1,148 research outputs found
Solvability for a coupled system of fractional differential equations with impulses at resonance
Recent Advances on Sorting Methods of High-Throughput Droplet-Based Microfluidics in Enzyme Directed Evolution
Droplet-based microfluidics has been widely applied in enzyme directed evolution (DE), in either cell or cell-free system, due to its low cost and high throughput. As the isolation principles are based on the labeled or label-free characteristics in the droplets, sorting method contributes mostly to the efficiency of the whole system. Fluorescence-activated droplet sorting (FADS) is the mostly applied labeled method but faces challenges of target enzyme scope. Label-free sorting methods show potential to greatly broaden the microfluidic application range. Here, we review the developments of droplet sorting methods through a comprehensive literature survey, including labeled detections [FADS and absorbance-activated droplet sorting (AADS)] and label-free detections [electrochemical-based droplet sorting (ECDS), mass-activated droplet sorting (MADS), Raman-activated droplet sorting (RADS), and nuclear magnetic resonance-based droplet sorting (NMR-DS)]. We highlight recent cases in the last 5 years in which novel enzymes or highly efficient variants are generated by microfluidic DE. In addition, the advantages and challenges of different sorting methods are briefly discussed to provide an outlook for future applications in enzyme DE
EGTSyn: Edge-based Graph Transformer for Anti-Cancer Drug Combination Synergy Prediction
Combination therapy with multiple drugs is a potent therapy strategy for
complex diseases such as cancer, due to its therapeutic efficacy and potential
for reducing side effects. However, the extensive search space of drug
combinations makes it challenging to screen all combinations experimentally. To
address this issue, computational methods have been developed to identify
prioritized drug combinations. Recently, Convolutional Neural Networks based
deep learning methods have shown great potential in this community. Although
the significant progress has been achieved by existing computational models,
they have overlooked the important high-level semantic information and
significant chemical bond features of drugs. It is worth noting that such
information is rich and it can be represented by the edges of graphs in drug
combination predictions. In this work, we propose a novel Edge-based Graph
Transformer, named EGTSyn, for effective anti-cancer drug combination synergy
prediction. In EGTSyn, a special Edge-based Graph Neural Network (EGNN) is
designed to capture the global structural information of chemicals and the
important information of chemical bonds, which have been neglected by most
previous studies. Furthermore, we design a Graph Transformer for drugs (GTD)
that combines the EGNN module with a Transformer-architecture encoder to
extract high-level semantic information of drugs.Comment: 15 pages,4 figures,6 table
READIN: A Chinese Multi-Task Benchmark with Realistic and Diverse Input Noises
For many real-world applications, the user-generated inputs usually contain
various noises due to speech recognition errors caused by linguistic
variations1 or typographical errors (typos). Thus, it is crucial to test model
performance on data with realistic input noises to ensure robustness and
fairness. However, little study has been done to construct such benchmarks for
Chinese, where various language-specific input noises happen in the real world.
In order to fill this important gap, we construct READIN: a Chinese multi-task
benchmark with REalistic And Diverse Input Noises. READIN contains four diverse
tasks and requests annotators to re-enter the original test data with two
commonly used Chinese input methods: Pinyin input and speech input. We designed
our annotation pipeline to maximize diversity, for example by instructing the
annotators to use diverse input method editors (IMEs) for keyboard noises and
recruiting speakers from diverse dialectical groups for speech noises. We
experiment with a series of strong pretrained language models as well as robust
training methods, we find that these models often suffer significant
performance drops on READIN even with robustness methods like data
augmentation. As the first large-scale attempt in creating a benchmark with
noises geared towards user-generated inputs, we believe that READIN serves as
an important complement to existing Chinese NLP benchmarks. The source code and
dataset can be obtained from https://github.com/thunlp/READIN.Comment: Preprin
Few-Shot Medical Image Segmentation with High-Fidelity Prototypes
Few-shot Semantic Segmentation (FSS) aims to adapt a pretrained model to new
classes with as few as a single labelled training sample per class. Despite the
prototype based approaches have achieved substantial success, existing models
are limited to the imaging scenarios with considerably distinct objects and not
highly complex background, e.g., natural images. This makes such models
suboptimal for medical imaging with both conditions invalid. To address this
problem, we propose a novel Detail Self-refined Prototype Network (DSPNet) to
constructing high-fidelity prototypes representing the object foreground and
the background more comprehensively. Specifically, to construct global
semantics while maintaining the captured detail semantics, we learn the
foreground prototypes by modelling the multi-modal structures with clustering
and then fusing each in a channel-wise manner. Considering that the background
often has no apparent semantic relation in the spatial dimensions, we integrate
channel-specific structural information under sparse channel-aware regulation.
Extensive experiments on three challenging medical image benchmarks show the
superiority of DSPNet over previous state-of-the-art methods
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