9 results on '"Rogério Blitz"'
Search Results
2. Narcissistic dimensions impact depressive symptoms and their improvement during inpatient and outpatient treatment across mental disorders and therapeutic methods
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Maike Richter, Simon Mota, Leonie Hater, Rebecca Bratek, Janik Goltermann, Carlotta Barkhau, Marius Gruber, Jonathan Repple, Michael Storck, Rogério Blitz, Dominik Grotegerd, Oliver Masuhr, Ulrich Jaeger, Bernhard T. Baune, Martin Dugas, Udo Dannlowski, Ulrike Buhlmann, Mitja D Back, and Nils Opel
- Abstract
Background/Objective: A detrimental impact of narcissistic personality traits on depressive symptomatology, therapeutic alliance, and treatment outcome, even in the absence of narcissistic personality disorder (NPD), has been theorized. However, the evidence base in clinical settings is lacking. As research classification systems such as the ICD-11 and DSM-5 are moving towards a dimensional operationalization of personality disorders, it appears imperative to examine narcissism as a multifaceted construct and its impact on depressive symptom severity across mental disorders and different treatment settings. Moreover, due to the common interpersonal challenges associated with narcissism, the therapeutic alliance might be a key mechanism to understand narcissism related poorer treatment response.Methods: We examined the effect of narcissism and its facets admiration and rivalry on baseline as well as post-treatment depressive symptoms in two independent samples: one sample from a cognitive behavioral treatment setting, pooled from an inpatient psychiatric clinic and a cooperating outpatient treatment service (CBT; n = 1569) and an inpatient clinic with psychodynamic treatment focus (PIT; n = 802). An additional mediation analysis for the effect of the therapeutic alliance on the association between narcissism and depression severity after treatment was conducted in the outpatient CBT subsample.Results: Narcissistic rivalry was associated with higher depressive symptom load at baseline, while narcissistic admiration showed the opposite effect in both samples. Core narcissism was not related to depression severity before treatment. Poorer treatment response was predicted by core narcissism and narcissistic rivalry in the CBT sample while no effect of narcissism on treatment outcome was discernible in the PIT sample. Therapeutic alliance mediated the effect of narcissism on post-treatment depression severity in the outpatient CBT sample.Conclusions: As narcissism affects depression severity before and after treatment across psychiatric disorders even in the absence of NPD, the inclusion of dimensional assessments of narcissism should be considered in future research and clinical routine. Building on this, the observed relevance of the therapeutic alliance and the therapeutic strategy might be leveraged to guide personalized treatment approaches.
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- 2023
- Full Text
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3. Symptom monitoring based on digital data collection during inpatient treatment of schizophrenia spectrum disorders - A feasibility study
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Julian Herpertz, Maike Frederike Richter, Carlotta Barkhau, Michael Storck, Rogério Blitz, Lavinia A. Steinmann, Janik Goltermann, Udo Dannlowski, Bernhard T Baune, Julian Varghese, Martin Dugas, Rebekka Lencer, and Nils Opel
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Hospitalization ,Psychiatry and Mental health ,Inpatients ,Data Collection ,Schizophrenia ,Feasibility Studies ,Humans ,Biological Psychiatry - Abstract
Digital acquisition of patients' self-reports on individual risk factors and symptom severity represents a promising, cost-efficient, and increasingly prevalent approach for standardized data collection in psychiatric clinical routine. Yet, studies investigating digital data collection in patients with a schizophrenia spectrum disorder (PSSDs) are scarce. The objective of this study was to explore the feasibility of digitally acquired self-report assessments of risk and symptom profiles at the time of admission into inpatient treatment in an age-representative sample of hospitalized PSSDs. We investigated the required support, the data entry pace, and the subjective user experience. Findings were compared with those of patients with an affective disorder (PADs). Of 82 PSSDs who were eligible for inclusion, 59.8% (n=49) agreed to participate in the study, of whom 54.2% (n=26) could enter data without any assistance. Inclusion rates, drop-out rates, and subjective experience ratings did not differ between PSSDs and PADs. Patients reported high satisfaction with the assessment. PSSDs required more support and time for the data entry than PADs. Our results indicate that digital data collection is a feasible and well-received method in PSSDs. Future clinical and research efforts on digitized assessments in psychiatry should include PSSDs and offer support to reduce digital exclusion.
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- 2022
4. Symptom Monitoring based on Digital Data Collection During Inpatient Treatment of Schizophrenia Spectrum Disorders – a Feasibility Study
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Julian Varghese, Bernhardt T. Baune, Janik Goltermann, Martin Dugas, Rogério Blitz, Herpertz J, Maike Richter, Lencer R, Steinmann La, Udo Dannlowski, Michael Storck, Barkhau C, and Nils Opel
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medicine.medical_specialty ,Data collection ,business.industry ,media_common.quotation_subject ,Symptom monitoring ,Data entry ,Digital exclusion ,Clinical routine ,Symptom profiles ,Feeling ,Medicine ,business ,Psychiatry ,media_common ,Schizophrenia spectrum - Abstract
BackgroundDigital acquisition of risk factors and symptoms based on patients’ self-reports represents a promising, cost-efficient and increasingly prevalent approach for standardized data collection in psychiatric clinical routine. While the feasibility of digital data collection has been demonstrated across a range of psychiatric disorders, studies investigating digital data collection in schizophrenia spectrum disorder patients are scarce. Hence, up to now our knowledge about the acceptability and feasibility of digital data collection in patients with a schizophrenia spectrum disorder remains critically limited.ObjectiveThe objective of this study was to explore the acceptance towards and performance with digitally acquired assessments of risk and symptom profiles in patients with a schizophrenia spectrum disorder in comparison with patients with an affective disorder.MethodsWe investigated the acceptance, the required support and the data entry pace of patients during a longitudinal digital data collection system of risk and symptom profiles using self-reports on tablet computers throughout inpatient treatment in patients with a schizophrenia spectrum disorder. As a benchmark comparison, findings in patients with schizophrenia spectrum disorder were evaluated in direct comparison with findings in affective disorder patients. The influence of sociodemographic data and clinical characteristics on the assessment was explored. The study was performed at the Department of Psychiatry at the University of Münster between February 2020 and February 2021.ResultsOf 82 patients diagnosed with a schizophrenia spectrum disorder who were eligible for inclusion 59.8% (n=49) agreed to participate in the study of whom 54.2% (n=26) could enter data without any assistance. Inclusion rates, drop-out rates and subjective experience ratings did not differ between patients with a schizophrenia spectrum disorder and patients with an affective disorder. Out of all participating patients, 98% reported high satisfaction with the digital assessment. Patients with a schizophrenia spectrum disorder needed more support and more time for the assessment compared to patients with an affective disorder. The extent of support of patients with a schizophrenia spectrum disorder was predicted by age, whereas the feeling of self-efficacy predicted data entry pace.ConclusionOur results indicate that, although patients with a schizophrenia spectrum disorder need more support and more time for data entry than patients with an affective disorder, digital data collection using patients’ self-reports is a feasible and well-received method. Future clinical and research efforts on digitized assessments in psychiatry should include patients with a schizophrenia spectrum disorder and offer adequate support to reduce digital exclusion of these patients.
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- 2021
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5. Design, Implementation and Feasibility of an Informatics Infrastructure for Standardized Data Acquisition, Transfer, Storage and Export in Psychiatric Clinical Routine
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Michael Storck, Bernhard T. Baune, Rogério Blitz, Nils Opel, and Martin Dugas
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medicine.medical_specialty ,Data collection ,Computer science ,business.industry ,Software development ,Metadata ,Data access ,Data acquisition ,Documentation ,Informatics ,medicine ,Software architecture ,Psychiatry ,business - Abstract
BackgroundEmpirically driven personalized diagnostic and treatment is widely perceived as a major hallmark in psychiatry. However, databased personalized decision making requires standardized data acquisition and data access, which is currently absent in psychiatric clinical routine.ObjectiveHere we describe the informatics infrastructure implemented at the psychiatric university hospital Münster allowing for standardized acquisition, transfer, storage and export of clinical data for future real-time predictive modelling in psychiatric routine.MethodsWe designed and implemented a technical architecture that includes an extension of the EHR via scalable standardized data collection, data transfer between EHR and research databases thus allowing to pool EHR and research data in a unified database and technical solutions for the visual presentation of collected data and analyses results in the EHR. The Single-source Metadata ARchitecture Transformation (SMA:T) was used as the software architecture. SMA:T is an extension of the EHR system and uses Module Driven Software Development to generate standardized applications and interfaces. The Operational Data Model (ODM) was used as the standard. Standardized data was entered on iPads via the Mobile Patient Survey (MoPat) and the web application Mopat@home, the standardized transmission, processing, display and export of data was realized via SMA:T.ResultsThe technical feasibility was demonstrated in the course of the study. 19 standardized documentation forms with 241 items were created. In 317 patients, 6,451 instances were automatically transferred to the EHR system without errors. 96,323 instances were automatically transferred from the EHR system to the research database for further analyses.ConclusionsWith the present study, we present the successful implementation of the informatics infrastructure enabling standardized data acquisition, and data access for future real-time predictive modelling in clinical routine in psychiatry. The technical solution presented here might guide similar initiatives at other sites and thus help to pave the way towards future application of predictive models in psychiatric clinical routine.
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- 2020
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6. Design and Implementation of an Informatics Infrastructure for Standardized Data Acquisition, Transfer, Storage, and Export in Psychiatric Clinical Routine: Feasibility Study (Preprint)
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Michael Storck, Nils Opel, Martin Dugas, Bernhard T Baune, and Rogério Blitz
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BACKGROUND Empirically driven personalized diagnostic applications and treatment stratification is widely perceived as a major hallmark in psychiatry. However, databased personalized decision making requires standardized data acquisition and data access, which are currently absent in psychiatric clinical routine. OBJECTIVE Here, we describe the informatics infrastructure implemented at the psychiatric Münster University Hospital, which allows standardized acquisition, transfer, storage, and export of clinical data for future real-time predictive modelling in psychiatric routine. METHODS We designed and implemented a technical architecture that includes an extension of the electronic health record (EHR) via scalable standardized data collection and data transfer between EHRs and research databases, thus allowing the pooling of EHRs and research data in a unified database and technical solutions for the visual presentation of collected data and analyses results in the EHR. The Single-source Metadata ARchitecture Transformation (SMA:T) was used as the software architecture. SMA:T is an extension of the EHR system and uses module-driven engineering to generate standardized applications and interfaces. The operational data model was used as the standard. Standardized data were entered on iPads via the Mobile Patient Survey (MoPat) and the web application Mopat@home, and the standardized transmission, processing, display, and export of data were realized via SMA:T. RESULTS The technical feasibility of the informatics infrastructure was demonstrated in the course of this study. We created 19 standardized documentation forms with 241 items. For 317 patients, 6451 instances were automatically transferred to the EHR system without errors. Moreover, 96,323 instances were automatically transferred from the EHR system to the research database for further analyses. CONCLUSIONS In this study, we present the successful implementation of the informatics infrastructure enabling standardized data acquisition and data access for future real-time predictive modelling in clinical routine in psychiatry. The technical solution presented here might guide similar initiatives at other sites and thus help to pave the way toward future application of predictive models in psychiatric clinical routine.
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- 2020
- Full Text
- View/download PDF
7. Design and Implementation of an Informatics Infrastructure for Standardized Data Acquisition, Transfer, Storage, and Export in Psychiatric Clinical Routine: Feasibility Study
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Bernhard T. Baune, Martin Dugas, Michael Storck, Nils Opel, and Rogério Blitz
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medicine.medical_specialty ,single-source metadata architecture transformation ,Computer science ,design ,digital data collection ,infrastructure ,Health informatics ,03 medical and health sciences ,0302 clinical medicine ,Documentation ,medicine ,Psychology ,medical informatics ,informatics ,Psychiatry ,implementation ,Original Paper ,Data collection ,business.industry ,digital mental health ,psychiatry ,BF1-990 ,030227 psychiatry ,Metadata ,Psychiatry and Mental health ,Technical feasibility ,Data access ,data ,Informatics ,business ,Software architecture ,030217 neurology & neurosurgery ,mental health ,feasibility - Abstract
Background Empirically driven personalized diagnostic applications and treatment stratification is widely perceived as a major hallmark in psychiatry. However, databased personalized decision making requires standardized data acquisition and data access, which are currently absent in psychiatric clinical routine. Objective Here, we describe the informatics infrastructure implemented at the psychiatric Münster University Hospital, which allows standardized acquisition, transfer, storage, and export of clinical data for future real-time predictive modelling in psychiatric routine. Methods We designed and implemented a technical architecture that includes an extension of the electronic health record (EHR) via scalable standardized data collection and data transfer between EHRs and research databases, thus allowing the pooling of EHRs and research data in a unified database and technical solutions for the visual presentation of collected data and analyses results in the EHR. The Single-source Metadata ARchitecture Transformation (SMA:T) was used as the software architecture. SMA:T is an extension of the EHR system and uses module-driven engineering to generate standardized applications and interfaces. The operational data model was used as the standard. Standardized data were entered on iPads via the Mobile Patient Survey (MoPat) and the web application Mopat@home, and the standardized transmission, processing, display, and export of data were realized via SMA:T. Results The technical feasibility of the informatics infrastructure was demonstrated in the course of this study. We created 19 standardized documentation forms with 241 items. For 317 patients, 6451 instances were automatically transferred to the EHR system without errors. Moreover, 96,323 instances were automatically transferred from the EHR system to the research database for further analyses. Conclusions In this study, we present the successful implementation of the informatics infrastructure enabling standardized data acquisition and data access for future real-time predictive modelling in clinical routine in psychiatry. The technical solution presented here might guide similar initiatives at other sites and thus help to pave the way toward future application of predictive models in psychiatric clinical routine.
- Published
- 2020
8. Repeated Digitized Assessment of Risk and Symptom Profiles During Inpatient Treatment of Affective Disorder: Observational Study (Preprint)
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Maike Frederike Richter, Michael Storck, Rogério Blitz, Janik Goltermann, Juliana Seipp, Udo Dannlowski, Bernhard T Baune, Martin Dugas, and Nils Opel
- Abstract
BACKGROUND Predictive models have revealed promising results for the individual prognosis of treatment response and relapse risk as well as for differential diagnosis in affective disorders. Yet, in order to translate personalized predictive modeling from research contexts to psychiatric clinical routine, standardized collection of information of sufficient detail and temporal resolution in day-to-day clinical care is needed. Digital collection of self-report measures by patients is a time- and cost-efficient approach to gain such data throughout treatment. OBJECTIVE The objective of this study was to investigate whether patients with severe affective disorders were willing and able to participate in such efforts, whether the feasibility of such systems might vary depending on individual patient characteristics, and if digitally acquired assessments were of sufficient diagnostic validity. METHODS We implemented a system for longitudinal digital collection of risk and symptom profiles based on repeated self-reports via tablet computers throughout inpatient treatment of affective disorders at the Department of Psychiatry at the University of Münster. Tablet-handling competency and the speed of data entry were assessed. Depression severity was additionally assessed by a clinical interviewer at baseline and before discharge. RESULTS Of 364 affective disorder patients who were approached, 242 (66.5%) participated in the study; 88.8% of participants (215/242) were diagnosed with major depressive disorder, and 27 (11.2%) had bipolar disorder. During the duration of inpatient treatment, 79% of expected assessments were completed, with an average of 4 completed assessments per participant; 4 participants (4/242, 1.6%) dropped out of the study prematurely. During data entry, 89.3% of participants (216/242) did not require additional support. Needing support with tablet handling and slower data entry pace were predicted by older age, whereas depression severity at baseline did not influence these measures. Patient self-reporting of depression severity showed high agreement with standardized external assessments by a clinical interviewer. CONCLUSIONS Our results indicate that digital collection of self-report measures is a feasible, accessible, and valid method for longitudinal data collection in psychiatric routine, which will eventually facilitate the identification of individual risk and resilience factors for affective disorders and pave the way toward personalized psychiatric care.
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- 2020
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9. Continuous digital collection of patient-reported outcomes during inpatient treatment for affective disorders – implementation and feasibility
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Juliana Seipp, Martin Dugas, Rogério Blitz, Bernhard T. Baune, Nils Opel, Janik Goltermann, Michael Storck, Udo Dannlowski, and Maike Richter
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Identification (information) ,Interview ,business.industry ,Diagnostic validity ,Patient characteristics ,Medicine ,Individual risk ,business ,Predictive modelling ,Depression (differential diagnoses) ,Clinical psychology ,Pace - Abstract
Multivariate predictive models have revealed promising results for the individual prediction of treatment response, relapse risk as well as for the differential diagnosis in affective disorders. Yet, in order to translate personalized predictive modelling from the research context to psychiatric clinical routine, standardized collection of information of sufficient detail and temporal resolution in day-to-day clinical care is needed, based on which machine learning algorithms can be trained. Digital collection of patient-reported outcomes (PROs) is a time- and cost-efficient approach to gain such data throughout the treatment course. However, it remains unclear whether patients with severe affective disorders are willing and able to participate in such efforts, whether the feasibility of such systems might vary depending on individual patient characteristics and if digitally acquired patient-reported outcomes are of sufficient diagnostic validity. To address these questions, we implemented a system for continuous digital collection of patient-reported outcomes via tablet computers throughout inpatient treatment for affective disorders at the Department of Psychiatry at the University of Münster. 364 affective disorder patients were approached, 66.5% of which could be recruited to participate in the study. An average of four assessments were completed during the treatment course, none of the participants dropped out of the study prematurely. 89.3% of participants did not require additional support during data entry. Need of support with tablet handling and slower data entry pace was predicted by older age, whereas depression severity at baseline did not influence these measures. Patient-reported outcomes of depression severity showed high agreement with standardized external assessments by a clinical interviewer. Our results indicate that continuous digital collection of patient-reported outcomes is a feasible, accessible and valid method for longitudinal data collection in psychiatric routine, which will eventually facilitate the identification of individual risk and resilience factors for affective disorders and pave the way towards personalized psychiatric care.
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- 2020
- Full Text
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