
Questo prodotto usufruisce delle SPEDIZIONI GRATIS
selezionando l'opzione Corriere Veloce in fase di ordine.
Pagabile anche con Carta della cultura giovani e del merito, Carta della Cultura e Carta del Docente
This book provides medical students with a practical, non-technical roadmap for understanding, applying, and leading generative AI in clinical practice. Despite explosive interest in AI, there is no accessible, clinically focused primer tailored to medical students without programming backgrounds. Educators and students need a resource that translates theory into actionable skills, crafting effective prompts, interpreting AI outputs, embedding tools into workflows, and upholding ethical and legal standards. By filling this gap, the book equips future physicians to use AI confidently and safely at the bedside and in documentation, lead pilot projects and quality-improvement initiatives, navigate certification, research, and career development in digital health. In short, it transforms generative AI from a black-box novelty into a dependable clinical partner, fulfilling a critical educational need at the intersection of medicine and technology.
The text begins by demystifying core AI concepts, transformers, self-attention, NLP, CNNs, and Retrieval-Augmented Generation. It then moves through hands-on chapters on securing stakeholder buy-in, prompt engineering, error management, and quality-improvement cycles. A capstone “AI Journal Club” and simulation exercises reinforce learning in real-world vignettes, while later chapters guide students through ethics, research, collaboration, career pathways, and a SMART-goal–driven lifelong learning plan.
This is an ideal guide for all medical students interested in integrating generative AI into their career.
Part I: Foundations of Generative AI in Medicine.- Introduction to Generative AI in Clinical Practice.- Transformer Architectures & Self-Attention: How AI “Thinks”.- Core Technologies: NLP, Convolutional Neural Networks, and Retrieval-Augmented Generation.- Prompt Engineering for Clinicians: From Basics to Advanced Techniques.- Limitations, Bias, and Risk Management in AI Outputs.- Ethics, Accountability, and Human Oversight in Generative AI.- Specialty Deep Dives: Imaging, Patient Education, and RAG Applications.- Generative AI in Primary Care: Opportunities and Challenges.- Part II: Integrating AI into Clinical Workflows.- Securing Early Support: Stakeholder Mapping & Buy-In.- Anticipating Resistance: Safeguards, Errors, and Prompt Refinement.- Simulation Exercises: “You Are the CMIO” Role-Plays.- Feedback Loops & Continuous Learning: The AI Rounds Model.- Part III: Capstone & Application.- Mini AI Journal Club: Peer-Led Case Studies & Lessons Learned.- Execution, Analysis & Iteration: Prompt–Review–Revise with QI Methods.- Reporting, Scale-Up & Sustainability: Communicating and Governing AI Projects.- Part IV: Professional Growth & Lifelong AI Integration.- Next Steps—Professional Growth & Lifelong AI Integration.


Il sito utilizza cookie ed altri strumenti di tracciamento che raccolgono informazioni dal dispositivo dell’utente. Oltre ai cookie tecnici ed analitici aggregati, strettamente necessari per il funzionamento di questo sito web, previo consenso dell’utente possono essere installati cookie di profilazione e marketing e cookie dei social media. Cliccando su “Accetto tutti i cookie” saranno attivate tutte le categorie di cookie. Per accettare solo deterninate categorie di cookie, cliccare invece su “Impostazioni cookie”. Chiudendo il banner o continuando a navigare saranno installati solo cookie tecnici. Per maggiori dettagli, consultare la Cookie Policy.