In the mental health sector, Psychological Therapies face numerous challenges including ambiguities over the client and service factors that are linked to unfavourable outcomes. Better understanding of these factors can contribute to effective and efficient use of resources within the Service. In this study, process mining was applied to data from the Northern Health and Social Care Trust Psychological Therapies Service (NHSCT PTS). The aim was to explore how psychological distress severity pre-therapy and attendance factors relate to outcomes and how clinicians can use that information to improve the service. Data included therapy episodes (N = 2,933) from the NHSCT PTS for adults with a range of mental health difficulties. Data were analysed using Define-Measure-Analyse model with process mining. Results found that around 11% of clients had pre-therapy psychological distress scores below the clinical cut-off and thus these individuals were unlikely to significantly improve. Clients with fewer cancelled or missed appointments were more likely to significantly improve post-therapy. Pre-therapy psychological distress scores could be a useful factor to consider at assessment for estimating therapy duration, as those with higher scores typically require more sessions. This study concludes that process mining is useful in health services such as NHSCT PTS to provide information to inform caseload planning, service management and resource allocation, with the potential to improve client's health outcomes.
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http://dx.doi.org/10.1007/s10729-023-09641-8 | DOI Listing |
Background: Several clinical guidelines and recommendations have been developed to improve the diagnostic process of patients with dementia, with the aim of optimising patient care and fostering a cost-effective use of resources. However, patient characteristics and organizational factors in clinical practice can lead physicians to deviate from recommendations. In this context, process mining (PM) is a powerful technique for evaluating the compliance of actual to ideal diagnostic pathways, but has never been used in the cognitive field.
View Article and Find Full Text PDFBackground: In 2020, five Italian scientific societies issued diagnostic recommendations to improve the rational and combined use of biomarkers in the clinical practice of Italian memory clinics (Boccardi et al., 2020). The present project will aim to compare the most frequent diagnostic workups in three academic memory clinics before (pre-recommendations: January 2018 - December 2019) and after (post-recommendations: October 2022 - October 2023) the release of the recommendations to assess their implementation in clinical routine.
View Article and Find Full Text PDFLangmuir
January 2025
College of Mining Engineering, Taiyuan University of Technology, Taiyuan, Shanxi 030024, China.
Flotation is an interfacial process involving gas, liquid, and solid phases, where polar ionic promoters significantly influence both gas-liquid and solid-liquid interfaces during low-rank coal (LRC) flotation. This study examines how the structures of hydrophilic groups in cation-anion mixed promoters affect the interfacial flotation performance of LRC pulp using flotation tests, surface tension tests, wetting heat tests, and molecular dynamics simulations. Results indicate that cation-anion mixed promoters enhance the LRC floatability to varying degrees.
View Article and Find Full Text PDFAlzheimers Dement
December 2024
Infovital, Envigado, Colombia.
Background: Currently, the diagnosis of Alzheimer's disease dementia (ADD) is determined based on clinical criteria, as well as specific imaging and cerebrospinal fluid (CSF) biomarker profiles. However, healthcare professionals face a variety of challenges that hinder their application, such as the interpretation and integration or large amounts of data derived from neuropsychological assessment, the importance attributed to each source of information and the impact of unknown variables, among others. Therefore, this research focuses on the development of a computerized diagnostic tool based on Artificial Intelligence (AI), to strengthen the capacity of healthcare professionals in the identification and diagnosis of ADD.
View Article and Find Full Text PDFChem Commun (Camb)
January 2025
School of Chemistry and Chemical Engineering, Inner Mongolia University, Hohhot 010021, P. R. China.
Neodymium iron boron (NdFeB) magnets are critical components in green energy technologies and have received increasing attention due to the limited availability of the raw materials, specifically rare earth elements (REEs). The supply risks associated with primary mining of RE ores, which have significant environmental impacts, underscore the necessity for recycling RE secondary resources. Waste NdFeB magnets, generated during manufacturing processes and recovered from end-of-life products, represent valuable RE secondary resources.
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