance were explored in the individual tissue cores. CONCLUSIONS: Our solution enabled to monitor staining of IHC multi-tissue controls by the means of IA, followed by automated statistical analysis, integrated into the laboratory workflow. We found that, even in consecutive serial tissue sections, tissue-related factors affected the IHC IA results; meanwhile, less intense blue counterstain was associated with less amount of tissue, detected by the IA tools.
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spelling pubmed-43059682015-02-12 Digital immunohistochemistry platform for the staining variation monitoring based on integration of image and statistical analyses with laboratory information system Laurinaviciene, Aida Plancoulaine, Benoit Baltrusaityte, Indra Meskauskas, Raimundas Besusparis, Justinas Lesciute-Krilaviciene, Daiva Raudeliunas, Darius Iqbal, Yasir Herlin, Paulette Laurinavicius, Arvydas Diagn Pathol Proceedings BACKGROUND: Digital immunohistochemistry (IHC) is one of the most promising applications brought by new generation image analysis (IA). While conventional IHC staining quality is monitored by semi-quantitative visual evaluation of tissue controls, IA may require more sensitive measurement. We designed an automated system to digitally monitor IHC multi-tissue controls, based on SQL-level integration of laboratory information system with image and statistical analysis tools. METHODS: Consecutive sections of TMA containing 10 cores of breast cancer tissue were used as tissue controls in routine Ki67 IHC testing. Ventana slide label barcode ID was sent to the LIS to register the serial section sequence. The slides were stained and scanned (Aperio ScanScope XT), IA was performed by the Aperio/Leica Colocalization and Genie Classifier/Nuclear algorithms. SQL-based integration ensured automated statistical analysis of the IA data by the SAS Enterprise Guide project. Factor analysis and plot visualizations were performed to explore slide-to-slide variation of the Ki67 IHC staining results in the control tissue. RESULTS: Slide-to-slide intra-core IHC staining analysis revealed rather significant variation of the variables reflecting the sample size, while Brown and Blue Intensity were relatively stable. To further investigate this variation, the IA results from the 10 cores were aggregated to minimize tissue-related variance. Factor analysis revealed association between the variables reflecting the sample size detected by IA and Blue Intensity. Since the main feature to be extracted from the tissue controls was staining intensity, we further explored the variation of the intensity variables in the individual cores. MeanBrownBlue Intensity ((Brown+Blue)/2) and DiffBrownBlue Intensity (Brown-Blue) were introduced to better contrast the absolute intensity and the colour balance variation in each core; relevant factor scores were extracted. Finally, tissue-related factors of IHC staining variance were explored in the individual tissue cores. CONCLUSIONS: Our solution enabled to monitor staining of IHC multi-tissue controls by the means of IA, followed by automated statistical analysis, integrated into the laboratory workflow. We found that, even in consecutive serial tissue sections, tissue-related factors affected the IHC IA results; meanwhile, less intense blue counterstain was associated with less amount of tissue, detected by the IA tools. BioMed Central 2014-12-19 /pmc/articles/PMC4305968/ /pubmed/25565007 http://dx.doi.org/10.1186/1746-1596-9-S1-S10 Text en Copyright © 2014 Laurinaviciene et al.; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/4.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.
spellingShingle Proceedings
Laurinaviciene, Aida
Plancoulaine, Benoit
Baltrusaityte, Indra
Meskauskas, Raimundas
Besusparis, Justinas
Lesciute-Krilaviciene, Daiva
Raudeliunas, Darius
Iqbal, Yasir
Herlin, Paulette
Laurinavicius, Arvydas
Digital immunohistochemistry platform for the staining variation monitoring based on integration of image and statistical analyses with laboratory information system
title Digital immunohistochemistry platform for the staining variation monitoring based on integration of image and statistical analyses with laboratory information system
title_full Digital immunohistochemistry platform for the staining variation monitoring based on integration of image and statistical analyses with laboratory information system
title_fullStr Digital immunohistochemistry platform for the staining variation monitoring based on integration of image and statistical analyses with laboratory information system
title_full_unstemmed Digital immunohistochemistry platform for the staining variation monitoring based on integration of image and statistical analyses with laboratory information system
title_short Digital immunohistochemistry platform for the staining variation monitoring based on integration of image and statistical analyses with laboratory information system
title_sort digital immunohistochemistry platform for the staining variation monitoring based on integration of image and statistical analyses with laboratory information system
topic Proceedings
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4305968/
https://www.ncbi.nlm.nih.gov/pubmed/25565007
http://dx.doi.org/10.1186/1746-1596-9-S1-S10
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