Artificial intelligence (AI) is emerging as a powerful force in medicine, and its influence on interventional radiology (IR) is growing rapidly. IR is a clinical specialty focused on performing minimally invasive procedures, guided by imaging, to diagnose and treat disease. Because these procedures rely heavily on imaging interpretation, navigation, and precise manipulation tools, AI and related technologies (like robotics and augmented imaging) have natural applications that improve accuracy and patient outcomes.
Interventional radiologists use imaging modalities – such as ultrasound, CT, fluoroscopy, and MRI – to guide needles, catheters, and other devices to treat various conditions, including tumors, vascular diseases, and bleeding. This procedural nature generates a large volume of imaging and operational data, making the specialty a promising ground for AI tools that can assist with image interpretation, decision support, and workflow optimization.
Before a procedure is performed, clinicians must carefully plan the route and technique based on multiple imaging datasets.
Example Tools & Technologies:
Case Example: In a liver cancer embolization case, software like Emboguide was used to map arterial pathways to multiple lesions using angiographic and CT data, aiding radiologist in navigating complex vessels before treatment.
During the procedure itself, real-time imaging and tool guidance are critical.
AI-Integrated Systems in Use or Development:
Case Example: Robotic-assisted percutaneous needle insertion has been demonstrated in liver tumor ablation contexts, where robotic guidance offered both accuracy and reduced radiation exposure because the needle can be inserted with minimal fluoroscopy.
After a procedure, clinicians must confirm treatment success and identify complications early.
AI Contributions:
Case Example: AI image processing of post-ablation CT scans can help distinguish between normal post-procedure changes and early residual disease, enabling faster clinical decisions.
While many AI tools are developed for diagnostic radiology, several have relevance or emerging use within or alongside interventional radiology:
These tools don’t “do the procedure” but enhance the informational context that interventional radiologists rely on during planning and evaluation.
In cases of hepatic tumors treated with microwave or radiofrequency ablation, AI-enhanced imaging helped clinicians plan ablation zones by integrating pre-procedural MRI or CT with real-time imaging to optimize antenna placement and estimate resulting necrotic zones. Software like Philips’ fusion systems and CBCT tools supports this integrated workflow.
AI-enhanced segmentation and pattern detection can aid complex endovascular cases by highlighting vessel stenosis or aneurysmal changes on CTA or fluoroscopy. While these often fall under diagnostic radiology AI, the outputs directly assist IR teams in planning and navigating interventional devices.
Despite progress, several hurdles slow widespread clinical adoption:
With AI helping expand what interventional radiology can treat, more patients are discovering alternatives to traditional surgery. If you’re considering a minimally invasive, image-guided procedure, working with the right interventional radiologist matters.
Find an interventional radiologist on Doctorize to explore specialists near you and learn more about your options.
0 comments