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1.
Sci Adv ; 9(25): eade8187, 2023 06 23.
Article in English | MEDLINE | ID: mdl-37343093

ABSTRACT

The human ventral visual stream has a highly systematic organization of object information, but the causal pressures driving these topographic motifs are highly debated. Here, we use self-organizing principles to learn a topographic representation of the data manifold of a deep neural network representational space. We find that a smooth mapping of this representational space showed many brain-like motifs, with a large-scale organization by animacy and real-world object size, supported by mid-level feature tuning, with naturally emerging face- and scene-selective regions. While some theories of the object-selective cortex posit that these differently tuned regions of the brain reflect a collection of distinctly specified functional modules, the present work provides computational support for an alternate hypothesis that the tuning and topography of the object-selective cortex reflect a smooth mapping of a unified representational space.


Subject(s)
Brain Mapping , Pattern Recognition, Visual , Humans , Magnetic Resonance Imaging , Brain , Learning , Photic Stimulation
2.
Nat Biomed Eng ; 5(6): 571-585, 2021 06.
Article in English | MEDLINE | ID: mdl-34112997

ABSTRACT

In machine learning for image-based medical diagnostics, supervised convolutional neural networks are typically trained with large and expertly annotated datasets obtained using high-resolution imaging systems. Moreover, the network's performance can degrade substantially when applied to a dataset with a different distribution. Here, we show that adversarial learning can be used to develop high-performing networks trained on unannotated medical images of varying image quality. Specifically, we used low-quality images acquired using inexpensive portable optical systems to train networks for the evaluation of human embryos, the quantification of human sperm morphology and the diagnosis of malarial infections in the blood, and show that the networks performed well across different data distributions. We also show that adversarial learning can be used with unlabelled data from unseen domain-shifted datasets to adapt pretrained supervised networks to new distributions, even when data from the original distribution are not available. Adaptive adversarial networks may expand the use of validated neural-network models for the evaluation of data collected from multiple imaging systems of varying quality without compromising the knowledge stored in the network.


Subject(s)
Image Interpretation, Computer-Assisted/statistics & numerical data , Malaria, Falciparum/diagnostic imaging , Neural Networks, Computer , Spermatozoa/ultrastructure , Supervised Machine Learning , Datasets as Topic , Embryo, Mammalian/diagnostic imaging , Embryo, Mammalian/ultrastructure , Female , Histocytochemistry/methods , Humans , Malaria, Falciparum/parasitology , Male , Microscopy/methods , Plasmodium falciparum/ultrastructure , Time-Lapse Imaging/methods , Time-Lapse Imaging/statistics & numerical data
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