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Journal of Medical Radiation Sciences logoLink to Journal of Medical Radiation Sciences
. 2018 May 27;65(3):192–199. doi: 10.1002/jmrs.284

Factors associated with appointment non‐attendance at a medical imaging department in regional Australia: a retrospective cohort analysis

Gordon T W Mander 1,, Lorraine Reynolds 1, Aiden Cook 1, Marcella M Kwan 2
PMCID: PMC6119736  PMID: 29806213

Abstract

Introduction

Appointment non‐attendance contributes added cost to the healthcare sector through wasted resource allocations. Medical imaging departments commonly schedule appointments for most modalities; however, no study has quantified patient attendance rates in the Australian regional setting. This is despite evidence that regional, rural and remote Australians tend to demonstrate poorer health than metropolitan counterparts. This study aims to identify the factors that influence appointment non‐attendance at a teaching hospital in regional Australia.

Methods

Categories restricted to age, gender, indigenous status, distance from investigation site, referral source and imaging modality were collected for all appointments (N = 13,458) referred to the medical imaging department in 2015. The likelihood of each of these factors correlating with a patient not attending a scheduled appointment was calculated using the chi‐squared analysis and binary logistic regression.

Results

Gender, indigenous status as well as specific imaging modalities, referral sources and age categories were significantly associated with non‐attendance. Overall, male patients were 1.57 (P < 0.001) times more likely to miss a scheduled appointment than female patients. Patients who identified as Aboriginal and Torres Strait Islander were 2.66 (P < 0.001) times more likely to miss a scheduled appointment than patients who did not identify as Aboriginal and Torres Strait Islander.

Conclusions

Several key factors appear to affect medical imaging appointment non‐attendance. Key factors include indigenous status, gender, image modality, referral source and age. Further improvement is required to better meet the needs of underrepresented patient demographics.

Keywords: Medical imaging, non‐attendance, service evaluation

Introduction

The identification and reduction of inequalities through social determinants of health remain a global health priority.1 Non‐attendance can be considered an indicator of population health inequality, as missed medical appointments have implications for patients’ individual health outcomes and finite healthcare resources.2, 3

Economic and financial efficiencies in medical imaging are being driven by local, state and federal healthcare targets, and a heightened awareness of the efficient and effective use of high value equipment.4 The search for greater efficiency demands greater focus be placed on appropriate patient appointment scheduling.

Booked appointments are commonplace organisational requirements of medical imaging departments. Medical imaging departments provide a vital role in patient care and can provide accurate diagnostic information, reducing the need for investigative surgery or other risky and more costly interventions.5, 6 Poor attendance rates may have flow on effects in other departments and lead to poorer health and economic outcomes.7, 8 Therefore, there is value in understanding the rates of non‐attendance in the medical imaging department context and investigating factors that are likely associated.

The rationale for this study was a quality improvement initiative designed to quantify the number of patients who failed to attend their appointment at our imaging department in order to better understand and address factors associated with non‐attendance. In Queensland, the regional (non‐metropolitan) setting accounted for approximately 60% of all public hospital imaging examinations performed.9 It has been well documented that Australians living further from metropolitan centres have higher rates of poor health and associated health behaviours with the prevalence greater in the Aboriginal and Torres Strait Islander population.1, 10, 11 Therefore, investigating the factors that are associated with non‐attendance for medical imaging patients in the regional setting is valuable.

Moreover, an analysis of non‐attendance rates is important in order to better identify possible factors and guide tailored strategies to promote attendance. As this was a cross‐sectional cohort analysis, the rates of non‐attendance may vary across departments. However, this snapshot has value in highlighting the significance of non‐attendance rates in the regional clinical context. This will guide service decisions in order to better support patients in taking responsibility for their care.

Studies quantifying non‐attendance rates vary, with figures typically between 6% and 12% but may be much higher in vulnerable subpopulations.12, 13, 14 Demographic factors, such as age, ethnicity and gender, affect the likelihood of non‐attendance in various primary and secondary healthcare settings.15, 16, 17, 18

A 2006 case–control study evaluated how patients’ health beliefs impacted non‐attendance at a medical imaging department in the United Kingdom.19 The potential for health beliefs such as the perceived importance of disease and associated treatment were found to be less relevant than more practical factors such as choice of appointment and appointment confirmation. This study underlines the value of a quality assurance tool that identifies factors associated with non‐attendance and quantifies these accordingly.

This study aims to identify potential key factors associated with appointment non‐attendance in a public hospital medical imaging department in regional Australia.

Methods

The research proposal was acknowledged by the HREC chair (HREC/15/QTDD/2) as meeting the requirements of the National Statement of Ethical Conduct in Human Research.20 All data were de‐identified and analysed in aggregate, in accordance with the National Statement 5.1.22.

A retrospective audit of all medical imaging outpatient appointments scheduled from 1 January 2015 to 31 December 2015 was performed at a medical imaging department in regional Australia. The department is located in a 250‐bed public hospital facility, which is the largest hospital in the catchment. The medical imaging department employs 23 radiographers, 7 sonographers, 8 registered nurses and 4 radiologists. Appointments for ultrasound, computed tomography (CT), interventional radiology, mammography or a combination of these modalities were included. Other modalities were excluded as they were either not performed in the department at the time of the study or appointments were not routinely scheduled for the modality, such as for general x‐ray examinations. Data were collected using information from an enterprise data reporting system that was already commissioned as part of the department's regular quality assurance activities. The report included fields populated from the hospital information system (HIS) and radiology information system (RIS). These included gender, age, indigenous status, distance from facility, referral source and imaging modality. Each of these fields was considered as possible factors that may be associated with appointment non‐attendance.2, 3, 12, 14, 15, 16, 17

For statistical purposes, patients’ ages were grouped into eight subcategories (0–9, 10–17, 18–24, 25–34, 35–44, 45–54, 55–64 and 65 years and over).

The distance category was given three discrete subcategories. Those who lived 50 km or less from the hospital were included in the first subcategory, as the institution defines patients within this distance as not being eligible for travel subsidy. Patients who travelled less than 300 km were generally those within the hospital catchment and are generally able to attend without the need for overnight accommodation. Where the distance travelled was beyond 300 km, this was considered a distance at which patients would likely organise an overnight accommodation.

Referral source was categorised according to the medical specialty of the referrer, with a separate subcategory for patients referred from outside the hospital health service catchment.

The measured outcome was appointment non‐attendance, and dichotomously coded: attended and failed to attend. Failed to attend was defined as those patients who had an outpatient appointment scheduled during the study period and did not arrive for a scheduled appointment and had not made contact indicating that he/she would miss the appointment. The independent variables collected were coded categorically, and were analysed to elucidate the effect that multiple demographics had on the likelihood that a patient would miss a scheduled appointment (Table 1).

Table 1.

Characteristics of appointments

Factors n Percentage
Attendance of appointments
Attended 12,734 94.6
Failed to attend 724 5.4
Gender
Female 9790 72.7
Male 3669 27.3
Indigenous status
Not Aboriginal and Torres Strait Islander 12,391 92.1
Aboriginal and Torres Strait Islander 1067 7.9
Age
0–9 years 265 2.0
10–17 years 199 1.5
18–24 years 1684 12.5
25–34 years 3622 26.9
35–44 years 1591 11.8
45–54 years 1516 11.3
55–64 years 1754 13.0
65 years and over 2827 21.0
Modality
Modality combinationa 636 4.7
Ultrasound 9058 67.3
CTb 3215 23.9
Interventional radiology 509 3.8
Mammography 40 0.3
Distance from facility
Under 51 km 9454 70.3
51–300 km 2639 19.6
Over 300 km 1335 9.9
Unknown 30 0.2
Other clinicsc 904 6.7
Cancer/ONCd 1498 11.1
Referral source
Medical 7664 56.9
Othere 1492 11.1
Rural facilities 402 3.0
Surgical 1498 11.1
a

Combination of any two or more of the following modalities – ultrasound, CT, mammography, interventional radiology.

b

Computed tomography.

c

Wards not classed as medical, surgical or palliative.

d

Oncology.

e

Facilities outside of the regional hospital health service.

Data were analysed using IBM SPSS Statistics v19 (Armonk, NY, USA). Descriptive statistics were used to describe the study population and compare the two groups: those who attended and those who failed to attend. A chi‐squared analysis was used to assess whether an association existed between non‐attendance and demographic factors used in this study. Univariate binary logistic regression was used to calculate the odds ratio (OR) and 95% confidence interval (CI)) for each of the demographic variables associated with not attending their scheduled appointment. Significant univariate variables were then entered in a multivariate (forward) model, and subsequently significant interaction terms between demographic variables remaining in the model were taken into consideration to investigate potential mediating or moderating factors. A P‐value of 0.05 was considered statistically significant; all P‐values were two‐sided.

Results

A total of 13,458 appointments were scheduled during the study period, of which 59% were for multiple visits. Each time a patient was scheduled for an appointment they were counted; therefore, each patient could be included more than once.

Table 1 shows characteristics of the appointments. The majority of appointments were for patients aged 18–64 years (75.5%), female (72.7%), non‐Aboriginal and Torres Strait Islander (92.1%) and living within 50 km of the regional facility. The majority of the appointments scheduled were for ultrasound examinations (67.3%) with least (0.3%) appointments scheduled for a diagnostic mammogram.

Overall, patients attended 12,734 (94.6%) booked appointments. Significantly more male patients missed their scheduled appointments than females (7.3% vs. 4.7% respectively, λ 2(1) = 36.4, P < 0.001, Table 2). Of patients identifying as Aboriginal and Torres Strait Islander, 11.8% missed their scheduled appointment. This is compared with (4.8%) of patients who did not identify as Aboriginal and Torres Strait Islander (λ 2(1) = 93.6, P < 0.001). Non‐attendance of scheduled appointment was seen in 7.9% of patients aged 0–9 years, 8.5% of patients 10–17 years and 7.8% of patients 45–54 years. These were significantly higher than the other age categories (λ 2(7) = 37.54, P < 0.001).

Table 2.

Univariate logistic regression analysis showing likelihood of scheduled appointment non‐attendance by multiple factors

Factors Proportion of non‐attendance (%) P‐value Univariate logistic regression
Odds ratio (OR) 95% confidence interval (CI) P‐value
Gender
Female 4.7 <0.001 Reference
Male 7.3 1.60 1.37–1.87 <0.001
Indigenous status
Not Aboriginal and Torres Strait Islander 4.8 <0.001 Reference
Aboriginal and Torres Strait Islander 11.8 2.61 2.13–3.20 <0.001
Age
0–9 years 7.9 <0.001 1.72 1.06–2.77 0.027
10–17 years 8.5 1.86 1.10–3.15 0.021
18–24 years 4.8 1.01 0.76–1.34 0.958
25–34 years 4.3 0.90 0.71–1.14 0.369
35–44 years 5.7 1.20 0.91–1.57 0.201
45–54 years 7.8 1.68 1.30–2.17 <0.001
55–64 years 6.0 1.28 0.99–1.67 0.062
65 years and over 4.8 Reference
Modality
Modality Combinationa 3.9 <0.001 Reference
Ultrasound 5.0 1.39 0.91–2.13 0.131
CTb 6.5 1.90 1.23–2.95 0.004
Interventional Radiology 7.1 1.91 1.11–3.28 0.020
Mammography 12.5 2.96 0.97–9.02 0.056
Distance from facility
Under 51 km 5.0 0.02 Reference
51–300 km 6.4 1.28 1.07–1.54 0.007
Over 300 km 5.9 1.19 0.93–1.52 0.172
Referral source
Other clinicsc 3.8 0.006 Reference
Cancer/ONCd 4.9 1.18 0.78–1.78 0.425
Medical 5.2 1.34 0.94–1.89 0.104
Othere 5.6 1.31 0.88–1.97 0.188
Rural facilities 7.0 1.81 1.09–3.00 0.023
Surgical 7.1 1.93 1.31–2.84 0.001
a

Combination of any two or more of the following modalities – ultrasound, CT, mammography, interventional radiology.

b

Computed tomography.

c

Wards not classed as medical, surgical or palliative.

d

Oncology.

e

Facilities outside of the regional hospital health service.

Factors that were significantly associated with non‐attendance in the univariate analysis (Table 2) were entered into a multivariate logistic regression analysis (stepwise forward model) to determine the independent correlates of non‐attendance. Table 3 shows factors significantly associated with non‐attendance in the multivariate model.

Table 3.

Multivariate logistic regression showing likelihood of scheduled appointment non‐attendance by multiple factors

Factors Multivariate logistic regression
Odds ratio (OR) 95% confidence interval (CI) P value
Gender
Female Reference
Male 1.57 1.31–1.88 <0.001
Indigenous status
Not Aboriginal and Torres Strait Islander Reference
Aboriginal and Torres Strait Islander 2.66 2.15–3.28 <0.001
Age
0–9 years 1.59 0.96–2.62 0.071
10–17 years 1.67 0.97–2.88 0.065
18–24 years 1.11 0.81–1.53 0.505
25–34 years 1.08 0.82–1.41 0.598
35–44 years 1.30 0.97–1.73 0.080
45–54 years 1.56 1.20–2.02 0.001
55–64 years 1.22 0.94–1.59 0.134
65 years and over Reference
Modality
Modality combinationa Reference
Ultrasound 1.67 1.06–2.63 0.028
CTb 1.96 1.24–3.11 0.004
Interventional radiology 1.99 1.14–3.48 0.015
Mammography 3.07 1.00–9.45 0.051
Distance from facility
<51 km Reference
51–300 km 1.14 0.94–1.38 0.176
>300 km 1.00 0.77–1.29 0.990
Referral source
Other clinicsc Reference
Cancer/ONCd 1.23 0.80–1.88 0.347
Medical 1.63 1.14– 2.33 0.007
Othere 1.43 0.95–2.16 0.086
Rural facilities 1.94 1.15–3.29 0.014
Surgical 2.34 1.56–3.49 <0.001
a

Combination of any two or more of the following modalities – ultrasound, CT, mammography, interventional radiology.

b

Computed tomography.

c

Wards not classed as medical, surgical or palliative.

d

Oncology.

e

Facilities outside of the regional hospital health service.

Age was shown to be associated with non‐attendance (P < 0.001). From the multivariate logistic regression (Table 3) patient's age at the time of referral showed only those aged between 45 and 54 years were significantly more likely to miss a scheduled appointment (OR 1.56, 95% CI 1.20–2.02) compared with patients 65 years and over. Patients in the 45–54 year age group made up 11.3% of the scheduled appointments and 7.8% of this group failed to attend.

The requested imaging modality was shown to be associated with non‐attendance (P < 0.001). The multivariate logistic regression (Table 3) showed patients scheduled for an ultrasound (OR 1.67, 95% CI 1.06–2.63), CT (OR 1.96, 95% CI 1.24–3.11) or interventional radiology (OR 1.99, 95% CI 1.14–3.48) were significantly more likely to miss a scheduled appointment than patients scheduled for a combination of modalities.

Referrals from medical (OR 1.63, 95% CI 1.14–2.32) and surgical (OR 2.34, 95% CI 1.57–3.49) also showed a significant association with patient non‐attendance (Table 3).

Further examination of potential interaction of factors associated with non‐attendance found an interaction between gender and indigenous status (Table 4). When compared to female patients who did not identified as Aboriginal and Torres Strait Islander, male patients who did not identified as Aboriginal and Torres Strait Islander were 1.69 (95% confidence interval [CI] 1.39–2.05) times more likely to miss a scheduled appointment. Female patients who identified as Aboriginal and Torres Strait Islander were 3.06 (95% CI 2.40–3.89) times more likely to miss a scheduled appointment. Male patients who identified as Aboriginal and Torres Strait Islander were 3.00 (95% CI 1.95–4.61) times more likely to miss a scheduled appointment.

Table 4.

Multivariate logistic regression showing likelihood of scheduled appointment non‐attendance by gender × indigenous status, age, modality, distance from facility and referral source

Factors Multivariate logistic regression
Odds ratio (OR) 95% confidence interval (CI) P‐value
Gender × indigenous status
Female not Aboriginal and Torres Strait Islander Reference
Male not Aboriginal and Torres Strait Islander 1.69 1.39–2.05 <0.001
Female Aboriginal and Torres Strait Islander 3.06 2.40–3.89 <0.001
Male Aboriginal and Torres Strait Islander 3.00 1.95–4.61 <0.001
Age
0–9 years 1.64 1.00–2.71 0.053
10–17 years 1.68 0.97–2.89 0.063
18–24 years 1.12 0.81–1.53 0.501
25–34 years 1.10 0.83–1.44 0.516
35–44 years 1.32 0.99–1.76 0.061
45–54 years 1.58 1.22–2.05 0.001
55–64 years 1.23 0.94–1.60 0.125
65 years and over Reference
Modality
Modality combinationa Reference
Ultrasound 1.64 1.04–2.59 0.033
CTb 1.94 1.22–3.07 0.005
Interventional radiology 1.97 1.13–3.45 0.017
Mammography 3.07 1.00–9.47 0.051
Distance from facility
<51 km Reference
51–300 km 1.14 0.94–1.37 0.194
>300 km 1.00 0.77–1.29 0.978
Referral source
Other clinicsc Reference
Cancer/ONCd 1.23 0.81–1.89 0.335
Medical 1.63 1.14–2.32 0.007
Othere 1.45 0.96–2.18 0.079
Rural facilities 1.96 1.16–3.32 0.012
Surgical 2.34 1.57–3.49 <0.001
a

Combination of any two or more of the following modalities – ultrasound, CT, mammography, interventional radiology.

b

Computed tomography.

c

Wards not classed as medical, surgical or palliative.

d

Oncology.

e

Facilities outside of the regional hospital health service.

Discussion

In this study of medical imaging department non‐attendance, the rate of non‐attendance was 5.4%, which was similar to that reported by previous publications21, 22, 23, 24, 25, 26 This study appears to be the only analysis of medical imaging non‐attendance in the Australian context, as well as the first to address this subject in the regional setting.

The study has identified a number of factors associated with non‐attendance. Male patients were shown to be 1.57 times less likely to attend their appointment than females. An attitude of self‐reliance and a reluctance to seek help are traits frequently observed in male patients in regional and rural healthcare settings and may partially explain this finding.27 This finding agreed with results of most other medical imaging non‐attendance studies.21, 22, 24 However, a Saudi Arabian study of MRI appointment non‐attendance found that females were significantly less likely to attend.25 Disparate cultural factors may account for this disagreement.

Patients’ who identified as Aboriginal and Torres Strait Islander were shown to have significantly higher non‐attendance rates. This has been identified as a factor in other studies but this is the first study to investigate this in the medical imaging context.15, 28 Non‐attendance in this group was 2.66 times higher than that of non‐Indigenous patients. Furthermore, 7.9% of the scheduled appointments in this investigation were for patients who identified as Aboriginal and Torres Strait Islander. The local community has an Aboriginal and Torres Strait Islander population of 4.2%.29 Therefore, while Aboriginal and Torres Strait Islanders make up a relatively small section of the community, they are overrepresented in the medical imaging environment and could be considered a vulnerable subpopulation. Greater focus on the cultural capability of clinical staff to improve patient‐centred communication, improved appointment access as well as better access to transport services, may assist in closing the gap in medical imaging appointment attendance rates.28, 30

While patients aged less than 18 years were less likely to attend than any other age groups, this result was not statistically significant likely due to the small sample size associated. Patients aged 45–54 were the only group shown to be significantly less likely to attend. This result agrees with a recent study of non‐attendance in medical imaging but is at odds with the findings of other medical imaging studies that suggest that patients under 18 or over 65, respectively, are at greater incidence of non‐attendance.21, 22, 26

The main strengths of this study were the large patient cohort allowing for a strong statistical correlation of outcomes. The study highlights the need for medical imaging departments to monitor non‐attendance and consider implementing strategies to mitigate this.

Some study limitations deserve comment. The study was a retrospective audit of data that were collected routinely. Therefore, we were not able to include some of the potential factors as they were not routinely collected, such as day of the week of the appointment.31 The available data only contained the date the appointment was made, but not the appointment date itself. Furthermore, some factors, have been found to be relevant to non‐attendance in medical imaging department in other studies such as loud machines, enclosed locations, radiation concerns as well as attitudinal and psychosocial factors; however, they were not collected separately in the existing HIS/RIS databases.32, 33

To improve compliance and appointment attendance, medical imaging departments should monitor and act in areas where populations are at increased risk of non‐attendance. The barriers and enablers contributing to the identified factors need to be identified through further study.

Conclusion

This study investigated the immediately available factors associated with appointment non‐attendance at a large regional hospital medical imaging department. Overall, 724 (5.4%) scheduled appointments were missed in the year assessed. Several factors were found to be strongly associated with non‐attendance in the medical imaging department. These included patients that identified as Aboriginal and Torres Strait Islander, male patients, patients aged 45–54 years and patients presenting for particular imaging modalities or referral sources. Further study to identify the specific barriers and enablers for these at‐risk patients will allow medical imaging departments to take steps to further reduce appointment non‐attendance.

Conflict of Interest

The authors declare no conflict of interest.

Acknowledgements

The input from Anna Tynan, Research Fellow, Darling Downs Hospital and Health Service is acknowledged. The advice received from Rica Lacey, Cultural Practice Coordinator, Darling Downs Hospital Health Service is also acknowledged. Staff at the Toowoomba Hospital Medical Imaging Department, in particular the assistance of Lachlan Jamieson, PACS Coordinator, Darling Downs Hospital and Health Service is gratefully acknowledged.

J Med Radiat Sci 65 (2018) 192–199

References

  • 1. Marmot M, Friel S, Bell R, Houweling TAJ, Taylor S. Closing the gap in a generation: Health equity through action on the social determinants of health. Lancet 2008; 372: 1661–9. [DOI] [PubMed] [Google Scholar]
  • 2. Nguyen DL, DeJesus RS, Wieland ML. Missed appointments in resident continuity clinic: Patient characteristics and health care outcomes. J Graduate Med Educ 2011; 3: 350–5. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 3. Keirkhah P, Feng Q, Travis LM, Tavakoli‐Tabasi S, Sharafkhaneh A. Prevalence, predictors and economic consequences of no shows. BMC Heath Serv Res 2016; 16: 13. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 4. Doyle J. Victorian Auditor General's Report: Hospital services: High value equipment; 2015. [cited 4 May 2017] 48 p. PP No 8, Session 2014–15 [Available from: http://www.audit.vic.gov.au/publications/20150225-Hospital-Equipment/20150225-Hospital-Equipment.pdf]
  • 5. Petrowsky H, Raeder S, Zuercher L, et al. A quarter century experience in liver trauma: A plea for early computed tomography and conservative management for all hemodynamically stable patients. World J Surg 2012; 36: 247–54. [DOI] [PubMed] [Google Scholar]
  • 6. The SCOAP Collaborative , Drake FT, Florence MG, Johnson MG, Jurkovich GJ, Kwon S, Schmidt Z, Thirlby RC, Flum DR. Progress in the diagnosis of appendicitis: A report from Washington State's surgical care and outcomes assessment program (SCOAP). Ann Surg 2012; 256: 586–94. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 7. Mugavero MJ, Lin H‐Y, Willig JH, et al. Missed visits and mortality among patients establishing initial outpatient HIV treatment. Clin Infect Dis 2009; 48: 248–56. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 8. Williamson AE, Ellis DA, Wilson P, McQueenie R, McConnachie R. Understanding repeated non‐attendance in health services: A pilot analysis of administrative data and full study protocol for a national retrospective cohort. BMJ Open  2017; 7: e014120. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 9. Queensland Department of Health . Radiology Services Profile 2015‐16. Available from: https://www.health.qld.gov.au/__data/assets/pdf_file/0026/648413/dohdl1617031001.pdf
  • 10. Australian Institute of Health and Welfare . 2014. Australia's health 2014. Australia's health series no. 14. Cat. no. AUS 178. Canberra: AIHW
  • 11. Paul CL, Hall AE, Carey ML, Cameron EC, Clinton‐McHard T. Access to care and impacts of cancer on daily life: Do they differ for metropolitan versus regional haematological cancer survivors? J Rural Health 2013; 29: s43–50. [DOI] [PubMed] [Google Scholar]
  • 12. George A, Rubin G. Non‐attendance in general practice: A systematic review and its implications for access to primary health care. Fam Pract 2003; 20: 178–84. [DOI] [PubMed] [Google Scholar]
  • 13. National Health Service England . NHS inpatient admission and outpatient referrals and attendances; 2017. [cited 18 June 2017] 11 p. Quarter Ending March 2017. Available from: https://www.england.nhs.uk/statistics/wp-content/uploads/sites/2/2013/04/QAR-commentary-Q4-1617-74536.pdf
  • 14. Satiani B, Miller S, Patel D. No‐show rates in the vascular laboratory: Analysis and possible solutions. J Vasc Interv Radiol 2009; 20: 87–91. [DOI] [PubMed] [Google Scholar]
  • 15. Nancarrow S, Bradbury J, Avila C. Factors associated with non‐attendance in a general practice super clinic population in regional Australia: A retrospective cohort study. Australas Med J 2014; 7: 323–33. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 16. Milne V, Kearns R, Harrison A. Patient age, ethnicity and waiting times determine the likelihood of non‐attendance at a first specialist rheumatology assessment. Int J Rheum Dis 2014; 17: 19–25. [DOI] [PubMed] [Google Scholar]
  • 17. DuMontier C, Rindfleisch K, Pruszynski J, Frey JJ III. A multi‐method intervention to reduce no‐shows in an urban residency clinic. Fam Med 2013; 45: 634–41. [PubMed] [Google Scholar]
  • 18. Giunta D, Briatore A, Baum A, Luna D, Waisman G, De Quiros FG. Factors associated with nonattendance at a clinical medicine scheduled outpatient appointments in a university general hospital. Patient Prefer Adherence 2013; 7: 1163–70. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 19. Lyon R, Reeves PJ, An investigation into why patients do not attend for out‐patient radiology appointments. Radiography 2006; 12: 283–90. [Google Scholar]
  • 20. National Statement of Ethical Conduct in Human Research 2007 (Updated May 2015). The National Health and Medical Research Council, The Australian Research Council and the Australian Vice‐Chancellor's Committee, Commonwealth of Australia, Canberra.
  • 21. Blaehr EE, Sogaard R, Kristensen T, Vaeggemose U. Observational study identifies non‐attendance characteristics in two hospital out‐patient clinics. Dan Med J 2016; 63: A5283. [PubMed] [Google Scholar]
  • 22. Harvey HB, Liu C, Ai J, et al. Predicting no‐shows in radiology using regression modelling of data available in the electronic medical record. J Am Coll Radiol 2017; 14: 1303–9. [DOI] [PubMed] [Google Scholar]
  • 23. Mieloszyk RJ, Rosenbaum JI, Bhargava P, Hall CS. Predictive modeling to identify scheduled radiology appointments resulting in non‐attendance in a hospital setting, Conference Proceedings:… Annual International Conference Of The IEEE Engineering In Medicine And Biology Society . IEEE Engineering In Medicine And Biology Society. Annual Conference 2017; 2618–2621. Available from: 10.1109/EMBC.2017.8037394 [5 January 2018] [DOI] [PubMed] [Google Scholar]
  • 24. Lu JC, Lowery R, Yu S, Ghadimi MM, Agarwal PP, Dorfman AL. Predictors of missed appointments in patients referred for congenital or pediatric cardiac magnetic resonance. Paediatr Radiol 2017; 47: 911–6. [DOI] [PubMed] [Google Scholar]
  • 25. AlRowaili MO, Ahmed AE, Areabi HA. Factors associated with no‐shows and rescheduling MRI appointments. BMC Heath Serv Res 2016; 16: 679. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 26. Glover M, Day D, Khalizadeh O, et al. Socioeconomic and demographic predictors of missed opportunities to provide advanced imaging services. J Am Coll Radiol 2017; 14: 1403–11. [DOI] [PubMed] [Google Scholar]
  • 27. Begg S, Vos T, Barker B, Stevenson C, Stanley L, Lopez AD, 2007. The burden of disease and injury in Australia 2003. PHE 82. Canberra: AIHW. [Google Scholar]
  • 28. Copeland S, Muir J, Turner A. Understanding Indigenous patient attendance: A qualitative study. Aust J Rural Health 2017; 25, 268–74. [DOI] [PubMed] [Google Scholar]
  • 29. Darling Downs Hospital and Health Service . Annual Report 2014‐2015; 2015 [cited 18 June 2017] 127 p. Available from: http://www.health.qld.gov.au/darlingdowns/pdf/ddhhs-annualreport-2015.pdf
  • 30. Queensland Department of Health . Aboriginal and Torres Strait Islander Cultural Capability Framework 2010‐2033. Available from: https://www.health.qld.gov.au/__data/assets/pdf_file/0014/156200/cultural_capability.pdf
  • 31. Ellis DA, Jenkins R. Weekday affects attendance rate for medical appointments: Large‐scale data analysis and implications. PLoS ONE 2012: 7; e51365. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 32. Munn Z, Jordan Z. The effectiveness of interventions to reduce anxiety, claustrophobia, sedation and non‐completion rates of patients undergoing high technology medical imaging. JBI Libr Syst Rev 2012; 10: 1122–85. [DOI] [PubMed] [Google Scholar]
  • 33. Dauer LT, Thronton RH, Hay JL, Balter R, Williamson M, St. Germain J. Fears, feelings, and facts: Interactively communicating benefits and risks of medical radiation with patients. Am J Roentgenol 2011; 196. [DOI] [PMC free article] [PubMed] [Google Scholar]

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