journal
Journals Interdisciplinary Sciences, Co...

Interdisciplinary Sciences, Computational Life Sciences

https://read.qxmd.com/read/38340264/a-combined-manual-annotation-and-deep-learning-natural-language-processing-study-on-accurate-entity-extraction-in-hereditary-disease-related-biomedical-literature
#21
JOURNAL ARTICLE
Dao-Ling Huang, Quanlei Zeng, Yun Xiong, Shuixia Liu, Chaoqun Pang, Menglei Xia, Ting Fang, Yanli Ma, Cuicui Qiang, Yi Zhang, Yu Zhang, Hong Li, Yuying Yuan
We report a combined manual annotation and deep-learning natural language processing study to make accurate entity extraction in hereditary disease related biomedical literature. A total of 400 full articles were manually annotated based on published guidelines by experienced genetic interpreters at Beijing Genomics Institute (BGI). The performance of our manual annotations was assessed by comparing our re-annotated results with those publicly available. The overall Jaccard index was calculated to be 0.866 for the four entity types-gene, variant, disease and species...
February 10, 2024: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/38310628/synchronous-mutual-learning-network-and-asynchronous-multi-scale-embedding-network-for-mirna-disease-association-prediction
#22
JOURNAL ARTICLE
Weicheng Sun, Ping Zhang, Weihan Zhang, Jinsheng Xu, Yanrong Huang, Li Li
MicroRNA (miRNA) serves as a pivotal regulator of numerous cellular processes, and the identification of miRNA-disease associations (MDAs) is crucial for comprehending complex diseases. Recently, graph neural networks (GNN) have made significant advancements in MDA prediction. However, these methods tend to learn one type of node representation from a single heterogeneous network, ignoring the importance of multiple network topologies and node attributes. Here, we propose SMDAP (Sequence hierarchical modeling-based Mirna-Disease Association Prediction framework), a novel GNN-based framework that incorporates multiple network topologies and various node attributes including miRNA seed and full-length sequences to predict potential MDAs...
February 4, 2024: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/38294648/pddgcn-a-parasitic-disease-drug-association-predictor-based-on-multi-view-fusion-graph-convolutional-network
#23
JOURNAL ARTICLE
Xiaosong Wang, Guojun Chen, Hang Hu, Min Zhang, Yuan Rao, Zhenyu Yue
The precise identification of associations between diseases and drugs is paramount for comprehending the etiology and mechanisms underlying parasitic diseases. Computational approaches are highly effective in discovering and predicting disease-drug associations. However, the majority of these approaches primarily rely on link-based methodologies within distinct biomedical bipartite networks. In this study, we reorganized a fundamental dataset of parasitic disease-drug associations using the latest databases, and proposed a prediction model called PDDGCN, based on a multi-view graph convolutional network...
January 31, 2024: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/38286905/predicting-mirna-disease-associations-by-combining-graph-and-hypergraph-convolutional-network
#24
JOURNAL ARTICLE
Xujun Liang, Ming Guo, Longying Jiang, Ying Fu, Pengfei Zhang, Yongheng Chen
miRNAs are important regulators for many crucial biological processes. Many recent studies have shown that miRNAs are closely related to various human diseases and can be potential biomarkers or therapeutic targets for some diseases, such as cancers. Therefore, accurately predicting miRNA-disease associations is of great importance for understanding and curing diseases. However, how to efficiently utilize the characteristics of miRNAs and diseases and the information on known miRNA-disease associations for prediction is still not fully explored...
January 29, 2024: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/38206558/lpi-skmsc-predicting-lncrna-protein-interactions-with-segmented-k-mer-frequencies-and-multi-space-clustering
#25
JOURNAL ARTICLE
Dian-Zheng Sun, Zhan-Li Sun, Mengya Liu, Shuang-Hao Yong
 Long noncoding RNAs (lncRNAs) have significant regulatory roles in gene expression. Interactions with proteins are one of the ways lncRNAs play their roles. Since experiments to determine lncRNA-protein interactions (LPIs) are expensive and time-consuming, many computational methods for predicting LPIs have been proposed as alternatives. In the LPIs prediction problem, there commonly exists the imbalance in the distribution of positive and negative samples. However, there are few existing methods that give specific consideration to this problem...
January 11, 2024: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/38206557/ppsno-a-feature-rich-sno-sites-predictor-by-stacking-ensemble-strategy-from-protein-sequence-derived-information
#26
JOURNAL ARTICLE
Lun Zhu, Liuyang Wang, Zexi Yang, Piao Xu, Sen Yang
The protein S-nitrosylation (SNO) is a significant post-translational modification that affects the stability, activity, cellular localization, and function of proteins. Therefore, highly accurate prediction of SNO sites aids in grasping biological function mechanisms. In this document, we have constructed a predictor, named PPSNO, forecasting protein SNO sites using stacked integrated learning. PPSNO integrates multiple machine learning techniques into an ensemble model, enhancing its predictive accuracy. First, we established benchmark datasets by collecting SNO sites from various sources, including literature, databases, and other predictors...
January 11, 2024: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/38190097/protein-multiple-conformation-prediction-using-multi-objective-evolution-algorithm
#27
JOURNAL ARTICLE
Minghua Hou, Sirong Jin, Xinyue Cui, Chunxiang Peng, Kailong Zhao, Le Song, Guijun Zhang
The breakthrough of AlphaFold2 and the publication of AlphaFold DB represent a significant advance in the field of predicting static protein structures. However, AlphaFold2 models tend to represent a single static structure, and multiple-conformation prediction remains a challenge. In this work, we proposed a method named MultiSFold, which uses a distance-based multi-objective evolutionary algorithm to predict multiple conformations. To begin, multiple energy landscapes are constructed using different competing constraints generated by deep learning...
January 8, 2024: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/38183569/a-deep-neural-network-for-predicting-synergistic-drug-combinations-on-cancer
#28
JOURNAL ARTICLE
Shiyu Yan, Ding Zheng
The exploration of drug combinations presents an opportunity to amplify therapeutic effectiveness while alleviating undesirable side effects. Nevertheless, the extensive array of potential combinations poses challenges in terms of cost and time constraints for experimental screening. Thus, it is crucial to narrow down the search space. Deep learning approaches have gained widespread popularity in predicting synergistic drug combinations tailored for specific cell lines in vitro settings. In the present study, we introduce a novel method termed GTextSyn, which utilizes the integration of gene expression data and chemical structure information for the prediction of synergistic effects in drug combinations...
January 6, 2024: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/38103130/drug-repositioning-based-on-deep-sparse-autoencoder-and-drug-disease-similarity
#29
JOURNAL ARTICLE
Song Lei, Xiujuan Lei, Ming Chen, Yi Pan
Drug repositioning is critical to drug development. Previous drug repositioning methods mainly constructed drug-disease heterogeneous networks to extract drug-disease features. However, these methods faced difficulty when we are using structurally simple models to deal with complex heterogeneous networks. Therefore, in this study, the researchers introduced a drug repositioning method named DRDSA. The method utilizes a deep sparse autoencoder and integrates drug-disease similarities. First, the researchers constructed a drug-disease feature network by incorporating information from drug chemical structure, disease semantic data, and existing known drug-disease associations...
December 16, 2023: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/38099958/hessian-regularized-formula-see-text-nonnegative-matrix-factorization-and-deep-learning-for-mirna-disease-associations-prediction
#30
JOURNAL ARTICLE
Guo-Sheng Han, Qi Gao, Ling-Zhi Peng, Jing Tang
Since the identification of microRNAs (miRNAs), empirical research has demonstrated their crucial involvement in the functioning of organisms. Investigating miRNAs significantly bolsters efforts related to averting, diagnosing, and treating intricate human maladies. Yet, exploring every conceivable miRNA-disease association consumes significant resources and time within conventional wet experiments. On the computational front, forecasting potential miRNA-disease connections serves as a valuable source of preliminary insights for medical investigators...
December 15, 2023: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/38060171/the-dynamical-biomarkers-in-functional-connectivity-of-autism-spectrum-disorder-based-on-dynamic-graph-embedding
#31
JOURNAL ARTICLE
Yanting Liu, Hao Wang, Yanrui Ding
Autism spectrum disorder (ASD) is a neurological and developmental disorder and its early diagnosis is a challenging task. The dynamic brain network (DBN) offers a wealth of information for the diagnosis and treatment of ASD. Mining the spatio-temporal characteristics of DBN is critical for finding dynamic communication across brain regions and, ultimately, identifying the ASD diagnostic biomarker. We proposed the dgEmbed-KNN and the Aggregation-SVM diagnostic models, which use the spatio-temporal information from DBN and interactive information among brain regions represented by dynamic graph embedding...
December 7, 2023: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/37978116/dcda-circrna-disease-association-prediction-with-feed-forward-neural-network-and-deep-autoencoder
#32
JOURNAL ARTICLE
Hacer Turgut, Beste Turanli, Betül Boz
Circular RNA is a single-stranded RNA with a closed-loop structure. In recent years, academic research has revealed that circular RNAs play critical roles in biological processes and are related to human diseases. The discovery of potential circRNAs as disease biomarkers and drug targets is crucial since it can help diagnose diseases in the early stages and be used to treat people. However, in conventional experimental methods, conducting experiments to detect associations between circular RNAs and diseases is time-consuming and costly...
November 17, 2023: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/37976024/comprehensive-scrna-seq-model-reveals-artery-endothelial-cell-heterogeneity-and-metabolic-preference-in-human-vascular-disease
#33
JOURNAL ARTICLE
Liping Zeng, Yunchang Liu, Xiaoping Li, Xue Gong, Miao Tian, Peili Yang, Qi Cai, Gengze Wu, Chunyu Zeng
Vascular disease is one of the major causes of death worldwide. Endothelial cells are important components of the vascular structure. A better understanding of the endothelial cell changes in the development of vascular disease may provide new targets for clinical treatment strategies. Single-cell RNA sequencing can serve as a powerful tool to explore transcription patterns, as well as cell type identity. Our current study is based on comprehensive scRNA-seq data of several types of human vascular disease datasets with deep-learning-based algorithm...
November 17, 2023: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/37962777/cervical-cancer-classification-from-pap-smear-images-using-deep-convolutional-neural-network-models
#34
JOURNAL ARTICLE
Sher Lyn Tan, Ganeshsree Selvachandran, Weiping Ding, Raveendran Paramesran, Ketan Kotecha
As one of the most common female cancers, cervical cancer often develops years after a prolonged and reversible pre-cancerous stage. Traditional classification algorithms used for detection of cervical cancer often require cell segmentation and feature extraction techniques, while convolutional neural network (CNN) models demand a large dataset to mitigate over-fitting and poor generalization problems. To this end, this study aims to develop deep learning models for automated cervical cancer detection that do not rely on segmentation methods or custom features...
November 14, 2023: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/37875773/computer-aided-diagnosis-of-complications-after-liver-transplantation-based-on-transfer-learning
#35
JOURNAL ARTICLE
Ying Zhang, Chenyuan Shangguan, Xuena Zhang, Jialin Ma, Jiyuan He, Meng Jia, Na Chen
Liver transplantation is one of the most effective treatments for acute liver failure, cirrhosis, and even liver cancer. The prediction of postoperative complications is of great significance for liver transplantation. However, the existing prediction methods based on traditional machine learning are often unavailable or unreliable due to the insufficient amount of real liver transplantation data. Therefore, we propose a new framework to increase the accuracy of computer-aided diagnosis of complications after liver transplantation with transfer learning, which can handle small-scale but high-dimensional data problems...
October 25, 2023: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/37815680/a-multi-perspective-model-for-protein-ligand-binding-affinity-prediction
#36
JOURNAL ARTICLE
Xianfeng Zhang, Yafei Li, Jinlan Wang, Guandong Xu, Yanhui Gu
Gathering information from multi-perspective graphs is an essential issue for many applications especially for protein-ligand-binding affinity prediction. Most of traditional approaches obtained such information individually with low interpretability. In this paper, we harness the rich information from multi-perspective graphs with a general model, which abstractly represents protein-ligand complexes with better interpretability while achieving excellent predictive performance. In addition, we specially analyze the protein-ligand-binding affinity problem, taking into account the heterogeneity of proteins and ligands...
October 10, 2023: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/37815679/combining-global-constrained-concept-factorization-and-a-regularized-gaussian-graphical-model-for-clustering-single-cell-rna-seq-data
#37
JOURNAL ARTICLE
Yaxin Xu, Wei Zhang, Xiaoying Zheng, Xianxian Cai
Single-cell RNA sequencing technology is one of the most cost-effective ways to uncover transcriptomic heterogeneity. With the rapid rise of this technology, enormous amounts of scRNA-seq data have been produced. Due to the high dimensionality, noise, sparsity and missing features of the available scRNA-seq data, accurately clustering the scRNA-seq data for downstream analysis is a significant challenge. Many computational methods have been designed to address this issue; nevertheless, the efficacy of the available methods is still inadequate...
October 10, 2023: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/37776475/tumour-growth-mechanisms-determine-effectiveness-of-adaptive-therapy-in-glandular-tumours
#38
JOURNAL ARTICLE
Rui Zhen Tan
In cancer treatment, adaptive therapy holds promise for delaying the onset of recurrence through regulating the competition between drug-sensitive and drug-resistant cells. Adaptive therapy has been studied in well-mixed models assuming free mixing of all cells and spatial models considering the interactions of single cells with their immediate adjacent cells. Both models do not reflect the spatial structure in glandular tumours where intra-gland cellular interaction is high, while inter-gland interaction is limited...
September 30, 2023: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/37665496/a-novel-deep-learning-model-for-medical-image-segmentation-with-convolutional-neural-network-and-transformer
#39
JOURNAL ARTICLE
Zhuo Zhang, Hongbing Wu, Huan Zhao, Yicheng Shi, Jifang Wang, Hua Bai, Baoshan Sun
Accurate segmentation of medical images is essential for clinical decision-making, and deep learning techniques have shown remarkable results in this area. However, existing segmentation models that combine transformer and convolutional neural networks often use skip connections in U-shaped networks, which may limit their ability to capture contextual information in medical images. To address this limitation, we propose a coordinated mobile and residual transformer UNet (MRC-TransUNet) that combines the strengths of transformer and UNet architectures...
September 4, 2023: Interdisciplinary Sciences, Computational Life Sciences
https://read.qxmd.com/read/37171681/bmri-net-a-deep-stacked-ensemble-model-for-multi-class-brain-tumor-classification-from-mri-images
#40
JOURNAL ARTICLE
Sohaib Asif, Ming Zhao, Xuehan Chen, Yusen Zhu
Brain tumors are one of the most dangerous health problems for adults and children in many countries. Any failure in the diagnosis of brain tumors may lead to shortening of human life. Accurate and timely diagnosis of brain tumors provides appropriate treatment to increase the patient's chances of survival. Due to the different characteristics of tumors, one of the challenging problems is the classification of three types of brain tumors. With the advent of deep learning (DL) models, three classes of brain tumor classification have been addressed...
September 2023: Interdisciplinary Sciences, Computational Life Sciences
journal
journal
42576
2
3
Fetch more papers »
Fetching more papers... Fetching...
Remove bar
Read by QxMD icon Read
×

Save your favorite articles in one place with a free QxMD account.

×

Search Tips

Use Boolean operators: AND/OR

diabetic AND foot
diabetes OR diabetic

Exclude a word using the 'minus' sign

Virchow -triad

Use Parentheses

water AND (cup OR glass)

Add an asterisk (*) at end of a word to include word stems

Neuro* will search for Neurology, Neuroscientist, Neurological, and so on

Use quotes to search for an exact phrase

"primary prevention of cancer"
(heart or cardiac or cardio*) AND arrest -"American Heart Association"

We want to hear from doctors like you!

Take a second to answer a survey question.