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1.
Ann Saudi Med ; 44(2): 73-83, 2024.
Artigo em Inglês | MEDLINE | ID: mdl-38615187

RESUMO

BACKGROUND: Hospitalizations are more resource intensive and expensive than outpatient care. Therefore, type 2 diabetes-related preventable hospitalization are a major topic of research efficiency in the healthcare system. OBJECTIVES: Analyze county level variation in type 2 diabetes-related preventable hospitalization rates in Kentucky before the Medicaid expansion (2010-2013) and after the Medicaid expansion (2014-2017). DESIGN: Geographic mapping and cluster analysis. SETTING: Data for a state of the United States of America. METHODS: We used the KID data to generate geographic mapping for type 2 diabetes-related preventable hospitalizations to visualize rates. We included all Kentucky discharges of age 18 years and older with the ICD9/10 principal diagnosis code for type 2 diabetes. Then, we conducted cluster analysis techniques to compare county-level variation in type 2 diabetes-related preventable hospitalization rates across Kentucky counties pre- and post-Medicaid expansion. MAIN OUTCOME AND MEASURES: County type 2 diabetes-related preventable hospitalization pre- and post-Medicaid expansion. RESULTS: From 2010-2017, type 2 diabetes-related preventable hospitalization discharge rates reduced significantly in the period of the post-Medicaid expansion (P=.001). The spatial statistics analysis revealed a significant spatial clustering of counties with similar rates of type 2 diabetes-related preventable hospitalization in the south, east, and southeastern Kentucky pre- and post-Medicaid expansion (positive z-score and positive Moran's Index value (P>.05). Also, there was a significant clustering of counties with low type 2 diabetes-related preventable hospitalization rates in the north, west, and central regions of the state pre-Medicaid expansion and post-Medicaid expansion (positive z-score and positive Moran's Index value (P>.05). CONCLUSION: Kentucky counties in the southeast have experienced a significant clustering of highly avoidable hospitalization rates during both periods. Focusing on the vulnerable counties and the economic inequality in Kentucky could lead to efforts to lowering future type 2 diabetes-related preventable hospitalization rates. LIMITATIONS: We used de-identified data which does not provide insights into the frequency of hospitalizations per patient. An individual patient may be hospitalized several times and counted as several individuals.


Assuntos
Diabetes Mellitus Tipo 2 , Estados Unidos/epidemiologia , Humanos , Adolescente , Kentucky/epidemiologia , Diabetes Mellitus Tipo 2/epidemiologia , Diabetes Mellitus Tipo 2/terapia , Medicaid , Hospitalização , Alta do Paciente
2.
Front Public Health ; 11: 1328918, 2023.
Artigo em Inglês | MEDLINE | ID: mdl-38089037

RESUMO

Millions of people's health is at risk because of several factors and multiple overlapping crises, all of which hit the vulnerable the most. These challenges are dynamic and evolve in response to emerging health challenges and concerns, which need effective collaboration among countries working toward achieving Sustainable Development Goals (SDGs) and securing global health. Mental Health, the Impact of climate change, cardiovascular diseases (CVDs), diabetes, Infectious diseases, health system, and population aging are examples of challenges known to pose a vast burden worldwide. We are at a point known as the "digital revolution," characterized by the expansion of artificial intelligence (AI) and a fusion of technology types. AI has emerged as a powerful tool for addressing various health challenges, and the last ten years have been influential due to the rapid expansion in the production and accessibility of health-related data. The computational models and algorithms can understand complicated health and medical data to perform various functions and deep-learning strategies. This narrative mini-review summarizes the most current AI applications to address the leading global health challenges. Harnessing its capabilities can ultimately mitigate the Impact of these challenges and revolutionize the field. It has the ability to strengthen global health through personalized health care and improved preparedness and response to future challenges. However, ethical and legal concerns about individual or community privacy and autonomy must be addressed for effective implementation.


Assuntos
Inteligência Artificial , Doenças Cardiovasculares , Humanos , Saúde Global , Algoritmos , Envelhecimento
3.
J Infect Public Health ; 6(2): 63-8, 2013 Apr.
Artigo em Inglês | MEDLINE | ID: mdl-23537818

RESUMO

Public health nurses are key personnel in promoting and protecting the health of populations using knowledge from the nursing, social, and public health sciences. In Saudi Arabia, the nursing profession requires the integration of public health education and associated competencies in the nursing curriculum. In this paper, we aim to highlight the importance of public health nursing in overcoming the challenges associated with epidemiological transitions and responding to the health needs of rising populations, describe the development of the nursing profession in Saudi Arabia, and recommend public health teaching and training objectives for nursing education. The future Saudi public health nurse should be competent in addressing the determinants of health and illness that are salient to a culturally distinct group. This newly outlined role for public health nurses will maximize the use of the educated Saudi nursing workforce and will fill the gap in population public health needs in an efficient and effective way.


Assuntos
Enfermagem em Saúde Pública/educação , Controle de Doenças Transmissíveis/métodos , Currículo , Educação em Enfermagem/tendências , Necessidades e Demandas de Serviços de Saúde , Humanos , Islamismo , Arábia Saudita
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