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深度学习技术在超声心动图图像质量控制中的应用

李欣雨 吴洋 张红梅 尹立雪 彭博 谢盛华

实用医学杂志2024,Vol.40Issue(1):108-113,6.
实用医学杂志2024,Vol.40Issue(1):108-113,6.DOI:10.3969/j.issn.1006-5725.2024.01.019

深度学习技术在超声心动图图像质量控制中的应用

Deep learning technology for quality control of echocardiography images

李欣雨 1吴洋 1张红梅 2尹立雪 2彭博 1谢盛华2

作者信息

  • 1. 西南石油大学计算机科学学院(成都 610500)
  • 2. 四川省医学科学院·四川省人民医院(电子科技大学附属医院)心血管超声及心功能科(成都 610072)||超声心脏电生理学与生物力学四川省重点实验室,四川省心血管病临床医学研究中心(国家心血管疾病临床医学研究中心分中心)(成都 610072)
  • 折叠

摘要

Abstract

Objective To Explore the feasibility and value of deep learning technology for quality control of echocardiography images.Methods A total of 180985 echocardiography images collected from Sichuan Provin-cial People's Hospital between 2015 and 2022 were selected to establish the experimental dataset.Two task models of the echocardiography standard views quality assessment method were trained,including intelligent recognition of seven types of views(six standard views and other views)and quality scoring of six standard views.The predictions of the models on the test set were compared with the results of the sonographer's annotation to assess the accuracy,feasibility,and timeliness of the runs of the two models.Results The overall classification accuracy of the stan-dard views recognition model was 98.90%,the precision was 98.17%,the recall was 98.18%and the F1 value was 98.17%,with the classification results close to the expert recognition level;the average PLCC of the six standard views quality scoring models was 0.933,the average SROCC was 0.929,the average RMSE was 7.95 and the average MAE was 4.83,and the prediction results were in strong agreement with the expert scores.The single-frame inference time after deployment on the 3090 GPU was less than 20 ms,meeting real-time requirements.Conclusion The echocardiography standard views quality assessment method can provide objective and accurate quality assessment results,promoting the development of echocardiography image quality control management towards real-time,objective,and intelligent.

关键词

超声心动图/深度学习/质量控制/切面识别/质量评价

Key words

echocardiography/deep learning/quality control/view recognition/quality assess-ment

分类

医药卫生

引用本文复制引用

李欣雨,吴洋,张红梅,尹立雪,彭博,谢盛华..深度学习技术在超声心动图图像质量控制中的应用[J].实用医学杂志,2024,40(1):108-113,6.

基金项目

四川省科技计划项目(编号:2023YFQ0006) (编号:2023YFQ0006)

电子科技大学中央高校基本科研业务费项目(编号:ZYGX2020ZB038) (编号:ZYGX2020ZB038)

实用医学杂志

OA北大核心CSTPCD

1006-5725

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