Aim
This course focuses on applying Artificial Intelligence to improve healthcare and clinical analytics. Participants learn how AI supports better patient insights, risk prediction, operational efficiency, and data-driven clinical decision-making. The program emphasizes practical workflows, responsible data use, and reliable analytics for real healthcare environments.
Program Objectives
- Understand how AI enhances healthcare analytics and clinical intelligence.
- Learn to prepare and analyze clinical and hospital datasets.
- Develop predictive models for patient risk and outcome trends.
- Apply AI methods to clinical text analysis and reporting workflows.
- Use analytics for hospital operations and resource optimization.
- Follow ethical, privacy, and governance standards in healthcare AI.
Program Structure
Module 1: Foundations of Healthcare Analytics and AI
- Understanding clinical data and why healthcare analytics is unique.
- Key AI use cases in hospitals, clinics, and public health systems.
- Connecting analytics outputs to real clinical decisions.
Module 2: Healthcare Data Preparation and Management
- Clinical data sources including EHRs, lab results, vitals, and outcomes.
- Handling missing data, coding inconsistencies, and noisy records.
- Privacy protection, data security, and compliance basics.
Module 3: Exploratory Analytics and Feature Design
- Building meaningful features from patient history and clinical events.
- Identifying patient cohorts and risk groups.
- Creating dashboards and summary metrics for clinical reporting.
Module 4: Predictive Modeling for Clinical Outcomes
- Risk prediction for readmissions, complications, and deterioration.
- Choosing suitable models for healthcare prediction tasks.
- Evaluating performance using clinically relevant metrics.
Module 5: Time-Based Analysis and Monitoring
- Tracking trends in admissions, infections, and care demand.
- Using time-based indicators for alerts and monitoring.
- Supporting early intervention through analytics.
Module 6: Clinical Text Analytics
- Analyzing clinical notes, reports, and discharge summaries.
- Extracting symptoms, conditions, and treatment information.
- Supporting documentation and reporting workflows.
Module 7: Operational Analytics for Healthcare Facilities
- Analyzing bed occupancy, staffing needs, and patient flow.
- Forecasting resource requirements and service demand.
- Identifying inefficiencies and workflow bottlenecks.
Module 8: Explainability, Validation, and Safety
- Communicating analytics results to clinicians and administrators.
- Validating models across populations and time periods.
- Managing uncertainty and ensuring patient safety.
Module 9: Ethics, Bias, and Governance
- Recognizing bias and fairness issues in healthcare analytics.
- Responsible reporting and documentation practices.
- Governance, monitoring, and audit readiness.
Final Project
- Design an AI-driven healthcare analytics solution.
- Define data requirements, workflow, evaluation metrics, and safeguards.
- Example projects include readmission risk analysis, resource forecasting, or clinical reporting dashboards.
Participant Eligibility
- Healthcare professionals and clinical researchers.
- Data analysts and data scientists interested in healthcare.
- Students in public health, biomedical sciences, and healthcare management.
- Professionals involved in hospital operations and analytics.
Program Outcomes
- Ability to design and interpret healthcare analytics solutions.
- Understanding of predictive modeling in clinical contexts.
- Confidence in handling healthcare data responsibly.
- Readiness to support data-driven healthcare decisions.
Program Deliverables
- Access to e-LMS learning materials.
- Hands-on analytics assignments.
- Final project submission with evaluation.
- Final examination and certification.
- Digital certificate and marksheet.
Future Career Prospects
- Healthcare Data Analyst
- Clinical Analytics Specialist
- Hospital Operations Analytics Associate
- Healthcare AI Product Analyst
- Public Health Analytics Associate
Job Opportunities
- Hospitals and healthcare systems
- Health technology companies
- Clinical research organizations
- Public health programs
- Healthcare analytics and consulting firms








