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Tissue contamination challenges the credibility of machine learning models in real world digital pathology

Machine learning (ML) models are poised to transform surgical pathology practice. The most successful use attention mechanisms to examine whole slides, identify which areas of tissue are diagnostic, and use them to guide diagnosis. Tissue contaminants, such as floaters, represent unexpected tissue....

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Autores principales: Irmakci, Ismail, Nateghi, Ramin, Zhou, Rujoi, Ross, Ashley E., Yang, Ximing J., Cooper, Lee A. D., Goldstein, Jeffery A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cold Spring Harbor Laboratory 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10187357/
https://www.ncbi.nlm.nih.gov/pubmed/37205404
http://dx.doi.org/10.1101/2023.04.28.23289287
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author Irmakci, Ismail
Nateghi, Ramin
Zhou, Rujoi
Ross, Ashley E.
Yang, Ximing J.
Cooper, Lee A. D.
Goldstein, Jeffery A.
author_facet Irmakci, Ismail
Nateghi, Ramin
Zhou, Rujoi
Ross, Ashley E.
Yang, Ximing J.
Cooper, Lee A. D.
Goldstein, Jeffery A.
author_sort Irmakci, Ismail
collection PubMed
description Machine learning (ML) models are poised to transform surgical pathology practice. The most successful use attention mechanisms to examine whole slides, identify which areas of tissue are diagnostic, and use them to guide diagnosis. Tissue contaminants, such as floaters, represent unexpected tissue. While human pathologists are extensively trained to consider and detect tissue contaminants, we examined their impact on ML models. We trained 4 whole slide models. Three operate in placenta for 1) detection of decidual arteriopathy (DA), 2) estimation of gestational age (GA), and 3) classification of macroscopic placental lesions. We also developed a model to detect prostate cancer in needle biopsies. We designed experiments wherein patches of contaminant tissue are randomly sampled from known slides and digitally added to patient slides and measured model performance. We measured the proportion of attention given to contaminants and examined the impact of contaminants in T-distributed Stochastic Neighbor Embedding (tSNE) feature space. Every model showed performance degradation in response to one or more tissue contaminants. DA detection balanced accuracy decreased from 0.74 to 0.69 +/− 0.01 with addition of 1 patch of prostate tissue for every 100 patches of placenta (1% contaminant). Bladder, added at 10% contaminant raised the mean absolute error in estimating gestation age from 1.626 weeks to 2.371 +/ 0.003 weeks. Blood, incorporated into placental sections, induced false negative diagnoses of intervillous thrombi. Addition of bladder to prostate cancer needle biopsies induced false positives, a selection of high-attention patches, representing 0.033mm(2), resulted in a 97% false positive rate when added to needle biopsies. Contaminant patches received attention at or above the rate of the average patch of patient tissue. Tissue contaminants induce errors in modern ML models. The high level of attention given to contaminants indicates a failure to encode biological phenomena. Practitioners should move to quantify and ameliorate this problem.
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spelling pubmed-101873572023-05-17 Tissue contamination challenges the credibility of machine learning models in real world digital pathology Irmakci, Ismail Nateghi, Ramin Zhou, Rujoi Ross, Ashley E. Yang, Ximing J. Cooper, Lee A. D. Goldstein, Jeffery A. medRxiv Article Machine learning (ML) models are poised to transform surgical pathology practice. The most successful use attention mechanisms to examine whole slides, identify which areas of tissue are diagnostic, and use them to guide diagnosis. Tissue contaminants, such as floaters, represent unexpected tissue. While human pathologists are extensively trained to consider and detect tissue contaminants, we examined their impact on ML models. We trained 4 whole slide models. Three operate in placenta for 1) detection of decidual arteriopathy (DA), 2) estimation of gestational age (GA), and 3) classification of macroscopic placental lesions. We also developed a model to detect prostate cancer in needle biopsies. We designed experiments wherein patches of contaminant tissue are randomly sampled from known slides and digitally added to patient slides and measured model performance. We measured the proportion of attention given to contaminants and examined the impact of contaminants in T-distributed Stochastic Neighbor Embedding (tSNE) feature space. Every model showed performance degradation in response to one or more tissue contaminants. DA detection balanced accuracy decreased from 0.74 to 0.69 +/− 0.01 with addition of 1 patch of prostate tissue for every 100 patches of placenta (1% contaminant). Bladder, added at 10% contaminant raised the mean absolute error in estimating gestation age from 1.626 weeks to 2.371 +/ 0.003 weeks. Blood, incorporated into placental sections, induced false negative diagnoses of intervillous thrombi. Addition of bladder to prostate cancer needle biopsies induced false positives, a selection of high-attention patches, representing 0.033mm(2), resulted in a 97% false positive rate when added to needle biopsies. Contaminant patches received attention at or above the rate of the average patch of patient tissue. Tissue contaminants induce errors in modern ML models. The high level of attention given to contaminants indicates a failure to encode biological phenomena. Practitioners should move to quantify and ameliorate this problem. Cold Spring Harbor Laboratory 2023-05-02 /pmc/articles/PMC10187357/ /pubmed/37205404 http://dx.doi.org/10.1101/2023.04.28.23289287 Text en https://creativecommons.org/licenses/by-nd/4.0/This work is licensed under a Creative Commons Attribution-NoDerivatives 4.0 International License (https://creativecommons.org/licenses/by-nd/4.0/) , which allows reusers to copy and distribute the material in any medium or format in unadapted form only, and only so long as attribution is given to the creator. The license allows for commercial use.
spellingShingle Article
Irmakci, Ismail
Nateghi, Ramin
Zhou, Rujoi
Ross, Ashley E.
Yang, Ximing J.
Cooper, Lee A. D.
Goldstein, Jeffery A.
Tissue contamination challenges the credibility of machine learning models in real world digital pathology
title Tissue contamination challenges the credibility of machine learning models in real world digital pathology
title_full Tissue contamination challenges the credibility of machine learning models in real world digital pathology
title_fullStr Tissue contamination challenges the credibility of machine learning models in real world digital pathology
title_full_unstemmed Tissue contamination challenges the credibility of machine learning models in real world digital pathology
title_short Tissue contamination challenges the credibility of machine learning models in real world digital pathology
title_sort tissue contamination challenges the credibility of machine learning models in real world digital pathology
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10187357/
https://www.ncbi.nlm.nih.gov/pubmed/37205404
http://dx.doi.org/10.1101/2023.04.28.23289287
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