Maintenance is a crucial subject in medical equipment life cycle management. Evidence-based maintenance consists of the continuous performance monitoring of equipment, starting from the evidence-the current state in terms of failure history-and improvement of its effectiveness by making the required changes. This process is very important for optimizing the use and allocation of the available resources by clinical engineering departments. Medical equipment maintenance is composed of two basic activities: scheduled maintenance and corrective maintenance. Both are needed for the management of the entire set of medical equipment in a hospital. Because the classification of maintenance service work orders reveals specific issues related to frequent problems and failures, specific codes have been applied to classify the corrective and scheduled maintenance work orders at Careggi University Hospital (Florence, Italy). In this study, a novel set of key performance indicators is also proposed for evaluating medical equipment maintenance performance. The purpose of this research is to combine these two evidence-based methods to assess every aspect of the maintenance process and provide an objective and standardized approach that will support and enhance clinical engineering activities. Starting from the evidence (i.e. failures), the results show that the combination of these two methods can provide a periodical cross-analysis of maintenance performance that indicates the most appropriate procedures. Graphical abstract The left side shows a block diagram of the process needed to calculate the proposed set of KPIs, starting from technological, organizational and financial data. On the upper right it is shown an example of scheduled maintenance analysis for a specific class of equipment (legend in the article body). The bottom right part shows how the KPIs can be implemented in a business intelligence dashboard.
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http://dx.doi.org/10.1007/s11517-019-02021-x | DOI Listing |
Alzheimers Dement
December 2024
Center for Alzheimer's Research and Treatment, Brigham and Women's Hospital/Harvard Medical School, Boston, MA, USA.
Background: Medical history and healthcare utilization in preclinical Alzheimer's disease (AD) are not well characterized and may reveal indicators associated with asymptomatic stages of AD.
Methods: This retrospective observational study compared 246 Anti-Amyloid Treatment in Asymptomatic AD study (A4) individuals who met elevated brain amyloid eligibility criteria to 121 individuals in the companion Longitudinal Evaluation of Amyloid Risk and Neurodegeneration study (LEARN) who were eligible for A4 except did not meet elevated amyloid eligibility criteria. Matched-controls for A4/LEARN, using a 3:1 match of demographics, Medicare enrollment month, and frailty status, were randomly selected from Medicare beneficiaries without cognitive impairment/dementia claims.
Alzheimers Dement
December 2024
University of Minnesota Duluth, Duluth, MN, USA.
This study was approved by the ethics review board at the University of Minnesota. In conclusion, the successful design and testing of an intelligent living space tailored for dementia care were conducted in a controlled lab environment with healthy participants. The primary aim was to assess the viability of integrating robots, wearable sensors, and spatial technology to support the well-being of individuals affected by dementia.
View Article and Find Full Text PDFThe recent ACHIEVE study (https://www.achievestudy.org/) demonstrated the substantial benefit of hearing aid use in those with mild-moderate hearing loss and at increased risk for cognitive decline.
View Article and Find Full Text PDFBackground: Assistive technology (AT) plays a crucial role in empowering people living with dementia (PLWD) to perform tasks independently, enhancing their autonomy and dignity. To build on this foundation, our proposal introduces a home-based reminder system designed to further support PLWD in their daily lives.
Hypothesis: Memory aid technology, in particular reminder systems, can be developed to prospectively provide PLWD with autonomy and independence, to alleviate responsibilities and time commitments of caregivers and clinicians, and to enable remote behavioral monitoring.
Alzheimers Dement
December 2024
Kentucky College of Osteopathic Medicine, PikeVille, KY, USA.
Background: Integrating humanoid robots, wearable sensors, and spatial technology into an intelligent dementia-friendly living space is crucial for tailoring personalized and supportive environments, thereby addressing the unique needs of individuals affected by dementia and maintaining quality of life.[1-10].
Methods: We programmed Pepper, a humanoid robot, for independent verbal communication to interact, tell jokes, and offer medications.
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