514 research outputs found
Two cases of occupational allergic contact dermatitis from a cycloaliphatic epoxy resin in a neat oil: Case Report
BACKGROUND: Metal-working fluids contain complex mixtures of chemicals and metal workers constitute a potential risk group for the development of allergic contact dermatitis. CASE PRESENTATION: Two metal workers developed allergic contact dermatitis on the hands and lower arms from exposure to a neat oil used in metal processing. Patch testing revealed that the relevant contact allergen was a cycloaliphatic epoxy resin, 1,2-cyclohexanedicarboxylic acid, bis(oxiranylmethyl) ester, added to the oil as a stabilizer. None of the patients had positive reactions to the bisphenol A-based epoxy resin in the standard series. CONCLUSIONS: These cases emphasize that well-known contact allergens may show up from unexpected sources of exposure. Further, it can be a long-lasting, laborious process to detect an occupational contact allergen and cooperation from the patient and the manufacturer of the sensitizing product is essential
Geometric Algebra Model of Distributed Representations
Formalism based on GA is an alternative to distributed representation models
developed so far --- Smolensky's tensor product, Holographic Reduced
Representations (HRR) and Binary Spatter Code (BSC). Convolutions are replaced
by geometric products, interpretable in terms of geometry which seems to be the
most natural language for visualization of higher concepts. This paper recalls
the main ideas behind the GA model and investigates recognition test results
using both inner product and a clipped version of matrix representation. The
influence of accidental blade equality on recognition is also studied. Finally,
the efficiency of the GA model is compared to that of previously developed
models.Comment: 30 pages, 19 figure
Reusable ω-transaminase sol-gel catalyst for the preparation of amine enantiomers
Heterogeneous ω-transaminase sol-gel catalysts were prepared and characterized in terms of immobilization degree, loading capacity and catalytic behavior in the kinetic resolution of racemic 1-phenylethylamine (a model compound) with sodium pyruvate in phosphate buffer (pH 7.5). The catalyst obtained when ω-transaminase from Arthrobacter sp. was encapsulated from the aqueous solution of the enzyme, isopropyl alcohol and polyvinyl alcohol in the sol-gel matrices, consisting of the 1:5 mixture of tetramethoxysilane and methyltrialkoxysilane, proved to be optimal including the reuse and storage stabilities of the catalyst. The optimized immobilizate was shown to perform well in the kinetic resolution of four structurally different aromatic primary amines in aqueous DMSO (10 v/v-%). The enzyme preparation showed synthetic potential by enabling the catalyst reuse in five consecutive preparative scale kinetic resolutions using 100 mM 1-phenylethylamine in aqueous DMSO (10 v/v-%). It was typical to fresh catalyst preparations that the kinetic resolution tended to exceed 50% before the reaction stopped leaving the (S)-amine unreacted while thereafter in reuse the reactions stopped at 50% conversion as expectable to highly enantioselective reactions.</p
Incremental dimension reduction of tensors with random index
We present an incremental, scalable and efficient dimension reduction
technique for tensors that is based on sparse random linear coding. Data is
stored in a compactified representation with fixed size, which makes memory
requirements low and predictable. Component encoding and decoding are performed
on-line without computationally expensive re-analysis of the data set. The
range of tensor indices can be extended dynamically without modifying the
component representation. This idea originates from a mathematical model of
semantic memory and a method known as random indexing in natural language
processing. We generalize the random-indexing algorithm to tensors and present
signal-to-noise-ratio simulations for representations of vectors and matrices.
We present also a mathematical analysis of the approximate orthogonality of
high-dimensional ternary vectors, which is a property that underpins this and
other similar random-coding approaches to dimension reduction. To further
demonstrate the properties of random indexing we present results of a synonym
identification task. The method presented here has some similarities with
random projection and Tucker decomposition, but it performs well at high
dimensionality only (n>10^3). Random indexing is useful for a range of complex
practical problems, e.g., in natural language processing, data mining, pattern
recognition, event detection, graph searching and search engines. Prototype
software is provided. It supports encoding and decoding of tensors of order >=
1 in a unified framework, i.e., vectors, matrices and higher order tensors.Comment: 36 pages, 9 figure
Learning and generalization of compositional representations of visual scenes
Complex visual scenes that are composed of multiple objects, each with
attributes, such as object name, location, pose, color, etc., are challenging
to describe in order to train neural networks. Usually,deep learning networks
are trained supervised by categorical scene descriptions. The common
categorical description of a scene contains the names of individual objects but
lacks information about other attributes. Here, we use distributed
representations of object attributes and vector operations in a vector symbolic
architecture to create a full compositional description of a scene in a
high-dimensional vector. To control the scene composition, we use artificial
images composed of multiple, translated and colored MNIST digits. In contrast
to learning category labels, here we train deep neural networks to output the
full compositional vector description of an input image. The output of the deep
network can then be interpreted by a VSA resonator network, to extract object
identity or other properties of indiviual objects. We evaluate the performance
and generalization properties of the system on randomly generated scenes.
Specifically, we show that the network is able to learn the task and generalize
to unseen seen digit shapes and scene configurations. Further, the
generalisation ability of the trained model is limited. For example, with a gap
in the training data, like an object not shown in a particular image location
during training, the learning does not automatically fill this gap.Comment: 10 pages, 6 figure
Cartoon Computation: Quantum-like computing without quantum mechanics
We present a computational framework based on geometric structures. No
quantum mechanics is involved, and yet the algorithms perform tasks analogous
to quantum computation. Tensor products and entangled states are not needed --
they are replaced by sets of basic shapes. To test the formalism we solve in
geometric terms the Deutsch-Jozsa problem, historically the first example that
demonstrated the potential power of quantum computation. Each step of the
algorithm has a clear geometric interpetation and allows for a cartoon
representation.Comment: version accepted in J. Phys.A (Letter to the Editor
Expression of ODC Antizyme Inhibitor 2 (AZIN2) in Human Secretory Cells and Tissues
Ornithine decarboxylase (ODC) antizyme inhibitor 2 (AZIN2), originally called ODCp, is a regulator of polyamine synthesis that we originally identified and cloned. High expression of ODCp mRNA was found in brain and testis. We reported that AZIN2 is involved in regulation of cellular vesicle transport and/or secretion, but the ultimate physiological role(s) of AZIN2 is still poorly understood. In this study we used a peptide antibody (K3) to human AZIN2 and by immunohistochemistry mapped its expression in various normal tissues. We found high expression in the nervous system, in type 2 pneumocytes in the lung, in megakaryocytes, in gastric parietal cells co-localized with H, K-ATPase beta subunit, in selected enteroendocrine cells, in acinar cells of sweat glands, in podocytes, in macula densa cells and epithelium of collecting ducts in the kidney. The high expression of AZIN2 in various cells with secretory or vesicle transport activity indicates that the polyamine metabolism regulated by AZIN2 is more significantly involved in these events than previously appreciated.Peer reviewe
Calcium Gluconate in Phosphate Buffered Saline Increases Gene Delivery with Adenovirus Type 5
Peer reviewe
Comprehensive characterisation of the compressive behaviour of hydrogels using a new modelling procedure and redefining compression testing
The aim of tissue engineering is the regeneration of damaged tissue or the production of representative tissue organoids in vitro. To achieve this, one approach is to use hydrogels, water-swollen hydrophilic and crosslinked polymer networks, that can accommodate encapsulation of living cells and help the regeneration process. Even though mechanically biomimicking target tissue is important for a favorable cell response, the mechanical characterisation of tissues or hydrogels is not yet a fully defined process with various possible models and methods existing. In this paper, for the first time, a specific procedure and model has been suggested for the discussion of the nonlinear stress-strain relationship in large deformations of hydrogels. Moreover, this approach has comprehensively characterised the compressive material performance of hydrogels in a theoretical framework. To present the performance and utility of the introduced procedure, it is used with two different compositions of bioamine crosslinked gellan gum hydrogel. In addition, a three-dimensional digital image correlation technique has been utilized together with compression testing to measure the actual force and deformation in unconfined compression. The material model parameters were obtained to represent nonlinear stress-strain behaviour and the viscoelastic response (relaxation) of gellan gum hydrogel in compression.acceptedVersionPeer reviewe
- …