JISE


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Journal of Information Science and Engineering, Vol. 40 No. 3, pp. 455-474


ACC-GAN: Cross Scanner Robustness With Annotation Consistency Guided Cycle-GAN


CHIEN-YU CHIOU1, HUNG-WEN TSAI2, WEI-JONG YANG3, CHIH-HSIEN LEE1,
MING TING SUN4, MARIA GABRANI5, KUO-SHENG CHENG6,
MENG-LING WU1 AND PAU-CHOO CHUNG1,+
1Department of Electrical Engineering
2Department of Pathology, College of Medicine
6Department of Biomedical Engineering
National Cheng Kung University
Tainan, 701 Taiwan
E-mail: pcchung@ee.ncku.edu.tw
+
3Department of Artificial Intelligence and Computer Engineering
National Chin-Yi University of Technology
Taichung, 411 Taiwan

4Department of Electrical and Computer Engineering
University of Washington
Seattle, Washington, WA 98195 United States

5IBM Research Europe
Zurich, 8803 Switzerland


Artificial intelligence (AI) models are increasingly employed in digital pathology for the analysis of whole slide images (WSIs). However, the different rendering styles of dif-ferent scanners which could cause significant performance degradations pose a challenge to building robust AI models. Existing methods resolve this problem by aligning the color and appearance of the different WSIs. It does not utilize the annotation information which is available for training the AI models. We observe that by considering the annotation information, important semantic features can be kept better during the transformation and thus can improve the performance across scanners. In this paper, we propose an Anno-tation Consistency guided Cycle-GAN (ACC-GAN) for performing the cross-scanner im-age transformation with minimal semantic feature loss. In the proposed method, the anno-tation information is used to guide the ACC-GAN learning color transformation process for WSI analysis purposes. The performance of the proposed method is demonstrated using a liver tumor dataset and a liver nucleus dataset scanned by three different types of scan-ners. The results confirm that the proposed method can enable the AI analysis model to maintain a high prediction accuracy across the images scanned by different scanners.


Keywords: digital pathological image analysis, domain adaptation, semantic segmentation, GAN, liver tumor segmentation, nucleus segmentation

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