Litcius/Paper detail

AI in Histopathology Explorer for comprehensive analysis of the evolving AI landscape in histopathology

Yihong Ma, Shivprasad Jamdade, Lakshmi Konduri, Heba Sailem

2025npj Digital Medicine21 citationsDOIOpen Access PDF

Abstract

Digital pathology and artificial intelligence (AI) hold immense transformative potential to revolutionize cancer diagnostics, treatment outcomes, and biomarker discovery. Gaining a deeper understanding of deep learning algorithm methods applied to histopathological data and evaluating their performance on different tasks is crucial for developing the next generation of AI technologies. To this end, we developed AI in Histopathology Explorer (HistoPathExplorer); an interactive dashboard with intelligent tools available at www.histopathexpo.ai . This real-time online resource enables users, including researchers, decision-makers, and various stakeholders, to assess the current landscape of AI applications for specific clinical tasks, analyze their performance, and explore the factors influencing their translation into practice. Moreover, a quality index was defined for evaluating the comprehensiveness of methodological details in published AI methods. HistoPathExplorer highlights opportunities and challenges for AI in histopathology, and offers a valuable resource for creating more effective methods and shaping strategies and guidelines for translating digital pathology applications into clinical practice.

Topics & Concepts

Digital pathologyComputer scienceTransformative learningResource (disambiguation)Data scienceArtificial intelligencePsychologyPedagogyComputer networkAI in cancer detectionRadiomics and Machine Learning in Medical ImagingDigital Imaging for Blood Diseases
AI in Histopathology Explorer for comprehensive analysis of the evolving AI landscape in histopathology | Litcius