| Literature DB >> 31308002 |
Kathryn Nicholson1, Amanda L Terry2, Martin Fortin3, Tyler Williamson4, Michael Bauer5, Amardeep Thind2.
Abstract
BACKGROUND: Multimorbidity is a complex issue in modern medicine and a more nuanced understanding of how this phenomenon occurs over time is needed. AIM: To determine the prevalence, characteristics, and patterns of patients living with multimorbidity, specifically the unique combinations (unordered patterns) and unique permutations (ordered patterns) of multimorbidity in primary care. DESIGN ANDEntities:
Keywords: electronic medical records; epidemiology; longitudinal study; multimorbidity; multiple chronic conditions; primary care
Mesh:
Year: 2019 PMID: 31308002 PMCID: PMC6715467 DOI: 10.3399/bjgp19X704657
Source DB: PubMed Journal: Br J Gen Pract ISSN: 0960-1643 Impact factor: 5.386
Figure 1.
Characteristics of all adult primary care patients and those primary care patients with multimorbidity, defined as at least two chronic conditions (MM2+) or at least three chronic conditions (MM3+)
| Mean (SD) | 52.3 (18.3) | 59.0 (17.0) | 62.7 (15.9) |
| Range | 18–114 | 18–114 | 18–114 |
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| 18–34 | 74 539 (20.3) | 17 466 (8.9) | 6119 (5.0) |
| 35–44 | 61 783 (16.8) | 23 855 (12.2) | 10 719 (8.8) |
| 45–64 | 134 550 (36.6) | 79 571 (40.6) | 48 254 (39.6) |
| 65–84 | 77 816 (21.2) | 60 696 (31.0) | 45 961 (37.7) |
| ≥85 | 19 055 (5.2) | 14 250 (7.3) | 10 811 (8.9) |
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| Female | 213 402 | 113 209 (57.8) | 71 319 (58.5) |
| Male | 154 311 | 82 629 (42.2) | 50 545 (41.5) |
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| Rural | 59 740 (16.3) | 32 607 (16.7) | 22 274 (18.3) |
| Urban | 207 192 (56.3) | 102 151 (52.2) | 65 026 (53.4) |
| Missing | 100 811 (27.4) | 61 080 (31.2) | 34 564 (28.4) |
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| Median (IQR) | 60 130 (12 497) | 60 952 (12 497) | 61 175 (12 497) |
| Range | 22 457–181 454 | 22 457–181 454 | 22 457–181 454 |
| Missing, | 100 811 (27.4) | 61 263 (31.3) | 34 662 (28.4) |
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| Mean (SD) | 2.0 (1.8) | 3.3 (1.5) | 4.2 (1.4) |
| Range | 0–14 | 2–14 | 3–14 |
There were missing data for sex for 30 patients (0.0%), but there was no missing data for sex for patients with MM2+ and patients with MM3+. IQR = Interquartile range.
Figure 2.
Figure 3.
Most frequent unique combination clusters for patients with MM2+, stratified by total number of chronic diseases and by sex
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| 1 | AD — OB | 3991 (3.5) | HT — OB | 3866 (4.7) | AD — MP — OB | 1621 (1.4) | HL — HT — OB | 1389 (1.7) |
| 2 | MP — OB | 3837 (3.4) | MP — OB | 3580 (4.3) | HT — MP — OB | 1019 (0.9) | DB — HT — OB | 1226 (1.5) |
| 3 | HT — OB | 3491 (3.1) | AD — OB | 2431 (2.9) | DB — HT — OB | 869 (0.8) | HT — MP — OB | 1061 (1.3) |
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| 1 | AD — OB | 1197 (10.4) | AD — OB | 713 (12.0) | AD — MP — OB | 373 (3.2) | AD — MP — OB | 171 (2.9) |
| 2 | MP — OB | 817 (7.1) | MP — OB | 648 (10.9) | AD — CA — OB | 205 (1.8) | CA — MP — OB | 67 (1.1) |
| 3 | AD — MP | 608 (5.3) | AD — MP | 422 (7.1) | AD — COPDA — OB | 131 (1.1) | AD — CA — OB | 60 (1.0) |
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| 1 | AD — OB | 1140 (7.7) | MP — OB | 932 (10.2) | AD — MP — OB | 483 (3.3) | AD — MP — OB | 241 (2.6) |
| 2 | MP — OB | 1034 (7.0) | AD — OB | 653 (7.2) | AD — CA — OB | 234 (1.6) | HT — MP — OB | 127 (1.4) |
| 3 | CA — OB | 654 (4.4) | HT — OB | 479 (5.3) | CA — MP — OB | 170 (1.2) | CA — MP — OB | 122 (1.3) |
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| 1 | MP — OB | 1693 (3.8) | HT — OB | 1999 (5.7) | AD — MP — OB | 680 (1.5) | HL — HT — OB | 785 (2.3) |
| 2 | HT — OB | 472 (1.1) | MP — OB | 1725 (4.9) | HT — MP — OB | 551 (1.2) | HT — MP — OB | 605 (1.7) |
| 3 | AD — OB | 404 (0.9.) | HL — OB | 1310 (3.8) | CA — MP — OB | 426 (1.0) | DB — HT — OB | 559 (1.6) |
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| 1 | HT — OB | 1181 (3.6) | HT — OB | 1092 (4.0) | DB — HT — OB | 427 (1.3) | DB — HT — OB | 536 (2.0) |
| 2 | DB — OB | 146 (0.4) | DB — OB | 678 (2.5) | HL — HT — OB | 386 (1.2) | HL — HT — OB | 468 (1.7) |
| 3 | CA — OB | 343 (1.0) | CA — OB | 377 (1.4) | HT — MP — OB | 292 (0.9) | CA — HT — OB | 262 (1.0) |
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| 1 | HT — OB | 212 (2.4) | CA — HT | 42 (0.8) | DB — HT — OB | 59 (0.7) | DB — HT — OB | 53 (1.0) |
| 2 | DE — HT | 151 (1.7) | HT — OB | 41 (0.8) | HT — OB — ORA | 54 (0.6) | CD — HT — OB | 38 (0.7) |
| 3 | CD — HT | 126 (1.4) | CD — HT | 36 (0.7) | CA — HT — OB | 53 (0.6) | CA — HT — OB | 29 (0.5) |
Including data points where the time elapsing between chronic condition diagnoses was 0 days.
Rank indicates that the combinations are listed in order of frequency (starting with most frequent).
Combinations presented in alphabetical order.
Proportion of age group. AD = Anxiety or Depression. CA = Cancer. CD = Cardiovascular Disease. COPDA = Chronic Obstructive Pulmonary Disease or Asthma. DB = Diabetes. DE = Dementia. HL = Hyperlipidemia. HT = Hypertension. MP = Musculoskeletal Problem. OB = Obesity. ORA = Osteoarthritis or Rheumatoid Arthritis. The hyphens between conditions are used to identify combinations (unordered patterns).
Most frequent unique permutation clusters for patients with MM2+, stratified by total number of chronic conditions and by sex
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| 1 | AD ➔ OB | 1160 (2.4) | MP ➔ OB | 1051 (3.5) | AD ➔ OB ➔ MP | 177 (0.4) | HT ➔ OB ➔ HL | 675 (2.2) |
| 2 | MP ➔ OB | 1094 (2.3) | HT ➔ OB | 1179 (3.9) | MP ➔ OB ➔ AD | 176 (0.4) | HT ➔ OB ➔ MP | 374 (1.2) |
| 3 | AD ➔ MP | 909 (1.9) | AD ➔ OB | 1132 (3..8) | AD ➔ MP ➔ OB | 161 (0.3) | DB ➔ OB ➔ HT | 365 (1.2) |
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| 1 | AD ➔ OB | 388 (7.0) | MP ➔ OB | 443 (16.9) | MP ➔ OB ➔ AD | 41 (0.7) | AD ➔ OB ➔ MP | 157 (6.0) |
| 2 | AD ➔ MP | 249 (4.5) | AD ➔ OB | 397 (15.1) | AD ➔ OB ➔ MP | 41 (0.7) | AD ➔ MP ➔ OB | 67 (3.0) |
| 3 | MP ➔ OB | 245 (4.4) | AD ➔ MP | 253 (9.7) | MP ➔ AD ➔ OB | 37 (0.7) | MP ➔ AD ➔ OB | 61 (2.3) |
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| 1 | AD ➔ OB | 327 (4.8) | MP ➔ OB | 497 (14..0) | AD ➔ MP ➔ OB | 57 (0.8) | AD ➔ OB ➔ MP | 203 (5.7) |
| 2 | MP ➔ OB | 318 (4.7) | AD ➔ OB | 333 (9.2) | AD ➔ OB ➔ MP | 51 (0.8) | MP ➔ OB ➔ AD | 115 (3.2) |
| 3 | AD ➔ MP | 256 (3.8) | MP ➔ AD | 330 (9.2) | MP ➔ OB ➔ AD | 48 (0.7) | MP ➔ AD ➔ OB | 76 (2.1) |
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| 1 | MP ➔ OB | 456 (2.5) | MP ➔ OB | 674 (5.4) | HT ➔ OB ➔ MP | 87 (0.5) | HT ➔ OB ➔ HL | 291 (2.4) |
| 2 | AD ➔ OB | 400 (2.2) | HT ➔ OB | 472 (3.8) | AD ➔ OB ➔ MP | 80 (0.4) | MP ➔ OB ➔ HL | 205 (1.7) |
| 3 | AD ➔ MP | 365 (2.0) | AD ➔ OB | 404 (3.3) | MP ➔ OB ➔ AD | 78 (0.4) | MP ➔ OB ➔ HT | 162 (1.3) |
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| 1 | HT ➔ OB | 322 (2.5) | HT ➔ OB | 323 (3.3) | HT ➔ OB ➔ HL | 48 (0.4) | DB ➔ OB ➔ HT | 129 (1.3) |
| 2 | HT ➔ MP | 102 (0.8) | DB ➔ OB | 158 (1.7) | HT ➔ OB ➔ MP | 46 (0.4) | HT ➔ OB ➔ MP | 100 (1.0) |
| 3 | HT ➔ HL | 98 (0.8) | HT ➔ HL | 147 (1.6) | DB ➔ OB ➔ HT | 42 (0.3) | HT ➔ OB ➔ HL | 97 (1.0) |
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| 1 | HT ➔ OB | 62 (1.6) | HT ➔ OB | 76 (3.4) | HT ➔ OB ➔ ORA | 15 (0.4) | DB ➔ OB ➔ HT | 31 (1.4) |
| 2 | HT ➔ DE | 53 (1.4) | HT ➔ CA | 69 (3.1) | HT ➔ OB ➔ CA | 14 (0.4) | HT ➔ OB ➔ MP | 26 (1.2) |
| 3 | HT ➔ CD | 44 (1.2) | HT ➔ CD | 63 (2.9) | HT ➔ OB ➔ MP | 12 (0.3) | HT ➔ OB ➔ CA | 21 (1.0) |
Excluding data points where the time elapsing between chronic condition diagnoses was zero days.
Rank indicates that the permutations are listed in order of frequency (starting with most frequent).
Permutations presented in temporal order.
Proportion of age group and results representing <5 patients within age group supressed. AD = Anxiety or Depression. CA = Cancer. CD = Cardiovascular Disease. DB = Diabetes. DE = Dementia. HL = Hyperlipidemia. HT = Hypertension. MP = Musculoskeletal Problem. OB = Obesity. ORA = Osteoarthritis or Rheumatoid Arthritis. The arrows between conditions are used to identify permutations (ordered patterns).
How this fits in
| There is a need to examine how multimorbidity develops over time to create a more nuanced understanding of this phenomenon. This study found that the largest proportion of patients with multimorbidity were aged <65 years, giving further support to the argument that multimorbidity is no longer just an issue for older patients and it must also be appropriately managed among younger patients. The study also found that the patterns of multimorbidity represented increasingly unique combinations and permutations, particularly as patient age and total number of chronic diseases increased, which builds from the international literature using a more in-depth analysis and describing a profile of multimorbidity using longitudinal clinical data. This research may lead to new approaches for improving the delivery of care for complex patients with multimorbidity, refocusing biomedical research on co-occurring chronic diseases, and informing more effective interventions for multimorbidity management and prevention. |