Abstract

The assessment of protein expression in immunohistochemistry (IHC) images provides important diagnostic, prognostic and predictive information for guiding cancer diagnosis and therapy. Manual scoring of IHC images represents a logistical challenge, as the process is labor intensive and time consuming. Since the last decade, computational methods have been developed to enable the application of quantitative methods for the analysis and interpretation of protein expression in IHC images. These methods have not yet replaced manual scoring for the assessment of IHC in the majority of diagnostic laboratories and in many large-scale research studies. An alternative approach is crowdsourcing the quantification of IHC images to an undefined crowd. The aim of this study is to quantify IHC images for labeling of ER status with two different crowdsourcing approaches, image-labeling and nuclei-labeling, and compare their performance with automated methods. Crowdsourcing- derived scores obtained greater concordance with the pathologist interpretations for both image-labeling and nuclei-labeling tasks (83% and 87%), as compared to the pathologist concordance achieved by the automated method (81%) on 5,338 TMA images from 1,853 breast cancer patients. This analysis shows that crowdsourcing the scoring of protein expression in IHC images is a promising new approach for large scale cancer molecular pathology studies.

Highlights

  • In this study, we evaluate the use of crowdsourcing to outsource the task of scoring IHC labeled tissue microarray (TMA) to a large crowd of users not previously trained in pathology

  • We designed a pilot study to test the crowd sourcing application for IHC image labeling and to assess the improvement in crowdsourcing performance as we increase the numbers of aggregated instances per image

  • No prior studies have directly compared crowdsourcing vs. automated methods in the interpretation of IHC

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Summary

Introduction

We evaluate the use of crowdsourcing to outsource the task of scoring IHC labeled TMAs to a large crowd of users not previously trained in pathology. Over the last decade, crowdsourcing has been used in a wide range of domains, including astronomy[7], zoology[8,9,10], medical microbiology[11], and neuroscience[12,13,14], to

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