115 research outputs found
Risk Profiles in Individual Software Development and Packaged Software Implementation Projects: A Delphi Study at a German-Based Financial Services Company
The aim of this paper is to compare risk profiles of individual software development (ISD) and packaged software implementation (PSI) projects. While researchers have investigated risks in either PSI projects or ISD projects, an integrated perspective on how the risk profiles of these two types of information system (IS) projects differ is missing. To explore these differences, this work conducted a Delphi study at a German-based financial services company. The results suggest that: First, ISD projects seem to be more heterogeneous and face a larger variety of risks than the more straightforward PSI projects. Second, ISD projects seem to be particularly prone to risks related to sponsorship, requirements, and project organization. Third, PSI projects tend to be predominantly subject to risks related to technology, project planning, and project completion. Finally, in contrast to available lists of risks in IS projects and irrespective of the project type, the paper found a surprisingly high prominence of technology and testing-related risks
Ultralowâparameter denoising: trainable bilateral filter layers in computed tomography
Background
Computed tomography (CT) is widely used as an imaging tool to visualize three-dimensional structures with expressive bone-soft tissue contrast. However, CT resolution can be severely degraded through low-dose acquisitions, highlighting the importance of effective denoising algorithms.
Purpose
Most data-driven denoising techniques are based on deep neural networks, and therefore, contain hundreds of thousands of trainable parameters, making them incomprehensible and prone to prediction failures. Developing understandable and robust denoising algorithms achieving state-of-the-art performance helps to minimize radiation dose while maintaining data integrity.
Methods
This work presents an open-source CT denoising framework based on the idea of bilateral filtering. We propose a bilateral filter that can be incorporated into any deep learning pipeline and optimized in a purely data-driven way by calculating the gradient flow toward its hyperparameters and its input. Denoising in pure image-to-image pipelines and across different domains such as raw detector data and reconstructed volume, using a differentiable backprojection layer, is demonstrated. In contrast to other models, our bilateral filter layer consists of only four trainable parameters and constrains the applied operation to follow the traditional bilateral filter algorithm by design.
Results
Although only using three spatial parameters and one intensity range parameter per filter layer, the proposed denoising pipelines can compete with deep state-of-the-art denoising architectures with several hundred thousand parameters. Competitive denoising performance is achieved on x-ray microscope bone data and the 2016 Low Dose CT Grand Challenge data set. We report structural similarity index measures of 0.7094 and 0.9674 and peak signal-to-noise ratio values of 33.17 and 43.07 on the respective data sets.
Conclusions
Due to the extremely low number of trainable parameters with well-defined effect, prediction reliance and data integrity is guaranteed at any time in the proposed pipelines, in contrast to most other deep learning-based denoising architectures
âDa geht es nicht nur um Energiesparen!â: Sozial-ökologische Transformationsprozesse in der Produktion partizipativ und interdisziplinĂ€r gestalten
Im vorliegenden Artikel stellen wir einen Ansatz zur BefĂ€higung von ProduktionsbeschĂ€ftigten zum Nachhaltigkeitshandeln im Betrieb vor. Mit einer zu generierenden Nachhaltigkeitskompetenz wird die ökologische wie soziale Dimension von Nachhaltigkeit adressiert: Ăkologisch handelnde BeschĂ€ftigte können einen wichtigen Beitrag zur Nachhaltigkeit von Betrieben leisten und zugleich kann der strikt bottom-up-orientierte Ansatz GestaltungsspielrĂ€ume der BeschĂ€ftigten eröffnen und adressiert so die im Nachhaltigkeitsdiskurs hĂ€ufig vernachlĂ€ssigte Dimension sozialer Prozesse.
This paper presents an approach to enable production employees to act for sustainability in manufacturing companies. The idea is to generate a sustainability competence that addresses both the ecological and the social dimension of sustainability. Ecological employee action can offer an important contribution to the sustainability of enterprises, and at the same time the bottom-up approach is apt to open up new scopes of action for the employees, thus addressing the often-neglected social dimension of sustainability.
(editorial reviewed
Exploring Epipolar Consistency Conditions for Rigid Motion Compensation in In-vivo X-ray Microscopy
Intravital X-ray microscopy (XRM) in preclinical mouse models is of vital
importance for the identification of microscopic structural pathological
changes in the bone which are characteristic of osteoporosis. The complexity of
this method stems from the requirement for high-quality 3D reconstructions of
the murine bones. However, respiratory motion and muscle relaxation lead to
inconsistencies in the projection data which result in artifacts in
uncompensated reconstructions. Motion compensation using epipolar consistency
conditions (ECC) has previously shown good performance in clinical CT settings.
Here, we explore whether such algorithms are suitable for correcting
motion-corrupted XRM data. Different rigid motion patterns are simulated and
the quality of the motion-compensated reconstructions is assessed. The method
is able to restore microscopic features for out-of-plane motion, but artifacts
remain for more realistic motion patterns including all six degrees of freedom
of rigid motion. Therefore, ECC is valuable for the initial alignment of the
projection data followed by further fine-tuning of motion parameters using a
reconstruction-based method
Noise2Contrast: Multi-Contrast Fusion Enables Self-Supervised Tomographic Image Denoising
Self-supervised image denoising techniques emerged as convenient methods that
allow training denoising models without requiring ground-truth noise-free data.
Existing methods usually optimize loss metrics that are calculated from
multiple noisy realizations of similar images, e.g., from neighboring
tomographic slices. However, those approaches fail to utilize the multiple
contrasts that are routinely acquired in medical imaging modalities like MRI or
dual-energy CT. In this work, we propose the new self-supervised training
scheme Noise2Contrast that combines information from multiple measured image
contrasts to train a denoising model. We stack denoising with domain-transfer
operators to utilize the independent noise realizations of different image
contrasts to derive a self-supervised loss. The trained denoising operator
achieves convincing quantitative and qualitative results, outperforming
state-of-the-art self-supervised methods by 4.7-11.0%/4.8-7.3% (PSNR/SSIM) on
brain MRI data and by 43.6-50.5%/57.1-77.1% (PSNR/SSIM) on dual-energy CT X-ray
microscopy data with respect to the noisy baseline. Our experiments on
different real measured data sets indicate that Noise2Contrast training
generalizes to other multi-contrast imaging modalities
Overexpression of CD97 in Intestinal Epithelial Cells of Transgenic Mice Attenuates Colitis by Strengthening Adherens Junctions
The adhesion G-protein-coupled receptor CD97 is present in normal colonic enterocytes but overexpressed in colorectal carcinoma. To investigate the function of CD97 in colorectal carcinogenesis, transgenic Tg(villin-CD97) mice overexpressing CD97 in enterocytes were generated and subjected to azoxymethane (AOM)/dextran sodium sulfate (DSS)-induced colitis-associated tumorigenesis. Unexpectedly, we found a CD97 cDNA copy number-dependent reduction of DSS-induced colitis in Tg compared to wild-type (WT) mice that was confirmed by applying a simple DSS protocol. Ultrastructural analysis revealed that overexpression of CD97 strengthened lateral cell-cell contacts between enterocytes, which, in contrast, were weakened in CD97 knockout (Ko) mice. Transepithelial resistance was not altered in Tg and Ko mice, indicating that tight junctions were not affected. In Tg murine and normal human colonic enterocytes as well as in colorectal cell lines CD97 was localized preferentially in E-cadherin-based adherens junctions. CD97 overexpression upregulated membrane-bound but not cytoplasmic or nuclear ÎČ-catenin and reduced phospho-ÎČ-catenin, labeled for degradation. This was associated with inactivation of glycogen synthase kinase-3ÎČ (GSK-3ÎČ) and activation of Akt. In summary, CD97 increases the structural integrity of enterocytic adherens junctions by increasing and stabilizing junctional ÎČ-catenin, thereby regulating intestinal epithelial strength and attenuating experimental colitis
Bayes Factors for Mixed Models: a Discussion
van Doorn et al. (2021) outlined various questions that arise when conducting Bayesian model comparison for mixed effects models. Seven response articles offered their own perspective on the preferred setup for mixed model comparison, on the most appropriate specification of prior distributions, and on the desirability of default recommendations. This article presents a round-table discussion that aims to clarify outstanding issues, explore common ground, and outline practical considerations for any researcher wishing to conduct a Bayesian mixed effects model comparison
Implementation and evaluation of a multi-level mental health promotion intervention for the workplace (MENTUPP): study protocol for a cluster randomised controlled trial
Background Well-organised and managed workplaces can be a source of wellbeing. The construction, healthcare and information and communication technology sectors are characterised by work-related stressors (e.g. high workloads, tight deadlines) which are associated with poorer mental health and wellbeing. The MENTUPP intervention is a flexibly delivered, multi-level approach to supporting small- and medium-sized enterprises (SMEs) in creating mentally healthy workplaces. The online intervention is tailored to each sector and designed to support employees and leaders dealing with mental health difficulties (e.g. stress), clinical level anxiety and depression, and combatting mental health-related stigma. This paper presents the protocol for the cluster randomised controlled trial (cRCT) of the MENTUPP intervention in eight European countries and Australia. Methods Each intervention country will aim to recruit at least two SMEs in each of the three sectors. The design of the cRCT is based on the experiences of a pilot study and guided by a Theory of Change process that describes how the intervention is assumed to work. SMEs will be randomly assigned to the intervention or control conditions. The aim of the cRCT is to assess whether the MENTUPP intervention is effective in improving mental health and wellbeing (primary outcome) and reducing stigma, depression and suicidal behaviour (secondary outcome) in employees. The study will also involve a process and economic evaluation. Conclusions At present, there is no known multi-level, tailored, flexible and accessible workplace-based intervention for the prevention of non-clinical and clinical symptoms of depression, anxiety and burnout, and the promotion of mental wellbeing. The results of this study will provide a comprehensive overview of the implementation and effectiveness of such an intervention in a variety of contexts, languages and cultures leading to the overall goal of delivering an evidence-based intervention for mental health in the workplace
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