Identifying and Counting Avian Blood Cells in Whole Slide Images via Deep Learning

被引:3
|
作者
Vogelbacher, Markus [1 ]
Strehmann, Finja [2 ]
Bellafkir, Hicham [1 ]
Muehling, Markus [1 ]
Korfhage, Nikolaus [1 ]
Schneider, Daniel [1 ]
Roesner, Sascha [2 ]
Schabo, Dana G. [2 ]
Farwig, Nina [2 ]
Freisleben, Bernd [1 ]
机构
[1] Univ Marburg, Dept Math & Comp Sci, Hans Meerwein Str 6, D-35043 Marburg, Germany
[2] Univ Marburg, Dept Biol, Karl von Frisch Str 8, D-35043 Marburg, Germany
来源
BIRDS | 2024年 / 5卷 / 01期
关键词
cell segmentation; bird blood analysis; microscopy images; blood smear images; object detection; ornithology; LEUKOCYTE PROFILES; STRESS; CORTICOSTERONE; BIRD;
D O I
10.3390/birds5010004
中图分类号
Q95 [动物学];
学科分类号
071002 ;
摘要
Simple Summary Avian blood analysis is crucial for understanding the health of birds. Currently, avian blood cells are often counted manually in microscopic images, which is time-consuming, expensive, and prone to errors. In this article, we present a novel deep learning approach to automate the quantification of different types of avian red and white blood cells in whole slide images of avian blood smears. Our approach supports ornithologists in terms of hematological data acquisition, accelerates avian blood analysis, and achieves high accuracy in counting different types of avian blood cells.Abstract Avian blood analysis is a fundamental method for investigating a wide range of topics concerning individual birds and populations of birds. Determining precise blood cell counts helps researchers gain insights into the health condition of birds. For example, the ratio of heterophils to lymphocytes (H/L ratio) is a well-established index for comparing relative stress load. However, such measurements are currently often obtained manually by human experts. In this article, we present a novel approach to automatically quantify avian red and white blood cells in whole slide images. Our approach is based on two deep neural network models. The first model determines image regions that are suitable for counting blood cells, and the second model is an instance segmentation model that detects the cells in the determined image regions. The region selection model achieves up to 97.3% in terms of F1 score (i.e., the harmonic mean of precision and recall), and the instance segmentation model achieves up to 90.7% in terms of mean average precision. Our approach helps ornithologists acquire hematological data from avian blood smears more precisely and efficiently.
引用
收藏
页码:48 / 66
页数:19
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