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SLENet: A Novel Multiscale CNN-Based Network for Detecting the Rats Estrous Cycle

SLENet: A Novel Multiscale CNN-Based Network for Detecting the Rats Estrous Cycle

来源:Arxiv_logoArxiv
英文摘要

In clinical medicine, rats are commonly used as experimental subjects. However, their estrous cycle significantly impacts their biological responses, leading to differences in experimental results. Therefore, accurately determining the estrous cycle is crucial for minimizing interference. Manually identifying the estrous cycle in rats presents several challenges, including high costs, long training periods, and subjectivity. To address these issues, this paper proposes a classification network-Spatial Long-distance EfficientNet (SLENet). This network is designed based on EfficientNet, specifically modifying the Mobile Inverted Bottleneck Convolution (MBConv) module by introducing a novel Spatial Efficient Channel Attention (SECA) mechanism to replace the original Squeeze Excitation (SE) module. Additionally, a Non-local attention mechanism is incorporated after the last convolutional layer to enhance the network's ability to capture long-range dependencies. The dataset used 2,655 microscopic images of rat vaginal epithelial cells, with 531 images in the test set. Experimental results indicate that SLENet achieved an accuracy of 96.31%, outperforming baseline EfficientNet model (94.2%). This finding provide practical value for optimizing experimental design in rat-based studies such as reproductive and pharmacological research, but this study is limited to microscopy image data, without considering other factors like temporal patterns, thus, incorporating multi-modal input is necessary for future application.

Qinyang Wang、Hoileong Lee、Xiaodi Pu、Yuanming Lai、Yiming Ma

基础医学生物科学研究方法、生物科学研究技术计算技术、计算机技术

Qinyang Wang,Hoileong Lee,Xiaodi Pu,Yuanming Lai,Yiming Ma.SLENet: A Novel Multiscale CNN-Based Network for Detecting the Rats Estrous Cycle[EB/OL].(2025-07-25)[2025-08-10].https://arxiv.org/abs/2507.19566.点此复制

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