| Literature DB >> 36109050 |
Danielle Newby1,2, Andrew Brent Linden3, Marco Fernandes4, Yasmina Molero5,6, Laura Winchester4, William Sproviero4, Upamanyu Ghose4, Qingqin S Li7, Lenore J Launer8, Cornelia M van Duijn3,9, Alejo J Nevado-Holgado4.
Abstract
INTRODUCTION: Type 2 diabetes is a risk factor for dementia and Parkinson's disease (PD). Drug treatments for diabetes, such as metformin, could be used as novel treatments for these neurological conditions. Using electronic health records from the USA (OPTUM EHR) we aimed to assess the association of metformin with all-cause dementia, dementia subtypes and PD compared with sulfonylureas. RESEARCH DESIGN AND METHODS: A new user comparator study design was conducted in patients ≥50 years old with diabetes who were new users of metformin or sulfonylureas between 2006 and 2018. Primary outcomes were all-cause dementia and PD. Secondary outcomes were Alzheimer's disease (AD), vascular dementia (VD) and mild cognitive impairment (MCI). Cox proportional hazards models with inverse probability of treatment weighting (IPTW) were used to estimate the HRs. Subanalyses included stratification by age, race, renal function, and glycemic control.Entities:
Keywords: Alzheimer Disease; Dementia; Diabetes Mellitus, Type 2; Neurology
Mesh:
Substances:
Year: 2022 PMID: 36109050 PMCID: PMC9478804 DOI: 10.1136/bmjdrc-2022-003036
Source DB: PubMed Journal: BMJ Open Diabetes Res Care ISSN: 2052-4897
Figure 1Flow diagram sample population for this study after inclusion and exclusion criteria. eGFR, estimated glomerular filtration rate; HbA1c, hemoglobin A1c; PCOS, polycystic ovary syndrome; PD, Parkinson’s disease.
Baseline characteristics of 112 591 patients over 50 years old with type 2 diabetes who were new users of either metformin or sulfonylureas between 2006 and 2018 before balancing of characteristics using inverse probability of treatment weighting (IPTW)
| Description | Metformin | Sulfonylureas | SMD (%) |
| n | 96 140 | 16 451 | |
| Gender (% male) | 46 107 (48.0) | 8439 (51.3) | 6.7 |
| Race (%) | 4.3 | ||
| African American | 9659 (10.0) | 1535 (9.3) | |
| Asian | 2394 (2.5) | 328 (2.0) | |
| Caucasian | 79 693 (82.9) | 13 853 (84.2) | |
| Other/unknown | 4394 (4.6) | 735 (4.5) | |
| Age at baseline (mean (SD)) | 65.65 (7.83) | 70.98 (8.71) | 64.4 |
| Age category: <75 years | 81 258 (84.5) | 9690 (58.9) | 59.3 |
| US region | 10.5 | ||
| Midwest (%) | 51 871 (54.0) | 9232 (56.1) | |
| Northeast (%) | 11 430 (11.9) | 2294 (13.9) | |
| South (%) | 24 678 (25.7) | 3706 (22.5) | |
| West (%) | 6153 (6.4) | 850 (5.2) | |
| Unknown (%) | 2008 (2.1) | 369 (2.2) | |
| eGFR (mean (SD)) | 88.47 (16.43) | 75.48 (21.73) | 67.4 |
| CKD group (%) | 67.2 | ||
| Stage 1 | 46 980 (48.9) | 4464 (27.1) | |
| Stage 2 | 44 276 (46.1) | 7708 (46.9) | |
| Stage 3 | 4884 (5.1) | 4279 (26.0) | |
| Smoking status (%) | 18.1 | ||
| Missing | 39 916 (41.5) | 8078 (49.1) | |
| Current | 7992 (8.3) | 1083 (6.6) | |
| Never | 24 377 (25.4) | 3197 (19.4) | |
| Previous | 23 855 (24.8) | 4093 (24.9) | |
| HbA1c (mean (SD)) | 6.76 (0.75) | 6.95 (0.83) | 24.3 |
| BMI (mean (SD)) | 33.46 (6.63) | 32.24 (6.60) | 18.6 |
| BMI group | 25.8 | ||
| Missing | 23 243 (24.2) | 5481 (33.3) | |
| Underweight (<20 kg/mg2) | 276 (0.3) | 86 (0.5) | |
| Normal (20–25 kg/mg2) | 4701 (4.9) | 1084 (6.6) | |
| Overweight (25–30 kg/mg2) | 18 766 (19.5) | 3302 (20.1) | |
| Obese (>30 kg/mg2) | 49 154 (51.1) | 6498 (39.5) | |
| HbA1c group | 27.3 | ||
| HbA1c: <7% (<53 mmol/mol) | 62 460 (65.0) | 8583 (52.2) | |
| HbA1c: 7%–8% (53–64 mmol/mol) | 26 245 (27.3) | 5721 (34.8) | |
| HbA1c: >8 (>64 mmol/mol) | 7435 (7.7) | 2147 (13.1) | |
| Length of follow-up in years (mean (SD)) | 3.02 (1.59) | 3.26 (1.60) | 15 |
| Year at first prescription (%) | 34.7 | ||
| 2007–2008 | 9016 (9.4) | 3190 (19.4) | |
| 2009–2010 | 13 001 (13.5) | 2696 (16.4) | |
| 2011–2012 | 21 752 (22.6) | 3748 (22.8) | |
| 2013–2014 | 30 202 (31.4) | 4325 (26.3) | |
| 2015–2016 | 22 169 (23.1) | 2492 (15.1) | |
| Number of outpatient visits prior to baseline (mean (SD)) | 24.36 (30.39) | 25.74 (34.85) | 4.2 |
| All-cause dementia (%) | 2256 (2.3) | 951 (5.8) | 17.5 |
| AD (%) | 754 (0.8) | 337 (2.1) | 11.1 |
| VD (%) | 349 (0.4) | 154 (1.0) | 7.5 |
| MCI (%) | 1414 (1.5) | 401 (2.6) | 7.5 |
| PD (%) | 625 (0.7) | 135 (0.8) | 2 |
| Hypertension (%) | 68 050 (70.8) | 11 601 (70.5) | 0.6 |
| COPD (%) | 5483 (5.7) | 1194 (7.3) | 6.3 |
| Chronic kidney disease (%) | 4655 (4.8) | 2740 (16.7) | 38.9 |
| Stroke/TIA (%) | 2147 (2.2) | 562 (3.4) | 7.1 |
| Heart attack (%) | 954 (1.0) | 224 (1.4) | 3.4 |
| Angina (%) | 11 081 (11.5) | 1898 (11.5) | 0 |
| Heart failure (%) | 2494 (2.6) | 1126 (6.8) | 20.1 |
| Atrial fibrillation (%) | 9636 (10.0) | 2256 (13.7) | 11.4 |
| Coronary artery disease (%) | 1844 (1.9) | 535 (3.3) | 8.4 |
| Substance abuse (%) | 1131 (1.2) | 176 (1.1) | 1 |
| Hyperlipidemia (%) | 69 957 (72.8) | 11 026 (67.0) | 12.5 |
| Head injury (%) | 537 (0.6) | 114 (0.7) | 1.7 |
| Arthritis (%) | 18 726 (19.5) | 3057 (18.6) | 2.3 |
| Major psychiatric disorders (%) | 11 372 (11.8) | 1423 (8.6) | 10.5 |
| Peripheral arterial disease (%) | 3287 (3.4) | 998 (6.1) | 12.5 |
| Eye disease (%) | 3598 (3.7) | 711 (4.3) | 2.9 |
| Cancer (%) | 4275 (4.4) | 981 (6.0) | 6.8 |
| Ace inhibitors (%) | 38 748 (40.3) | 7426 (45.1) | 9.8 |
| Diuretics (%) | 25 846 (26.9) | 3930 (23.9) | 6.9 |
| Beta-2 agonists (%) | 35 593 (37.0) | 5530 (33.6) | 7.1 |
| Angiotensin II receptor blockers (%) | 21 623 (22.5) | 3482 (21.2) | 3.2 |
| Glucocorticoids (%) | 49 438 (51.4) | 8533 (51.9) | 0.9 |
| NSAIDs (%) | 32 424 (33.7) | 4332 (26.3) | 16.2 |
CKD group defined using eGFR and/or diagnosis code.
AD, Alzheimer’s disease; BMI, body mass index; CKD, chronic kidney disease; COPD, chronic obstructive pulmonary disease; eGFR, estimated glomerular filtration rate by measured laboratory value using Mayo Clinic Quadratic; HbAlc, hemoglobin A1c; MCI, mild cognitive impairment; NSAID, non-steroidal anti-inflammatory drug; PD, Parkinson's disease; SMD (%), standardized mean difference (values >10% indicate significant imbalance between groups); TIA, transient ischemic attack; VD, vascular dementia.
Figure 2Covariate balance between new users of metformin and sulfonylureas using absolute standardized mean differences (SMD) before (unweighted) and after inverse probability of treatment weighting (weighted) for whole cohort (n=112 591). Dotted line indicates SMD cut-off at 0.1 where >0.1 indicates difference in covariates between the metformin and sulfonylurea users. BMI, body mass index; CKD, chronic kidney disease; COPD, chronic obstructive pulmonary disease; HbA1c, hemoglobin A1c.
Figure 3Forest plot showing IPTW-weighted associations of primary and secondary outcomes with new users of metformin versus sulfonylureas in whole population (over 50) and stratified for patients above and below 75 years of age. IPTW, inverse probability of treatment weighting; MCI, mild cognitive impairment; PD, Parkinson’s disease.
Figure 4Forest plot showing IPTW-weighted associations of primary and secondary outcomes with new users of metformin versus sulfonylureas stratified by race, baseline renal function and baseline HbA1c. Renal function levels were defined as normal (eGFR>90 mL/min), moderate (eGFR=60–89 mL/min) and poor (eGFR≤60 mL/min). HbA1c levels were defined as low <7% and high ≥7%. eGFR, estimated glomerular filtration rate; IPTW, inverse probability of treatment weighting.