Computational Pathology: A Survey Review and The Way Forward
Mahdi S. Hosseini, Babak Ehteshami Bejnordi, Vincent Quoc-Huy Trinh,, Danial Hasan, Xingwen Li, Taehyo Kim, Haochen Zhang, Theodore Wu, Kajanan, Chinniah, Sina Maghsoudlou, Ryan Zhang, Stephen Yang, Jiadai Zhu, Lyndon, Chan, Samir Khaki, Andrei Buin, Fatemeh Chaji, Ala Salehi

TL;DR
This survey comprehensively reviews over 800 papers in computational pathology, highlighting current challenges, trends, and future directions for integrating deep learning and digital diagnostics into clinical practice.
Contribution
It provides a detailed catalog and analysis of key works in computational pathology, outlining the current landscape and future challenges for clinical adoption.
Findings
Identification of key challenges in problem design and clinical integration.
Analysis of the current landscape of over 800 research papers.
Future directions for technical development and clinical implementation.
Abstract
Computational Pathology CPath is an interdisciplinary science that augments developments of computational approaches to analyze and model medical histopathology images. The main objective for CPath is to develop infrastructure and workflows of digital diagnostics as an assistive CAD system for clinical pathology, facilitating transformational changes in the diagnosis and treatment of cancer that are mainly address by CPath tools. With evergrowing developments in deep learning and computer vision algorithms, and the ease of the data flow from digital pathology, currently CPath is witnessing a paradigm shift. Despite the sheer volume of engineering and scientific works being introduced for cancer image analysis, there is still a considerable gap of adopting and integrating these algorithms in clinical practice. This raises a significant question regarding the direction and trends that are…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Digital Imaging for Blood Diseases
