1.Personalized Computer Simulation of Diastolic Function in Heart Failure
Amr ALI ; Kayvanpour ELHAM ; Sedaghat-Hamedani FARBOD ; Passerini TIZIANO ; Mihalef VIOREL ; Lai Alan E ; Neumann Dominik F ; Georgescu Bogdan G ; Buss SEBASTIAN ; Mereles DERLIZ ; Zitron Edgar H ; Posch E ANDREAS ; Rstle Wu MAXIMILIAN ; Mansi TOMMASO ; Katus A HUGO ; Meder BENJAMIN
Genomics, Proteomics & Bioinformatics 2016;14(4):244-252
The search for a parameter representing left ventricular relaxation from non-invasive and invasive diagnostic tools has been extensive, since heart failure (HF) with preserved ejection fraction (HF-pEF) is a global health problem. We explore here the feasibility using patient-specific cardiac computer modeling to capture diastolic parameters in patients suffering from different degrees of systolic HF. Fifty eight patients with idiopathic dilated cardiomyopathy have undergone thorough clinical evaluation, including cardiac magnetic resonance imaging (MRI), heart catheterization, echocardiography, and cardiac biomarker assessment. A previously-introduced framework for creating multi-scale patient-specific cardiac models has been applied on all these patients. Novel parameters, such as global stiffness factor and maximum left ventricular active stress, representing cardiac active and passive tissue properties have been computed for all patients. Invasive pressure measurements from heart catheterization were then used to evaluate ventricular relaxation using the time constant of isovolumic relaxation Tau (s). Parameters from heart catheterization and the multi-scale model have been evaluated and compared to patient clinical presentation. The model parameter global stiffness factor, representing diastolic passive tissue properties, is correlated signif-icantly across the patient population with s. This study shows that multi-modal cardiac models can successfully capture diastolic (dys) function, a prerequisite for future clinical trials on HF-pEF.
2.Integrating Culture-based Antibiotic Resistance Profiles with Whole-genome Sequencing Data for 11,087 Clinical Isolates.
Valentina GALATA ; Cédric C LACZNY ; Christina BACKES ; Georg HEMMRICH-STANISAK ; Susanne SCHMOLKE ; Andre FRANKE ; Eckart MEESE ; Mathias HERRMANN ; Lutz VON MÜLLER ; Achim PLUM ; Rolf MÜLLER ; Cord STÄHLER ; Andreas E POSCH ; Andreas KELLER
Genomics, Proteomics & Bioinformatics 2019;17(2):169-182
Emerging antibiotic resistance is a major global health threat. The analysis of nucleic acid sequences linked to susceptibility phenotypes facilitates the study of genetic antibiotic resistance determinants to inform molecular diagnostics and drug development. We collected genetic data (11,087 newly-sequenced whole genomes) and culture-based resistance profiles (10,991 out of the 11,087 isolates comprehensively tested against 22 antibiotics in total) of clinical isolates including 18 main species spanning a time period of 30 years. Species and drug specific resistance patterns were observed including increased resistance rates for Acinetobacter baumannii to carbapenems and for Escherichia coli to fluoroquinolones. Species-level pan-genomes were constructed to reflect the genetic repertoire of the respective species, including conserved essential genes and known resistance factors. Integrating phenotypes and genotypes through species-level pan-genomes allowed to infer gene-drug resistance associations using statistical testing. The isolate collection and the analysis results have been integrated into GEAR-base, a resource available for academic research use free of charge at https://gear-base.com.
Acinetobacter baumannii
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genetics
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isolation & purification
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Bacteria
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genetics
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isolation & purification
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Cell Culture Techniques
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methods
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Drug Resistance, Microbial
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genetics
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Escherichia coli
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genetics
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isolation & purification
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Genome, Bacterial
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Genotype
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Humans
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Internet
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Microbial Sensitivity Tests
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Phenotype
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Whole Genome Sequencing