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NuCLS: A scalable crowdsourcing approach and dataset for nucleus classification and segmentation in breast cancer

Authors :
Mohamed Amgad
Lamees A Atteya
Hagar Hussein
Kareem Hosny Mohammed
Ehab Hafiz
Maha A T Elsebaie
Ahmed M Alhusseiny
Mohamed Atef AlMoslemany
Abdelmagid M Elmatboly
Philip A Pappalardo
Rokia Adel Sakr
Pooya Mobadersany
Ahmad Rachid
Anas M Saad
Ahmad M Alkashash
Inas A Ruhban
Anas Alrefai
Nada M Elgazar
Ali Abdulkarim
Abo-Alela Farag
Amira Etman
Ahmed G Elsaeed
Yahya Alagha
Yomna A Amer
Ahmed M Raslan
Menatalla K Nadim
Mai A T Elsebaie
Ahmed Ayad
Liza E Hanna
Ahmed Gadallah
Mohamed Elkady
Bradley Drumheller
David Jaye
David Manthey
David A Gutman
Habiba Elfandy
Lee A D Cooper
Source :
GigaScience. 11
Publication Year :
2022
Publisher :
Oxford University Press (OUP), 2022.

Abstract

Background Deep learning enables accurate high-resolution mapping of cells and tissue structures that can serve as the foundation of interpretable machine-learning models for computational pathology. However, generating adequate labels for these structures is a critical barrier, given the time and effort required from pathologists. Results This article describes a novel collaborative framework for engaging crowds of medical students and pathologists to produce quality labels for cell nuclei. We used this approach to produce the NuCLS dataset, containing >220,000 annotations of cell nuclei in breast cancers. This builds on prior work labeling tissue regions to produce an integrated tissue region- and cell-level annotation dataset for training that is the largest such resource for multi-scale analysis of breast cancer histology. This article presents data and analysis results for single and multi-rater annotations from both non-experts and pathologists. We present a novel workflow that uses algorithmic suggestions to collect accurate segmentation data without the need for laborious manual tracing of nuclei. Our results indicate that even noisy algorithmic suggestions do not adversely affect pathologist accuracy and can help non-experts improve annotation quality. We also present a new approach for inferring truth from multiple raters and show that non-experts can produce accurate annotations for visually distinctive classes. Conclusions This study is the most extensive systematic exploration of the large-scale use of wisdom-of-the-crowd approaches to generate data for computational pathology applications.

Details

ISSN :
2047217X
Volume :
11
Database :
OpenAIRE
Journal :
GigaScience
Accession number :
edsair.doi.dedup.....bbfda688a1d6178b76038dc0f7430a5c