Author
Listed:
- Kevin Faust
(Princess Margaret Cancer Centre)
- Min Li Chen
(Princess Margaret Cancer Centre
University of Toronto)
- Parsa Babaei Zadeh
(Princess Margaret Cancer Centre)
- Dimitrios G. Oreopoulos
(Princess Margaret Cancer Centre)
- Alberto J. Leon
(Princess Margaret Cancer Centre)
- Ameesha Paliwal
(Princess Margaret Cancer Centre
University of Toronto)
- Evelyn Rose Kamski-Hennekam
(Princess Margaret Cancer Centre)
- Marly Mikhail
(Princess Margaret Cancer Centre)
- Xianpi Duan
(McMaster University)
- Xianzhao Duan
(McMaster University)
- Mugeng Liu
(Princess Margaret Cancer Centre)
- Narges Ahangari
(University of Toronto)
- Raul Cotau
(biochimie et pathologie de l’Université Laval)
- Vincent Francis Castillo
(University of Toronto)
- Nikfar Nikzad
(McMaster University)
- Richard J. Sugden
(Princess Margaret Cancer Centre
University of Toronto)
- Patrick Murphy
(University of Toronto)
- Safiyh S. Aljohani
(Taibah University)
- Philippe Echelard
(Université de Sherbrooke)
- Susan J. Done
(Princess Margaret Cancer Centre
University of Toronto
University of Toronto
200 Elizabeth Street)
- Kiran Jakate
(University of Toronto)
- Zaid Saeed Kamil
(University of Toronto
200 Elizabeth Street)
- Yazeed Alwelaie
(King Fahad Medical City)
- Mohammed J. Alyousef
(Imam Abdulrahman Bin Faisal University)
- Noor Said Alsafwani
(Imam Abdulrahman Bin Faisal University)
- Assem Saleh Alrumeh
(200 Elizabeth Street)
- Rola M. Saleeb
(University of Toronto)
- Maxime Richer
(biochimie et pathologie de l’Université Laval)
- Lidiane Vieira Marins
(Instituto D’Or de Pesquisa e Ensino (IDOR))
- George M. Yousef
(University of Toronto
200 Elizabeth Street)
- Phedias Diamandis
(Princess Margaret Cancer Centre
University of Toronto
University of Toronto
200 Elizabeth Street)
Abstract
Deep learning has proven capable of automating key aspects of histopathologic analysis. However, its context-specific nature and continued reliance on large expert-annotated training datasets hinders the development of a critical mass of applications to garner widespread adoption in clinical/research workflows. Here, we present an online collaborative platform that streamlines tissue image annotation to promote the development and sharing of custom computer vision models for PHenotyping And Regional Analysis Of Histology (PHARAOH; https://www.pathologyreports.ai/ ). Specifically, PHARAOH uses a weakly supervised, human-in-the-loop learning framework whereby patch-level image features are leveraged to organize large swaths of tissue into morphologically-uniform clusters for batched annotation by human experts. By providing cluster-level labels on only a handful of cases, we show how custom PHARAOH models can be developed efficiently and used to guide the quantification of cellular features that correlate with molecular, pathologic and patient outcome data. Moreover, by using our PHARAOH pipeline, we showcase how correlation of cohort-level cytoarchitectural features with accompanying biological and outcome data can help systematically devise interpretable morphometric models of disease. Both the custom model design and feature extraction pipelines are amenable to crowdsourcing, positioning PHARAOH to become a fully scalable, systems-level solution for the expansion, generalization and cataloging of computational pathology applications.
Suggested Citation
Kevin Faust & Min Li Chen & Parsa Babaei Zadeh & Dimitrios G. Oreopoulos & Alberto J. Leon & Ameesha Paliwal & Evelyn Rose Kamski-Hennekam & Marly Mikhail & Xianpi Duan & Xianzhao Duan & Mugeng Liu & , 2025.
"PHARAOH: A collaborative crowdsourcing platform for phenotyping and regional analysis of histology,"
Nature Communications, Nature, vol. 16(1), pages 1-12, December.
Handle:
RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-024-55780-z
DOI: 10.1038/s41467-024-55780-z
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