TY - CHAP ED - Neumann, Isabel ED - Gado, Sabrina ED - Käthner, Ivo ED - Hildebrandt, Lea ED - Andreatta, Marta T1 - Abstracts of the Wuertual Reality XR Meeting 2023 T1 - Abstracts des Wuertual Reality XR Meeting 2023 N2 - The Wuertual Reality XR Meeting 2023 was initiated to bring together researchers from many fields who use VR/AR/XR. There was a focus on applied XR and social VR. In this conference band, you can find the abstracts of the two keynotes, the 34 posters and poster pitches, the 29 talks and the four workshops. KW - Virtuelle Realität KW - Virtual Reality KW - Augmented Reality KW - Extended Reality KW - Social VR Y1 - 2023 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:bvb:20-opus-317203 ET - korrigierte Auflage ER - TY - CHAP ED - Neumann, Isabel ED - Gado, Sabrina ED - Käthner, Ivo ED - Hildebrandt, Lea ED - Andreatta, Marta T1 - Abstracts of the Wuertual Reality XR Meeting 2023 T1 - Abstracts des Wuertual Reality XR Meeting 2023 N2 - The Wuertual Reality XR Meeting 2023 was initiated to bring together researchers from many fields who use VR/AR/XR. There was a focus on applied XR and social VR. In this conference band, you can find the abstracts of the two keynotes, the 34 posters and poster pitches, the 29 talks and the four workshops. KW - Virtuelle Realität KW - Virtual Reality KW - Augmented Reality KW - Extended Reality KW - Social VR Y1 - 2023 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:bvb:20-opus-315285 N1 - Der Zugriff auf dieses Dokument wurde aus urheberrechtlichen Gründen gesperrt. Eine neue Fassung finden Sie unter https://doi.org/10.25972/OPUS-31720. ER - TY - JOUR A1 - Steininger, Michael A1 - Abel, Daniel A1 - Ziegler, Katrin A1 - Krause, Anna A1 - Paeth, Heiko A1 - Hotho, Andreas T1 - ConvMOS: climate model output statistics with deep learning JF - Data Mining and Knowledge Discovery N2 - Climate models are the tool of choice for scientists researching climate change. Like all models they suffer from errors, particularly systematic and location-specific representation errors. One way to reduce these errors is model output statistics (MOS) where the model output is fitted to observational data with machine learning. In this work, we assess the use of convolutional Deep Learning climate MOS approaches and present the ConvMOS architecture which is specifically designed based on the observation that there are systematic and location-specific errors in the precipitation estimates of climate models. We apply ConvMOS models to the simulated precipitation of the regional climate model REMO, showing that a combination of per-location model parameters for reducing location-specific errors and global model parameters for reducing systematic errors is indeed beneficial for MOS performance. We find that ConvMOS models can reduce errors considerably and perform significantly better than three commonly used MOS approaches and plain ResNet and U-Net models in most cases. Our results show that non-linear MOS models underestimate the number of extreme precipitation events, which we alleviate by training models specialized towards extreme precipitation events with the imbalanced regression method DenseLoss. While we consider climate MOS, we argue that aspects of ConvMOS may also be beneficial in other domains with geospatial data, such as air pollution modeling or weather forecasts. KW - Klima KW - Modell KW - Deep learning KW - Neuronales Netz KW - climate KW - neural networks KW - model output statistics Y1 - 2023 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:bvb:20-opus-324213 SN - 1384-5810 VL - 37 IS - 1 ER - TY - JOUR A1 - Bräuer-Burchardt, Christian A1 - Munkelt, Christoph A1 - Bleier, Michael A1 - Heinze, Matthias A1 - Gebhart, Ingo A1 - Kühmstedt, Peter A1 - Notni, Gunther T1 - Underwater 3D scanning system for cultural heritage documentation JF - Remote Sensing N2 - Three-dimensional capturing of underwater archeological sites or sunken shipwrecks can support important documentation purposes. In this study, a novel 3D scanning system based on structured illumination is introduced, which supports cultural heritage documentation and measurement tasks in underwater environments. The newly developed system consists of two monochrome measurement cameras, a projection unit that produces aperiodic sinusoidal fringe patterns, two flashlights, a color camera, an inertial measurement unit (IMU), and an electronic control box. The opportunities and limitations of the measurement principles of the 3D scanning system are discussed and compared to other 3D recording methods such as laser scanning, ultrasound, and photogrammetry, in the context of underwater applications. Some possible operational scenarios concerning cultural heritage documentation are introduced and discussed. A report on application activities in water basins and offshore environments including measurement examples and results of the accuracy measurements is given. The study shows that the new 3D scanning system can be used for both the topographic documentation of underwater sites and to generate detailed true-scale 3D models including the texture and color information of objects that must remain under water. KW - underwater 3D scanning KW - structured light illumination KW - object reconstruction KW - 3D model generation KW - site mapping Y1 - 2023 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:bvb:20-opus-311116 SN - 2072-4292 VL - 15 IS - 7 ER - TY - THES A1 - Marquardt, André T1 - Machine-Learning-Based Identification of Tumor Entities, Tumor Subgroups, and Therapy Options T1 - Bestimmung von Tumorentitäten, Tumorsubgruppen und Therapieoptionen basierend auf maschinellem Lernen N2 - Molecular genetic analyses, such as mutation analyses, are becoming increasingly important in the tumor field, especially in the context of therapy stratification. The identification of the underlying tumor entity is crucial, but can sometimes be difficult, for example in the case of metastases or the so-called Cancer of Unknown Primary (CUP) syndrome. In recent years, methylome and transcriptome utilizing machine learning (ML) approaches have been developed to enable fast and reliable tumor and tumor subtype identification. However, so far only methylome analysis have become widely used in routine diagnostics. The present work addresses the utility of publicly available RNA-sequencing data to determine the underlying tumor entity, possible subgroups, and potential therapy options. Identification of these by ML - in particular random forest (RF) models - was the first task. The results with test accuracies of up to 99% provided new, previously unknown insights into the trained models and the corresponding entity prediction. Reducing the input data to the top 100 mRNA transcripts resulted in a minimal loss of prediction quality and could potentially enable application in clinical or real-world settings. By introducing the ratios of these top 100 genes to each other as a new database for RF models, a novel method was developed enabling the use of trained RF models on data from other sources. Further analysis of the transcriptomic differences of metastatic samples by visual clustering showed that there were no differences specific for the site of metastasis. Similarly, no distinct clusters were detectable when investigating primary tumors and metastases of cutaneous skin melanoma (SKCM). Subsequently, more than half of the validation datasets had a prediction accuracy of at least 80%, with many datasets even achieving a prediction accuracy of – or close to – 100%. To investigate the applicability of the used methods for subgroup identification, the TCGA-KIPAN dataset, consisting of the three major kidney cancer subgroups, was used. The results revealed a new, previously unknown subgroup consisting of all histopathological groups with clinically relevant characteristics, such as significantly different survival. Based on significant differences in gene expression, potential therapeutic options of the identified subgroup could be proposed. Concludingly, in exploring the potential applicability of RNA-sequencing data as a basis for therapy prediction, it was shown that this type of data is suitable to predict entities as well as subgroups with high accuracy. Clinical relevance was also demonstrated for a novel subgroup in renal cell carcinoma. The reduction of the number of genes required for entity prediction to 100 genes, enables panel sequencing and thus demonstrates potential applicability in a real-life setting. N2 - Molekulargenetische Analysen, wie z. B. Mutationsanalysen, gewinnen im Tumorbereich zunehmend an Bedeutung, insbesondere im Zusammenhang mit der Therapiestratifizierung. Die Identifizierung der zugrundeliegenden Tumorentität ist von entscheidender Bedeutung, kann sich aber manchmal als schwierig erweisen, beispielsweise im Falle von Metastasen oder dem sogenannten Cancer of Unknown Primary (CUP)-Syndrom. In den letzten Jahren wurden Methylom- und Transkriptom-Ansätze mit Hilfe des maschinellen Lernens (ML) entwickelt, die eine schnelle und zuverlässige Identifizierung von Tumoren und Tumorsubtypen ermöglichen. Bislang werden jedoch nur Methylomanalysen in der Routinediagnostik eingesetzt. Die vorliegende Arbeit befasst sich mit dem Nutzen öffentlich zugänglicher RNA-Sequenzierungsdaten zur Bestimmung der zugrunde liegenden Tumorentität, möglicher Untergruppen und potenzieller Therapieoptionen. Die Identifizierung dieser durch ML - insbesondere Random-Forest (RF)-Modelle - war die erste Aufgabe. Die Ergebnisse mit Testgenauigkeiten von bis zu 99 % lieferten neue, bisher unbekannte Erkenntnisse über die trainierten Modelle und die entsprechende Entitätsvorhersage. Die Reduktion der Eingabedaten auf die 100 wichtigsten mRNA-Transkripte führte zu einem minimalen Verlust an Vorhersagequalität und könnte eine Anwendung in klinischen oder realen Umgebungen ermöglichen. Durch die Einführung des Verhältnisses dieser Top 100 Gene zueinander als neue Datenbasis für RF-Modelle wurde eine neuartige Methode entwickelt, die die Verwendung trainierter RF-Modelle auf Daten aus anderen Quellen ermöglicht. Eine weitere Analyse der transkriptomischen Unterschiede von metastatischen Proben durch visuelles Clustering zeigte, dass es keine für den Ort der Metastasierung spezifischen Unterschiede gab. Auch bei der Untersuchung von Primärtumoren und Metastasen des kutanen Hautmelanoms (SKCM) konnten keine unterschiedlichen Cluster festgestellt werden. Mehr als die Hälfte der Validierungsdatensätze wiesen eine Vorhersagegenauigkeit von mindestens 80% auf, wobei viele Datensätze sogar eine Vorhersagegenauigkeit von 100% oder nahezu 100% erreichten. Um die Anwendbarkeit der verwendeten Methoden zur Identifizierung von Untergruppen zu untersuchen, wurde der TCGA-KIPAN-Datensatz verwendet, welcher die drei wichtigsten Nierenkrebs-Untergruppen umfasst. Die Ergebnisse enthüllten eine neue, bisher unbekannte Untergruppe, die aus allen histopathologischen Gruppen mit klinisch relevanten Merkmalen, wie z. B. einer signifikant unterschiedlichen Überlebenszeit, besteht. Auf der Grundlage signifikanter Unterschiede in der Genexpression konnten potenzielle therapeutische Optionen für die identifizierte Untergruppe vorgeschlagen werden. Zusammenfassend lässt sich sagen, dass bei der Untersuchung der potenziellen Anwendbarkeit von RNA-Sequenzierungsdaten als Grundlage für die Therapievorhersage gezeigt werden konnte, dass diese Art von Daten geeignet ist, sowohl Entitäten als auch Untergruppen mit hoher Genauigkeit vorherzusagen. Die klinische Relevanz wurde auch für eine neue Untergruppe beim Nierenzellkarzinom demonstriert. Die Verringerung der für die Entitätsvorhersage erforderlichen Anzahl von Genen auf 100 Gene ermöglicht die Sequenzierung von Panels und zeigt somit die potenzielle Anwendbarkeit in der Praxis. KW - Maschinelles Lernen KW - Krebs KW - Tumor KW - Sequenzdaten KW - Random Forest KW - Vorhersage KW - RNA-Sequenzierung KW - Prognose Y1 - 2023 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:bvb:20-opus-329548 ER - TY - THES A1 - Sauer, Christian T1 - Development, Simulation and Evaluation of Mobile Wireless Networks in Industrial Applications T1 - Entwicklung, Simulation und Bewertung von Mobilen Kabellosen Netzwerken in Industriellen Anwendungen N2 - Manyindustrialautomationsolutionsusewirelesscommunicationandrelyontheavail- ability and quality of the wireless channel. At the same time the wireless medium is highly congested and guaranteeing the availability of wireless channels is becoming increasingly difficult. In this work we show, that ad-hoc networking solutions can be used to provide new communication channels and improve the performance of mobile automation systems. These ad-hoc networking solutions describe different communi- cation strategies, but avoid relying on network infrastructure by utilizing the Peer-to- Peer (P2P) channel between communicating entities. This work is a step towards the effective implementation of low-range communication technologies(e.g. VisibleLightCommunication(VLC), radarcommunication, mmWave communication) to the industrial application. Implementing infrastructure networks with these technologies is unrealistic, since the low communication range would neces- sitate a high number of Access Points (APs) to yield full coverage. However, ad-hoc networks do not require any network infrastructure. In this work different ad-hoc net- working solutions for the industrial use case are presented and tools and models for their examination are proposed. The main use case investigated in this work are Automated Guided Vehicles (AGVs) for industrial applications. These mobile devices drive throughout the factory trans- porting crates, goods or tools or assisting workers. In most implementations they must exchange data with a Central Control Unit (CCU) and between one another. Predicting if a certain communication technology is suitable for an application is very challenging since the applications and the resulting requirements are very heterogeneous. The proposed models and simulation tools enable the simulation of the complex inter- action of mobile robotic clients and a wireless communication network. The goal is to predict the characteristics of a networked AGV fleet. Theproposedtoolswereusedtoimplement, testandexaminedifferentad-hocnetwork- ing solutions for industrial applications using AGVs. These communication solutions handle time-critical and delay-tolerant communication. Additionally a control method for the AGVs is proposed, which optimizes the communication and in turn increases the transport performance of the AGV fleet. Therefore, this work provides not only tools for the further research of industrial ad-hoc system, but also first implementations of ad-hoc systems which address many of the most pressing issues in industrial applica- tions. N2 - Viele industrielle Automatisierungslösungen verwenden drahtlose Kommunikations- systeme und sind daher auf die Verfügbarkeit und Qualität des drahtlosen Kanals an- gewiesen. Gleichzeitig ist das drahtlose Medium stark belastet und die Gewährleis- tung der Verfügbarkeit der drahtlosen Kanäle wird zunehmends herrausfordernder. In dieser Arbeit wird gezeigt, dass Ad-hoc-Netzwerklösungen genutzt werden können, um neue Kommunikationskanäle bereitzustellen und die Leistung von mobilen Au- tomatisierungssystemen zu verbessern. Diese Ad-hoc-Netzwerklösungen können un- terschiedliche Kommunikationsstrategien bezeichnen. In all diesen Strategien wird der Peer-to-Peer (P2P)-Kanal zwischen zwei kommunizierenden Systemen verwendet statt Netzwerk-Infrastruktur. Diese Arbeit ist ein Schritt hin zur effektiven Implementierung von Kommunikations- technologien mit geringer Reichweite (z.B. Visible Light Communication (VLC), Radar- kommunikation, mmWave-Kommunikation) in der industriellen Anwendung. Die Im- plementierung von Infrastrukturnetzen mit diesen Technologien ist unrealistisch, da die geringe Kommunikationsreichweite eine hohe Anzahl von Access Points (APs) er- fordern würde um eine flächendeckende Bereitstellung von Kommunikationskanälen zu gewährleisten. Ad-hoc-Netzwerke hingegen benötigen keine Netzwerkinfrastruk- tur. In dieser Arbeit werden verschiedene Ad-hoc-Netzwerklösungen für den industri- ellenAnwendungsfallvorgestelltundWerkzeugeundModellefürderenUntersuchung vorgeschlagen. Der Hauptanwendungsfall, der in dieser Arbeit untersucht wird, sind Fahrerlose Trans- portSysteme (FTS) (fortführend als Automated Guided Vehicles (AGVs)) für industri- elle Anwendungen. Diese FTS fahren durch die Produktionsanlage um Kisten, Waren oder Werkzeuge zu transportieren oder um Mitarbeitern zu assistieren. In den meisten Implementierungen müssen sie Daten mit einer Central Control Unit (CCU) und unter- einander austauschen. Die Vorhersage, ob eine bestimmte Kommunikationstechnologie für eine Anwendung geeignet ist, ist sehr anspruchsvoll, da sowohl Anwendungen als auch Anforderungen sehr heterogen sind. Die präsentierten Modelle und Simulationswerkzeuge ermöglichen die Simulation der komplexen Interaktion von mobilen Robotern und drahtlosen Kommunikationsnetz- werken. Das Ziel ist die Vorhersage der Eigenschaften einer vernetzten FTS-Flotte. Mit den vorgestellten Werkzeugen wurden verschiedene Ad-hoc-Netzwerklösungen für industrielle Anwendungen mit FTS implementiert, getestet und untersucht. Die- se Kommunikationssysteme übertragen zeitkritische und verzögerungstolerante Nach- richten. Zusätzlich wird eine Steuerungsmethode für die FTS vorgeschlagen, die die KommunikationoptimiertunddamiteinhergehenddieTransportleistungderFTS-Flotte erhöht. Dieses Werk führt also nicht nur neue Werkzeuge ein um die Entwicklung in- dustrieller Ad-hoc Systeme zu ermöglichen, sondern schlägt auch einige Systeme für die kritischsten Kommunikationsprobleme industrieller Anwendungen vor. KW - Industrie KW - Routing KW - Funknetz KW - Autonomer Roboter KW - Drahtloses vermaschtes Netzwerk KW - Industrie-Roboter KW - Kabellose Netzwerke KW - Simulation Y1 - 2023 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:bvb:20-opus-299238 ER - TY - JOUR A1 - Puppe, Frank T1 - Gesellschaftliche Perspektiven einer fachspezifischen KI für automatisierte Entscheidungen JF - Informatik Spektrum N2 - Die künstliche Intelligenz (KI) entwickelt sich rasant und hat bereits eindrucksvolle Erfolge zu verzeichnen, darunter übermenschliche Kompetenz in den meisten Spielen und vielen Quizshows, intelligente Suchmaschinen, individualisierte Werbung, Spracherkennung, -ausgabe und -übersetzung auf sehr hohem Niveau und hervorragende Leistungen bei der Bildverarbeitung, u. a. in der Medizin, der optischen Zeichenerkennung, beim autonomen Fahren, aber auch beim Erkennen von Menschen auf Bildern und Videos oder bei Deep Fakes für Fotos und Videos. Es ist zu erwarten, dass die KI auch in der Entscheidungsfindung Menschen übertreffen wird; ein alter Traum der Expertensysteme, der durch Lernverfahren, Big Data und Zugang zu dem gesammelten Wissen im Web in greifbare Nähe rückt. Gegenstand dieses Beitrags sind aber weniger die technischen Entwicklungen, sondern mögliche gesellschaftliche Auswirkungen einer spezialisierten, kompetenten KI für verschiedene Bereiche der autonomen, d. h. nicht nur unterstützenden Entscheidungsfindung: als Fußballschiedsrichter, in der Medizin, für richterliche Entscheidungen und sehr spekulativ auch im politischen Bereich. Dabei werden Vor- und Nachteile dieser Szenarien aus gesellschaftlicher Sicht diskutiert. KW - Künstliche Intelligenz KW - Ethik KW - Entscheidungsfindung Y1 - 2022 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:bvb:20-opus-324197 SN - 0170-6012 VL - 45 IS - 2 ER - TY - JOUR A1 - Wienrich, Carolin A1 - Carolus, Astrid A1 - Roth-Isigkeit, David A1 - Hotho, Andreas T1 - Inhibitors and enablers to explainable AI success: a systematic examination of explanation complexity and individual characteristics JF - Multimodal Technologies and Interaction N2 - With the increasing adaptability and complexity of advisory artificial intelligence (AI)-based agents, the topics of explainable AI and human-centered AI are moving close together. Variations in the explanation itself have been widely studied, with some contradictory results. These could be due to users’ individual differences, which have rarely been systematically studied regarding their inhibiting or enabling effect on the fulfillment of explanation objectives (such as trust, understanding, or workload). This paper aims to shed light on the significance of human dimensions (gender, age, trust disposition, need for cognition, affinity for technology, self-efficacy, attitudes, and mind attribution) as well as their interplay with different explanation modes (no, simple, or complex explanation). Participants played the game Deal or No Deal while interacting with an AI-based agent. The agent gave advice to the participants on whether they should accept or reject the deals offered to them. As expected, giving an explanation had a positive influence on the explanation objectives. However, the users’ individual characteristics particularly reinforced the fulfillment of the objectives. The strongest predictor of objective fulfillment was the degree of attribution of human characteristics. The more human characteristics were attributed, the more trust was placed in the agent, advice was more likely to be accepted and understood, and important needs were satisfied during the interaction. Thus, the current work contributes to a better understanding of the design of explanations of an AI-based agent system that takes into account individual characteristics and meets the demand for both explainable and human-centered agent systems. KW - explainable AI KW - human-centered AI KW - recommender agent KW - explanation complexity KW - individual differences Y1 - 2022 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:bvb:20-opus-297288 SN - 2414-4088 VL - 6 IS - 12 ER - TY - JOUR A1 - Oberdörfer, Sebastian A1 - Schraudt, David A1 - Latoschik, Marc Erich T1 - Embodied gambling — investigating the influence of level of embodiment, avatar appearance, and virtual environment design on an online VR slot machine JF - Frontiers in Virtual Reality N2 - Slot machines are one of the most played games by players suffering from gambling disorder. New technologies like immersive Virtual Reality (VR) offer more possibilities to exploit erroneous beliefs in the context of gambling. Recent research indicates a higher risk potential when playing a slot machine in VR than on desktop. To continue this investigation, we evaluate the effects of providing different degrees of embodiment, i.e., minimal and full embodiment. The avatars used for the full embodiment further differ in their appearance, i.e., they elicit a high or a low socio-economic status. The virtual environment (VE) design can cause a potential influence on the overall gambling behavior. Thus, we also embed the slot machine in two different VEs that differ in their emotional design: a colorful underwater playground environment and a virtual counterpart of our lab. These design considerations resulted in four different versions of the same VR slot machine: 1) full embodiment with high socio-economic status, 2) full embodiment with low socio-economic status, 3) minimal embodiment playground VE, and 4) minimal embodiment laboratory VE. Both full embodiment versions also used the playground VE. We determine the risk potential by logging gambling frequency as well as stake size, and measuring harm-inducing factors, i.e., dissociation, urge to gamble, dark flow, and illusion of control, using questionnaires. Following a between groups experimental design, 82 participants played for 20 game rounds one of the four versions. We recruited our sample from the students enrolled at the University of Würzburg. Our safety protocol ensured that only participants without any recent gambling activity took part in the experiment. In this comparative user study, we found no effect of the embodiment nor VE design on neither the gambling frequency, stake sizes, nor risk potential. However, our results provide further support for the hypothesis of the higher visual angle on gambling stimuli and hence the increased emotional response being the true cause for the higher risk potential. KW - virtual reality KW - virtual environments KW - immersion KW - gambling KW - risks KW - embodiment KW - avatars Y1 - 2022 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:bvb:20-opus-284662 SN - 2673-4192 VL - 3 ER - TY - JOUR A1 - Halbig , Andreas A1 - Babu , Sooraj K. A1 - Gatter , Shirin A1 - Latoschik , Marc Erich A1 - Brukamp, Kirsten A1 - von Mammen , Sebastian T1 - Opportunities and challenges of Virtual Reality in healthcare – a domain experts inquiry JF - Frontiers in Virtual Reality N2 - In recent years, the applications and accessibility of Virtual Reality (VR) for the healthcare sector have continued to grow. However, so far, most VR applications are only relevant in research settings. Information about what healthcare professionals would need to independently integrate VR applications into their daily working routines is missing. The actual needs and concerns of the people who work in the healthcare sector are often disregarded in the development of VR applications, even though they are the ones who are supposed to use them in practice. By means of this study, we systematically involve health professionals in the development process of VR applications. In particular, we conducted an online survey with 102 healthcare professionals based on a video prototype which demonstrates a software platform that allows them to create and utilise VR experiences on their own. For this study, we adapted and extended the Technology Acceptance Model (TAM). The survey focused on the perceived usefulness and the ease of use of such a platform, as well as the attitude and ethical concerns the users might have. The results show a generally positive attitude toward such a software platform. The users can imagine various use cases in different health domains. However, the perceived usefulness is tied to the actual ease of use of the platform and sufficient support for learning and working with the platform. In the discussion, we explain how these results can be generalized to facilitate the integration of VR in healthcare practice. KW - virtual reality KW - healthcare KW - therapy KW - rehabilitation KW - ethics KW - technology acceptance KW - authoring platform KW - healthcare professionals Y1 - 2022 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:bvb:20-opus-284752 SN - 2673-4192 VL - 3 ER -