A Deployment-Friendly Foundational Framework for Efficient Computational Pathology
Yu Cai, Cheng Jin, Jiabo Ma, Fengtao Zhou, Yingxue Xu, Zhengrui Guo, Yihui Wang, Zhengyu Zhang, Ling Liang, Yonghao Tan, Pingcheng Dong, Du Cai, On Ki Tang, Chenglong Zhao, Xi Wang, Can Yang, Yali Xu, Jing Cui, Zhenhui Li, Ronald Cheong Kin Chan, Yueping Liu, Feng Gao

TL;DR
LitePath is a deployment-friendly framework for computational pathology that significantly reduces model size and computational requirements, enabling efficient analysis on low-power hardware while maintaining high accuracy across diverse tasks.
Contribution
The paper introduces LitePath, a compact, distilled model with adaptive patch selection, achieving substantial efficiency gains without sacrificing accuracy in pathology image analysis.
Findings
28x reduction in model parameters
403.5x decrease in FLOPs
208 slides per hour on edge hardware
Abstract
Pathology foundation models (PFMs) have enabled robust generalization in computational pathology through large-scale datasets and expansive architectures, but their substantial computational cost, particularly for gigapixel whole slide images, limits clinical accessibility and scalability. Here, we present LitePath, a deployment-friendly foundational framework designed to mitigate model over-parameterization and patch level redundancy. LitePath integrates LiteFM, a compact model distilled from three large PFMs (Virchow2, H-Optimus-1 and UNI2) using 190 million patches, and the Adaptive Patch Selector (APS), a lightweight component for task-specific patch selection. The framework reduces model parameters by 28x and lowers FLOPs by 403.5x relative to Virchow2, enabling deployment on low-power edge hardware such as the NVIDIA Jetson Orin Nano Super. On this device, LitePath processes 208…
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Taxonomy
TopicsAI in cancer detection · Digital Imaging for Blood Diseases · Cell Image Analysis Techniques
