CVNov 21, 2014

Assessment of algorithms for mitosis detection in breast cancer histopathology images

arXiv:1411.5825v1457 citations
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This work addresses the laborious and subjective nature of mitosis counting for pathologists, but it is incremental as it evaluates existing methods on a new benchmark dataset.

The paper tackled the problem of automating mitosis detection in breast cancer histopathology images to improve prognostic marker assessment, reporting that the top method in the AMIDA13 challenge achieved an error rate comparable to inter-observer agreement among pathologists.

The proliferative activity of breast tumors, which is routinely estimated by counting of mitotic figures in hematoxylin and eosin stained histology sections, is considered to be one of the most important prognostic markers. However, mitosis counting is laborious, subjective and may suffer from low inter-observer agreement. With the wider acceptance of whole slide images in pathology labs, automatic image analysis has been proposed as a potential solution for these issues. In this paper, the results from the Assessment of Mitosis Detection Algorithms 2013 (AMIDA13) challenge are described. The challenge was based on a data set consisting of 12 training and 11 testing subjects, with more than one thousand annotated mitotic figures by multiple observers. Short descriptions and results from the evaluation of eleven methods are presented. The top performing method has an error rate that is comparable to the inter-observer agreement among pathologists.

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