AI in Healthcare: Strategy, Implementation and Digital Health

This course is designed for working professionals who want to build and advance their careers in HealthTech, MedTech, or AI-driven healthcare organization

Course Description

The digitalization of healthcare and related services is rapidly advancing on a global scale, creating significant opportunities for professionals across clinical, public health, consulting, and technology domains. This course provides a comprehensive introduction to the field of digital health, with a strong focus on how technology is transforming healthcare delivery, data applications, patient engagement, and driving innovation in healthcare systems.

Designed specifically for working professionals, the course goes beyond foundational concepts to cover real-world implementation, operational challenges, and adoption of digital health solutions. Participants will explore key areas such as electronic health records (EHRs), telemedicine, mobile health (mHealth), and artificial intelligence (AI), along with digital health policy, regulation, and ethics.

A key emphasis of the course is on case-based learning and practical insights, drawing from real- world deployments of digital health and AI solutions across healthcare systems. Participants will gain exposure to how these technologies are implemented in practice, the challenges faced in scaling them, and the impact they create across clinical and public health settings.

With the rapid growth of the health tech ecosystem globally and in India, this course is designed to prepare participants for emerging roles in health technology, digital health consulting, healthcare operations, public health programs, and health tech entrepreneurship. It will equip learners with the knowledge and frameworks required to navigate and contribute to the evolving landscape of AI-driven and digitally enabled healthcare.

Learner’s Outcomes

After successful completion of the course, participants will

Develop a strong understanding of digital health and AI concepts, including Health Information Systems, EHRs, Big Data, telemedicine, mHealth, AI, and cybersecurity, with a focus on real-world applications.

Apply frameworks to evaluate, design, and implement digital health solutions within healthcare systems, including understanding clinical workflows and operational challenges.

Analyze real-world case studies to understand the adoption, impact, and scalability of digital health and AI interventions across clinical and public health settings.

Critically assess policy, regulatory, and ethical considerations, including data privacy, governance, and responsible AI in healthcare.

Understand patient journeys and care pathways, including identifying gaps, leakages, and opportunities for improvement using digital tools and analytics.

Develop the ability to translate digital health solutions into business and public health impact, including understanding models for scale, sustainability, and stakeholder engagement.

Course content

This course introduces students to the basic concepts and evolution of Artificial Intelligence and its role in modern digital environments.

Module 1 - Fundamentals of Digital Health

  • Overview of Digital Health: Definition, scope, and importance
  • Intersection of public health and technology
  • Historical evolution and growth of digital health
  • Global trends and innovations in digital health
  • Case Study: WHO Digital Health Strategy and global implementations
  • Digital health in practice: progress, challenges, and gaps in adoption

Module 2 - Health Information Systems, Data & Learning Health Systems

  • Health Information Systems (HIS) and digital data collection tools
  • Health data sources: clinical, claims, and social determinants of health
  • Applications of Big Data in public health and population health management
  • Electronic Health Records (EHR) and Electronic Medical Records (EMR)
  • Health Information Exchange (HIE), interoperability, and data standards
  • Introduction to Learning Health Systems
  • Practical challenges: data quality, fragmentation, and interoperability gaps in real- world systems

Module 3 - Digital Health Technologies & Innovations

  • Digital health interventions and technologies
  • Mobile health (mHealth), mobile applications, and wearable technologies
  • Telehealth and telemedicine
  • Social media and patient engagement
  • Introduction to Machine Learning (ML) and Artificial Intelligence (AI) in healthcare
  • Gamification and behavioral sciences in digital health
  • Discussion: Where digital health technologies succeed vs fail in real-world settings

Module 4 - Digital Health Policy, Ethics & Regulation

  • Digital health policy frameworks
  • Regulatory landscape: HIPAA, GDPR, DPDP Act
  • Ethical issues: data privacy, consent, digital divide
  • Quality, safety, and equity in digital health
  • Cybersecurity threats and risk mitigation strategies
  • AI-specific regulation: FDA, CE approvals and responsible AI
  • Case studies on cybersecurity breaches and ethical dilemmas

Module 5 - AI in Healthcare – From Model to Deployment

  • AI lifecycle: Data → Model → Validation → Deployment → Monitoring
  • Understanding sensitivity vs specificity in clinical decision-making
  • Model performance vs real-world performance
  • Bias, generalizability, and dataset limitations
  • Clinical validation vs real-world validation
  • Case example: AI detecting abnormalities but limited clinical follow-up

Module 6 - Clinical Workflow, Adoption & Implementation

  • Integration of AI into clinical workflows
  • Provider adoption and trust in AI systems
  • Human-in-the-loop models
  • Usability challenges and alert fatigue
  • Operational challenges in hospital and public health settings
  • Site onboarding, training, and change management
  • Discussion: Why many AI solutions fail at the implementation stage

Module 7 - Patient Journey, Funnel Thinking & Impact Measurement

  • Patient pathway: Screening → Detection → Referral → Diagnosis → Treatment
  • Identifying drop-offs and leakages across the care continuum
  • Measuring performance:
    • Detection rate
    • Referral rate
    • Diagnosis conversion
    • Treatment initiation
  • Linking AI outputs to real-world health outcomes
  • Exercise: Mapping a disease-specific care pathway

Module 8 - Business Models, Scale & Real-World Case Studies

  • Business models in digital health:
    • B2G, B2B, B2B2C
  • Pharma and government partnerships
  • Pricing, reimbursement, and sustainability
  • Scaling digital health solutions in public and private systems
  • India context:
    • ABDM (Ayushman Bharat Digital Mission)
    • Interoperability and digital public infrastructure
  • Challenges in LMIC settings
  • Case studies:
    • AI in radiology
    • Telemedicine adoption
    • Public health programs

Module 9 - Capstone Project – Designing an AI-Enabled Healthcare Solution

Participants will apply course learnings to design a real-world digital health / AI intervention.

Project Components:

  • Problem definition (clinical or public health challenge)
  • Entry point of intervention (where AI is applied)
  • AI use case and expected outcomes
  • Clinical workflow integration
  • Patient funnel design and leakage points
  • Implementation strategy (sites, training, operations)
  • Business model and stakeholder alignment
  • Metrics for success (clinical, operational, impact)

Examples:

  • AI-enabled lung cancer screening program
  • COPD early detection pathway
  • Telemedicine-based chronic disease management

Our Faculty

Rejesh Bose

HealthTech Leader, AI Implementation at Scale, Public Health & Global Partnerships

Mr. Rejesh Bose is a public health professional with over eight years of experience in health systems strengthening, digital health, and the application of artificial intelligence in healthcare. His work has consistently focused on improving access, efficiency, and outcomes within complex health ecosystems.

He is currently associated with Qure.ai, a healthcare AI company dedicated to enhancing clinical outcomes through advanced artificial intelligence solutions. Prior to this, he worked with Nexleaf Analytics as Country Coordinator for India, where he played a key role in advancing data-driven approaches to public health challenges.

He began his career with Tata Trusts as a Programme Officer and has since held significant positions across leading organisations. He has served as a Consultant with the National Health Authority, contributing to the strengthening of the Ayushman Bharat Pradhan Mantri Jan Arogya Yojana programme. During the COVID-19 pandemic, he worked with PATH as Operations Manager, where he led strategic efforts to improve access to COVID-19 testing across Maharashtra and Punjab.

He holds a Master’s degree in Public Health from the Tata Institute of Social Sciences, Mumbai, and brings a multidisciplinary perspective that bridges policy, technology, and implementation in the healthcare sector.

Limitless Learning, Limitless Possibilities

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