23 research outputs found
Data_Sheet_1_PanSVR: Pan-Genome Augmented Short Read Realignment for Sensitive Detection of Structural Variations.docx
The comprehensive discovery of structure variations (SVs) is fundamental to many genomics studies and high-throughput sequencing has become a common approach to this task. However, due the limited length, it is still non-trivial to state-of-the-art tools to accurately align short reads and produce high-quality SV callsets. Pan-genome provides a novel and promising framework to short read-based SV calling since it enables to comprehensively integrate known variants to reduce the incompleteness and bias of single reference to breakthrough the bottlenecks of short read alignments and provide new evidences to the detection of SVs. However, it is still an open problem to develop effective computational approaches to fully take the advantage of pan-genomes. Herein, we propose Pan-genome augmented Structure Variation calling tool with read Re-alignment (PanSVR), a novel pan-genome-based SV calling approach. PanSVR uses several tailored methods to implement precise re-alignment for SV-spanning reads against well-organized pan-genome reference with plenty of known SVs. PanSVR enables to greatly improve the quality of short read alignments and produce clear and homogenous SV signatures which facilitate SV calling. Benchmark results on real sequencing data suggest that PanSVR is able to largely improve the sensitivity of SV calling than that of state-of-the-art SV callers, especially for the SVs from repeat-rich regions and/or novel insertions which are difficult to existing tools.</p
Morphology Evolution and Adsorption Behavior of Ionomers from Solution to Pt/C Substrates
Coarse-grained
molecular dynamics simulations were performed to
understand the morphological evolution and adsorption mechanism of
Nafion ionomers from the aqueous solutions to the Pt/C substrate surface
under various solution compositions and substrate properties. We found
that the ionomer coverage did not increase with the increasing ionomer-to-carbon
ratio but was related to the size and concentration of the ionomer
aggregates, following the Langmuir adsorption model that shows a wettability
switching behavior due to their changed morphology from solution to
the surface. Ionomer aggregates in the solution tended to unfold and
spread on the carbon substrate rather than Pt particles, although
the cylindrical ionomer aggregates were easily attracted by Pt particles
initially due to their hydrophilic ionic shells. The smaller Pt particles
had a greater effect on ionomer adsorption. With the increasing number
of Pt particles, ionomer coverage increased first and then decreased,
depending on whether there was enough carbon surface to anchor the
ionomer backbone. A balanced Pt/C ratio and the appropriate distribution
of the Pt particles were required for tuning the ionomer coverage
and distribution toward the design of the catalyst ink structure to
improve the power performance
Construction of Core-Cross-Linked Polymer Micelles with High Biocompatibility and Stability for pH/Reduction Controllable Drug Delivery
Polymer micelles have been studied extensively in drug
delivery
systems (DDS), and their stability is well known to directly affect
drug delivery. In this article, a series of amphiphilic copolymers
LA-PDPAn-PVPm were synthesized to prepare core-cross-linked
nanoparticles (CNP) applied to controllable and targeted anticancer
drug delivery. The copolymers could self-assemble in aqueous solution
and form homogeneous spherical micelles with particle sizes of between
100 and 150 nm. A comparison between un-cross-linked UCNP and CNP
showed that the cross-linking of LA could significantly improve the
stability and responsive ability of the nanoparticles. From the in
vitro-simulated drug release experiments, CNP was found to have great
drug blocking ability under normal physiological conditions and could
achieve rapid and efficient drug release under acidic/reducing conditions.
In addition, cell experiments showed that CNP had superior biocompatibility
and could target tumor cells for drug release. In conclusion, a drug
carrier based on copolymer LA-PDPA-PVP realized effective controlled
drug release due to the cross-linking of LA. The results will provide
guidance for the design strategy of polymer micelles for drug carriers
Dynamic Control of Liquid-Only Transfer Stream Agrawal Divided-Wall Column
The
distillation columns with no vapor–liquid-coupled flow
streams are easier to control and operate, especially for the few
industrial implementations of the Agrawal divided-wall column (ADWC).
This work focuses on the dynamic control of the liquid-only transfer
stream Agrawal divided-wall column (LTS-ADWC) for separating the quaternary
alcohol system. First, the composition control structure (CCS) is
proposed, and the dynamic results show that CCS could handle ±15%
feed disturbance, and the purity of most products can be returned
to the specified value. Subsequently, the temperature control structure
(TCS) is designed on account of the control logic of the CCS. When
facing ±15% feed disturbances, good dynamic performance can be
achieved through TCS. The product’s purity stabilizes and returns
to the near-nominal value in a shorter time. In brief, these works
provide an attractive substitute for ADWC in academic research and
industrial practice
DataSheet5_Classifying breast cancer using multi-view graph neural network based on multi-omics data.CSV
Introduction: As the evaluation indices, cancer grading and subtyping have diverse clinical, pathological, and molecular characteristics with prognostic and therapeutic implications. Although researchers have begun to study cancer differentiation and subtype prediction, most of relevant methods are based on traditional machine learning and rely on single omics data. It is necessary to explore a deep learning algorithm that integrates multi-omics data to achieve classification prediction of cancer differentiation and subtypes.Methods: This paper proposes a multi-omics data fusion algorithm based on a multi-view graph neural network (MVGNN) for predicting cancer differentiation and subtype classification. The model framework consists of a graph convolutional network (GCN) module for learning features from different omics data and an attention module for integrating multi-omics data. Three different types of omics data are used. For each type of omics data, feature selection is performed using methods such as the chi-square test and minimum redundancy maximum relevance (mRMR). Weighted patient similarity networks are constructed based on the selected omics features, and GCN is trained using omics features and corresponding similarity networks. Finally, an attention module integrates different types of omics features and performs the final cancer classification prediction.Results: To validate the cancer classification predictive performance of the MVGNN model, we conducted experimental comparisons with traditional machine learning models and currently popular methods based on integrating multi-omics data using 5-fold cross-validation. Additionally, we performed comparative experiments on cancer differentiation and its subtypes based on single omics data, two omics data, and three omics data.Discussion: This paper proposed the MVGNN model and it performed well in cancer classification prediction based on multiple omics data.</p
DataSheet3_Classifying breast cancer using multi-view graph neural network based on multi-omics data.CSV
Introduction: As the evaluation indices, cancer grading and subtyping have diverse clinical, pathological, and molecular characteristics with prognostic and therapeutic implications. Although researchers have begun to study cancer differentiation and subtype prediction, most of relevant methods are based on traditional machine learning and rely on single omics data. It is necessary to explore a deep learning algorithm that integrates multi-omics data to achieve classification prediction of cancer differentiation and subtypes.Methods: This paper proposes a multi-omics data fusion algorithm based on a multi-view graph neural network (MVGNN) for predicting cancer differentiation and subtype classification. The model framework consists of a graph convolutional network (GCN) module for learning features from different omics data and an attention module for integrating multi-omics data. Three different types of omics data are used. For each type of omics data, feature selection is performed using methods such as the chi-square test and minimum redundancy maximum relevance (mRMR). Weighted patient similarity networks are constructed based on the selected omics features, and GCN is trained using omics features and corresponding similarity networks. Finally, an attention module integrates different types of omics features and performs the final cancer classification prediction.Results: To validate the cancer classification predictive performance of the MVGNN model, we conducted experimental comparisons with traditional machine learning models and currently popular methods based on integrating multi-omics data using 5-fold cross-validation. Additionally, we performed comparative experiments on cancer differentiation and its subtypes based on single omics data, two omics data, and three omics data.Discussion: This paper proposed the MVGNN model and it performed well in cancer classification prediction based on multiple omics data.</p
DataSheet4_Classifying breast cancer using multi-view graph neural network based on multi-omics data.CSV
Introduction: As the evaluation indices, cancer grading and subtyping have diverse clinical, pathological, and molecular characteristics with prognostic and therapeutic implications. Although researchers have begun to study cancer differentiation and subtype prediction, most of relevant methods are based on traditional machine learning and rely on single omics data. It is necessary to explore a deep learning algorithm that integrates multi-omics data to achieve classification prediction of cancer differentiation and subtypes.Methods: This paper proposes a multi-omics data fusion algorithm based on a multi-view graph neural network (MVGNN) for predicting cancer differentiation and subtype classification. The model framework consists of a graph convolutional network (GCN) module for learning features from different omics data and an attention module for integrating multi-omics data. Three different types of omics data are used. For each type of omics data, feature selection is performed using methods such as the chi-square test and minimum redundancy maximum relevance (mRMR). Weighted patient similarity networks are constructed based on the selected omics features, and GCN is trained using omics features and corresponding similarity networks. Finally, an attention module integrates different types of omics features and performs the final cancer classification prediction.Results: To validate the cancer classification predictive performance of the MVGNN model, we conducted experimental comparisons with traditional machine learning models and currently popular methods based on integrating multi-omics data using 5-fold cross-validation. Additionally, we performed comparative experiments on cancer differentiation and its subtypes based on single omics data, two omics data, and three omics data.Discussion: This paper proposed the MVGNN model and it performed well in cancer classification prediction based on multiple omics data.</p
DataSheet1_Classifying breast cancer using multi-view graph neural network based on multi-omics data.CSV
Introduction: As the evaluation indices, cancer grading and subtyping have diverse clinical, pathological, and molecular characteristics with prognostic and therapeutic implications. Although researchers have begun to study cancer differentiation and subtype prediction, most of relevant methods are based on traditional machine learning and rely on single omics data. It is necessary to explore a deep learning algorithm that integrates multi-omics data to achieve classification prediction of cancer differentiation and subtypes.Methods: This paper proposes a multi-omics data fusion algorithm based on a multi-view graph neural network (MVGNN) for predicting cancer differentiation and subtype classification. The model framework consists of a graph convolutional network (GCN) module for learning features from different omics data and an attention module for integrating multi-omics data. Three different types of omics data are used. For each type of omics data, feature selection is performed using methods such as the chi-square test and minimum redundancy maximum relevance (mRMR). Weighted patient similarity networks are constructed based on the selected omics features, and GCN is trained using omics features and corresponding similarity networks. Finally, an attention module integrates different types of omics features and performs the final cancer classification prediction.Results: To validate the cancer classification predictive performance of the MVGNN model, we conducted experimental comparisons with traditional machine learning models and currently popular methods based on integrating multi-omics data using 5-fold cross-validation. Additionally, we performed comparative experiments on cancer differentiation and its subtypes based on single omics data, two omics data, and three omics data.Discussion: This paper proposed the MVGNN model and it performed well in cancer classification prediction based on multiple omics data.</p
DataSheet2_Classifying breast cancer using multi-view graph neural network based on multi-omics data.CSV
Introduction: As the evaluation indices, cancer grading and subtyping have diverse clinical, pathological, and molecular characteristics with prognostic and therapeutic implications. Although researchers have begun to study cancer differentiation and subtype prediction, most of relevant methods are based on traditional machine learning and rely on single omics data. It is necessary to explore a deep learning algorithm that integrates multi-omics data to achieve classification prediction of cancer differentiation and subtypes.Methods: This paper proposes a multi-omics data fusion algorithm based on a multi-view graph neural network (MVGNN) for predicting cancer differentiation and subtype classification. The model framework consists of a graph convolutional network (GCN) module for learning features from different omics data and an attention module for integrating multi-omics data. Three different types of omics data are used. For each type of omics data, feature selection is performed using methods such as the chi-square test and minimum redundancy maximum relevance (mRMR). Weighted patient similarity networks are constructed based on the selected omics features, and GCN is trained using omics features and corresponding similarity networks. Finally, an attention module integrates different types of omics features and performs the final cancer classification prediction.Results: To validate the cancer classification predictive performance of the MVGNN model, we conducted experimental comparisons with traditional machine learning models and currently popular methods based on integrating multi-omics data using 5-fold cross-validation. Additionally, we performed comparative experiments on cancer differentiation and its subtypes based on single omics data, two omics data, and three omics data.Discussion: This paper proposed the MVGNN model and it performed well in cancer classification prediction based on multiple omics data.</p
Deep Learning to Reveal the Distribution and Diffusion of Water Molecules in Fuel Cell Catalyst Layers
Water
management in the catalyst layers (CLs) of proton-exchange
membrane fuel cells is crucial for its commercialization and popularization.
However, the high experimental or computational cost in obtaining
water distribution and diffusion remains a bottleneck in the existing
experimental methods and simulation algorithms, and further mechanistic
exploration at the nanoscale is necessary. Herein, we integrate, for
the first time, molecular dynamics simulation with our customized
analysis framework based on a multiattribute point cloud dataset and
an advanced deep learning network. This was achieved through our workflow
that generates simulated transport data of water molecules in the
CLs as the training and test dataset. Deep learning framework models
the multibody solid–liquid system of CLs on a molecular scale
and completes the mapping from the Pt/C substrate structure and Nafion
aggregates to the density distribution and diffusion coefficient of
water molecules. The prediction results are comprehensively analyzed
and error evaluated, which reveals the highly anisotropic interaction
landscape between 50,000 pairs of interacting nanoparticles and explains
the structure and water transport property relationship in the hydrated
Nafion film on the molecular scale. Compared to the conventional methods,
the proposed deep learning framework shows computational cost efficiency,
accuracy, and good visual display. Further, it has a generality potential
to model macro- and microscopic mass transport in different components
of fuel cells. Our framework is expected to make real-time predictions
of the distribution and diffusion of water molecules in CLs as well
as establish statistical significance in the structural optimization
and design of CLs and other components of fuel cells