The Physician AI Handbook
Evidence-Based Guidance for AI in Clinical Practice
Practical, peer-reviewed guidance for physicians across all specialties—from evaluating AI diagnostic tools to implementing ambient clinical documentation. No programming required.
✓ 30 comprehensive chapters    ✓ 82+ peer-reviewed citations    ✓ Free & open-source
 
 
Built for Busy Clinicians
No programming background required • 15-20 min per chapter • Specialty-specific examples
 
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Evidence-Based
Citations from JAMA, NEJM, Lancet, Nature Medicine
 
 
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Clinical Focus
Real-world applications across 12+ specialties
 
 
⚖️
Honest Assessment
No vendor hype—just evidence and limitations
 
 
 
 
Why this handbook exists: As a physician who transitioned to medical informatics and epidemiology, I witnessed the gap between AI’s promise and its practical application. Research papers tout impressive metrics. Vendors promise revolutionary improvements. Yet physicians face critical questions: Which AI tools actually work? How do I evaluate vendor claims? What are the medico-legal implications? This handbook bridges that gap with curated, evidence-based guidance for every specialty.
 
Quick Start: Choose Your Path
Select the pathway that matches your specialty and immediate needs:
New to AI entirely? → Begin with the Preface then Chapter 1: AI in Medicine
What is this handbook?
The Physician AI Handbook is an open-source, evidence-based practical guide for understanding and applying artificial intelligence in clinical medicine—written by a physician (MD, MPH, UC Berkeley) for physicians.
This is NOT another hype-filled “AI will revolutionize everything” book.
This is a clinical field guide for:
- Practicing physicians across all specialties who need to understand AI tools and their limitations
 
- Residents and fellows preparing for AI-augmented medical practice
 
- Medical students entering a healthcare landscape transformed by AI
 
- Hospital administrators making informed decisions about AI adoption
 
- Clinical researchers exploring AI applications in their fields
 
What makes this different?
What you’ll get:
- Evidence-based guidance with citations from JAMA, NEJM, Lancet, Nature Medicine, BMJ
 
- Real clinical case studies (successes and failures)
 
- Specialty-specific applications across 12+ medical disciplines
 
- Honest assessments of what AI can and cannot do
 
- Practical implementation guidance for your clinical workflow
 
- Medical-legal considerations and liability frameworks
 
- Open access forever
 
What you won’t get:
- Generic AI hype without clinical evidence
 
- Oversimplified “AI will replace doctors” narratives
 
- Ignoring the complexity of real patients
 
- Vendor marketing disguised as education
 
- Theoretical concepts without practical application
 
- Paywalled content or hidden fees
 
 
Book Structure: Your Roadmap
Part I: Foundations
AI history in medicine, fundamentals, clinical data challenges
Chapters 1-3 2-3 hours Start here if new to AI
Key topics: Medical AI history (MYCIN to modern deep learning), AI fundamentals for clinicians, EHR data quality, clinical datasets
Part II: Clinical Specialties
AI applications across 12+ medical specialties
Chapters 4-15 8-10 hours Jump to your specialty
Key topics: Radiology, Internal Medicine, Surgery, Pediatrics, OBGYN, Emergency/Critical Care, Oncology, Cardiology, Neurology, Primary Care, Pathology, Dermatology/Ophthalmology
Includes: Specialty-specific tools, evidence-based applications, real case studies
Part III: Implementation & Evaluation
Clinical deployment, ethics, privacy, safety, liability
Chapters 16-21 4-5 hours Critical for implementation
Key topics: Evaluating AI tools, medical ethics & equity, HIPAA compliance, clinical AI safety, workflow integration, medical liability & malpractice
 
Part V: The Future
Emerging technologies, policy, global health, future perspectives
Chapters 26-30 4-5 hours Forward-looking insights
Topics: Emerging AI technologies, global health equity, healthcare policy & governance, medical misinformation, the physician-AI partnership
 
How to use this handbook
Browse and Search
- Browse chapters in the Table of Contents
 
- Use the search box to find specific topics
 
- Each chapter includes TL;DR summary
 
- Click “copy” icons for code examples
 
Choose Your Path
- For specialists → Jump to your specialty chapter
 
- For generalists → Start with Primary Care & Practical Tools
 
- For residents/students → Read sequentially Part I → V
 
- For administrators → Focus on Implementation & Ethics
 
 
About the Author
Bryan Tegomoh, MD, MPH is a physician and epidemiologist with experience spanning clinical medicine, health informatics, and disease surveillance. He earned his medical degree and practiced clinical medicine before completing his MPH at the University of California, Berkeley School of Public Health, where he focused on epidemiology and health data science.
Recognizing the transformative potential of AI in medicine—and the critical need for evidence-based physician education—Bryan invested years reviewing medical literature, testing clinical AI tools, and synthesizing research from leading journals including JAMA, NEJM, The Lancet, Nature Medicine, and specialty-specific publications.
This handbook emerged from that synthesis work: translating technical AI research into practical clinical guidance, evaluating vendor claims against peer-reviewed evidence, and organizing scattered information into a comprehensive resource specifically designed for practicing physicians who need to understand AI capabilities, limitations, and real-world applications without becoming machine learning engineers.
Acknowledgements & Inspiration
This handbook draws inspiration from excellent clinical and technical resources including:
- The Epidemiologist R Handbook by Applied Epi
 
- Stanford’s AI in Healthcare research and education programs
 
- Research published in JAMA, NEJM, The Lancet, Nature Medicine, BMJ, and specialty journals
 
- The open-source medical informatics and clinical AI research communities
 
- AI Global Health Blog for practical AI perspectives
 
Nearly everything valuable here builds on published research, clinical implementations, and the work of countless physicians, researchers, and informaticists advancing medical AI. My contribution is synthesis and translation—gathering evidence, testing tools, and organizing knowledge specifically for clinical audiences. Credit for insights belongs to those whose work I learned from; responsibility for errors is mine.
Contributing
This is a living handbook. Your contributions make it better:
Suggest Edits Click “Edit” on any page
 
Share Clinical Cases Email your examples
 
Support the Project Star us on GitHub
 
 
Specialty-specific feedback especially welcome: Practicing physicians know their field’s nuances best. If you see gaps, errors, or opportunities to improve specialty chapters, please contribute.
Terms of Use
License
This work is licensed under the MIT License. Free to use, share, and adapt with attribution.
Citation
Tegomoh, Bryan. The Physician AI Handbook: A Practical Guide for Clinicians Across All Specialties. 2025. https://physicianaihandbook.com. Accessed [Date].
Academic & Clinical Use
Medical schools, residency programs, CME courses, and hospital training programs are welcome to use this material. Please cite appropriately and let us know how you’re using it!
Your Feedback Makes This Better
Found something inaccurate? Medicine moves fast, especially medical AI. Please submit an issue on GitHub
Have clinical experience with AI tools? Share your real-world insights
Working in a specialty not well-covered? Help us improve those chapters
Implemented AI in your practice? Tell your story—others can learn from your experience
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