Nome |
# |
Detecting Disease Specific Pathway Substructures through an Integrated Systems Biology Approach, file dfe4d22a-0785-bb0a-e053-d805fe0a78d9
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66
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Colistin Resistant A. baumannii: Genomic and Transcriptomic Traits Acquired Under Colistin Therapy, file dfe4d229-938a-bb0a-e053-d805fe0a78d9
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56
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OCDB: a database collecting genes, miRNAs and drugs for obsessive-compulsive disorder., file dfe4d22a-ce04-bb0a-e053-d805fe0a78d9
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40
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Disentangling restrictive and repetitive behaviors and social impairments in children and adolescents with gilles de la tourette syndrome and autism spectrum disorder, file dfe4d22c-1205-bb0a-e053-d805fe0a78d9
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33
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Exploring the role of interdisciplinarity in physics: Success, talent and luck, file dfe4d229-b977-bb0a-e053-d805fe0a78d9
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31
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Current knowledge and computational techniques for grapevine meta-omics analysis, file dfe4d22a-037e-bb0a-e053-d805fe0a78d9
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29
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null, file dfe4d229-e17b-bb0a-e053-d805fe0a78d9
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28
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microRNA editing in seed region aligns with cellular changes in hypoxic conditions, file dfe4d22c-e62e-bb0a-e053-d805fe0a78d9
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26
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A Subset of Patients With Autism Spectrum Disorders Show a Distinctive Metabolic Profile by Dried Blood Spot Analyses, file dfe4d229-9654-bb0a-e053-d805fe0a78d9
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24
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NETME: on-the-fly knowledge network construction from biomedical literature, file dfe4d22e-b588-bb0a-e053-d805fe0a78d9
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22
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NetMatchStar: an enhanced Cytoscape network querying app [version 2; referees: 2 approved], file dfe4d22b-70c6-bb0a-e053-d805fe0a78d9
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20
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Computational approaches for the analysis of ncRNA through deep sequencing techniques, file dfe4d22a-8466-bb0a-e053-d805fe0a78d9
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17
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TACITuS: Transcriptomic data collector, integrator, and selector on big data platform, file dfe4d229-e18d-bb0a-e053-d805fe0a78d9
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15
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Knowledge in the investigation of A-to-I RNA editing signals, file dfe4d22a-07e1-bb0a-e053-d805fe0a78d9
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14
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Vector: An integrated correlation network database for the identification of ceRNA axes in uveal melanoma, file dfe4d22e-a936-bb0a-e053-d805fe0a78d9
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14
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INBIA: A boosting methodology for proteomic network inference, file dfe4d229-fe27-bb0a-e053-d805fe0a78d9
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13
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PHENSIM: Phenotype Simulator, file dfe4d22e-4e7f-bb0a-e053-d805fe0a78d9
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13
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MODIT: MOtif DIscovery in Temporal Networks, file 1cd94cb8-08db-4227-83c1-8f8fa160c718
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12
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SPECTRA: an Integrated Knowledge Base for Comparing Tissue and Tumor Specific PPI Networks in Human, file dfe4d22a-8f14-bb0a-e053-d805fe0a78d9
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12
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Sequence similarity is more relevant than species specificity in probabilistic backtranslation, file dfe4d226-fa1d-bb0a-e053-d805fe0a78d9
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11
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Prediction of human population responses to toxic compounds by a collaborative competition, file dfe4d22a-07f7-bb0a-e053-d805fe0a78d9
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11
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A Snapshot of the COL-R Acinetobacter baumannii Comparative Transcriptome by RNA-seq., file 4f95fa60-faa3-490b-b47e-a3fb1c6e151e
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10
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A-to-I RNA editing: current knowledge sources and computational approaches with special emphasis on non-coding RNA molecules, file dfe4d22a-722b-bb0a-e053-d805fe0a78d9
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10
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MiRandola 2017: a curated knowledge base of non-invasive biomarkers, file dfe4d228-4c3e-bb0a-e053-d805fe0a78d9
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9
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Endogenous and artificial miRNAs explore a rich variety of conformations: a potential relationship between secondary structure and biological functionality, file dfe4d22a-2d54-bb0a-e053-d805fe0a78d9
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9
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RNAdetector: a free user-friendly stand-alone and cloud-based system for RNA-Seq data analysis, file dfe4d22e-4e81-bb0a-e053-d805fe0a78d9
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8
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NetMatch: a Cytoscape Plugin for Searching Biological Networks, file dfe4d226-f6ff-bb0a-e053-d805fe0a78d9
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7
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Editorial: Bioinformatics of non-coding RNAs with applications to biomedicine: recent advances and open challenges, file dfe4d22b-0fd2-bb0a-e053-d805fe0a78d9
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7
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Exploiting conformation and structural analysis of endogenous miRNAs to refine gene targeting evaluation, file dfe4d22c-c95a-bb0a-e053-d805fe0a78d9
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7
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Drug-Target interaction prediction through Domain-Tuned Network Based Inference, file dfe4d22e-95f8-bb0a-e053-d805fe0a78d9
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7
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Establish the expected number of induced motifs on unlabeled graphs through analytical models, file 803b9201-7937-4a13-b65f-bcceaf6a5849
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6
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miR-EdiTar: A database of predicted A-to-I edited miRNA target sites, file b04d0da8-064e-4780-a8b5-594b08392975
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6
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Fast analytical methods for finding significant labeled graph motifs, file c581a37f-e8aa-4355-a41b-c6b3c9bbaef1
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6
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SING: Subgraph search In Non-homogeneous Graphs, file dfe4d226-f9bd-bb0a-e053-d805fe0a78d9
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6
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Intracellular
and extracellular miRNome deregulation in cellular models of NAFLD or NASH:
Clinical implications, file dfe4d227-1b60-bb0a-e053-d805fe0a78d9
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6
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TemporalRI: subgraph isomorphism in temporal networks with multiple contacts, file 9916aa1e-1185-4ce9-b977-42f3fdd14b59
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5
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miRo: a miRNA knowledge base, file dfe4d227-0703-bb0a-e053-d805fe0a78d9
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5
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Variability in the Incidence of miRNAs and Genes in Fragile Sites and the Role of Repeats and CpG Islands in the Distribution of Genetic Material, file dfe4d227-16ee-bb0a-e053-d805fe0a78d9
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5
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GraphFind: enhancing graph searching by low support data mining techniques, file dfe4d227-3481-bb0a-e053-d805fe0a78d9
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5
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Intracellular
and extracellular miRNome deregulation in cellular models of NAFLD or NASH:
Clinical implications, file dfe4d227-b3cb-bb0a-e053-d805fe0a78d9
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5
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miR-EdiTar: A database of predicted A-to-I edited miRNA target sites, file dfe4d227-c0ea-bb0a-e053-d805fe0a78d9
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5
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Establish the Expected Number of Injective Motifs on Unlabeled Graphs Through Analytical Models, file 240778bf-9cef-4ec3-bf4a-3605b51c8b24
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4
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DT-Web: a web-based application for drug-target interaction and drug combination prediction through domain-tuned network-based inference, file dfe4d227-95e5-bb0a-e053-d805fe0a78d9
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4
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Post-transcriptional knowledge in pathway analysis increases the accuracy of phenotypes classification, file dfe4d227-986e-bb0a-e053-d805fe0a78d9
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4
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A knowledge-base for the vitis-vinifera functional analysis, file dfe4d227-b255-bb0a-e053-d805fe0a78d9
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4
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Genomica Strutturale e Funzionale del Macchinario Apoptotico: Identificazione di Geni Candidati per Malattie Genetiche Degenerative, file dfe4d227-936b-bb0a-e053-d805fe0a78d9
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3
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An efficient approximate algorithm for the 1-median problem in metric spaces, file dfe4d227-9912-bb0a-e053-d805fe0a78d9
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3
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ANTICLUSTAL: Multiple Sequence Alignment by Antipole Clustering, file dfe4d227-af4e-bb0a-e053-d805fe0a78d9
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3
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Correlation Between Proteomic Network Inference And Protein-protein Interaction Networks, file dfe4d22c-eb3f-bb0a-e053-d805fe0a78d9
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3
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Prevalence and Clinical Characteristics of Children and Adolescents with Metabolically Healthy Obesity: Role of Insulin Sensitivity, file fca37f03-cbec-4729-b0b9-5c57d7a5cf63
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3
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Establish the Expected Number of Injective Motifs on Unlabeled Graphs Through Analytical Models, file 49a66859-c54a-4e3f-98bb-9731cae6be93
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2
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Interactions between achiral porphyrins and a mature miRNA, file bd9c5c3f-d1f9-44b9-9e7d-b908a545ae3e
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2
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SIGMA: A SET-COVER-BASED INEXACT GRAPH MATCHING ALGORITHM, file dfe4d227-a509-bb0a-e053-d805fe0a78d9
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2
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Enhancing density-based clustering: Parameter reduction and outlier detection, file dfe4d228-f0a8-bb0a-e053-d805fe0a78d9
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2
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Fast Subgraph Matching Strategies Based on Pattern-Only Heuristics, file dfe4d229-fe17-bb0a-e053-d805fe0a78d9
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2
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Simple pattern-only heuristics lead to fast subgraph matching strategies on very large networks, file dfe4d229-fe22-bb0a-e053-d805fe0a78d9
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2
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Computational design of artificial RNA molecules for gene regulation, file dfe4d22a-b809-bb0a-e053-d805fe0a78d9
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2
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A benchmarking of pipelines for detecting ncRNAs from RNA-Seq data, file dfe4d22a-f1db-bb0a-e053-d805fe0a78d9
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2
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Establish the Expected Number of Injective Motifs on Unlabeled Graphs Through Analytical Models, file 01380e8a-8923-4430-a8ca-7c45184d78c6
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1
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Application of the PHENotype SIMulator for rapid identification of potential candidates in effective COVID-19 drug repurposing, file 9c77bdc2-a9b7-4a4e-aa91-a494dc35c93a
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1
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MASFENON: Multi-Agent Adaptive Simulation Framework for Evolution in Networks of Networks, file c10fe8b7-3083-45eb-8b84-0edc38898fbe
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1
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The Ratio of Key Metabolic Transcripts Is a Predictive Biomarker of Breast Cancer Metastasis to the Lung, file ce4cc3af-4d7e-4044-9005-3e0973f088ca
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1
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Obstacles constrained group mobility models in event-driven wireless networks with movable base stations, file dfe4d226-f442-bb0a-e053-d805fe0a78d9
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1
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Prediction of human targets for viral-encoded microRNAs by thermodynamics and empirical constraints, file dfe4d226-fc98-bb0a-e053-d805fe0a78d9
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1
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A novel computational method for inferring competing endogenous interactions, file dfe4d227-1d6f-bb0a-e053-d805fe0a78d9
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1
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miRandola: Extracellular Circulating MicroRNAs Database, file dfe4d227-36a2-bb0a-e053-d805fe0a78d9
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1
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Enhancing Graph Database Indexing by Suffix Tree Structure. In: Pattern Recognition in Bioinformatics, file dfe4d227-670e-bb0a-e053-d805fe0a78d9
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1
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Best-Match Retrieval for Structured Images, file dfe4d227-7a72-bb0a-e053-d805fe0a78d9
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1
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A SET-COVER-BASED APPROACH FOR INEXACT GRAPH MATCHING, file dfe4d227-8b08-bb0a-e053-d805fe0a78d9
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1
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In Vitro and In Silico Cloning of Xenopus Laevis SOD2 cDNA and Its Phylogenetic Analysis, file dfe4d227-9050-bb0a-e053-d805fe0a78d9
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1
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Antipole Tree Indexing to Support Range Search and K-Nearest Neighbor Search in Metric Spaces, file dfe4d227-9d81-bb0a-e053-d805fe0a78d9
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1
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Fast methods for finding significant motifs on labelled multi-relational networks, file dfe4d229-fe1c-bb0a-e053-d805fe0a78d9
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1
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Circulating non-coding RNAs as clinical biomarkers, file dfe4d22a-b807-bb0a-e053-d805fe0a78d9
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1
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MICRORNA EXPRESSION PROFILES IN HIGH-GRADE PROSTATIC INTRAEPITHELIAL NEOPLASIA (HGPIN): RE-DEFINING THE PROSTATE CANCER PRECURSOR LESION ACCORDING TO THE GENETIC SIGNATURE, file dfe4d22c-dab9-bb0a-e053-d805fe0a78d9
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1
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Totale |
704 |