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📄 Abstract
Abstract: Purpose: Recent developments in computational pathology have been driven by
advances in Vision Foundation Models, particularly the Segment Anything Model
(SAM). This model facilitates nuclei segmentation through two primary methods:
prompt-based zero-shot segmentation and the use of cell-specific SAM models for
direct segmentation. These approaches enable effective segmentation across a
range of nuclei and cells. However, general vision foundation models often face
challenges with fine-grained semantic segmentation, such as identifying
specific nuclei subtypes or particular cells. Approach: In this paper, we
propose the molecular-empowered All-in-SAM Model to advance computational
pathology by leveraging the capabilities of vision foundation models. This
model incorporates a full-stack approach, focusing on: (1) annotation-engaging
lay annotators through molecular-empowered learning to reduce the need for
detailed pixel-level annotations, (2) learning-adapting the SAM model to
emphasize specific semantics, which utilizes its strong generalizability with
SAM adapter, and (3) refinement-enhancing segmentation accuracy by integrating
Molecular-Oriented Corrective Learning (MOCL). Results: Experimental results
from both in-house and public datasets show that the All-in-SAM model
significantly improves cell classification performance, even when faced with
varying annotation quality. Conclusions: Our approach not only reduces the
workload for annotators but also extends the accessibility of precise
biomedical image analysis to resource-limited settings, thereby advancing
medical diagnostics and automating pathology image analysis.