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1.
Proc Natl Acad Sci U S A ; 118(3)2021 01 19.
Article in English | MEDLINE | ID: mdl-33431673

ABSTRACT

Deep neural networks currently provide the best quantitative models of the response patterns of neurons throughout the primate ventral visual stream. However, such networks have remained implausible as a model of the development of the ventral stream, in part because they are trained with supervised methods requiring many more labels than are accessible to infants during development. Here, we report that recent rapid progress in unsupervised learning has largely closed this gap. We find that neural network models learned with deep unsupervised contrastive embedding methods achieve neural prediction accuracy in multiple ventral visual cortical areas that equals or exceeds that of models derived using today's best supervised methods and that the mapping of these neural network models' hidden layers is neuroanatomically consistent across the ventral stream. Strikingly, we find that these methods produce brain-like representations even when trained solely with real human child developmental data collected from head-mounted cameras, despite the fact that these datasets are noisy and limited. We also find that semisupervised deep contrastive embeddings can leverage small numbers of labeled examples to produce representations with substantially improved error-pattern consistency to human behavior. Taken together, these results illustrate a use of unsupervised learning to provide a quantitative model of a multiarea cortical brain system and present a strong candidate for a biologically plausible computational theory of primate sensory learning.


Subject(s)
Nerve Net/physiology , Neural Networks, Computer , Neurons/physiology , Pattern Recognition, Visual/physiology , Visual Cortex/physiology , Animals , Child , Datasets as Topic , Humans , Macaca/physiology , Nerve Net/anatomy & histology , Unsupervised Machine Learning , Visual Cortex/anatomy & histology
2.
J Biomater Sci Polym Ed ; 27(15): 1534-52, 2016 10.
Article in English | MEDLINE | ID: mdl-27484610

ABSTRACT

Although vascular implantation has been used as an effective treatment for cardiovascular disease for many years, off-the-shelf and regenerable vascular scaffolds are still not available. Tissue engineers have tested various materials and methods of surface modification in the attempt to develop a scaffold that is more suitable for implantation. Extracellular matrix-based natural materials and biodegradable polymers, which are the focus of this review, are considered to be suitable materials for production of tissue-engineered vascular grafts. Various methods of surface modification that have been developed will also be introduced, their impacts will be summarized and assessed, and challenges for further research will briefly be discussed.


Subject(s)
Blood Vessel Prosthesis , Animals , Biocompatible Materials/chemistry , Biocompatible Materials/pharmacology , Humans , Polymers/chemistry , Surface Properties
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