Mitotic Figure Recognition: Agreement among Pathologists and Computerized Detector
Author(s) -
Christopher Malon,
Elena F. Brachtel,
Eric Cosatto,
Hans Peter Graf,
Atsushi Kurata,
Masahiko Kuroda,
John S. Meyer,
Akira Saito,
Shulin Wu,
Yukako Yagi
Publication year - 2012
Publication title -
analytical cellular pathology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.576
H-Index - 24
eISSN - 2210-7185
pISSN - 2210-7177
DOI - 10.1155/2012/385271
Subject(s) - computer science , reproducibility , medical physics , h&e stain , set (abstract data type) , artificial intelligence , mitotic index , pathology , mitosis , medicine , statistics , mathematics , biology , staining , programming language , microbiology and biotechnology
Despite the prognostic importance of mitotic count as one of the components of the Bloom – Richardson grade [3], several studies ([2, 9, 10]) have found that pathologists’ agreement on the mitotic grade is fairly modest. Collecting a set of more than 4,200 candidate mitotic figures, we evaluate pathologists' agreement on individual figures, and train a computerized system for mitosis detection, comparing its performance to the classifications of three pathologists. The system’s and the pathologists’ classifications are based on evaluation of digital micrographs of hematoxylin and eosin stained breast tissue. On figures where the majority of pathologists agree on a classification, we compare the performance of the trained system to that of the individual pathologists. We find that the level of agreement of the pathologists ranges from slight to moderate, with strong biases, and that the system performs competitively in rating the ground truth set. This study is a step towards automatic mitosis count to accelerate a pathologist's work and improve reproducibility.
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