MicroRNA (miRNA) is a class of non-coding single-stranded RNA molecules encoded by endogenous genes with a length of about 22 nucleotides. MiRNAs have been successfully identified as differentially expressed in various cancers. There is evidence that disorders of miRNAs are associated with a variety of complex diseases. Therefore, inferring potential miRNA-disease associations (MDAs) is very important for understanding the aetiology and pathogenesis of many diseases and is useful to disease diagnosis, prognosis and treatment. First, We creatively fused multiple similarity subnetworks from multi-sources for miRNAs, genes and diseases by multiplexing technology, respectively. Then, three multiplexed biological subnetworks are connected through the extended binary association to form a tripartite complete heterogeneous multiplexed network (Tri-HM). Finally, because the constructed Tri-HM network can retain subnetworks' original topology and biological functions and expands the binary association and dependence between the three biological entities, rich neighbourhood information is obtained iteratively from neighbours by a non-equilibrium random walk. Through cross-validation, our tri-HM-RWR model obtained an AUC value of 0.8657, and an AUPR value of 0.2139 in the global 5-fold cross-validation, which shows that our model can more fully speculate disease-related miRNAs.
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http://dx.doi.org/10.1109/TCBB.2022.3143770 | DOI Listing |
J Neurol Sci
December 2024
Emergency Department, Stroke Unit, Sapienza University of Rome, Rome, Italy. Electronic address:
Background And Aims: Iron deficiency (ID) is a prognostic factor in heart failure and acute coronary syndrome. However, its role in cerebrovascular diseases is controversial. We aimed to determine the impact of ID on the functional outcome of acute ischemic stroke patients.
View Article and Find Full Text PDFHealth Serv Res
January 2025
Department of Health Policy, Management and Behavior School of Public Health, University at Albany, State University of New York, Rensselaer, New York, USA.
Objective: To examine the association of Massachusetts Medicaid Accountable Care Organization (ACO) implementation with changes in mental health care utilization in the postpartum period.
Study Setting And Design: We examine care for people with a birth covered by Medicaid or private insurance. We used a difference-in-differences design to compare differences before and after Medicaid ACO implementation for those with Medicaid versus those with private insurance.
East Mediterr Health J
December 2024
Faculty of Medicine, University of Medicine, Tirana, Albania.
Background: Child maltreatment is a global issue that significantly impacts children's lives. In 2018, 32% of 15-year-olds in Albania reported experiencing physical abuse.
Aim: To assess the prevalence and sociodemographic correlates of child abuse and neglect in Albania.
Biomark Med
January 2025
Neurology Department, University Hospital Fattouma Bourguiba, Monastir, Tunisia.
Background: Accurate distinction between stroke etiologic subtypes is critical for physicians to provide tailored treatment. The triglyceride-glucose (TyG) index, a marker of insulin resistance, has been associated with stroke risk but its role in distinguishing stroke etiologic subtypes remains unclear. We aimed to assess the TyG index's ability to differentiate cardioembolic (CE) from non-cardioembolic (NCE) strokes.
View Article and Find Full Text PDFPublic Health Nutr
January 2025
Faculty of Economics and Management, University of Kinshasa, Kinshasa, Democratic Republic of the Congo.
Objective: To investigate the relationship between maternal age and nutritional status, and test associations between maternal nutritional status and child mortality with a focus on maternal obesity.
Design: Secondary analysis of data from nationally representative cross-sectional sample of women of reproductive ages (15-49 years) and their children under five years. The outcome variable for maternal nutritional status was Body Mass Index (BMI), classified into underweight (BMI < 18.
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