Literature DB >> 32784248

Predictors of 30-day unplanned hospital readmission among adult patients with diabetes mellitus: a systematic review with meta-analysis.

Jade Gek Sang Soh1,2, Wai Pong Wong2, Amartya Mukhopadhyay3,4, Swee Chye Quek5, Bee Choo Tai6.   

Abstract

Adult patients with diabetes mellitus (DM) represent one-fifth of all 30-day unplanned hospital readmissions but some may be preventable through continuity of care with better DM self-management. We aim to synthesize evidence concerning the association between 30-day unplanned hospital readmission and patient-related factors, insurance status, treatment and comorbidities in adult patients with DM. We searched full-text English language articles in three electronic databases (MEDLINE, Embase and CINAHL) without confining to a particular publication period or geographical area. Prospective and retrospective cohort and case-control studies which identified significant risk factors of 30-day unplanned hospital readmission were included, while interventional studies were excluded. The study participants were aged ≥18 years with either type 1 or 2 DM. The random effects model was used to quantify the overall effect of each factor. Twenty-three studies published between 1998 and 2018 met the selection criteria and 18 provided information for the meta-analysis. The data were collected within a period ranging from 1 to 15 years. Although patient-related factors such as age, gender and race were identified, comorbidities such as heart failure (OR=1.81, 95% CI 1.67 to 1.96) and renal disease (OR=1.69, 95% CI 1.34 to 2.12), as well as insulin therapy (OR=1.45, 95% CI 1.24 to 1.71) and insurance status (OR=1.41, 95% CI 1.22 to 1.63) were stronger predictors of 30-day unplanned hospital readmission. The findings may be used to target DM self-management education at vulnerable groups based on comorbidities, insurance type, and insulin therapy. © Author(s) (or their employer(s)) 2020. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ.

Entities:  

Keywords:  adult diabetes; risk predictors

Mesh:

Year:  2020        PMID: 32784248      PMCID: PMC7418689          DOI: 10.1136/bmjdrc-2020-001227

Source DB:  PubMed          Journal:  BMJ Open Diabetes Res Care        ISSN: 2052-4897


Introduction

Diabetes is a long-term condition characterized by hyperglycemia when the pancreas is unable to produce enough insulin or when the body is not able to use the insulin effectively to regulate blood sugar level.1 The former is known as type 1 diabetes mellitus (T1DM) and the latter as type 2 diabetes mellitus (T2DM).2 With advances in diagnosis and treatment, lifespan for patients with diabetes mellitus (DM), which commonly includes both types of diabetes, is projected to be longer.3 Increased lifespan and the high prevalence of obesity worldwide have quadrupled the number of adults living with DM from 108 million in 1980 to 422 million in 2014.4 Globally, DM accounts for 1.9% of total disability-adjusted life years5 and approximately 30% of hospitalized adult patients with DM had two or more readmissions within the next calendar year.6 Complications from diabetes are a serious threat to healthcare systems and also one of the top 10 causes of public hospital readmissions worldwide.7 In 2017, the hospitalization cost of patients with DM in the USA was $123 billion. Based on a 20% readmission rate, it was estimated that $24.6 billion would be attributed to 30-day readmission.8 9 Patients with DM represent one-fifth of the overall 30-day hospital readmissions although some may be preventable through better continuity of care.10 Systematic reviews (SR) of DM have mainly focused on the relationship between glycemic control and surgical outcomes11 12 and the economic cost to the health system.13 To our knowledge, no SR with meta-analysis (MA) has been conducted to evaluate the effect of patient characteristics on hospital readmission among adult patients with DM. Current literature suggests conflicting results in common risk factors such as gender with some studies showing a significant effect14 15 while others demonstrating no evidence of relationship.16 Patient characteristics such as gender, age, race, and comorbidities may affect the outcomes of self-management. Thus, the US National Standards for Diabetes Self-Management Education and Support Task Force emphasizes their importance17 in self-management education (SME), to achieve better control of glycated hemoglobin (HbA1c) levels and reduce macrovascular complications of DM.18 The primary objective of this SR with MA is to synthesize evidence concerning the association between 30-day unplanned hospital readmissions and patient characteristics (namely gender, age and race), affordability of medical insurance (as a proxy measurement of socioeconomic status (SES)), comorbidities, diabetes-related medications and inpatient factors such as length of stay (LOS) of index admission in adult patients with T1DM or T2DM.

Method

The protocol for this review was developed in accordance with the structure of the Preferred Reporting Items for Systematic Review and Meta-Analysis Protocols19 and registered with PROSPERO (reference number: CRD42019132375).

Search strategy

The first reviewer (JGSS) conducted a systematic and comprehensive search of Embase (online supplementary appendix 1), MEDLINE (Ovid SP (online supplementary appendix 2)), and Cumulative Index to Nursing and Allied Health Literature (CINAHL (online supplementary appendix 3)) with the assistance of a university-based medical librarian experienced in online database searching. The search was restricted to full-text journal articles in the English language as excluding studies in other languages does not lead to any bias.20 An SR found no evidence to support previous speculation that positive results tend to be published in English and negative results in non-English language journals.20 Social determinants of health such as SES and patient characteristics are associated with health outcomes21 but such association may vary over time and locations. Therefore, we did not specify a particular publication period or origin from a specific geographical area. We used Medical Subject Headings (MeSH) terms in MEDLINE (Ovid SP) and ‘Emtree’ in Embase (as it has similar features to MeSH) to conduct the search. Emtree subject headings like ‘diabetes mellitus’ were explored with other relevant search terms such as ‘readmission’ and ‘rehospitalization’. A similar search strategy was also applied to identify relevant studies in other medical databases. A complete list of search strategies for all databases is provided in online supplementary materials.

Study design and selection criteria

We included both cohort and case–control studies reporting the association between patient characteristics and comorbidities with 30-day unplanned hospital readmission. Interventional studies evaluating the effect of an intervention on readmission are excluded. Further exclusions include editorials, commentaries, conference proceedings, case reports, case series, qualitative studies, secondary research and gray literature such as unpublished data and government regulatory documents. The latter represents only a small proportion and rarely impacts on the findings of a review.22 The study participants were restricted to adults aged 18 years and above. Both T1DM and T2DM were included while gestational diabetes was excluded from the study. The outcome is 30-day unplanned hospital readmission, which is internationally recognized as a performance indicator of hospital care.23

Data management and extraction

The final search results yielded 1179 records from all the selected databases, which were merged in EndNote library (figure 1). Two hundred and eleven duplicate studies were removed, and the remaining articles were exported to Covidence (Veritas, Health Innovation, Melbourne),24 an SR management tool. A further 54 duplicates were identified, leaving 914 studies for screening. We used Covidence to streamline titles, screen abstracts, review full texts, select studies, assess risk bias, record study characteristics, extract and export data to RevMan V.5.3 (Nordic Cochrane Centre, Copenhagen).25 The latter was used for data analysis.
Figure 1

Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) flowchart of database search and study selection.

Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) flowchart of database search and study selection.

Selection process

The first (JGSS) and the second (WPW) reviewers independently screened the titles and abstracts of the imported articles published between 1998 and 2018 according to the predefined eligibility criteria. They discussed and resolved nine discrepancies during screening for full-text review. The Newcastle-Ottawa Scale (NOS) was used to evaluate the quality of the papers and assess risk of bias of the selected studies for MA.26 The NOS contains eight items in three broad domains: selection of the study groups, comparability of the study groups, and ascertainment of either the exposure or outcome of interest.26 The possible scores ranged from 0 to 9, with a score ≥7 generally regarded as low risk of bias.26 Consensus was reached at each phase before exporting the data to RevMan V.5.3. In seven studies where the number of cases pertaining to the outcome of interest was not available, the authors were contacted to provide the details.

Type of risk factors

Three demographic variables were considered as important baseline patient characteristics (namely gender, age and race) while health insurance type was regarded as a key social factor. The most commonly reported comorbid conditions such as heart failure, respiratory disease, depression, renal disease and hypertension were also of interest. LOS of index hospitalization (days) was frequently described and presented as a continuous variable in relation to readmission. Among all types of DM medications, insulin was the most commonly reported. Age was dichotomized into <65 and ≥65 years, a convention and universal cut-off to define old age.27 A variety of non-White races were included in the selected articles but with low frequencies; we therefore classified race as White versus non-White and excluded unknown race to avoid any misrepresentation of the overall effect. We compared Medicare and/or Medicaid versus private insurance (including Health Maintenance Organization, Preferred Provider Organization, Fee-for-Service, Point of Service Plans and any other commercial insurance). Data accuracy for the pooled analyses was verified and confirmed by both reviewers. All outcomes were presented using the OR and its 95% CI with the pooled estimate obtained based on T1DM and T2DM combined as presented in most studies.

Assessment of heterogeneity and publication bias

The study subjects of the selected articles were clinically heterogeneous. For example, some studies evaluated both patients with T1DM and T2DM while others focused solely on patients with T2DM. The duration of the data collection period varied from 1 to 15 years across the selected studies. Thus, a random effects model was used to estimate the overall effect in the pooled analysis. This assumes that the studies represented a random sample from a larger population, with each study having its own underlying effect size and study-specific OR. Publication bias was evaluated by visually assessing the funnel plot when there were at least 10 studies included in the MA.28 In addition, the Egger regression test was performed, where a p value <0.1 was specified to indicate publication bias.29

Results

We screened 914 studies and 879 were deemed as irrelevant to the review questions and hence excluded from the full-text review (figure 1). We further excluded 12 studies which did not include the outcome of interest, were of inappropriate designs or involved duplicates. Thus, 23 articles were included for SR (qualitative synthesis) and 18 studies were included in the MA (quantitative synthesis). The respective reasons for exclusion are listed in figure 1.

Characteristics of studies

The characteristics of the included studies are summarized in table 1. The publication year ranged from 1998 to 2018 and nearly 90% of the studies were published in the last 10 years. Except for two case–control studies,14 30 the rest were retrospective cohort studies.9 10 15 16 31–47 The mean NOS score of the 21 cohort studies as assessed by the two independent reviewers was 8.3 and 7.9, respectively, suggesting that the articles were of good quality.48 Both assessors gave a mean score of 8.0 for the case–control studies. Twenty-one studies were conducted in the USA, with one each from the UK and Australia.
Table 1

Characteristics of studies identifying significant risk factor for patients with diabetes

First authorYearTypes of diabetesSample sizeCountryStudy designVariables (n)
AssessedSignificant
Bennett 312012T1DM and T2DM1 792 826USARetrospective cohort study117
Caughey 322017T1DM and T2DM848AustraliaRetrospective cohort study93
Chen162012T1DM and T2DM30 139USARetrospective cohort study3716
Chen332017T1DM and T2DM115 221USARetrospective cohort study2912
Chin341998T1DM and T2DM1376USARetrospective cohort study40
Collins352017T2DM63 237USARetrospective cohort study—development of risk prediction model1514
Eby362015T2DM52 070USARetrospective cohort study3914
Emons372016T1DM and T2DM4476USARetrospective cohort study2012
Enomoto142017T2DM1 080 580USACase–control study2115
Jiang382005T1DM and T2DM130 751USARetrospective cohort study30
Karunakaran392018T1DM and T2DM17 284USARetrospective cohort study—development of risk prediction model4827
Lin402015T2DM161 174USARetrospective cohort study15Not reported*
Lipska412014T1DM and T2DM33 952 331USARetrospective cohort study—12-year trend analysis24Not reported*
McCoy432017T1DM and T2DM342 186USARetrospective cohort study107
McCoy422018T1DM and T2DM11 161USARetrospective cohort study278
Nishino442015T1DM and T2DM174 932UKRetrospective cohort study2613
Raval452015T2DM202 496USARetrospective cohort study2110
Robbins152006T1DM and T2DM88 776USARetrospective cohort study115
Rubin102016T1DM and T2DM17 248USARetrospective cohort study—development of risk prediction model4610
Rubin92018T1DM and T2DM42 800USARetrospective cohort study—development of risk prediction model157
Sonmez302017T1DM and T2DM102 694USACase–control study33
Takahashi462015T2DM5731USARetrospective cohort study40
Wei472013T2DM1949USARetrospective cohort study72

The variables are significant in multivariable analysis.

*These studies were only included in the systematic review, as statistical significance was not formally evaluated and they did not provide sufficient information to be included in the meta-analysis.

T1DM, type 1 diabetes mellitus; T2DM, type 2 diabetes mellitus.

Characteristics of studies identifying significant risk factor for patients with diabetes The variables are significant in multivariable analysis. *These studies were only included in the systematic review, as statistical significance was not formally evaluated and they did not provide sufficient information to be included in the meta-analysis. T1DM, type 1 diabetes mellitus; T2DM, type 2 diabetes mellitus.

Characteristics of patients

The age of all patients was at least 18 years. In particular, there were six studies16 31–35 which included patients above 85 years of age. The studies identified patients from either electronic health records (n=711 109) or administrative healthcare claims databases (n=37 681 177). The International Classification of Diseases, Ninth Revision (ICD-9) 250 code series was commonly used to define DM. However, an Australian study32 used the ICD-10, with modification. Two studies31 44 did not explicitly state how diagnosis of diabetes was ascertained, although data sources were mentioned. Most studies included both T1DM and T2DM (n=36 825 049), except seven studies14 35 36 40 45–47 which focused solely on T2DM (n=1 567 237). Nearly half of the studies from the USA9 10 14 15 36–40 43 comprised commercially insured, Medicare, and Medicaid patients; six studies31 33–35 41 45 exclusively included Medicare beneficiaries and one study16 involved privately insured patients. The Australian study32 included only subsidized veterans, war widows or widowers and a study in UK44 encompassed patients under the National Health Service with information on the Index of Multiple Deprivation.49

SR of 23 studies

The prevalence of 30-day hospital readmission in 13 of the selected studies ranged widely from 10% to 24.6%32 36 with 11 studies9 10 14–16 30 34 35 39 41 47 reporting a prevalence of at least 15%. Risk factors reported in these studies included key demographics, associated comorbidities and DM-related treatments. One study40 that combined different types of comorbidities was excluded in the MA because pooled analysis of separate comorbidities for 30-day hospital readmission was not possible. Nevertheless, it was noted that most of the 30-day hospital readmissions included a combination of comorbidities such as hypertension and renal disease. Three studies provided only subgroup estimates of 30-day readmission by: high versus moderate versus low-density neighborhood,33 hyperglycemia versus hypoglycemia,41 and optimal control of low-density lipoprotein cholesterol, blood pressure and HbA1c versus non-optimal control.46 There was no difference in 30-day hospital readmission between the above-mentioned subgroups in two of the studies41 46 while Chen et al33 found an increased risk of 30-day hospital readmission among the African–Americans in moderate or high-density neighborhoods as compared with White race. We excluded these three studies33 41 46 from subsequent MA as they did not provide relevant risk estimates for the entire study population. We further excluded another study42 which was a subset of a previously selected study.43

MA of 18 studies

The funnel plot for gender was asymmetric but that for race was not. The Egger regression test, however, did not suggest any evidence of publication bias (all p>0.1) for any of the risk factors under consideration.

Gender

The analysis of the effect of gender on 30-day readmission included 16 studies9 10 14–16 30 32 34–37 39 43–45 47 involving 2 163 777 adult patients with DM (1 032 472 males and 1 131 305 females). One study45 reported males having significantly lower risk than females in being readmitted within 30 days, while six studies9 16 32 34 37 43 did not show a significant gender effect. However, the overall pooled estimate (figure 2) found females to have a significantly lower risk of 30-day unplanned hospital readmission (OR=0.94, 95% CI 0.91 to 0.97).
Figure 2

Forest plot of 16 studies reporting gender as a risk factor.

Forest plot of 16 studies reporting gender as a risk factor.

Age

Due to the varying cut-offs in the studies, we were only able to include eight studies15 16 30 36–38 43 44 based on a cut-off at 65 years. There were 887 353 patients aged ≥65 years as compared with 608 471 patients aged <65 years. Although two studies15 37 suggested increased age was negatively associated with 30-day readmission, aged ≥65 years showed a significant positive association with 30-day hospital readmission in the pooled analysis (OR=1.23, 95% CI 1.08 to 1.40) (table 2).
Table 2

Pooled OR estimates of specific risk factors (%) and associated 95% CI

Risk factorStudies(n)CategorySubjects(n)Number with 30-day hospital readmissionPooled OR(95% CI)
Demographics
Gender16Female1 131 305148 1670.94 (0.91 to 0.97)
Male1 032 472156 109
Age8≥65887 353122 7101.23 (1.08 to 1.40)
<65608 47178 647
Race14White1 452 006198 3370.89 (0.84 to 0.94)
Non-White663 47599 747
Insurance type7Medicare and Medicaid589 37697 9761.41 (1.22 to 1.63)
Private insurance221 07829 042
Comorbidities
Heart failure4Yes917320521.81 (1.67 to 1.96)
No33 2834941
Respiratory disease8Yes135 28124 2031.33 (1.31 to 1.36)
No468 25766 317
Depression6Yes62 87110 5241.32 (1.20 to 1.45)
No441 23351 700
Renal disease4Yes84 59516 6711.69 (1.34 to 2.12)
No330 96644 477
Hypertension6Yes194 36530 2921.01 (0.98 to 1.03)
No114 34915 172
Diabetes-related medication
Insulin therapy5Yes272 42038 4401.45 (1.24 to 1.71)
No637 55470 684
Inpatient factor
Length of stay (days)31 996 9091.06 (1.01 to 1.12)
Pooled OR estimates of specific risk factors (%) and associated 95% CI

Race

Analysis of the pooled effect of race on 30-day hospital readmission included 14 studies9 10 14 15 31 34–37 39 43–45 47 involving 2 115 481 patients (1 452 006 White vs 663 475 non-White). One small study34 (n=1376) showed a very large relative risk reduction of 30-day readmission in White (OR=0.18, 95% CI 0.09 to 0.35). On the other hand, another study44 reported that being White is associated with increased risk of 30-day hospital readmission. The pooled estimate indicated a lower risk of 30-day unplanned hospital readmission in White as compared with non-White (OR=0.89, 95% CI 0.84 to 0.94).

Health insurance type

Seven studies9 10 14 15 36 37 39 based on 810 454 subjects (589 376 Medicare and/or Medicaid plan vs 221 078 private insurance) were included in the analysis of insurance type. Only one study9 presented a non-significant result. The pooled analysis demonstrated that patients under Medicare and/or Medicaid plan had a higher risk (OR=1.41, 95% CI 1.22 to 1.63) of being readmitted to the hospital within 30 days compared with those who were privately insured.

Comorbidities

Heart failure

Four studies14 16 32 37 involving 42 456 patients (9173 with heart failure vs 33 283 without heart failure) were available for the analysis. Heart failure was associated with a higher risk of being readmitted to hospital within 30 days (OR=1.81, 95% CI 1.67 to 1.96).

Respiratory disease

The analysis of respiratory disease was based on eight studies9 10 14 16 32 36 37 39 involving 603 538 patients. Two studies32 36 did not show a significant effect but the overall result demonstrated that respiratory disease was a significant predictor for 30-day unplanned hospital readmission (OR=1.33, 95% CI 1.31 to 1.36).

Depression

Six studies9 10 16 32 36 45 including a total of 504 104 adult patients with DM, involved 62 871 patients with depressive symptoms and 441 233 without depressive symptoms. Two studies32 36 did not show any association between depressive symptoms and DM. The overall pooled estimate indicated that depression was a significant risk factor of 30-day hospital readmission (OR=1.32, 95% CI 1.20 to 1.45).

Renal disease

For the analysis of renal disease, there were four studies14 16 32 36 including 415 564 patients. The overall effect suggested that renal disease was associated with an increased risk of being readmitted to hospital within 30 days (OR=1.69, 95% CI 1.34 to 2.12).

Hypertension

Six studies9 10 16 36 37 39 involving a total of 308 714 patients were included in the analysis of hypertension. The findings were inconclusive with two studies each suggesting a positive,16 37 negative9 36 or non-significant10 39 association between hypertension and readmission. Consequently, the overall pooled estimate showed that hypertension was not a significant risk factor of 30-day unplanned hospital readmission (OR=1.01, 95% CI 0.98 to 1.03).

Length of stay

Based on the result from the four available studies15 31 35 36 involving 1 996 909 patients, the pooled analysis showed that longer LOS during the index admission was associated with increased risk of 30-day hospital readmission (OR=1.06, 95% CI 1.01 to 1.12).

Insulin therapy

Five studies9 10 16 39 43 involving 909 974 patients were analyzed for the effect of insulin therapy. The pooled estimate demonstrated that insulin therapy was associated with increased risk of being readmitted to hospital within 30 days (OR=1.45, 95% CI 1.24 to 1.71).

Discussion

Identifying risk factors of 30-day unplanned hospital readmission among a heterogeneous diabetes population is important to healthcare professionals and policymakers when planning SME programs for more effective patient-centered health education. As there is no one-size-fits-all approach to managing diabetes, understanding these risk factors is crucial for providing individualized SME for each patient. This is the first SR with MA to demonstrate that gender, age, race, health insurance type, comorbidities including heart failure, respiratory disease, depression and renal disease, LOS as well as use of insulin therapy were significantly associated with 30-day unplanned hospital readmission. Our findings are consistent with those reported in a recent SR by Robbins et al,50 which did not quantify the effects of the risk factors. In contrast, we had specifically quantified the effect of four different comorbidities (namely heart failure, respiratory disease, depression, and renal disease) and other patient characteristics which were significantly associated with increased risk of 30-day hospital readmission among adult patients with DM.

Patient characteristics and social determinants

The observed reduction in risk of readmission in females may be explained by several factors. One study demonstrated that hospitalized female patients with DM had fewer microvascular complications.51 Apart from reporting better support from diabetes healthcare providers, and being more likely than men to receive SME,52 it has also been suggested that women were better than men in chronic disease management.53 Despite the significant gender differences in health outcomes, healthcare management plans do not take this into account.54 Given that men with DM have a higher risk of unplanned 30-day hospital readmission than women, resources should be used to understand how such risk may be mitigated. A possible reason for the positive association between age and the risk of 30-day hospital readmission was the associated medical morbidities among older patients.55 Elderly patients with chronic conditions may also have lower health literacy which potentially affects SME and increases the likelihood of unplanned hospital readmissions,56 thus emphasizing a need for resource allocation to this vulnerable group. However, such findings should be interpreted with caution because hospital readmission policies may also affect readmission rates. For example, in one study examining older men with heart failure and pneumonia, readmission rates in non-Veterans Affairs hospitals were lower than Veterans Affairs hospitals57 because Centers for Medicare and Medicaid Services imposed financial penalties on the former for overconsumption of health services. Belonging to the White race had a protective effect on 30-day hospital readmission suggesting health disparities between major and minor (non-White) ethnic groups. Generally, Black and Hispanic patients have been reported to receive less effective health services including diabetes monitoring than White patients.58 The minority races were also found to be disadvantaged in the US health system and were less likely to have insurance.59 Having a private insurance plan, an indicator of higher SES,60 was shown to have a protective effect on 30-day hospital readmission. Better self-management in DM has been shown to be significantly associated with higher SES61 and this may explain the lower readmission rates among the privately insured. This highlights the importance of universal health coverage to provide equal access to healthcare facilities. Racial disparities in healthcare access in the USA were significantly reduced after the Affordable Care Act health insurance was fully implemented in 2014.62 Healthcare practitioners should therefore be cognizant of the potential health disparities due to race, which may also be related to SES. Several studies have suggested the coexistence of heart failure and DM63 and the association between microvascular complications of DM and heart failure.64 Insulin resistance and the resulting hyperglycemia can lead to the development and progression of atherosclerotic lesions, the main causal factor of cardiovascular disease.65 The Atherosclerosis Risk in Communities Study66 has suggested myocardial damage in patients with DM, while the Framingham Heart Study has demonstrated a relationship between DM and poorer pulmonary function.67 The association between DM and poor prognosis in patients with respiratory diseases68 highlights the importance of maintaining good glycemic status to improve this adverse relationship.67 Although common causes of readmission among renal patients included abnormal glucose metabolism and hyperinsulinemia,69 adult patients with DM with renal disease might also be readmitted within 30 days for unplanned surgical procedure such as catheter vascular access.70 Thirty-day hospital readmission in patients with depression71 and uncontrolled hypertension may be attributed to poor self-care management such as medication non-adherence.72 In our study, however, we could not ascertain if the lack of association between hypertension and 30-day hospital readmission was related to medication non-adherence since such information was not reported in the selected studies. Many adult patients with DM have other concurrent long-term medical conditions such as heart failure, respiratory diseases, depression, and renal disease. The results of this MA suggest that these patients have a higher risk of readmission and they should therefore be monitored carefully.

Inpatient factor: LOS

Several studies73 74 demonstrated that extended LOS in the index admission predicted hospital readmission; we found a similar relationship in patients with DM. The associated treatment of comorbidities and diabetes complications74 requires a complex management and longer LOS. Notably, LOS is a reflection of disease complexity and severity. Current evidence suggests that nearly half of the patients who started insulin therapy had already developed diabetes-related complications.75 Thus, a 30-day unplanned hospital readmission could be related to underlying diabetic macrovascular and microvascular complications. On the other hand, compliance to insulin therapy is generally unsatisfactory76 with possible side effects such as hypoglycemia.77 The use of any insulin therapy is an important patient safety concern and our finding suggests that its use warrants a more vigilant monitoring, particularly among older patients.78

Further discussions of other limitations

Limitations of this study included the omission of known important risk factors such as the Diabetes Complications Severity Index and the Charlson Comorbidity Index. The information on these indices was not consistently captured in the different studies, thus posing difficulty for inclusion in the synthesis. In addition, more than two-thirds of the selected papers included both T1DM and T2DM without a separate breakdown of each type. Thus, subgroup analysis on the risk factors according to type of diabetes could not be performed. Owing to the nature of the respective diseases, T1DM and T2DM may have different 30-day readmission risk factors and this may warrant further investigation in future studies.

Conclusion

Although most of the identified risk factors such as being female, being aged ≥65 years, White, and having comorbidities like heart failure and renal disease are not modifiable, an understanding of their impact on disease outcomes is relevant to health professionals and policymakers for developing and updating clinical practice guidelines to reduce 30-day unplanned hospital readmission. Better management and monitoring of multiple comorbidities associated with diabetes is recommended to delay the progression of complications associated with DM, thus reducing the risk of 30-day unplanned hospital readmission.
  69 in total

Review 1.  2017 National Standards for Diabetes Self-Management Education and Support.

Authors:  Joni Beck; Deborah A Greenwood; Lori Blanton; Sandra T Bollinger; Marcene K Butcher; Jo Ellen Condon; Marjorie Cypress; Priscilla Faulkner; Amy Hess Fischl; Theresa Francis; Leslie E Kolb; Jodi M Lavin-Tompkins; Janice MacLeod; Melinda Maryniuk; Carolé Mensing; Eric A Orzeck; David D Pope; Jodi L Pulizzi; Ardis A Reed; Andrew S Rhinehart; Linda Siminerio; Jing Wang
Journal:  Diabetes Care       Date:  2017-07-28       Impact factor: 19.112

2.  DEVELOPMENT AND VALIDATION OF A NOVEL TOOL TO PREDICT HOSPITAL READMISSION RISK AMONG PATIENTS WITH DIABETES.

Authors:  Daniel J Rubin; Elizabeth A Handorf; Sherita Hill Golden; Deborah B Nelson; Marie E McDonnell; Huaqing Zhao
Journal:  Endocr Pract       Date:  2016-10       Impact factor: 3.443

3.  For Selected Services, Blacks And Hispanics More Likely To Receive Low-Value Care Than Whites.

Authors:  William L Schpero; Nancy E Morden; Thomas D Sequist; Meredith B Rosenthal; Daniel J Gottlieb; Carrie H Colla
Journal:  Health Aff (Millwood)       Date:  2017-06-01       Impact factor: 6.301

4.  Hospital Readmissions among Commercially Insured and Medicare Advantage Beneficiaries with Diabetes and the Impact of Severe Hypoglycemic and Hyperglycemic Events.

Authors:  Rozalina G McCoy; Kasia J Lipska; Jeph Herrin; Molly M Jeffery; Harlan M Krumholz; Nilay D Shah
Journal:  J Gen Intern Med       Date:  2017-07-06       Impact factor: 5.128

5.  New bundled world: quality of care and readmission in diabetes patients.

Authors:  Judy Y Chen; Qiufei Ma; Hua Chen; Irina Yermilov
Journal:  J Diabetes Sci Technol       Date:  2012-05-01

6.  Relationship of depression and diabetes self-care, medication adherence, and preventive care.

Authors:  Elizabeth H B Lin; Wayne Katon; Michael Von Korff; Carolyn Rutter; Greg E Simon; Malia Oliver; Paul Ciechanowski; Evette J Ludman; Terry Bush; Bessie Young
Journal:  Diabetes Care       Date:  2004-09       Impact factor: 19.112

7.  Characteristics of men and women with diabetes: observations during patients' initial visit to a diabetes education centre.

Authors:  Enza Gucciardi; Shirley Chi-Tyan Wang; Margaret DeMelo; Lina Amaral; Donna E Stewart
Journal:  Can Fam Physician       Date:  2008-02       Impact factor: 3.275

Review 8.  Measurement of socioeconomic status in health disparities research.

Authors:  Vickie L Shavers
Journal:  J Natl Med Assoc       Date:  2007-09       Impact factor: 1.798

9.  Hospital readmission in general medicine patients: a prediction model.

Authors:  Omar Hasan; David O Meltzer; Shimon A Shaykevich; Chaim M Bell; Peter J Kaboli; Andrew D Auerbach; Tosha B Wetterneck; Vineet M Arora; James Zhang; Jeffrey L Schnipper
Journal:  J Gen Intern Med       Date:  2009-12-15       Impact factor: 5.128

10.  Newcastle-Ottawa Scale: comparing reviewers' to authors' assessments.

Authors:  Carson Ka-Lok Lo; Dominik Mertz; Mark Loeb
Journal:  BMC Med Res Methodol       Date:  2014-04-01       Impact factor: 4.615

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  9 in total

1.  Acceptance and Effect of Continuous Glucose Monitoring on Discharge From Hospital in Patients With Type 2 Diabetes: Open-label, Prospective, Controlled Study.

Authors:  Barbara Depczynski; Ann Poynten
Journal:  JMIR Diabetes       Date:  2022-05-09

2.  Magnitude and predictors of hospital admission, readmission, and length of stay among patients with type 2 diabetes at public hospitals of Eastern Ethiopia: a retrospective cohort study.

Authors:  Lemma Demissie Regassa; Assefa Tola
Journal:  BMC Endocr Disord       Date:  2021-04-19       Impact factor: 2.763

3.  The effect of home care on readmission and mortality rate in patients with diabetes who underwent general surgeries.

Authors:  Lila Faridani; Parvaneh Abazari; Maryam Heidarpour; Hamid Melali; Mojtaba Akbari
Journal:  J Educ Health Promot       Date:  2021-11-30

4.  Geographic Disparities in Readmissions for Peripheral Artery Disease in South Carolina.

Authors:  Brian Witrick; Corey A Kalbaugh; Lu Shi; Rachel Mayo; Brian Hendricks
Journal:  Int J Environ Res Public Health       Date:  2021-12-28       Impact factor: 3.390

5.  Effects of routinely collected health information system variables on the readmission of patients with type 2 diabetes.

Authors:  Sulaiman M Bah; Anwar B Alibrahem; Ayat J Alshawi; Hameeda H Almuslim; Hessa A Aldossary
Journal:  J Taibah Univ Med Sci       Date:  2021-08-27

Review 6.  Predicting and Preventing Acute Care Re-Utilization by Patients with Diabetes.

Authors:  Daniel J Rubin; Arnav A Shah
Journal:  Curr Diab Rep       Date:  2021-09-04       Impact factor: 4.810

7.  Associations Between Implementation of the Caregiver Advise Record Enable (CARE) Act and Health Service Utilization for Older Adults with Diabetes: Retrospective Observational Study.

Authors:  Yaguang Zheng; Bonnie Anton; Juleen Rodakowski; Stefanie C Altieri Dunn; Beth Fields; Jacob C Hodges; Heidi Donovan; Connie Feiler; Grant Martsolf; Andrew Bilderback; Susan C Martin; Dan Li; Alton Everette James
Journal:  JMIR Aging       Date:  2022-06-21

8.  Predicting and Validating 30-day Hospital Readmission in Adults With Diabetes Whose Index Admission Is Diabetes-related.

Authors:  Jade Gek Sang Soh; Amartya Mukhopadhyay; Bhuvaneshwari Mohankumar; Swee Chye Quek; Bee Choo Tai
Journal:  J Clin Endocrinol Metab       Date:  2022-09-28       Impact factor: 6.134

9.  Predictors of Rehospitalization and Mortality in Diabetes-Related Hospital Admissions.

Authors:  Milena Kozioł; Iwona Towpik; Michał Żurek; Jagoda Niemczynowicz; Małgorzata Wasążnik; Yaroslav Sanchak; Waldemar Wierzba; Edward Franek; Magdalena Walicka
Journal:  J Clin Med       Date:  2021-12-12       Impact factor: 4.241

  9 in total

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