Whole-Slide Image Focus Quality: Automatic Assessment and Impact on AI Cancer Detection
Timo Kohlberger, Yun Liu, Melissa Moran, Po-Hsuan (Cameron) Chen,, Trissia Brown, Craig H. Mermel, Jason D. Hipp, Martin C. Stumpe

TL;DR
This paper presents ConvFocus, a CNN-based method for automatically localizing and quantifying out-of-focus regions in whole-slide images, improving digital pathology workflows and AI diagnostic accuracy.
Contribution
The study introduces a semi-synthetic data generation process and demonstrates ConvFocus's effectiveness across multiple tissue types, stains, and scanners, with high correlation to pathologist assessments.
Findings
ConvFocus achieves Spearman coefficients of 0.81 and 0.94 on two scanners.
The algorithm generalizes well to real OOF regions across various conditions.
OOF negatively impacts AI cancer detection accuracy.
Abstract
Digital pathology enables remote access or consults and powerful image analysis algorithms. However, the slide digitization process can create artifacts such as out-of-focus (OOF). OOF is often only detected upon careful review, potentially causing rescanning and workflow delays. Although scan-time operator screening for whole-slide OOF is feasible, manual screening for OOF affecting only parts of a slide is impractical. We developed a convolutional neural network (ConvFocus) to exhaustively localize and quantify the severity of OOF regions on digitized slides. ConvFocus was developed using our refined semi-synthetic OOF data generation process, and evaluated using real whole-slide images spanning 3 different tissue types and 3 different stain types that were digitized by two different scanners. ConvFocus's predictions were compared with pathologist-annotated focus quality grades across…
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