BMC Pediatrics (Jun 2021)

Prediction of arrhythmia after intervention in children with atrial septal defect based on random forest

  • Hongxiao Sun,
  • Yuhai Liu,
  • Bo Song,
  • Xiaowen Cui,
  • Gang Luo,
  • Silin Pan

DOI
https://doi.org/10.1186/s12887-021-02744-7
Journal volume & issue
Vol. 21, no. 1
pp. 1 – 9

Abstract

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Abstract Background Using random forest to predict arrhythmia after intervention in children with atrial septal defect. Methods We constructed a prediction model of complications after interventional closure for children with atrial septal defect. The model was based on random forest, and it solved the need for postoperative arrhythmia risk prediction and assisted clinicians and patients’ families to make preoperative decisions. Results Available risk prediction models provided patients with specific risk factor assessments, we used Synthetic Minority Oversampling Technique algorithm and random forest machine learning to propose a prediction model, and got a prediction accuracy of 94.65 % and an Area Under Curve value of 0.8956. Conclusions Our study was based on the model constructed by random forest, which can effectively predict the complications of arrhythmia after interventional closure in children with atrial septal defect.

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