基于 YOLO 的小胶质细胞活化状态检测

Jichi Liu, Wei Li, Houkun Lyu, Feng Qi
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引用次数: 0

摘要

在脑神经疾病等问题的研究中,需要识别小胶质细胞的激活状态。本文提出了一种基于 YOLOv5 的新型识别网络,用于小胶质细胞激活状态的识别。首先,在头部网络中集成了解耦头部,其次,引入了包含 DenseNet 的新型特征提取模块:DenseNet-C2f 模块和 DenseNet-SimCSPSPPF 模块。随后,采用 Wise-IoU 作为损失函数,并讨论了其中的参数。使用小胶质细胞数据集对网络性能进行了评估。实验结果表明,增强网络的平均精确度从 59.6% 提高到 65.6%。此外,召回率也从 56.3% 提高到 71.5%。这些改进带来了更高效的检测性能,更好地满足了医疗领域对识别小胶质细胞激活状态的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

YOLO-based microglia activation state detection

YOLO-based microglia activation state detection

Recognition of microglia activation state is required in the research of problems such as brain neurological diseases. In this paper, a novel recognition network based on YOLOv5 is proposed for microglia activation state recognition. Firstly, the decoupled head is integrated into the head network, and secondly, novel feature extraction modules containing DenseNet are introduced: the DenseNet-C2f module and the DenseNet-SimCSPSPPF module. Subsequently, Wise-IoU is employed as the loss function, and the parameters therein are discussed. The network performance was evaluated using the microglia dataset. The experimental results show that the average precision of the enhanced network increases from 59.6 to 65.6%. In addition, the recall was improved from 56.3 to 71.5%. These improvements resulted in more efficient detection performance, which better meets the requirements of the medical field for identifying microglia activation states.

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