162 research outputs found
EIGEN: Ecologically-Inspired GENetic Approach for Neural Network Structure Searching from Scratch
Designing the structure of neural networks is considered one of the most
challenging tasks in deep learning, especially when there is few prior
knowledge about the task domain. In this paper, we propose an
Ecologically-Inspired GENetic (EIGEN) approach that uses the concept of
succession, extinction, mimicry, and gene duplication to search neural network
structure from scratch with poorly initialized simple network and few
constraints forced during the evolution, as we assume no prior knowledge about
the task domain. Specifically, we first use primary succession to rapidly
evolve a population of poorly initialized neural network structures into a more
diverse population, followed by a secondary succession stage for fine-grained
searching based on the networks from the primary succession. Extinction is
applied in both stages to reduce computational cost. Mimicry is employed during
the entire evolution process to help the inferior networks imitate the behavior
of a superior network and gene duplication is utilized to duplicate the learned
blocks of novel structures, both of which help to find better network
structures. Experimental results show that our proposed approach can achieve
similar or better performance compared to the existing genetic approaches with
dramatically reduced computation cost. For example, the network discovered by
our approach on CIFAR-100 dataset achieves 78.1% test accuracy under 120 GPU
hours, compared to 77.0% test accuracy in more than 65, 536 GPU hours in [35].Comment: CVPR 201
Multi-Feature Vision Transformer via Self-Supervised Representation Learning for Improvement of COVID-19 Diagnosis
The role of chest X-ray (CXR) imaging, due to being more cost-effective,
widely available, and having a faster acquisition time compared to CT, has
evolved during the COVID-19 pandemic. To improve the diagnostic performance of
CXR imaging a growing number of studies have investigated whether supervised
deep learning methods can provide additional support. However, supervised
methods rely on a large number of labeled radiology images, which is a
time-consuming and complex procedure requiring expert clinician input. Due to
the relative scarcity of COVID-19 patient data and the costly labeling process,
self-supervised learning methods have gained momentum and has been proposed
achieving comparable results to fully supervised learning approaches. In this
work, we study the effectiveness of self-supervised learning in the context of
diagnosing COVID-19 disease from CXR images. We propose a multi-feature Vision
Transformer (ViT) guided architecture where we deploy a cross-attention
mechanism to learn information from both original CXR images and corresponding
enhanced local phase CXR images. We demonstrate the performance of the baseline
self-supervised learning models can be further improved by leveraging the local
phase-based enhanced CXR images. By using 10\% labeled CXR scans, the proposed
model achieves 91.10\% and 96.21\% overall accuracy tested on total 35,483 CXR
images of healthy (8,851), regular pneumonia (6,045), and COVID-19 (18,159)
scans and shows significant improvement over state-of-the-art techniques. Code
is available https://github.com/endiqq/Multi-Feature-ViTComment: Accepted to the 2022 MICCAI Workshop on Medical Image Learning with
Limited and Noisy Dat
Multi-Scale Feature Fusion using Parallel-Attention Block for COVID-19 Chest X-ray Diagnosis
Under the global COVID-19 crisis, accurate diagnosis of COVID-19 from Chest
X-ray (CXR) images is critical. To reduce intra- and inter-observer
variability, during the radiological assessment, computer-aided diagnostic
tools have been utilized to supplement medical decision-making and subsequent
disease management. Computational methods with high accuracy and robustness are
required for rapid triaging of patients and aiding radiologists in the
interpretation of the collected data. In this study, we propose a novel
multi-feature fusion network using parallel attention blocks to fuse the
original CXR images and local-phase feature-enhanced CXR images at
multi-scales. We examine our model on various COVID-19 datasets acquired from
different organizations to assess the generalization ability. Our experiments
demonstrate that our method achieves state-of-art performance and has improved
generalization capability, which is crucial for widespread deployment.Comment: Accepted for publication at the Journal of Machine Learning for
Biomedical Imaging (MELBA) https://melba-journal.org/2023:00
Amorphization of embedded Cu nanocrystals by ion irradiation
While bulk crystalline elemental metals cannot be amorphized by ion irradiation in the absence of
chemical impurities, the authors demonstrate that finite-size effects enable the amorphization of
embedded Cu nanocrystals. The authors form and compare the atomic-scale structure of the
polycrystalline, nanocrystalline, and amorphous phases, present an explanation for the extreme
sensitivity to irradiation exhibited by nanocrystals, and show that low-temperature annealing is
sufficient to return amorphized material to the crystalline form
Risk-Based Consumption Advice for Farmed Atlantic and Wild Pacific Salmon Contaminated with Dioxins and Dioxin-like Compounds
We reported recently that several organic contaminants occurred at elevated concentrations in farmed Atlantic salmon compared with concentrations of the same contaminants in wild Pacific salmon [Hites et al. Science 303:226–229 (2004)]. We also found that polychlorinated biphenyls (PCBs), toxaphene, dieldrin, dioxins, and polybrominated diphenyl ethers occurred at higher concentrations in European farm-raised salmon than in farmed salmon from North and South America. Health risks (based on a quantitative cancer risk assessment) associated with consumption of farmed salmon contaminated with PCBs, toxaphene, and dieldrin were higher than risks associated with exposure to the same contaminants in wild salmon. Here we present information on cancer and noncancer health risks of exposure to dioxins in farmed and wild salmon. The analysis is based on a tolerable intake level for dioxin-like compounds established by the World Health Organization and on risk estimates for human exposure to dioxins developed by the U.S. Environmental Protection Agency. Consumption of farmed salmon at relatively low frequencies results in elevated exposure to dioxins and dioxin-like compounds with commensurate elevation in estimates of health risk
- …