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1.
Health Expect ; 27(2): e14050, 2024 Apr.
Article in English | MEDLINE | ID: mdl-38628150

ABSTRACT

OBJECTIVE: This article addresses the persistent challenge of Delayed Hospital Discharge (DHD) and aims to provide a comprehensive overview, synthesis, and actionable, sustainable plan based on the synthesis of the systematic review articles spanning the past 24 years. Our research aims to comprehensively examine DHD, identifying its primary causes and emphasizing the significance of effective communication and management in healthcare settings. METHODS: We conducted the Preferred Reporting Items for Systematic Reviews and Meta-Analyses extension for Scoping Reviews (PRISMA-ScR) method for synthesizing findings from 23 review papers published over the last two decades, encompassing over 700 studies. In addition, we employed a practical and comprehensive framework to tackle DHD. Rooted in Linderman's model, our approach focused on continuous process improvement (CPI), which highlights senior management commitment, technical/administrative support, and social/transitional care. Our proposed CPI method comprised several stages: planning, implementation, data analysis, and adaptation, all contributing to continuous improvement in healthcare delivery. This method provided valuable insights and recommendations for addressing DHD challenges. FINDINGS: Our DHD analysis revealed crucial insights across multiple dimensions. Firstly, examining causes and interventions uncovered issues such as limited discharge destinations, signaling unsustainable solutions, and inefficient care coordination. The second aspect explored the patient and caregiver experience, emphasizing challenges linked to staff uncertainty and negative physical environments, with notable attention to the underexplored area of caregiver experience. The third theme explored organizational and individual factors, including cognitive impairment and socioeconomic influences. The findings emphasized the importance of incorporating patients' data, recognizing its complexity and current avoidance. Finally, the role of transitional and social care and financial strategies was scrutinized, emphasizing the need for multicomponent, context-specific interventions to address DHD effectively. CONCLUSION: This study addresses gaps in the literature, challenges prevailing solutions, and offers practical pathways for reducing DHD, contributing significantly to healthcare quality and patient outcomes. The synthesis introduces the vital CPI stage, enhancing Linderman's work and providing a pragmatic framework to eradicate delayed discharge. Future efforts will address practitioner consultations to enhance perspectives and further enrich the study. PATIENT OR PUBLIC CONTRIBUTION: Our scoping review synthesizes and analyzes existing systematic review articles and emphasizes offering practical, actionable solutions. While our approach does not directly engage patients, it strategically focuses on extracting insights from the literature to create a CPI framework. This unique aspect is intentionally designed to yield tangible benefits for patients, service users, caregivers, and the public. Our actionable recommendations aim to improve hospital discharge processes for better healthcare outcomes and experiences. This detailed analysis goes beyond theoretical considerations and provides a practical guide to improve healthcare practices and policies.


Subject(s)
Delivery of Health Care , Patient Discharge , Humans , Caregivers , Hospitals , Patients
2.
Health Econ ; 23(10): 1224-41, 2014 Oct.
Article in English | MEDLINE | ID: mdl-23943517

ABSTRACT

Advances in technology and subsequent changes in clinical practice can lead to increases in healthcare costs. Our objective is to assess the impact that changes in the technological intensity of physician-provided health services have had on the age pattern of both the volume of services provided and the average expenditures associated with them. We based our analysis on age-sex-specific patient-level administrative records of diagnoses and treatments. These records include virtually all physician services provided in the province of Ontario, Canada in a 10-year span ending in 2004 and their associated costs. An algorithm is developed to classify services and their costs into three levels of technological intensity. We find that while the overall age-standardized level and cost of services per capita have decreased, the volume and cost of high technologically intensive treatments have increased, especially among older patients.


Subject(s)
Biomedical Technology/economics , Health Expenditures/trends , Practice Patterns, Physicians'/economics , Adolescent , Adult , Age Distribution , Aged , Aged, 80 and over , Biomedical Technology/trends , Child , Child, Preschool , Costs and Cost Analysis , Fees and Charges/trends , Female , Humans , Infant , Infant, Newborn , Insurance Claim Review/economics , Insurance Claim Review/statistics & numerical data , Longitudinal Studies , Male , Middle Aged , Ontario , Practice Patterns, Physicians'/trends , Sex Distribution , Young Adult
3.
Artif Intell Med ; 56(2): 123-35, 2012 Oct.
Article in English | MEDLINE | ID: mdl-22964161

ABSTRACT

OBJECTIVES: To develop and explore the predictability of patient perceptions of satisfaction through the hospital adoption of health information technology (HIT), leading to a better understanding of the benefits of increased HIT investment. DATA AND METHODS: The solution proposed is based on comparing the predictive capability of artificial neural networks (ANNs) with the adaptive neuro-fuzzy inference system (ANFIS). The latter integrates artificial neural networks and fuzzy logic and can handle certain complex problems that include fuzziness in human perception, and non-normal and non-linear data. Secondary data from two surveys were combined to develop the model. Hospital HIT adoption capability and use indicators in the Canadian province of Ontario were used as inputs, while patient satisfaction indicators of healthcare services in acute hospitals were used as outputs. RESULTS: Eight different types of models were trained and tested for each of four patient satisfaction dimensions. The accuracy of each predictive model was evaluated through statistical performance measures, including root mean square error (RMSE), and adjusted coefficient of determination R(2)(Adjusted). For all four patient satisfaction indicators, the performance of ANFIS was found to be more effective (R(Adjusted)(2)=0.99) when compared with the results of ANN modeling in predicting the impact of HIT adoption on patient satisfaction (R(Adjusted)(2)=0.86-0.88). CONCLUSIONS: The impact of HIT adoption on patient satisfaction was obtained for different HIT adoption scenarios using ANFIS simulations. The results through simulation scenarios revealed that full implementation of HIT in hospitals can lead to significant improvement in patient satisfaction. We conclude that the proposed ANFIS modeling technique can be used as a decision support mechanism to assist government and policy makers in predicting patient satisfaction resulting from the implementation of HIT in hospitals.


Subject(s)
Medical Informatics , Patient Satisfaction , Fuzzy Logic , Humans , Models, Theoretical , Neural Networks, Computer , Ontario
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