Aim
This course trains learners to understand and apply AI within real digital health informatics ecosystems—EHR/EMR data, clinical workflows, wearable streams, imaging reports, and population health dashboards. You will learn how health data is structured, how AI models support decision-making (without replacing clinicians), how to integrate AI outputs into workflows, and how to ensure privacy, safety, and responsible deployment in clinical and public health settings.
Program Objectives
- Understand Digital Health Systems: Learn how EHR/EMR, apps, devices, labs, and dashboards connect.
- Work with Healthcare Data: Understand structured vs unstructured data and common quality issues.
- AI for Clinical Support: Explore risk scoring, triage support, and decision assistance workflows.
- Integration Thinking: Learn how AI outputs are embedded into real clinical processes.
- Interoperability Basics: Understand standards and integration concepts used in healthcare informatics.
- Ethics, Safety & Privacy: Learn responsible AI practices in health, including bias and validation.
- Hands-on Outcome: Build a concept-level AI integration plan or digital health workflow as a capstone.
Program Structure
Module 1: Digital Health Informatics — The Real Ecosystem
- Digital health components: EHR/EMR, LIS, RIS/PACS, telehealth, wearables, apps.
- Clinical workflows: where data is created and where decisions happen.
- Why integration matters: avoiding “AI in isolation.”
- Common failure points: poor data, workflow mismatch, and low trust.
Module 2: Healthcare Data Types & Quality (What AI Learns From)
- Structured data: vitals, labs, medications, diagnoses, procedures.
- Unstructured data: clinical notes, discharge summaries, reports (NLP overview).
- Time-series streams: ICU monitoring, wearables, remote patient monitoring (RPM).
- Data quality issues: missing values, coding variation, bias, and leakage risks.
Module 3: AI Use Cases in Digital Health
- Risk prediction: readmission, sepsis alerts, chronic disease progression (workflow view).
- Triage and prioritization: decision support, not decision replacement.
- Clinical documentation support: summarization, coding assistance (safe boundaries).
- Population health: hotspots, risk stratification, and outreach targeting.
Module 4: Interoperability & Integration Essentials (Conceptual but Practical)
- Why standards exist: consistent data exchange and safer integration.
- HL7/FHIR basics (concept): what they represent and typical integration flows.
- Terminologies overview: ICD, SNOMED, LOINC (why coding consistency matters).
- Data pipelines: ingestion → cleaning → modeling → deployment → monitoring.
Module 5: Building AI-Enabled Clinical Workflows
- Where AI fits: alerts, dashboards, order suggestions, escalation flags.
- Human-in-the-loop design: making clinicians the final decision point.
- Reducing alert fatigue: thresholds, prioritization, and explainability basics.
- Designing for adoption: usability, trust, and clinical relevance.
Module 6: Model Validation, Safety & Performance Monitoring
- Clinical validation vs technical accuracy: what matters in practice.
- Bias and fairness: how models can harm underserved groups.
- Drift monitoring: when models degrade due to changing populations or protocols.
- Documentation: model cards, audit trails, and change management basics.
Module 7: Privacy, Security & Responsible AI in Healthcare
- Protected health information (PHI) mindset and safe handling habits.
- Consent, de-identification basics, and secure data sharing concepts.
- Ethical boundaries: transparency, accountability, and explainability.
- Regulatory awareness (overview): why compliance planning matters.
Module 8: Applied Case Labs (Integration Scenarios)
- Case A: AI triage for emergency department flow.
- Case B: Remote patient monitoring for diabetes/hypertension.
- Case C: Hospital readmission risk scoring integrated into discharge workflow.
- Case D: NLP-based clinical note summarization with safety checks.
Final Project
- Create an AI + Digital Health Integration Blueprint for a chosen use case.
- Include: data sources, workflow map, AI output design, validation plan, privacy safeguards, and monitoring plan.
- Example projects: sepsis early warning dashboard, RPM workflow for cardiac patients, AI-assisted discharge planning, population health risk stratification plan.
Participant Eligibility
- Students and professionals in Healthcare, Public Health, Biomedical, Biotechnology, Nursing, Pharmacy, or allied health
- Health informatics professionals and hospital IT teams
- Data/AI learners interested in healthcare applications (beginner-friendly)
- Clinicians and administrators exploring AI-enabled workflows
Program Outcomes
- Informatics Understanding: Know how health systems and data flows work in real settings.
- Integration Skills: Ability to map where AI fits into clinical workflows safely.
- Responsible Deployment Mindset: Understand validation, bias, privacy, and monitoring needs.
- Use-Case Readiness: Ability to design an AI integration blueprint with realistic constraints.
- Portfolio Deliverable: A complete integration blueprint you can showcase.
Program Deliverables
- Access to e-LMS: Full access to course content, templates, and case materials.
- Workflow Templates: Clinical workflow mapping sheet, AI output design checklist, monitoring plan template.
- Case Exercises: Integration scenarios with decision points and safety checks.
- Project Guidance: Mentor support for final project blueprint creation.
- Final Assessment: Certification after assignments + capstone submission.
- e-Certification and e-Marksheet: Digital credentials provided upon successful completion.
Future Career Prospects
- Digital Health Informatics Associate
- Clinical Data & AI Workflow Analyst
- Health AI Product / Implementation Associate
- Population Health Analytics Associate
- Remote Patient Monitoring (RPM) Program Associate
Job Opportunities
- Hospitals & Health Systems: Clinical informatics, analytics, and digital transformation teams.
- Healthtech Startups: AI-enabled care platforms, telehealth products, and RPM solutions.
- Insurance & Payers: Risk stratification, care management analytics, and utilization management.
- Public Health Programs: Surveillance dashboards, outreach targeting, and program monitoring.
- IT & Consulting: Healthcare integration, interoperability, and digital health implementation roles.









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