Code for analyses in "Obesity and risk of female reproductive disorders: A Mendelian Randomisation Study"
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Updated
Dec 19, 2024 - R
Code for analyses in "Obesity and risk of female reproductive disorders: A Mendelian Randomisation Study"
Code to reproduce analysis and figures for 'Genetic mapping of etiologic brain cell types for obesity' (Timshel, eLife 2020)
🍎 A Reproducible Pipeline for Processing SISVAN Microdata on Nutritional Status Monitoring in Brazil
ObMetrics is a Shiny app developed to facilitate the calculation of outcomes related to Metabolic Syndrome in pediatric populations. This repository contains documentation and licensing details for the application, which aims to provide a user-friendly interface for healthcare professionals and researchers.
This notebook presents a concise analysis for predicting obesity risk using machine learning models like Random Forest and XGBoost. Focused on identifying key factors influencing obesity through exploratory data analysis (EDA) and predictive modeling, the notebook offers insights into effective prevention strategies.
OCS (BP): Examine global patterns of obesity across rural and urban regions
Codes for the statistical analysis that investigates the impact of high-fat diet on gut microbiome and serotonergic gene expression in the raphe nuclei.
Analysis of obesity levels using MCA with two approaches for quantitative variables.
Estimation of Obesity Levels
Python & R scripts collection for AdipoAtlas project
Repository to preview, describe, and link to multiple health-related Tableau dashboards.
📓 Exploring potential associations between childhood undernutrition and the Standardized Precipitation Evapotranspiration Index (SPEI) in Brazilian municipalities (2008–2019)
Predicting a Person's Obesity Level Using Decision Tree, Naive Bayes, and KNN Algorithms
Analysis of Spatial and Temporal Data Course Final Project - Obesity Classification
[In Production] Adaptation of Nathaniel Daw's Two-Step Sequential Learning Task. Designed for a study of reward prediction for food with college undergraduates.
Use of OLS method, Linear Regression, K-means, Agglomerative Hierarchical, DBSCAN, Decision Tree, Random Forest, Logistic Regression, Support Vector Classifier, K-nearest neighbors, and Naive Bayes algorithms in the case study to estimate obesity levels.
Classification of Obesity Status in Indonesia Using XGBoost & ADASYN-N Method
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