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Diagnostic AI Monitoring

Smarter diagnosis. Real-time alerts.

BY USE CASES

Modern healthcare systems rely increasingly on AI-based diagnostic tools to support physicians in identifying diseases. However, as these models become more complex, it's crucial to monitor their accuracy, stability, and fairness in real time — especially when applied to critical care, radiology, or chronic condition detection.

The Challenge:

  • Diagnostic models degrade over time if data shifts (e.g., new variants, imaging equipment upgrades)

  • Traditional monitoring methods react after failures, not before

  • There's often no real-time alert system for anomalies or drift

  • Misclassifications may not be detected until it’s too late

Quantum-Inspired Solution

Continuous AI Behavior Monitoring

HessQ uses QUBO to track subtle changes in diagnostic outputs and flag when the model is drifting or misclassifying.

Quantum-inspired kernels detect shifts across patient subgroups, ensuring fairness and performance across demographics.

Triggers automatic warnings when diagnostics diverge from expected patterns — before clinical impact occurs.

Continuous AI Behavior Monitoring
Real-Time Risk Alerts

The Results:

  • Early detection of drift (weeks before clinical impact)

  • Improved diagnostic reliability by 20–30%

  • More equitable outcomes across patient groups

  • Increased confidence in AI support tools among physicians