14 results on '"Dahlweid, M"'
Search Results
2. Der Wert vorhandener Standards intersektoraler Kommunikation für tragfähige Businessmodelle
- Author
-
Dahlweid, M, Jähn, K, and Nagel, E
- Subjects
ddc: 610 - Published
- 2004
3. Optimal duration of primary surgery with regards to a "borderline"-situation in polytrauma patients
- Author
-
Pape, H.-C., primary, Stalp, M., additional, Dahlweid, M., additional, Regel, G., additional, and Tscherne, H., additional
- Published
- 2000
- Full Text
- View/download PDF
4. Dehydroepiandrosterone decreases mortality rate and improves cellular immune function during polymicrobial sepsis.
- Author
-
Oberbeck, R, Dahlweid, M, Koch, R, van Griensven, M, Emmendörfer, A, Tscherne, H, and Pape, H C
- Published
- 2001
5. Collaboration Across Disciplines to Integrate Clinical Expertise into Medical Software Development: The Approach of the Dedalus Medical Office.
- Author
-
Rausch D, Dahlweid M, Kozinova I, Wraith C, Hochheim I, Marin L, Johnson J, McClelland T, Gout L, Kumar G, and Yasini M
- Subjects
- Software, Medical Informatics, Humans, Interdisciplinary Communication, Software Design
- Abstract
Medical informatics is a multidisciplinary field combining clinical and technical expertise. Addressing the challenge of aligning software design with clinicians' real-world needs, Dedalus established the Medical Office, a dedicated department designed to integrate clinical expertise directly into the software development process, in 2022. This paper details the approach and impact of the Medical Office. An international team of 15 healthcare professionals with experience in medical informatics was assembled. The team employed a multifaceted approach, incorporating global communication sessions and a ticketing system to track and analyze service requests. Over two years, 398 tickets were received, categorized into nine areas: clinical content curation, medical terminologies, clinical safety, clinical evaluation, design support, clinical UX, research & publication, real-world medical cases, and pre-sales support. The average duration of ticket resolution decreased over time, attributed to process fine-tuning and the formation of a relevant expert group. A preliminary satisfaction survey indicated positive feedback from technical teams. The collaborative model improved software design, usability, and clinical safety, demonstrating the value of clinician involvement. While preliminary results are promising, ongoing evaluation and adaptation are essential. The study emphasizes the importance of interdisciplinary collaboration in medical informatics and the benefits of clinician involvement in healthcare technology development. Future studies should explore this model's long-term impacts and scalability in other organizations and healthcare systems.
- Published
- 2024
- Full Text
- View/download PDF
6. Enhancing Clinical Practice: Creating Dynamic Medical Content in Electronic Medical Records.
- Author
-
Yasini M, Rausch D, Kozinova I, Hochheim I, Marin L, McClelland T, Gout L, Kumar G, and Dahlweid M
- Subjects
- Humans, Brain Neoplasms, Electronic Health Records
- Abstract
The integration of Electronic Medical Records (EMRs) revolutionized healthcare but often retained limitations from paper-based structures. This study proposes a framework for developing dynamic medical content specifically adapted to the clinical context including medical specialty and diseases. Tailoring content to this dynamic context offers several benefits, including improved access to relevant information, streamlined workflows, and potentially better patient outcomes. We applied our framework to develop neurosurgical content, focusing on brain tumors. The method involves defining the medical specialty, outlining user journeys, and iteratively developing artifacts like assessment forms, dashboards, and order sets. Standardized terminologies ensure consistency and interoperability. Our results demonstrate a successful development of content meeting user needs and clinical relevance. While initial implementation focused on neurosurgery, exploring scalability and AI integration offers promising avenues for further advancement. Future studies could quantitatively evaluate the impact of this method on user satisfaction and patient outcomes.
- Published
- 2024
- Full Text
- View/download PDF
7. An innovative artificial intelligence-based method to compress complex models into explainable, model-agnostic and reduced decision support systems with application to healthcare (NEAR).
- Author
-
Kassem K, Sperti M, Cavallo A, Vergani AM, Fassino D, Moz M, Liscio A, Banali R, Dahlweid M, Benetti L, Bruno F, Gallone G, De Filippo O, Iannaccone M, D'Ascenzo F, De Ferrari GM, Morbiducci U, Della Valle E, and Deriu MA
- Subjects
- Humans, Decision Support Systems, Clinical organization & administration, Artificial Intelligence, Algorithms
- Abstract
Background and Objective: In everyday clinical practice, medical decision is currently based on clinical guidelines which are often static and rigid, and do not account for population variability, while individualized, patient-oriented decision and/or treatment are the paradigm change necessary to enter into the era of precision medicine. Most of the limitations of a guideline-based system could be overcome through the adoption of Clinical Decision Support Systems (CDSSs) based on Artificial Intelligence (AI) algorithms. However, the black-box nature of AI algorithms has hampered a large adoption of AI-based CDSSs in clinical practice. In this study, an innovative AI-based method to compress AI-based prediction models into explainable, model-agnostic, and reduced decision support systems (NEAR) with application to healthcare is presented and validated., Methods: NEAR is based on the Shapley Additive Explanations framework and can be applied to complex input models to obtain the contributions of each input feature to the output. Technically, the simplified NEAR models approximate contributions from input features using a custom library and merge them to determine the final output. Finally, NEAR estimates the confidence error associated with the single input feature contributing to the final score, making the result more interpretable. Here, NEAR is evaluated on a clinical real-world use case, the mortality prediction in patients who experienced Acute Coronary Syndrome (ACS), applying three different Machine Learning/Deep Learning models as implementation examples., Results: NEAR, when applied to the ACS use case, exhibits performances like the ones of the AI-based model from which it is derived, as in the case of the Adaptive Boosting classifier, whose Area Under the Curve is not statistically different from the NEAR one, even the model's simplification. Moreover, NEAR comes with intrinsic explainability and modularity, as it can be tested on the developed web application platform (https://neardashboard.pythonanywhere.com/)., Conclusions: An explainable and reliable CDSS tailored to single-patient analysis has been developed. The proposed AI-based system has the potential to be used alongside the clinical guidelines currently employed in the medical setting making them more personalized and dynamic and assisting doctors in taking their everyday clinical decisions., Competing Interests: Declaration of competing interest The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper., (Copyright © 2024 The Authors. Published by Elsevier B.V. All rights reserved.)
- Published
- 2024
- Full Text
- View/download PDF
8. Say Goodbye to the 'Paper on Screen', Rethinking Presentation of and Interaction with Medical Information.
- Author
-
Rausch D, Kwade Z, Dahlweid M, Kozinova I, Nathoo S, and Yasini M
- Subjects
- Humans, Change Management, Dashboard Systems, Electronic Health Records, Sepsis
- Abstract
Traditionally, Electronic Medical Records (EMR) have been designed to mimic paper records. Organizing and presenting medical information along the lines that evolved for non-digital records over the decades, reduced change management for medical users, but failed to make use of the potential of organizing digital data. We proposed a method to create clinical dashboards to increase the usability of information in the medical records. Official clinical guidelines were studied by a working group, including dashboard target users. Necessary clinical concepts contained in the medical records were identified according to the clinical context and finally, dedicated technical tools with standard terminologies were used to represent categories of information. We used this method to generate and implement a dashboard for sepsis. The dashboard was found to be appropriate and easy to use by the target users.
- Published
- 2024
- Full Text
- View/download PDF
9. Digital Connecting for Health, an Open Platform Based on Data Integration and Standards to Adopt Digital and Telehealth Solutions in the Healthcare Ecosystem.
- Author
-
Yasini M, Bonns E, Rausch D, and Dahlweid M
- Subjects
- Humans, Health Facilities, Health Services, Telemedicine, Delivery of Health Care
- Abstract
The paper presents a collaborative approach employed to identify and examine the obstacles faced by telehealth solutions. The study involved the active participation of health start-ups, telehealth providers, and healthcare professionals delivering telehealth services. By harnessing the collective expertise and diverse perspectives of these stakeholders, the research led to develop an open platform, entitled Digital Connecting for Health, that has the potential to overcome the challenges impeding the widespread adoption and effectiveness of digital health services including telehealth in delivery of care. The developed platform shed light on various obstacles faced by telehealth solutions and provide valuable infrastructures for enhancing the implementation and efficacy of various digital health solutions, including telehealth applications, from various providers.
- Published
- 2023
- Full Text
- View/download PDF
10. Towards a Clinically Meaningful Model to Structure the Development of Interoperable Order Sets, Applicable to the Point of Care in Any EMR.
- Author
-
Yasini M, Rausch D, Marin L, Hochheim I, Singh Dhillon N, and Dahlweid M
- Subjects
- Records, Electronic Health Records, Hospitals, Point-of-Care Systems, Decision Support Systems, Clinical
- Abstract
Standardized order sets are a pragmatic type of clinical decision support that can improve adherence to clinical guidelines with a list of recommended orders related to a specific clinical context. We developed a structure facilitating the creation of order sets and making them interoperable, to increase their usability. Various orders contained in electronic medical records in different hospitals were identified and included in different categories of orderable items. Clear definitions were provided for each category. A mapping to FHIR resources was performed to relate these clinically meaningful categories to FHIR standards to assure interoperability. We used this structure to implement the relevant user interface in the Clinical Knowledge Platform. The use of standard medical terminologies and the integration of clinical information models like FHIR resources are key factors for creating reusable decision support systems. The content authors should be provided with a clinically meaningful system to use in a non-ambiguous context.
- Published
- 2023
- Full Text
- View/download PDF
11. Leveraging artificial intelligence for the management of postoperative delirium following cardiac surgery.
- Author
-
Fliegenschmidt J, Hulde N, Gedinha Preising M, Ruggeri S, Szymanowsky R, Meesseman L, Sun H, Dahlweid M, and von Dossow V
- Abstract
Background: Postoperative delirium is a highly relevant complication of cardiac surgery. It is associated with worse outcomes and considerably increased costs of care. A novel approach of monitoring patients with machine learning enabled prediction software could trigger pre-emptive implementation of mitigation strategies as well as timely intervention., Objective: This study evaluates the predictive accuracy of an artificial intelligence (AI) model for anticipating postoperative delirium by comparing it to established standards and measures of risk and vulnerability., Design: Retrospective predictive accuracy study., Setting: Records were gathered from a database for anaesthesia quality assurance at a specialised heart surgery centre in Germany., Patients: Between January and July 2021, 131 patients had been enrolled into the database and had data available for AI prediction modelling. After exclusion of incomplete follow-ups, a subset of 114 was included in the statistical analysis., Main Outcome Measures: Delirium was diagnosed with the Confusion Assessment Method for the ICU (CAM-ICU) over three days postoperatively with specific follow-up visits. AI predictions were also compared with risk assessment through a frailty screening, a Shulman Clock Drawing Test, and using a checklist of predisposing factors including comorbidity, reduced mobility, and substance abuse., Results: Postoperative delirium was diagnosed in 23.7% of patients. Postoperative AI screening exhibited reasonable performance with an area under the receiver operating curve (AUROC) of 0.79, 95% confidence interval (CI), 0.69-0.87. But pre-operative prediction was weak for all methods (AUROC range from 0.55 to 0.66). There were significant associations with postoperative delirium: open heart surgery versus endovascular valve replacement (33.3% vs. 10.4%, P < 0.01), postinterventional hospitalisation (12.8 vs. 8.6 days, P < 0.01), and length of ICU stay (1.7 vs. 0.3 days, P < 0.01) were all significantly associated with postoperative delirium., Conclusion: AI is a promising approach with considerable potential and delivered noninferior results compared with the usual approach of structured evaluation of risk factors and questionnaires. Since these established methods do not provide the desired confidence level, improved AI may soon deliver a better performance., Trial Registration: None., Competing Interests: Conflicts of interest: authors from HDZ have no competing interests to declare. RS, LM, HS, MD work for Dedalus Healthcare., (Copyright © 2022 The Author(s). Published by Wolters Kluwer Health, Inc. on behalf of the European Society of Anaesthesiology and Intensive Care.)
- Published
- 2022
- Full Text
- View/download PDF
12. Clinical Knowledge Platform (CKP): A Collaborative Ecosystem to Share Interoperable Clinical Forms, Viewers, and Order Sets with Various EMRs.
- Author
-
Dahlweid M, Rausch D, Hinske C, Darmoni S, Grosjean J, Santi J, Marin L, and Yasini M
- Subjects
- Humans, Ecosystem, Electronic Health Records
- Abstract
A large number of Electronic Medical Records (EMR) are currently available with a variety of features and architectures. Existing studies and frameworks presented some solutions to overcome the problem of specification and application of clinical guidelines toward the automation of their use at the point of care. However, they could not yet support thoroughly the dynamic use of medical knowledge in EMRs according to the clinical contexts and provide local application of international recommendations. This study presents the development of the Clinical Knowledge Platform (CKP): a collaborative interoperable environment to create, use, and share sets of information elements that we entitled Clinical Use Contexts (CUCs). A CUC could include medical forms, patient dashboards, and order sets that are usable in various EMRs. For this purpose, we have identified and developed three basic requirements: an interoperable, inter-mapped dictionary of concepts leaning on standard terminologies, the possibility to define relevant clinical contexts, and an interface for collaborative content production via communities of professionals. Community members work together to create and/or modify, CUCs based on different clinical contexts. These CUCs will then be uploaded to be used in clinical applications in various EMRs. With this method, each CUC is, on the one hand, specific to a clinical context and on the other hand, could be adapted to the local practice conditions and constraints. Once a CUC has been developed, it could be shared with other potential users that can consume it directly or modify it according to their needs.
- Published
- 2022
- Full Text
- View/download PDF
13. Brain SegNet: 3D local refinement network for brain lesion segmentation.
- Author
-
Hu X, Luo W, Hu J, Guo S, Huang W, Scott MR, Wiest R, Dahlweid M, and Reyes M
- Subjects
- Humans, Imaging, Three-Dimensional, Magnetic Resonance Imaging, Neural Networks, Computer, Radiographic Image Interpretation, Computer-Assisted, Brain Neoplasms diagnostic imaging, Image Processing, Computer-Assisted methods
- Abstract
MR images (MRIs) accurate segmentation of brain lesions is important for improving cancer diagnosis, surgical planning, and prediction of outcome. However, manual and accurate segmentation of brain lesions from 3D MRIs is highly expensive, time-consuming, and prone to user biases. We present an efficient yet conceptually simple brain segmentation network (referred as Brain SegNet), which is a 3D residual framework for automatic voxel-wise segmentation of brain lesion. Our model is able to directly predict dense voxel segmentation of brain tumor or ischemic stroke regions in 3D brain MRIs. The proposed 3D segmentation network can run at about 0.5s per MRIs - about 50 times faster than previous approaches Med Image Anal 43: 98-111, 2018, Med Image Anal 36:61-78, 2017. Our model is evaluated on the BRATS 2015 benchmark for brain tumor segmentation, where it obtains state-of-the-art results, by surpassing recently published results reported in Med Image Anal 43: 98-111, 2018, Med Image Anal 36:61-78, 2017. We further applied the proposed Brain SegNet for ischemic stroke lesion outcome prediction, with impressive results achieved on the Ischemic Stroke Lesion Segmentation (ISLES) 2017 database.
- Published
- 2020
- Full Text
- View/download PDF
14. Reticuloendothelial system activity and organ failure in patients with multiple injuries.
- Author
-
Pape HC, Remmers D, Grotz M, Kotzerke J, von Glinski S, van Griensven M, Dahlweid M, Sznidar S, and Tscherne H
- Subjects
- Adult, Female, Humans, Male, Multiple Organ Failure blood, Multiple Trauma blood, Prospective Studies, Mononuclear Phagocyte System physiopathology, Multiple Organ Failure etiology, Multiple Trauma complications, Multiple Trauma physiopathology
- Abstract
Hypothesis: Reticuloendothelial system function is altered in patients with multiple trauma and organ failure., Design: Prospective cohort study., Setting: Surgical intensive care unit at a level I trauma center., Patients: Patients with multiple blunt trauma and injury severity scores greater than 20, with no referrals., Interventions: Every second day reticuloendothelial system (RES) clearance capacity and liver blood flow were determined by administering labeled human albumin. Liver function was measured by enzymatic decay of indocyanine green, and levels of plasma tumor necrosis factor alpha were evaluated., Results: In nonsurviving patients with blunt trauma, RES function was altered and was associated with organ dysfunction and infectious complications. Of 61 patients, 42 survived and 19 did not. Sixteen patients (84%) died of multiple organ failure. Significantly elevated RES activity (colloid clearance rate) was present between day 5 and day 13 after trauma in nonsurvivors (0.86+/-0.16 [mean +/- SD] on day 7, P = .003) compared with survivors (0.48+/-0.08 on day 7) and 20 healthy volunteers (0.47+/-0.06); RES activity then decreased to subnormal levels in nonsurvivors. Tumor necrosis factor alpha plasma levels were elevated early after injury only in nonsurvivors (on day 1: nonsurvivors, 1.2+/-0.4 ng/mL [mean +/- SD]; survivors, 0.5+/-0.2 ng/mL; P = .02). Indocyanine green half-life values increased late after trauma, indicating late organ failure (on day 19: nonsurvivors, 111+/-29 minutes [mean +/- SD]; survivors, 12+/-4 minutes; P<.001)., Conclusions: Early after trauma, nonsurviving patients demonstrated increased proinflammatory cytokine levels, followed by a state of pathological hyperactivation of the reticuloendothelial system prior to death. These results indicate that the stationary host defense system is involved in the mechanisms causing organ failure after severe trauma.
- Published
- 1999
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.