Deep Q-learning of global optimizer of multiply model parameters for viscoelastic imaging
Hongmei Zhang (1), Kai Wang (1), Yan Zhou (1), Shadab Momin (2),, Xiaofeng Yang (2), Mostafa Fatemi (3), Michael F. Insana (4) ((1) Key, Laboratory of Biomedical Information Engineering of Ministry of Education,, School of Life Science, Technology

TL;DR
This paper introduces DQMP, a deep reinforcement learning method for global optimization of multiple model parameters in viscoelastic imaging, effectively avoiding local minima and achieving high accuracy.
Contribution
The paper presents a novel Deep Q-learning approach for global parameter optimization in complex imaging tasks, outperforming existing methods in accuracy and reliability.
Findings
DQMP yields less than 2% error in parameter estimation.
DQMP demonstrates strong potential in biological tissue imaging.
The method is effective in avoiding local minima in non-convex optimization.
Abstract
Objective: Estimation of the global optima of multiple model parameters is valuable in imaging to form a reliable diagnostic image. Given non convexity of the objective function, it is challenging to avoid from different local minima. Methods: We first formulate the global searching of multiply parameters to be a k-D move in the parametric space, and convert parameters updating to be state-action decision-making problem. We proposed a novel Deep Q-learning of Model Parameters (DQMP) method for global optimization of model parameters by updating the parameter configurations through actions that maximize a Q-value, which employs a Deep Reward Network designed to learn global reward values from both visible curve fitting errors and hidden parameter errors. Results: The DQMP method was evaluated by viscoelastic imaging on soft matter by Kelvin-Voigt fractional derivative (KVFD) modeling. In…
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Taxonomy
TopicsUltrasound Imaging and Elastography · Radiomics and Machine Learning in Medical Imaging · Cardiac Imaging and Diagnostics
MethodsQ-Learning · Network On Network
