Literature DB >> 33118594

Artificial Intelligence Improves the Accuracy in Histologic Classification of Breast Lesions.

António Polónia1,2, Sofia Campelos1,2, Ana Ribeiro3, Ierece Aymore1,2, Daniel Pinto4, Magdalena Biskup-Fruzynska5, Ricardo Santana Veiga6, Rita Canas-Marques7, Guilherme Aresta8,9, Teresa Araújo8,9, Aurélio Campilho8,9, Scotty Kwok10, Paulo Aguiar2,11, Catarina Eloy1,2,12.   

Abstract

OBJECTIVES: This study evaluated the usefulness of artificial intelligence (AI) algorithms as tools in improving the accuracy of histologic classification of breast tissue.
METHODS: Overall, 100 microscopic photographs (test A) and 152 regions of interest in whole-slide images (test B) of breast tissue were classified into 4 classes: normal, benign, carcinoma in situ (CIS), and invasive carcinoma. The accuracy of 4 pathologists and 3 pathology residents were evaluated without and with the assistance of algorithms.
RESULTS: In test A, algorithm A had accuracy of 0.87, with the lowest accuracy in the benign class (0.72). The observers had average accuracy of 0.80, and most clinically relevant discordances occurred in distinguishing benign from CIS (7.1% of classifications). With the assistance of algorithm A, the observers significantly increased their average accuracy to 0.88. In test B, algorithm B had accuracy of 0.49, with the lowest accuracy in the CIS class (0.06). The observers had average accuracy of 0.86, and most clinically relevant discordances occurred in distinguishing benign from CIS (6.3% of classifications). With the assistance of algorithm B, the observers maintained their average accuracy.
CONCLUSIONS: AI tools can increase the classification accuracy of pathologists in the setting of breast lesions. © American Society for Clinical Pathology, 2020. All rights reserved. For permissions, please e-mail: journals.permissions@oup.com.

Entities:  

Keywords:  Artificial intelligence; achine learning; eep learning; istology; omputational pathology; onvolutional neural networks; reast cancer

Year:  2021        PMID: 33118594     DOI: 10.1093/ajcp/aqaa151

Source DB:  PubMed          Journal:  Am J Clin Pathol        ISSN: 0002-9173            Impact factor:   2.493


  5 in total

1.  Fusing pre-trained convolutional neural networks features for multi-differentiated subtypes of liver cancer on histopathological images.

Authors:  Xiaogang Dong; Min Li; Panyun Zhou; Xin Deng; Siyu Li; Xingyue Zhao; Yi Wu; Jiwei Qin; Wenjia Guo
Journal:  BMC Med Inform Decis Mak       Date:  2022-05-04       Impact factor: 3.298

2.  Europe Unites for the Digital Transformation of Pathology: The Role of the New ESDIP.

Authors:  Catarina Eloy; Norman Zerbe; Filippo Fraggetta
Journal:  J Pathol Inform       Date:  2021-03-12

3.  A Machine Learning Decision Support System (DSS) for Neuroendocrine Tumor Patients Treated with Somatostatin Analog (SSA) Therapy.

Authors:  Jasminka Hasic Telalovic; Serena Pillozzi; Rachele Fabbri; Alice Laffi; Daniele Lavacchi; Virginia Rossi; Lorenzo Dreoni; Francesca Spada; Nicola Fazio; Amedeo Amedei; Ernesto Iadanza; Lorenzo Antonuzzo
Journal:  Diagnostics (Basel)       Date:  2021-04-28

4.  DPA-ESDIP-JSDP Task Force for Worldwide Adoption of Digital Pathology.

Authors:  Catarina Eloy; Andrey Bychkov; Liron Pantanowitz; Filippo Fraggetta; Marilyn M Bui; Junya Fukuoka; Norman Zerbe; Lewis Hassell; Anil Parwani
Journal:  J Pathol Inform       Date:  2021-12-16

5.  HEROHE Challenge: Predicting HER2 Status in Breast Cancer from Hematoxylin-Eosin Whole-Slide Imaging.

Authors:  Eduardo Conde-Sousa; João Vale; Ming Feng; Kele Xu; Yin Wang; Vincenzo Della Mea; David La Barbera; Ehsan Montahaei; Mahdieh Baghshah; Andreas Turzynski; Jacob Gildenblat; Eldad Klaiman; Yiyu Hong; Guilherme Aresta; Teresa Araújo; Paulo Aguiar; Catarina Eloy; Antonio Polónia
Journal:  J Imaging       Date:  2022-07-31
  5 in total

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