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Inflammation is a biologically resistant response to harmful stimuli, such as infection, damaged cells, toxic chemicals, or tissue injuries. Its purpose is to eradicate pathogenic micro-organisms or irritants and facilitate tissue repair. Prolonged inflammation can result in chronic inflammatory diseases. However, wet-laboratory-based treatments are costly and time-consuming and may have adverse side effects on normal cells. In the past decade, peptide therapeutics have gained significant attention due to their high specificity in targeting affected cells without affecting healthy cells. Motivated by the significance of peptide-based therapies, we developed a highly discriminative prediction model called AIPs-SnTCN to predict anti-inflammatory peptides accurately. The peptide samples are encoded using word embedding techniques such as skip-gram and attention-based bidirectional encoder representation using a transformer (BERT). The conjoint triad feature (CTF) also collects structure-based cluster profile features. The fused vector of word embedding and sequential features is formed to compensate for the limitations of single encoding methods. Support vector machine-based recursive feature elimination (SVM-RFE) is applied to choose the ranking-based optimal space. The optimized feature space is trained by using an improved self-normalized temporal convolutional network (SnTCN). The AIPs-SnTCN model achieved a predictive accuracy of 95.86% and an AUC of 0.97 by using training samples. In the case of the alternate training data set, our model obtained an accuracy of 92.04% and an AUC of 0.96. The proposed AIPs-SnTCN model outperformed existing models with an ∼19% higher accuracy and an ∼14% higher AUC value. The reliability and efficacy of our AIPs-SnTCN model make it a valuable tool for scientists and may play a beneficial role in pharmaceutical design and research academia.
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http://dx.doi.org/10.1021/acs.jcim.3c01563 | DOI Listing |
Bioinform Adv
August 2025
Department of CSE, BUET, Dhaka 1000, Bangladesh.
Motivation: Lysine (K) succinylation is a crucial post-translational modification involved in cellular homeostasis and metabolism, and has been linked to several diseases in recent research. Despite its emerging importance, current computational methods are limited in performance for predicting succinylation sites.
Results: We propose ResLysEmbed, a novel ResNet-based architecture that combines traditional word embeddings with per-residue embeddings from protein language models for succinylation site prediction.
Child Maltreat
September 2025
Department of Psychology, University of California, Irvine, CA, USA.
Past research has identified a source of miscommunication known as the "pseudotemporal" problem, whereby children mistakenly interpret invitations including the word 'time' (e.g., "tell me about the last time") as requests for temporal information (Friend et al.
View Article and Find Full Text PDFFront Artif Intell
August 2025
Department of Computer Science, Faculty of Sciences, Jamia Millia Islamia, New Delhi, India.
Introduction: The unprecedented COVID-19 pandemic exposed critical weaknesses in global health management, particularly in resource allocation and demand forecasting. This study aims to enhance pandemic preparedness by leveraging real-time social media analysis to detect and monitor resource needs.
Methods: Using SnScrape, over 27.
medRxiv
August 2025
Institute for Data Science and Informatics, Biostatistics and Medical Epidemiology; University of Missouri, Columbia, Missouri, United States.
Early detection of adverse events and fall injuries may improve patient safety outcomes for clinical trials in geriatric populations. This study evaluates multimodal models combining structured SOAP notes and remote biophysical sensor measurements to classify adverse event occurrences and fall events in a clinical trial with rural older adults participants. XGBoost classifiers were trained on BioBERT, BioClinicalBERT and BERT-Uncased SOAP note embeddings, with and without fused sensor features, and compared across control and intervention cohorts.
View Article and Find Full Text PDFRadiology
August 2025
Department of Radiology, The Ohio State University Wexner Medical Center, Columbus, Ohio.
Natural language processing (NLP) has undergone extensive transformation since its infancy from rule-based systems to the sophisticated architectures of today's machine learning models. Initially, NLP relied on hard-coded grammar rules and dictionaries, which were labor-intensive and lacked flexibility. With the introduction of statistical NLP in the late 20th century, machines began learning language patterns from large datasets, improving fluency and scalability.
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