Overview
Artificial Intelligence (AI) is no longer just a buzzword in healthcare-it's a rapidly evolving force that's shaping diagnostics, treatment planning, operational efficiency, and patient engagement.
This course takes participants on a journey from the conceptual hype surrounding AI to the practical, evidence-based applications making a difference at the bedside today.
Whether you're a healthcare professional, policymaker, or tech developer, this course demystifies AI, highlights real-world use cases, and equips you with the knowledge to critically evaluate and implement AI solutions in clinical and administrative settings.
Why should you Attend
- Understand key AI concepts and terminology in the context of healthcare
- Distinguish between hype and validated clinical applications of AI
- Explore real-world case studies where AI is improving patient outcomes
- Identify challenges such as bias, regulation, ethics, and data privacy in AI implementation
- Gain a roadmap for assessing and adopting AI technologies responsibly in healthcare settings
Areas Covered in the Session
- Module 1: Introduction - AI in Healthcare Today
- Getting started with ChatGPT in the healthcare context
- Current state of AI adoption in medicine
- Separating buzz from reality
- Module 2: Clinical Applications of AI
- AI in diagnostics (e.g., radiology, pathology, dermatology)
- Predictive analytics in ICU and emergency settings
- Virtual health assistants and symptom checkers
- Case studies: AI in cancer detection, sepsis prediction, and personalized medicine
- Module 3: Operational & Administrative AI
- AI in scheduling, billing, and revenue cycle optimization
- NLP for documentation and EHR automation
- AI chatbots for patient triage and communication
- Module 4: Challenges and Considerations
- Bias in AI algorithms and health equity risks
- Data privacy and compliance (HIPAA, GDPR)
- Regulatory landscape: FDA and AI as a medical device
- Interpretable AI and the "black box" problem
- Module 5: Roadmap to Implementation
- How to evaluate AI vendors and tools
- Key steps in pilot testing and scaling
- Building cross-functional AI readiness in hospitals and clinics
- Wrap-Up and Q&A
- Resources for continued learning
- Discussion and real-world insights
Who Will Benefit
- Healthcare Professionals (Clinicians, Nurses, Radiologists, Pathologists, etc.) interested in AI Applications in Practice
- Hospital Administrators and Health IT Leaders Evaluating AI Tools
- Medical Students and Public Health Researchers Exploring Digital Transformation
- Health Tech Developers and Data Scientists Working with Clinical Data
- Policy Advisors and Regulators Concerned with Ethical and Practical Implications of AI in Medicine
- No Prior Programming or AI Knowledge is Required-this Course is Designed to be Accessible and Practical
Speaker Profile
Harshit Srivastava is a Consultant and an Edupreneur.
He has taught more than 2,00,000 Students and Professionals globally
through various online platforms and delivered multiple trainings at eminent institutions.
He is among the top instructor on Udemy. With more than 7 years of experience,
Authored multiple courses on Artificial Intelligence, Data Analysis, Cloud Computing.
He has also worked with TCS as a Software Developer.
He's fond of New technologies in AI such as ChatGPT and Google Gemini..