A machine learning-based multiscale model to predict bone formation in scaffolds
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Jianguang Fang | Grant P. Steven | Michael V. Swain | Qing Li | Keke Zheng | Hala Zreiqat | Chi Wu | Ali Entezari | Qing Li | G. Steven | Jianguang Fang | M. Swain | H. Zreiqat | Keke Zheng | Chi Wu | A. Entezari
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