赫兰, 路洋, 夏志刚, 谢晓奕, 杜丽丽, 顾淑莲, 马兰, 贺永明, 申锷. 基于深度学习的人工智能模型自动量化超声心动图左心室射血分数初步探索[J]. 实用临床医药杂志, 2024, 28(9): 9-14. DOI: 10.7619/jcmp.20240289
引用本文: 赫兰, 路洋, 夏志刚, 谢晓奕, 杜丽丽, 顾淑莲, 马兰, 贺永明, 申锷. 基于深度学习的人工智能模型自动量化超声心动图左心室射血分数初步探索[J]. 实用临床医药杂志, 2024, 28(9): 9-14. DOI: 10.7619/jcmp.20240289
HE Lan, LU Yang, XIA Zhigang, XIE Xiaoyi, DU Lili, GU Shulian, MA Lan, HE Yongming, SHEN E. A preliminary exploration of a deep learning-based artificial intelligence model for automatic quantification of echocardiographic left ventricular ejection fraction[J]. Journal of Clinical Medicine in Practice, 2024, 28(9): 9-14. DOI: 10.7619/jcmp.20240289
Citation: HE Lan, LU Yang, XIA Zhigang, XIE Xiaoyi, DU Lili, GU Shulian, MA Lan, HE Yongming, SHEN E. A preliminary exploration of a deep learning-based artificial intelligence model for automatic quantification of echocardiographic left ventricular ejection fraction[J]. Journal of Clinical Medicine in Practice, 2024, 28(9): 9-14. DOI: 10.7619/jcmp.20240289

基于深度学习的人工智能模型自动量化超声心动图左心室射血分数初步探索

A preliminary exploration of a deep learning-based artificial intelligence model for automatic quantification of echocardiographic left ventricular ejection fraction

  • 摘要:
    目的 利用超声心动图静态视图, 构建一种基于深度学习的人工智能模型, 以自动量化左心室射血分数(LVEF)。
    方法 将1 902例成人左心室收缩末期和舒张末期的多切面超声心动图视图数据纳入本研究。将收集的数据集分为开发集(1 610例, 其中1 252例用于模型训练, 358例用于参数调整)、内部测试集(177例, 用于内部验证)和外部测试集(115例, 用于外部验证和泛化性检测)。该模型通过精确识别左心室心内膜边界和关键点检查, 实现左心室分割和自动量化LVEF。采用Dice系数评估左心室分割模型的性能; 采用Pearson相关系数和组内相关系数评估自动测量的LVEF与参考标准的相关性和一致性。
    结果 左心室分割模型性能良好, 内部和外部独立测试集的Dice系数均≥ 0.90; 自动测量的LVEF与心脏专家人工测量的一致性中等, 内部测试集的Pearson相关系数为0.46~0.71, 组内相关分析一致性为0.39~0.57; 外部测试集的Pearson相关系数为0.26~0.54, 组内相关分析一致性为0.23~0.50。
    结论 本研究构建了一种性能较好的左心室分割和关键点检测模型, 但初步应用该模型自动定量LVEF的效能一般, 尚需进一步优化算法, 提高模型泛化性。

     

    Abstract:
    Objective To construct a deep learning-based artificial intelligence model to automatically quantify left ventricular ejection fraction (LVEF) using static views of echocardiography.
    Methods The study included data of 1, 902 adults with left ventricular multi-slice echocardiographic views at end-systole and end-diastole. The collected dataset was divided into development set (1, 610 cases, with 1, 252 cases for model training and 358 cases for parameter adjustment), internal test set (177 cases for internal validation), and external test set (115 cases for external validation and generalization testing). The model achieved left ventricular segmentation and automatic quantification of LVEF through precise identification of the left ventricular endocardial boundary and inspection of key points. The Dice coefficient was employed to evaluate the performance of the left ventricular segmentation model, while the Pearson correlation coefficient and the intraclass correlation coefficient were used to assess the correlation and consistency between the automatically measured LVEF and the reference standard.
    Results The left ventricular segmentation model performed well, with Dice coefficients ≥ 0.90 for both the internal and external independent test sets; the agreement between the automatically measured LVEF and the cardiologists' manual measurements was moderate, with Pearson correlation coefficients ranging from 0.46 to 0.71 and intragroup correlation analysis agreements from 0.39 to 0.57 for the internal test set; and Pearson correlation coefficients for the independent external test set were 0.26 to 0.54 and intra-group correlation analysis agreement of 0.23 to 0.50.
    Conclusion In this study, a left ventricular segmentation model with better performance is constructed, and initial application of the model for automatic quantification of LVEF for two-dimensional echocardiography has general performance, which requires further optimisation of the algorithm to improve the model generalisation.

     

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