Toward Data-Driven Learning Healthcare Systems in Interventional Radiology: Implementation to Evaluate Venous Stent Patency

We developed a code and data-driven system (learning healthcare system) for gleaning actionable clinical insight from interventional radiology (IR) data. To this end, we constructed a workflow for the collection, processing and analysis of electronic health record (EHR), imaging, and cancer registry data for a cohort of interventional radiology patients seen in the IR Clinic at our institution over a more than 20-year period. As part of this pipeline, we created a database in REDCap (VITAL) to store raw data, as collected by a team of clinical investigators and the Data Coordinating Center at our university. We developed a single, universal pre-processing codebank for our VITAL data in R; in addition, we also wrote widely extendable and easily modifiable analysis code in R that presents results from summary statistics, statistical tests, visualizations, Kaplan-Meier analyses, and Cox proportional hazard modeling, among other analysis techniques. We present our findings for a test case of supra versus infra-inguinal ligament stenting. The developed pre-processing and analysis pipelines were memory and speed-efficient, with both pipelines running in less than 2 min. Three different supra-inguinal ligament veins had a statistically significant improvement in vein diameters post-stenting versus pre-stenting, while no infra-inguinal ligament veins had a statistically significant improvement (due either to an insufficient sample size or a non-significant p value). However, infra-inguinal ligament stenting was not associated with worse restenosis or patency outcomes in either a univariate (summary-statistics and Kaplan-Meier based) or multivariate (Cox proportional hazard model based) analysis.

[1]  P. Harris,et al.  Research electronic data capture (REDCap) - A metadata-driven methodology and workflow process for providing translational research informatics support , 2009, J. Biomed. Informatics.

[2]  R Core Team,et al.  R: A language and environment for statistical computing. , 2014 .

[3]  Erhan Babalik,et al.  Fracture of popliteal artery stents. , 2003, Circulation journal : official journal of the Japanese Circulation Society.

[4]  Narayan Karunanithy,et al.  Stenting Across the Inguinal Ligament in Post Thrombotic Syndrome Using Nitinol Venous Stents: One-year Patency Outcomes , 2017 .

[5]  N. Mantel Evaluation of survival data and two new rank order statistics arising in its consideration. , 1966, Cancer chemotherapy reports.

[6]  Susan C. Weber,et al.  STRIDE - An Integrated Standards-Based Translational Research Informatics Platform , 2009, AMIA.

[7]  Narayan Karunanithy,et al.  Patency Rates After Stenting Across the Inguinal Ligament for Treatment of Post-Thrombotic Syndrome Using Nitinol Venous Stents , 2017 .

[8]  Seshadri Raju,et al.  Venous stenting across the inguinal ligament. , 2008, Journal of vascular surgery.

[9]  C. Magee,et al.  Placement of a flexible endovascular stent across the femoral joint: an in vivo study in the swine model. , 1999, Journal of vascular and interventional radiology : JVIR.

[10]  S. Sparks,et al.  Complications of iliac artery stent deployment. , 1996, Journal of vascular surgery.

[11]  Marc S. Schwartzberg,et al.  Reporting standards for endovascular treatment of lower extremity deep vein thrombosis. , 2006, Journal of vascular and interventional radiology : JVIR.