Skip to main content
Top
Published in: BMC Health Services Research 1/2019

Open Access 01-12-2019 | Research article

Characterization of high healthcare utilizer groups using administrative data from an electronic medical record database

Authors: Sheryl Hui-Xian Ng, Nabilah Rahman, Ian Yi Han Ang, Srinath Sridharan, Sravan Ramachandran, Debby D. Wang, Chuen Seng Tan, Sue-Anne Toh, Xin Quan Tan

Published in: BMC Health Services Research | Issue 1/2019

Login to get access

Abstract

Background

High utilizers (HUs) are a small group of patients who impose a disproportionately high burden on the healthcare system due to their elevated resource use. Identification of persistent HUs is pertinent as interventions have not been effective due to regression to the mean in majority of patients. This study will use cost and utilization metrics to segment a hospital-based patient population into HU groups.

Methods

The index visit for each adult patient to an Academic Medical Centre in Singapore during 2006 to 2012 was identified. Cost, length of stay (LOS) and number of specialist outpatient clinic (SOC) visits within 1 year following the index visit were extracted and aggregated. Patients were HUs if they exceeded the 90th percentile of any metric, and Non-HU otherwise. Seven different HU groups and a Non-HU group were constructed. The groups were described in terms of cost and utilization patterns, socio-demographic information, multi-morbidity scores and medical history. Logistic regression compared the groups’ persistence as a HU in any group into the subsequent year, adjusting for socio-demographic information and diagnosis history.

Results

A total of 388,162 patients above the age of 21 were included in the study. Cost-LOS-SOC HUs had the highest multi-morbidity and persistence into the second year. Common conditions among Cost-LOS and Cost-LOS-SOC HUs were cardiovascular disease, acute cerebrovascular disease and pneumonia, while most LOS and LOS-SOC HUs were diagnosed with at least one mental health condition. Regression analyses revealed that HUs across all groups were more likely to persist compared to Non-HUs, with stronger relationships seen in groups with high SOC utilization. Similar trends remained after further adjustment.

Conclusion

HUs of healthcare services are a diverse group and can be further segmented into different subgroups based on cost and utilization patterns. Segmentation by these metrics revealed differences in socio-demographic characteristics, disease profile and persistence. Most HUs did not persist in their high utilization, and high SOC users should be prioritized for further longitudinal analyses. Segmentation will enable policy makers to better identify the diverse needs of patients, detect gaps in current care and focus their efforts in delivering care relevant and tailored to each segment.
Appendix
Available only for authorised users
Literature
3.
go back to reference Calver J, Bramweld KJ, Preen DB, Alexia SJ, Boldy DP, KA MC. High-cost users of hospital beds in Western Australia: A population-based record linkage study. Med J Aust. 2006;184:393–7.PubMed Calver J, Bramweld KJ, Preen DB, Alexia SJ, Boldy DP, KA MC. High-cost users of hospital beds in Western Australia: A population-based record linkage study. Med J Aust. 2006;184:393–7.PubMed
5.
go back to reference Diehr P, Yanez D, Ash A, Hornbrook M, Lin DY. Methods for analyzing health care utilization and costs. Annu Rev Public Health. 1999;20:125–44.CrossRef Diehr P, Yanez D, Ash A, Hornbrook M, Lin DY. Methods for analyzing health care utilization and costs. Annu Rev Public Health. 1999;20:125–44.CrossRef
6.
go back to reference Heslop L, Athan D, Gardner B, Diers D, Poh BC. An analysis of high-cost users at an Australian public health service organization. Heal Serv Manag Res. 2005;18:232–43.CrossRef Heslop L, Athan D, Gardner B, Diers D, Poh BC. An analysis of high-cost users at an Australian public health service organization. Heal Serv Manag Res. 2005;18:232–43.CrossRef
7.
go back to reference Coughlin TA, Long SK. Health care spending and service use among high-cost Medicaid beneficiaries, 2002-2004. Inquiry. 2009;46:405–17.CrossRef Coughlin TA, Long SK. Health care spending and service use among high-cost Medicaid beneficiaries, 2002-2004. Inquiry. 2009;46:405–17.CrossRef
8.
go back to reference Chechulin Y, Nazerian A, Rais S, Malikov K. Predicting patients with high risk of becoming high-cost healthcare users in Ontario (Canada). Healthc Policy. 2014;9:68–79.PubMedPubMedCentral Chechulin Y, Nazerian A, Rais S, Malikov K. Predicting patients with high risk of becoming high-cost healthcare users in Ontario (Canada). Healthc Policy. 2014;9:68–79.PubMedPubMedCentral
11.
go back to reference Hayes SL, Salzberg C, McCarthy D, Radley DC, Abrams MK, Shah T, et al. High-need, High-cost patients: Who are they and how do they use health care? 2016. Hayes SL, Salzberg C, McCarthy D, Radley DC, Abrams MK, Shah T, et al. High-need, High-cost patients: Who are they and how do they use health care? 2016.
15.
go back to reference Wodchis WP, Austin PC, Henry DA. A 3-year study of high-cost users of health care. Can Med Assoc J. 2016;188:182–8.CrossRef Wodchis WP, Austin PC, Henry DA. A 3-year study of high-cost users of health care. Can Med Assoc J. 2016;188:182–8.CrossRef
16.
go back to reference Zulman DM, Chee CP, Wagner TH, Yoon J, Cohen DM, Holmes TH, et al. Multimorbidity and healthcare utilisation among high-cost patients in the US veterans affairs health care system. BMJ Open. 2015;5:1–10.CrossRef Zulman DM, Chee CP, Wagner TH, Yoon J, Cohen DM, Holmes TH, et al. Multimorbidity and healthcare utilisation among high-cost patients in the US veterans affairs health care system. BMJ Open. 2015;5:1–10.CrossRef
17.
go back to reference Lemstra M, Mackenbach J, Neudorf C, Nannapaneni U. High health care utilization and costs associated with lower socio-economic status: results from a linked dataset. Can J Public Heal Can Sante’e Publique. 2009;100:180–3. Lemstra M, Mackenbach J, Neudorf C, Nannapaneni U. High health care utilization and costs associated with lower socio-economic status: results from a linked dataset. Can J Public Heal Can Sante’e Publique. 2009;100:180–3.
18.
go back to reference Lu J, Britton E, Ferrance J, Rice E, Kuzel A, Dow A. Identifying future high host individuals within an intermediate cost population. Qual Prim Care. 2015;23:318–26.PubMedPubMedCentral Lu J, Britton E, Ferrance J, Rice E, Kuzel A, Dow A. Identifying future high host individuals within an intermediate cost population. Qual Prim Care. 2015;23:318–26.PubMedPubMedCentral
19.
go back to reference Joynt KE, Gawande AA, Orav EJ, Jha AK. Contribution of preventable acute care spending to total spending for high-cost. J Am Med Assoc. 2013;309:2572–8.CrossRef Joynt KE, Gawande AA, Orav EJ, Jha AK. Contribution of preventable acute care spending to total spending for high-cost. J Am Med Assoc. 2013;309:2572–8.CrossRef
21.
go back to reference Boult C, Kessler J, Urdangarin C, Boult L, Yedidia P. Identifying workers at risk for high health care expenditures: A short questionnaire. Dis Manag. 2004;7:124–35.CrossRef Boult C, Kessler J, Urdangarin C, Boult L, Yedidia P. Identifying workers at risk for high health care expenditures: A short questionnaire. Dis Manag. 2004;7:124–35.CrossRef
25.
go back to reference Sen B, Blackburn J, Aswani MS, Morrisey MA, Becker DJ, Kilgore ML, et al. Health expenditure concentration and characteristics of high-cost enrollees in CHIP. Inquiry. 2016;53:1–9. Sen B, Blackburn J, Aswani MS, Morrisey MA, Becker DJ, Kilgore ML, et al. Health expenditure concentration and characteristics of high-cost enrollees in CHIP. Inquiry. 2016;53:1–9.
26.
go back to reference Beaulieu ND, Joynt KE, Wild R, Jha AK. Concentration of high-cost patients in hospitals and markets. Am J Manag Care. 2017;23:233-238. Beaulieu ND, Joynt KE, Wild R, Jha AK. Concentration of high-cost patients in hospitals and markets. Am J Manag Care. 2017;23:233-238.
27.
go back to reference Lin JD, Loh CH, Choi IC, Yen CF, Hsu SW, Wu JL, et al. High outpatient visits among people with intellectual disabilities caring in a disability institution in Taipei: A 4-year survey. Res Dev Disabil. 2007;28:84–93.CrossRef Lin JD, Loh CH, Choi IC, Yen CF, Hsu SW, Wu JL, et al. High outpatient visits among people with intellectual disabilities caring in a disability institution in Taipei: A 4-year survey. Res Dev Disabil. 2007;28:84–93.CrossRef
28.
go back to reference Blank FSJ, Li H, Henneman PL, Smithline HA, Santoro JS, Provost D, et al. A descriptive study of heavy emergency department users at an academic emergency department reveals heavy ED users have better access to care than average users. J Emerg Nurs. 2005;31:139–44.CrossRef Blank FSJ, Li H, Henneman PL, Smithline HA, Santoro JS, Provost D, et al. A descriptive study of heavy emergency department users at an academic emergency department reveals heavy ED users have better access to care than average users. J Emerg Nurs. 2005;31:139–44.CrossRef
29.
go back to reference Capp R, Kelley L, Ellis P, Carmona J, Lofton A, Cobbs-Lomax D, et al. Reasons for frequent emergency department use by medicaid enrollees: a qualitative study. Acad Emerg Med. 2016;23:476–81.CrossRef Capp R, Kelley L, Ellis P, Carmona J, Lofton A, Cobbs-Lomax D, et al. Reasons for frequent emergency department use by medicaid enrollees: a qualitative study. Acad Emerg Med. 2016;23:476–81.CrossRef
30.
go back to reference Billings J, Raven MC. Dispelling an urban legend: Frequent emergency department users have substantial burden of disease. Health Aff. 2013;32:2099–108.CrossRef Billings J, Raven MC. Dispelling an urban legend: Frequent emergency department users have substantial burden of disease. Health Aff. 2013;32:2099–108.CrossRef
31.
go back to reference Howell S, Coory M, Martin J, Duckett S. Using routine inpatient data to identify patients at risk of hospital readmission. BMC Health Serv Res. 2009;9:1–9.CrossRef Howell S, Coory M, Martin J, Duckett S. Using routine inpatient data to identify patients at risk of hospital readmission. BMC Health Serv Res. 2009;9:1–9.CrossRef
32.
go back to reference Petrey LB, Weddle RJ, Richardson B, Gilder R, Reynolds M, Bennett M, et al. Trauma patient readmissions: Why do they come back for more? J Trauma Acute Care Surg. 2015;79:717–25.CrossRef Petrey LB, Weddle RJ, Richardson B, Gilder R, Reynolds M, Bennett M, et al. Trauma patient readmissions: Why do they come back for more? J Trauma Acute Care Surg. 2015;79:717–25.CrossRef
33.
go back to reference Fabbian F, Boccafogli A, De Giorgi A, Pala M, Salmi R, Melandri R, et al. The crucial factor of hospital readmissions: A retrospective cohort study of patients evaluated in the emergency department and admitted to the department of medicine of a general hospital in Italy. Eur J Med Res. 2015;20:1–6.CrossRef Fabbian F, Boccafogli A, De Giorgi A, Pala M, Salmi R, Melandri R, et al. The crucial factor of hospital readmissions: A retrospective cohort study of patients evaluated in the emergency department and admitted to the department of medicine of a general hospital in Italy. Eur J Med Res. 2015;20:1–6.CrossRef
35.
go back to reference Freitas A, Silva-Costa T, Lopes F, Garcia-Lema I, Teixeira-Pinto A, Brazdil P, et al. Factors influencing hospital high length of stay outliers. BMC Health Serv Res. 2012;12:265. Freitas A, Silva-Costa T, Lopes F, Garcia-Lema I, Teixeira-Pinto A, Brazdil P, et al. Factors influencing hospital high length of stay outliers. BMC Health Serv Res. 2012;12:265.
38.
go back to reference Lee NS, Whitman N, Vakharia N, Taksler GB, Rothberg MB. High-cost patients: Hot-spotters don’t explain the half of it. J Gen Intern Med. 2017;32:28–34.CrossRef Lee NS, Whitman N, Vakharia N, Taksler GB, Rothberg MB. High-cost patients: Hot-spotters don’t explain the half of it. J Gen Intern Med. 2017;32:28–34.CrossRef
40.
go back to reference Nguyen OK, Tang N, Hillman JM, Gonzales R. What’s cost got to do with it? Association between hospital costs and frequency of admissions among “high users” of hospital care. J Hosp Med. 2013;8:665–71.CrossRef Nguyen OK, Tang N, Hillman JM, Gonzales R. What’s cost got to do with it? Association between hospital costs and frequency of admissions among “high users” of hospital care. J Hosp Med. 2013;8:665–71.CrossRef
41.
go back to reference Vuik SI, Mayer EK, Darzi A. Patient segmentation analysis offers significant benefits for integrated care and support. Health Aff. 2016;35:769–75.CrossRef Vuik SI, Mayer EK, Darzi A. Patient segmentation analysis offers significant benefits for integrated care and support. Health Aff. 2016;35:769–75.CrossRef
43.
go back to reference Dean BB, Natoli JL, Nordyke RJ. Use of electronic medical records for health outcomes research. Med Care Res Rev. 2009;66:611–38.CrossRef Dean BB, Natoli JL, Nordyke RJ. Use of electronic medical records for health outcomes research. Med Care Res Rev. 2009;66:611–38.CrossRef
46.
go back to reference Hillestad R, Bigelow J, Bower A, Girosi F, Meili R, Scoville R, et al. Can electronic medical record systems transform health care? Potential health benefits, savings, and costs. Health Aff. 2005;24:1103–17.CrossRef Hillestad R, Bigelow J, Bower A, Girosi F, Meili R, Scoville R, et al. Can electronic medical record systems transform health care? Potential health benefits, savings, and costs. Health Aff. 2005;24:1103–17.CrossRef
47.
go back to reference Vuik SI, Mayer E, Darzi A. Enhancing risk stratification for use in integrated care: A cluster analysis of high-risk patients in a retrospective cohort study. BMJ Open. 2016;6:1–8.CrossRef Vuik SI, Mayer E, Darzi A. Enhancing risk stratification for use in integrated care: A cluster analysis of high-risk patients in a retrospective cohort study. BMJ Open. 2016;6:1–8.CrossRef
48.
go back to reference Chong JL, Matchar DB. Benefits of population segmentation analysis for developing health policy to promote patient-centred care. Ann Acad Med Singapore. 2017;46:287–9.PubMed Chong JL, Matchar DB. Benefits of population segmentation analysis for developing health policy to promote patient-centred care. Ann Acad Med Singapore. 2017;46:287–9.PubMed
49.
go back to reference Monheit AC. Persistence in health expenditures in the short run: Prevalence and consequences. Med Care. 2003;41:III53-III64.CrossRef Monheit AC. Persistence in health expenditures in the short run: Prevalence and consequences. Med Care. 2003;41:III53-III64.CrossRef
51.
go back to reference Rahman N, Wang DD, Hui-Xian Ng S, Ramachandran S, Sridharan S, Khoo A, et al. Processing of electronic medical records for health services research in academic medical centre: methods and validation. JMIR Med Informatics. 2018. https://doi.org/10.2196/10933.CrossRef Rahman N, Wang DD, Hui-Xian Ng S, Ramachandran S, Sridharan S, Khoo A, et al. Processing of electronic medical records for health services research in academic medical centre: methods and validation. JMIR Med Informatics. 2018. https://​doi.​org/​10.​2196/​10933.CrossRef
52.
go back to reference Charlson ME, Pompei P, Ales KL, MacKenzie CR. A new method of classifying prognostic comorbidity in longitudinal studies: development and validation. J Chronic Dis. 1987;40:373–83.CrossRef Charlson ME, Pompei P, Ales KL, MacKenzie CR. A new method of classifying prognostic comorbidity in longitudinal studies: development and validation. J Chronic Dis. 1987;40:373–83.CrossRef
53.
go back to reference Quan H, Sundararajan V, Halfon P, Fong A, Burnand B, Luthi JC, et al. Coding algorithms for defining comorbidities in ICD-9-CM and ICD-10 administrative data. Med Care. 2005;43:1130–9.CrossRef Quan H, Sundararajan V, Halfon P, Fong A, Burnand B, Luthi JC, et al. Coding algorithms for defining comorbidities in ICD-9-CM and ICD-10 administrative data. Med Care. 2005;43:1130–9.CrossRef
54.
go back to reference Masnoon N, Shakib S, Kalisch-Ellett L, Caughey GE. What is polypharmacy? A systematic review of definitions. BMC Geriatr. 2017;17:1–10.CrossRef Masnoon N, Shakib S, Kalisch-Ellett L, Caughey GE. What is polypharmacy? A systematic review of definitions. BMC Geriatr. 2017;17:1–10.CrossRef
56.
go back to reference Drösler SE, Romano PS, Tancredi DJ, Klazinga NS. International comparability of patient safety indicators in 15 OECD member countries: A methodological approach of adjustment by secondary diagnoses. Health Serv Res. 2012;47(1 PART 1):275–92.CrossRef Drösler SE, Romano PS, Tancredi DJ, Klazinga NS. International comparability of patient safety indicators in 15 OECD member countries: A methodological approach of adjustment by secondary diagnoses. Health Serv Res. 2012;47(1 PART 1):275–92.CrossRef
57.
go back to reference HealthPartners. Total cost of care and total resource use validity testing analysis. 2017. HealthPartners. Total cost of care and total resource use validity testing analysis. 2017.
58.
go back to reference Bertoli-Avella AM, Haagsma JA, Van Tiel S, Erasmus V, Polinder S, Van Beeck E, et al. Frequent users of the emergency department services in the largest academic hospital in the Netherlands: A 5-year report. Eur J Emerg Med. 2017;24:130–5.CrossRef Bertoli-Avella AM, Haagsma JA, Van Tiel S, Erasmus V, Polinder S, Van Beeck E, et al. Frequent users of the emergency department services in the largest academic hospital in the Netherlands: A 5-year report. Eur J Emerg Med. 2017;24:130–5.CrossRef
59.
60.
go back to reference Colligan EM, Pines JM, Colantuoni E, Wolff JL. Factors associated with frequent emergency department use in the medicare population. Med Care Res Rev. 2017;74:311–27.CrossRef Colligan EM, Pines JM, Colantuoni E, Wolff JL. Factors associated with frequent emergency department use in the medicare population. Med Care Res Rev. 2017;74:311–27.CrossRef
61.
go back to reference Cunningham A, Mautner D, Ku B, Scott K, LaNoue M. Frequent emergency department visitors are frequent primary care visitors and report unmet primary care needs. J Eval Clin Pract. 2017;23:567–73.CrossRef Cunningham A, Mautner D, Ku B, Scott K, LaNoue M. Frequent emergency department visitors are frequent primary care visitors and report unmet primary care needs. J Eval Clin Pract. 2017;23:567–73.CrossRef
63.
go back to reference Kanzaria HK, Niedzwiecki MJ, Montoy JC, Raven MC, Hsia RY. Persistent frequent emergency department use: core group exhibits extreme levels of use for more than a decade. Health Aff. 2017;36:1720–8.CrossRef Kanzaria HK, Niedzwiecki MJ, Montoy JC, Raven MC, Hsia RY. Persistent frequent emergency department use: core group exhibits extreme levels of use for more than a decade. Health Aff. 2017;36:1720–8.CrossRef
64.
go back to reference Saef SH, Carr CM, Bush JS, Bartman MT, Sendor AB, Zhao W, et al. A comprehensive view of frequent emergency department users based on data from a regional HIE. South Med J. 2016;109:434–9.CrossRef Saef SH, Carr CM, Bush JS, Bartman MT, Sendor AB, Zhao W, et al. A comprehensive view of frequent emergency department users based on data from a regional HIE. South Med J. 2016;109:434–9.CrossRef
65.
go back to reference Lim J. Sustainable health care financing: The Singapore experience. Glob Pol. 2017;8:103–9.CrossRef Lim J. Sustainable health care financing: The Singapore experience. Glob Pol. 2017;8:103–9.CrossRef
66.
go back to reference Housing & Development Board. HDB annual report 2017/2018. 2018. Housing & Development Board. HDB annual report 2017/2018. 2018.
68.
go back to reference Neyman J, Pearson E. On the use and interpretation of certain test criteria for purposes of statistical inference : Part I. Biometrika. 1928;20A:175–240. Neyman J, Pearson E. On the use and interpretation of certain test criteria for purposes of statistical inference : Part I. Biometrika. 1928;20A:175–240.
71.
go back to reference Longman JM, I IM, Passey MD, Heathcote KE, Ewald DP, Dunn T, et al. Frequent hospital admission of older people with chronic disease: a cross-sectional survey with telephone follow-up and data linkage. BMC Health Serv Res. 2012;12:1–13.CrossRef Longman JM, I IM, Passey MD, Heathcote KE, Ewald DP, Dunn T, et al. Frequent hospital admission of older people with chronic disease: a cross-sectional survey with telephone follow-up and data linkage. BMC Health Serv Res. 2012;12:1–13.CrossRef
72.
go back to reference Perkins AJ, Kroenke K, Unützer J, Katon W, Williams JW, Hope C, et al. Common comorbidity scales were similar in their ability to predict health care costs and mortality. J Clin Epidemiol. 2004;57:1040–8.CrossRef Perkins AJ, Kroenke K, Unützer J, Katon W, Williams JW, Hope C, et al. Common comorbidity scales were similar in their ability to predict health care costs and mortality. J Clin Epidemiol. 2004;57:1040–8.CrossRef
74.
go back to reference Bell J, Turbow S, George M, Ali MK. Factors associated with high-utilization in a safety net setting. BMC Health Serv Res. 2017;17:1–9.CrossRef Bell J, Turbow S, George M, Ali MK. Factors associated with high-utilization in a safety net setting. BMC Health Serv Res. 2017;17:1–9.CrossRef
75.
go back to reference Low LL, Yan S, Kwan YH, Tan CS, Thumboo J. Assessing the validity of a data driven segmentation approach : A 4 year longitudinal study of healthcare utilization and mortality. PLoS One. 2018;13:1–15. Low LL, Yan S, Kwan YH, Tan CS, Thumboo J. Assessing the validity of a data driven segmentation approach : A 4 year longitudinal study of healthcare utilization and mortality. PLoS One. 2018;13:1–15.
76.
go back to reference Davis AC, Shen E, Shah NR, Glenn BA, Ponce N, Telesca D, et al. Segmentation of high-cost adults in an integrated healthcare system based on empirical clustering of acute and chronic conditions. J Gen Intern Med. 2018. Davis AC, Shen E, Shah NR, Glenn BA, Ponce N, Telesca D, et al. Segmentation of high-cost adults in an integrated healthcare system based on empirical clustering of acute and chronic conditions. J Gen Intern Med. 2018.
80.
go back to reference Siddiqui N, Dwyer M, Stankovich J, Peterson G, Greenfield D, Si L, et al. Hospital length of stay variation and comorbidity of mental illness: a retrospective study of five common chronic medical conditions. BMC Health Serv Res. 2018;18:1–10.CrossRef Siddiqui N, Dwyer M, Stankovich J, Peterson G, Greenfield D, Si L, et al. Hospital length of stay variation and comorbidity of mental illness: a retrospective study of five common chronic medical conditions. BMC Health Serv Res. 2018;18:1–10.CrossRef
81.
go back to reference Hwang W, LaClair M, Camacho F, Paz H. Persistent high utilization in a privately insured population. Am J Manag Care. 2015;21:309–16.PubMed Hwang W, LaClair M, Camacho F, Paz H. Persistent high utilization in a privately insured population. Am J Manag Care. 2015;21:309–16.PubMed
82.
go back to reference Delia D. Mortality, disenrollment, and spending persistence in medicaid and CHIP. Med Care. 2017;55:220–8.CrossRef Delia D. Mortality, disenrollment, and spending persistence in medicaid and CHIP. Med Care. 2017;55:220–8.CrossRef
83.
go back to reference Feltner C, Jones CD, Cene CW, Zheng Z, Sueta CA, Coker-Schwimmer EJL, et al. Transitional care interventions to prevent readmissions for persons with heart failure. Ann Intern Med. 2014;160:774–84.CrossRef Feltner C, Jones CD, Cene CW, Zheng Z, Sueta CA, Coker-Schwimmer EJL, et al. Transitional care interventions to prevent readmissions for persons with heart failure. Ann Intern Med. 2014;160:774–84.CrossRef
84.
go back to reference Phelan EA, Debnam KJ, Anderson LA, Owens SB. A systematic review of intervention studies to prevent hospitalizations of community-dwelling older adults with dementia. Med Care. 2015;53:207–13.CrossRef Phelan EA, Debnam KJ, Anderson LA, Owens SB. A systematic review of intervention studies to prevent hospitalizations of community-dwelling older adults with dementia. Med Care. 2015;53:207–13.CrossRef
86.
go back to reference Kwan J, Sandercock P. In-hospital care pathways for stroke: a cochrane systematic review. Stroke. 2003;34:587–8.CrossRef Kwan J, Sandercock P. In-hospital care pathways for stroke: a cochrane systematic review. Stroke. 2003;34:587–8.CrossRef
88.
go back to reference Busetto L, Luijkx KG, Elissen AMJ, Vrijhoef HJM. Intervention types and outcomes of integrated care for diabetes mellitus type 2: A systematic review. J Eval Clin Pract. 2016;22:299–310.CrossRef Busetto L, Luijkx KG, Elissen AMJ, Vrijhoef HJM. Intervention types and outcomes of integrated care for diabetes mellitus type 2: A systematic review. J Eval Clin Pract. 2016;22:299–310.CrossRef
90.
go back to reference Damery S, Flanagan S, Combes G. Does integrated care reduce hospital activity for patients with chronic diseases? An umbrella review of systematic reviews. BMJ Open. 2016;6:e011952.CrossRef Damery S, Flanagan S, Combes G. Does integrated care reduce hospital activity for patients with chronic diseases? An umbrella review of systematic reviews. BMJ Open. 2016;6:e011952.CrossRef
91.
go back to reference Baxter S, Johnson M, Chambers D, Sutton A, Goyder E, Booth A. The effects of integrated care: A systematic review of UK and international evidence. BMC Health Serv Res. 2018;18:1–13.CrossRef Baxter S, Johnson M, Chambers D, Sutton A, Goyder E, Booth A. The effects of integrated care: A systematic review of UK and international evidence. BMC Health Serv Res. 2018;18:1–13.CrossRef
94.
go back to reference Rinehart DJ, Oronce C, Durfee MJ, Ranby KW, Batal HA, Hanratty R, et al. Identifying subgroups of adult superutilizers in an urban safety-net system using latent class analysis. Med Care. 2018;56:e1–9.CrossRef Rinehart DJ, Oronce C, Durfee MJ, Ranby KW, Batal HA, Hanratty R, et al. Identifying subgroups of adult superutilizers in an urban safety-net system using latent class analysis. Med Care. 2018;56:e1–9.CrossRef
96.
go back to reference Riley GF. Administrative and claims records as sources of health care cost data. Med Care. 2009;47(Supplement):S51–5.CrossRef Riley GF. Administrative and claims records as sources of health care cost data. Med Care. 2009;47(Supplement):S51–5.CrossRef
97.
go back to reference Schousboe JT, Paudel ML, Taylor BC, Kats AM, Virnig BA, Ensrud KE, et al. Estimating true resource costs of outpatient care for medicare beneficiaries: Standardized costs versus medicare payments and charges. Health Serv Res. 2016;51:205–19.CrossRef Schousboe JT, Paudel ML, Taylor BC, Kats AM, Virnig BA, Ensrud KE, et al. Estimating true resource costs of outpatient care for medicare beneficiaries: Standardized costs versus medicare payments and charges. Health Serv Res. 2016;51:205–19.CrossRef
98.
go back to reference Taira DA, Seto TB, Siegrist R, Cosgrove R, Berezin R, Cohen DJ. Comparison of analytic approaches for the economic evaluation of new technologies alongside multicenter clinical trials. Am Heart J. 2003;145:452–8.CrossRef Taira DA, Seto TB, Siegrist R, Cosgrove R, Berezin R, Cohen DJ. Comparison of analytic approaches for the economic evaluation of new technologies alongside multicenter clinical trials. Am Heart J. 2003;145:452–8.CrossRef
99.
go back to reference Saxena N, You AX, Zhu Z, Sun Y, George PP, Teow KL, et al. Singapore’s regional health systems-a data-driven perspective on frequent admitters and cross utilization of healthcare services in three systems. Int J Health Plann Manage. 2017;32:36–49.CrossRef Saxena N, You AX, Zhu Z, Sun Y, George PP, Teow KL, et al. Singapore’s regional health systems-a data-driven perspective on frequent admitters and cross utilization of healthcare services in three systems. Int J Health Plann Manage. 2017;32:36–49.CrossRef
Metadata
Title
Characterization of high healthcare utilizer groups using administrative data from an electronic medical record database
Authors
Sheryl Hui-Xian Ng
Nabilah Rahman
Ian Yi Han Ang
Srinath Sridharan
Sravan Ramachandran
Debby D. Wang
Chuen Seng Tan
Sue-Anne Toh
Xin Quan Tan
Publication date
01-12-2019
Publisher
BioMed Central
Published in
BMC Health Services Research / Issue 1/2019
Electronic ISSN: 1472-6963
DOI
https://doi.org/10.1186/s12913-019-4239-2

Other articles of this Issue 1/2019

BMC Health Services Research 1/2019 Go to the issue