English

Lizard: A Large-Scale Dataset for Colonic Nuclear Instance Segmentation and Classification

Computer Vision and Pattern Recognition 2021-11-30 v2 Machine Learning

Abstract

The development of deep segmentation models for computational pathology (CPath) can help foster the investigation of interpretable morphological biomarkers. Yet, there is a major bottleneck in the success of such approaches because supervised deep learning models require an abundance of accurately labelled data. This issue is exacerbated in the field of CPath because the generation of detailed annotations usually demands the input of a pathologist to be able to distinguish between different tissue constructs and nuclei. Manually labelling nuclei may not be a feasible approach for collecting large-scale annotated datasets, especially when a single image region can contain thousands of different cells. However, solely relying on automatic generation of annotations will limit the accuracy and reliability of ground truth. Therefore, to help overcome the above challenges, we propose a multi-stage annotation pipeline to enable the collection of large-scale datasets for histology image analysis, with pathologist-in-the-loop refinement steps. Using this pipeline, we generate the largest known nuclear instance segmentation and classification dataset, containing nearly half a million labelled nuclei in H&E stained colon tissue. We have released the dataset and encourage the research community to utilise it to drive forward the development of downstream cell-based models in CPath.

Keywords

Cite

@article{arxiv.2108.11195,
  title  = {Lizard: A Large-Scale Dataset for Colonic Nuclear Instance Segmentation and Classification},
  author = {Simon Graham and Mostafa Jahanifar and Ayesha Azam and Mohammed Nimir and Yee-Wah Tsang and Katherine Dodd and Emily Hero and Harvir Sahota and Atisha Tank and Ksenija Benes and Noorul Wahab and Fayyaz Minhas and Shan E Ahmed Raza and Hesham El Daly and Kishore Gopalakrishnan and David Snead and Nasir Rajpoot},
  journal= {arXiv preprint arXiv:2108.11195},
  year   = {2021}
}
R2 v1 2026-06-24T05:24:27.712Z