| Literature DB >> 25658241 |
Kimberly Ashby-Mitchell1, Anna Peeters2, Kaarin J Anstey3.
Abstract
Principal Component Analysis (PCA) was used to determine the association between dietary patterns and cognitive function and to examine how classification systems based on food groups and food items affect levels of association between diet and cognitive function. The present study focuses on the older segment of the Australian Diabetes, Obesity and Lifestyle Study (AusDiab) sample (age 60+) that completed the food frequency questionnaire at Wave 1 (1999/2000) and the mini-mental state examination and tests of memory, verbal ability and processing speed at Wave 3 (2012). Three methods were used in order to classify these foods before applying PCA. In the first instance, the 101 individual food items asked about in the questionnaire were used (no categorisation). In the second and third instances, foods were combined and reduced to 32 and 20 food groups, respectively, based on nutrient content and culinary usage-a method employed in several other published studies for PCA. Logistic regression analysis and generalized linear modelling was used to analyse the relationship between PCA-derived dietary patterns and cognitive outcome. Broader food group classifications resulted in a greater proportion of food use variance in the sample being explained (use of 101 individual foods explained 23.22% of total food use, while use of 32 and 20 food groups explained 29.74% and 30.74% of total variance in food use in the sample, respectively). Three dietary patterns were found to be associated with decreased odds of cognitive impairment (CI). Dietary patterns derived from 101 individual food items showed that for every one unit increase in ((Fruit and Vegetable Pattern: p=0.030, OR 1.061, confidence interval: 1.006-1.118); (Fish, Legumes and Vegetable Pattern: p=0.040, OR 1.032, confidence interval: 1.001-1.064); (Dairy, Cereal and Eggs Pattern: p=0.003, OR 1.020, confidence interval: 1.007-1.033)), the odds of cognitive impairment decreased. Different results were observed when the effect of dietary patterns on memory, processing speed and vocabulary were examined. Complex patterns of associations between dietary factors and cognition were evident, with the most consistent finding being the protective effects of high vegetable and plant-based food item consumption and negative effects of 'Western' patterns on cognition. Further long-term studies and investigation of the best methods for dietary measurement are needed to better understand diet-disease relationships in this age group.Entities:
Mesh:
Year: 2015 PMID: 25658241 PMCID: PMC4344574 DOI: 10.3390/nu7021052
Source DB: PubMed Journal: Nutrients ISSN: 2072-6643 Impact factor: 5.717
Food groupings used in the dietary pattern analysis.
| Food Item | Food Category | Food Category |
|---|---|---|
| Bacon, ham, salami, sausages | Processed Meats | Meat |
| Beef, pork, lamb, veal, hamburger | Red Meats | Meat |
| Fish, fried fish, tinned fish | Fish | Fish |
| Chicken | Poultry | Poultry |
| Eggs | Eggs | Eggs |
| Butter | Butter | Fats and Oils |
| Margarine, poly/mono-unsaturated margarine | Margarine | Fats and Oils |
| Butter and margarine blends | Butter and Margarine Blends | Fats and Oils |
| Reduced-fat/skim milk, low-fat cheese, yoghurt | Low-fat Dairy Products | Dairy |
| Full-cream milk, hard/firm/soft/ricotta/cottage/cream cheese, ice-cream, flavoured-milk drink | High-fat Dairy Products | Dairy |
| Red/white/fortified wine | Wine | Alcohol |
| Light/heavy beer | Beer | Alcohol |
| Other spirits | Other Spirits | Alcohol |
| Tinned fruit, oranges, apples, pears, bananas, melon, pineapple, strawberries, apricots, peaches, mango | Fruit | Fruit |
| Fruit juice | Fruit Juice | Fruit Juice |
| Cabbage, cauliflower, broccoli | Cruciferous Vegetables | Vegetables |
| Carrot, pumpkin | Dark-yellow Vegetables | Vegetables |
| Tomatoes, tomato sauce | Tomatoes | Vegetables |
| Lettuce, spinach | Green, leafy Vegetables | Vegetables |
| Peas, green beans, bean sprouts, baked beans, tofu, other beans, soya milk | Legumes | Vegetables |
| Cucumber, celery, beetroot, mushrooms, zucchini, capsicum, avocado | Other Vegetables | Vegetables |
| Onion, garlic | Garlic and Onions | Vegetables |
| Potatoes | Potatoes | Vegetables |
| Chips | Chips/French fries | Chips/French Fries |
| All-bran, bran flakes, Weet-Bix, cornflakes, porridge, muesli, wholemeal/rye/multi-grain bread | Whole Grains | Whole Grains |
| High-fibre white/white bread, rice, pasta, crackers | Refined Grains | Refined Grains |
| Pizza | Pizza | Pizza |
| Sweet biscuits, cakes, crisps, chocolate | Snacks | Snacks |
| Nuts, peanut butter | Nuts | Nuts |
| Jam, vegemite | Condiments | Condiments |
| Sugar | Sugar | Sugar |
| Meat pies | Meat Pies | Meat Pies |
Descriptive statistics at Wave 1 for the AusDiab sample included in the study (n = 577).
| Variables | Wave 1 |
|---|---|
| Age Range | 60–83 |
| Mean Age (SD) | 66.07 (4.85) |
| Female (%) | 284 (49.22) |
| BMI (SD) | 26.89 (4.09) |
| Secondary School (%) | 242 (24.4) |
| Tertiary Level (%) | 229 (40.1) |
| Other - Trade, Technician, Primary Only (%) | 100 (17.4) |
| Current Smoker (%) | 29 (5.1) |
| Ex-Smoker (%) | 182 (32.0) |
| Non-Smoker | 357 (62.9) |
| Exercise Mean (SD), mins./week | 292.45 (324.21) |
| MMSE Score | 27.41 (2.44) |
| CVLT Score | 5.17 (2.30) |
| STW Score | 50.30 (6.84) |
| SDMT Score | 38.63 (10.74) |
| Impaired (%) | 44 (7.63) |
Results of logistic regression analyses showing associations between CI at Wave 3 and dietary patterns obtained using 101 food items, 32 food groups and 20 food groups at Wave 1 (odds ratios with 95% confidence intervals shown in brackets).
| Dietary Pattern 1 | Dietary Pattern 2 | Dietary Pattern 3 | Dietary Pattern 4 | Dietary Pattern 5 | Dietary Pattern 6 | Dietary Pattern 7 | |
|---|---|---|---|---|---|---|---|
| 101 Food Items | Fruit & Vegetable | Snack & Processed Foods | Vegetable | Meat | Fish, Legumes & Vegetable | Vegetable, Pasta & Alcohol | Dairy, Cereal & Eggs |
| OR (95% CI) | 1.061 | 1.051 | 0.986 | 1.005 | 1.032 | 1.000 | 1.020 |
| 32 Food Groups | Western | Prudent | Vegetable, Grains & Wine | High-Fat | |||
| OR (95% CI) | 1.005 | 0.997 | 1.008 | 0.999 | |||
| 20 Food Groups | Variety | Western | Dairy, Grains & Alcohol | ||||
| OR (95% CI) | 1.006 | 1.008 | 1.001 |
Model adjusted for age, sex, energy, education, BMI, smoking status, STW and exercise time; * p < 0.05; ** p < 0.01.
Results of GLM showing associations between cognitive function at Wave 3 and dietary patterns obtained using 101 individual food items, 32 food groups and 20 food groups at Waves 1, 2 and 3 ( values with Standard Errors shown in brackets).
| Dietary Pattern 1 | Dietary Pattern 2 | Dietary Pattern 3 | Dietary Pattern 4 | Dietary Pattern 5 | Dietary Pattern 6 | Dietary Pattern 7 | |
|---|---|---|---|---|---|---|---|
| 101 Food Items | Fruit & Vegetable | Snack & Processed Foods | Vegetable | Meat | Fish, Legumes & Vegetable | Vegetable, Pasta & Alcohol | Dairy, Cereal & Eggs |
| CVLT | 0.012 (0.013) | 0.020 (0.015) | −0.001 (0.012) | 0.000 (0.005) | −0.002 (0.007) | 0.004 (0.006) | −4.474 (0.002) |
| SDMT | 0.097 (0.057) | 0.060 (0.067) | 0.013 (0.054) | 0.014 (0.023) | −0.062 (0.032) | −0.003 (0.028) | −0.016 (0.011) |
| STW | 0.077 (0.039) | 0.080 (0.046) | 0.046 (0.037) | 0.007 (0.020) | 0.000 (0.022) | 0.000 (0.021) | 0.002 (0.008) |
| 32 Food Groups | Western | Prudent | Vegetable, Grains & Wine | High-Fat | |||
| CVLT | −0.008 (0.003) | −0.005 (0.003) | 0.001 (0.003) | −0.001 (0.001) | |||
| SDMT | −0.024 (0.011) | −0.035 (0.011) | 0.024 (0.012) | 0.005 (0.006) | |||
| STW | −0.006 (0.008) | −0.006 (0.008) | 0.013 (0.008) | 0.001 (0.005) | |||
| 20 Food Groups | Variety | Western | Dairy, Grains & Alcohol | ||||
| CVLT | −0.003 (0.003) | −0.004 (0.005) | −0.002 (0.001) | ||||
| SDMT | −0.026 (0.011) | −0.007 (0.021) | −0.005 (0.003) | ||||
| STW | −0.008 (0.008) | 0.002 (0.015) | −0.001 (0.002) |
Model adjusted for age, sex, energy, education, BMI, smoking status, STW and exercise time; * p < 0.05, ** p < 0.01.