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2.
Int J Med Inform ; 103: 65-77, 2017 07.
Article in English | MEDLINE | ID: mdl-28551003

ABSTRACT

INTRODUCTION: About half of hospital readmissions can be avoided with preventive interventions. Developing decision support tools for identification of patients' emergency readmission risk is an important area of research. Because, it remains unclear how to design features and develop predictive models that can adjust continuously to a fast-changing healthcare system and population characteristics. The objective of this study was to develop a generic ensemble Bayesian risk model of emergency readmission. METHODS: We produced a decision support tool that predicts risk of emergency readmission using England's Hospital Episode Statistics inpatient database. Firstly, we used a framework to develop an optimal set of features. Then, a combination of Bayes Point Machine (BPM) models for different cohorts was considered to create an optimised ensemble model, which is stronger than the individual generative and non-linear classifications. The developed Ensemble Risk Model of Emergency Admissions (ERMER) was trained and tested using three time-frames: 1999-2004, 2000-05 and 2004-09, each of which includes about 20% of patients in England during the trigger year. RESULTS: Comparisons are made for different time-frames, sub-populations, risk cut-offs, risk bands and top risk segments. The precision was 71.6-73.9%, the specificity was 88.3-91.7% and the sensitivity was 42.1-49.2% across different time-frames. Moreover, the Area Under the Curve was 75.9-77.1%. CONCLUSIONS: The decision support tool performed considerably better than the previous modelling approaches, and it was robust and stable with high precision. Moreover, the framework and the Bayesian model allow the model to continuously adjust it to new significant features, different population characteristics and changes in the system.


Subject(s)
Bayes Theorem , Emergency Service, Hospital , Hospitalization/statistics & numerical data , Models, Theoretical , Patient Readmission/statistics & numerical data , Aged , Databases, Factual , Delivery of Health Care , England , Female , Humans , Risk Factors
3.
J Med Syst ; 36(2): 621-30, 2012 Apr.
Article in English | MEDLINE | ID: mdl-20703671

ABSTRACT

Many of the outpatient services are currently only available in hospitals, however there are plans to provide some of these services alongside with General Practitioners. Consequently, General Practitioners could soon be based at polyclinics. These changes have caused a number of concerns to Hounslow Primary Care Trust (PCT). For example, which of the outpatient services are to be shifted from the hospital to the polyclinic? What are the current and expected future demands for these services? To tackle some of these concerns, the first phase of this project explores the set of specialties that are frequently visited in a sequence (using sequential association rules). The second phase develops an Excel based spreadsheet tool to compute the current and expected future demands for the selected specialties. From the sequential association rule algorithm, endocrinology and ophthalmology were found to be highly associated (i.e. frequently visited in a sequence), which means that these two specialties could easily be shifted from the hospital environment to the polyclinic. We illustrated the Excel based spreadsheet tool for endocrinology and ophthalmology, however, the model is generic enough to cope with other specialties, provided that the data are available.


Subject(s)
Decision Support Systems, Management/organization & administration , Health Services Needs and Demand/organization & administration , Outpatient Clinics, Hospital/organization & administration , Primary Health Care/organization & administration , State Medicine/organization & administration , Algorithms , Appointments and Schedules , Decision Support Techniques , Humans , Medicine/organization & administration , Time Factors , United Kingdom
4.
BMC Health Serv Res ; 11: 155, 2011 Jun 29.
Article in English | MEDLINE | ID: mdl-21714903

ABSTRACT

BACKGROUND: Due to increasing demand and financial constraints, NHS continuing healthcare systems seek to find better ways of forecasting demand and budgeting for care. This paper investigates two areas of concern, namely, how long existing patients stay in service and the number of patients that are likely to be still in care after a period of time. METHODS: An anonymised dataset containing information for all funded admissions to placement and home care in the NHS continuing healthcare system was provided by 26 (out of 31) London primary care trusts. The data related to 11289 patients staying in placement and home care between 1 April 2005 and 31 May 2008 were first analysed. Using a methodology based on length of stay (LoS) modelling, we captured the distribution of LoS of patients to estimate the probability of a patient staying in care over a period of time. Using the estimated probabilities we forecasted the number of patients that are likely to be still in care after a period of time (e.g. monthly). RESULTS: We noticed that within the NHS continuing healthcare system there are three main categories of patients. Some patients are discharged after a short stay (few days), some others staying for few months and the third category of patients staying for a long period of time (years). Some variations in proportions of discharge and transition between types of care as well as between care groups (e.g. palliative, functional mental health) were observed. A close agreement of the observed and the expected numbers of patients suggests a good prediction model. CONCLUSIONS: The model was tested for care groups within the NHS continuing healthcare system in London to support Primary Care Trusts in budget planning and improve their responsiveness to meet the increasing demand under limited availability of resources. Its applicability can be extended to other types of care, such as hospital care and re-ablement. Further work will be geared towards updating the dataset and refining the results.


Subject(s)
Hospitals, Public , Length of Stay/trends , State Medicine , Adolescent , Adult , Aged , Aged, 80 and over , Child , Child, Preschool , Databases, Factual , Female , Health Services Needs and Demand , Humans , Infant , Length of Stay/economics , Male , Middle Aged , Models, Theoretical , Palliative Care , Primary Health Care , Survival , Young Adult
5.
Arch Dis Child Fetal Neonatal Ed ; 95(4): F283-7, 2010 Jul.
Article in English | MEDLINE | ID: mdl-20466738

ABSTRACT

OBJECTIVE: To study the arrival pattern and length of stay (LoS) in a neonatal intensive care/high dependency unit (NICU/HDU) and special care baby unit (SCBU) and the impact of capacity shortage in a perinatal network centre, and to provide an analytical model for improving capacity planning. METHODS: The data used in this study have been collected through the South England Neonatal Database (SEND) and the North Central London Perinatal Network Transfer Audit between 1 January and 31 December 2006 for neonates admitted and refused from the neonatal unit at University College London Hospital (UCLH). Exploratory data analysis was performed. A queuing model is proposed for capacity planning of a perinatal network centre. OUTCOME MEASURES: Predicted number of cots required with existing arrival and discharge patterns; impact of reducing LoS. RESULTS: In 2006, 1002 neonates were admitted to the neonatal unit at UCLH, 144 neonates were refused admission to the NICU and 35 to the SCBU. The model shows the NICU requires seven more cots to accept 90% of neonates into the NICU. The model also shows admission acceptance can be increased by 8% if LoS can be reduced by 2 days. CONCLUSIONS: The arrival, LoS and discharge of neonates having gestational ages of <27 weeks were the key determinants of capacity. The queuing model can be used to determine the cot capacity required for a given tolerance level of admission rejection.


Subject(s)
Health Planning/methods , Intensive Care Units, Neonatal/organization & administration , Bed Occupancy/statistics & numerical data , Gestational Age , Health Care Rationing/organization & administration , Health Services Research/methods , Humans , Infant, Newborn , Intensive Care Units, Neonatal/statistics & numerical data , Length of Stay/statistics & numerical data , London , Models, Organizational , Needs Assessment/organization & administration , Patient Discharge/statistics & numerical data , Seasons
6.
Health Care Manag Sci ; 12(2): 179-91, 2009 Jun.
Article in English | MEDLINE | ID: mdl-19469457

ABSTRACT

Home Care (HC) services provide complex and coordinated medical and paramedical care to patients at their homes. As health care services move into the home setting, the need for developing innovative approaches that improve the efficiency of home care organizations increases. We first conduct a literature review of investigations dealing with operation planning within the area of home care management. We then address a particular issue dealing with the planning of operations related to chemotherapy at home as it is an emergent problem in the French context. Our interest is focused on issues specific to the anti-cancer drug supply chain. We identify various models that can be developed and analyze one of them.


Subject(s)
Antineoplastic Agents/administration & dosage , Home Care Services/organization & administration , Operations Research , Antineoplastic Agents/therapeutic use , Efficiency, Organizational , Humans , Models, Theoretical , Neoplasms/drug therapy , Pharmaceutical Services/organization & administration
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