Global Dieting Trends and Seasonality: Social Big-Data Analysis May Be a Useful Tool.
Myung-Bae ParkJu Mee WangBernard E BulwerPublished in: Nutrients (2021)
We explored online search interest in dieting and weight loss using big-data analysis with a view to its potential utility in global obesity prevention efforts. We applied big-data analysis to the global dieting trends collected from Google and Naver search engines from January 2004 to January 2018 using the search term "diet," in selected six Northern and Southern Hemisphere countries; five Arab and Muslim countries grouped as conservative, semi-conservative, and liberal; and South Korea. Using cosinor analysis to evaluate the periodic flow of time series data, there was seasonality for global search interest in dieting and weight loss (amplitude = 6.94, CI = 5.33~8.56, p < 0.000) with highest in January and the lowest in December for both Northern and Southern Hemisphere countries. Seasonal dieting trend in the Arab and Muslim countries was present, but less remarkable (monthly seasonal seasonality, amplitude = 4.07, CI = 2.20~5.95, p < 0.000). For South Korea, seasonality was noted on Naver (amplitude = 11.84, CI = 7.62~16.05, p < 0.000). Our findings suggest that big-data analysis of social media can be an adjunct in tackling important public health issues like dieting, weight loss, obesity, and food fads, including the optimal timing of interventions.
Keyphrases
- data analysis
- weight loss
- big data
- social media
- bariatric surgery
- roux en y gastric bypass
- artificial intelligence
- machine learning
- gastric bypass
- public health
- health information
- weight gain
- resting state
- glycemic control
- insulin resistance
- healthcare
- metabolic syndrome
- mental health
- type diabetes
- functional connectivity
- risk assessment
- preterm infants
- adipose tissue
- human health
- skeletal muscle
- preterm birth
- fatty acid