Cargando…

Assessment of Machine Learning of Breast Pathology Structures for Automated Differentiation of Breast Cancer and High-Risk Proliferative Lesions

IMPORTANCE: Following recent US Food and Drug Administration approval, adoption of whole slide imaging in clinical settings may be imminent, and diagnostic accuracy, particularly among challenging breast biopsy specimens, may benefit from computerized diagnostic support tools. OBJECTIVE: To develop...

Descripción completa

Detalles Bibliográficos
Autores principales: Mercan, Ezgi, Mehta, Sachin, Bartlett, Jamen, Shapiro, Linda G., Weaver, Donald L., Elmore, Joann G.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Association 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6692690/
https://www.ncbi.nlm.nih.gov/pubmed/31397859
http://dx.doi.org/10.1001/jamanetworkopen.2019.8777
_version_ 1783443598532935680
author Mercan, Ezgi
Mehta, Sachin
Bartlett, Jamen
Shapiro, Linda G.
Weaver, Donald L.
Elmore, Joann G.
author_facet Mercan, Ezgi
Mehta, Sachin
Bartlett, Jamen
Shapiro, Linda G.
Weaver, Donald L.
Elmore, Joann G.
author_sort Mercan, Ezgi
collection PubMed
description IMPORTANCE: Following recent US Food and Drug Administration approval, adoption of whole slide imaging in clinical settings may be imminent, and diagnostic accuracy, particularly among challenging breast biopsy specimens, may benefit from computerized diagnostic support tools. OBJECTIVE: To develop and evaluate computer vision methods to assist pathologists in diagnosing the full spectrum of breast biopsy samples, from benign to invasive cancer. DESIGN, SETTING, AND PARTICIPANTS: In this diagnostic study, 240 breast biopsies from Breast Cancer Surveillance Consortium registries that varied by breast density, diagnosis, patient age, and biopsy type were selected, reviewed, and categorized by 3 expert pathologists as benign, atypia, ductal carcinoma in situ (DCIS), and invasive cancer. The atypia and DCIS cases were oversampled to increase statistical power. High-resolution digital slide images were obtained, and 2 automated image features (tissue distribution feature and structure feature) were developed and evaluated according to the consensus diagnosis of the expert panel. The performance of the automated image analysis methods was compared with independent interpretations from 87 practicing US pathologists. Data analysis was performed between February 2017 and February 2019. MAIN OUTCOMES AND MEASURES: Diagnostic accuracy defined by consensus reference standard of 3 experienced breast pathologists. RESULTS: The accuracy of machine learning tissue distribution features, structure features, and pathologists for classification of invasive cancer vs noninvasive cancer was 0.94, 0.91, and 0.98, respectively; the accuracy of classification of atypia and DCIS vs benign tissue was 0.70, 0.70, and 0.81, respectively; and the accuracy of classification of DCIS vs atypia was 0.83, 0.85, and 0.80, respectively. The sensitivity of both machine learning features was lower than that of the pathologists for the invasive vs noninvasive classification (tissue distribution feature, 0.70; structure feature, 0.49; pathologists, 0.84) but higher for the classification of atypia and DCIS vs benign cases (tissue distribution feature, 0.79; structure feature, 0.85; pathologists, 0.72) and the classification of DCIS vs atypia (tissue distribution feature, 0.88; structure feature, 0.89; pathologists, 0.70). For the DCIS vs atypia classification, the specificity of the machine learning feature classification was similar to that of the pathologists (tissue distribution feature, 0.78; structure feature, 0.80; pathologists, 0.82). CONCLUSION AND RELEVANCE: The computer-based automated approach to interpreting breast pathology showed promise, especially as a diagnostic aid in differentiating DCIS from atypical hyperplasia.
format Online
Article
Text
id pubmed-6692690
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher American Medical Association
record_format MEDLINE/PubMed
spelling pubmed-66926902019-08-27 Assessment of Machine Learning of Breast Pathology Structures for Automated Differentiation of Breast Cancer and High-Risk Proliferative Lesions Mercan, Ezgi Mehta, Sachin Bartlett, Jamen Shapiro, Linda G. Weaver, Donald L. Elmore, Joann G. JAMA Netw Open Original Investigation IMPORTANCE: Following recent US Food and Drug Administration approval, adoption of whole slide imaging in clinical settings may be imminent, and diagnostic accuracy, particularly among challenging breast biopsy specimens, may benefit from computerized diagnostic support tools. OBJECTIVE: To develop and evaluate computer vision methods to assist pathologists in diagnosing the full spectrum of breast biopsy samples, from benign to invasive cancer. DESIGN, SETTING, AND PARTICIPANTS: In this diagnostic study, 240 breast biopsies from Breast Cancer Surveillance Consortium registries that varied by breast density, diagnosis, patient age, and biopsy type were selected, reviewed, and categorized by 3 expert pathologists as benign, atypia, ductal carcinoma in situ (DCIS), and invasive cancer. The atypia and DCIS cases were oversampled to increase statistical power. High-resolution digital slide images were obtained, and 2 automated image features (tissue distribution feature and structure feature) were developed and evaluated according to the consensus diagnosis of the expert panel. The performance of the automated image analysis methods was compared with independent interpretations from 87 practicing US pathologists. Data analysis was performed between February 2017 and February 2019. MAIN OUTCOMES AND MEASURES: Diagnostic accuracy defined by consensus reference standard of 3 experienced breast pathologists. RESULTS: The accuracy of machine learning tissue distribution features, structure features, and pathologists for classification of invasive cancer vs noninvasive cancer was 0.94, 0.91, and 0.98, respectively; the accuracy of classification of atypia and DCIS vs benign tissue was 0.70, 0.70, and 0.81, respectively; and the accuracy of classification of DCIS vs atypia was 0.83, 0.85, and 0.80, respectively. The sensitivity of both machine learning features was lower than that of the pathologists for the invasive vs noninvasive classification (tissue distribution feature, 0.70; structure feature, 0.49; pathologists, 0.84) but higher for the classification of atypia and DCIS vs benign cases (tissue distribution feature, 0.79; structure feature, 0.85; pathologists, 0.72) and the classification of DCIS vs atypia (tissue distribution feature, 0.88; structure feature, 0.89; pathologists, 0.70). For the DCIS vs atypia classification, the specificity of the machine learning feature classification was similar to that of the pathologists (tissue distribution feature, 0.78; structure feature, 0.80; pathologists, 0.82). CONCLUSION AND RELEVANCE: The computer-based automated approach to interpreting breast pathology showed promise, especially as a diagnostic aid in differentiating DCIS from atypical hyperplasia. American Medical Association 2019-08-09 /pmc/articles/PMC6692690/ /pubmed/31397859 http://dx.doi.org/10.1001/jamanetworkopen.2019.8777 Text en Copyright 2019 Mercan E et al. JAMA Network Open. http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the CC-BY License.
spellingShingle Original Investigation
Mercan, Ezgi
Mehta, Sachin
Bartlett, Jamen
Shapiro, Linda G.
Weaver, Donald L.
Elmore, Joann G.
Assessment of Machine Learning of Breast Pathology Structures for Automated Differentiation of Breast Cancer and High-Risk Proliferative Lesions
title Assessment of Machine Learning of Breast Pathology Structures for Automated Differentiation of Breast Cancer and High-Risk Proliferative Lesions
title_full Assessment of Machine Learning of Breast Pathology Structures for Automated Differentiation of Breast Cancer and High-Risk Proliferative Lesions
title_fullStr Assessment of Machine Learning of Breast Pathology Structures for Automated Differentiation of Breast Cancer and High-Risk Proliferative Lesions
title_full_unstemmed Assessment of Machine Learning of Breast Pathology Structures for Automated Differentiation of Breast Cancer and High-Risk Proliferative Lesions
title_short Assessment of Machine Learning of Breast Pathology Structures for Automated Differentiation of Breast Cancer and High-Risk Proliferative Lesions
title_sort assessment of machine learning of breast pathology structures for automated differentiation of breast cancer and high-risk proliferative lesions
topic Original Investigation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6692690/
https://www.ncbi.nlm.nih.gov/pubmed/31397859
http://dx.doi.org/10.1001/jamanetworkopen.2019.8777
work_keys_str_mv AT mercanezgi assessmentofmachinelearningofbreastpathologystructuresforautomateddifferentiationofbreastcancerandhighriskproliferativelesions
AT mehtasachin assessmentofmachinelearningofbreastpathologystructuresforautomateddifferentiationofbreastcancerandhighriskproliferativelesions
AT bartlettjamen assessmentofmachinelearningofbreastpathologystructuresforautomateddifferentiationofbreastcancerandhighriskproliferativelesions
AT shapirolindag assessmentofmachinelearningofbreastpathologystructuresforautomateddifferentiationofbreastcancerandhighriskproliferativelesions
AT weaverdonaldl assessmentofmachinelearningofbreastpathologystructuresforautomateddifferentiationofbreastcancerandhighriskproliferativelesions
AT elmorejoanng assessmentofmachinelearningofbreastpathologystructuresforautomateddifferentiationofbreastcancerandhighriskproliferativelesions