Digital twin and artificial intelligence technologies for predictive planning of endovascular procedures

Semin Vasc Surg. 2024 Sep;37(3):306-313. doi: 10.1053/j.semvascsurg.2024.07.002. Epub 2024 Jul 17.

Abstract

Current planning of aortic and peripheral endovascular procedures is based largely on manual measurements performed from the 3-dimensional reconstruction of preoperative computed tomography scans. Assessment of device behavior inside patient anatomy is often difficult, and available tools, such as 3-dimensional-printed models, have several limitations. Digital twin (DT) technology has been used successfully in automotive and aerospace industries and applied recently to endovascular aortic aneurysm repair. Artificial intelligence allows the treatment of large amounts of data, and its use in medicine is increasing rapidly. The aim of this review was to present the current status of DTs combined with artificial intelligence for planning endovascular procedures. Patient-specific DTs of the aorta are generated from preoperative computed tomography and integrate aorta mechanical properties using finite element analysis. The same methodology is used to generate 3-dimensional models of aortic stent-grafts and simulate their deployment. Post processing of DT models is then performed to generate multiple parameters related to stent-graft oversizing and apposition. Machine learning algorithms allow parameters to be computed into a synthetic index to predict Type 1A endoleak risk. Other planning and sizing applications include custom-made fenestrated and branched stent-grafts for complex aneurysms. DT technology is also being investigated for planning peripheral endovascular procedures, such as carotid artery stenting. DT provides detailed information on endovascular device behavior. Analysis of DT-derived parameters with machine learning algorithms may improve accuracy in predicting complications, such as Type 1A endoleaks.

Keywords: Aortic Aneurysm; Artificial Intelligence; Carotid Stenting; Computer Simulation; Digital Twin; Endoleak; Machine learning; Stent-graft.

Publication types

  • Review

MeSH terms

  • Aortography
  • Artificial Intelligence
  • Blood Vessel Prosthesis Implantation* / adverse effects
  • Blood Vessel Prosthesis Implantation* / instrumentation
  • Blood Vessel Prosthesis*
  • Clinical Decision-Making
  • Computed Tomography Angiography*
  • Endovascular Procedures* / adverse effects
  • Endovascular Procedures* / instrumentation
  • Humans
  • Machine Learning
  • Models, Cardiovascular
  • Patient Selection
  • Patient-Specific Modeling
  • Predictive Value of Tests*
  • Printing, Three-Dimensional
  • Prosthesis Design*
  • Radiographic Image Interpretation, Computer-Assisted*
  • Risk Factors
  • Stents*
  • Surgery, Computer-Assisted
  • Treatment Outcome