# Her2 Challenge Contest: A Detailed Assessment of Automated Her2 Scoring   Algorithms in Whole Slide Images of Breast Cancer Tissues

**Authors:** Talha Qaiser, Abhik Mukherjee, Chaitanya Reddy Pb, Sai Dileep, Munugoti, Vamsi Tallam, Tomi Pitk\"aaho, Taina Lehtim\"aki, Thomas Naughton,, Matt Berseth, An\'ibal Pedraza, Ramakrishnan Mukundan, Matthew Smith, Abhir, Bhalerao, Erik Rodner, Marcel Simon, Joachim Denzler, Chao-Hui Huang, Gloria, Bueno, David Snead, Ian Ellis, Mohammad Ilyas, Nasir Rajpoot

arXiv: 1705.08369 · 2017-11-06

## TL;DR

This paper presents a benchmark contest comparing AI algorithms for automated Her2 scoring in breast cancer tissue images, demonstrating that automated methods can outperform human experts and aid in objective diagnosis.

## Contribution

It introduces a systematic contest for Her2 scoring, providing a benchmark dataset and demonstrating the potential of AI to improve accuracy and consistency in pathology.

## Key findings

- Automated algorithms can outperform human experts in Her2 scoring.
- The contest dataset enables standardized comparison of AI methods.
- Automated methods show promise in assisting pathologists with objective scoring.

## Abstract

Evaluating expression of the Human epidermal growth factor receptor 2 (Her2) by visual examination of immunohistochemistry (IHC) on invasive breast cancer (BCa) is a key part of the diagnostic assessment of BCa due to its recognised importance as a predictive and prognostic marker in clinical practice. However, visual scoring of Her2 is subjective and consequently prone to inter-observer variability. Given the prognostic and therapeutic implications of Her2 scoring, a more objective method is required. In this paper, we report on a recent automated Her2 scoring contest, held in conjunction with the annual PathSoc meeting held in Nottingham in June 2016, aimed at systematically comparing and advancing the state-of-the-art Artificial Intelligence (AI) based automated methods for Her2 scoring. The contest dataset comprised of digitised whole slide images (WSI) of sections from 86 cases of invasive breast carcinoma stained with both Haematoxylin & Eosin (H&E) and IHC for Her2. The contesting algorithms automatically predicted scores of the IHC slides for an unseen subset of the dataset and the predicted scores were compared with the 'ground truth' (a consensus score from at least two experts). We also report on a simple Man vs Machine contest for the scoring of Her2 and show that the automated methods could beat the pathology experts on this contest dataset. This paper presents a benchmark for comparing the performance of automated algorithms for scoring of Her2. It also demonstrates the enormous potential of automated algorithms in assisting the pathologist with objective IHC scoring.

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Source: https://tomesphere.com/paper/1705.08369