Patient no-show is a prevalent problem in health care services leading to inefficient resources allocation and limited access to care. This study aims to develop and validate a patient no-show predictive model based on empirical data. A retrospective study was performed using scheduled appointments between 2011 and 2014 from a Brazilian public primary care setting. Fifty percent of the dataset was randomly assigned to model development, and 50% was assigned to validation. Predictive models were developed using stepwise naïve and mixed-effect logistic regression along with the Akaike Information Criteria to select the best model. The area under the ROC curve (AUC) was used to assess the best model performance. Of the 57,586 scheduled appoint...
Low attendance levels in medical appointments have been associated with poor health outcomes and eff...
No-show appointments are a significant financial and operational burden for the entire healthcare sy...
This thesis studies no-show behaviour for medical appointments. It comprises four research papers, e...
Patient no-show is a prevalent problem in health care services leading to inefficient resources allo...
Patient no-show is a prevalent problem in health care services leading to inefficient resources allo...
Aim: No-shows are patients who miss scheduled specialist outpatient clinic (SOC) appointments. A pre...
Nowadays, across the most important problems faced by health centers are those caused by the existe...
Abstract Background No-show appointments pose a significant challenge for healthcare providers, part...
Introduction: A no-show appointment occurs when a patient does not attend a previously booked appo...
Objectives: Using predictive modeling techniques, we developed and compared appointment no-show pred...
With the number of ageing citizens increasing to 900,000 by the year 2030, there will also be an inc...
Abstract Background and aim: No-show, refers to patients who do not show up in the scheduled appoint...
With the development of information and communication technologies, all public tertiary hospitals in...
Reducing no-show rates is one of the most important measures of access to care in Community Health C...
Patients not showing up to their appointments is a detriment to both the patient and the health care...
Low attendance levels in medical appointments have been associated with poor health outcomes and eff...
No-show appointments are a significant financial and operational burden for the entire healthcare sy...
This thesis studies no-show behaviour for medical appointments. It comprises four research papers, e...
Patient no-show is a prevalent problem in health care services leading to inefficient resources allo...
Patient no-show is a prevalent problem in health care services leading to inefficient resources allo...
Aim: No-shows are patients who miss scheduled specialist outpatient clinic (SOC) appointments. A pre...
Nowadays, across the most important problems faced by health centers are those caused by the existe...
Abstract Background No-show appointments pose a significant challenge for healthcare providers, part...
Introduction: A no-show appointment occurs when a patient does not attend a previously booked appo...
Objectives: Using predictive modeling techniques, we developed and compared appointment no-show pred...
With the number of ageing citizens increasing to 900,000 by the year 2030, there will also be an inc...
Abstract Background and aim: No-show, refers to patients who do not show up in the scheduled appoint...
With the development of information and communication technologies, all public tertiary hospitals in...
Reducing no-show rates is one of the most important measures of access to care in Community Health C...
Patients not showing up to their appointments is a detriment to both the patient and the health care...
Low attendance levels in medical appointments have been associated with poor health outcomes and eff...
No-show appointments are a significant financial and operational burden for the entire healthcare sy...
This thesis studies no-show behaviour for medical appointments. It comprises four research papers, e...