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Oncavo AI

AI-assisted oncology imaging designed to enhance diagnostic confidence, reduce clinical workload, and support timely, consistent cancer detection.

Oncology Imaging Clinical Decision Support Medical AI Radiology Workflows

The Challenge: A Growing Cancer Diagnostic Burden

Cancer incidence continues to rise globally, placing unprecedented pressure on healthcare systems and diagnostic teams. With millions of new cases diagnosed each year and a significant projected increase in the coming decades, clinicians face growing case volumes and increasingly complex imaging workflows.

Persistent shortages of specialized experts contribute to diagnostic delays, workflow bottlenecks, and variability in interpretation— particularly in high-stakes oncology imaging where early detection directly impacts patient outcomes.

Cancer diagnostic burden
Oncavo AI solution

The Solution: AI-Assisted Oncology Imaging

Oncavo provides an AI-powered clinical decision-support platform designed to augment—not replace—clinical expertise. Advanced machine-learning models analyze medical imaging studies to identify and risk-rank suspicious findings.

Visual overlays, confidence scores, and structured insights improve diagnostic consistency, prioritize high-risk cases, and reduce manual workload—while final interpretation always remains with the clinician.

How It Works: Oncavo System Architecture

Oncavo integrates seamlessly into existing clinical workflows through an end-to-end pipeline. Imaging data from CT, MRI, and ultrasound undergo normalization and preprocessing to ensure consistency and quality across diverse sources.

The AI analysis engine performs feature extraction, multi-tissue inference, and quantitative risk scoring. Results are delivered via an intuitive clinical interface, maintaining full transparency and clinician oversight at every step.

Oncavo system architecture

Deploy Oncavo AI

Oncavo AI is designed for integration across hospitals, radiology departments, diagnostic centers, and healthcare networks. The platform scales from pilot clinical evaluations to enterprise-grade deployment within existing imaging workflows.