The Role of Diet in the Cardiovascular Health of Childhood Cancer Survivors—A Systematic Review
Abstract
:1. Introduction
2. Methodology
2.1. Eligibility Criteria
2.2. Study Outcomes
- CVD events, including heart failure, coronary artery disease, myocardial infarction, arrhythmia, cardiomyopathy, stroke, angina pectoris, valvular abnormalities, vascular dysfunction, pericardial disease, and cardiac ischaemia.
- Cardiac dysfunction:
- Indicators measured by conventional echocardiography:
- Left ventricular systolic function: left ventricular ejection fraction and shortening fraction.
- Left ventricular diastolic function: early diastolic left ventricular filling velocity, late diastolic left ventricular filling velocity, early to late left ventricular filling velocity, mitral annular early diastolic velocity, peak mitral flow velocity, peak tricuspid regurgitation velocity, and left atrial maximum volume index.
- Indicators measured by speckle tracking echocardiography:
- Left ventricular systolic function: global longitudinal strain, global circumferential strain, and global radial strain.
- Cardiac dysfunction:
- Characteristics of obesity: body mass index (BMI), waist circumference, waist–hip ratio, percent body fat, visceral adiposity, and subcutaneous adiposity with abdominal computed tomography.
- Diabetes biomarkers: glucose, insulin, and insulin resistance.
- Hypertension indicators: blood pressure, pre-hypertension, and hypertension.
- Dyslipidaemia biomarkers: high-density lipoprotein cholesterol (HDL-C), low-density lipoprotein cholesterol (LDL-C), triglycerides, and dyslipidaemia.
- Metabolic syndrome: clustering of obesity, hypertension, diabetes, and dyslipidaemia.
2.3. Search Strategy and Study Selection
2.4. Data Extraction
- Publication information and study characteristics: title, authors, date of publication, country of publication, study design, study setting, and sample size.
- Population characteristics: sex, race/ethnicity, diagnosis (cancer type), age at childhood cancer diagnosis, age at enrolment, time since diagnosis and/or time since the end of cancer treatment, and cancer treatment history (surgery, chemotherapy, or radiation exposure).
- Study design and methodology: details of diet exposures/interventions, methods of data collection (e.g., questionnaire), outcomes (primary outcomes and secondary outcomes).
- Results: data that can demonstrate the association between diet and cardiovascular health indicators, such as Pearson’s correlation coefficient (r), linear regression analysis (β), and logistic regression (odds ratio). Alternatively, data that can show differences in cardiovascular health under different dietary conditions, such as mean values.
2.5. Quality Assessment and Synthesis Methods
3. Results
3.1. Study Selection and Characteristics
3.2. Risk of Bias
3.3. Outcomes
3.3.1. Associations between Diet and Characteristics of Obesity
3.3.2. Associations between Diet and Diabetes Biomarkers
3.3.3. Associations between Diet and Hypertension Indicators
3.3.4. Associations between Diet and Dyslipidaemia Biomarkers
3.3.5. Associations between Diet and Presence of Multiple CVD Risk Factors
3.3.6. The Effects of Diet Intervention on Cardiovascular Health
4. Discussion
4.1. Associations between Diet and Cardiovascular Health
4.2. The Effects of Diet Intervention on Cardiovascular Health
- To perform high-quality national and/or international observational studies in which confounding factors are accounted for, power calculations are performed and where appropriate (longitudinal studies) length of follow-up is reported.
- Examine associations of specific foods/nutrients, rather than overall diet quality, with cardio-metabolic risk factors to further clarify nutritional needs of survivors.
- Investigate barriers and facilitators to adopting healthy lifestyles in diverse groups of childhood cancer survivors to inform targeted behavioural interventions.
4.3. Strength and Limitations
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Conflicts of Interest
References
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Author and Country | Study Design | Participants | Age at Cancer Diagnosis | Age at Enrolment | Diagnosis | Study Aims | Exposures/Interventions | Outcome—CVD-Relevant Variables | Risk of Bias |
---|---|---|---|---|---|---|---|---|---|
(Love et al., 2011) [38] Canada | Cross-sectional study | 102 children (male, 47; female, 55) | Median age, 3.3 years (range, 0.4–11.1 years) | Median age, 14.3 years (range, 8.4–18.6 years) | ALL | Examined the relationship between BMI and demographic and lifestyle factors in a cohort of ALL survivors. | Food/nutrient intake Fat intake (g) Protein intake (g) Carbohydrate intake (g) Calorie intake (kcal) | BMI | High |
(Badr et al., 2013) [39] USA | Cross-sectional study | 170 (male, 88; female, 82) | Mean age, 9.1 years (SD, 5.5) (range, 0.27–20.1 years) | Mean age, 17.7 years (SD 5.6) (range, 3.3–28.9 years) | CNS Leukaemia Lymphoma Sarcoma | Characterize the relationship between weight status (i.e., BMI) and lifestyle behaviours (i.e., diet and physical activity) among CCSs and determine whether differences in weight status and lifestyle behaviours exist depending on group-level characteristics. | Food/nutrient intake Fruit and vegetable intake Fibre intake Energy from fat | BMI | High |
(Landy et al., 2013) [22] USA | Cross-sectional Study | 91 survivors (Male 42, Female 49) 30 siblings (Male 18, Female 12). Control group: 30 siblings | Survivors 0 to 5 years, 42 (46%); 6 to 12 years, 29 (32%); 13 years or older, 20 (22%) | Survivors 5 to 12 years, 21 (23%); 13 to 18 years, 20 (22%); 19 to 29 years, 34 (38%); 30 years or older, 16 (18%) | Leukaemia Brain cancer Sarcoma Lymphoma Other | Examine whether specific cancer diagnoses or therapies are associated with diet and how diet is related to adiposity and traditional CVD risk factors among survivors. | Diet quality/Diet Score Daily caloric Total HEI score | BMI Waist circumference Percent body fat High HOMA-IR Glucose Insulin Systolic blood pressure Diastolic blood pressure Low HDL-C High LDL-C | Moderate |
(Tonorezos et al., 2013) [25] USA | Cross-sectional Study | 117 adults (male, 52; female, 65) | Mean age, 6.7 years (SD, 4.3) | Median age 24.3 years (SD, 4.9) (range, 18–37 years) | ALL | Determine the relationship between diet and metabolic abnormalities among adult survivors of childhood ALL. | Diet quality/Diet Score Mediterranean Diet Score | BMI Waist circumference Visceral adiposity Subcutaneous adiposity High HOMA-IR Glucose Low HDL-C Triglycerides Metabolic syndrome | Moderate |
(Smith et al., 2014) [14] USA | Prospectively cohort study | 1639 adults (female, 832; male, 807) | Mean age, 7.9 years (SD, 5.5) | Median age, 32.7 years (range, 18.9–60.0 years) | Leukaemia Lymphoma Sarcoma Neuroblastoma Wilms tumour CNS Other | Characterise lifestyle habits and associations with metabolic syndrome among CCSs. | Diet quality/Diet Score WCRF/AICR guidelines | Metabolic syndrome | Moderate |
(Morel et al., 2019) [40] Canada | Cross-sectional study | Total, 241: 156 adults (57.3% male); 85 children (49.4% male) | Median age, 4.7 years (range, 0.9–18.0 years) | Median age, 21.3 years (range, 8.5–40.9 years) | ALL | This study aimed to examine the associations between food/nutrient intake and the levels of HDL-C in a cohort of children and young adult survivors of ALL. | Food/nutrient intake Energy intake (kcal) Macronutrients: Proteins (g) Carbohydrates (g) Dietary fibre (g) Lipids (g) Omega-6 (g) Omega-3 (g) Ratio w-6/w-3 Micronutrients: Calcium (mg) Iron (mg) Magnesium (mg) Phosphorus (mg) Potassium (mg) Sodium (mg) Zinc (mg) Copper (mg) Manganese (mg) Selenium (mcg) Retinol (mcg) Folic acid (mcg) Niacin (mg) Riboflavin (mg) Thiamine (mg) Vitamin B6 (mg) Vitamin B12 (mcg) Choline (mg) Vitamin C (mg) Vitamin D (mcg) Vitamin K (mcg) Food groups: Meat Fish and seafood Dairy Fat Vegetables Legumes Fruits | Low HDL-C | Low |
(Zhang et al., 2019) [43] USA | Interventional study | 15 children (male, 11; female, 4) 13 (86.7%) completed No control group | N/R | Mean age, 6.1 years (SD, 2.0) (range, 3.8–9.8 years) | ALL | Preventing excess weight gain among patients with paediatric ALL who were on treatment or within two years of treatment completion. | A 12-week lifestyle intervention delivered remotely through web-based sessions and phone calls with a lifestyle coach—HEAL intervention. | BMI Waist circumference | High |
(Belle et al., 2020) [41] Switzerland | Cross-sectional study | 802 CCSs with FFQ data (female, 401; male, 401) Sent 212 a spot urine sample collection kit. 111 morning-fasting spot urine samples (52%) were returned. | Median age, 9.7 years (range, 3.9–13.9 years) | Median age, 34.6 years (range, 28.8–41.1 years) | Leukaemia Lymphoma CNS tumour Neuroblastoma Retinoblastoma Renal tumour Hepatic tumour Bone tumour Soft tissue sarcoma Germ cell tumour Other tumours Langerhans cell histiocytosis | Assessed sodium (Na) and potassium (K) intake, estimated from FFQ and morning urine spots, and its associations with cardiovascular risk in CCSs. | Food/nutrient intake Sodium (Na) Potassium (K) | BMI CVD CVD risk factors | Moderate |
(Bérard et al., 2020) [26] Canada | Cross-Sectional Study | Total, 241: 156 adults (49.4% male); 85 children (49.4% male) | Median age 4.7 years (range, 0.9–18.0 years) | Median age, 21.3 years (range, 8.5–40.9 years) | ALL | Explores the associations between diet quality indices, cardiometabolic health indicators and inflammatory biomarkers among ALL survivors. | Diet quality/Diet Score MEDAS KIDMED HDI-2018 HEI-2015 E-DIITM FRAP % UPF | BMI Waist circumference Obesity High HOMA-IR Insulin resistance High blood pressure Hypertension Low HDL-C High LDL-C Triglycerides Dyslipidaemia 2 or more cardiometabolic complications | Low |
(Aktolan and Acar-Tek, 2022) [42] Turkey | Observational retrospective cohort study | 67 children (boys, 35; girls, 32) | Median age 4.5 years (range 1–13 years) | Median age, 9.7 years (range, 5–15 years) | ALL | Determine the prevalence and related factors of obesity/abdominal obesity and evaluate the association between nutrition and overweight/obesity after cancer treatment in paediatric ALL survivors. | Food/nutrient intake Energy Carbohydrate Protein | BMI | Low |
Outcome | Participants (Studies) a | Certainty of the Evidence (GRADE) | Key Finding | |
---|---|---|---|---|
Obesity indicators | BMI | 1635 (8) | ㊉㊉㊀㊀ | Inverse association between healthy diet (Mediterranean diet [25], fibre intake [39]) and BMI in 2 studies. Positively association between unhealthy diet (excessive energy intake [42], sodium intake [41]) and BMI in 2 studies. Dietary differences (sodium [41], total kilocalories and carbohydrates [38], HEI score [22]) existed in the obese/overweight and normal BMI groups in 3 studies. NS in 2 observational studies (carbohydrate and protein intake [42], seven nutritional scores (MEDAS, KIDMED, HDI, HEI, E-DIITM, FRAP, % UPF) [26]). NS in 1 interventional study [43]. |
Waist circumference | 2012 (4) | ㊉㊉㊀㊀ | Inverse association between healthy diet (Mediterranean diet) and waist circumference in 1 study [25]. Not adhere to the WCRF/AICR guidelines have a higher prevalence of elevated waist circumference in 1 study [14]. NS in 1 observational study (seven nutritional scores (MEDAS, KIDMED, HDI, HEI, E-DIITM, FRAP, % UPF)) [26]. NS in 1 interventional study [43]. | |
Percent body fat | 121 (1) | ㊉㊀㊀㊀ | Inverse association in 1 study (HEI score) [22]. | |
Visceral adiposity and subcutaneous adiposity | 117 (1) | ㊉㊀㊀㊀ | Inverse association in 1 study (Mediterranean diet) [25]. | |
Obesity b | 241 (1) | ㊉㊉㊀㊀ | NS in 1 observational study (seven nutritional scores (MEDAS, KIDMED, HDI, HEI, E-DIITM, FRAP, % UPF)) [26]. | |
Diabetes indicators | HOMA-IR | 479 (3) | ㊉㊉㊀㊀ | Inverse association between healthy diet (Mediterranean diet) and high HOMA-IR in 1 study [25]. Positively association between unhealthy diet (inflammatory diet—E-DII score) and high HOMA-IR in 1 study [26]. NS in 1 observational study (total daily Kcal intake and HEI score) [22]. |
Glucose | 1877 (3) | ㊉㊉㊀㊀ | Not adhere to the WCRF/AICR guidelines have a higher prevalence of elevated fasting glucose [14]. NS in 2 observational studies (total daily Kcal intake or HEI score [22], Mediterranean diet [25]). | |
Insulin | 121 (1) | ㊉㊀㊀㊀ | NS in 1 observational study (total daily Kcal or HEI score) [22]. | |
Insulin resistance c | 241 (1) | ㊉㊉㊀㊀ | NS in 1 observational study (seven nutritional scores (MEDAS, KIDMED, HDI, HEI, E-DIITM, FRAP, % UPF)) [26]. | |
Hypertension indicators | Blood pressure | 2118 (4) | ㊉㊉㊀㊀ | Inverse association between healthy diet (Mediterranean diet [25], KIDMED [26]) and high blood pressure in 2 studies. Positively association between unhealthy diet (inflammatory diet - E-DII score) and high blood pressure in 1 study [26]. Not adhere to the WCRF/AICR guidelines have a higher prevalence of high blood pressure in 1 study [14]. NS in 1 observational study (total daily caloric intake and HEI score) [22]. |
Hypertension d | 241 (1) | ㊉㊉㊀㊀ | Inverse association between healthy diet (KIDMED and HDI-2018 scores) and hypertension in 1 study [26]. | |
Dyslipidaemia indicators | HDL-C | 2359 (5) | ㊉㊉㊀㊀ | Inverse association between healthy diet (Mediterranean diet [25], nutrients intake: proteins, zinc, copper, selenium, riboflavin, niacin, meat, fruits [40]) and low HDL-C in 2 studies. Positive associations between unhealthy diet (inflammatory diet (E-DII score) and ultra-processed foods (% UPF) [26], fast food intake [40]) and low HDL-C in 2 studies. Not adhere to the WCRF/AICR guidelines have a higher prevalence of low HDL-C in 1 study [14]; NS in 1 observational study (total daily caloric intake or HEI score) [22]. |
LDL-C | 362 (2) | ㊉㊉㊀㊀ | NS in 2 observational studies (total daily caloric intake and HEI score [22], seven nutritional scores (MEDAS, KIDMED, HDI-2018, HEI-2015, E-DIITM, FRAP, % UPF) [26]). | |
Triglycerides | 1997 (3) | ㊉㊉㊀㊀ | Positively associations between unhealthy diet (ultra-processed foods (% UPF)) and high triglycerides in 1 study [26]. Not adhere to the WCRF/AICR guidelines have a higher prevalence of high triglycerides in 1 study [14]. NS in 1 observational study (Mediterranean diet) [25]. | |
Dyslipidaemia e | 241 (1) | ㊉㊉㊀㊀ | NS in 1 observational study (seven nutritional scores (MEDAS, KIDMED, HDI-2018, HEI-2015, E-DIITM, FRAP, % UPF)) [26]. | |
Presence of multiple CVD risk factors | Presence of 2 or More CVD risk factors | 1043 (2) | ㊉㊉㊉㊀ | Positively associations between unhealthy diet (inflammatory diet - E-DII score) and presence of two or more CVD risk factors in 1 study [26]; Slightly higher sodium intake in CCSs with CVD risk factors than CVD risk-free CCSs [41]. |
Metabolic syndrome f | 1756 (2) | ㊉㊉㊉㊀ | Inverse association between healthy diet (Mediterranean diet [14] and WCRF/AICR [25]) and metabolic syndrome in 2 studies. |
Study | Exposures/ Interventions | Outcomes | Data Analysis Method | Confounding (Method) | Results | ||||
---|---|---|---|---|---|---|---|---|---|
BMI | Waist Circumference | Percent Body Fat | Visceral Adiposity and Subcutaneous Adiposity | Obesity | |||||
Love et al., 2011 [38] | Fat intake (g) Protein intake (g) Carbohydrate intake (g) Calorie intake (kcal) | Participants were classified as underweight (BMI < 5th percentile), normal weight (5th to < 85 percentile), overweight (85th to 95th percentile), or obese (≥95th percentile). Calorie and macronutrient intake by weight category (whole cohort; under-reporters excluded). | Multiple regression | N/R | Mean in whole cohort: Fat (g): normal weight 74.7, overweight 60.2, ∆14.5, p = 0.02. Protein: normal weight 85.6, overweight 80. Carbohydrate (g): normal weight 281.7, overweight 242.2, ∆39, p = 0.05 Calories (kcal): normal weight 2126.7, overweight 1802.7, ∆324, p = 0.018 Mean in under reports excluded: Fat (g): normal weight 84.2, overweight 88 Protein: normal weight 90.8, overweight 106.1 Carbohydrate (g): normal weight 314.7, overweight 320.4 Calories (kcal): normal weight 2364.7, overweight 2472 | N/A | N/A | N/A | N/A |
Badr et al., 2013 [39] | Fruit and vegetable intake (servings/day) Fibre intake (g/day) Energy from fat (%) | Association between food intake and BMI. | Pearson correlations | N/R | Fibre intake: r = −0.15, p = 0.10. | N/A | N/A | N/A | N/A |
Landy et al., 2013 [22] | Daily caloric intake Total HEI scores | Association between daily caloric intake relative to IOM recommendations or HEI scores and BMI. | F test and linear regression | Age Sex | Daily caloric intake: F(2) = 0.52, p = 0.60 Total HEI scores: F(2) = 2.51, p = 0.09 | N/A | Daily caloric intake: β = −0.05, p = 0.59 Total HEI scores: β = −0.19, p = 0.04. | N/A | N/A |
Tonorezos et al., 2013 [25] | Mediterranean Diet Score | The relationship between adherence to a Mediterranean diet, measured by the Mediterranean Diet Score, and BMI (≥25 kg/m2), waist circumference (>88 cm in women; >102 cm in men), visceral and subcutaneous adiposity. | Logistic regression and linear regression | Age Sex | Logistic regression, OR (95% CI): Mediterranean Diet Score 4–5: 0.3 (0.1–0.9) Mediterranean Diet Score 6–8: 0.3 (0.1–1.1) (p = 0.04) Linear regression: β = −1.05, p = 0.004. | Logistic regression, OR (95% CI): Mediterranean Diet Score 4–5: 0.4 (0.1–1.0) Mediterranean Diet Score 6–8: 0.2 (0.1–0.7) (p = 0.003) Linear regression: β = −2.17, p = 0.005. | N/A | Linear regression: Visceral adiposity: β = −0.3, p = 0.007. Subcutaneous adiposity: β = −0.11, p = 0.001. | N/A |
Smith et al., 2014 [14] | WCRF/AICR guidelines | Associations between meeting WCRF/AICR guidelines and waist circumference. | Log-binomial regression | Age Race CRT (medical records) Education (questionnaires) Smoking status (questionnaires) Age at diagnosis (medical records) | N/A | Greater than 40% (41.6%) of the women had an elevated waist circumference, 87.0% of whom were not adherent to the WCRF/AICR guidelines. 29.9% of man had an elevated waist circumference, 91.3% of whom were not adherent to the WCRF/AICR guidelines. | N/A | N/A | N/A |
Belle et al., 2020 [41] | Na intake estimated from FFQ Na intake estimated from spot urine K intake estimated from FFQ K intake estimated from spot urine | The correlation between BMI and sodium and potassium measurements by food frequency questionnaire (FFQ) and morning-fasting spot urine samples. Mean sodium (Na) and potassium (K) intake (g/day) in childhood cancer survivors by self-repot BMI (Obese BMI > 30 kg/m2, Overweight 25 kg/m2 < BMI < 30 kg/m2, Normal/underweight BMI < 25 kg/m2), retrieved from ANCOVA. | Correlation | Sex Age at survey ICCC-3 cancer diagnosis (medical records) Education level (questionnaires) Smoking habits (questionnaires) Physical activity (questionnaires) Diet quality (Modified AHEI) Alcohol consumption (FFQ) | Na intake estimated from spot urine: r = 0.57, p < 0.05 Na intake estimated from FFQ: r = 0.16, p = N/R K intake estimated from spot urine: r = 0.04, p = N/R K intake estimated from FFQ: r = 0.03, p = N/R Mean Na intake based on FFQ (p = 0.355) Obese: 2.9 (95% CI 2.8–2.9) Overweight: 2.9 (95% CI 2.8–2.9) Normal/underweight: 2.8 (95% CI 2.8–2.9) Mean K intake based on FFQ (p = 0.296) Obese: 2.6 (95% CI 2.3–2.8) Overweight: 2.8 (95% CI 2.6–2.9) Normal/underweight: 2.8 (95% CI 2.7–2.9) Mean Na intake based on morning-fasting spot urine (p < 0.001) Obese: 4.2 (95% CI 3.8–4.6) Overweight: 3.3 (95% CI 3.0–3.6) Normal/underweight: 2.7 (95% CI 2.6–2.9) Mean K intake based on morning-fasting spot urine (p = 0.272) Obese: 2.1 (95% CI 1.5–2.7) Overweight: 1.6 (95% CI 1.1–2.1) Normal/underweight: 1.5 (95% CI 13–1.7) | N/A | N/A | N/A | N/A |
Bérard et al., 2020 [26] | MEDAS KIDMED HDI-2018 HEI-2015 E-DIITM FRAP % UPF | Association between the seven nutritional scores and high BMI, high waist circumference and obesity. Obesity was defined as having at least one of the following: BMI ≥ 30 kg/m2 in adults and ≥ 97th percentile in children, waist circumference ≥ 102 cm in men, ≥88 cm in women and ≥ 95th percentile in children. | Logistic regression | Sex Survival time (medical records) | No statistically significant association between the seven dietary scores and high BMI (no p < 0.05). Tertile 2 vs. 1, OR (95% CI) MEDAS: 1.114 (0.38–3.20), p = 0.84 KIDMED: 1.147 (0.15–8.68), p = 0.90 HDI-2018: 1.259 (0.49–3.25), p = 0.63 HEI-2015: 1.225 (0.46–3.24), p = 0.68 E-DIITM: 1.297 (0.50–3.34), p = 0.59 FRAP: 1.372 (0.52–3.59), p = 0.51 % UPF: 0.360 (0.10–1.24), p = 0.11 Tertile 3 vs. 1, OR (95% CI) MEDAS: 0.990 (0.32–3.11), p = 0.99 KIDMED: 1.010 (0.12–8.42), p = 0.89 HDI-2018: 0.811 (0.30–2.21), p = 0.63 HEI-2015: 1.162 (0.44–3.10), p = 0.76 E-DIITM: 1.260 (0.47–3.41), p = 0.65 FRAP: 0.556 (0.19–1.67), p = 0.52 % UPF: 0.929 (0.34–2.58), p = 0.89 Tertile 2 and 3 vs. 1, OR (95% CI) MEDAS: 1.004 (0.39–2.57), p = 0.99 KIDMED: 1.056 (0.17–6.52), p = 0.95 HDI-2018: 0.949 (0.41–2.20), p = 0.90 HEI-2015: 1.295 (0.55–3.06), p = 0.56 E-DIITM: 1.280 (0.55–3.01), p = 0.57 FRAP: 0.946 (0.39–2.33), p = 0.90 % UPF: 0.619 (0.25–1.54), p = 0.30 | No statistically significant association between the seven dietary scores and high waist circumference (no p < 0.05). Tertile 2 vs. 1, OR (95% CI) MEDAS: 0.374 (0.14–1.04), p = 0.06 KIDMED: 0.429 (0.12–1.50), p = 0.18 HDI-2018: 0.983 (0.48–2.02), p = 0.96 HEI-2015: 0.859 (0.43–1.74), p = 0.67 E-DIITM: 1.089 (0.54–2.18), p = 0.81 FRAP: 1.259 (0.62–2.56), p = 0.53 % UPF: 0.622 (0.28–1.37), p = 0.24 Tertile 3 vs. 1, OR (95% CI) MEDAS: 0.671 (0.25–4.12), p = 0.44 KIDMED: 0.638 (0.20–2.00), p = 0.44 HDI-2018: 1.161 (0.57–2.35), p = 0.68 HEI-2015: 0.770 (0.38–1.57), p = 0.47 E-DIITM: 1.574 (0.76–3.26), p = 0.22 FRAP: 0.994 (0.46–2.17), p = 0.99 % UPF: 0.968 (0.44–2.13), p = 0.94 Tertile 2 and 3 vs. 1, OR (95% CI) MEDAS: 0.470 (0.19–1.14), p = 0.09 KIDMED: 0.646 (0.23–1.82), p = 0.41 HDI-2018: 1.002 (0.54–1.85), p = 1.00 HEI-2015: 0.774 (0.41–1.42), p =0.41 E-DIITM: 1.283 (0.69–2.37), p = 0.43 FRAP: 1.144 (0.60–2.19), p = 0.69 % UPF: 0.772 (0.39–1.51), p = 0.45 | N/A | N/A | No statistically significant association between the seven dietary scores and obesity (no p < 0.05). Tertile 2 vs. 1, OR (95% CI) MEDAS: 0.599 (0.23–1.53), p = 0.29 KIDMED: 0.429 (0.12–1.49), p = 0.19 HDI-2018: 1.039 (0.51–2.10), p = 0.92 HEI-2015: 0.884 (0.44–1.77), p = 0.73 E-DIITM: 1.137 (0.57–2.27), p = 0.72 FRAP: 1.212 (0.60–2.44), p = 0.59 % UPF: 0.578 (0.26–1.27), p = 0.17 Tertile 3 vs. 1, OR (95% CI) MEDAS: 0.799 (0.30–2.10), p = 0.65 KIDMED: 0.638 (0.20–2.00), p = 0.44 HDI-2018: 1.093 (0.54–2.20), p = 0.80 HEI-2015: 798 (0.40–1.61), p = 0.53 E-DIITM: 1.686 (0.82–3.46), p = 0.16 FRAP: 0.904 (0.42–1.95), p = 0.80 % UPF: 1.002 (0.46–2.17), p = 1.00 Tertile 2 and 3 vs. 1, OR (95% CI) MEDAS: 0.571 (0.25–1.31), p = 0.19 KIDMED: 0.646 (0.23–1.82), p = 0.41 HDI-2018: 1.240 (0.70–2.21), p = 0.46 HEI-2015: 0.801 (0.44–1.46), p = 0.47 E-DIITM: 1.356 (0.74–2.50), p = 0.33 FRAP: 1.075 (0.57–2.04), p = 0.83 % UPF: 0.759 (0.39–1.47), p = 0.41 |
Aktolan and Acar-Tek, 2022 [42] | Energy Carbohydrate Protein | The subjects were classified into four categories of BMI for age z score (BAZ): underweight (≤−2 SD to −1 SD), normal weight (–1 SD to 1 SD), overweight (1 SD to 2 SD), and obese (≥2 SD). Logistic regression models constructed to examine energy, carbohydrate, and protein for being overweight or obese in remission. | Logistic regression | Sex Age at diagnosis (medical records) Receipt of CRT (medical records) Treatment risk category (medical records) | OR (95% CI), p-value Excessive energy: 3.217 (0.181–8.761), p = 0.022 Excessive carbohydrate: 0.615(0.210–1.800) p = 0.375 Excessive Protein: 0.402 (0.150-.,077) p = 0.7 | N/A | N/A | N/A | N/A |
Study ID | Exposures/ Interventions | Outcomes | Data Analysis Method | Confounding (Method) | Results | |||
---|---|---|---|---|---|---|---|---|
HOMA-IR | Glucose | Insulin | Insulin Resistance | |||||
Tonorezos et al., 2013 [25] | Mediterranean Diet Score | The relationship between adherence to a Mediterranean diet, measured by the Mediterranean Diet Score, and HOMA-IR ≥ 2.86 and Glucose ≥ 100 mg/dl. | Logistic regression | Age Sex | OR (95% CI): Mediterranean Diet Score 4–5: 1.5 (0.6–3.8) Mediterranean Diet Score 6–8: 0.6 (0.2–1.6) (p = 0.36) Higher dairy intake was associated with higher HOMA-IR [insulin resistance, (b = −1.06; p = 0.029)]. | OR (95% CI): Mediterranean Diet Score 4–5: 3.5 (0.9–14.5) Mediterranean Diet Score 6–8: 0.7 (0.1–1.6) (p = 0.96) | N/A | N/A |
Landy et al., 2013 [22] | Daily caloric intake, Total HEI score | Associations between total daily caloric intake relative to IOM recommendations or HEI scores and individual CVD risk factors including HOMA-IR, glucose, insulin. | Multivariate linear regression | Age Sex | Daily caloric intake: β = 0.19, p = 0.10 Total HEI score: β = 0.00, p = 0.97 | Daily caloric intake: β = 0.05, p = 0.63 Total HEI score: β = 0.08, p = 0.48 | Daily caloric intake: β = 0.18, p = 0.11 Total HEI score: β = 0.00, p = 0.97 | N/A |
Smith et al., 2014 [14] | WCRF/AICR guidelines | Associations between meeting WCRF/AICR guidelines and fasting glucose. | Log-binomial regression | Age Race CRT (medical records) Education (questionnaires) Smoking status (questionnaires) Age at diagnosis (medical records) | N/A | Of the 38.2% of men with elevated fasting glucose, 80.8% were not adherent to the WCRF/AICR guidelines. 24.9% of women with elevated fasting glucose, 83.1% were not adherent to the WCRF/AICR guidelines. | N/A | N/A |
Bérard et al., 2020 [26] | MEDAS KIDMED HDI-2018 HEI-2015 E-DIITM FRAP % UPF | Association between adherence to nutritional scores and high HOMA-IR and insulin resistance. Insulin resistance was defined as having at least one of the following: blood fasting glucose ≥ 6.1 mmol/L (109.8 mg/dL), glycated haemoglobin ≥ 6% and <6.5% and homeostasis model assessment-insulin resistance ≥ 2.86 in adults and ≥95th percentile in children. | Logistic regression | Sex Survivor time (medical records) | Tertile 2 vs. 1, OR (95% CI) MEDAS: 1.621 (0.59–4.48), p = 0.35 KIDMED: 0.675 (0.14–3.37), p = 0.63 HDI-2018: 0.894 (0.35–2.26), p = 0.81 HEI-2015: 1.660 (0.69–3.98), p = 0.26 E-DIITM: 2.667 (1.11–6.43), p = 0.03 FRAP: 0.897 (0.38–2.13), p = 0.81 % UPF: 0.341 (0.11–1.03), p = 0.06 Tertile 3 vs. 1, OR (95% CI) MEDAS: 0.760 (0.23–2.47), p = 0.65 KIDMED: 0.629 (0.12–3.28), p = 0.58 HDI–2018: 1.302 (0.55–3.11), p = 0.55 HEI–2015: 0.947 (0.37–2.44), p = 0.91 E-DIITM: 1.349 (0.50–3.68), p = 0.56 FRAP: 0–540 (0.20–1.45), p = 0.22 % UPF: 0.763 (0.30–1.97), p = 0.58 Tertile 2 and 3 vs. 1, OR (95% CI) MEDAS: 0.741 (0.30–1.84), p = 0.50 KIDMED: 0.615 (0.15–2.51), p = 0.50 HDI–2018: 1.109 (0.51–2.41), p = 0.79 HEI–2015: 1.207 (0.55–2.64), p = 0.64 E-DIITM: 2.047 (0.89–4.70), p = 0.09 FRAP: 0.733 (0.33–1.64), p = 0.45 % UPF: 0.533 (0.23–1.23), p = 0.14 | N/A | N/A | A more pro–inflammatory diet was positively associated with insulin resistance and hypertension, but results were not statistically significant. (no p < 0.05). Tertile 2 vs. 1, OR (95% CI) MEDAS: 1.641 (0.59–4.55), p = 0.34 KIDMED: 0.675 (0.14–3.37), p = 0.63 HDI-2018: 0.903 (0.36–2.28), p = 0.83 HEI-2015: 1.746 (0.73–4.16), p = 0.21 E-DIITM: 2.144 (0.93–4.95), p = 0.07 FRAP: 0.917 (0.39–2.17), p = 0.84 % UPF: 0.508 (0.19–1.39), p = 0.19 Tertile 3 vs. 1, OR (95% CI) MEDAS: 1.040 (0.34–3.21), p = 0.95 KIDMED: 0.629 (0.12–3.28), p = 0.58 HDI-2018: 1.512 (0.64–3.56), p = 0.34 HEI-2015: 1.017 (0.40–2.58), p = 0.97 E-DIITM: 1.095 (0.42–2.87), p = 0.85 FRAP: 0.695 (0.27–1.80), p = 0.45 % UPF: 0.800 (0.31–2.06), p = 0.64 Tertile 2 and 3 vs. 1, OR (95% CI) MEDAS: 0.845 (0.35–2.07), p = 0.71 KIDMED: 0.615 (0.15–2.51), p = 0.50 HDI-2018: 1.212 (0.56–2.61), p = 0.62 HEI-2015: 1.284 (0.59–2.79), p = 0.53 E-DIITM: 1.650 (0.75–3.62)), p = 0.21 FRAP: 0.817 (0.37–1.81), p = 0.62 % UPF: 0.642 (0.28–1.46), p = 0.29 |
Study ID | Exposures/ Interventions | Outcomes | Data Analysis Method | Confounding (Method) | Results | |
---|---|---|---|---|---|---|
Blood Pressure | Hypertension | |||||
Landy et al., 2013 [22] | Daily caloric intake Total HEI score | Associations between total daily caloric intake relative to IOM recommendations or HEI scores and systolic and diastolic blood pressure. | Multivariate linear regression | Age Sex | Systolic blood pressure: Daily caloric intake β = 0.18, p = 0.09 Total HEI score β = −0.05, p = 0.61 Diastolic blood pressure: Daily caloric intake β = −0.09, p = 0.41 Total HEI score: β = 0.05, p = 0.59 | N/A |
Tonorezos et al., 2013 [25] | Mediterranean Diet Score | The relationship between adherence to a Mediterranean diet, measured by the Mediterranean Diet Score, and blood pressure (systolic blood pressure ≥ 130 mmHg, diastolic blood pressure ≥ 85 mmHg). | Logistic regression | Age Sex | OR (95% CI) Systolic blood pressure ≥ 130 mmHg Mediterranean Diet Score 4–5: 0.4 (0.1–1.8) Mediterranean Diet Score 6–8: N/A (p = 0.03) Diastolic blood pressure ≥85 mmHg Mediterranean Diet Score 4–5: 0.3 (0.1–1.8) Mediterranean Diet Score 6–8: N/A (p = 0.028) | N/A |
Smith et al., 2014 [14] | WCRF/AICR guidelines | Associations between meeting WCRF/AICR guidelines and blood pressure. | Log-binomial regression | Age Race CRT (medical records) Education (questionnaires) Smoking status (questionnaires) Age at diagnosis (medical records) | Of the men with hypertension (53.0%), 78.9% did not follow WCRF/AICR guidelines. 40.6% women with high blood pressure; 78.8% did not follow WCRF/AICR guidelines. | N/A |
Bérard et al., 2020 [26] | MEDAS KIDMED HDI-2018 HEI-2015 E-DIITM FRAP % UPF | Association between adherence to nutritional scores and blood pressure and hypertension. Pre-hypertension and hypertension were defined, respectively, as blood pressure ≥ 130/85 and <140/90 mmHg in adults and ≥90th and <95th percentile for age and height in children and ≥140/90 mmHg or taking medication in adults and ≥95th percentile for age and height or taking medication in children. | Logistic regression | Sex Survivor time (medical records) | Tertile 2 vs. 1, OR (95% CI) MEDAS: 1.714 (0.55–5.38), p = 0.36 KIDMED: 0.117 (0.01–1.28), p = 0.08 HDI-2018: 0.945 (0.37–2.42), p = 0.91 HEI-2015: 0.500 (0.18–1.42), p = 0.19 E-DIITM: 3.029 (1.01–9.11), p = 0.049 FRAP: 0.723 (0.27–1.96), p = 0.52 % UPF: 0.781 (0.24–2.57), p = 0.68 Tertile 3 vs. 1, OR (95% CI) MEDAS: 1.021 (0.25-4.12), p = 0.98 KIDMED: 0.275 (0.04–1.72), p = 0.17 HDI-2018: 0.425 (0.14–1.31), p = 0.14 HEI-2015: 0.821 (0.32–2.10), p = 0.68 E-DIITM: 1.135 (0.35–3.71), p = 0.83 FRAP: 0.518 (0.17–1.55), p = 0.24 % UPF: 1.078 (0.36–3.33), p = 0.89 Tertile 2 and 3 vs. 1, OR (95% CI) MEDAS: 1.483 (0.52–4.26), p = 0.46 KIDMED: 0.193 (0.04–1.00), p = 0.050 HDI-2018: 0.589 (0.25–1.37), p = 0.22 HEI-2015: 0.696 (0.31–1.57), p = 0.38 E-DIITM: 1.928 (0.68–5.44), p = 0.21 FRAP: 0.625 (0.26–1.53), p = 0.31 % UPF: 0.934 (0.35–2.53), p = 0.89 | Tertile 2 vs. 1, OR (95% CI) MEDAS: 1.714 (0.55–5.38), p = 0.36 KIDMED: 0.117 (0.01–1.28), p = 0.08 HDI-2018: 0.945 (0.37–2.42), p = 0.91 HEI-2015: 0.500 (0.18–1.42), p = 0.19 E-DIITM: 3.029 (1.00–9.11), p = 0.049 FRAP: 0.723 (0.27–1.96), p = 0.52 % UPF: 0.781 (0.24–2.57), p = 0.68 Tertile 3 vs. 1, OR (95% CI) MEDAS: 1.021 (0.25–4.12), p = 0.98 KIDMED: 0.275 (0.04–1.72), p = 0.17 HDI-2018: 0.425 (0.14–1.31), p = 0.14 HEI-2015: 0.821 (0.32–2.10), p = 0.68 E-DIITM: 1.135 (0.35–3.71), p = 0.83 FRAP: 0.518 (0.17–1.55), p = 0.24 % UPF: 1.078 (0.36–3.24), p = 0.89 Tertile 2 and 3 vs. 1, OR (95% CI) MEDAS: 1.483 (0.52-4.26), p = 0.46 KIDMED: 0.193 (0.04–1.00), p = 0.050 HDI-2018: 0.447 (0.20–1.00), p = 0.051 HEI-2015: 0.696 (0.31–1.57), p = 0.38 E-DIITM: 1.928 (0.68–5.44), p = 0.21 FRAP: 0.609 (0.27–1.39), p = 0.24 % UPF: 0.934 (0.35–2.53), p = 0.89 |
Study | Exposures/ Interventions | Outcomes | Data Analysis Method | Confounding (Method) | Results | |||
---|---|---|---|---|---|---|---|---|
HDL-C | LDL-C | Triglycerides | Dyslipidaemia | |||||
Landy et al., 2013 [22] | Daily caloric intake Total HEI score | Associations between total daily caloric intake relative to IOM recommendations or HEI scores and LDL and HDL cholesterol. | Multivariate linear regression | Age Sex | Daily caloric intake β = −0.08, p = 0.47 Total HEI score β = 0.11, p = 0.31 | Daily caloric intake β = 0.08, p = 0.46 Total HEI score β = −0.02, p = 0.81 | N/A | N/A |
Tonorezos et al., 2013 [25] | Mediterranean Diet Score | The relationship between adherence to a Mediterranean diet, measured by the Mediterranean Diet Score, and HDL-C and triglycerides. | Logistic regression | Age Sex | OR (95% CI) Mediterranean Diet Score 4–5: 0.5 (0.1–1.5) Mediterranean Diet Score 6–8: 0.2 (0.1–0.8) (p = 0.01) | N/A | OR (95% CI) Mediterranean Diet Score 4–5: 1.1 (0.4–3.1) Mediterranean Diet Score 6–8: 0.6 (0.2–2.2) (p = 0.5) | N/A |
Smith et al., 2014 [14] | WCRF/AICR guidelines | Associations between meeting WCRF/AICR guidelines and low HDL and high triglycerides. | Log-binomial regression | Age Race CRT (medical records) Education (questionnaires) Smoking status (questionnaires) Age at diagnosis (medical records) | Among the 42.6% of female with low HDL, 81.6% did not follow the WCRF/AICR guidelines. 38.2% of male with low HDL, 81.7% did not follow the WCRF/AICR guidelines. | N/A | Among the 21% of female with high triglycerides, 76.7% did not follow the WCRF/AICR guidelines. 33.8% of male with high triglycerides, 82.2% did not follow the WCRF/AICR guidelines. | N/A |
Morel et al., 2019 [40] | Macronutrient Minerals Vitamins Food groups | Association between macronutrient, minerals, vitamins, food groups intake and low HDL-C in ALL survivors. | Logistic regression | BMI (kg/m2) (anthropometric evaluations) Age at diagnosis (years) (medical records) Age at diagnosis squared (years) (medical records) Sex (female) (medical records) Total energy intake (kcal) (FFQ and calculation) Moderate-to-vigorous physical activity (minutes per day) (Minnesota Leisure Time Physical Activity Questionnaire and the Tecumseh Self-Administered Occupational Physical Activity Questionnaire) | Tertile 2 vs. Tertile 1, OR (95% CI) Macronutrients Proteins: 0.300 (0.12–0.74), p = 0.009 Carbohydrates: 0.705 (0.29–1.70), p = 0.436 Fat: 0.723 (0.30–1.74), p = 0.468 Fibre: 0.914 (0.41–2.02), p = 0.824 Omega-3: 1.347 (0.59–3.05), p = 0.475 Omega-6: 0.897 (0.39–2.10), p = 0.800 Ratio omega-3:omega-6: 1.087 (0.48–2.44), p = 0.840 Minerals Calcium: 0.774 (0.33–1.80), p = 0.553 Magnesium: 0.624 (0.27–1.42), p = 0.262 Phosphorus: 0.362 (0.15–0.88), p = 0.024 Potassium: 0.754 (0.32–1.79), p = 0.523 Sodium: 0.382 (0.15–0.97), p = 0.044 Iron: 0.478 (0.21–1.11), p = 0.086 Zinc: 0.311 (0.13–0.76), p = 0.010 Copper: 0.32 (0.13–0.76), p = 0.009 Manganese: 0.616 (0.27–1.39), p = 0.243 Selenium: 0.377 (0.16–0.89), p = 0.026 Vitamins Retinol: 0.639 (0.28–1.47), p = 0.291 Alpha-carotene: 1.444 (0.66–3.16), p = 0.356 Beta-carotene: 1.523 (0.67–3.44, p = 0.312 Thiamine: 0.634 (0.27–1.51), p = 0.302 Riboflavin: 0.300 (0.12–0.74), p = 0.009 Niacin: 0.268 (0.11–0.65), p = 0.004 Vitamin B6: 0.871 (0.38–2.01), p = 0.747 Choline: 0.480 (0.20–1.16), p = 0.104 Folic acid: 0.624 (0.26–1.47), p = 0.281 Vitamin B12: 0.713 (0.31–1.63), p = 0.424 Vitamin C: 0.850 (0.37–1.93), p = 0.698 Vitamin D: 0.713 (0.32–1.60), p = 0.414 Vitamin K: 1.181 (0.51–2.71), p = 0.695 Food groups Meat: 0.572 (0.23–1.40), p = 0.222 Fish and seafood: 1.166 (0.49–2.80), p = 0.731 Dairy: 0.886 (0.36–2.18), p = 0.792 Fat: 1.179 (0.48–2.92), p = 0.722 Vegetables: 1.165 (0.44–3.07), p = 0.757 Legumes: 1.016 (0.41–2.51), p = 0.971 Fruits: 0.261 (0.10–0.70), p = 0.008 Fast food: 2.405 (1.03–5.63), p = 0.043 Tertile 3 vs. Tertile 1, OR (95% CI) Macronutrients Proteins: 0.289 (0.08–1.00), p = 0.05 Carbohydrates: 0.612 (0.17–2.19), p = 0.450 Fat: 0.876 (0.26–2.91), p = 0.829 Fibre: 0.603 (0.23–1.59), p = 0.308 Omega-3: 1.002 (0.40–2.53), p = 0.995 Omega-6: 0.652 (0.26–1.61), p = 0.354 Ratio omega-3:omega-6: 1.385 (0.62–3.09), p = 0.426 Minerals Calcium: 0.830 (0.31–2.22), p = 0.711 Magnesium: 0.350 (0.11–1.12), p = 0.078 Phosphorus: 0.333 (0.10–1.13), p = 0.077 Potassium: 0.692 (0.22–2.18), p = 0.52 Sodium: 1.134 (0.35–3.65), p = 0.832 Iron: 0.395 (0.12–1.27), p = 0.118 Zinc: 0.257 (0.08–0.84), p = 0.025 Copper: 0.27 (0.09–0.81), p = 0.020 Manganese: 0.639 (0.25–1.60), p = 0.340 Selenium: 0.175 (0.05–0.62), p = 0.007 Vitamins Retinol: 0.609 (0.24–1.56), p = 0.301 Alpha-carotene: 0.880 (0.39–2.00), p = 0.760 Beta-carotene: 0.887 (0.37–2.15), p = 0.790 Thiamine: 0.741 (0.26–2.11), p = 0.575 Riboflavin: 0.248 (0.07–0.86), p = 0.028 Niacin: 0.263 (0.08–0.88), p = 0.030 Vitamin B6: 0.395 (0.12–1.27), p = 0.119 Choline: 0.518 (0.18–1.50), p = 0.225 Folic acid: 0.571 (0.20–1.66), p = 0.304 Vitamin B12: 0.580 (0.22–1.55), p = 0.276 Vitamin C: 0.864 (0.36–2.07), p = 0.744 Vitamin D: 0.633 (0.26–1.53), p = 0.309 Vitamin K: 0.988 (0.41–2.40), p = 0.978 Food groups Meat: 0.277 (0.09–0.83), p = 0.022 Fish and seafood: 0.630 (0.24–1.63), p = 0.339 Dairy: 1.155 (0.43–3.09), p = 0.775 Fat: 1.581 (0.57–4.39), p = 0.379 Vegetables: 1.282 (0.46–3.54), p = 0.632 Legumes: 0.902 (0.39–2.08), p = 0.809 Fruits: 0.920 (0.38–2.24), p = 0.854 Fast food: 2.260 (0.85–6.03), p = 0.104 | N/A | N/A | N/A |
Bérard et al., 2020 [26] | MEDAS KIDMED HDI-2018 HEI-2015 E-DIITM FRAP % UPF | Association between adherence to nutritional scores and low HDL-C, high LDL-C, high triglycerides, dyslipidaemia. Dyslipidaemia was defined as having at least one of the following: triglycerides ≥ 1.7 mmol/L (150.6 mg/dL) in adults and ≥1.47 mmol/L (130.2 mg/dL) in children, LDL-C ≥ 3.4 mmol/L (131.5 mg/dL) in adults and ≥ 3.36 mmol/L (129.9 mg/dL) in children, HDL-C < 1.03 in men (39.8 mg/dL), and <1.3 mmol/L (50.3 mg/dL) in women and < 1.03 mmol/L (39.8 mg/dL) in children. | Logistic regression | Sex Survivor time (Medical records) | Tertile 2 vs. 1, OR (95% CI) MEDAS: 0.401 (0.15–1.05), p = 0.06 KIDMED: 0.507 (0.09–2.89), p = 0.45 HDI-2018: 1.567 (0.73–3.38), p = 0.25 HEI-2015: 1.170 (0.56–2.45), p = 0.68 E-DIITM: 2.318 (1.04–5.16), p = 0.04 FRAP: 0.749 (0.34–1.64), p = 0.47 % UPF: 1.410 (0.55–3.64), p = 0.48 Tertile 3 vs. 1, OR (95% CI) MEDAS: 0.636 (0.24–1.67), p = 0.36 KIDMED: 1.398 (0.31–6.35), p = 0.67 HDI-2018: 0.832 (0.37–1.89), p = 0.66 HEI-2015: 0.689 (0.31–1.53), p = 0.36 E-DIITM: 2.414 (1.04–5.58), p = 0.04 FRAP: 0.603 (0.26-1.41), p = 0.24 % UPF: 3.885 (1.54–9.80), p = 0.004 Tertile 2 and 3 vs. 1, OR (95% CI) MEDAS: 0.500 (0.22–1.14), p = 0.10 KIDMED: 0.883 (0.22–3.53), p = 0.86 HDI-2018: 1.244 (0.63–2.47), p = 0.53 HEI-2015: 0.911 (0.47–1.76), p = 0.78 E-DIITM: 2.359 (1.13–4.92), p = 0.02 FRAP: 0.682 (0.34–1.39), p = 0.29 % UPF: 2.323 (1.02–5.28), p = 0.04 | No statistically significant association between the seven dietary scores and high LDL-C (no p < 0.05). Tertile 2 vs. 1, OR (95% CI) MEDAS: 1.025 (0.41–2.60), p = 0.96 KIDMED: 0.379 (0.05–2.93), p = 0.35 HDI-2018: 1.087 (0.46–2.60), p = 0.85 HEI-2015: 0.729 (0.31–1.72), p = 0.47 E-DIITM: 1.200 (0.50–2.89), p = 0.68 FRAP: 1.615 (0.62–4.17), p = 0.32 % UPF: 0.407 (0.15–1.13), p = 0.09 Tertile 3 vs. 1, OR (95% CI) MEDAS: 0.744 (0.26–2.10), p = 0.58 KIDMED: 0.571 (0.08–4.02), p = 0.57 HDI-2018: 0.726 (0.29–1.81), p = 0.49 HEI-2015: 0.705 (0.29–1.69), p = 0.43 E-DIITM: 1.183 (0.48–2.93), p = 0.72 FRAP: 1.247 (0.47–3.33), p = 0.66 % UPF: 0.728 (0.29–1.84), p = 0.50 Tertile 2 and 3 vs. 1, OR (95% CI) MEDAS: 1.006 (0.44–2.30), p = 0.99 KIDMED: 0.448 (0.08–2.41), p = 0.35 HDI-2018: 0.749 0.35–1.61), p = 0.46 HEI-2015: 0.675 (0.32–1.41), p = 0.30 E-DIITM: 1.192 (0.54–2.62), p = 0.66 FRAP: 1.429 (0.60–3.40), p = 0.42 % UPF: 0.556 (0.25–1.26), p = 0.16 | Tertile 2 vs. 1, OR (95% CI) MEDAS: 1.708 (0.55–5.30), p = 0.35 KIDMED: 0.628 (0.09–4.28), p = 0.64 HDI-2018: 1.198 (0.47–3.03), p = 0.70 HEI-2015: 0.705 (0.28–1.79), p = 0.46 E-DIITM: 0.937 (0.34–2.59), p = 0.90 FRAP: 2.460 (0.86–7.00), p = 0.09 % UPF: 2.998 (0.74–12.1), p = 0.12 Tertile 3 vs. 1, OR (95% CI) MEDAS: 0.820 (0.22–3.13), p = 0.77 KIDMED: 0.701 (0.13–3.89), p = 0.68 HDI-2018: 0.607 (0.21–1.73), p = 0.35 HEI-2015: 0.459 (0.17–1.23), p = 0.14 E-DIITM: 1.658 (0.62–4.41), p = 0.31 FRAP: 1.870 (0.59–5.95), p = 0.29 % UPF: 5.434 (1.38–21.4), p = 0.02 Tertile 2 and 3 vs. 1, OR (95% CI) MEDAS: 1.586 (0.54–4.52), p = 0.40 KIDMED: 1.150 (0.23–5.82), p = 0.87 HDI-2018: 0.890 (0.39–2.05), p = 0.78 HEI-2015: 0.644 (0.28–1.46), p = 0.29 E-DIITM: 1.240 (0.52–2.94), p = 0.63 FRAP: 2.217 (0.82–5.99), p = 0.12 % UPF: 4.021 (1.12–14.5), p = 0.03 | No statistically significant association between the seven dietary scores and dyslipidaemia (no p < 0.05). Tertile 2 vs. 1, OR (95% CI) MEDAS: 0.584 (0.26–1.31), p = 0.19 KIDMED: 0.652 (0.18–2.37), p = 0.52 HDI-2018: 1.356 (0.69–2.65), p = 0.37 HEI-2015: 0.973 (0.50-1.88), p = 0.93 E-DIITM: 1.445 (0.75–2.80), p = 0.28 FRAP: 1.406 (0.71–2.78), p = 0.33 % UPF: 1.089 (0.52–2.30), p = 0.82 Tertile 3 vs. 1, OR (95% CI) MEDAS: 0.603 (0.25–1.44), p = 0.26 KIDMED: 1.076 (0.33–3.55), p = 0.90 HDI-2018: 0.804 (0.41–1.59), p = 0.53 HEI-2015: 0.728 (0.37–1.42), p = 0.35 E-DIITM: 1.572 (0.79–3.13), p = 0.20 FRAP: 1.406 (0.68–2.90), p = 0.36 % UPF: 1.983 (0.93–4.21), p = 0.08 Tertile 2 and 3 vs. 1, OR (95% CI) MEDAS: 0.653 (0.32–1.33), p = 0.24 KIDMED: 1.107 (0.37–3.31), p = 0.86 HDI-2018: 1.077 (0.62–1.89), p = 0.80 HEI-2015: 0.817 (0.46–1.44), p = 0.49 E-DIITM: 1.502 (0.83–2.71), p = 0.18 FRAP: 1.406 (0.76–2.61), p = 0.28 % UPF: 1.456 (0.76–2.79), p = 0.26 |
Study | Exposures/ Interventions | Outcomes | Data Analysis Method | Confounding (Method) | Results | |
---|---|---|---|---|---|---|
Presence of 2 or CVD Risk Factors | Metabolic Syndrome | |||||
Tonorezos et al., 2013 [25] | Mediterranean Diet Score | The relationship between adherence to a Mediterranean diet, measured by the Mediterranean Diet Score, and metabolic syndrome. | Logistic regression | Age Sex | N/A | OR (95% CI) Mediterranean Diet Score 4–5: 0.9 (0.3–2.7) Mediterranean Diet Score 6–8: 0.1 (0.01–0.9) (p = 0.04) For each point higher on the Mediterranean Diet Score, the odds of having the metabolic syndrome fell by 31% (OR 0.69, for each point higher on the Mediterranean Diet Score, adjusted for age and sex (95% CI 0.50, 0.94; p = 0.019)). |
Smith et al., 2014 [14] | WCRF/AICR guidelines | Association Between WCRF/AICR guidelines <4 and Metabolic Syndrome. | Log-binomial regression models | Age Age at diagnosis (medical records) CRT (medical records) Education (questionnaires) Household income (questionnaires) | N/A | Relative risks (95% CI) Female: 2.4 (1.7–3.3) Male: 2.2 (1.6–3.0) |
Belle et al., 2020 [41] | Na intake estimated from FFQ Na intake estimated from spot urine K intake estimated from FFQ K intake estimated from spot urine | Mean sodium (Na) and potassium (K) intake (g/day) in childhood cancer survivors by personal history of CVD and risk factors: (1) “CVD” including heart attack, cardiomyopathy, angina pectoris, atrial fibrillation, arteriosclerosis, stroke, transient ischemic attack (TIA), and/or deep venous thrombosis; (2) “CVD risk factors” including hypertension (repeated high blood pressure measurements or antihypertensive medication treatment), obesity, diabetes mellitus treated with either tablets or insulin, current smoking, and/or high cholesterol defined as treatment with lipid-lowering medications, or (3) “CVD risk-free” if survivors did not report any of these conditions. | ANCOVA | Sex Age at survey ICCC-3 cancer diagnosis (medical records) Education level (questionnaires) Smoking habits (questionnaires) Physical activity (questionnaires) Diet quality (modified AHEI) Alcohol consumption (FFQ) | Mean Na intake based on FFQ (p = 0.538) CVD: 2.9 (95% CI 2.8–2.9) CVD risk factors: 2.8 (95% CI 2.8–2.9) CVD risk-free: 2.8 (95% CI 2.8–2.9) Mean K intake based on FFQ (p = 0.058) CVD: 2.7 (95% CI 2.5–2.9) CVD risk factors: 2.6 (95% CI 2.4–2.7) CVD risk-free: 2.8 (95% CI 2.7–2.9) Mean Na intake based on morning-fasting spot urine (p = 0.017) CVD: 2.7 (95% CI 2.3–3.0) CVD risk factors: 3.3 (95% CI 3.0–3.6) CVD risk-free: 2.9 (95% CI 2.7–3.0) Mean K intake based on morning-fasting spot urine (p = 0.490) CVD: 1.3 (95% CI 0.8–1.8) CVD risk factors: 1.7 (95% CI 1.3–2.1) CVD risk-free: 1.6 (95% CI 1.4–1.8) | N/A |
Bérard et al., 2020 [26] | MEDAS KIDMED HDI-2018 HEI-2015 E-DIITM FRAP % UPF | Association between adherence to nutritional scores and having ≥2 cardiometabolic complications, including dyslipidaemia, pre-hypertension or hypertension, obesity, and insulin resistance. | Logistic regression | Sex Survivor time (medical records) | Tertile 2 vs. 1, OR (95% CI) MEDAS: 0.800 (0.33–1.97), p = 0.63 KIDMED: 0.424 (0.12–1.57), p = 0.20 HDI-2018: 1.079 (0.52–2.23), p = 0.84 HEI-2015: 1.053 (0.52–2.12), p = 0.88 E-DIITM: 2.506 (1.22–5.15), p = 0.01 FRAP: 1.509 (0.73–3.13), p = 0.27 % UPF: 0.647 (0.29–1.47), p = 0.30 Tertile 3 vs. 1, OR (95% CI) MEDAS: 1.380 (0.54–3.50), p = 0.30 KIDMED: 0.735 (0.23–2.40), p = 0.61 HDI-2018: 1.191 (0.58–2.43), p = 0.63 HEI-2015: 0.750 (0.36–1.55), p = 0.44 E-DIITM: 1.613 (0.74–3.50), p = 0.23 FRAP: 1.245 (0.57–2.73), p = 0.58 % UPF: 1.128 (0.51–2.49), p = 0.77 Tertile 2 and 3 vs. 1, OR (95% CI) MEDAS: 1.279 (0.58–2.80), p = 0.54 KIDMED: 0.728 (0.25–2.13), p = 0.56 HDI-2018: 0.728 (0.25–2.13), p = 0.56 HEI-2015: 0.911 (0.49–1.68), p = 0.77 E-DIITM: 2.076 (1.07–4.07), p = 0.03 FRAP: 1.391 (0.71–2.71), p = 0.33 % UPF: 0.856 (0.43–1.70), p = 0.66 | N/A |
Study | Exposures/ Interventions | Data Analysis Method | Outcomes | Results | Confounding (Method) | |||
---|---|---|---|---|---|---|---|---|
Baseline Mean (SD) | Post Intervention Mean (SD) | Difference Mean (95% CI) | p-Value | |||||
Zhang et al., 2019 [43] | 12-week HEAL intervention: (1) Positive parenting style and practices, (2) Healthy eating, (3) Physical activity | T-test and Chi-square test | BMI Z-score | 0.79 (1.14) | 0.80 (1.26) | 0.02 (−0.38–0.41) | 0.93 | N/A |
BMI percentile | 70.3 (28.8) | 71.6 (31.7) | 1.31 (−10.6–13.3) | 0.81 | ||||
Waist circumference | 59.5 (6.34) | 60.4 (8.0) | 0.86 (−1.96–3.68) | 0.52 |
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Li, R.; Barker, A.R.; Vlachopoulos, D.; Paris, D.; Schindera, C.; Belle, F.N.; Revuelta Iniesta, R. The Role of Diet in the Cardiovascular Health of Childhood Cancer Survivors—A Systematic Review. Nutrients 2024, 16, 1315. https://doi.org/10.3390/nu16091315
Li R, Barker AR, Vlachopoulos D, Paris D, Schindera C, Belle FN, Revuelta Iniesta R. The Role of Diet in the Cardiovascular Health of Childhood Cancer Survivors—A Systematic Review. Nutrients. 2024; 16(9):1315. https://doi.org/10.3390/nu16091315
Chicago/Turabian StyleLi, Ruijie, Alan R. Barker, Dimitris Vlachopoulos, Dewi Paris, Christina Schindera, Fabiën N. Belle, and Raquel Revuelta Iniesta. 2024. "The Role of Diet in the Cardiovascular Health of Childhood Cancer Survivors—A Systematic Review" Nutrients 16, no. 9: 1315. https://doi.org/10.3390/nu16091315
APA StyleLi, R., Barker, A. R., Vlachopoulos, D., Paris, D., Schindera, C., Belle, F. N., & Revuelta Iniesta, R. (2024). The Role of Diet in the Cardiovascular Health of Childhood Cancer Survivors—A Systematic Review. Nutrients, 16(9), 1315. https://doi.org/10.3390/nu16091315