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Applications of Agents in Healthcare Robert Puckett University of Hawai`i at Manoa April 24, 2010 Outline What are Agents? What are Multi-Agent Systems? The Legacy of AI Agent Applications for Hospital Administration Patient Monitoring Community Outreach Continuing Education Integrated Medical Systems What are agents? Autonomous software entity working on your behalf Formerly known as “Distributed AI” Wide range of agent properties: Deliberative, Pro-active Communicative / Social Observant & Reactive Mobile What are Multi-Agent Systems? The Agents Heterogeneous vs. homogeneous Cooperative vs. Competitive Role-based vs. Task-based Environment Observable by the agents Access to equipment, databases, sensors Interfaces with people, experts Rules that define interactions, goals Challenges in Healthcare Security, Trust, Accuracy, Privacy Social Inertia Time-sensitive Specialized medical legacy equipment Rapidly changing knowledge base Prescriptions, medical procedures, drug interactions, treatment options Distributed medical knowledge The AI Legacy “AI applications in Medicine failed to achieve a widespread distribution in the clinical practice despite the outstanding performance shown by many of them” [1] Free-standing, isolated systems "Practical influence of [AI in medicine] in real-world settings will depend on the development of integrated environments" ... "the notion of stand-alone consultation systems had been well debunked by the late 1980s" [2] Agents in Healthcare “I'm sorry Dave, but I don't think you need this insulin.” Photos from: 2001: A Space Odyssey (1968) From: http://www.doc.ic.ac.uk/~hkulatun/talks/Control_in_Healthcare.pdf Hospital Administration Monitoring medical protocol adherence [4] Scheduling of operating rooms, beds Cost management Antibiotics for restricted use (ARU) [3] Organ transplant coordination [7] Simulation of emergency departments [5], bio-terrorism response [6] Gauge resource/staff utilization Identify bottlenecks Link: http://www.youtube.com/watch?v=ilLylU1u0iQ Antibiotics for Restricted Use (ARU) Monitoring MAS decision support system to revise and propose alternative antibiotics therapies ARU's expensive, pathology specific, aggressive Pharmacology assistant program study showed 12.5% of ARU treatments warranted an intervention 92% of them were accepted significant decrease in total antibiotic expenditures Pharmacy Assistant ARU System ARU Agents Guardian angel Represents patient, has his medical info Interacts with other agents to review and revise medical orders for ARU's Physician secretary Provides access to physician Knows physicians work hours, preferences Laboratory manager Manages analysis requests, delivers results ARU Agents Pharmacy expert Suggests antibiotic revisions based upon patient data and lab analysis Nurse Collects medical orders for patients when requested by human nurse Patient Monitoring Guardian: ICU patient monitor [18] Reasoning and context-based skills Prepares short-latency contingency reactions Intelligent Monitor Agents (IM-Agents) [20] Cooperating agents for specialized monitoring and diagnostic tasks Prototype of decision making for emergency trauma Sort/analyze complex and dynamic information Provide diagnostics, warnings, intervention advice IM-Agent Architecture DDM: Dynamic Decision Module Community Outreach Hospital search and appointment system [8] Health reminder/alerts (R2Do2) [10] Explaining medical terminology [9] Low health literacy -> liking the agent Home care management systems 'K4Care' general system [11] 'Super-Assist' (Diabetes) [12] Empathic comforting agents [13] Continuing Education Agent assisted web search and filtering “a 97% decrease in information overload and an 85% increase in information relevancy over existing meta-search tools (with even larger gains over standard search engines).” [14] Amplia: Agent-based medical training [15] AMPLIA A medical diagnostic learning environment hypothetical model construction diagnostic reasoning 1. Learner specifies her knowledge model via probabilistic networks LearnerAgent maintains model System asks her about decisions Assumes physicians implicitly perform probabilistic reasoning AMPLIA 2. Feedback and information provided to user Qualitative diagnosis strategy training MediatorAgent decides educational strategy for user 3. Negotiation and educational review of her knowledge model DomainAgent determines degree user model differs from built-in model AMPLIA: Architecture AMPLIA: Built-in Model AMPLIA: User Interface Integrated Medical Systems E-medicine: integrates information, communication, human-machine interfaces with health and medical technologies [16] Salsa: Ambient Intelligence [19] Context-aware, ubiquitous technology Adaptive, reacting to context and user behavior Agents act on behalf of users, share information, represent and activate services, serve as wrapper for sensitive information Agent.Hospital Testbed for healthcare agent information systems [17] development and evaluation for modeling and implementation integrates models of numerous interdependent supply chains Agent.Hospital Conclusions Great diversity of ways to apply agents Simulators, Solvers, Collaboration systems Agents provide a logical abstraction to complexity of tasks Don't promise HAL and deliver Eliza References [1] G. Lanzola, L. Gatti, S. Falasconi, and M. Stefanelli, “A framework for building cooperative software agents in medical applications,” Artificial Intelligence in Medicine, vol. 16, Jul. 1999, pp. 223-249. [2] V.L. Patel, E.H. Shortliffe, M. Stefanelli, P. Szolovits, M.R. Berthold, R. Bellazzi, and A. Abu-Hanna, “The coming of age of artificial intelligence in medicine,” Artificial Intelligence in Medicine, vol. 46, May. 2009, pp. 5-17. [3] L. Godo, J. Puyol-Gruart, J. Sabater, V. Torra, P. Barrufet, and X. Fàbregas, “A multi-agent system approach for monitoring the prescription of restricted use antibiotics,” Artificial Intelligence in Medicine, vol. 27, Mar. 2003, pp. 259-282. [4] T. Alsinet, R. Béjar, C. Fernanadez, and F. Manyà, “A Multi-agent system architecture for monitoring medical protocols,” Proceedings of the fourth international conference on Autonomous agents, Barcelona, Spain: ACM, 2000, pp. 499-505. More References [5] L. Patvivatsiri, “A simulation model for bioterrorism preparedness in an emergency room,” Proceedings of the 38th conference on Winter simulation, Monterey, California: Winter Simulation Conference, 2006, pp. 501-508. [6] H. Stainsby, M. Taboada, and E. Luque, “Towards an Agent-Based Simulation of Hospital Emergency Departments,” Proceedings of the 2009 IEEE International Conference on Services Computing, IEEE Computer Society, 2009, pp. 536-539. [7] J.B. Antonio, A. Moreno, and A. Valls, “Hospital Arrangements for a Transplant Operation using Agents.” [8] T. Edwards and S. Sankaranarayanan, “Intelligent agent based hospital search & appointment system,” Proceedings of the 2nd International Conference on Interaction Sciences: Information Technology, Culture and Human, Seoul, Korea: ACM, 2009, pp. 561567. Even More References [9] T. Bickmore, L. Pfeifer, and M. Paasche-Orlow, “Health Document Explanation by Virtual Agents,” Intelligent Virtual Agents, 2007, pp. 183-196. [10] B.G. Silverman, C. Andonyadis, and A. Morales, “Web-based health care agents; the case of reminders and todos, too (R2Do2),” Artificial Intelligence in Medicine, vol. 14, Nov. 1998, pp. 295-316. [11] D. Isern, A. Moreno, D. Sánchez, Á. Hajnal, G. Pedone, and L. Varga, “Agent-based execution of personalised home care treatments,” Applied Intelligence. [12] G.D. Haan, O.B. Henkemans, and A. Aluwalia, “Personal assistants for healthcare treatment at home,” Proceedings of the 2005 annual conference on European association of cognitive ergonomics, Chania, Greece: University of Athens, 2005, pp. 225231. Still More References [13] T. Bickmore and D. Schulman, “Practical approaches to comforting users with relational agents,” CHI '07 extended abstracts on Human factors in computing systems, San Jose, CA, USA: ACM, 2007, pp. 2291-2296. [14] S. Walczak, “A multiagent architecture for developing medical information retrieval agents,” Journal of Medical Systems, vol. 27, Oct. 2003, pp. 479-498. [15] R.M. Vicari, C.D. Flores, A.M. Silvestre, L.J. Seixas, M. Ladeira, and H. Coelho, “A multi-agent intelligent environment for medical knowledge,” Artificial Intelligence in Medicine, vol. 27, Mar. 2003, pp. 335-366. [16] J. Tian and H. Tianfield, “A Multi-agent Approach to the Design of an E-medicine System,” Multiagent System Technologies, 2003, pp. 1093-1094. And Yet More References [17] S. Kirn, C. Anhalt, H. Krcmar, and A. Schweiger, “Agent.Hospital — Health Care Applications of Intelligent Agents,” Multiagent Engineering, 2006, pp. 199-220. [18] B. Hayes-Roth, R. Washington, D. Ash, R. Hewett, A. Collinot, A. Vina, and A. Seiver, “Guardian: A prototype intelligent agent for intensive-care monitoring,” Artificial Intelligence in Medicine, vol. 4, Mar. 1992, pp. 165-185. [19] M.D. Rodríguez, J. Favela, A. Preciado, and A. Vizcaíno, “Agentbased ambient intelligence for healthcare,” AI Commun., vol. 18, 2005, pp. 201-216. [20] S.L. Mabry, T. Schneringer, T. Etters, and N. Edwards, “Intelligent agents for patient monitoring and diagnostics,” Proceedings of the 2003 ACM symposium on Applied computing, Melbourne, Florida: ACM, 2003, pp. 257-262.