2,994 research outputs found
Nonlinear Realizations of the Algebra
In this letter we consider the nonlinear realizations of the classical
Polyakov's algebra . The coset space method and the covariant
reduction procedure allow us to deduce the Boussinesq equation with
interchanged space and evolution coordinates. By adding one more space
coordinate and introducing two copies of the algebra, the same
method yields the Toda lattice equations.Comment: LaTeX, 10p., Preprint LNF-94/013 (P
Brain Tumor Synthetic Segmentation in 3D Multimodal MRI Scans
The magnetic resonance (MR) analysis of brain tumors is widely used for
diagnosis and examination of tumor subregions. The overlapping area among the
intensity distribution of healthy, enhancing, non-enhancing, and edema regions
makes the automatic segmentation a challenging task. Here, we show that a
convolutional neural network trained on high-contrast images can transform the
intensity distribution of brain lesions in its internal subregions.
Specifically, a generative adversarial network (GAN) is extended to synthesize
high-contrast images. A comparison of these synthetic images and real images of
brain tumor tissue in MR scans showed significant segmentation improvement and
decreased the number of real channels for segmentation. The synthetic images
are used as a substitute for real channels and can bypass real modalities in
the multimodal brain tumor segmentation framework. Segmentation results on
BraTS 2019 dataset demonstrate that our proposed approach can efficiently
segment the tumor areas. In the end, we predict patient survival time based on
volumetric features of the tumor subregions as well as the age of each case
through several regression models
Deep Learning versus Classical Regression for Brain Tumor Patient Survival Prediction
Deep learning for regression tasks on medical imaging data has shown
promising results. However, compared to other approaches, their power is
strongly linked to the dataset size. In this study, we evaluate
3D-convolutional neural networks (CNNs) and classical regression methods with
hand-crafted features for survival time regression of patients with high grade
brain tumors. The tested CNNs for regression showed promising but unstable
results. The best performing deep learning approach reached an accuracy of
51.5% on held-out samples of the training set. All tested deep learning
experiments were outperformed by a Support Vector Classifier (SVC) using 30
radiomic features. The investigated features included intensity, shape,
location and deep features. The submitted method to the BraTS 2018 survival
prediction challenge is an ensemble of SVCs, which reached a cross-validated
accuracy of 72.2% on the BraTS 2018 training set, 57.1% on the validation set,
and 42.9% on the testing set. The results suggest that more training data is
necessary for a stable performance of a CNN model for direct regression from
magnetic resonance images, and that non-imaging clinical patient information is
crucial along with imaging information.Comment: Contribution to The International Multimodal Brain Tumor Segmentation
(BraTS) Challenge 2018, survival prediction tas
Gradient flows and instantons at a Lifshitz point
I provide a broad framework to embed gradient flow equations in
non-relativistic field theory models that exhibit anisotropic scaling. The
prime example is the heat equation arising from a Lifshitz scalar field theory;
other examples include the Allen-Cahn equation that models the evolution of
phase boundaries. Then, I review recent results reported in arXiv:1002.0062
describing instantons of Horava-Lifshitz gravity as eternal solutions of
certain geometric flow equations on 3-manifolds. These instanton solutions are
in general chiral when the anisotropic scaling exponent is z=3. Some general
connections with the Onsager-Machlup theory of non-equilibrium processes are
also briefly discussed in this context. Thus, theories of Lifshitz type in d+1
dimensions can be used as off-shell toy models for dynamical vacuum selection
of relativistic field theories in d dimensions.Comment: 19 pages, 1 figure, contribution to conference proceedings (NEB14);
minor typos corrected in v
3D U-Net Based Brain Tumor Segmentation and Survival Days Prediction
Past few years have witnessed the prevalence of deep learning in many
application scenarios, among which is medical image processing. Diagnosis and
treatment of brain tumors requires an accurate and reliable segmentation of
brain tumors as a prerequisite. However, such work conventionally requires
brain surgeons significant amount of time. Computer vision techniques could
provide surgeons a relief from the tedious marking procedure. In this paper, a
3D U-net based deep learning model has been trained with the help of brain-wise
normalization and patching strategies for the brain tumor segmentation task in
the BraTS 2019 competition. Dice coefficients for enhancing tumor, tumor core,
and the whole tumor are 0.737, 0.807 and 0.894 respectively on the validation
dataset. These three values on the test dataset are 0.778, 0.798 and 0.852.
Furthermore, numerical features including ratio of tumor size to brain size and
the area of tumor surface as well as age of subjects are extracted from
predicted tumor labels and have been used for the overall survival days
prediction task. The accuracy could be 0.448 on the validation dataset, and
0.551 on the final test dataset.Comment: Third place award of the 2019 MICCAI BraTS challenge survival task
[BraTS 2019](https://www.med.upenn.edu/cbica/brats2019.html
Advanced Magnetic Resonance Imaging in Glioblastoma: A Review
INTRODUCTION
In 2017, it is estimated that 26,070 patients will be diagnosed with a malignant primary brain tumor in the United States, with more than half having the diagnosis of glioblas- toma (GBM).1 Magnetic resonance imaging (MRI) is a widely utilized examination in the diagnosis and post-treatment management of patients with glioblastoma; standard modalities available from any clinical MRI scanner, including T1, T2, T2-FLAIR, and T1-contrast-enhanced (T1CE) sequences, provide critical clinical information. In the last decade, advanced imaging modalities are increasingly utilized to further charac- terize glioblastomas. These include multi-parametric MRI sequences, such as dynamic contrast enhancement (DCE), dynamic susceptibility contrast (DSC), diffusion tensor imaging (DTI), functional imaging, and spectroscopy (MRS), to further characterize glioblastomas, and significant efforts are ongoing to implement these advanced imaging modalities into improved clinical workflows and personalized therapy approaches. A contemporary review of standard and advanced MR imaging in clinical neuro-oncologic practice is presented
Null Fields Realizations of from and Algebras
We consider the nonlinear algebras and
and find their realizations in terms of currents spanning conformal linearizing
algebras. The specific structure of these algebras, allows us to construct
realizations modulo null fields of the algebra that lies in the cosets
and . Such realizations exist for
the following values of the algebra central charge:
. The first two values are listed for the first time,
whereas for the remaining values we get the new realizations in terms of an
arbitrary stress tensor and affine currents.Comment: Submitted to Phys. Lett. B; PACS-no 11.30.L
Induced Gravity as a WZNW Model
We derive the explicit form of the Wess-Zumino quantum effective action of
chiral \Winf-symmetric system of matter fields coupled to a general chiral
\Winf-gravity background. It is expressed as a geometric action on a
coadjoint orbit of the deformed group of area-preserving diffeomorphisms on
cylinder whose underlying Lie algebra is the centrally-extended algebra of
symbols of differential operators on the circle. Also, we present a systematic
derivation, in terms of symbols, of the "hidden" SL(\infty;\IR) Kac-Moody
currents and the associated SL(\infty;\IR) Sugawara form of energy-momentum
tensor component as a consequence of the SL(\infty;\IR) stationary
subgroup of the relevant \Winf coadjoint orbit
Energy-momentum/Cotton tensor duality for AdS4 black holes
We consider the theory of gravitational quasi-normal modes for general linear
perturbations of AdS4 black holes. Special emphasis is placed on the effective
Schrodinger problems for axial and polar perturbations that realize
supersymmetric partner potential barriers on the half-line. Using the
holographic renormalization method, we compute the energy-momentum tensor for
perturbations satisfying arbitrary boundary conditions at spatial infinity and
discuss some aspects of the problem in the hydrodynamic representation. It is
also observed in this general framework that the energy-momentum tensor of
black hole perturbations and the energy momentum tensor of the gravitational
Chern-Simons action (known as Cotton tensor) exhibit an axial-polar duality
with respect to appropriately chosen supersymmetric partner boundary conditions
on the effective Schrodinger wave-functions. This correspondence applies to
perturbations of very large AdS4 black holes with shear viscosity to entropy
density ratio equal to 1/4\pi, thus providing a dual graviton description of
their hydrodynamic modes. We also entertain the idea that the purely
dissipative modes of black hole hydrodynamics may admit Ricci flow description
in the non-linear regime.Comment: 38 pages; minor typos corrected, a few extra references and a note
adde
Post-Stroke Depression: Focus on Diagnosis and Management during Stroke Rehabilitation
Post-Stroke Depression: Focus on Diagnosis and Management during Stroke Rehabilitation. Geriatrics & Aging. 10(8):492–6
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