Literature DB >> 30861443

Predicting breast tumor proliferation from whole-slide images: The TUPAC16 challenge.

Mitko Veta1, Yujing J Heng2, Nikolas Stathonikos3, Babak Ehteshami Bejnordi4, Francisco Beca5, Thomas Wollmann6, Karl Rohr6, Manan A Shah7, Dayong Wang2, Mikael Rousson8, Martin Hedlund8, David Tellez5, Francesco Ciompi5, Erwan Zerhouni9, David Lanyi9, Matheus Viana10, Vassili Kovalev11, Vitali Liauchuk11, Hady Ahmady Phoulady12, Talha Qaiser13, Simon Graham13, Nasir Rajpoot13, Erik Sjöblom14, Jesper Molin14, Kyunghyun Paeng15, Sangheum Hwang15, Sunggyun Park15, Zhipeng Jia16, Eric I-Chao Chang17, Yan Xu18, Andrew H Beck2, Paul J van Diest3, Josien P W Pluim19.   

Abstract

Tumor proliferation is an important biomarker indicative of the prognosis of breast cancer patients. Assessment of tumor proliferation in a clinical setting is a highly subjective and labor-intensive task. Previous efforts to automate tumor proliferation assessment by image analysis only focused on mitosis detection in predefined tumor regions. However, in a real-world scenario, automatic mitosis detection should be performed in whole-slide images (WSIs) and an automatic method should be able to produce a tumor proliferation score given a WSI as input. To address this, we organized the TUmor Proliferation Assessment Challenge 2016 (TUPAC16) on prediction of tumor proliferation scores from WSIs. The challenge dataset consisted of 500 training and 321 testing breast cancer histopathology WSIs. In order to ensure fair and independent evaluation, only the ground truth for the training dataset was provided to the challenge participants. The first task of the challenge was to predict mitotic scores, i.e., to reproduce the manual method of assessing tumor proliferation by a pathologist. The second task was to predict the gene expression based PAM50 proliferation scores from the WSI. The best performing automatic method for the first task achieved a quadratic-weighted Cohen's kappa score of κ = 0.567, 95% CI [0.464, 0.671] between the predicted scores and the ground truth. For the second task, the predictions of the top method had a Spearman's correlation coefficient of r = 0.617, 95% CI [0.581 0.651] with the ground truth. This was the first comparison study that investigated tumor proliferation assessment from WSIs. The achieved results are promising given the difficulty of the tasks and weakly-labeled nature of the ground truth. However, further research is needed to improve the practical utility of image analysis methods for this task.
Copyright © 2019 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Breast cancer; Cancer prognostication; Deep learning; Tumor proliferation

Mesh:

Substances:

Year:  2019        PMID: 30861443     DOI: 10.1016/j.media.2019.02.012

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  29 in total

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10.  A large-scale dataset for mitotic figure assessment on whole slide images of canine cutaneous mast cell tumor.

Authors:  Christof A Bertram; Marc Aubreville; Christian Marzahl; Andreas Maier; Robert Klopfleisch
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