82 research outputs found

    Serological identification and expression analysis of gastric cancer-associated genes

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    Serological identification of tumour antigens by recombinant expression cloning has proved to be an effective strategy for the identification of cancer-associated genes having a relevance to cancer aetiology and progression, and for defining possible targets for immunotherapeutic intervention. In the present study we applied this technique to identify immunogenic proteins for gastric cancer that resulted in isolation of 14 distinct serum-reactive antigens. In order to evaluate their role in tumourigenesis and assess the immunogenicity of the identified antigens, we characterised each cDNA clone by DNA sequence analysis, mRNA tissue distribution, comparison of mRNA levels in cancerous and adjacent non-cancerous tissues and the frequency of antibody responses in allogeneic patient and control sera. Previously unknown splice variants of TACC1 and an uncharacterised gene Ga50 were identified. The expression of a newly identified TACC1 isoform is restricted to brain and gastric cancer tissues. Comparison of mRNA levels by semi-quantitative RT–PCR revealed a relative overexpression of three genes in cancer tissues, including growth factor granulin and Tbdn-1 – an orthologue of the mouse acetyltransferase gene which is associated with blood vessel development. An unusual DNA polymorphism – a three-nucleotide deletion was found in NUCB2 cDNA but its mRNA level was consistently decreased in gastric tumours compared with that in the adjacent non-cancerous tissues. This study has revealed several new gastric cancer candidate genes; additional studies are required to gain a deeper insight into their role in the tumorigenesis and their potential as therapeutic targets

    Psychosoziale UnterstĂŒtzung wĂ€hrend der COVID-19-Pandemie: interdisziplinĂ€res Versorgungskonzept an einem UniversitĂ€tsklinikum

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    BACKGROUND Since the beginning of the outbreak, the COVID-19 pandemic has caused an increased demand for psychosocial support for patients, their family members, and healthcare workers. Concurrently, possibilities to provide this support have been hindered. Quarantine, social isolation, and SARS-CoV\hbox-2 infections represent new and severe stressors that have to be addressed with innovative psychosocial care. OBJECTIVE AND METHOD This article describes the COVID-19 psychosocial first aid concept at the University Hospital Munich (LMU Klinikum) developed by an interdisciplinary team of psychiatric, psychological, spiritual care, psycho-oncological, and palliative care specialists. RESULTS A~new psychosocial first aid model has been implemented for COVID-19 inpatients, family members, and hospital staff consisting of five elements. CONCLUSION The concept integrates innovative and sustainable ideas, e.g. telemedicine-based approaches and highlights the importance of multidisciplinary collaboration to cope with challenges in the healthcare system.Hintergrund Die COVID-19-Pandemie hat seit ihrem Beginn zu einem erhöhten psychosozialen UnterstĂŒtzungsbedarf bei Patient*innen, Angehörigen und Mitarbeiter*innen gefĂŒhrt und ĂŒbliche Wege klinischer Versorgung erschwert. Sowohl QuarantĂ€ne- und Isolationsmaßnahmen als auch SARS-CoV-2-Infektionen und -Erkrankungen sind zu neuen und erheblichen Belastungsfaktoren geworden, die in neuen AnsĂ€tzen der Versorgung adressiert werden mĂŒssen. Ziel der Arbeit und Methode Dieser Beitrag beschreibt die Entwicklung des Konzeptes Psychosoziale Versorgung COVID-19 am LMU-Klinikum in MĂŒnchen durch ein interdisziplinĂ€res Team von Psychiater*innen, Psycholog*innen, Seelsorger*innen, Psychoonkolog*innen und Palliativmediziner*innen. Ergebnis Das neue Versorgungsmodell zur psychosozialen UnterstĂŒtzung wurde fĂŒr stationĂ€re COVID-19-Patient*innen des Klinikums, deren Angehörige und Mitarbeiter*innen bestehend aus fĂŒnf Elementen implementiert. Diskussion Das Angebot integriert innovative und nachhaltige AnsĂ€tze, wie den Einsatz telemedizinischer Interventionen, und unterstreicht den Wert interdisziplinĂ€rer Zusammenarbeit zur BewĂ€ltigung von Herausforderungen im Gesundheitswesen

    Butenandt und die "Ein Gen - Ein Enzym - Regel"

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    Bestimmung der Polymeren-Molekulargewichtsverteilung mit dem Elektronenmikroskop

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    The causal relationship between subcortical local field potential oscillations and Parkinsonian resting tremor

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    To study the dynamical mechanism which generates Parkinsonian resting tremor, we apply coupling directionality analysis to local field potentials (LFP) and accelerometer signals recorded in an ensemble of 48 tremor epochs in four Parkinsonian patients with depth electrodes implanted in the ventro-intermediate nucleus of the thalamus (VIM) or the subthalmic nucleus (STN). Apart from the traditional linear Granger causality method we use two nonlinear techniques: phase dynamics modelling and nonlinear Granger causality. We detect a bidirectional coupling between the subcortical (VIM or STN) oscillation and the tremor, in the theta range (around 5 Hz) as well as broadband (>2 Hz). In particular, we show that the theta band LFP oscillations definitely play an efferent role in tremor generation, while beta band LFP oscillations might additionally contribute. The brain-->tremor driving is a complex, nonlinear mechanism, which is reliably detected with the two nonlinear techniques only. In contrast, the tremor-->brain driving is detected with any of the techniques including the linear one, though the latter is less sensitive. The phase dynamics modelling (applied to theta band oscillations) consistently reveals a long delay in the order of 1-2 mean tremor periods for the brain-->tremor driving and a small delay, compatible with the neural transmission time, for the proprioceptive feedback. Granger causality estimation (applied to broadband signals) does not provide reliable estimates of the delay times, but is even more sensitive to detect the brain-->tremor influence than the phase dynamics modelling
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