Title of article
Selecting treatment strategies with dynamic limited-memory influence diagrams
Author/Authors
van Gerven، نويسنده , , Marcel A.J. and Dيez، نويسنده , , Francisco J. and Taal، نويسنده , , Babs G. and Lucas، نويسنده , , Peter J.F.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2007
Pages
16
From page
171
To page
186
Abstract
SummaryObjective
velopment of dynamic limited-memory influence diagrams as a framework for representing factorized infinite-horizon partially observable Markov decision processes (POMDPs), the introduction of algorithms for their (approximate) solution, and the application to a dynamic decision problem in clinical oncology.
als and methods
mic limited-memory influence diagram for high-grade carcinoid tumor pathophysiology was developed in collaboration with an expert physician. Three algorithms, known as single policy updating, single rule updating, and simulated annealing have been examined for approximating the optimal treatment strategy from a space of 1 0 19 possible strategies.
s
policy updating proved intractable for finding a treatment strategy for carcinoid tumors. Single rule updating and simulated annealing both found the treatment strategy that is applied by physicians in practice.
sions
c limited-memory influence diagrams are a suitable framework for the representation of factorized infinite-horizon POMDPs, and the developed algorithms find acceptable solutions under the assumption of limited memory about past observations. The framework allows for finding reasonable treatment strategies for complex dynamic decision problems in medicine.
Keywords
Partially Observable Markov Decision Processes , Limited-memory influence diagrams , SIMULATED ANNEALING , Carcinoid tumors , PLANNING
Journal title
Artificial Intelligence In Medicine
Serial Year
2007
Journal title
Artificial Intelligence In Medicine
Record number
1836579
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