论文检索
期刊
全部知识仓储预印本开放期刊机构
高级检索

基于卷积神经网络的采血管铝箔帽状态检测方法OACSTPCD

Aluminum Foil Cap State Detection Method for Blood Collection Tubes Based on Convolutional Neural Networks

中文摘要英文摘要

目的 针对医学实验室自动化生化免疫检验流水线识别准确率和识别速度要求极高、采血管类型众多、采血管铝箔帽状态复杂以及管壁挂液干扰严重的问题,提出一种基于卷积神经网络的采血管铝箔帽状态检测方法,以实现采血管铝箔帽状态的识别.方法 首先采用轻量化的模型设计思想,通过减少模型的深度降低参数量和计算量,同时引入通道注意力机制,以提高样本特征的提取能力;其次采用Focal Loss损失函数解决难例样本挖掘的问题,进一步优化模型的性能;最后,通过教师网络指导学生网络进行知识蒸馏,得到最终轻量化的小模型.结果 对学生网络模型的轻量化设计使该检测方法适用于资源有限的边缘计算设备,模型的参数量仅为0.354 M,计算量为0.165 GFlops,对Jetson Nano设备的识别速度为3.42 ms,且其在复杂的采血管情况下,识别准确率可达100%.结论 本研究充分验证了该模型的轻量化、高效性和实用性,说明基于轻量化卷积神经分类网络模型的检测方法可准确识别采血管铝箔帽状态,是医学实验室自动化生化免疫检验流水线中采血管铝箔帽状态检测的解决方案.

Objective To propose a aluminum foil cap state detection method for blood collection tubes based on convolutional neural networks,to realize the recognition of the state of the aluminum foil cap,aiming at the challenges of high identification accuracy and speed requirements,diverse types of blood collection tubes,complicated state of aluminum foil cap state detection,and the interference from liquid on tube walls in the automated biochemical immunoassay pipelines within medical laboratories.Methods Firstly,a lightweight model design approach was adopted,which reduced the depth of the model to decrease the number of parameters and computational requirements.Additionally,channel attention mechanism was introduced to enhance the feature extraction capability of the samples.Moreover,Focal Loss was used to address the problem of mining difficult samples,further optimizing the model's performance.Finally,a teacher-student network was trained to perform knowledge distillation,resulting in the final lightweight and compact model.Results The detection method due to the lightweight design of the student network model was suitable for edge computing devices with limited resources.The parameter number of the model was only 0.354 M,the computation amount was 0.165 GFlops,the recognition speed of the Jetson Nano device was 3.42 ms,and the recognition accuracy reached 100%in the case of complex collection of blood vessels.Conclusion This study fully validates the lightweight,efficient,and practical nature of the model,indicating that the detection method based on a lightweight convolutional neural networks model can accurately identify the status of blood collection tube aluminum foil cap.It has become a solution for detecting the status of blood collection tube aluminum foil caps in the automated biochemical immunoassay pipelines within medical laboratories.

侯剑平;赵万里;孙千鹏;王超;刘聪

安图实验仪器(郑州)有限公司,河南 郑州 450016

预防医学

采血管铝箔帽状态检测;卷积神经网络;轻量化分类网络模型;边缘侧

aluminum foil cap state detection for blood collection tube;convolutional neural networks;lightweight classification network model;edge side

《中国医疗设备》 2024 (003)

7-13,25 / 8

国家重点研发计划(2022YFC2406400).

10.3969/j.issn.1674-1633.2024.03.002

评论

下载量:0
点击量:0