13 research outputs found
The Frequent Complete Subgraphs in the Human Connectome
While it is still not possible to describe the neural-level connections of
the human brain, we can map the human connectome with several hundred vertices,
by the application of diffusion-MRI based techniques. In these graphs, the
nodes correspond to anatomically identified gray matter areas of the brain,
while the edges correspond to the axonal fibers, connecting these areas. In our
previous contributions, we have described numerous graph-theoretical phenomena
of the human connectomes. Here we map the frequent complete subgraphs of the
human brain networks: in these subgraphs, every pair of vertices is connected
by an edge. We also examine sex differences in the results. The mapping of the
frequent subgraphs gives robust substructures in the graph: if a subgraph is
present in the 80% of the graphs, then, most probably, it could not be an
artifact of the measurement or the data processing workflow. We list here the
frequent complete subgraphs of the human braingraphs of 414 subjects, each with
463 nodes, with a frequency threshold of 80%, and identify 812 complete
subgraphs, which are more frequent in male and 224 complete subgraphs, which
are more frequent in female connectomes
Building Protein Domain Based Composite Biobricks for Mammalian Expression Systems
The purpose of this RFC is to describe a method that allows the design of protein domain based parts, starting with gene centered information and translate these informations into BBF RFC 25 compatible part. The method is designed to be used in mammalian expression systems
Internal wettability investigation of mesoporous silica materials by ellipsometric porosimetry
Silica-based mesoporous films have been widely applied in the fabrication of advanced functional materials, such as anti-reflective coatings, bio-, and chemical sensing devices, due to their unique properties, e.g., high surface area, controlled porosity, and the ease and tailorability of their synthesis. Precise knowledge of their pore architecture is crucial, highlighting the need for accurate characterization tools. In this sense, ellipsometric porosimetry represents a powerful and versatile characterization platform, providing access to reliable information about total porosity, pore size, pore size dispersity, mechanical properties (Young's modulus) and surface area of a great variety of mesoporous thin films.
While the underlying framework of modeling capillary condensation via the Kelvin equation is well established, one descriptor, the internal wettability of mesoporous architectures remains a challenging variable for reliable material characterization. Wetting on the nanoscale cannot be observed via the traditional drop-shape method, while approximating internal wetting by the macroscopic property can be inaccurate as the two wetting behaviors do not necessarily correlate. Herein, we present a method based on vacuum ellipsometric porosimetry for the determination of the internal contact angle of functionalized mesoporous silica thin films. Tuning of the surface energy for a known mesoporous architecture by methyl-functionalization enabled us to relate differences in the pore filling for various adsorptives (water, methanol, toluene, cyclohexane) to their internal contact angles. Our study serves as a guide for generalized internal contact angle determination suitable for a wide range of organic adsorptives and mesoporous sorbent materials
Flowification: Everything is a normalizing flow
The two key characteristics of a normalizing flow is that it is invertible
(in particular, dimension preserving) and that it monitors the amount by which
it changes the likelihood of data points as samples are propagated along the
network. Recently, multiple generalizations of normalizing flows have been
introduced that relax these two conditions. On the other hand, neural networks
only perform a forward pass on the input, there is neither a notion of an
inverse of a neural network nor is there one of its likelihood contribution. In
this paper we argue that certain neural network architectures can be enriched
with a stochastic inverse pass and that their likelihood contribution can be
monitored in a way that they fall under the generalized notion of a normalizing
flow mentioned above. We term this enrichment flowification. We prove that
neural networks only containing linear layers, convolutional layers and
invertible activations such as LeakyReLU can be flowified and evaluate them in
the generative setting on image datasets.Comment: NeurIPS 202