Deep learning framework for interpretable quality control of echocardiography video

被引:0
|
作者
Du, Liwei [1 ]
Xue, Wufeng [1 ]
Qi, Zhanru [2 ]
Shi, Zhongqing [2 ]
Guo, Guanjun [2 ]
Yang, Xin [1 ]
Ni, Dong [1 ]
Yao, Jing [2 ,3 ,4 ]
机构
[1] Shenzhen Univ, Med Sch, Sch Biomed Engn, Shenzhen, Peoples R China
[2] Nanjing Univ, Affiliated Hosp, Dept Ultrasound Med, Med Sch, Nanjing, Peoples R China
[3] Nanjing Univ, Affiliated Hosp, Med Imaging Ctr, Med Sch, Nanjing, Peoples R China
[4] Yizheng Hosp, Nanjing Drum Tower Hosp Grp, Yangzhou, Peoples R China
关键词
echocardiography video; multitask network; quality control; real-time; visualized explanation;
D O I
10.1002/mp.17722
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Background: Echocardiography (echo) has become an indispensable tool in modern cardiology, offering real-time imaging that helps clinicians evaluate heart function and identify abnormalities. Despite these advantages, the acquisition of high-quality echo is time-consuming, labor-intensive, and highly subjective. Purpose: The objective of this study is to introduce a comprehensive system for the automated quality control (QC) of echo videos. This system focuses on real-time monitoring of key imaging parameters, reducing the variability associated with manual QC processes. Methods: Our multitask network analyzes cardiac cycle integrity, anatomical structures (AS), depth, cardiac axis angle (CAA), and gain. The network consists of a shared convolutional neural network (CNN) backbone for spatial feature extraction, along with three additional modules: (1) a bidirectional long short-term memory (Bi-LSTM) phase analysis (PA) module for detecting cardiac cycles and QC targets; (2) an oriented object detection head for AS analysis and depth/CAA quantification; and (3) a classification head for gain analysis. The model was trained and tested on a dataset of 1331 echo videos. Through model inference, a comprehensive score is generated, offering easily interpretable insights. Results: The model achieved a mean average precision of 0.962 for AS detection, with PA yielding average frame errors of 1.603 +/-+/- 1.181 (end-diastolic) and 1.681 +/-+/- 1.332 (end-systolic). The gain classification model demonstrated robust performance (Area Under the Curve > 0.98), and the overall processing speed reached 112.4 frames per second. On 203 randomly collected echo videos, the model achieved a kappa coefficient of 0.79 for rating consistency compared to expert evaluations CONCLUSIONS: Given the model's performance on the clinical dataset and its consistency with expert evaluations, our results indicate that the model not only delivers real-time, interpretable quality scores but also demonstrates strong clinical reliability.
引用
收藏
页数:15
相关论文
共 50 条
  • [41] A fast interpretable adaptive meta-learning enhanced deep learning framework for diagnosis of diabetic retinopathy
    Wang, Maofa
    Gong, Qizhou
    Wan, Quan
    Leng, Zhixiong
    Xu, Yanlin
    Yan, Bingchen
    Zhang, He
    Huang, Hongliang
    Sun, Shaohua
    EXPERT SYSTEMS WITH APPLICATIONS, 2024, 244
  • [42] Hierarchical framework for interpretable and specialized deep reinforcement learning-based predictive maintenance
    Abbas, Ammar N.
    Chasparis, Georgios C.
    Kelleher, John D.
    DATA & KNOWLEDGE ENGINEERING, 2024, 149
  • [43] Retrosynthesis prediction with an interpretable deep-learning framework based on molecular assembly tasks
    Yu Wang
    Chao Pang
    Yuzhe Wang
    Junru Jin
    Jingjie Zhang
    Xiangxiang Zeng
    Ran Su
    Quan Zou
    Leyi Wei
    Nature Communications, 14 (1)
  • [44] Retrosynthesis prediction with an interpretable deep-learning framework based on molecular assembly tasks
    Wang, Yu
    Pang, Chao
    Wang, Yuzhe
    Jin, Junru
    Zhang, Jingjie
    Zeng, Xiangxiang
    Su, Ran
    Zou, Quan
    Wei, Leyi
    NATURE COMMUNICATIONS, 2023, 14 (01)
  • [45] Framework for Control and Deep Reinforcement Learning in Traffic
    Wu, Cathy
    Parvate, Kanaad
    Kheterpal, Nishant
    Dickstein, Leah
    Mehta, Ankur
    Vinitsky, Eugene
    Bayen, Alexandre M.
    2017 IEEE 20TH INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS (ITSC), 2017,
  • [46] An uncertainty-based interpretable deep learning framework for predicting breast cancer outcome
    Hua Chai
    Siyin Lin
    Junqi Lin
    Minfan He
    Yuedong Yang
    Yongzhong OuYang
    Huiying Zhao
    BMC Bioinformatics, 25
  • [47] A robust and interpretable deep learning framework for multi-modal registration via keypoints
    Wang, Alan Q.
    Yu, Evan M.
    V. Dalca, Adrian
    Sabuncu, Mert R.
    MEDICAL IMAGE ANALYSIS, 2023, 90
  • [48] An uncertainty-based interpretable deep learning framework for predicting breast cancer outcome
    Chai, Hua
    Lin, Siyin
    Lin, Junqi
    He, Minfan
    Yang, Yuedong
    OuYang, Yongzhong
    Zhao, Huiying
    BMC BIOINFORMATICS, 2024, 25 (01)
  • [49] QARC: Video Quality Aware Rate Control for Real-Time Video Streaming based on Deep Reinforcement Learning
    Huang, Tianchi
    Zhang, Rui-Xiao
    Zhou, Chao
    Sun, Lifeng
    PROCEEDINGS OF THE 2018 ACM MULTIMEDIA CONFERENCE (MM'18), 2018, : 1208 - 1216
  • [50] Monkeypox Diagnosis With Interpretable Deep Learning
    Ahsan, Md. Manjurul
    Ali, Md. Shahin
    Hassan, Md. Mehedi
    Abdullah, Tareque Abu
    Gupta, Kishor Datta
    Bagci, Ulas
    Kaushal, Chetna
    Soliman, Naglaa F.
    IEEE ACCESS, 2023, 11 : 81965 - 81980