Literature DB >> 30613138

Relationships between dietary nutrients intake and lipid levels with functional MRI dorsolateral prefrontal cortex activation.

Huijin Lau1, Suzana Shahar1, Mazlyfarina Mohamad2, Nor Fadilah Rajab3, Hanis Mastura Yahya1, Normah Che Din4, Hamzaini Abdul Hamid5.   

Abstract

BACKGROUND: Dorsolateral prefrontal cortex (DLPFC) is a key node in the cognitive control network that supports working memory. DLPFC dysfunction is related to cognitive impairment. It has been suggested that dietary components and high-density lipoprotein cholesterol (HDL-C) play a vital role in brain health and cognitive function.
PURPOSE: This study aimed to investigate the relationships between dietary nutrient intake and lipid levels with functional MRI (fMRI) brain activation in DLPFC among older adults with mild cognitive impairment. PARTICIPANTS AND METHODS: A total of 15 community-dwelling older adults with mild cognitive impairment, aged ≥60 years, participated in this cross-sectional study at selected senior citizen clubs in Klang Valley, Malaysia. The 7-day recall Diet History Questionnaire was used to assess participants' dietary nutrient intake. Fasting blood samples were also collected for lipid profile assessment. All participants performed N-back (0- and 1-back) working memory tasks during fMRI scanning. DLPFC (Brodmann's areas 9 and 46, and inferior, middle, and superior frontal gyrus) was identified as a region of interest for analysis.
RESULTS: Positive associations were observed between dietary intake of energy, protein, cholesterol, vitamins B6 and B12, potassium, iron, phosphorus, magnesium, and HDL-C with DLPFC activation (P<0.05). Multivariate analysis showed that vitamin B6 intake, β=0.505, t (14)=3.29, P=0.023, and Digit Symbol score, β=0.413, t (14)=2.89, P=0.045; R 2=0.748, were positively related to DLPFC activation.
CONCLUSION: Increased vitamin B6 intake and cognitive processing speed were related to greater activation in the DLPFC region, which was responsible for working memory, executive function, attention, planning, and decision making. Further studies are needed to elucidate the mechanisms underlying the association.

Entities:  

Keywords:  HDL-C; brain activation; fMRI; vitamin B6

Mesh:

Substances:

Year:  2018        PMID: 30613138      PMCID: PMC6307498          DOI: 10.2147/CIA.S183425

Source DB:  PubMed          Journal:  Clin Interv Aging        ISSN: 1176-9092            Impact factor:   4.458


Introduction

Dorsolateral prefrontal cortex (DLPFC) is a key node in cognitive control network that supports working memory, executive function, attention, planning, and decision making.1 DLPFC dysfunction is attributed to synaptic neuroplasticity impairment, which in turn increases the risk of neurocognitive disorders such as Alzheimer’s disease (AD).2 Lower gray matter volume in left DLPFC has also been observed in the mild cognitive impaired (MCI) group as compared to healthy control subjects.3 It has been proposed that dietary nutrients play a pivotal role in brain health and cognitive functions. For instance, the dietary intake of glucose is the fuel source for the human brain.4 Other dietary components such as omega-3-fatty acid, saturated fat, group B vitamins, antioxidant vitamins (A, C, E), and minerals (iron, calcium, zinc, magnesium) have also been identified as having an impact on brain function and cognitive abilities.5 In addition to dietary nutrient intake, lipids are also thought to be involved in the regulation of neural functions in the central nervous system (CNS) through local mechanisms that are connected to systemic lipid metabolism.6 Emerging evidence suggests that high-density lipoprotein cholesterol (HDL-C) may play a vital role in preserving cognitive function under normal or pathological conditions.7 Previous studies have reported that the dietary intake levels of vitamin A, C, E, riboflavin, niacin, folate, calcium, and iron are inadequate among Malaysian older adults, especially among those with MCI.8,9 Hyperlipidemia and lower intake of fruits and fresh fruit juices are also significantly related to increased risk of poor cognitive function in Malaysian elderly population.10 However, these relationships have never been studied using neuroimaging method among older adults with mild cognitive impairment (MCI). Neuroimaging may be a useful tool in helping to elucidate the relationships and effects of dietary intake and blood markers with cognitive function. It would be informative if we can determine the changes in the underlying brain activation associated with objective cognitive measurements. Therefore, the aim of this study was to examine the relationships between dietary nutrient intake and lipid levels with DLPFC activation using functional MRI (fMRI) among Malaysian older adults with MCI.

Participants and methods

This study has been approved by the Universiti Kebangsaan Malaysia (UKM) Ethics Committee (IEC; NN-2017–036), and written informed consent was obtained from all participants prior to testing.

Participants

A total of 15 community-dwelling older adults with MCI, aged ≥60 years, participated in this study. All participants were screened for eligibility prior to the study based on inclusion and exclusion criteria.

Cognitive function and dietary nutrient intake assessments

The participants participated in a questionnaire interviewing session conducted by trained fieldworkers at selected senior citizen clubs in Klang Valley, Malaysia. The MCI status of the participants was determined based on the criteria reported in a previous study.11 A series of neurocognitive tests (Mini Mental State of Examination, Digit Span, Rey Auditory Verbal Learning Test, Digit Symbol, and Visual Reproduction) were used to assess the global cognitive function, working and episodic memory, cognitive processing speed, and visual memory of the participants. The dietary macronutrient and micronutrient intake of the participants was also assessed using the 7-day recall Diet History Questionnaire (DHQ).12 Standardized pictures were provided to guide the participants in filling the questionnaire. They were asked to recall all the foods and beverages consumed in the past 7 days from the day the questionnaire was administered. The resulting data were then analyzed using Nutritionist Pro™ Diet Analysis software (Axxya Systems, Redmond, WA, USA) to calculate the nutrient intake.

Lipid profile assessment

The participants were required to fast for at least 10 hours overnight before blood sample collection. Peripheral venous blood samples were drawn by a trained phlebotomist. In all, 5 mL of blood per participant were collected in tubes and stored in an ice box. Lipid profile, including total cholesterol, low-density lipoprotein cholesterol, HDL-C, triglycerides, and total cholesterol to HDL-C ratio, was analyzed using an AutoAnalyzer at a certified laboratory.

fMRI and N-back task

fMRI was conducted at the Department of Radiology, Universiti Kebangsaan Malaysia Medical Center (UKMMC), by a trained radiographer. Before the scan was carried out, the purpose, procedures, and risks were explained to the participants. All the participants completed the anatomical scans lasting 3 minutes prior to the N-back task, which lasted around 9 minutes. All subjects first viewed a PowerPoint presentation that included diagrams of blocks and a brief description of study procedure prior to completing the two tasks. N-back task, which consists of two paradigms, the 0- and 1-back condition, was created and displayed using SuperLab 5 (Cedrus Corporation, San Pedro, CA, USA). A total of four task blocks with 15 trials each was displayed in each condition. In 0-back condition, participants were required to identify whether the item appeared to be the same as the single target at the beginning of each block. During 1-back condition, participants were required to identify whether the item displayed was the same as the one preceding it. fMRI image acquisition fMRI data were acquired on a 3.0-tesla magnetic resonance (MR) scanner (Magnetom, Trio; Siemens, Erlangen, Germany). High-resolution T1-weighted anatomical images were acquired for each subject (repetition time [TR]=1,900 ms, echo time (TE)=2.35 ms, voxel dimensions 1.0×1.0×1.0 mm, 250×250 voxels, 176 slices, slice thickness=1 mm). T2*-weighted imaging data were acquired during N-back task (TR=3,000 ms, TE=30 ms, 3 mm isotropic voxels, flip angle=90°, 27 slices, slice thickness=4 mm).

Preprocessing and functional imaging data analysis

Preprocessing and data analysis were performed using Statistical Parametric Mapping software (SPM12; Wellcome Department of Cognitive Neurology, London, UK) implemented in Matlab (MathWorks Inc., Natick, MA, USA). Prior to analysis, the functional images were realigned and resliced to the mean image of the series. Functional images were co-registered to the participants’ mean T1-weighted image, estimated against a standardized stereotaxic space of Montreal Neurological Institute (MNI). The normalization procedure used a six-parameter affine transformation, where the parameters constituted a spatial transformation matrix. After normalization, all functional volumes went through a spatial smoothing with a 6 mm full-width half-maximum isotropic Gaussian kernel in order to reduce intersubject variability. We defined DLPFC by the intersection of Brodmann’s area (BA) 9 and 46 and inferior, medial and superior frontal gyrus using WFU PickAtlas library. This region was chosen as the region of interest (ROI) as it is a key node of working and episodic memory network.13 A conventional analysis based on the general linear model was used to generate brain activation in the ROIs using the clusters containing maximum t value. Individual subject analysis was performed and corrected significantly (P<0.05, family-wise error corrected). For each subject, the maximum t value in DLPFC activation was recorded.

Statistical analyses

All data were analyzed using Statistical Package for Social Sciences (SPSS) version 22. A significant value was set at P<0.05. Pearson’s correlation was used to examine the associations between cognitive test performance, dietary nutrient intake, and plasma lipids with DLPFC activation. In addition, the relationships between independent variables (ie, cognitive test performance, dietary nutrient intake, and lipid levels) and dependent variable (DLPFC activation) were modeled using multiple linear regression.

Results

Descriptive statistics included mean age, response accuracy, and reaction time of N-back task; DLPFC activation; lipid profile; cognitive assessments; and dietary nutrient intake level, which are demonstrated in Table 1. The mean age of the participants was 66.8±2.70 years. The mean response accuracy and reaction time of N-back task was 47.33% and 2,264.41±523.94 seconds, respectively. The maximum activation (maximum t value) in the DLPFC region was 13.48±3.28.
Table 1

Descriptive statistics (represented as mean±SD)

ParametersTotal (N=15)Normal range
Age66.80±2.70N/A
Response accuracy (%)47.33±18.94N/A
Response reaction time (seconds)2,264.41±523.94N/A
DLPFC activation (maximum t value)13.48±3.28N/A
Total cholesterol (mmol/L)5.45±0.95<5.20
Triglyceride (mmol/L)1.42±0.64<1.70
HDL-C (mmol/L)1.56±0.40>1.03
LDL-C (mmol/L)3.24±1.04<2.58
TCH:HDL-C ratio3.63±0.79N/A
MMSE25.20±2.04N/A
Digit Span forward9.20±1.97N/A
Digit Span backward3.60±1.84N/A
Digit Symbol35.40±11.33N/A
RAVLT immediate recall7.13±2.07N/A
RAVLT delayed recall5.87±2.95N/A
VR immediate recall29.53±7.44N/A
VR delayed recall30.33±8.44N/A
Dietary nutrient intake
 Energy (kcal)1,385.71±426.581,770–2,330
 Protein (g)51.09±20.3850–58
 Carbohydrate (%)46.99±2.7950–65
 Fat (g)67.06±32.5349–68
 Total fiber (g)4.60±2.8320–30
 Vitamin A (RE)645.72±284.63600
 Vitamin C (mg)79.29±47.5870
 Vitamin E (mg)3.04±1.157.5–10
 Thiamin (mg)0.48±0.131.1–1.2
 Riboflavin (m)0.85±0.291.1–1.3
 Niacin (mg)7.79±3.8614–16
 Vitamin B6 (mg)0.94±0.701.5–1.7
 Folate (μg)71.71±27.09400
 Vitamin B12 (μg)3.10±3.594
 Sodium (mg)2,205.16±553.712,300
 Potassium (mg)1,353.05±612.984,700
 Calcium (mg)295.54±148.611,000–1,200
 Iron (mg)9.28±4.2111–14
 Phosphorus (mg)696.62±298.584,000
 Magnesium (mg)118.53±57.07420
 Zinc (mg)2.93±1.434.3–6.3
 Copper (mg)0.52±0.210.9
 Manganese (mg)0.86±2.251.8
 Selenium (μg)26.34±17.0323–31
 Chromium (μg)0.04±1.0020–30
 Molybdenum (mg)0.03±0.090.045

Abbreviations: DLPFC, dorsolateral prefrontal cortex; HDL-C, high-density lipoprotein cholesterol; LDL-C, low-density lipoprotein cholesterol; MMSE, Mini– Mental State Examination; RAVLT, Rey Auditory Verbal Learning Test; TCH:HDL-C, total cholesterol to high-density lipoprotein cholesterol; VR, visual reproduction.

Activated brain regions during N-back task (P<0.05, family-wise error corrected) are presented in Table 2 and Figure 1. The total number of voxels activated in the ROIs was 22,438 voxels. Greater activation was observed in right middle frontal gyrus (38, 6, 56) with 14,810 voxels activated, t=25.12, P<0.001. Other activated regions were left and right superior frontal gyrus, left and right cerebral white matter, and right posterior orbital gyrus.
Table 2

Activated brain regions during N-back task (P<0.05, corrected for FWE)

Anatomical locationsx, y, zVoxels activatedMaximum t valueP-value
Right middle frontal gyrus38, 6, 5614,81025.12<0.001
Left superior frontal gyrus−4, 32, 386011.84<0.001
Right cerebral white matter10, 26, 369110.85<0.001
Right posterior orbital gyrus30, 34, −18106.350.003
Right cerebral white matter24, −18, 5815.860.028
Left cerebral white matter−26, 44, −1285.460.004
Right cerebral white matter8, −20, 7025.300.019
Left cerebral white matter−18, 50, −1025.290.019
Right superior frontal gyrus14, 46, 4475.180.006
Right superior frontal gyrus8, 50, 4425.040.019

Abbreviation: FWE, family-wise error corrected.

Figure 1

Greatest activation was observed in right middle frontal gyrus (x=38, y=6, z=56), significant at P<0.05 (corrected for FWE) during N-back task among participants with mild cognitive impairment.

Abbreviations: FWE, family-wise error corrected; rMFG, right middle frontal gyrus.

Table 3 shows the associations between dietary nutrient intake, plasma lipid levels, and objective cognitive measurements with DLPFC activation. Significant positive associations were observed between dietary intake of energy (r=0.600, P=0.018), protein (r=0.657, P=0.008), cholesterol (r=0.541, P=0.037), riboflavin (r=0.526, P=0.044), niacin (r=0.661, P=0.007), vitamin B6 (r=0.687, P=0.005), vitamin B12 (r=0.547, P=0.035), potassium (r=0.637, P=0.011), iron (r=0.661, P=0.007), phosphorus (r=0.556, P=0.031), and magnesium (r=0.548, P=0.034) with increased DLPFC activation. A higher level of plasma HDL-C was also associated with a higher maximum t value (r=0.540, P=0.038). In addition, global cognitive function (r=0.601, P=0.018) and cognitive processing speed (r=0.665, P=0.007) as measured using Mini–Mental State Examination (MMSE) and Digit Symbol test, respectively, showed a significant positive association with increased DLPFC activation. However, age, total cholesterol, triglycerides, LDL-C levels, and TCH-HDL ratio did not demonstrate any significant association with DLPFC activation (P>0.05).
Table 3

Associations between dietary nutrient intake, lipid profile, cognitive assessments, and brain activation

VariablesDLPFC activation
rP-valuea
Dietary nutrient intake
 Energy (kcal)0.6000.018b
 Protein (g)0.6570.008c
 Carbohydrate (g)0.3350.222
 Fat (g)0.4210.118
 Cholesterol (mg)0.5410.037b
 Saturated fat (g)0.2950.285
 Monosaturated fat (g)0.1380.625
 Polyunsaturated fat (g)−0.0340.905
 Oleic acid (g)−0.1020.719
 Linoleic acid (g)−0.3140.254
 Linolenic acid (g)−0.0650.817
 Total fiber (g)0.3350.223
 Sugar (g)0.4680.079
 Vitamin A (retinol equivalent)0.1480.600
 Beta-carotene (mg)0.2040.465
 Vitamin C (mg)−0.0150.958
 Vitamin E (mg)0.2290.411
 Thiamin (mg)0.3580.190
 Riboflavin (m)0.5260.044
 Niacin (mg)0.6610.007c
 Vitamin B6 (mg)0.6870.005c
 Folate (mg)0.1340.635
 Vitamin B12 (mg)0.5470.035b
 Sodium (mg)0.4800.070
 Potassium (mg)0.6370.011b
 Calcium (mg)0.4310.109
 Iron (mg)0.6610.007c
 Phosphorus (mg)0.5560.031b
 Magnesium (mg)0.5480.034b
 Zinc (mg)0.3350.222
 Copper (mg)0.1420.614
 Manganese (mg)0.0810.775
 Selenium (mg)0.5150.049b
 Chromium (mg)0.7000.004c
 Molybdenum (mg)0.3830.159
Lipid profile
 Total cholesterol (mmol/L)0.3500.201
 Triglyceride (mmol/L)−0.2050.463
 HDL-C (mmol/L)0.5400.038b
 LDL-C (mmol/L)0.1660.554
 TCH:HDL-C ratio−0.3020.274
Cognitive assessments
 MMSE0.6010.018b
 Digit Span forward0.0990.725
 Digit Span backward−0.0510.856
 Digit Symbol0.6670.007c
 RAVLT immediate recall0.3930.147
 RAVLT delayed recall0.3360.220
 VR immediate recall0.4400.101
 VR delayed recall0.2940.288

Notes:

Pearson’s correlation.

Significant at P<0.05.

Significant at P<0.01.

Abbreviations: DLPFC, dorsolateral prefrontal cortex; HDL-C, high-density lipoprotein cholesterol; LDL-C, low-density lipoprotein cholesterol; MMSE, Mini– Mental State Examination; RAVLT, Rey Auditory Verbal Learning Test; TCH:HDL-C, total cholesterol to high-density lipoprotein cholesterol; VR, visual reproduction.

Further analysis using multivariate linear regression model is presented in Table 4. The findings showed positive relationships between dietary intake of vitamin B6, β=0.505, t (14)=3.29, P=0.023, and Digit Symbol, β=0.413, t (14)=2.89, P=0.045, with DLPFC activation (R2=0.748).
Table 4

Relationships between dietary nutrient intake, lipid profile, cognitive assessments, and brain activation

ParametersDLPFC activation
ORtP-valuea
Vitamin B60.5052.670.023
Digit Symbol0.4132.290.045

Note:

Multiple linear regression (R2=0.748), significant at P<0.05.

Abbreviation: DLPFC, dorsolateral prefrontal cortex.

Discussion

Subjects demonstrated a greater activation in the right middle frontal gyrus and left superior frontal gyrus during N-back task in the present study. Higher order association areas in prefrontal cortex are considered to have important roles in attention, working memory, and response selection.14 Left superior and right middle frontal gyrus as well as the inferior frontal gyrus have been proposed to support executive attention.15 Involvement of middle frontal gyrus in working memory tasks such as word reading and numerical operations was also reported in previous studies.16,17 We reasoned that the intake of certain nutrients and the levels of blood cholesterol might have associations with DLPFC activation. The brain requires much more energy compared to the other human organs. Thus, the energy transfer mechanisms from food to neurons are likely related to synaptic plasticity and the control of brain function.4 The risk of MCI or dementia was increased in subjects who derived a high percentage of their energy from carbohydrates but was reduced in those who derived a high percentage of energy from fat and protein.18 The study of Roberts et al supports our finding that participants with a higher dietary intake of energy, cholesterol, and protein also have a higher brain activation in DLPFC. Significant associations between B complex vitamins (riboflavin, niacin, vitamin B6, and B12) and minerals (potassium, phosphorus, and magnesium) with increased activation in DLPFC have also been observed in this study. Kim et al19 found that dietary intake of riboflavin, vitamin B6, and B12 was positively associated with cognitive function measured using objective neurocognitive assessments among older adults with MCI and AD. Increased intake of niacin was also significantly associated with a better performance in Digit Symbol test and negatively associated with risk of AD.20,21 Jernerén et al22 and Smith et al23 also suggested that vitamins B6 and B12 supplementations could slow down the rate of brain atrophy among older adults with MCI. Previous studies have found that high homocysteine levels have significant negative effects on cognitive function through the generation of oxidative stress, formation of β-amyloid, cerebrovascular ischemia, activation of tau kinases, and inhibition of methylation reactions.24 A higher intake of riboflavin, B6, and B12 was associated with a lower plasma homocysteine level.19,25,26 Therefore, these underlying mechanisms could explain the consistent link between B complex vitamin intake and brain function. Ozawa et al27 also suggested that, besides vitamins, a higher intake of minerals such as calcium, magnesium, and potassium was also associated with a lower risk in developing dementia. Another main finding of the present study indicated that an increased HDL-C level was significantly associated with a greater activation in the DLPFC region. HDL-C, also known as “good cholesterol”, has functions such as protection against endothelial dysfunction; inhibition of oxidative stress, anti-inflammation, and anti-thrombosis; and modulation of immune functions.28–31 High levels of HDL-C reduce the risk of cardiovascular diseases such as arteriosclerosis – a major risk factor for neurodegenerative disorders and cognitive impairment.7 There is also evidence that brain cholesterol is related to amyloid metabolism in the brain and disruption of cholesterol homeostasis in AD is linked to Aβ pathology.32 HDL-C binds to Aβ and maintains its solubility in cerebrospinal fluid (CSF) and plasma to prevent the formation of amyloid deposits, a pathology hallmark of AD.33 Our result is supported by several cross-sectional and longitudinal studies, which have reported that elevated HDL-C levels are positively associated with a better cognitive performance and negatively associated with the risk of MCI among elderly.34,35 Consistently, low HDL-C levels have also been found to be associated with a lower performance in working memory, immediate and delayed recall in elderly individuals.36 A previous neuroimaging study showed that young hyperlip-idemic subjects have demonstrated decreased blood flow in selected brain regions.37 Higher total cholesterol has also been associated with decreased glucose metabolism in precuneus, parietotemporal, and prefrontal regions affect by AD.38 A similar study that examined the association between cholesterol levels and activation intensities among midlife adults also demonstrated that a higher total cholesterol to HDL-C ratio was predictive of lower 2-back-related activation in brain regions implicated in working memory performance.39 Multivariate linear regression analysis also revealed that an increased intake of vitamin B6 was significantly related to a greater DLPFC activation. The average vitamin B6 intake of participants from the present study was 0.94 mg/day, which is lower than the Malaysia recommended nutrient intakes of 1.5 mg/day for women and 1.7 mg/day for men. The deficiency of vitamin B6 is associated with cognitive deficits and brain structural change.40 A higher intake of vitamin B6 was found to be related to a higher gray matter volume in superior frontal gyrus in healthy older adults.41 A positive correlation between intake of vitamin B6 and larger local cortical folding has also been found within inferior frontal gyrus and other parts of brain region.42 Vitamin B6 supplementation also led to a better preserved gray matter in subjects with MCI and Alzheimer’s disease.43 Nevertheless, literature on the relationship between vitamin B6 intake and brain activation is less extensive as compared to cognitive function and brain structural changes. Plasma lipid levels likely mediate the relationship between nutrient intake and brain activation. An increase in vitamin B6 intake may reduce blood cholesterol. For example, in a 12-week randomized controlled trial, consumption of vitamin B6 supplement was significantly associated with a reduction in total cholesterol and HDL-C among male patients with hyper-triglyceridemia.44 Vitamin B12 deficiency may also induce cholesterol biosynthesis and act as an important metabolic risk factor.45 On contrary, diet rich in saturated fats increases plasma level of total cholesterol, triglycerides, and LDL-C as compared to diet rich in monounsaturated and polyunsaturated fats.46 As mentioned earlier, the high lipid levels were associated with poor cognitive performance, reduced blood flow in brain regions, and lower brain activation.34–39 Our study also showed a positive association between MMSE score and DLPFC activation. MMSE, which measures the global cognitive function (including attention, visuospatial, and executive functions) has a high sensitivity in detecting the frontal lobe dysfunction.47 In addition, multivariate analysis also demonstrated a positive relationship between cognitive processing speed, as assessed using Digit Symbol test and DLPFC activation. DLPFC plays a pivotal role in working memory, especially in manipulation of stimuli, integration of information, selection of appropriate response during decision-making processes, and temporary storage of information.48,49 The Digit Symbol test is sensitive to cognitive changes during aging process, particularly working memory, information processing speed, and executive control function.50 This finding was supported by the evidence that cognitive processing speed is closely related to the structural integrity of white matter tracts associated with left middle frontal gyrus.51

Strengths and limitations

The strengths and limitations of the current study must be considered. The primary strength of the current study was the application of neuroimaging technique. As fMRI is noninvasive and does not involve the use of ionizing radiation, it is suitable for studies involving elderly subjects. It also provides opportunities to examine the underlying changes in cerebral hemodynamic response to modifiable lifestyle factors such as dietary intake and blood markers. Therefore, fMRI may be a more reliable and sensitive indicator of altered response among individuals at risk of cognitive impairment prior to the development of AD as compared to objective cognitive assessments.52,53 Nevertheless, the sample size was small, so the present findings must be considered as preliminary. Another limitation of this study is self-reported dietary intake for the past 7 days by participants with MCI may lead to inherent bias and underreporting. Nevertheless, the dietary history method has been proved to be a better dietary assessment tool as compared to a single 24-hour dietary recall in accessing intake among individual with short-term memory loss, such as MCI.54 We acknowledged that the study only focus on MCI subjects of which no comparison could be made with age-matched non-MCI subjects. Future study should consider this limitation. The cross-sectional nature of our study is also a limitation. There is a need for prospective study to examine the relationship between dietary intake and brain activation.

Conclusion

Increased dietary nutrient intake such as energy, protein, cholesterol, vitamin B and minerals and plasma level of HDL-C were associated with greater DLPFC activation among older adults with MCI. A higher level of plasma HDL-C, better global cognitive function, and cognitive processing speed also showed positive associations with activation in DLPFC region, which are responsible for working memory, executive function, attention, planning, and decision making. By adopting a multivariate approach, increased vitamin B6 intake and cognitive processing speed were significantly related to greater DLPFC activation, with the right middle frontal gyrus demonstrating the greatest activation. Further clinical studies are needed to elucidate the mechanisms underlying these associations.

Ethical approval

All procedures performed in this study were in accordance with the ethical standards of the Universiti Kebangsaan Malaysia Medical Center institutional research committee and the 1964 Declaration of Helsinki.
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Journal:  Front Neurosci       Date:  2020-11-03       Impact factor: 4.677

3.  Effects of 12 Weeks Cosmos caudatus Supplement among Older Adults with Mild Cognitive Impairment: A Randomized, Double-Blind and Placebo-Controlled Trial.

Authors:  Yee Xing You; Suzana Shahar; Nor Fadilah Rajab; Hasnah Haron; Hanis Mastura Yahya; Mazlyfarina Mohamad; Normah Che Din; Mohamad Yusof Maskat
Journal:  Nutrients       Date:  2021-01-29       Impact factor: 5.717

4.  Does traditional asian vegetables (ulam) consumption correlate with brain activity using fMRI? A study among aging adults from low-income households.

Authors:  Yee Xing You; Suzana Shahar; Mazlyfarina Mohamad; Hanis Mastura Yahya; Hasnah Haron; Hamzaini Abdul Hamid
Journal:  J Magn Reson Imaging       Date:  2019-08-06       Impact factor: 4.813

5.  Is There Any Relationship Between Biochemical Indices and Anthropometric Measurements With Dorsolateral Prefrontal Cortex Activation Among Older Adults With Mild Cognitive Impairment?

Authors:  Yee Xing You; Suzana Shahar; Mazlyfarina Mohamad; Nor Fadilah Rajab; Normah Che Din; Hui Jin Lau; Hamzaini Abdul Hamid
Journal:  Front Hum Neurosci       Date:  2022-01-03       Impact factor: 3.169

6.  Intrinsic Brain Activity Alterations in Patients With Mild Cognitive Impairment-to-Normal Reversion: A Resting-State Functional Magnetic Resonance Imaging Study From Voxel to Whole-Brain Level.

Authors:  Qili Hu; Qianqian Wang; Yunfei Li; Zhou Xie; Xiaomei Lin; Guofeng Huang; LinLin Zhan; Xize Jia; Xiaohu Zhao
Journal:  Front Aging Neurosci       Date:  2022-01-17       Impact factor: 5.750

  6 in total

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