Physics-informed neural networks (PINNs) for 4D hemodynamics prediction: An investigation of optimal framework based on vascular morphology
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A. Qiao | Youjun Liu | M. Ohta | Xuelan Zhang | H. Anzai | Gaoyang Li | Yuting Guo | Mingyao Luo | Baoyan Mao | Yue Che | Jiaheng Kang
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