Research Supporting LyteFast

Peer-reviewed references supporting weight forecasting, energy balance, carbon footprint of diets, gluten detection, nutrition databases, and AI food analysis.

Links open in your language when available • Prioritising Harvard, Stanford, and MIT research

Weight Forecast

Weight forecasting employs predictive models grounded in energy balance principles to estimate future weight trends based on recent data. Research indicates that self-monitoring of weight and calorie intake, along with trend smoothing to minimise daily fluctuations, aids individuals in comprehending their trajectory and making timely adjustments. Short-horizon predictive modelling transforms your recent trajectory into actionable forecasts that promote adherence and foster long-term habits.

Key Studies

Budget-Based Calories

Pre-set calorie budgets with clear "within budget" or "over budget" feedback assist users in making informed food choices in real-time. Research indicates that this decision-support approach enhances adherence to calorie goals by minimising cognitive load and offering immediate, actionable feedback. The straightforward "spend vs. budget" framework aligns with principles of behavioural economics, which suggest that individuals make better decisions when they are presented with clear constraints and receive instant feedback on their choices.

Key Studies

Calorie Deficit & Energy Balance

Energy balance—the relationship between calories consumed and calories burned—is the primary factor influencing weight change. Research consistently demonstrates that establishing a calorie deficit results in weight loss, whereas a surplus results in weight gain. Visualising this deficit in real-time aids users in comprehending how their daily choices affect their progress towards their goals. The app conveys energy balance in straightforward terms, illustrating the difference between current intake and target, as well as what modifications can be made to bridge that gap.

Key Studies

AI Food Scanner

Artificial intelligence and machine learning facilitate automated food recognition through photos, text descriptions, and barcode scanning. Research indicates that AI-driven nutrition estimation can deliver reasonable accuracy for common foods, assisting users in logging meals more swiftly and consistently. The integration of photo analysis, barcode scanning, and text parsing establishes various avenues for food logging, thereby lowering barriers to self-monitoring and enhancing adherence to calorie tracking.

Key Studies

Carbon Footprint

Food production accounts for a significant portion of global greenhouse gas emissions. Research indicates that various foods have markedly different carbon footprints, and dietary choices can have a substantial effect on environmental sustainability. Monitoring the carbon footprint of meals aids users in comprehending the environmental impact of their food choices and enables them to make more sustainable decisions. Studies show that even minor dietary adjustments can lead to meaningful reductions in carbon emissions.

Key Studies

Gluten Detection

For individuals with celiac disease or gluten sensitivity, avoiding gluten is crucial for maintaining health. Research indicates that even minimal amounts of gluten can trigger symptoms and cause long-term harm in sensitive individuals. Barcode scanning and food analysis can assist in identifying gluten-containing products, offering a rapid screening method to support adherence to a gluten-free diet. While the app offers indicators based on product information, it is important to recognise that it serves as an estimator and should not replace thorough label reading or professional medical advice.

Key Studies

Fasting View & Predictive Modelling

Intermittent fasting and time-restricted eating are dietary strategies that confine eating to designated time periods. Research indicates that the advantages of these strategies are primarily influenced by total calorie consumption and consistency, rather than timing alone. Predictive modelling assists users in understanding how their fasting patterns correlate with their weight trends and projections. The app connects fasting windows to calorie budgets, trends, and forecasts, clarifying and making actionable the relationship between fasting and outcomes.

Key Studies

Full References

Complete list of all peer-reviewed references. Tags indicate which feature(s) each reference supports.