H&E Multi-Laboratory Staining Variance Exploration with Machine Learning
Prezja, F., Pölönen, I., Äyrämö, S., Ruusuvuori, P., & Kuopio, T. (2022). H&E Multi-Laboratory Staining Variance Exploration with Machine Learning. Applied Sciences, 12(15), Article 7511. https://doi.org/10.3390/app12157511
Published in
Applied SciencesDate
2022Discipline
Human and Machine based Intelligence in LearningComputing, Information Technology and MathematicsLaskennallinen tiedeSolu- ja molekyylibiologiaTietotekniikkaHuman and Machine based Intelligence in LearningComputing, Information Technology and MathematicsComputational ScienceCell and Molecular BiologyMathematical Information TechnologyCopyright
© 2022 by the authors. Licensee MDPI, Basel, Switzerland
In diagnostic histopathology, hematoxylin and eosin (H&E) staining is a critical process that highlights salient histological features. Staining results vary between laboratories regardless of the histopathological task, although the method does not change. This variance can impair the accuracy of algorithms and histopathologists’ time-to-insight. Investigating this variance can help calibrate stain normalization tasks to reverse this negative potential. With machine learning, this study evaluated the staining variance between different laboratories on three tissue types. We received H&E-stained slides from 66 different laboratories. Each slide contained kidney, skin, and colon tissue samples stained by the method routinely used in each laboratory. The samples were digitized and summarized as red, green, and blue channel histograms. Dimensions were reduced using principal component analysis. The data projected by principal components were inserted into the k-means clustering algorithm and the k-nearest neighbors classifier with the laboratories as the target. The k-means silhouette index indicated that K = 2 clusters had the best separability in all tissue types. The supervised classification result showed laboratory effects and tissue-type bias. Both supervised and unsupervised approaches suggested that tissue type also affected inter-laboratory variance. We suggest tissue type to also be considered upon choosing the staining and color-normalization approach.
...
Publisher
MDPIISSN Search the Publication Forum
2076-3417Keywords
Publication in research information system
https://converis.jyu.fi/converis/portal/detail/Publication/150967162
Metadata
Show full item recordCollections
Related funder(s)
Council of Tampere RegionFunding program(s)
ERDF European Regional Development Fund, React-EUAdditional information about funding
The work is related to the AI Hub Central Finland project that has received funding from Council of Tampere Region (Decision number: A75000) and European Regional Development Fund React‐EU (2014–2023) and Leverage from the EU 2014–2020. This project has been funded with support from the European Commission.License
Related items
Showing items with similar title or keywords.
-
MIHIC: a multiplex IHC histopathological image classification dataset for lung cancer immune microenvironment quantification
Wang, Ranran; Qiu, Yusong; Wang, Tong; Wang, Mingkang; Jin, Shan; Cong, Fengyu; Zhang, Yong; Xu, Hongming (Frontiers Media, 2024)Background: Immunohistochemistry (IHC) is a widely used laboratory technique for cancer diagnosis, which selectively binds specific antibodies to target proteins in tissue samples and then makes the bound proteins visible ... -
The potential of convolutional neural network in the evaluation of tumor-stroma ratio from colorectal cancer histopathological images
Petäinen, Liisa (2022)Tässä Pro gradu-työssä tutkitaan konvoluutioneuroverkkojen käyttömahdollisuuksia histopatologisista kuvista tehtävässä kasvain-strooma suhdeluvun arvioinnissa. Tarkoituksena on selvittää, mikä on siirto-opettamisen vaikutus, ... -
Improving Performance in Colorectal Cancer Histology Decomposition using Deep and Ensemble Machine Learning
Prezja, Fabi; Annala, Leevi; Kiiskinen, Sampsa; Lahtinen, Suvi; Ojala, Timo; Ruusuvuori, Pekka; Kuopio, Teijo (Elsevier, 2024)In routine colorectal cancer management, histologic samples stained with hematoxylin and eosin are commonly used. Nonetheless, their potential for defining objective biomarkers for patient stratification and treatment ... -
Comparison of Machine Learning Methods in Stochastic Skin Optical Model Inversion
Annala, Leevi; Äyrämö, Sami; Pölönen, Ilkka (MDPI AG, 2020)In this study, we compare six different machine learning methods in the inversion of a stochastic model for light propagation in layered media, and use the inverse models to estimate four parameters of the skin from the ... -
Improvements and applications of the elements of prototype-based clustering
Hämäläinen, Joonas (Jyväskylän yliopisto, 2018)