Cytologic scoring of equine exercise-induced pulmonary hemorrhage: Performance of human experts and a deep learning-based algorithm

Author:

Bertram Christof A.12ORCID,Marzahl Christian34,Bartel Alexander2ORCID,Stayt Jason5,Bonsembiante Federico6ORCID,Beeler-Marfisi Janet7ORCID,Barton Ann K.2,Brocca Ginevra6ORCID,Gelain Maria E.6ORCID,Gläsel Agnes8,Preez Kelly du9,Weiler Kristina8,Weissenbacher-Lang Christiane1,Breininger Katharina3,Aubreville Marc10ORCID,Maier Andreas3,Klopfleisch Robert2ORCID,Hill Jenny5

Affiliation:

1. University of Veterinary Medicine Vienna, Vienna, Austria

2. Freie Universität Berlin, Berlin, Germany

3. Friedrich-Alexander-Universität Erlangen-Nürnberg, Erlangen, Germany

4. EUROIMMUN Medizinische Labordiagnostika AG, Lübeck, Germany

5. Novavet Diagnostics, Bayswater, Western Australia

6. University of Padova, Legnaro, Italy

7. University of Guelph, Guelph, Ontario, Canada

8. Justus-Liebig-Universität Giessen, Giessen, Germany

9. University of Pretoria, Pretoria, South Africa

10. Technische Hochschule Ingolstadt, Ingolstadt, Germany

Abstract

Exercise-induced pulmonary hemorrhage (EIPH) is a relevant respiratory disease in sport horses, which can be diagnosed by examination of bronchoalveolar lavage fluid (BALF) cells using the total hemosiderin score (THS). The aim of this study was to evaluate the diagnostic accuracy and reproducibility of annotators and to validate a deep learning-based algorithm for the THS. Digitized cytological specimens stained for iron were prepared from 52 equine BALF samples. Ten annotators produced a THS for each slide according to published methods. The reference methods for comparing annotator’s and algorithmic performance included a ground truth dataset, the mean annotators’ THSs, and chemical iron measurements. Results of the study showed that annotators had marked interobserver variability of the THS, which was mostly due to a systematic error between annotators in grading the intracytoplasmatic hemosiderin content of individual macrophages. Regarding overall measurement error between the annotators, 87.7% of the variance could be reduced by using standardized grades based on the ground truth. The algorithm was highly consistent with the ground truth in assigning hemosiderin grades. Compared with the ground truth THS, annotators had an accuracy of diagnosing EIPH (THS of < or ≥ 75) of 75.7%, whereas, the algorithm had an accuracy of 92.3% with no relevant differences in correlation with chemical iron measurements. The results show that deep learning-based algorithms are useful for improving reproducibility and routine applicability of the THS. For THS by experts, a diagnostic uncertainty interval of 40 to 110 is proposed. THSs within this interval have insufficient reproducibility regarding the EIPH diagnosis.

Funder

Dres. Jutta and Georg Bruns-Stifung für innovative Veterinärmedizin

Publisher

SAGE Publications

Subject

General Veterinary

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