Lower Extremity Bypass Surveillance and Peak Systolic Velocities Value Prediction Using Recurrent Neural Networks.

Authors

Luo X,Tahabi FM,Rollins DM,Sawchuk AP

Affiliations (4)

  • Department of Management Science and Information Systems, Oklahoma State University, Oklahoma, USA.
  • Biostatistics and Health Data Science, Indiana University School of Medicine, Indiana, USA.
  • Vascular Diagnostic Center, Indiana University Health, Indiana, USA.
  • Division of Vascular Surgery, Indiana University School of Medicine, Indiana, USA.

Abstract

Routine duplex ultrasound surveillance is recommended after femoral-popliteal and femoral-tibial-pedal vein bypass grafts at various post-operative intervals. Currently, there is no systematic method for bypass graft surveillance using a set of peak systolic velocities (PSVs) collected during these exams. This research aims to explore the use of recurrent neural networks to predict the next set of PSVs, which can then indicate occlusion status. Recurrent neural network models were developed to predict occlusion and stenosis based on one to three prior sets of PSVs, with a sequence-to-sequence model utilized to forecast future PSVs within the stent graft and nearby arteries. The study employed 5-fold cross-validation for model performance comparison, revealing that the BiGRU model outperformed BiLSTM when two or more sets of PSVs were included, demonstrating that increasing duplex ultrasound exams improve prediction accuracy and reduces error rates. This work establishes a basis for integrating comprehensive clinical data, including demographics, comorbidities, symptoms, and other risk factors, with PSVs to enhance lower extremity bypass graft surveillance predictions.

Topics

Neural Networks, ComputerLower ExtremityUltrasonography, Doppler, DuplexGraft Occlusion, VascularJournal Article

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