| Literature DB >> 27133269 |
Dominik Neumann1, Tommaso Mansi2, Lucian Itu3, Bogdan Georgescu2, Elham Kayvanpour4, Farbod Sedaghat-Hamedani4, Ali Amr4, Jan Haas4, Hugo Katus4, Benjamin Meder4, Stefan Steidl5, Joachim Hornegger5, Dorin Comaniciu2.
Abstract
Personalization is the process of fitting a model to patient data, a critical step towards application of multi-physics computational models in clinical practice. Designing robust personalization algorithms is often a tedious, time-consuming, model- and data-specific process. We propose to use artificial intelligence concepts to learn this task, inspired by how human experts manually perform it. The problem is reformulated in terms of reinforcement learning. In an off-line phase, Vito, our self-taught artificial agent, learns a representative decision process model through exploration of the computational model: it learns how the model behaves under change of parameters. The agent then automatically learns an optimal strategy for on-line personalization. The algorithm is model-independent; applying it to a new model requires only adjusting few hyper-parameters of the agent and defining the observations to match. The full knowledge of the model itself is not required. Vito was tested in a synthetic scenario, showing that it could learn how to optimize cost functions generically. Then Vito was applied to the inverse problem of cardiac electrophysiology and the personalization of a whole-body circulation model. The obtained results suggested that Vito could achieve equivalent, if not better goodness of fit than standard methods, while being more robust (up to 11% higher success rates) and with faster (up to seven times) convergence rate. Our artificial intelligence approach could thus make personalization algorithms generalizable and self-adaptable to any patient and any model.Entities:
Keywords: Artificial intelligence; Computational modeling; Model personalization; Reinforcement learning
Mesh:
Year: 2016 PMID: 27133269 DOI: 10.1016/j.media.2016.04.003
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545