@inproceedings{8f76436b3f094095bb0964dd0633cf06,
title = "Few-shot Tumor Bud Segmentation Using Generative Model in Colorectal Carcinoma",
abstract = "Current deep learning methods in histopathology are limited by the small amount of available data and time consumption in labeling the data. Colorectal cancer (CRC) tumor budding quantification performed using H&E-stained slides is crucial for cancer staging and prognosis but is subject to labor-intensive annotation and human bias. Thus, acquiring a large-scale, fully annotated dataset for training a tumor budding (TB) segmentation/detection system is difficult. Here, we present a DatasetGAN-based approach that can generate essentially an unlimited number of images with TB masks from a moderate number of unlabeled images and a few annotated images. The images generated by our model closely resemble the real colon tissue on H&E-stained slides. We test the performance of this model by training a downstream segmentation model, UNet++, on the generated images and masks. Our results show that the trained UNet++ model can achieve reasonable TB segmentation performance, especially at the instance level. This study demonstrates the potential of developing an annotation-efficient segmentation model for automatic TB detection and quantification.",
keywords = "Colorectal Cancer, DatasetGAN, Deep Learning, Few-Shot Learning, Segmentation, Tumor Budding",
author = "Ziyu Su and Wei Chen and Leigh, {Preston J.} and Usama Sajjad and Shuo Niu and Mostafa Rezapour and Frankel, {Wendy L.} and Gurcan, {Metin N.} and Niazi, {M. Khalid Khan}",
note = "Publisher Copyright: {\textcopyright} 2024 SPIE.; Medical Imaging 2024: Digital and Computational Pathology ; Conference date: 19-02-2024 Through 21-02-2024",
year = "2024",
doi = "10.1117/12.3006418",
language = "English",
series = "Progress in Biomedical Optics and Imaging - Proceedings of SPIE",
publisher = "SPIE",
editor = "Tomaszewski, {John E.} and Ward, {Aaron D.}",
booktitle = "Medical Imaging 2024",
}