379 research outputs found
Novel genetic loci associated with hippocampal volume
The hippocampal formation is a brain structure integrally involved in episodic
memory, spatial navigation, cognition and stress responsiveness. Structural
abnormalities in hippocampal volume and shape are found in several common
neuropsychiatric disorders. To identify the genetic underpinnings of
hippocampal structure here we perform a genome-wide association study (GWAS)
of 33,536 individuals and discover six independent loci significantly
associated with hippocampal volume, four of them novel. Of the novel loci,
three lie within genes (ASTN2, DPP4 and MAST4) and one is found 200 kb
upstream of SHH. A hippocampal subfield analysis shows that a locus within the
MSRB3 gene shows evidence of a localized effect along the dentate gyrus,
subiculum, CA1 and fissure. Further, we show that genetic variants associated
with decreased hippocampal volume are also associated with increased risk for
Alzheimer’s disease (rg=−0.155). Our findings suggest novel biological
pathways through which human genetic variation influences hippocampal volume
and risk for neuropsychiatric illness
Hydranet: Data Augmentation for Regression Neural Networks
Deep learning techniques are often criticized to heavily depend on a large
quantity of labeled data. This problem is even more challenging in medical
image analysis where the annotator expertise is often scarce. We propose a
novel data-augmentation method to regularize neural network regressors that
learn from a single global label per image. The principle of the method is to
create new samples by recombining existing ones. We demonstrate the performance
of our algorithm on two tasks: estimation of the number of enlarged
perivascular spaces in the basal ganglia, and estimation of white matter
hyperintensities volume. We show that the proposed method improves the
performance over more basic data augmentation. The proposed method reached an
intraclass correlation coefficient between ground truth and network predictions
of 0.73 on the first task and 0.84 on the second task, only using between 25
and 30 scans with a single global label per scan for training. With the same
number of training scans, more conventional data augmentation methods could
only reach intraclass correlation coefficients of 0.68 on the first task, and
0.79 on the second task.Comment: accepted in MICCAI 201
3D Regression Neural Network for the Quantification of Enlarged Perivascular Spaces in Brain MRI
Enlarged perivascular spaces (EPVS) in the brain are an emerging imaging
marker for cerebral small vessel disease, and have been shown to be related to
increased risk of various neurological diseases, including stroke and dementia.
Automatic quantification of EPVS would greatly help to advance research into
its etiology and its potential as a risk indicator of disease. We propose a
convolutional network regression method to quantify the extent of EPVS in the
basal ganglia from 3D brain MRI. We first segment the basal ganglia and
subsequently apply a 3D convolutional regression network designed for small
object detection within this region of interest. The network takes an image as
input, and outputs a quantification score of EPVS. The network has
significantly more convolution operations than pooling ones and no final
activation, allowing it to span the space of real numbers. We validated our
approach using a dataset of 2000 brain MRI scans scored visually. Experiments
with varying sizes of training and test sets showed that a good performance can
be achieved with a training set of only 200 scans. With a training set of 1000
scans, the intraclass correlation coefficient (ICC) between our scoring method
and the expert's visual score was 0.74. Our method outperforms by a large
margin - more than 0.10 - four more conventional automated approaches based on
intensities, scale-invariant feature transform, and random forest. We show that
the network learns the structures of interest and investigate the influence of
hyper-parameters on the performance. We also evaluate the reproducibility of
our network using a set of 60 subjects scanned twice (scan-rescan
reproducibility). On this set our network achieves an ICC of 0.93, while the
intrarater agreement reaches 0.80. Furthermore, the automatic EPVS scoring
correlates similarly to age as visual scoring
Genetic variation underlying cognition and its relation with neurological outcomes and brain imaging
Genetic evidence for the most common risk factors for chronic axonal polyneuropathy in the general population
BACKGROUND AND PURPOSE: Chronic axonal polyneuropathy is a common disease, but the etiology remains only partially understood. Previous etiologic studies have identified clinical risk factors, but genetic evidence supporting causality between these factors and polyneuropathy are largely lacking. In this study, we investigate whether there is a genetic association of clinically established important risk factors (diabetes, body mass index [BMI], vitamin B12 levels, and alcohol intake) with chronic axonal polyneuropathy. METHODS: This study was performed within the population‐based Rotterdam Study and included 1565 participants (median age = 73.6 years, interquartile range = 64.6–78.8, 53.5% female), of whom 215 participants (13.7%) had polyneuropathy. Polygenic scores (PGSs) for diabetes, BMI, vitamin B12 levels, and alcohol intake were calculated at multiple significance thresholds based on published genome‐wide association studies. RESULTS: Higher PGSs of diabetes, BMI, and alcohol intake were associated with higher prevalence of chronic axonal polyneuropathy, whereas higher PGS of vitamin B12 levels was associated with lower prevalence of polyneuropathy. These effects were most pronounced for PGSs with lenient significance thresholds for diabetes and BMI (odds ratio [OR](diabetes, p < 1.0) = 1.21, 95% confidence interval [CI] = 1.05–1.39 and OR(BMI, p < 1.0) = 1.21, 95% CI = 1.04–1.41) and for the strictest significance thresholds for vitamin B12 level and alcohol intake (OR (vitamin B12, p < 5e‐6) = 0.79, 95% CI = 0.68–0.92 and OR(alcohol, p < 5e‐8) = 1.17, 95% CI = 1.02–1.35). We did not find an association between different PGSs and sural sensory nerve action potential amplitude, nor between individual lead variants of PGS (p ) (< 5e‐8) and polyneuropathy. CONCLUSIONS: This study provides evidence for polygenic associations of diabetes, BMI, vitamin B12 level, and alcohol intake with chronic axonal polyneuropathy. This supports the hypothesis of causal associations between well‐known clinical risk factors and polyneuropathy
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