Aortic Pressure Control Based on Deep Reinforcement Learning for Ex Vivo Heart Perfusion
Shangting Wang,
Ming Yang,
Yuan Liu
et al.
Abstract:In ex vivo heart perfusion (EVHP), the control of aortic pressure (AoP) is critical for maintaining the heart’s physiologic aerobic metabolism. However, the complexity of and variability in cardiac parameters present a challenge in achieving the rapid and accurate regulation of AoP. In this paper, we propose a method of AoP control based on deep reinforcement learning for EVHP in Langendorff mode, which can adapt to the variations in cardiac parameters. Firstly, a mathematical model is developed by coupling th… Show more
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