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AI-Based Prediction Model for Iliofemoral DVT Thrombolysis

R

Rajaie Cardiovascular Medical and Research Center

Status

Active, not recruiting

Conditions

Deep Vein Thrombosis of the Lower Extremities

Treatments

Device: Rheolytic thrombectomy

Study type

Observational

Funder types

Other

Identifiers

NCT07181083
IR.RHC.REC.1403.013

Details and patient eligibility

About

This prospective single-arm cohort study aims to develop an AI-powered prediction model for treatment outcomes in patients with acute extensive iliofemoral deep vein thrombosis (IF-DVT) undergoing stent-free pharmacomechanical thrombolysis. The study addresses the current lack of validated tools for patient selection and outcome prediction in catheter-directed interventions for proximal DVT.

Thirty consecutive adult patients with MRV-confirmed acute IF-DVT will undergo pharmacomechanical thrombolysis using the AngioJet ZelanteDVT system with adjunctive rtPA administration.

The primary objective is to develop a convolutional neural network (CNN) trained on serial MRV imaging data to predict three-month venous recanalization success. MRV acquisitions occur at baseline, predischarge, and three-month follow-up. Ground truth segmentation will be performed by an experienced radiologist using 3D Slicer, with semi-automated propagation across the dataset. Feature extraction will include geometric metrics, radiomic texture analysis, and morphological characteristics of both thrombus and vessel architecture.

Secondary endpoints include acute kidney injury incidence (a significant concern with rheolytic thrombectomy due to hemolysis-induced nephrotoxicity), post-thrombotic syndrome development assessed via Villalta scoring, and various safety outcomes including major bleeding per ISTH criteria.

The study protocol incorporates rigorous monitoring for AKI using KDIGO criteria, with systematic evaluation of renal function, hemolysis markers, and electrolyte balance. Hydration protocols and nephroprotective measures will be standardized, though specific strategies require clarification from the nephrology team.

This research addresses critical gaps in evidence-based patient selection for invasive DVT treatment, particularly following the mixed results of the ATTRACT trial. The AI prediction model could enable personalized treatment decisions, potentially improving the risk-benefit ratio of pharmacomechanical interventions while reducing unnecessary procedures in patients unlikely to benefit.

Enrollment

30 patients

Sex

All

Ages

18+ years old

Volunteers

No Healthy Volunteers

Inclusion criteria

  • All consecutive adult (≥18 years) patients with an MRV-based diagnosis of acute IF- DVT
  • Symptomatic patients with severe pain and\or leg swelling more than 5 cm
  • Willing to participate in the study

Exclusion criteria

  • Previous history of VTE
  • Presence of DVT syndrome for more than 21 days
  • Terminal systemic disease requiring palliative treatment
  • Active bleeding
  • History of hemorrhagic stroke
  • Major fibrinolytic contraindication
  • Any hereditary coagulopathy disorders
  • Patients with baseline renal dysfunction with an estimated glomerular filtration rate (eGFR) of < 60 ml/min/1.73m2 due to Cockroft-Gault formula based on the creatinine level at the time of admission
  • Having any underlying condition that makes the patient unsuitable for MRV and/or rheolytic thrombectomy procedure (e.g., allergy to contrast agent, claustrophobia)
  • Having any underlying disabling condition that necessitates a prolonged complete bed rest prohibiting early ambulation
  • Low-quality MRV imaging or motion artifact (exclusion criteria for the imaging sub-studies)

Trial design

30 participants in 1 patient group

Extensive iliofemoral DVT
Description:
Patients with extensive ioliofemoral DVT candidate for pharmaco-mechanical thrombectomy
Treatment:
Device: Rheolytic thrombectomy

Trial contacts and locations

1

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Data sourced from clinicaltrials.gov

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