检验医学 ›› 2026, Vol. 41 ›› Issue (5): 463-469.DOI: 10.3969/j.issn.1673-8640.2026.05.008

• 论著 • 上一篇    下一篇

基于卷积神经网络的人工智能系统在IIF法检测呼吸道感染病原体IgM抗体中的应用

施新明1, 肖开提2, 韩健鹰3, 陈金荣3, 史册1()   

  1. 1.上海交通大学医学院附属瑞金医院检验科,上海 200025
    2.新疆昌吉州吉木萨尔县人民医院检验科,新疆 昌吉回族自治州 831700
    3.上海徒数科技有限公司,上海 200233
  • 收稿日期:2024-10-29 修回日期:2025-12-30 出版日期:2026-05-30 发布日期:2026-05-29
  • 通讯作者: 史册,E-mail:shice1602@163.com。
  • 作者简介:施新明,男,1970年生,学士,主管技师,主要从事临床免疫检验工作。

Application of an artificial intelligence system based on convolutional neural networks in the determination of IgM antibodies for respiratory tract infection pathogens by IIF

SHI Xinming1, XIAO Kaiti2, HAN Jianying3, CHEN Jinrong3, SHI Ce1()   

  1. 1. Department of Clinical Laboratory,Ruijin Hospital,Shanghai Jiao Tong University School of Medicine,Shanghai 200025,China
    2. Department of Clinical Laboratory,Jimsar County People's Hospital,Changji 831700,Xinjiang,China
    3. Shanghai Tushu Technology Co. Ltd.,Shanghai 200233,China
  • Received:2024-10-29 Revised:2025-12-30 Online:2026-05-30 Published:2026-05-29

摘要:

目的 探讨基于卷积神经网络(CNN)技术的人工智能(AI)系统在呼吸道感染病原体IgM抗体荧光图像判读中的应用价值。方法 选取2019年12月17日—2020年4月2日上海交通大学医学院附属瑞金医院呼吸道感染患者3 714例。采用间接免疫荧光(IIF)法检测所有患者血清呼吸道感染病原体[肺炎支原体(MP)、腺病毒(ADV)、呼吸道合胞病毒(RSV)、甲型流感病毒 (IFA)、乙型流感病毒(IFB)和副流感病毒(PIV)1、2、3型]的IgM抗体,并进行人工判读。选取2020年3月1日前的样本,建立标准荧光图像库,采用有监督的机器学习方式对基于CNN技术的AI系统进行训练。以人工判读为金标准,选取2020年3月4日—4月2日797例临床样本的荧光图像用于验证AI系统算法的可靠性。采用Kappa检验和McNemar检验评价人工判读结果与AI系统判断结果的一致性。采用受试者工作特征(ROC)曲线评价AI系统判读的准确性和临界值设置的合理性。结果 AI系统对MP、ADV、RSV、IFA、IFB、PIV的判读结果与人工判读的符合率分别为97.1%、97.1%、96.1%、97.4%、95.1%、97.1%。AI系统判读和人工判读MP、IFA的一致性较高(Kappa值分别为0.898和0.755),其他4种病原体的一致性一般(Kappa值分别为0.679、0.660、0.701、0.748)。AI系统判读6种病原体的敏感性为60.0%~88.7%,特异性为98.6%~99.2%,阳性预测值为78.6%~94.7%,阴性预测值为96.1%~98.4%。AI系统判读MP、ADV、RSV、IFA、IFB、PIV IgM抗体检测结果的曲线下面积(AUC)分别为0.987、0.952、0.954、0.959、0.936、0.957。结论 基于CNN技术的AI系统在判读IIF法呼吸道感染病原体IgM抗体的荧光图像时具有精准、高效、快速的优点,可辅助人工进行IIF法检测结果的判读。

关键词: 卷积神经网络, 人工智能, 间接免疫荧光法, 呼吸道感染病原体

Abstract:

Objective To investigate the application value of an artificial intelligence(AI)system based on convolutional neural network(CNN)technology in the interpretation of fluorescence images of IgM antibodies for respiratory tract infection pathogens. Methods A total of 3 714 patients with respiratory tract infections in Ruijin Hospital of Shanghai Jiao Tong University School of Medicine from December 17,2019 to April 2,2020 were enrolled. Indirect immunofluorescence(IIF)was used to determine IgM antibodies against 9 respiratory tract infection pathogens [Mycoplasma pneumoniae(MP),adenovirus(ADV),respiratory syncytial virus(RSV),influenza A virus(IFA),influenza B virus(IFB)and parainfluenza virus(PIV)type 1,2,and 3],and the results were interpreted manually. Samples collected before March 1,2020 were selected to establish a standard fluorescence image library,and the AI system based on CNN technology was trained using supervised machine learning. The fluorescence images of 797 samples from March 4 to April 2,2020 were used to verify the reliability of the AI system,with manual interpretation as the gold standard. Kappa test and McNemar test were used to evaluate the consistency between the results of manual interpretation and those of the AI system. Receiver operating characteristic(ROC)curve was used to evaluate the accuracy of the AI system's interpretation and the rationality of the cut-off value setting. Results The consistency between the AI system's interpretation and manual interpretation for MP,ADV,RSV,IFA,IFB and PIV were 97.1%,97.1%,96.1%,97.4%,95.1% and 97.1%. The consistency between the AI system's interpretation and manual interpretation for MP and IFA was good(Kappa values were 0.898 and 0.755,respectively),and the consistency for the other 4 pathogens was moderate(Kappa values were 0.679,0.660,0.701 and 0.748,respectively). The sensitivities of the AI system's interpretation for the 6 pathogens were 60.0%-88.7%,the specificities were 98.6%-99.2%,the positive predictive values were 78.6%-94.7%,and the negative predictive values were 96.1%-98.4%. The areas under curves for the AI system's interpretation of IgM antibody determination results for MP,ADV,RSV,IFA,IFB and PIV were 0.987,0.952,0.954,0.959,0.936 and 0.957,respectively. Conclusions The AI system based on CNN technology has the advantages of accuracy,efficiency and rapidity in interpreting fluorescence images of IgM antibodies for respiratory tract infection pathogens by IIF,and it can assist in the interpretation of IIF determination results.

Key words: Convolutional neural network, Artificial intelligence, Indirect immunofluorescence, Respiratory tract infection pathogen

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