IEEE VIS 2025 Content: An Intelligent Interactive Visual Analytics System for Exploring Large and Multi-Scale Pathology Images

An Intelligent Interactive Visual Analytics System for Exploring Large and Multi-Scale Pathology Images

Chaoqing Xu -

Ruiqi Yang -

Weihan Li -

Xinyuan Fu -

Liting Fang -

Zunlei Feng -

Can Wang -

Mingli Song -

Wei Chen -

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Room: Hall M1

Keywords

Pathology Image, Diffusion Model, Large-Scale, Visual Analytics, Interactive Exploration

Abstract

Pathology images are crucial for cancer diagnosis and treatment. Although artificial intelligence has driven rapid advancements in pathology image analysis, the interpretation of ultra-large and multi-scale pathology images in clinical practice still heavily relies on physicians' experience. Clinicians need to repeatedly zoom in and out on individual slides to compare and assess pathological details — a process that is both time-consuming and prone to visual fatigue. The system first employs a diffusion model to perform tissue segmentation on pathology images, then calculates pathological tissue proportions and morphological metrics. Finally, through multi-scale dynamic comparison and multi-level visual evaluation, the system facilitates comprehensive and precise analysis of pathology images. The system provides clinicians with an intelligent and interactive tool for pathology image interpretation, enabling efficient visualization and precise analysis of pathological details, thereby reducing the effort require for detailed analysis.