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Atrial Septal Defect Detection in Children Based on Ultrasound Video Using Multiple Instances Learning

  • Yiman Liu
  • , Qiming Huang
  • , Xiaoxiang Han
  • , Tongtong Liang
  • , Zhifang Zhang
  • , Xiuli Lu
  • , Bin Dong
  • , Jiajun Yuan
  • , Yan Wang
  • , Menghan Hu
  • , Jinfeng Wang
  • , Angelos Stefanidis
  • , Jionglong Su*
  • , Jiangang Chen*
  • , Qingli Li*
  • , Yuqi Zhang*
  • *Corresponding author for this work
  • Shanghai Jiao Tong University
  • Shanghai Engineering Research Center of Intelligence Pediatrics (SERCIP)
  • East China Normal University
  • Xi’an Jiao tong-Liverpool University
  • University of Shanghai for Science and Technology
  • Shanghai Minhang Center for Disease Control and Prevention
  • Child Health Hospital

Research output: Contribution to journalArticlepeer-review

Abstract

Thoracic echocardiography (TTE) can provide sufficient cardiac structure information, evaluate hemodynamics and cardiac function, and is an effective method for atrial septal defect (ASD) examination. This paper aims to study a deep learning method based on cardiac ultrasound video to assist in ASD diagnosis. We chose four standard views in pediatric cardiac ultrasound to identify atrial septal defects; the four standard views were as follows: subcostal sagittal view of the atrium septum (subSAS), apical four-chamber view (A4C), the low parasternal four-chamber view (LPS4C), and parasternal short-axis view of large artery (PSAX). We enlist data from 300 children patients as part of a double-blind experiment for five-fold cross-validation to verify the performance of our model. In addition, data from 30 children patients (15 positives and 15 negatives) are collected for clinician testing and compared to our model test results (these 30 samples do not participate in model training). In our model, we present a block random selection, maximal agreement decision, and frame sampling strategy for training and testing respectively, resNet18 and r3D networks are used to extract the frame features and aggregate them to build a rich video-level representation. We validate our model using our private dataset by five cross-validation. For ASD detection, we achieve 89.33±3.13 AUC, 84.95±3.88 accuracy, 85.70±4.91 sensitivity, 81.51±8.15 specificity, and 81.99±5.30 F1 score. The proposed model is a multiple instances learning-based deep learning model for video atrial septal defect detection which effectively improves ASD detection accuracy when compared to the performances of previous networks and clinical doctors.

Original languageEnglish
Pages (from-to)965-975
Number of pages11
JournalJournal of Imaging Informatics in Medicine
Volume37
Issue number3
DOIs
StatePublished - Jun 2024

Keywords

  • Atrial septal defect
  • Deep learning
  • Multiple instances learning
  • Ultrasound video

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