Innovations in AI for Diagnostic & Medical Devices
Aim
This course explains how AI is being integrated into diagnostic systems and medical devices. Participants learn how AI-enabled devices are designed, validated, monitored, and governed—covering data, performance metrics, safety controls, and real-world deployment considerations.
Who This Course Is For
- Medical device and diagnostics professionals (R&D, QA/RA, product, clinical teams)
- Clinicians and clinical engineers evaluating AI-enabled tools
- HealthTech founders and product managers building diagnostic solutions
- Data/AI teams working on imaging, signals, and device analytics
- Students and researchers in biomedical engineering and digital health
Prerequisites
- No coding required (optional demos can be included)
- Basic understanding of diagnostics or device workflows is helpful
- Interest in safe and compliant healthcare technology
What You’ll Learn
- Where AI fits in diagnostics: screening, triage, detection, and decision support
- AI device data: imaging, biosignals (ECG/EEG), labs, sensor streams, and device logs
- Model types (overview): classification, segmentation, anomaly detection, and time-series
- Performance metrics: sensitivity, specificity, PPV/NPV, AUROC, calibration concepts
- Clinical validation basics: datasets, reference standards, and evaluation design (overview)
- Safety and reliability: failure modes, human oversight, and alert design
- Bias and generalization: subgroup checks, site variability, and robustness
- Monitoring: drift, data shifts, and post-deployment performance tracking
- Governance: documentation, audit trails, privacy, and change control
Program Structure
Module 1: AI in Diagnostics and Medical Devices (Overview)
- How AI-enabled diagnostics differ from traditional software features
- Device workflows: from data capture to clinical output
- Key adoption drivers and common pitfalls
Module 2: Data and Signal Fundamentals
- Imaging vs biosignals vs sensor streams: characteristics and risks
- Data quality checks: noise, artifacts, missingness, labeling consistency
- Reference standards and ground truth basics
Module 3: Model Approaches for Diagnostic Tasks
- Detection and classification workflows
- Segmentation and measurement support (overview)
- Anomaly detection for rare conditions and device faults
Module 4: Evaluation and Performance Reporting
- Metrics for diagnostic systems (sensitivity/specificity, PPV/NPV)
- Calibration and threshold selection concepts
- Reporting performance by subgroup and clinical setting
Module 5: Clinical Validation and Deployment Readiness
- Validation plan: data splits, test sets, external validation (overview)
- Workflow integration: clinician oversight and escalation pathways
- Usability, interpretability, and documentation for trust
Module 6: Safety, Reliability, and Risk Management
- Failure modes, error handling, and safe defaults
- Managing false alarms and alert fatigue
- Incident response and corrective action planning
Module 7: Post-Deployment Monitoring
- Drift detection and data shift monitoring
- Performance tracking, feedback loops, and periodic reviews
- Controlled updates and change management
Module 8: Governance and Compliance Readiness
- Documentation set: model cards, validation summaries, audit trails
- Privacy and security basics for device data
- Change control and versioning for AI-enabled devices
Tools & Templates Covered
- Diagnostic AI evaluation checklist (metrics + thresholds + reporting)
- Clinical validation plan outline (overview format)
- Safety and risk checklist (failure modes + controls)
- Monitoring plan template (drift + performance + review cadence)
- Governance checklist (documentation + change control)
Outcomes
- Understand AI capabilities and limitations in diagnostics and medical devices
- Define data, validation, and performance reporting requirements
- Plan safety controls and post-deployment monitoring
- Create a governance-ready approach for AI-enabled device deployment
Certificate Criteria (Optional)
- Complete learning checkpoints
- Submit a short device-AI plan (use-case + metrics + validation + monitoring)








