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  • Unravelling Plasma Extracellular Vesicle Diversity With Optimised Spectral Flow Cytometry
    Extracellular vesicles (EVs) are crucial for intercellular communication and are found in various biological fluids. The identification and immunophenotyping of such small particles continue to pose significant challenges. Here, we have developed a workflow for the optimisation of a next-generation panel for in-depth immunophenotyping of circulating plasma EVs using spectral flow cytometry. Our data collection followed a multistep optimisation phase for both instrument setup and 21-colour panel design, thus maximising fluorescent signal recovery. This spectral approach enabled the identification of novel EV subpopulations. Indeed, besides common EVs released by erythrocytes, platelets, leukocytes and endothelial cells, we observed rare and poorly known EV subsets carrying antigens related to cell activation or exhaustion. Notably, the unsupervised data analysis of major EV subsets revealed subpopulations expressing up to five surface antigens simultaneously. However, the majority of EVs expressed only a single surface antigen, suggesting they may not fully represent the phenotype of their parent cells. This is likely due to the small surface area or the biogenesis of EVs rather than antibody steric hindrance. Finally, we tested our workflow by analysing the plasma EV landscape in a cohort of systemic lupus erythematosus (SLE) patients. Interestingly, we observed a significant increase in CD54+ EVs, supporting the notion of elevated circulating ICAM under SLE conditions. To our knowledge, these are the first data highlighting the importance of a spectral flow cytometry approach in deciphering the heterogeneity of plasma EVs paving the way for the routine use of a high-dimensional immunophenotyping in EV research.
  • Experimental Validation of S809 Airfoil and Comparison of lift and drag coefficients of Owl, Seagull and S809 Airfoils.
    The dataset (Experimental Validation of S809 Airfoil) compares the experimental data of S809 airfoil with the data obtained from CFD analysis. The experimental data is taken from Colorado State University, and the selected Reynolds number is 500,000 at a wind speed of 7.3 m/s. This experimental data is taken from the article "Unsteady Aerodynamics Experiment Phase VI: Wind Tunnel Test Configurations and Available Data Campaigns". The CFD data is in good agreement with the experimental data. The data is present in both tabular and in graphical form. The datset (Comparison of lift and drag coefficients of Owl, Seagull and S809 Airfoils) compares the lift and drag coefficients of Owl, Seagull and S809 airfoil obtained from CFD to find out which airfoil will have higher lift to drag ratio, and hence which one can serve better when used in the design of wind turbine. The data is present in both tabular and in graphical form. Contributors: Raja Walied and Raja Moiz.
  • Transcriptome and proteome of LINC01871-deficient human CD4+ T cells
    CD4+ T cells were isolated from human umbilical cord blood samples collected from Turku University Hospital from full-term normal delivery. Mononuclear cells were isolated using Ficoll density gradient centrifugation. CD4+ cells were then enriched using bead-based positive isolation (Dynal CD4 Positive Isolation Kit; Invitrogen, Cat. no. 11331D). LINC01871 was silenced using two LNAs targeting different regions of the gene (LNA1: 5´-TTCGGCCTTTGGTAGT-3´; LNA2: 5´-ACAGATCGTCCACGGC-3´) or non-targeting LNA (NT) (5´-AACACGTCTATACGC-3´). Cells were transfected with LNAs as described before (Andrabi et al., 2024). Briefly, 4 million cells, resuspended in 100 µl OptiMEM medium (Gibco by Life Technologies, Cat. no. 31985-047), were transfected with 300 pmol of LNA) using Amaxa nucleofector system (Nucleofector 2C / U-014 program) (Lonza). After nucleofection, cells were rested in RPMI medium, supplemented with pen/strep, 2 mM L-glutamine and 10% FCS, for 24 h at 37°C followed by their activation, as described above. LINC01871-deficient T cells were activated for 48 h, harvested and reactivated for 30 minutes, followed by RNA-seq and MS analyses. Cells were activated using plate-bound α-CD3 (3.75 μg/ml; Beckman Coulter, Cat. no. IM1304) and soluble α-CD28 (1 μg/ml; Beckman Coulter, Cat. no. IM1376) in RPMI 1640 medium (Sigma-Aldrich) supplemented with L-glutamine (2 mM, Sigma-Aldrich), antibiotics (50 U/ml penicillin plus 50 μg/ml streptomycin; Sigma-Aldrich) and 10% FCS. All cultures were maintained at 37°C in a humidified atmosphere of 5% (v/v) CO2 incubator. The RNA-seq and mass spectrometry (MS) data were of good quality. The principal component analysis (PCA) revealed low variability within biological replicates and high variability between the sample groups NT, LNA1 and LNA2 across the two main principal components (Fig. 2I). Hundreds of genes were DE upon LINC01871 silencing both in RNAseq and MS data (FDR<0.05), but the effect sizes were small (Table S2-3).
  • Integrative proteo-transcriptomic characterization of advanced fibrosis in chronic liver disease across etiologies
    Olink Data of 40 Healthy Individuals and 144 Patients with Chronic Liver Disease, including Chroniv Viral Hepatitis, Alcohol-related Liver disease, and Metabolic Dysfunction-associated Steatotic Liver Disease. Inclusion and exclusion criteria: The study included adults aged 18-80 years who can provide informed consent and have a confirmed diagnosis of chronic liver disease through clinical evaluation, imaging, and histopathological findings. General exclusion criteria encompassed the presence of acute liver disease and other chronic liver diseases, such as Budd-Chiari syndrome, Wilson’s disease, autoimmune hepatitis, and drug-induced liver disease. Additional exclusion criteria include concurrent severe systemic illnesses, such as advanced cardiovascular disease, sepsis, or any malignancy other than HCC. Participants who were pregnant or lactating and had a history of organ transplantation were also excluded. For patients with MASLD and ARLD, diagnosis-specific inclusion and exclusion criteria are determined following guidelines outlined by Rinella et. al., 2023 2. For those with CVH, inclusion criteria involve a diagnosis of chronic viral hepatitis confirmed by serological tests. Patients diagnosed with hepatocellular carcinoma (HCC) met the general background etiology criteria of MASLD, ARLD, or CVH and had histologically or radiologically confirmed HCC.
  • Orthogonal Experiment Test Data and Results Analysis
    Orthogonal test design table is a standardized table made on the basis of practical experience and theoretical understanding, this experiment uses L25 (56) type Tanioka orthogonal test table, 25 groups of tests are expected to be conducted. the orthogonal test examined the effects of moisture content (factor A), proportion (factor B), and heating temperature (factor C) on the particle density of molded particles to find the optimal combination of molding parameters, so as to obtain the best molding results.
  • Reforming Civic Education_The Cyprus Experiment_Voting_Evaluation_Data
    The data stem from two democratic participatory processes (Structured Democratic Dialogues), which were organized in Cyprus in 2024; the first under the auspices of the Presidency aimed to develop a roadmap for introducing SDD in the school curricula; the second aimed to explore reforms that would render the educational experience more relevant and joyful. More information regarding the process and results is available: https://futureworlds.eu/wiki/Citizens_Commissioner%27s_Dialogue_to_Introduce_SDD_in_the_School_Curriculum https://futureworlds.eu/wiki/Ευτυχισμένοι_μαθητές_σε_ακμάζοντα_σχολεία_EN:_Happy_learners_in_thriving_schools The files include: (i) The questionnaire that has been used to evaluate the SDD in Education workshop (Original in Greek with an English translation: SDD_in_Education_Evaluation_Form_GR.pdf and SDD_in_Education_Evaluation_Form_EN.pdf). (ii) The raw data (in Excel) of the 1st and 2nd voting for both SDDs (SDD_HappyKids_1st_2nd_Vote_20250618.xlsx and SDD_in_Education_1st_2nd_Vote_20250618.xlsx). (iii) The processed data, along with charts generated (SDD_Edu_Politis_Charts_02.xlsx and SDD_Edu_Politis_Phases_Charts_02.xlsx). The first result from the Questionnaires (in response to the question, "Which, in your opinion, of the following skills can be developed through student participation in SDD? ") revealed that the abilities that develop the most through participating in SDD are expressive skills, critical thinking, problem solving, collaboration, flexibility, adaptability, and communication skills. Skills that develop moderately include emotional intelligence, creativity, and innovation. The second result (in response to "Which of the following skills can be developed in which of the stages of the SDD,") revealed that the first stages of the SDD (i.e., Idea Generation -Gene and Idea Clarification -Clar) promote active listening and expressive skills, while critical thinking and the ability to tackle and deal with stereotypes are favored in the latter stages (i.e., Clustering -Clu and Mapping -Map). The ability to change one's opinion, adapt, and become flexible in considering diverse viewpoints, tackle stereotypes, and engage in public debate appears to develop the most during the Clustering stage. The charts for the 1st and 2nd voting tested the hypothesis that participants' priorities shift as they clarify the meaning of each idea. Specifically, the results highlight the shift in priorities between the participants' preference voting before and after the Clustering. Note that before clustering the top ideas were #3, #29, #6, #2, #12, etc (Fig. 6), while, after Clustering, not only the ranking has changed, but also ideas that were not considered a priority now receive more votes (e.g., #6 shifts to 2nd place, #29 to 6th annd #13, #17, #9, etc. make it to the top six). The two files, named Charts_02, simply include the processed data used to generate the final charts.
  • Gender quotas and politicians' education
    Here you can find the datasets and Stata codes to replicate the tables and figures in "Gender quotas and politicians' education", authored by Francesca Passarelli and David Boto-García.
  • Euthanasia AND Psychologists
    Attitudes, Roles, and Competencies of Clinical Psychologists Regarding Euthanasia due to Unbearable Mental Suffering This study examined the attitudes, roles, and competencies of clinical psychologists in Flanders toward euthanasia in cases of UMS euthanasia. A total of 242 clinical psychologists participated in the survey. This study employed a cross-sectional quantitative design using an online questionnaire. Overall, results indicated that clinical psychologists hold a predominantly positive attitude toward UMS euthanasia. The mean total score was 79.13, which is above the neutral midpoint score of 63. Psychologists also endorsed their role in decision‑making and exploring alternatives (87.2%). Almost all (96.3%) felt responsible for discussing alternatives prior to a decision. In terms of professional competencies, nearly half of the clinical psychologists in this study (47.1%) reported insufficient knowledge to adequately handle euthanasia requests, while 37.6% indicated that they lacked the necessary practical skills. Additionally, an overwhelming majority (94.2%) felt that euthanasia in the context of unbearable mental suffering was not adequately covered during their formal education or training.
  • Biogeochemical Transformation of Organic Matter with Depth in Mountain Peatlands
    This dataset primarily characterizes the depth distribution of carbon and nitrogen elements, along with their compositional profiles, across four typical mid-high latitude mountainous peatlands.
  • Discovery of human gut phage-encoded Anti-CRISPR proteins unveils diverse mechanisms for phages to evade host immunity
    This collection of Supplementary Tables provides comprehensive datasets and analyses supporting the systematic identification and characterization of CRISPR-Cas systems and anti-CRISPR (Acr) proteins in the human gut microbiome. Tables S1–S7 and S10 detail the detection, classification, and phylogenetic analysis of Class 1 and Class 2 CRISPR-Cas systems—including Cas9 orthologs—within the UHGG database. Tables S9 and S11 document spacer–virus connections between UHGG and GVD, enabling the prediction of phage-encoded Acrs. Tables S12–S14 summarize Acr candidate selection, codon optimization, and library construction. Functional validation data for Acrs targeting six Type II-Cas9 systems (Spy-, Sa-, St1-, St3-, Fn-, and NmCas9) are presented in Tables S16–S22, with a non-redundant Acr set provided in Table S22. Finally, structural analyses, including fold similarity and the GutAcraca family, are summarized in Tables S24–S26. Table S1. Class 1 CRISPR-Cas systems detected in UHGG, related to Figure 1A Table S2. Class 2 CRISPR-Cas systems detected in UHGG, related to Figure 1A, B Table S3. Type I CRISPR-Cas systems with Cas3 detected in UHGG, related to Figure 1A Table S4. Type III CRISPR-Cas systems with Cas10 detected in UHGG, related to Figure 1A Table S5. Distribution of type II, V, and VI CRISPR-Cas systems from Class 2 across microbial classes, related to Figure 1B Table S6. Cas9 CDSs detected in UHGG, related to Figure 1C. Cas9_subfamily were obtained from UniProt according to UniProtKB_Entry annotated by UHGG. Table S7. Non-redundant Cas9 CDSs used to construct the phylogenetic tree, related to Figure 1C Table S9. Connections between CRISPR spacers from UHGG and viral contigs from GVD through CRISPR-spacer blastn matches, related to Figure 2A and Figure S1 Table S10. Non-redundant Cas9 CDSs used to construct the phylogenetic tree, related to Figure S1 Table S11. Viral contigs in GVD which had CRISPR spacer matching with microbial genomes in UHGG carrying Cas9, related to Figure 2A Table S12. Acr candidates with amino acid sequence, related to Figure 2A Table S13. Selecting Acr candidates for DNA sequence codon optimization, related to Figure 2B Table S14. Oligos design of Acr candidate library, related to Figure 2B Table S16. Acrs of SpyCas9, related to Figure S3A, B Table S17. Acrs of SaCas9, related to Figure S3A, B Table S18. Acrs of St1Cas9, related to Figure S3A, B Table S19. Acrs of St3Cas9, related to Figure S3A, B Table S20. Acrs of FnCas9, related to Figure S3A, B Table S21. Acrs of NmCas9, related to Figure S3A, B Table S22. 651 non-redundant Acrs in total, related to Figure 4A, B Table S24. Structural similarity matrix of Acrs, related to Figure 4A, B and Figure S5B Table S25. Members of GutAcraca, related to Figure 4B Table S26. GutAcracas structural similarity in the AlphaFold database, related to Figure 5N
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