| Literature DB >> 25091637 |
Courtney Hebert1, Chaitanya Shivade, Randi Foraker, Jared Wasserman, Caryn Roth, Hagop Mekhjian, Stanley Lemeshow, Peter Embi.
Abstract
BACKGROUND: Readmissions after hospital discharge are a common occurrence and are costly for both hospitals and patients. Previous attempts to create universal risk prediction models for readmission have not met with success. In this study we leveraged a comprehensive electronic health record to create readmission-risk models that were institution- and patient- specific in an attempt to improve our ability to predict readmission.Entities:
Mesh:
Year: 2014 PMID: 25091637 PMCID: PMC4136398 DOI: 10.1186/1472-6947-14-65
Source DB: PubMed Journal: BMC Med Inform Decis Mak ISSN: 1472-6947 Impact factor: 2.796
Figure 1Inclusion and exclusion criteria for derivation and random sample validation cohorts.
Characteristics of the study population
| 577 (16.2%) | 311 (17.7%) | 64 (16.2%) | |
| | | | |
| Age, median (IQR) | 61 (51–72) | 62 (52–73) | 61 (52–71) |
| Gender, Female (%) | 1541 (43.1%) | 759 (43.2%) | 162 (40.9%) |
| Marital status, single* (%) | 2023 (56.6%) | 988 (56.3%) | 203 (51.3%) |
| Race, Black† (%) | 1090 (30.5%) | 497 (28.3%) | 130 (32.8%) |
| Distance from the zip code centroid to hospital, miles [median, (IQR)] | 9.6 (4.6–46.2) | 12 (4.6–53.6) | 9.4 (4.6–46.2) |
| | | | |
| Charlson Score‡, median (IQR) | 3 (1–4) | 3 (2–5) | 3 (2–4) |
| Solid tumor | 192 (5.4%) | 104 (5.9%) | 27 (6.8%) |
| Other neurologic disease | 185 (5.2%) | 95 (5.4%) | 18 (4.6%) |
| Hypertension | 2,533 (70.9%) | 1,239 (70.6%) | 289 (73.0%) |
| Lymphoma | 86 (2.4%) | 46 (2.6%) | 8 (2.0%) |
| Abnormal weight loss | 231 (6.5%) | 94 (5.4%) | 34 (8.6%) |
| Obesity | 550 (15.4%) | 258 (14.7%) | 67 (16.9%) |
| Liver disease | 154 (4.3%) | 61 (3.5%) | 18 (4.6%) |
| Peripheral vascular disease | 286 (8.0%) | 184 (10.5%) | 45 (11.4%) |
| Arrhythmia | 1,149 (32.2%) | 722 (41.1%) | 145 (36.6%) |
| Metastatic cancer | 106 (3.0%) | 74 (4.2%) | 15 (3.8%) |
| | | | |
| Length of stay, median (IQR) | 4 (2–7) | 4 (3–8) | 4 (2–7) |
| Inpatient visit within the last 30 days | 379 (10.6%) | 181 (10.3%) | 45 (11.4%) |
| ED visit within the prior 30 days | 167 (4.7%) | 94 (5.4%) | 18 (4.6%) |
| Number of discharge medications | 12 (8–16) | 12 (8–16) | 12 (8–16) |
| 1047 (29.3%) | 594 (33.8%) | 119 (30.1%) | |
| 1354 (37.9%) | 610 (34.7%) | 148 (37.4%) | |
| 1171 (32.8%) | 552 (31.4%) | 129 (32.6%) |
Abbreviations: IQR interquartile range, ED emergency department, AMI acute myocardial infarction, CHF congestive heart failure, PNA pneumonia.
*Single includes single, widowed, divorced and separated.
†Versus not black.
‡Calculated only using ICD-9 data from the index encounter.
Figure 2Variables included in final regression models for each comorbid condition. *Based on the enhanced ICD-9 coding of the Elixhauser comorbidity classification [29]. Hypertension combines hypertension, uncomplicated with complicated. Only used data from index encounter. †Versus not black. ‡At least once during the index hospitalization. §Excluding topical steroids. || Documented in the social history. **Single includes single, widowed, divorced and separated. ††Using ICD-9 procedure codes during index hospitalization.
Figure 3Percentage of patients readmitted in each predicted risk category in the random sample validation cohort.