Hacking Healthcare: How AI and the Intelligence Revolution Will Reboot an Ailing System
ISBN: 9781003286103
Platform/Publisher: Taylor & Francis / CRC Press
Digital rights: Users: Unlimited; Printing: Unlimited; Download: Unlimited



In this original work, Tom Lawry takes readers on a journey of understanding what we learned from fighting a global pandemic and how to apply these learnings to solve healthcare's other big challenges. This book is about empowering clinicians and consumers alike to take control of what is important to them by harnessing the power of AI and the Intelligent Health Revolution to create a sustainable system that focuses on keeping all citizens healthy while caring for them when they are not.
Tom Lawry serves as National Director of AI for Health & Life Sciences at Microsoft and previously served as Director of Worldwide Health. Tom works with providers, payors and life science organizations in planning & implementing innovative solutions that improve the quality and efficiency of health services delivered around the globe.Tom focuses on strategies for digital transformation applied to performance optimization including Artificial Intelligence (AI), Machine Learning (ML) and Cognitive Services. He previously served as Director of Organizational Performance for Microsoft's health incubator (Health Solutions Group).Prior to Microsoft Tom served as a Senior Director at GE Healthcare with global responsibilities for revenue cycle analytics and operational performance solutions.Lawry was founder and CEO of Verus, a healthcare software company named as one of the Top 100 Fastest Growing Washington Companies for three consecutive years and to the Deloitte Fast 500 Technologies list.For twelve years Lawry served in various executive management roles in hospitals and integrated delivery networks. He has published numerous articles on using technology to innovate healthcare. His new book is Artificial Intelligence in Healthcare: A Leader's Guide to Winning in the New Age of Intelligent Health Systems.
hidden image for function call