keyword
https://read.qxmd.com/read/38650085/genomics-of-severe-and-treatment-resistant-obsessive-compulsive-disorder-treated-with-deep-brain-stimulation-a-preliminary-investigation
#21
JOURNAL ARTICLE
Long Long Chen, Matilda Naesström, Matthew Halvorsen, Anders Fytagoridis, Stephanie B Crowley, David Mataix-Cols, Christian Rück, James J Crowley, Diana Pascal
Individuals with severe and treatment-resistant obsessive-compulsive disorder (trOCD) represent a small but severely disabled group of patients. Since trOCD cases eligible for deep brain stimulation (DBS) probably comprise the most severe end of the OCD spectrum, we hypothesize that they may be more likely to have a strong genetic contribution to their disorder. Therefore, while the worldwide population of DBS-treated cases may be small (~300), screening these individuals with modern genomic methods may accelerate gene discovery in OCD...
April 22, 2024: American Journal of Medical Genetics. Part B, Neuropsychiatric Genetics
https://read.qxmd.com/read/38649970/lower-airway-microbiota-compositions-differ-between-influenza-covid-19-and-bacteria-related-acute-respiratory-distress-syndromes
#22
JOURNAL ARTICLE
Sébastien Imbert, Mathilde Revers, Raphaël Enaud, Arthur Orieux, Adrian Camino, Alexandre Massri, Laurent Villeneuve, Cédric Carrié, Laurent Petit, Alexandre Boyer, Patrick Berger, Didier Gruson, Laurence Delhaes, Renaud Prével
BACKGROUND: Acute respiratory distress syndrome (ARDS) is responsible for 400,000 deaths annually worldwide. Few improvements have been made despite five decades of research, partially because ARDS is a highly heterogeneous syndrome including various types of aetiologies. Lower airway microbiota is involved in chronic inflammatory diseases and recent data suggest that it could also play a role in ARDS. Nevertheless, whether the lower airway microbiota composition varies between the aetiologies of ARDS remain unknown...
April 22, 2024: Critical Care: the Official Journal of the Critical Care Forum
https://read.qxmd.com/read/38649300/ipev-identification-of-prokaryotic-and-eukaryotic-virus-derived-sequences-in-virome-using-deep-learning
#23
JOURNAL ARTICLE
Hengchuang Yin, Shufang Wu, Jie Tan, Qian Guo, Mo Li, Jinyuan Guo, Yaqi Wang, Xiaoqing Jiang, Huaiqiu Zhu
BACKGROUND: The virome obtained through virus-like particle enrichment contains a mixture of prokaryotic and eukaryotic virus-derived fragments. Accurate identification and classification of these elements are crucial to understanding their roles and functions in microbial communities. However, the rapid mutation rates of viral genomes pose challenges in developing high-performance tools for classification, potentially limiting downstream analyses. FINDINGS: We present IPEV, a novel method to distinguish prokaryotic and eukaryotic viruses in viromes, with a 2-dimensional convolutional neural network combining trinucleotide pair relative distance and frequency...
January 2, 2024: GigaScience
https://read.qxmd.com/read/38648214/deep-mining-of-the-sequence-read-archive-reveals-major-genetic-innovations-in-coronaviruses-and-other-nidoviruses-of-aquatic-vertebrates
#24
JOURNAL ARTICLE
Chris Lauber, Xiaoyu Zhang, Josef Vaas, Franziska Klingler, Pascal Mutz, Arseny Dubin, Thomas Pietschmann, Olivia Roth, Benjamin W Neuman, Alexander E Gorbalenya, Ralf Bartenschlager, Stefan Seitz
Virus discovery by genomics and metagenomics empowered studies of viromes, facilitated characterization of pathogen epidemiology, and redefined our understanding of the natural genetic diversity of viruses with profound functional and structural implications. Here we employed a data-driven virus discovery approach that directly queries unprocessed sequencing data in a highly parallelized way and involves a targeted viral genome assembly strategy in a wide range of sequence similarity. By screening more than 269,000 datasets of numerous authors from the Sequence Read Archive and using two metrics that quantitatively assess assembly quality, we discovered 40 nidoviruses from six virus families whose members infect vertebrate hosts...
April 22, 2024: PLoS Pathogens
https://read.qxmd.com/read/38648189/debfold-computational-identification-of-rna-secondary-structures-for-sequences-across-structural-families-using-deep-learning
#25
JOURNAL ARTICLE
Tzu-Hsien Yang
It is now known that RNAs play more active roles in cellular pathways beyond simply serving as transcription templates. These biological mechanisms might be mediated by higher RNA stereo conformations, triggering the need to understand RNA secondary structures first. However, experimental protocols for solving RNA structures are unavailable for large-scale investigation due to their high costs and time-consuming nature. Various computational tools were thus developed to predict the RNA secondary structures from sequences...
April 22, 2024: Journal of Chemical Information and Modeling
https://read.qxmd.com/read/38647155/igcnsda-unraveling-disease-associated-snornas-with-an-interpretable-graph-convolutional-network
#26
JOURNAL ARTICLE
Xiaowen Hu, Pan Zhang, Dayun Liu, Jiaxuan Zhang, Yuanpeng Zhang, Yihan Dong, Yanhao Fan, Lei Deng
Accurately delineating the connection between short nucleolar RNA (snoRNA) and disease is crucial for advancing disease detection and treatment. While traditional biological experimental methods are effective, they are labor-intensive, costly and lack scalability. With the ongoing progress in computer technology, an increasing number of deep learning techniques are being employed to predict snoRNA-disease associations. Nevertheless, the majority of these methods are black-box models, lacking interpretability and the capability to elucidate the snoRNA-disease association mechanism...
March 27, 2024: Briefings in Bioinformatics
https://read.qxmd.com/read/38647152/eravacycline-an-antibacterial-drug-repurposed-for-pancreatic-cancer-therapy-insights-from-a-molecular-based-deep-learning-model
#27
JOURNAL ARTICLE
Adi Jabarin, Guy Shtar, Valeria Feinshtein, Eyal Mazuz, Bracha Shapira, Shimon Ben-Shabat, Lior Rokach
BACKGROUND: Pancreatic ductal adenocarcinoma (PDAC) remains a serious threat to health, with limited effective therapeutic options, especially due to advanced stage at diagnosis and its inherent resistance to chemotherapy, making it one of the leading causes of cancer-related deaths worldwide. The lack of clear treatment directions underscores the urgent need for innovative approaches to address and manage this deadly condition. In this research, we repurpose drugs with potential anti-cancer activity using machine learning (ML)...
March 27, 2024: Briefings in Bioinformatics
https://read.qxmd.com/read/38647082/massively-parallel-identification-of-sequence-motifs-triggering-ribosome-associated-mrna-quality-control
#28
JOURNAL ARTICLE
Katharine Y Chen, Heungwon Park, Arvind Rasi Subramaniam
Decay of mRNAs can be triggered by ribosome slowdown at stretches of rare codons or positively charged amino acids. However, the full diversity of sequences that trigger co-translational mRNA decay is poorly understood. To comprehensively identify sequence motifs that trigger mRNA decay, we use a massively parallel reporter assay to measure the effect of all possible combinations of codon pairs on mRNA levels in S. cerevisiae. In addition to known mRNA-destabilizing sequences, we identify several dipeptide repeats whose translation reduces mRNA levels...
April 22, 2024: Nucleic Acids Research
https://read.qxmd.com/read/38646015/fully-automatic-detection-and-diagnosis-system-for-thyroid-nodules-based-on-ultrasound-video-sequences-by-artificial-intelligence
#29
JOURNAL ARTICLE
Dan Liu, Ke Yang, Chunquan Zhang, Dandan Xiao, Yu Zhao
BACKGROUND: Interpretation of ultrasound findings of thyroid nodules is subjective and labor-intensive for radiologists. Artificial intelligence (AI) is a relatively objective and efficient technology. We aimed to establish a fully automatic detection and diagnosis system for thyroid nodules based on AI technology by analyzing ultrasound video sequences. PATIENTS AND METHODS: We prospectively acquired dynamic ultrasound videos of 1067 thyroid nodules (804 for training and 263 for validation) from December 2018 to January 2021...
2024: Journal of Multidisciplinary Healthcare
https://read.qxmd.com/read/38645719/single-cell-type-annotation-with-deep-learning-in-265-cell-types-for-humans
#30
JOURNAL ARTICLE
Sherry Dong, Kaiwen Deng, Xiuzhen Huang
MOTIVATION: Annotating cell types is a challenging yet essential task in analyzing single-cell RNA sequencing data. However, due to the lack of a gold standard, it is difficult to evaluate the algorithms fairly and an overfitting algorithm may be favored in benchmarks. To address this challenge, we developed a deep learning-based single-cell type prediction tool that assigns the cell type to 265 different cell types for humans, based on data from approximately five million cells. RESULTS: We achieved a median area under the ROC curve (AUC) of 0...
2024: Bioinform Adv
https://read.qxmd.com/read/38645052/blended-genome-exome-bge-as-a-cost-efficient-alternative-to-deep-whole-genomes-or-arrays
#31
Matthew DeFelice, Jonna L Grimsby, Daniel Howrigan, Kai Yuan, Sinéad B Chapman, Christine Stevens, Samuel DeLuca, Megan Townsend, Joseph Buxbaum, Margaret Pericak-Vance, Shengying Qin, Dan J Stein, Solomon Teferra, Ramnik J Xavier, Hailiang Huang, Alicia R Martin, Benjamin M Neale
Genomic scientists have long been promised cheaper DNA sequencing, but deep whole genomes are still costly, especially when considered for large cohorts in population-level studies. More affordable options include microarrays + imputation, whole exome sequencing (WES), or low-pass whole genome sequencing (WGS) + imputation. WES + array + imputation has recently been shown to yield 99% of association signals detected by WGS. However, a method free from ascertainment biases of arrays or the need for merging different data types that still benefits from deeper exome coverage to enhance novel coding variant detection does not exist...
April 9, 2024: bioRxiv
https://read.qxmd.com/read/38644393/deepreg-a-deep-learning-hybrid-model-for-predicting-transcription-factors-in-eukaryotic-and-prokaryotic-genomes
#32
JOURNAL ARTICLE
Leonardo Ledesma-Dominguez, Erik Carbajal-Degante, Gabriel Moreno-Hagelsieb, Ernesto Perez-Rueda
Deep learning models (DLMs) have gained importance in predicting, detecting, translating, and classifying a diversity of inputs. In bioinformatics, DLMs have been used to predict protein structures, transcription factor-binding sites, and promoters. In this work, we propose a hybrid model to identify transcription factors (TFs) among prokaryotic and eukaryotic protein sequences, named Deep Regulation (DeepReg) model. Two architectures were used in the DL model: a convolutional neural network (CNN), and a bidirectional long-short-term memory (BiLSTM)...
April 21, 2024: Scientific Reports
https://read.qxmd.com/read/38644075/deep-learning-based-model-predictive-controller-on-a-magnetic-levitation-ball-system
#33
JOURNAL ARTICLE
Tianbo Peng, Hui Peng, Rongwei Li
The magnetic levitation (maglev) ball system is a prototypical Single-Input-Single-Output (SISO) system, characterized by its pronounced nonlinearity, rapid response, and open-loop instability. It serves as the basis for many industrial devices. For describing the dynamics of the maglev ball system precisely in the pseudo linear model, the long short-term memory (LSTM) based auto-regressive model with exogenous input variables (LSTM-ARX) is proposed. Firstly, the LSTM network is modified by incorporating the auto-regressive structure with respect to sequence input, allowing it to deduce a locally linearized model without the need for Taylor expansion...
April 18, 2024: ISA Transactions
https://read.qxmd.com/read/38643894/research-progress-on-prediction-of-rna-protein-binding-sites-in-the-past-five-years
#34
REVIEW
Yun Zuo, Huixian Chen, Lele Yang, Ruoyan Chen, Xiaoyao Zhang, Zhaohong Deng
Accurately predicting RNA-protein binding sites is essential to gain a deeper comprehension of the protein-RNA interactions and their regulatory mechanisms, which are fundamental in gene expression and regulation. However, conventional biological approaches to detect these sites are often costly and time-consuming. In contrast, computational methods for predicting RNA protein binding sites are both cost-effective and expeditious. This review synthesizes already existing computational methods, summarizing commonly used databases for predicting RNA protein binding sites...
April 19, 2024: Analytical Biochemistry
https://read.qxmd.com/read/38643383/model-fusion-for-predicting-unconventional-proteins-secreted-by-exosomes-using-deep-learning
#35
JOURNAL ARTICLE
Yonglin Zhang, Lezheng Yu, Ming Yang, Bin Han, Jiesi Luo, Runyu Jing
Unconventional secretory proteins (USPs) are vital for cell-to-cell communication and are necessary for proper physiological processes. Unlike classical proteins that follow the conventional secretory pathway via the Golgi apparatus, these proteins are released using unconventional pathways. The primary modes of secretion for USPs are exosomes and ectosomes, which originate from the endoplasmic reticulum. Accurate and rapid identification of exosome-mediated secretory proteins is crucial for gaining valuable insights into the regulation of non-classical protein secretion and intercellular communication, as well as for the advancement of novel therapeutic approaches...
April 21, 2024: Proteomics
https://read.qxmd.com/read/38643305/sequence-based-model-using-deep-neural-network-and-hybrid-features-for-identification-of-5-hydroxymethylcytosine-modification
#36
JOURNAL ARTICLE
Salman Khan, Islam Uddin, Mukhtaj Khan, Nadeem Iqbal, Huda M Alshanbari, Bakhtiyar Ahmad, Dost Muhammad Khan
RNA modifications are pivotal in the development of newly synthesized structures, showcasing a vast array of alterations across various RNA classes. Among these, 5-hydroxymethylcytosine (5HMC) stands out, playing a crucial role in gene regulation and epigenetic changes, yet its detection through conventional methods proves cumbersome and costly. To address this, we propose Deep5HMC, a robust learning model leveraging machine learning algorithms and discriminative feature extraction techniques for accurate 5HMC sample identification...
April 20, 2024: Scientific Reports
https://read.qxmd.com/read/38643119/scalable-protein-production-by-komagataella-phaffii-enabled-by-ars-plasmids-and-carbon-source-based-selection
#37
JOURNAL ARTICLE
Florian Weiss, Guillermo Requena-Moreno, Carsten Pichler, Francisco Valero, Anton Glieder, Xavier Garcia-Ortega
BACKGROUND: Most recombinant Komagataella phaffii (Pichia pastoris) strains for protein production are generated by genomic integration of expression cassettes. The clonal variability in gene copy numbers, integration loci and consequently product titers limit the aptitude for high throughput applications in drug discovery, enzyme engineering or most comparative analyses of genetic elements such as promoters or secretion signals. Circular episomal plasmids with an autonomously replicating sequence (ARS), an alternative which would alleviate some of these limitations, are inherently unstable in K...
April 20, 2024: Microbial Cell Factories
https://read.qxmd.com/read/38643080/tec-mitarget-enhancing-microrna-target-prediction-based-on-deep-learning-of-ribonucleic-acid-sequences
#38
JOURNAL ARTICLE
Tingpeng Yang, Yu Wang, Yonghong He
BACKGROUND: MicroRNAs play a critical role in regulating gene expression by binding to specific target sites within gene transcripts, making the identification of microRNA targets a prominent focus of research. Conventional experimental methods for identifying microRNA targets are both time-consuming and expensive, prompting the development of computational tools for target prediction. However, the existing computational tools exhibit limited performance in meeting the demands of practical applications, highlighting the need to improve the performance of microRNA target prediction models...
April 20, 2024: BMC Bioinformatics
https://read.qxmd.com/read/38643066/mmgat-a-graph-attention-network-framework-for-atac-seq-motifs-finding
#39
JOURNAL ARTICLE
Xiaotian Wu, Wenju Hou, Ziqi Zhao, Lan Huang, Nan Sheng, Qixing Yang, Shuangquan Zhang, Yan Wang
BACKGROUND: Motif finding in Assay for Transposase-Accessible Chromatin using sequencing (ATAC-seq) data is essential to reveal the intricacies of transcription factor binding sites (TFBSs) and their pivotal roles in gene regulation. Deep learning technologies including convolutional neural networks (CNNs) and graph neural networks (GNNs), have achieved success in finding ATAC-seq motifs. However, CNN-based methods are limited by the fixed width of the convolutional kernel, which makes it difficult to find multiple transcription factor binding sites with different lengths...
April 20, 2024: BMC Bioinformatics
https://read.qxmd.com/read/38642704/a-deep-learning-approach-to-predict-bleeding-risk-over-time-in-patients-on-extended-anticoagulation-therapy
#40
JOURNAL ARTICLE
Soroush Shahryari Fard, Theodore J Perkins, Philip S Wells
BACKGROUND: Thus far, all the clinical models developed to predict major bleeding in patients on extended anticoagulation therapy use the baseline predictors to stratify patients into different risk groups. Therefore, these models do not account for the clinical changes and events that occur after the baseline visit, which can modify risk of bleeding. However, it is difficult to develop predictive models from the routine follow-up clinical interviews which are irregular sequences of multivariate time series data...
April 18, 2024: Journal of Thrombosis and Haemostasis: JTH
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