Literature DB >> 28277318

Factors Associated With Missed Appointments at an Academic Pain Treatment Center: A Prospective Year-Long Longitudinal Study.

Charles A Odonkor1, Sandy Christiansen, Yian Chen, Asmitha Sathiyakumar, Hira Chaudhry, Denise Cinquegrana, Jessica Lange, Cathy He, Steven P Cohen.   

Abstract

BACKGROUND: Interventional pain treatment centers represent an integral part of interdisciplinary care. Barriers to effective treatment include access to care and financial issues related to pain clinic operations. To address these challenges, specialty clinics have taken steps to identify and remedy missed clinic appointments. However, no prospective study has sought to identify factors associated with pain clinic "no-shows."
METHODS: We performed a prospective, longitudinal year-long study in an inner-city, academic pain clinic in which patients scheduled for office visits and procedures were categorized as to whether they showed up or did not show up for their scheduled appointment without cancelling the day before. Twenty demographic (age, employment status), clinical (eg, diagnosis, duration of pain), and environmental (season, time and day of appointment) variables were assessed for their association with missing an appointment. The logistic regression model predicting no-shows was internally validated with crossvalidation and bootstrapping methods. A predictive nomogram was developed to display effect size of predictors for no-shows.
RESULTS: No-show data were collected on 5134 patients out of 5209 total appointments for a capture rate of 98.6%. The overall no-show rate was 24.6% and was higher in individuals who were young (<65 years), single, of ethnic minority background, received Medicare/Medicaid, had a primary diagnosis of low back pain or headaches, were seen on a day with rain or snow or for an initial consult, and had at least 1 previous pain provider. Model discrimination (area under curve) was 0.738 (99% confidence interval, 0.70-0.85). A minimum threshold of 350 points on the nomogram predicted greater than 55% risk of no-shows.
CONCLUSIONS: We found a high no-show rate, which was associated with predictable and unpredictable (eg, snow) factors. Steps to reduce the no-show rate are discussed. To maximize access to care, operation managers should consider a regression model that accounts for patient-level risk of predictable no-shows. Knowing the patient level, no-show rate can potentially help to optimize the schedule programming by staggering low- versus high-probability no-shows.

Entities:  

Mesh:

Year:  2017        PMID: 28277318     DOI: 10.1213/ANE.0000000000001794

Source DB:  PubMed          Journal:  Anesth Analg        ISSN: 0003-2999            Impact factor:   5.108


  9 in total

1.  Application of Machine Learning to Predict Patient No-Shows in an Academic Pediatric Ophthalmology Clinic.

Authors:  Jimmy Chen; Isaac H Goldstein; Wei-Chun Lin; Michael F Chiang; Michelle R Hribar
Journal:  AMIA Annu Symp Proc       Date:  2021-01-25

2.  Large-Scale Data Mining to Optimize Patient-Centered Scheduling at Health Centers.

Authors:  Kislaya Kunjan; Huanmei Wu; Tammy R Toscos; Bradley N Doebbeling
Journal:  J Healthc Inform Res       Date:  2018-09-04

3.  No-show rates to a sleep clinic: drivers and determinants.

Authors:  David L Cheung; Julie Sahrmann; Alvan Nzewuihe; Joseph R Espiritu
Journal:  J Clin Sleep Med       Date:  2020-09-15       Impact factor: 4.062

4.  Exploring predictors of first appointment attendance at a pain management service.

Authors:  Mattia Monastra; Susie White; Jane Simpson
Journal:  Br J Pain       Date:  2020-03-06

5.  Area deprivation and attachment to a general practitioner through centralized waiting lists: a cross-sectional study in Quebec, Canada.

Authors:  Mélanie Ann Smithman; Astrid Brousselle; Nassera Touati; Antoine Boivin; Kareen Nour; Carl-Ardy Dubois; Christine Loignon; Djamal Berbiche; Mylaine Breton
Journal:  Int J Equity Health       Date:  2018-12-04

6.  Personal Phone Calls Lead to Decreased Rates of Missed Appointments in an Adolescent/Young Adult Practice.

Authors:  Rebecca Penzias; Virginia Sanabia; Kyra M Shreeve; Urmi Bhaumik; Caitlin Lenz; Elizabeth R Woods; Sara F Forman
Journal:  Pediatr Qual Saf       Date:  2019-07-29

7.  Prioritizing a sequence of short-duration groups as the standardized pathway for chronic noncancer pain at an Australian tertiary multidisciplinary pain service: preliminary outcomes.

Authors:  Hema Rajappa; Michelle Wilson; Ruth White; Megan Blanchard; Hilarie Tardif; Chris Hayes
Journal:  Pain Rep       Date:  2019-09-18

8.  Healthcare disparities contribute to missed follow-up visits after cataract surgery in the USA: results from the perioperative care for intraocular lens study.

Authors:  Giannis A Moustafa; Durga S Borkar; Emily A Eton; Nicole Koulisis; Carolyn E Kloek
Journal:  BMJ Open       Date:  2021-03-17       Impact factor: 2.692

9.  Nomograms for predicting difficult airway based on ultrasound assessment.

Authors:  Bin Wang; Weidong Yao; Qi Xue; Mingfang Wang; Jianling Xu; Yongquan Chen; Ye Zhang
Journal:  BMC Anesthesiol       Date:  2022-01-13       Impact factor: 2.217

  9 in total

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