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American Association for Clinical Chemistry, Clinical Chemistry, 12(63), p. 1847-1855

DOI: 10.1373/clinchem.2017.276345

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Very Deep Convolutional Neural Networks for Morphologic Classification of Erythrocytes

Journal article published in 2017 by Thomas J. S. Durant ORCID, Eben M. Olson, Wade L. Schulz, Richard Torres
This paper was not found in any repository, but could be made available legally by the author.
This paper was not found in any repository, but could be made available legally by the author.

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Abstract

Abstract BACKGROUND Morphologic profiling of the erythrocyte population is a widely used and clinically valuable diagnostic modality, but one that relies on a slow manual process associated with significant labor cost and limited reproducibility. Automated profiling of erythrocytes from digital images by capable machine learning approaches would augment the throughput and value of morphologic analysis. To this end, we sought to evaluate the performance of leading implementation strategies for convolutional neural networks (CNNs) when applied to classification of erythrocytes based on morphology. METHODS Erythrocytes were manually classified into 1 of 10 classes using a custom-developed Web application. Using recent literature to guide architectural considerations for neural network design, we implemented a “very deep” CNN, consisting of >150 layers, with dense shortcut connections. RESULTS The final database comprised 3737 labeled cells. Ensemble model predictions on unseen data demonstrated a harmonic mean of recall and precision metrics of 92.70% and 89.39%, respectively. Of the 748 cells in the test set, 23 misclassification errors were made, with a correct classification frequency of 90.60%, represented as a harmonic mean across the 10 morphologic classes. CONCLUSIONS These findings indicate that erythrocyte morphology profiles could be measured with a high degree of accuracy with “very deep” CNNs. Further, these data support future efforts to expand classes and optimize practical performance in a clinical environment as a prelude to full implementation as a clinical tool.