18 results on '"Bauer-Mehren, Anna"'
Search Results
2. Matching by OS Prognostic Score to Construct External Controls in Lung Cancer Clinical Trials.
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Loureiro, Hugo, Roller, Andreas, Schneider, Meike, Talavera‐López, Carlos, Becker, Tim, and Bauer‐Mehren, Anna
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PROPENSITY score matching ,NON-small-cell lung carcinoma ,LUNG cancer ,CLINICAL trials ,CONFOUNDING variables ,DATABASES - Abstract
External controls (eControls) leverage historical data to create non‐randomized control arms. The lack of randomization can result in confounding between the experimental and eControl cohorts. To balance potentially confounding variables between the cohorts, one of the proposed methods is to match on prognostic scores. Still, the performance of prognostic scores to construct eControls in oncology has not been analyzed yet. Using an electronic health record‐derived de‐identified database, we constructed eControls using one of three methods: ROPRO, a state‐of‐the‐art prognostic score, or either a propensity score composed of five (5Vars) or 27 covariates (ROPROvars). We compared the performance of these methods in estimating the overall survival (OS) hazard ratio (HR) of 11 recent advanced non‐small cell lung cancer. The ROPRO eControls had a lower OS HR error (median absolute deviation (MAD), 0.072, confidence interval (CI): 0.036–0.185), than the 5Vars (MAD 0.081, CI: 0.025–0.283) and ROPROvars eControls (MAD 0.087, CI: 0.054–0.383). Notably, the OS HR errors for all methods were even lower in the phase III studies. Moreover, the ROPRO eControl cohorts included, on average, more patients than the 5Vars (6.54%) and ROPROvars cohorts (11.7%). The eControls matched with the prognostic score reproduced the controls more reliably than propensity scores composed of the underlying variables. Additionally, prognostic scores could allow eControls to be built on many prognostic variables without a significant increase in the variability of the propensity score, which would decrease the number of matched patients. [ABSTRACT FROM AUTHOR]
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- 2024
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3. Correlation Between Early Trends of a Prognostic Biomarker and Overall Survival in Non–Small-Cell Lung Cancer Clinical Trials.
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Loureiro, Hugo, Kolben, Theresa M., Kiermaier, Astrid, Rüttinger, Dominik, Ahmidi, Narges, Becker, Tim, and Bauer-Mehren, Anna
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NON-small-cell lung carcinoma ,OVERALL survival ,PROGRESSION-free survival ,CLINICAL trials ,PROGNOSIS ,DECISION making - Abstract
PURPOSE: Overall survival (OS) is the primary end point in phase III oncology trials. Given low success rates, surrogate end points, such as progression-free survival or objective response rate, are used in early go/no-go decision making. Here, we investigate whether early trends of OS prognostic biomarkers, such as the ROPRO and DeepROPRO, can also be used for this purpose. METHODS: Using real-world data, we emulated a series of 12 advanced non–small-cell lung cancer (aNSCLC) clinical trials, originally conducted by six different sponsors and evaluated four different mechanisms, in a total of 19,920 individuals. We evaluated early trends (until 6 months) of the OS biomarker alongside early OS within the joint model (JM) framework. Study-level estimates of early OS and ROPRO trends were correlated against the actual final OS hazard ratios (HRs). RESULTS: We observed a strong correlation between the JM estimates and final OS HR at 3 months (adjusted R 2 = 0.88) and at 6 months (adjusted R 2 = 0.85). In the leave-one-out analysis, there was a low overall prediction error of the OS HR at both 3 months (root-mean-square error [RMSE] = 0.11) and 6 months (RMSE = 0.12). In addition, at 3 months, the absolute prediction error of the OS HR was lower than 0.05 for three trials. CONCLUSION: We describe a pipeline to predict trial OS HRs using emulated aNSCLC studies and their early OS and OS biomarker trends. The method has the potential to accelerate and improve decision making in drug development. Longitudinal prognostic score found a high correlation with OS in lung cancer clinical trials [ABSTRACT FROM AUTHOR]
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- 2023
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4. Functional evaluation of out-of-the-box text-mining tools for data-mining tasks
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Jung, Kenneth, LePendu, Paea, Iyer, Srinivasan, Bauer-Mehren, Anna, Percha, Bethany, and Shah, Nigam H
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- 2015
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5. Mining clinical text for signals of adverse drug-drug interactions
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Iyer, Srinivasan V, Harpaz, Rave, LePendu, Paea, Bauer-Mehren, Anna, and Shah, Nigam H
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- 2014
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6. The EU-ADR Web Platform: delivering advanced pharmacovigilance tools
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Oliveira, José Luis, Lopes, Pedro, Nunes, Tiago, Campos, David, Boyer, Scott, Ahlberg, Ernst, van Mulligen, Erik M., Kors, Jan A., Singh, Bharat, Furlong, Laura I., Sanz, Ferran, Bauer-Mehren, Anna, Carrascosa, Maria C., Mestres, Jordi, Avillach, Paul, Diallo, Gayo, Díaz Acedo, Carlos, and van der Lei, Johan
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- 2013
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7. DisGeNET: a Cytoscape plugin to visualize, integrate, search and analyze gene–disease networks
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Bauer-Mehren, Anna, Rautschka, Michael, Sanz, Ferran, and Furlong, Laura I.
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- 2010
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8. Deep Learning-based Propensity Scores for Confounding Control in Comparative Effectiveness Research: A Large-scale, Real-world Data Study.
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Weberpals, Janick, Becker, Tim, Davies, Jessica, Schmich, Fabian, Rüttinger, Dominik, Theis, Fabian J., and Bauer-Mehren, Anna
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DATABASES ,COMPUTER simulation ,RETROSPECTIVE studies ,MEDICAL care research ,PROBABILITY theory - Abstract
Background: Due to the non-randomized nature of real-world data, prognostic factors need to be balanced, which is often done by propensity scores (PSs). This study aimed to investigate whether autoencoders, which are unsupervised deep learning architectures, might be leveraged to compute PS.Methods: We selected patient-level data of 128,368 first-line treated cancer patients from the Flatiron Health EHR-derived de-identified database. We trained an autoencoder architecture to learn a lower-dimensional patient representation, which we used to compute PS. To compare the performance of an autoencoder-based PS with established methods, we performed a simulation study. We assessed the balancing and adjustment performance using standardized mean differences, root mean square errors (RMSE), percent bias, and confidence interval coverage. To illustrate the application of the autoencoder-based PS, we emulated the PRONOUNCE trial by applying the trial's protocol elements within an observational database setting, comparing two chemotherapy regimens.Results: All methods but the manual variable selection approach led to well-balanced cohorts with average standardized mean differences <0.1. LASSO yielded on average the lowest deviation of resulting estimates (RMSE 0.0205) followed by the autoencoder approach (RMSE 0.0248). Altering the hyperparameter setup in sensitivity analysis, the autoencoder approach led to similar results as LASSO (RMSE 0.0203 and 0.0205, respectively). In the case study, all methods provided a similar conclusion with point estimates clustered around the null (e.g., HRautoencoder 1.01 [95% confidence interval = 0.80, 1.27] vs. HRPRONOUNCE 1.07 [0.83, 1.36]).Conclusions: Autoencoder-based PS computation was a feasible approach to control for confounding but did not perform better than some established approaches like LASSO. [ABSTRACT FROM AUTHOR]- Published
- 2021
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9. Regulatory T-cell Genes Drive Altered Immune Microenvironment in Adult Solid Cancers and Allow for Immune Contextual Patient Subtyping.
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Brouwer-Visser, Jurriaan, Wei-Yi Cheng, Bauer-Mehren, Anna, Maisel, Daniela, Lechner, Katharina, Andersson, Emilia, Dudley, Joel T., and Milletti, Francesca
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Background: The tumor microenvironment is an important factor in cancer immunotherapy response. To further understand how a tumor affects the local immune system, we analyzed immune gene expression differences between matching normal and tumor tissue. Methods: We analyzed public and new gene expression data from solid cancers and isolated immune cell populations. We also determined the correlation between CD8, FoxP3 IHC, and our gene signatures. Results: We observed that regulatory T cells (Tregs) were one of the main drivers of immune gene expression differences between normal and tumor tissue. A tumor-specific CD8 signature was slightly lower in tumor tissue compared with normal of most (12 of 16) cancers, whereas a Treg signature was higher in tumor tissue of all cancers except liver. Clustering by Treg signature found two groups in colorectal cancer datasets. The high Treg cluster had more samples that were consensus molecular subtype 1/4, right-sided, and microsatellite-instable, compared with the low Treg cluster. Finally, we found that the correlation between signature and IHC was low in our small dataset, but samples in the high Treg cluster had significantly more CD8
+ and FoxP3+ cells compared with the low Treg cluster. Conclusions: Treg gene expression is highly indicative of the overall tumor immune environment. Impact: In comparison with the consensus molecular subtype and microsatellite status, the Treg signature identifies more colorectal tumors with high immune activation that may benefit from cancer immunotherapy. [ABSTRACT FROM AUTHOR]- Published
- 2018
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10. Proton Pump Inhibitor Usage and the Risk of Myocardial Infarction in the General Population.
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Shah, Nigam H., LePendu, Paea, Bauer-Mehren, Anna, Ghebremariam, Yohannes T., Iyer, Srinivasan V., Marcus, Jake, Nead, Kevin T., Cooke, John P., and Leeper, Nicholas J.
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PROTON pump inhibitors ,MYOCARDIAL infarction risk factors ,HEALTH outcome assessment ,CLOPIDOGREL ,ACUTE coronary syndrome ,GASTROESOPHAGEAL reflux ,PATIENTS ,DISEASES - Abstract
Background and Aims: Proton pump inhibitors (PPIs) have been associated with adverse clinical outcomes amongst clopidogrel users after an acute coronary syndrome. Recent pre-clinical results suggest that this risk might extend to subjects without any prior history of cardiovascular disease. We explore this potential risk in the general population via data-mining approaches. Methods: Using a novel approach for mining clinical data for pharmacovigilance, we queried over 16 million clinical documents on 2.9 million individuals to examine whether PPI usage was associated with cardiovascular risk in the general population. Results: In multiple data sources, we found gastroesophageal reflux disease (GERD) patients exposed to PPIs to have a 1.16 fold increased association (95% CI 1.09–1.24) with myocardial infarction (MI). Survival analysis in a prospective cohort found a two-fold (HR = 2.00; 95% CI 1.07–3.78; P = 0.031) increase in association with cardiovascular mortality. We found that this association exists regardless of clopidogrel use. We also found that H
2 blockers, an alternate treatment for GERD, were not associated with increased cardiovascular risk; had they been in place, such pharmacovigilance algorithms could have flagged this risk as early as the year 2000. Conclusions: Consistent with our pre-clinical findings that PPIs may adversely impact vascular function, our data-mining study supports the association of PPI exposure with risk for MI in the general population. These data provide an example of how a combination of experimental studies and data-mining approaches can be applied to prioritize drug safety signals for further investigation. [ABSTRACT FROM AUTHOR]- Published
- 2015
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11. Drug-Induced Acute Myocardial Infarction: Identifying ‘Prime Suspects’ from Electronic Healthcare Records-Based Surveillance System.
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Coloma, Preciosa M., Schuemie, Martijn J., Trifirò, Gianluca, Furlong, Laura, van Mulligen, Erik, Bauer-Mehren, Anna, Avillach, Paul, Kors, Jan, Sanz, Ferran, Mestres, Jordi, Oliveira, José Luis, Boyer, Scott, Helgee, Ernst Ahlberg, Molokhia, Mariam, Matthews, Justin, Prieto-Merino, David, Gini, Rosa, Herings, Ron, Mazzaglia, Giampiero, and Picelli, Gino
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MYOCARDIAL infarction ,ADVERSE health care events ,PHARMACODYNAMICS ,MEDICAL care ,MEDICAL records ,ELECTRONIC surveillance ,MORTALITY - Abstract
Background: Drug-related adverse events remain an important cause of morbidity and mortality and impose huge burden on healthcare costs. Routinely collected electronic healthcare data give a good snapshot of how drugs are being used in ‘real-world’ settings. Objective: To describe a strategy that identifies potentially drug-induced acute myocardial infarction (AMI) from a large international healthcare data network. Methods: Post-marketing safety surveillance was conducted in seven population-based healthcare databases in three countries (Denmark, Italy, and the Netherlands) using anonymised demographic, clinical, and prescription/dispensing data representing 21,171,291 individuals with 154,474,063 person-years of follow-up in the period 1996–2010. Primary care physicians’ medical records and administrative claims containing reimbursements for filled prescriptions, laboratory tests, and hospitalisations were evaluated using a three-tier triage system of detection, filtering, and substantiation that generated a list of drugs potentially associated with AMI. Outcome of interest was statistically significant increased risk of AMI during drug exposure that has not been previously described in current literature and is biologically plausible. Results: Overall, 163 drugs were identified to be associated with increased risk of AMI during preliminary screening. Of these, 124 drugs were eliminated after adjustment for possible bias and confounding. With subsequent application of criteria for novelty and biological plausibility, association with AMI remained for nine drugs (‘prime suspects’): azithromycin; erythromycin; roxithromycin; metoclopramide; cisapride; domperidone; betamethasone; fluconazole; and megestrol acetate. Limitations: Although global health status, co-morbidities, and time-invariant factors were adjusted for, residual confounding cannot be ruled out. Conclusion: A strategy to identify potentially drug-induced AMI from electronic healthcare data has been proposed that takes into account not only statistical association, but also public health relevance, novelty, and biological plausibility. Although this strategy needs to be further evaluated using other healthcare data sources, the list of ‘prime suspects’ makes a good starting point for further clinical, laboratory, and epidemiologic investigation. [ABSTRACT FROM AUTHOR]
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- 2013
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12. Practice-Based Evidence: Profiling the Safety of Cilostazol by Text-Mining of Clinical Notes
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Leeper, Nicholas J., Bauer-Mehren, Anna, Iyer, Srinivasan V., LePendu, Paea, Olson, Cliff, and Shah, Nigam H.
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QUINOLONE antibacterial agents , *ARTERIAL diseases , *INTERMITTENT claudication , *ELECTRONIC health records , *CARDIOVASCULAR diseases , *MYOCARDIAL infarction , *THERAPEUTICS - Abstract
Background: Peripheral arterial disease (PAD) is a growing problem with few available therapies. Cilostazol is the only FDA-approved medication with a class I indication for intermittent claudication, but carries a black box warning due to concerns for increased cardiovascular mortality. To assess the validity of this black box warning, we employed a novel text-analytics pipeline to quantify the adverse events associated with Cilostazol use in a clinical setting, including patients with congestive heart failure (CHF). Methods and Results: We analyzed the electronic medical records of 1.8 million subjects from the Stanford clinical data warehouse spanning 18 years using a novel text-mining/statistical analytics pipeline. We identified 232 PAD patients taking Cilostazol and created a control group of 1,160 PAD patients not taking this drug using 1∶5 propensity-score matching. Over a mean follow up of 4.2 years, we observed no association between Cilostazol use and any major adverse cardiovascular event including stroke (OR = 1.13, CI [0.82, 1.55]), myocardial infarction (OR = 1.00, CI [0.71, 1.39]), or death (OR = 0.86, CI [0.63, 1.18]). Cilostazol was not associated with an increase in any arrhythmic complication. We also identified a subset of CHF patients who were prescribed Cilostazol despite its black box warning, and found that it did not increase mortality in this high-risk group of patients. Conclusions: This proof of principle study shows the potential of text-analytics to mine clinical data warehouses to uncover ‘natural experiments’ such as the use of Cilostazol in CHF patients. We envision this method will have broad applications for examining difficult to test clinical hypotheses and to aid in post-marketing drug safety surveillance. Moreover, our observations argue for a prospective study to examine the validity of a drug safety warning that may be unnecessarily limiting the use of an efficacious therapy. [ABSTRACT FROM AUTHOR]
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- 2013
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13. Profiling risk factors for chronic uveitis in juvenile idiopathic arthritis: a new model for EHR-based research.
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Cole, Tyler S., Frankovich, Jennifer, Iyer, Srinivasan, LePendu, Paea, Bauer-Mehren, Anna, and Shah, Nigam H.
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UVEITIS ,JUVENILE idiopathic arthritis ,RHEUMATISM in children ,COMORBIDITY ,BLINDNESS ,ALLERGIES ,DISEASE risk factors - Abstract
Background Juvenile idiopathic arthritis is the most common rheumatic disease in children. Chronic uveitis is a common and serious comorbid condition of juvenile idiopathic arthritis, with insidious presentation and potential to cause blindness. Knowledge of clinical associations will improve risk stratification. Based on clinical observation, we hypothesized that allergic conditions are associated with chronic uveitis in juvenile idiopathic arthritis patients. Methods This study is a retrospective cohort study using Stanford's clinical data warehouse containing data from Lucile Packard Children's Hospital from 2000-2011 to analyze patient characteristics associated with chronic uveitis in a large juvenile idiopathic arthritis cohort. Clinical notes in patients under 16 years of age were processed via a validated text analytics pipeline. Bivariate-associated variables were used in a multivariate logistic regression adjusted for age, gender, and race. Previously reported associations were evaluated to validate our methods. The main outcome measure was presence of terms indicating allergy or allergy medications use overrepresented in juvenile idiopathic arthritis patients with chronic uveitis. Residual text features were then used in unsupervised hierarchical clustering to compare clinical text similarity between patients with and without uveitis. Results Previously reported associations with uveitis in juvenile idiopathic arthritis patients (earlier age at arthritis diagnosis, oligoarticular-onset disease, antinuclear antibody status, history of psoriasis) were reproduced in our study. Use of allergy medications and terms describing allergic conditions were independently associated with chronic uveitis. The association with allergy drugs when adjusted for known associations remained significant (OR 2.54, 95% CI 1.22-5.4). Conclusions This study shows the potential of using a validated text analytics pipeline on clinical data warehouses to examine practice-based evidence for evaluating hypotheses formed during patient care. Our study reproduces four known associations with uveitis development in juvenile idiopathic arthritis patients, and reports a new association between allergic conditions and chronic uveitis in juvenile idiopathic arthritis patients. [ABSTRACT FROM AUTHOR]
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- 2013
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14. Automatic Filtering and Substantiation of Drug Safety Signals.
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Bauer-Mehren, Anna, Mullingen, Erik M. van, Avillach, Paul, Carrascosa, Mar&ieacute;a del Carmen, Garcia-Serna, Ricard, Piñero, Janet, Singh, Bharat, Lopes, Pedro, Oliveira, José L., Diallo, Gayo, Helgee, Ernst Ahlberg, Boyer, Scott, Mestres, Jordi, Sanzq, Ferran, Kors, Jan A., and Furlong, Laura I.
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MEDICATION safety , *MORTALITY , *PUBLIC health , *PHARMACEUTICAL industry , *DRUG side effects , *EPIDEMIOLOGY - Abstract
Drug safety issues pose serious health threats to the population and constitute a major cause of mortality worldwide. Due to the prominent implications to both public health and the pharmaceutical industry, it is of great importance to unravel the molecular mechanisms by which an adverse drug reaction can be potentially elicited. These mechanisms can be investigated by placing the pharmaco-epidemiologically detected adverse drug reaction in an information-rich context and by exploiting all currently available biomedical knowledge to substantiate it. We present a computational framework for the biological annotation of potential adverse drug reactions. First, the proposed framework investigates previous evidences on the drug-event association in the context of biomedical literature (signal filtering). Then, it seeks to provide a biological explanation (signal substantiation) by exploring mechanistic connections that might explain why a drug produces a specific adverse reaction. The mechanistic connections include the activity of the drug, related compounds and drug metabolites on protein targets, the association of protein targets to clinical events, and the annotation of proteins (both protein targets and proteins associated with clinical events) to biological pathways. Hence, the workflows for signal filtering and substantiation integrate modules for literature and database mining, in silico drug-target profiling, and analyses based on gene-disease networks and biological pathways. Application examples of these workflows carried out on selected cases of drug safety signals are discussed. The methodology and workflows presented offer a novel approach to explore the molecular mechanisms underlying adverse drug reactions. INSET: Author Summary. [ABSTRACT FROM AUTHOR]
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- 2012
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15. Gene-Disease Network Analysis Reveals Functional Modules in Mendelian, Complex and Environmental Diseases.
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Bauer-Mehren, Anna, Bundschus, Markus, Rautschka, Michael, Mayer, Miguel A., Sanz, Ferran, and Furlong, Laura I.
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GENETIC disorders , *ENVIRONMENTALLY induced diseases , *MOLECULAR dynamics , *DATABASES , *HUMAN genetics , *MOLECULAR biology - Abstract
Background: Scientists have been trying to understand the molecular mechanisms of diseases to design preventive and therapeutic strategies for a long time. For some diseases, it has become evident that it is not enough to obtain a catalogue of the disease-related genes but to uncover how disruptions of molecular networks in the cell give rise to disease phenotypes. Moreover, with the unprecedented wealth of information available, even obtaining such catalogue is extremely difficult Principal Findings: We developed a comprehensive gene-disease association database by integrating associations from several sources that cover different biomedical aspects of diseases. In particular, we focus on the current knowledge of human genetic diseases including mendelian, complex and environmental diseases. To assess the concept of modularity of human diseases, we performed a systematic study of the emergent properties of human gene-disease networks by means of network topology and functional annotation analysis. The results indicate a highly shared genetic origin of human diseases and show that for most diseases, including mendelian, complex and environmental diseases, functional modules exist. Moreover, a core set of biological pathways is found to be associated with most human diseases. We obtained similar results when studying clusters of diseases, suggesting that related diseases might arise due to dysfunction of common biological processes in the cell. Conclusions: For the first time, we include mendelian, complex and environmental diseases in an integrated gene-disease association database and show that the concept of modularity applies for all of them. We furthermore provide a functional analysis of disease-related modules providing important new biological insights, which might not be discovered when considering each of the gene-disease association repositories independently. Hence, we present a suitable framework for the study of how genetic and environmental factors, such as drugs, contribute to diseases Availability: The gene-disease networks used in this study and part of the analysis are available at http://ibi.imim.es/ DisGeNET/DisGeNETweb.html#Download. [ABSTRACT FROM AUTHOR]
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- 2011
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16. From SNPs to pathways: integration of functional effect of sequence variations on models of cell signalling pathways.
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Bauer-Mehren, Anna, Furlong, Laura I., Rautschka, Michael, and Sanz, Ferran
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NUCLEOTIDES , *GENETIC polymorphisms , *PHENOTYPES , *AMINO acid sequence , *PROTEIN-protein interactions - Abstract
Background: Single nucleotide polymorphisms (SNPs) are the most frequent type of sequence variation between individuals, and represent a promising tool for finding genetic determinants of complex diseases and understanding the differences in drug response. In this regard, it is of particular interest to study the effect of non-synonymous SNPs in the context of biological networks such as cell signalling pathways. UniProt provides curated information about the functional and phenotypic effects of sequence variation, including SNPs, as well as on mutations of protein sequences. However, no strategy has been developed to integrate this information with biological networks, with the ultimate goal of studying the impact of the functional effect of SNPs in the structure and dynamics of biological networks. Results: First, we identified the different challenges posed by the integration of the phenotypic effect of sequence variants and mutations with biological networks. Second, we developed a strategy for the combination of data extracted from public resources, such as UniProt, NCBI dbSNP, Reactome and BioModels. We generated attribute files containing phenotypic and genotypic annotations to the nodes of biological networks, which can be imported into network visualization tools such as Cytoscape. These resources allow the mapping and visualization of mutations and natural variations of human proteins and their phenotypic effect on biological networks (e.g. signalling pathways, protein-protein interaction networks, dynamic models). Finally, an example on the use of the sequence variation data in the dynamics of a network model is presented. Conclusion: In this paper we present a general strategy for the integration of pathway and sequence variation data for visualization, analysis and modelling purposes, including the study of the functional impact of protein sequence variations on the dynamics of signalling pathways. This is of particular interest when the SNP or mutation is known to be associated to disease. We expect that this approach will help in the study of the functional impact of disease-associated SNPs on the behaviour of cell signalling pathways, which ultimately will lead to a better understanding of the mechanisms underlying complex diseases. [ABSTRACT FROM AUTHOR]
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- 2009
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17. Gathering and Exploring Scientific Knowledge in Pharmacovigilance.
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Lopes, Pedro, Nunes, Tiago, Campos, David, Furlong, Laura Ines, Bauer-Mehren, Anna, Sanz, Ferran, Carrascosa, Maria Carmen, Mestres, Jordi, Kors, Jan, Singh, Bharat, van Mulligen, Erik, Van der Lei, Johan, Diallo, Gayo, Avillach, Paul, Ahlberg, Ernst, Boyer, Scott, Diaz, Carlos, and Oliveira, José Luís
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SCIENTIFIC knowledge ,MEDICAL care ,DRUGS ,ALGORITHMS ,BIOINFORMATICS ,MEDICAL databases - Abstract
Pharmacovigilance plays a key role in the healthcare domain through the assessment, monitoring and discovery of interactions amongst drugs and their effects in the human organism. However, technological advances in this field have been slowing down over the last decade due to miscellaneous legal, ethical and methodological constraints. Pharmaceutical companies started to realize that collaborative and integrative approaches boost current drug research and development processes. Hence, new strategies are required to connect researchers, datasets, biomedical knowledge and analysis algorithms, allowing them to fully exploit the true value behind state-of-the-art pharmacovigilance efforts. This manuscript introduces a new platform directed towards pharmacovigilance knowledge providers. This system, based on a service-oriented architecture, adopts a plugin-based approach to solve fundamental pharmacovigilance software challenges. With the wealth of collected clinical and pharmaceutical data, it is now possible to connect knowledge providers’ analysis and exploration algorithms with real data. As a result, new strategies allow a faster identification of high-risk interactions between marketed drugs and adverse events, and enable the automated uncovering of scientific evidence behind them. With this architecture, the pharmacovigilance field has a new platform to coordinate large-scale drug evaluation efforts in a unique ecosystem, publicly available at http://bioinformatics.ua.pt/euadr/. [ABSTRACT FROM AUTHOR]
- Published
- 2013
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18. Pathway databases and tools for their exploitation: benefits, current limitations and challenges.
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Bauer‐Mehren, Anna, Furlong, Laura I, and Sanz, Ferran
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CELLS , *SIGNALS & signaling , *DATABASES , *TARGETED drug delivery , *MATHEMATICAL models , *DRUGS - Abstract
In past years, comprehensive representations of cell signalling pathways have been developed by manual curation from literature, which requires huge effort and would benefit from information stored in databases and from automatic retrieval and integration methods. Once a reconstruction of the network of interactions is achieved, analysis of its structural features and its dynamic behaviour can take place. Mathematical modelling techniques are used to simulate the complex behaviour of cell signalling networks, which ultimately sheds light on the mechanisms leading to complex diseases or helps in the identification of drug targets. A variety of databases containing information on cell signalling pathways have been developed in conjunction with methodologies to access and analyse the data. In principle, the scenario is prepared to make the most of this information for the analysis of the dynamics of signalling pathways. However, are the knowledge repositories of signalling pathways ready to realize the systems biology promise? In this article we aim to initiate this discussion and to provide some insights on this issue. [ABSTRACT FROM AUTHOR]
- Published
- 2009
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