Domain Adaptation Without the Compute Burden for Efficient Whole Slide Image Analysis
arXiv cs.CV / 3/18/2026
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Key Points
- The paper introduces EfficientWSI (eWSI), a method that combines Parameter-Efficient-Fine-Tuning (PEFT) with MIL to enable end-to-end training on whole slide images without heavy domain-specific pretraining.
- eWSI achieves competitive or superior performance compared to MIL using in-domain feature extractors, even when paired with ImageNet-based features, reducing computational costs.
- When used with in-domain feature extractors, eWSI further improves performance, showing its ability to capture task-specific information within histopathology.
- The approach is evaluated on seven WSI-level tasks across Camelyon16, TCGA, and BRACS datasets, demonstrating broad applicability.
- The work highlights a task-targeted, computationally efficient path for computational pathology, potentially enabling more scalable WSI analysis.
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