Artificial Intelligence for Medicine: An Applied Reference for Methods and Applications
David, Shai Ben-
Curigliano, Giuseppe
Koff, David
Jereczek-Fossa, Barbara Alicja
Torre, Davide la
Pravettoni, Gabriella
Artificial Intelligence for Medicine: An Applied Reference for Methods and Applications introduces readers to the methodology and AI/ML algorithms as well as cutting-edge applications to medicine, such as cancer, precision medicine, critical care, personalized medicine, telemedicine, drug discovery, molecular characterization, and patient mental health. Research in medicine and tailored clinical treatment are being quickly transformed by artificial intelligence (AI) and machine learning (ML). The content in this book is tailored to the reader's needs in terms of both type and fundamentals. It covers the current ethical issues and potential developments in this field.This book will be beneficial for academics, professionals in the IT industry, educators, students, and anyone else involved in the use and development of AI in the medical field. Covers the basic concepts of Artificial Intelligence and Machine Learning, methods and practices, and advanced topics and applications to clinical and precision medicinePresents readers with an understanding of how AI is revolutionizing medicine by demonstrating the applications of computational intelligence to the field, along with an awareness of how AI can improve upon traditional medical structuresProvides researchers, practitioners, and project stakeholders with a complete guide for applying AI techniques in their projects and solutions INDICE: 1. Artificial intelligence in cancer research and precision medicine2. Machine learning in computational pathology through self-supervised learning and vision transformers3. Artificial intelligence in small-molecule drug delivery4. AI/ML and drug repurposing in lung cancer: State of the art and potential roles for retinoids5. Artificial intelligence and digital worlds: New frontiers of integration between AI and other technological tools6. The dual path of the technology acceptance model: An application of machine learning cardiotocography in delivery rooms7. Artificial intelligence in diagnostic and predictive pathology8. Artificial intelligence in the oncology workflow: Applications, limitations, and future perspectives9. SOK: Application of machine learning models in child and youth mental health decision-making10. Cancer detection in hyperspectral imagery using artificial intelligence: Current trends and future directions11. Global research trends of Artificial Intelligence and Machine Learning applied in medicine: A bibliometric analysis (2012-2022)12. Ethics and regulations for AI in radiology13. The role of artificial intelligence in radiology and interventional oncology14. The multiomics revolution in the era of deep learning: Allies or enemies?15. Artificial intelligence in behavioral health economics: Considerations for designing behavioral studies16. Artificial intelligence and medicine: A psychological perspective on AI implementation in healthcare context17. AI for outcome prediction in Radiation Oncology: The present and the future18. Artificial intelligence in neurologic disease19. Should I trust this model? Explainability and the black box of artificial intelligence in medicine
- ISBN: 978-0-443-13671-9
- Editorial: Academic Press
- Encuadernacion: Rústica
- Páginas: 294
- Fecha Publicación: 18/03/2024
- Nº Volúmenes: 1
- Idioma: Inglés