518 research outputs found
Psychological work with survivors of sex trafficking: a narrative inquiry of the impact on practitioners
This study contributes to the limited body of psychological literature in the field of human trafficking through presenting new and applicable understanding about the impact on psychological practitioners of working with women survivors of trafficking for sexual exploitation. The three core aims of the study were, firstly, to expand understanding about the individual experiences of personal and professional impact.
Second, to highlight the support required for practitioners working with survivors of trafficking for sexual exploitation. Through giving voice to practitioners, the third aim was to provide a new body of evidence in this much under-researched area, contributing towards improving clinical effectiveness. Underpinned by feminist postmodern values, this study is shaped as a story of resistance against the marginalisation and oppression of women’s voices. Taking a narrative inquiry approach to exploring both the singular and common experiences of impact, four women practitioners were interviewed, twice each. The design was collaborative, incorporating analysis and feedback between interviews, as well as drawing on poetic representation taken from interview segments. Each participant worked in different, often multifaceted roles, as psychologist, psychotherapist, counsellor and expert witness, yet all were psychologically trained.
Across the four narratives, five different subject areas were identified: A personal philosophy, rite of passage, boundaries, protective factors, and knowers and not-knowers. These headings gave rise to a discussion of how practitioners are impacted in the immediate, on a psychological, social and embodied level, as well as longer-term. The underlying personal philosophies of practitioners emerged as both motivating and protective in the work. Pertinent also was how the impact of the work changed at different points in a person’s career, the initial rite of passage representing a particularly challenging time in terms of impact and learning about boundaries. The individual understanding gained from the four narratives led to concrete output in the form of a template for a practice-based manual of recommendations, for application with organisations and individuals offering services
to survivors of trafficking
Coarse-grained brownian dynamics simulation of rule-based models
International audienceStudying spatial effects in signal transduction, such as co-localization along scaffold molecules, comes at a cost of complexity. In this paper, we propose a coarse-grained, particle-based spatial simulator, suited for large signal transduction models. Our approach is to combine the particle-based reaction and diffusion method, and (non-spatial) rule-based modeling: the location of each molecular complex is abstracted by a spheric particle, while its internal structure in terms of a site-graph is maintained explicit. The particles diffuse inside the cellular compartment and the colliding complexes stochastically interact according to a rule-based scheme. Since rules operate over molecular motifs (instead of full complexes), the rule set compactly describes a combinatorial or even infinite number of reactions. The method is tested on a model of Mitogen Activated Protein Kinase (MAPK) cascade of yeast pheromone response signaling. Results demonstrate that the molecules of the MAPK cascade co-localize along scaffold molecules, while the scaffold binds to a plasma membrane bound upstream component, localizing the whole signaling complex to the plasma membrane. Especially we show, how rings stabilize the resulting molecular complexes and derive the effective dissociation rate constant for it
Patient-tailored prioritization for a pediatric care decision support system through machine learning
Objective
Over 8 years, we have developed an innovative computer decision support system that improves appropriate delivery of pediatric screening and care. This system employs a guidelines evaluation engine using data from the electronic health record (EHR) and input from patients and caregivers. Because guideline recommendations typically exceed the scope of one visit, the engine uses a static prioritization scheme to select recommendations. Here we extend an earlier idea to create patient-tailored prioritization.
Materials and methods
We used Bayesian structure learning to build networks of association among previously collected data from our decision support system. Using area under the receiver-operating characteristic curve (AUC) as a measure of discriminability (a sine qua non for expected value calculations needed for prioritization), we performed a structural analysis of variables with high AUC on a test set. Our source data included 177 variables for 29 402 patients.
Results
The method produced a network model containing 78 screening questions and anticipatory guidance (107 variables total). Average AUC was 0.65, which is sufficient for prioritization depending on factors such as population prevalence. Structure analysis of seven highly predictive variables reveals both face-validity (related nodes are connected) and non-intuitive relationships.
Discussion
We demonstrate the ability of a Bayesian structure learning method to ‘phenotype the population’ seen in our primary care pediatric clinics. The resulting network can be used to produce patient-tailored posterior probabilities that can be used to prioritize content based on the patient's current circumstances.
Conclusions
This study demonstrates the feasibility of EHR-driven population phenotyping for patient-tailored prioritization of pediatric preventive care services
Experimental study of ceramic coated tip seals for turbojet engines
Ceramic gas-path seals were fabricated and successfully operated over 1000 cycles from flight idle to maximum power in a small turboshaft engine. The seals were fabricated by plasma spraying zirconia over a NiCoCrAlX bond boat on the Haynes 25 substrate. Coolant-side substrate temperatures and related engine parameters were recorded. Post-test inspection revealed mudflat surface cracking with penetration to the ceramic bond-coat interface
A parametric level-set method for partially discrete tomography
This paper introduces a parametric level-set method for tomographic
reconstruction of partially discrete images. Such images consist of a
continuously varying background and an anomaly with a constant (known)
grey-value. We represent the geometry of the anomaly using a level-set
function, which we represent using radial basis functions. We pose the
reconstruction problem as a bi-level optimization problem in terms of the
background and coefficients for the level-set function. To constrain the
background reconstruction we impose smoothness through Tikhonov regularization.
The bi-level optimization problem is solved in an alternating fashion; in each
iteration we first reconstruct the background and consequently update the
level-set function. We test our method on numerical phantoms and show that we
can successfully reconstruct the geometry of the anomaly, even from limited
data. On these phantoms, our method outperforms Total Variation reconstruction,
DART and P-DART.Comment: Paper submitted to 20th International Conference on Discrete Geometry
for Computer Imager
Recommended from our members
Where Are My Intelligent Assistant's Mistakes? A Systematic Testing Approach
Intelligent assistants are handling increasingly critical tasks, but until now, end users have had no way to systematically assess where their assistants make mistakes. For some intelligent assistants, this is a serious problem: if the assistant is doing work that is important, such as assisting with qualitative research or monitoring an elderly parent’s safety, the user may pay a high cost for unnoticed mistakes. This paper addresses the problem with WYSIWYT/ML (What You See Is What You Test for Machine Learning), a human/computer partnership that enables end users to systematically test intelligent assistants. Our empirical evaluation shows that WYSIWYT/ML helped end users find assistants’ mistakes significantly more effectively than ad hoc testing. Not only did it allow users to assess an assistant’s work on an average of 117 predictions in only 10 minutes, it also scaled to a much larger data set, assessing an assistant’s work on 623 out of 1,448 predictions using only the users’ original 10 minutes’ testing effort
- …