In: Biomedical Informatics: Computer Applications in Health Care and Biomedicine. Biomedical Data: Their Acquisition, Storage, and Use. Exploring new technologies in biomedical research. Benam KH, Gilchrist S, Kleensang A, Satz AB, Willett C, Zhang Q. Rethinking organoid technology through bioengineering. Garreta E, Kamm RD, Chuva De Sousa Lopes SM et al. Excellent cutting-edge overview on laboratory organ fabrication.Application of bioengineering in revamping human health. Regenerative medicine, organ bioengineering and transplantation. Reinforcement learning for clinical decision support in critical care: comprehensive review. Liu S, See KC, Ngiam KY, Celi LA, Sun X, Feng M. In situ quality monitoring in AM using acoustic emission: a reinforcement learning approach. Wasmer K, Le-Quang T, Meylan B, Shevchik SA. Automatic fault detection for laser powder-bed fusion using semi-supervised machine learning. Okaro IA, Jayasinghe S, Sutcliffe C, Black K, Paoletti P, Green PL. Experimental study of the process failure diagnosis in additive manufacturing based on acoustic emission. Machine learning for continuous liquid interface production: printing speed modelling. Machine learning in medicine: a practical introduction. The unreasonable effectiveness of deep learning in artificial intelligence. In: Efficient Learning Machines: Theories, Concepts, and Applications for Engineers and System Designers. Association for Computing Machinery, NY, USA, 559–560 ( 2018). Presented at: 2018 ACM International Conference on Bioinformatics, Computational Biology, and Health Informatics. Interpretable machine learning in healthcare. Deep learning for object detection and scene perception in self-driving cars: survey, challenges, and open issues. Deep learning for fabrication and maturation of 3D bioprinted tissues and organs. Artificial intelligence: machines that reason. Important overview on artifical intelligence.Artificial intelligence machine learning, deep learning, and cognitive computing: what do these terms mean and how will they impact health care? J. Clinical perspectives on 3D bioprinting paradigms for regenerative medicine. Loai S, Kingston BR, Wang Z, Philpott DN, Tao M, Cheng H-LM. Assessment methodologies for extrusion-based bioink printability. An overview of extrusion-based bioprinting with a focus on induced shear stress and its effect on cell viability. Boularaoui S, Al Hussein G, Khan KA, Christoforou N, Stefanini C. Vat polymerization-based bioprinting – process, materials, applications and regulatory challenges. Biomanufacturing of organ-specific tissues with high cellular density and embedded vascular channels. Print me an organ! Why we are not there yet. Biofabrication offers future hope for tackling various obstacles and challenges in tissue engineering and regenerative medicine: a perspective. Mir TA, Iwanaga S, Kurooka T, Toda H, Sakai S, Nakamura M. Good overview on 3D bioprinting Crossref, Google Scholar.Rich RRFleisher TAShearer WTSchroeder HWFrew AJWeyand CM (Eds). 81 – Concepts and Challenges in Organ Transplantation: Rejection, Immunosuppression, and Tolerance. Department of Health and Human Services ( 2020). The Division of Transplantation (DoT) is within the Healthcare Systems Bureau (HSB) of the Health Resources and Services Administration at the U.S. Solid organ transplantation in the 21(st) century. Black CK, Termanini KM, Aguirre O, Hawksworth JS, Sosin M. Papers of special note have been highlighted as:
0 Comments
Leave a Reply. |
AuthorWrite something about yourself. No need to be fancy, just an overview. ArchivesCategories |