HistoART: Histopathology Artifact Detection and Reporting Tool
Seyed Kahaki, Alexander R. Webber, Ghada Zamzmi, Adarsh Subbaswamy, Rucha Deshpande, Aldo Badano

TL;DR
This paper introduces and compares three robust artifact detection methods for digital histopathology slides, significantly improving accuracy in identifying common artifacts to enhance downstream analysis quality.
Contribution
It proposes a foundation model-based approach, compares it with deep learning and knowledge-based methods, and develops a quality report scorecard for artifact quantification.
Findings
FMA achieved the highest AUROC of 0.995.
ResNet50-based method achieved AUROC of 0.977.
Knowledge-based approach achieved AUROC of 0.940.
Abstract
In modern cancer diagnostics, Whole Slide Imaging (WSI) is widely used to digitize tissue specimens for detailed, high-resolution examination; however, other diagnostic approaches, such as liquid biopsy and molecular testing, are also utilized based on the cancer type and clinical context. While WSI has revolutionized digital histopathology by enabling automated, precise analysis, it remains vulnerable to artifacts introduced during slide preparation and scanning. These artifacts can compromise downstream image analysis. To address this challenge, we propose and compare three robust artifact detection approaches for WSIs: (1) a foundation model-based approach (FMA) using a fine-tuned Unified Neural Image (UNI) architecture, (2) a deep learning approach (DLA) built on a ResNet50 backbone, and (3) a knowledge-based approach (KBA) leveraging handcrafted features from texture, color, and…
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Taxonomy
TopicsAI in cancer detection · Cell Image Analysis Techniques · Digital Imaging for Blood Diseases
