7,970 research outputs found
Effects of Therapeutic Targeting of Cancer Associated Fibroblasts on Extracellular Matrix Remodeling in an Engineered Tumor Stroma Model
The tumor microenvironment (TME) is a complex combination of stromal cells and extracellular matrix. The cancer-associated fibroblast (CAF) plays an integral role in remodeling the TME and promoting tumor aggression. In this study, we present a 3D microfluidic model of the tumor stroma, which consists of a single straight micro-channel filled with CAF-embedded or acellular collagen gels. Using this platform, we can quantify both fiber alignment and hydraulic permeability within the collagen matrix. These results provide an enhanced understanding of the CAF's influence on the TME, and this knowledge is critical to the development of more effective cancer treatments. First, this study shows that genetic silencing of phosphatase and tensin homolog (PTEN) in CAFs causes a significant decrease in hydraulic permeability. Moreover, this change occurs without physical reorientation of the collagen fibers, thereby suggesting that PTEN deleted CAFs may be secreting molecules – hypothesized to be hyaluronan – into the TME to cause this observed effect. Using our microsystem as a drug screening platform, we also (1) identify the application of hyaluronidase and the inhibition of p-AKT as promising methods for mitigating the adverse effects of PTEN deletion and (2) show that GDC-0449 undesirably decreases the hydraulic permeability of the TME. Finally, we have also utilized our microsystems to measure the properties of various acellular ECM gel compositions and compared these results to our CAF data. Our findings suggest that HA supplementation to collagen gels does not have an equivalent effect on matrix architecture as CAF-secreted HA. Overall, this study demonstrates the utility of our microfluidic model for studying the TME and provides key insights for developing more effective cancer treatments.The College of EngineeringPelotonia Undergraduate Fellowship ProgramA one-year embargo was granted for this item.Academic Major: Biomedical Engineerin
Learning Representations of Emotional Speech with Deep Convolutional Generative Adversarial Networks
Automatically assessing emotional valence in human speech has historically
been a difficult task for machine learning algorithms. The subtle changes in
the voice of the speaker that are indicative of positive or negative emotional
states are often "overshadowed" by voice characteristics relating to emotional
intensity or emotional activation. In this work we explore a representation
learning approach that automatically derives discriminative representations of
emotional speech. In particular, we investigate two machine learning strategies
to improve classifier performance: (1) utilization of unlabeled data using a
deep convolutional generative adversarial network (DCGAN), and (2) multitask
learning. Within our extensive experiments we leverage a multitask annotated
emotional corpus as well as a large unlabeled meeting corpus (around 100
hours). Our speaker-independent classification experiments show that in
particular the use of unlabeled data in our investigations improves performance
of the classifiers and both fully supervised baseline approaches are
outperformed considerably. We improve the classification of emotional valence
on a discrete 5-point scale to 43.88% and on a 3-point scale to 49.80%, which
is competitive to state-of-the-art performance
Hierarchical relational models for document networks
We develop the relational topic model (RTM), a hierarchical model of both
network structure and node attributes. We focus on document networks, where the
attributes of each document are its words, that is, discrete observations taken
from a fixed vocabulary. For each pair of documents, the RTM models their link
as a binary random variable that is conditioned on their contents. The model
can be used to summarize a network of documents, predict links between them,
and predict words within them. We derive efficient inference and estimation
algorithms based on variational methods that take advantage of sparsity and
scale with the number of links. We evaluate the predictive performance of the
RTM for large networks of scientific abstracts, web documents, and
geographically tagged news.Comment: Published in at http://dx.doi.org/10.1214/09-AOAS309 the Annals of
Applied Statistics (http://www.imstat.org/aoas/) by the Institute of
Mathematical Statistics (http://www.imstat.org
Taxes and Growth in a Financially Underdeveloped Country: Evidence from the Chilean Investment Boom
This paper argues that taxation of retained profits is particularly distortionary in an economy with good growth prospects and poorly developed financial markets because it primarily reduces the investment of financially constrained firms, investment that has marginal product greater than the after-tax market real interest rate. Contrarily, taxes on distributed profits or capital gains primarily reduce the investment of financially unconstrained firms. Chile experienced a banking crisis over the period from 1982 to 1986 and in 1984 reduced its tax rate on retained profits from 50 percent to 10 percent. We show that, consistent with our theory, there was a large increase in aggregate investment after the reform which was entirely funded by an increase in retained profits. Further, we show that investment grew by more in industries that depend more on external financing, according to the Rajan and Zingales (1998) measure. Finally, we present some weak evidence from comparisons of investment rates across firms for several different measures of their likelihood of being financially constrained.
Long Term Evolution of Magnetic Turbulence in Relativistic Collisionless Shocks: Electron-Positron Plasmas
We study the long term evolution of magnetic fields generated by a
collisionless relativistic shock which is initially unmagnetized. Our
2D particle-in-cell numerical simulations show that downstream of such a
Weibel-mediated shock, particle distributions are close to isotropic,
relativistic Maxwellians, and the magnetic turbulence is highly intermittent
spatially, with the non-propagating magnetic fields forming relatively isolated
regions with transverse dimension skin depths. These structures
decay in amplitude, with little sign of downstream merging. The fields start
with magnetic energy density of the upstream kinetic energy
within the shock transition, but rapid downstream decay drives the fields to
much smaller values, below of equipartition after skin depths.
In an attempt to construct a theory that follows field decay to these smaller
values, we explore the hypothesis that the observed damping is a variant of
Landau damping in an unmagnetized plasma. The model is based on the small value
of the downstream magnetic energy density, which suggests that particle orbits
are only weakly perturbed from straight line motion, if the turbulence is
homogeneous. Using linear kinetic theory applied to electromagnetic fields in
an isotropic, relativistic Maxwellian plasma, we find a simple analytic form
for the damping rates, , in two and three dimensions for small
amplitude, subluminous electromagnetic fields. We find that magnetic energy
does damp due to phase mixing of current carrying particles as with . (abridged)Comment: 10 pages, 6 figures, accepted to ApJ; Downsampled version for arXiv.
Full resolution figures available at
http://astro.berkeley.edu/~pchang/full_res_weibel.pd
The First Crusade: The Forgotten Realities
In the Middle Ages, Europe saw a great amassing of thousands of lords, knights, and ordinary people for an extraordinary expedition into the Holy Land. This event was called the First Crusade. The First Crusade was one of the more successful crusades, however, this fact is overshadowed by the negatives of the crusades. My paper explores the reasons for how the crusaders were able to be victorious in the First Crusade
CDC: Convolutional-De-Convolutional Networks for Precise Temporal Action Localization in Untrimmed Videos
Temporal action localization is an important yet challenging problem. Given a
long, untrimmed video consisting of multiple action instances and complex
background contents, we need not only to recognize their action categories, but
also to localize the start time and end time of each instance. Many
state-of-the-art systems use segment-level classifiers to select and rank
proposal segments of pre-determined boundaries. However, a desirable model
should move beyond segment-level and make dense predictions at a fine
granularity in time to determine precise temporal boundaries. To this end, we
design a novel Convolutional-De-Convolutional (CDC) network that places CDC
filters on top of 3D ConvNets, which have been shown to be effective for
abstracting action semantics but reduce the temporal length of the input data.
The proposed CDC filter performs the required temporal upsampling and spatial
downsampling operations simultaneously to predict actions at the frame-level
granularity. It is unique in jointly modeling action semantics in space-time
and fine-grained temporal dynamics. We train the CDC network in an end-to-end
manner efficiently. Our model not only achieves superior performance in
detecting actions in every frame, but also significantly boosts the precision
of localizing temporal boundaries. Finally, the CDC network demonstrates a very
high efficiency with the ability to process 500 frames per second on a single
GPU server. We will update the camera-ready version and publish the source
codes online soon.Comment: IEEE Conference on Computer Vision and Pattern Recognition (CVPR),
201
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