Skeletal Muscle Health and Cognitive Function: A Narrative Review
Abstract
:1. Dementia
2. Sarcopenia
3. Sarcopenia and Cognitive Function
4. Muscle Mass and Cognitive Function
5. Muscle Strength and Cognitive Function
6. Physical Performance and Cognitive Function
7. Muscle Quality, Muscle Density and Cognitive Function
8. Potential Mechanisms
8.1. Vitamin D
8.2. Inflammation and Oxidative Stress
8.3. Vitamin D, Exercise and Inflammation
9. Common Lifestyle Risk Factors
9.1. Physical Inactivity
9.2. Poor Diet
9.3. Smoking
9.4. Alcohol Consumption
10. Summary and Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Author, Year; Country/Region; Follow-Up Period | Participant Characteristics | Muscle Mass Measurements | Cognitive Function Measurements | Results |
---|---|---|---|---|
Cross-Sectional Studies | ||||
1. Nourbashemi et al., 2002 [38]; France | 7105 community-dwelling women aged 75+ years | DXA (lean mass) | SPMSQ (focus on orientation, memory; using to identify cognitive impairment in this study) | Women in the lowest quartile of lean mass had a 1.43-times higher risk of general cognitive impairment compared with those in the highest quartile of lean mass |
2. Wirth et al., 2011 [39]; Germany | 4095 (71.3% female); hospitalised patients | BIA (lean mass) | MMSE (general cognition) | 5.9% loss of lean mass was associated with an increased score from 2.1 to 3.0, indicating cognitive deterioration |
3. Kilgour et al., 2013 [40]; UK | 51 community-dwelling older men mean aged 73.8 ± 1.5 years | CT (muscle volume) | MMSE (global cognition); Rey’s auditory–verbal declarative memory test (memory); the controlled word association test (executive function); Benton’s visual retention test; the national adult reading test | No association between neck muscle volume and cognitive abilities; the total muscle volume was negatively associated with estimated prior cognitive ability; individuals with lower cognitive abilities were more likely to have larger muscle size as they aged |
4. Burns et al., 2010 [45]; USA | Cognitively normal (n = 70) or with early-stage Alzheimer’s disease (n = 70); aged 60+ years | DXA (lean mass) | A standardised psychometric battery (Logical Memory, Free and Cued Selective Reminding Task, Boston Naming, Verbal Fluency, Digit Span Forward and Backward, Letter–Number Sequencing, Stroop Color-Word Test and Block Design MMSE (global cognition) | The lean mass was lower in the patients with Alzheimer’s disease, after controlling for sex |
5. Abellan van Kan et al., 2012 [46]; France | 1462 community-dwelling women aged 75+ years | DXA (lean mass) | SPMSQ or MMSE (general cognition) | Lean mass was not associated with dementia |
6. Sui et al., 2020 [37]; Australia | 292 men aged 60+ years; population based | DXA (lean mass) | CogState Brief Battery (psychomotor function, visual identification/attention, visual learning and working memory | No association was detected between lean mass and cognitive function |
7. Sui et al.,2020 [80]; Australia | 281 men aged 60+ years; population based | pQCT (muscle density) | CogState Brief Battery (psychomotor function, visual identification/attention, visual learning and working memory | Muscle density was associated with cognitive function in the psychomotor function and visual learning |
Longitudinal Studies | ||||
8. Moon et al., 2016 [42]; South Korean; 5 years follow-up | 297 community-dwelling men and women without cognitive impairment at baseline; aged 65+ years | DXA (lean mass) | Korean version of the Consortium to Establish a Registry for Alzheimer’s Disease Clinical Assessment Battery; Korean version of the Mini International Neuropsychiatric Interview; International Working Group on MCI; DSM-IV; Final diagnosis of MCI, dementia was determined by a panel of research neuropsychiatrists | Mean lean mass was not different between groups (normal cognitive function, mild cognitive impairment and dementia); thus, no significant associations between lean mass and the risk of developing cognitive impairment were detected |
9. Auyeung et al., 2011 [43]; Hong Kong; four years follow-up | 2737 cognitively healthy men and women from the community; aged 65+ years | DXA (lean mass) | MMSE (general cognition) | Lower lean mass was associated with a higher risk of general cognitive decline in men; however, this association was not sustained after adjusting for confounders and no relationship between lean mass and general cognitive decline was found in women |
Intervention Studies | ||||
10. Cassilhas et al., 2007 [54]; Brazil; 24 weeks | 62 older adults aged from 65 to 75 years. Participants were randomly assigned to three groups: control, experimental moderate- and experimental high-intensity training (six exercises including chest press, leg press, vertical traction, abdominal crunch, leg curl and lower back) | Whole-body plethysmography (lean mass) | WAIS III (central executive and short-term memory); WSM-R (visual modality of short-term memory); Toulouse–Pieron’s concentration attention test (attention); Rey–Osterrieth complex figure (long-term episodic memory) | The training groups reported improvement in neuropsychological tests, such as the forward digit span and immediate recall tests, indicating that the intervention improved cognitive function |
11. Lauque et al., 2004 [44]; France; 3 months | Patients with Alzheimer’s disease aged ≥65 years; 46 patients were treated with nutritional supplements for three months and 45 received their usual care as a control group | DXA (lean mass) | MMSE (general cognition) | Lean mass increased in the nutrition supplement group; however, no change in cognitive function was detected |
Author, Year; Country/Region; Follow-Up Period | Participant Characteristics | Muscle Strength Measurements | Cognitive Function Measurements | Results |
---|---|---|---|---|
Cross-Sectional Studies | ||||
1. Abellan van Kan et al., 2012 [33]; France | 3025 community-dwelling women aged 75+ years | HGS dynamometry | SPMSQ (used to identify cognitive impairment) | Lower HGS was associated with cognitive impairment |
2. Takata et al., 2008 [47]; Japan | Community-dwelling participants aged 85 years (90 men, 117 women) | HGS dynamometry | MMSE (global cognition) | Those with higher MMSE scores were more likely to have greater HGS for both the right hand (21.8 ± 7.1 vs. 19.3 ± 5.8 kg, p = 0.009) and the left hand (20.6 ± 6.7 vs. 17.9 ± 5.5 kg, p = 0.003) and greater isometric leg extensor strength (22.7 ± 8.7 vs. 20.7 ± 9.1 kg, p = 0.18). This association persisted after adjustment for confounders |
3. Chen et al., 2015 [48]; USA | 1799 population-based men and women aged 60+ years | Isokinetic strength dynamometry | DSST (measuring the visuospatial and motor speed of processing, represented a sensitive measure of frontal lobe executive functions) | The DSST scores were greater in higher quadriceps strength groups, indicating that muscle strength was associated with speed of processing and visual–spatial processing |
4. Shin et al., 2012 [57]; Korea | 1038 men and women aged 65+ years from the community | Sit-to-stand score; HGS dynamometry | Dementia (identified using the Korean version of GMS B3-K; CSID-K; CERAD) | Each 8-kg decrease in HGS was associated with a 59% increased likelihood of dementia (adjusted OR 1.59; 95% CI 1.19–2.14) |
5. Sui et al., 2020 [37]; Australia | 292 men aged 60+ years; population based | HGS dynamometry | CogState Brief Battery (psychomotor function, visual identification/attention, visual learning and working memory | for every 1 kg increase in handgrip strength, scores for psychomotor function were 0.003 (log10 milliseconds) lower and for overall cognitive function 0.02 (unitless) higher (both indicating better function). |
Longitudinal Studies | ||||
6. Taekema et al., 2012 [49]; Netherlands | 555 population-based participants at all ages, 85 years at base line (35% men) and 89 (29% men) years at follow-up | HGS dynamometry | Neuropsychological test battery (for assessing global cognitive performance, attention, processing speed and memory) | HGS was associated with scores in tests for processing speed and memory for both age groups, but was not associated with attention at age 89 years |
7. Buchman et al., 2007 [58]; USA; 5 years follow-up | 877 men and women without dementia | HGS dynamometry | Dementia (Mini Mental State Examination; Health Interview Survey) | Each 1-kg deficit in baseline HGS conferred a 1.5% greater risk of developing AD over 5.7 years (adjusted hazard ratio 0.986; 95% CI 0.973–0.998) |
8. Alfaro-Acha et al., 2006 [50]; USA; 6 years follow-up | 2160 non-institutionalised Mexican Americans (57.5% women) aged 65+ years | HGS dynamometry | MMSE (measuring cognitive decline) | HGS at baseline was associated with greater cognitive decline, as assessed by MMSE (β estimate = 1.28, se = 0.16; p = 0.0001) over a period of six years |
9. Raji et al., 2005 [51]; USA; 7 years follow-up | 2381 Mexican American men and women aged 65+ years, without disabilities | HGS dynamometry | MMSE (measuring cognitive decline) | A decline in HGS was observed over a period of seven years for participants with poor global cognitive function (measured by MMSE) compared with those with good cognitive function |
10. Atkinson et al., 2010 [52]; USA; 6 years follow-up | 1793 women aged 65–80 years | HGS dynamometry | MMSE (measuring cognitive decline) | Reciprocal changes in general cognitive function (MMSE scores) and HGS over a follow-up period of 6 years |
Intervention Studies | ||||
11. Dorner et al., 2007 [53]; Austria; 10-week trial | 42 long-term care facility residents (men and women, mean age of 86.8 years) with cognitive impairment and frailty; intervention through involved a structured strength and balance training | Increased muscle Strength | MMSE (measuring cognitive decline) | Muscle strength in the muscle training group increased compared with the control group over a period of ten weeks [53]. Even though a linear relationship was observed between increasing muscle strength and improved MMSE scores in the muscle training group, a difference was not detected in mean MMSE scores between the training and control groups |
12. Cassilhas et al., 2007 [54]; Brazil; 24 weeks | 62 older adults aged from 65 to 75 years. Participants were randomly assigned to three groups: control, experimental moderate- and experimental high-intensity training (six exercises including chest press, leg press, vertical traction, abdominal crunch, leg curl and lower back) | 1 RM test | WAIS III (central executive and short-term memory); WSM-R (visual modality of short-term memory); Toulouse–Pieron’s concentration attention test (attention); Rey–Osterrieth complex figure (long-term episodic memory) | The training groups reported improvement in neuropsychological tests, such as the forward digit span and immediate recall tests, indicating that the intervention improved cognitive function |
13. Berryman et al., 2014 [55]; eight weeks | 47 healthy older adults (mean age 70.7 ± 5.6 years); compared the effects of three interventions: strength training | Isokinetic strength dynamometer | Generation cognition (MMSE); executive functions, memory, processing speed | Intervention increased muscle strength and improved executive function |
Author, Year, Country/Region, STUDY Type | Participant Characteristics | Physical Performance Measurements | Cognitive Function Measurements | Results |
---|---|---|---|---|
Cross-Sectional Studies | ||||
1. Auyeung et al., 2008 [60]; Hong Kong | 4000 Chinese men and women from the community | 6-m walk speed test and chair stand test | CSI-D (identifying dementia) | Cognitive impairment group had poorer performance in gait speed tests than the non-cognitively impaired control group (0.89 ± 0.024 vs. 1.02 ± 0.004 m/s in men and 0.85 ± 0.009 vs. 0.93 ± 0.005 m/s in women, both p < 0.001) and chair stand tests (13.99 ± 0.05 s vs. 12.57 ± 0.09 s in men and 14.45 ± 0.27 s vs. 13.07 ± 0.12 s in women, both p < 0.001) |
2. Verghese et al., 2008 [61]; USA | 44 men and women with amnestic MCI (mean age = 79.3 ± 4.7 years), 62 with non-amnestic MCI (mean age 81.8 ± 6.2 years) and 295 healthy individuals (mean age 81.8 ± 6.2 years) | Computer-based analyses of gait ability that included pace, rhythm and variability | Blessed Information-Memory-Concentration test (General cognition); FCSRT (verbal memory); DSST, TMT-B, LFT (executive function); TMT-A and Digit Span forwards-attention); Boston Naming Test (language) | Gait was worse in participants with MCI than in the controls |
3. Coppin et al., 2006 [63]; USA | 37 community-dwelling individuals aged 65+ years | Complex walking tasks; reference walking tasks | TMT (executive function); MMSE (general cognition) | Reported slower gait speed in participants with poor executive function than those with high executive function |
4. Martin et al., 2013 [62]; Australia | 422 older people aged 60–85 years | GAITRite walkway | COWAT, Category Fluency, Victoria Stroop test, WAIS-III (Executive function/attention); WAIS-III (Processing speed); Rey Complex Figure copy task (Visuospatial ability); Hopkins Verbal Learning Test—revised, generating scores for total immediate recall, delayed recall and recognition memory and a delayed reproduction after 20 min of the Rey Complex Figure (memory) | Gait measures were not associated with memory |
5. Sui et al., 2020 [37]; Australia | 292 men aged 60+ years; population based | 4-m walk speed test | CogState Brief Battery (psychomotor function, visual identification/attention, visual learning and working memory | For every 1 m/s increase in gait speed, scores for psychomotor function were 0.12 lower, attention 0.08 lower and overall cognitive function 0.49 higher (all better function) |
Longitudinal Studies | ||||
6. Buracchio et al., 2010 [65]; USA; 20 years follow-up | 204 healthy older adults (58% female) aged 65+ | 9.14-m waking test | MMSE; CDR (identifying dementia) | Gait speed declined by 0.02 m/s/year for up to 12 years prior to the onset of MCI, as assessed using standardised neurologic examinations |
7. Inzitari et al., 2007 [66]; 5 years follow-up | 2776 men and women aged 75–85 years | 6-m walking speed test | DSST (attention and psychomotor speed) | Gait speed predicts decline in attention and psychomotor speed in the elderly |
8. Atkinson et al., 2007 [67]; 3+ years follow-up | 2349 men and women (mean age 75.6 years) | 20-m usual walking speed | 3MS (general cognition); ECF; CLOX; 1EXIT (Executive function) | Lower global cognitive function and executive function were associated with greater gait speed decline |
9. Deshpande et al., 2009 [71]; Italy; three years follow-up | Population-based study involving 660 older adults aged 65+ years | Walking while talking task | MMSE (general cognition) | Only fast gait speed predicted general cognitive decline |
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Sui, S.X.; Williams, L.J.; Holloway-Kew, K.L.; Hyde, N.K.; Pasco, J.A. Skeletal Muscle Health and Cognitive Function: A Narrative Review. Int. J. Mol. Sci. 2021, 22, 255. https://doi.org/10.3390/ijms22010255
Sui SX, Williams LJ, Holloway-Kew KL, Hyde NK, Pasco JA. Skeletal Muscle Health and Cognitive Function: A Narrative Review. International Journal of Molecular Sciences. 2021; 22(1):255. https://doi.org/10.3390/ijms22010255
Chicago/Turabian StyleSui, Sophia X., Lana J. Williams, Kara L. Holloway-Kew, Natalie K. Hyde, and Julie A. Pasco. 2021. "Skeletal Muscle Health and Cognitive Function: A Narrative Review" International Journal of Molecular Sciences 22, no. 1: 255. https://doi.org/10.3390/ijms22010255
APA StyleSui, S. X., Williams, L. J., Holloway-Kew, K. L., Hyde, N. K., & Pasco, J. A. (2021). Skeletal Muscle Health and Cognitive Function: A Narrative Review. International Journal of Molecular Sciences, 22(1), 255. https://doi.org/10.3390/ijms22010255