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Phytoplankton pigments in Lake Baikal markers for community structure and environmental changesFietz, Susanne January 2005 (has links)
Zugl.: Berlin, Univ., Diss., 2005 / Hergestellt on demand
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Hochauflösende Untersuchungen von Biomarkern an epikontinentalen Schwarzschiefern des Unteren Toarciums (Posidonienschiefer, Lias epsilon) von SW-DeutschlandFrimmel, Andreas. January 2003 (has links)
Tübingen, Univ., Diss., 2002.
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Identifizierung von Biomarkern mittels LC-MS-basiertem Metabonomics : Merkaptursäuren als Indikatoren für die Bildung toxischer IntermediateWagner, Silvia January 2008 (has links)
Würzburg, Univ., Diss., 2009. / Zsfassung in engl. Sprache.
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FRET compatible long-wavelength labels and their application in immunoassays and hybridization assaysGruber, Michaela. Unknown Date (has links) (PDF)
University, Diss., 2002--Regensburg.
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Variation von Chemofossilien und stabilen Isotopen in Kohlen und Pflanzenresten aus dem Bereich der Westfal/Stefan-Grenze im euramerischen KarbonAuras, Stefan. Unknown Date (has links)
Universiẗat, Diss., 2005--Frankfurt (Main).
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Compound-specific hydrogen isotope ratios of sedimentary n-alkanes a new palaeoclimate proxy /Sachse, Dirk. Unknown Date (has links) (PDF)
University, Diss., 2005--Jena.
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Proteomics in der modernen Toxikologie Identifizierung, Charakterisierung und Prävalidierung von Protein-Biomarkern zur verbesserten Vorhersage von LeberkanzerogeneseFella, Kerstin Unknown Date (has links)
Univ., Diss., 2006--Frankfurt (Main)
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Functional network and spectral analysis of clinical EEG data to identify quantitative biomarkers and classify brain disordersMatlis, Sean Eben Hill 03 November 2016 (has links)
Many cognitive and neurological disorders today, such as Autism Spectrum Disorders (ASD) and various forms of epilepsy such as infantile spasms (IS), manifest as changes in voltage activity recorded in scalp electroencephalograms (EEG). Diagnosis of brain disease often relies on the interpretation of complex EEG features through visual inspection by clinicians. Although clinically useful, such interpretation is subjective and suffers from poor inter-rater reliability, which affects clinical care through increased variability and uncertainty in diagnosis. In addition, such qualitative assessments are often binary, and do not parametrically measure characteristics of disease manifestations. Many cognitive disorders are grouped by similar behaviors, but may arise from distinct biological causes, possibly represented by subtle electrophysiological differences. To address this, quantitative analytical tools - such as functional network connectivity, frequency-domain, and time-domain features - are being developed and applied to clinically obtained EEG data to identify electrophysiological biomarkers. These biomarkers enhance a clinician’s ability to accurately diagnose, categorize, and select treatment for various neurological conditions.
In the first study, we use spectral and functional network analysis of clinical EEG data recorded from a population of children to propose a cortical biomarker for autism. We first analyze a training set of age-matched (4–8 years) ASD and neurotypical children to develop hypotheses based on power spectral features and measures of functional network connectivity. From the training set of subjects, we derive the following hypotheses: 1) The ratio of the power of the posterior alpha rhythm (8–14 Hz) peak to the anterior alpha rhythm peak is significantly lower in ASD than control subjects. 2) The functional network density is lower in ASD subjects than control subjects. 3) A select group of edges provide a more sensitive and specific biomarker of ASD. We then test these hypotheses in a validation set of subjects and show that both the first and third hypotheses, but not the second, are validated. The validated features successfully classified the data with significant accuracy. These results provide a validated study for EEG biomarkers of ASD based on changes in brain rhythms and functional network characteristics.
We next perform a follow-up study that utilizes the same group of ASD and neurotypical subjects, but focuses on differences between these two groups in the sleep state. Motivated by the results from the previous study, we utilize the previously validated biomarkers, including the alpha ratio and the subset of edges found to be a sensitive biomarker of ASD, and test their effectiveness in the sleep state. To complement these frequency domain features, we also investigate the efficacy of several time domain measures. This investigation did not lead to significant findings, which may have important implications for the differences between sleep and wake states in ASD, or perhaps generally for clinical assessment, as well as for the effect of noise on signal in clinically obtained data.
Finally, we design a similar analysis framework to investigate a set of clinical EEG data recorded from a population of children with active infantile spasms (IS) (2-16 months), and age-matched neurotypical children, in both wake and sleep states. The goal of this analysis is to develop a quantitative biomarker from the EEG signal, which ultimately we will apply to predict the clinical outcome of children with IS. In addition to spectral and functional network analysis, we calculate time domain features previously found to correlate with seizures. We compare the two populations by each feature individually, test the effects of age on these features, use all features in a linear discriminant model to categorize IS versus neurotypical EEG, and test the findings using a leave-one-out validation test. We find almost every feature tested shows significant population differences between IS and control groups, and that taken together they serve as an effective classifier, with potential to be informative as to disease severity and long-term outcome. Furthermore, analysis of these features reveals two groups, indicating a possibility that these features reflect two distinct qualitative characteristics of IS and seizures.
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Leukocyte telomere length and accelerated aging as predictors for the onset of psychosisAmirfathi, Felix 01 November 2017 (has links)
Leukocyte telomere length is an emerging marker for pathologically accelerated cellular aging. First discovered to be associated with aging-related disorders, such as type 2 diabetes mellitus and cardiovascular disease, in young individuals, leukocyte telomeric degeneration is also garnering growing attention in psychiatric illnesses. Comorbid metabolic symptoms and physiological dysregulation observed in schizophrenia patients imply a plausible association between pathological telomere biology and psychosis. Available data on the relationship between leukocyte telomere length and schizophrenia is limited largely to small-sample, cross-sectional studies unable to fully account for the large body of potentially confounding factors on telomere length (psychotropic medication, chronic stress and history of trauma, comorbidities, paternal age, substance use, subject-level variables). The most comprehensive meta-analysis to date reveals a significant trend of shortened telomeres in schizophrenia patients as compared to healthy controls. Some findings suggest a linear relationship between telomeric attrition and disease chronicity/severity. However, overall findings are insufficient to gauge the potential of leukocyte telomere length as a predictive, diagnostic biomarker in this patient population. Future longitudinal studies with carefully controlled covariates are required to verify the promising potential of a new marker for schizophrenia onset and a possible new direction for adjunctive antipsychotic treatment.
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The Investigation of Sucrose and Fructose in Spot Versus 24-hour Urine As Biomarkers of Sugars IntakeJanuary 2018 (has links)
abstract: Background: Twenty-four hour urinary sucrose and fructose (24uSF) has been developed as a dietary biomarker for total sugars intake. Collection of 24-h urine is associated with high costs and heavy participant burden, while collection of spot urine samples can be easily implemented in research protocols. The aim of this thesis is to investigate the utility of uSF biomarker measured in spot urine. Methods: 15 participants age 22 to 49 years completed a 15-day feeding study in which they consumed their usual diet under controlled conditions, and recorded the time each meal was consumed. Two nonconsecutive 24-hour urines, where each urine void was collected in a separate container, were collected. Four timed voids (morning, afternoon, evening, and next day) were identified based on time of void and meal time. Urine samples were measured for sucrose, fructose and creatinine. Variability of uSF excretion was assessed by coefficient of variation (%CV) and variance ratios. Pearson correlation coefficient and multiple linear regression were used to investigate the association between uSF in each timed void and corresponding 24uSF excretion. Results: The two-day mean uSF was 50.6 mg (SD=29.5) for the 24-h urine, and ranged from 4.5 to 7.5 mg/void for the timed voids. The afternoon void uSF had the lowest within-subject variability (49.1%), and lowest within- to between-subject variance ratio (0.2). The morning and afternoon void uSF had the strongest correlation with 24-h uSF for both mg/void (r=0.80 and r=0.72) and mg/creatinine (r=0.72 and r=0.67), respectively. Finally, the afternoon void uSF along with other covariates had the strongest predictive ability of 24-h uSF excretion (mg/void) (Adjusted R2= 0.69; p=0.002), whereas the morning void had the strongest predictive ability of 24-h uSF excretion (mg/g creatinine) (adjusted R2= 0.58; p=0.008). Conclusions: The afternoon void uSF had the most favorable reproducibility estimates, strong correlation with 24uSF excretion, and explained greatest proportion of the variability in 24uSF. USF in mg/void may be better to use than uSF in mg/g creatinine as a biomarker in spot urine. These findings need to be confirmed in a larger study, and in a study population with a wide range of sugars intake. / Dissertation/Thesis / Masters Thesis Nutrition 2018
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