Bone Marrow Cell Recognition: Training Deep Object Detection with A New
Loss Function
- URL: http://arxiv.org/abs/2110.12647v1
- Date: Mon, 25 Oct 2021 05:17:04 GMT
- Title: Bone Marrow Cell Recognition: Training Deep Object Detection with A New
Loss Function
- Authors: Dehao Huang, Jintao Cheng, Rui Fan, Zhihao Su, Qiongxiong Ma, Jie Li
- Abstract summary: This paper proposes a bone marrow cell detection algorithm based on the YOLOv5 network, trained by minimizing a novel loss function.
The proposed novel loss function considers the similarity between bone marrow cell classes, increases the penalty for prediction errors between dissimilar classes, and reduces the penalty for prediction errors between similar classes.
The results show that the proposed loss function effectively improves the algorithm's performance, and the proposed bone marrow cell detection algorithm has achieved better performance than other cell detection algorithms.
- Score: 10.34651590388805
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: For a long time, bone marrow cell morphology examination has been an
essential tool for diagnosing blood diseases. However, it is still mainly
dependent on the subjective diagnosis of experienced doctors, and there is no
objective quantitative standard. Therefore, it is crucial to study a robust
bone marrow cell detection algorithm for a quantitative automatic analysis
system. Currently, due to the dense distribution of cells in the bone marrow
smear and the diverse cell classes, the detection of bone marrow cells is
difficult. The existing bone marrow cell detection algorithms are still
insufficient for the automatic analysis system of bone marrow smears. This
paper proposes a bone marrow cell detection algorithm based on the YOLOv5
network, trained by minimizing a novel loss function. The classification method
of bone marrow cell detection tasks is the basis of the proposed novel loss
function. Since bone marrow cells are classified according to series and
stages, part of the classes in adjacent stages are similar. The proposed novel
loss function considers the similarity between bone marrow cell classes,
increases the penalty for prediction errors between dissimilar classes, and
reduces the penalty for prediction errors between similar classes. The results
show that the proposed loss function effectively improves the algorithm's
performance, and the proposed bone marrow cell detection algorithm has achieved
better performance than other cell detection algorithms.
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