scholarly journals The future shape of primary healthcare in New Zealand

2000 ◽  
Vol 23 (4) ◽  
pp. 176
Author(s):  
Philip Davies ◽  
Mark Booth

The Minister of Health in New Zealand earlier this year released a discussion document titled "The Future Shape ofPrimary Health Care" which outlines some far-reaching proposals for the provision of primary health care serviceswithin New Zealand. This article sets the discussion document in the context of primary health care within NewZealand by examining current arrangements for primary health care, previous arrangements and the proposalsoutlined in the discussion document.

2020 ◽  
Vol 30 (Supplement_5) ◽  
Author(s):  
A Pinto ◽  
J V Santos ◽  
M Lobo ◽  
J Viana ◽  
J Souza ◽  
...  

Abstract Background In Portugal, there are different organizational models in primary health care (PHC), mainly regarding the payment scheme. USF-B is the only type with financial incentives to the professional (pay-for-performance). Our goal was to assess the relationship between groups of primary healthcare centres (ACES) with higher proportion of patients within USF-B model and the rate of avoidable hospitalizations, as proxy of primary care quality. Methods We conducted a cross-sectional study considering the 55 ACES from mainland Portugal, in 2017. We used data from public hospitalizations to calculate the prevention quality indicator (avoidable hospitalizations) adjusted for age and sex, using direct standardization. The main independent variable was the proportion of patients in one ACES registered in the USF-B model. Unemployment rate, proportion of patients with family doctor and presence of Local Health Unit (different organization model) within ACES were also considered. The association was assessed by means of a linear regression model. Results Age-sex adjusted PQI value varied between 490 and 1715 hospitalizations per 100,000 inhabitants across ACES. We observed a significant effect of the proportion of patients within USF-B in the crude PQI rate (p = 0.001). However, using the age-sex adjusted PQI, there was not a statistical significant association (p = 0.504). This last model was also adjusted for confounding variables and the association remains non-significant (p = 0.865). Conclusions Our findings suggest that, when adjusting for age and sex, there is no evidence that ACES with more patients enrolled in a pay-for-performance model is associated with higher quality of PHC (using avoidable hospitalizations as proxy). Further studies addressing individual data should be performed. This work was financed by FEDER funds through the COMPETE 2020 - POCI, and by Portuguese funds through FCT in the framework of the project POCI-01-0145-FEDER-030766 “1st.IndiQare”. Key messages Adjusting PQI to sex and age seems to influence its value more than the type of organizational model of primary health care. Groups of primary healthcare centres with more units under the pay-for-performance scheme was not associated with different rate of avoidable hospitalizations.


2021 ◽  
Vol 27 (1) ◽  
pp. 22
Author(s):  
Sarah L. Hewitt ◽  
Nicolette F. Sheridan ◽  
Karen Hoare ◽  
Jane E. Mills

Limited knowledge about the nursing workforce in New Zealand general practice inhibits the optimal use of nurses in this increasingly complex setting. Using workforce survey data published biennially by the Nursing Council of New Zealand, this study describes the characteristics of nurses in general practice and contrasts them with the greater nursing workforce, including consideration of changes in the profiles between 2015 and 2019. The findings suggest the general practice nursing workforce is older, less diverse, more predominately New Zealand trained and very much more likely to work part-time than other nurses. There is evidence that nurses in general practice are increasingly primary health care focused, as they take on expanded roles and responsibilities. However, ambiguity about terminology and the inability to track individuals in the data are limitations of this study. Therefore, it was not possible to identify and describe cohorts of nurses in general practice by important characteristics, such as prescribing authority, regionality and rurality. A greater national focus on defining and tracking this pivotal workforce is called for to overcome role confusion and better facilitate the use of nursing scopes of practice.


2018 ◽  
Author(s):  
Matthew Willis ◽  
Paul Duckworth ◽  
Angela Coulter ◽  
Eric T Meyer ◽  
Michael Osborne

BACKGROUND Recent advances in technology have reopened an old debate on which sectors will be most affected by automation. This debate is ill served by the current lack of detailed data on the exact capabilities of new machines and how they are influencing work. Although recent debates about the future of jobs have focused on whether they are at risk of automation, our research focuses on a more fine-grained and transparent method to model task automation and specifically focus on the domain of primary health care. OBJECTIVE This protocol describes a new wave of intelligent automation, focusing on the specific pressures faced by primary care within the National Health Service (NHS) in England. These pressures include staff shortages, increased service demand, and reduced budgets. A critical part of the problem we propose to address is a formal framework for measuring automation, which is lacking in the literature. The health care domain offers a further challenge in measuring automation because of a general lack of detailed, health care–specific occupation and task observational data to provide good insights on this misunderstood topic. METHODS This project utilizes a multimethod research design comprising two phases: a qualitative observational phase and a quantitative data analysis phase; each phase addresses one of the two project aims. Our first aim is to address the lack of task data by collecting high-quality, detailed task-specific data from UK primary health care practices. This phase employs ethnography, observation, interviews, document collection, and focus groups. The second aim is to propose a formal machine learning approach for probabilistic inference of task- and occupation-level automation to gain valuable insights. Sensitivity analysis is then used to present the occupational attributes that increase/decrease automatability most, which is vital for establishing effective training and staffing policy. RESULTS Our detailed fieldwork includes observing and documenting 16 unique occupations and performing over 130 tasks across six primary care centers. Preliminary results on the current state of automation and the potential for further automation in primary care are discussed. Our initial findings are that tasks are often shared amongst staff and can include convoluted workflows that often vary between practices. The single most used technology in primary health care is the desktop computer. In addition, we have conducted a large-scale survey of over 156 machine learning and robotics experts to assess what tasks are susceptible to automation, given the state-of-the-art technology available today. Further results and detailed analysis will be published toward the end of the project in early 2019. CONCLUSIONS We believe our analysis will identify many tasks currently performed manually within primary care that can be automated using currently available technology. Given the proper implementation of such automating technologies, we expect considerable staff resources to be saved, alleviating some pressures on the NHS primary care staff. INTERNATIONAL REGISTERED REPOR DERR1-10.2196/11232


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