Lymphocyte counting – Error Analysis of Regression versus Bounding Box Detection Approaches

07/21/2020
by   Lin Geng Foo, et al.
10

We consider the problem of counting cell nuclei from celltype-agnostic histopathological stains, exemplified here by the Haematoxylin and Eosin stain. We compare direct estimation by classification and regression against bounding box prediction models for a dataset with relatively low sample sizes. We find from a fine-grained analysis of MSE errors that all models suffer from a substantial underestimation bias. Detection models, while more capricious and sensitive in training, are more robust against underestimation in their optimum. Furthermore the simple idea of combining models from different prediction setups results in large improvements.

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