14 results on '"obesity prediction"'
Search Results
2. A study of obesity class prediction built on neural networks.
- Author
-
QIN Xiao-jing, ZHOU Meng, WANG Qiang-fen, and ZHANG Xin
- Subjects
- *
OPTIMIZATION algorithms , *SIMULATED annealing , *GENETIC algorithms , *PREDICTION models , *TRANSFER functions - Abstract
Objective To use neural networks and optimization algorithms, establish an obesity level prediction model to assess obesity risk. Methods Perform correlation analysis on 2 111 recorded data collected from participants aged between 14 and 61 years old in Mexico, Peru, and Colombia, and establish a BP neural network obesity level prediction model. At the same time, optimize the number of hidden nodes and transfer function of the model through pruning to find the optimal network structure. In addition, the genetic algorithm and the simulated annealing algorithm were used to optimize the weights and thresholds of the model, ultimately establishing a high-precision and practical GASA-BP neural network obesity level prediction model. Results The R2 of the prediction model was 0.975 1, and the MAE was 0.352, indicating high prediction accuracy and strong practicality. In the process of predicting obesity levels in the model, weight index was the most important, with a correlation of 0.913 with obesity levels. The correlation between overweight members in the family was also relatively strong, with a correlation of 0.505. Conclusion The GASA-BP neural network prediction model performs better than other models in predicting obesity levels, and can make the most accurate prediction of obesity levels, providing guidance and reference for personalized obesity assessments and subsequent prevention and control measures. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
3. Unraveling the Potential of Attentive Bi-LSTM for Accurate Obesity Prognosis: Advancing Public Health towards Sustainable Cities.
- Author
-
Ayub, Hina, Khan, Murad-Ali, Shehryar Ali Naqvi, Syed, Faseeh, Muhammad, Kim, Jungsuk, Mehmood, Asif, and Kim, Young-Jin
- Subjects
- *
SUSTAINABLE urban development , *OBESITY , *PUBLIC health , *URBAN planning , *DEEP learning , *MACHINE learning , *SUSTAINABLE architecture - Abstract
The global prevalence of obesity presents a pressing challenge to public health and healthcare systems, necessitating accurate prediction and understanding for effective prevention and management strategies. This article addresses the need for improved obesity prediction models by conducting a comprehensive analysis of existing machine learning (ML) and deep learning (DL) approaches. This study introduces a novel hybrid model, Attention-based Bi-LSTM (ABi-LSTM), which integrates attention mechanisms with bidirectional Long Short-Term Memory (Bi-LSTM) networks to enhance interpretability and performance in obesity prediction. Our study fills a crucial gap by bridging healthcare and urban planning domains, offering insights into data-driven approaches to promote healthier living within urban environments. The proposed ABi-LSTM model demonstrates exceptional performance, achieving a remarkable accuracy of 96.5% in predicting obesity levels. Comparative analysis showcases its superiority over conventional approaches, with superior precision, recall, and overall classification balance. This study highlights significant advancements in predictive accuracy and positions the ABi-LSTM model as a pioneering solution for accurate obesity prognosis. The implications extend beyond healthcare, offering a precise tool to address the global obesity epidemic and foster sustainable development in smart cities. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
4. Importance of Feature Selection Methods in Machine Learning-Based Obesity Prediction
- Author
-
Gogoi, Usha Rani, Marques, Oge, Series Editor, Soares, Anderson, Editorial Board Member, Riegler, Michael, Editorial Board Member, Thampi, Sabu, Editorial Board Member, Kitamura, Felipe, Editorial Board Member, Culibrk, Dubravko, Editorial Board Member, Van Ooijen, Peter, Editorial Board Member, Willingham, David, Editorial Board Member, Chaudhury, Baishali, Editorial Board Member, Hadid, Abdenour, Editorial Board Member, Stojanovic, Branka, Editorial Board Member, Schumacher, Joe, Editorial Board Member, Manju, editor, Kumar, Sandeep, editor, and Islam, Sardar M. N., editor
- Published
- 2023
- Full Text
- View/download PDF
5. Estimating Obesity Levels Using Decision Trees and K-Fold Cross-Validation: A Study on Eating Habits and Physical Conditions
- Author
-
Fadhila Tangguh Admojo and Nurul Rismayanti
- Subjects
Obesity Prediction ,Decision Tree ,Public Health ,Lifestyle Factors ,Health Interventions ,Computer software ,QA76.75-76.765 - Abstract
This study harnesses the predictive capabilities of machine learning to explore the determinants of obesity within populations from Mexico, Peru, and Colombia, using a Decision Tree algorithm bolstered by 5-fold cross-validation. Our comprehensive analysis of 2111 individuals' lifestyle and physical condition data yielded accuracy, precision, recall, and F1-scores that notably peaked in the third and fifth folds. The findings affirmed the significance of dietary habits and physical activity as substantial predictors of obesity levels. The variability in model performance across the folds underscored the importance of robust cross-validation in enhancing the model's generalizability. This research contributes to the burgeoning field of data science in public health by providing a viable model for obesity prediction and laying the groundwork for targeted health interventions. Our study's insights are pivotal for public health officials and policymakers, serving as a stepping stone towards more sophisticated, data-driven approaches to combating obesity. The study, however, recognizes the inherent limitations of self-reported data and the need for broader datasets that encompass more diverse variables. Future research directions include the analysis of longitudinal data to establish causal relationships and the comparison of various machine learning models to optimize predictive performance
- Published
- 2024
- Full Text
- View/download PDF
6. Age-specific risk factors for the prediction of obesity using a machine learning approach
- Author
-
Junhwi Jeon, Sunmi Lee, and Chunyoung Oh
- Subjects
obesity prediction ,machine learning ,age-specific ,gender-specific ,risk factors ,KNHANES ,Public aspects of medicine ,RA1-1270 - Abstract
Machine Learning is a powerful tool to discover hidden information and relationships in various data-driven research fields. Obesity is an extremely complex topic, involving biological, physiological, psychological, and environmental factors. One successful approach to the topic is machine learning frameworks, which can reveal complex and essential risk factors of obesity. Over the last two decades, the obese population (BMI of above 23) in Korea has grown. The purpose of this study is to identify risk factors that predict obesity using machine learning classifiers and identify the algorithm with the best accuracy among classifiers used for obesity prediction. This work will allow people to assess obesity risk from blood tests and blood pressure data based on the KNHANES, which used data constructed by the annual survey. Our data include a total of 21,100 participants (male 10,000 and female 11,100). We assess obesity prediction by utilizing six machine learning algorithms. We explore age- and gender-specific risk factors of obesity for adults (19–79 years old). Our results highlight the four most significant features in all age-gender groups for predicting obesity: triglycerides, ALT (SGPT), glycated hemoglobin, and uric acid. Our findings show that the risk factors for obesity are sensitive to age and gender under different machine learning algorithms. Performance is highest for the 19–39 age group of both genders, with over 70% accuracy and AUC, while the 60–79 age group shows around 65% accuracy and AUC. For the 40–59 age groups, the proposed algorithm achieved over 70% in AUC, but for the female participants, it achieved lower than 70% accuracy. For all classifiers and age groups, there is no big difference in the accuracy ratio when the number of features is more than six; however, the accuracy ratio decreased in the female 19–39 age group.
- Published
- 2023
- Full Text
- View/download PDF
7. A Survey on Machine and Deep Learning Models for Childhood and Adolescent Obesity
- Author
-
Hera Siddiqui, Ajita Rattani, Nikki K. Woods, Laila Cure, Rhonda K. Lewis, Janet Twomey, Betty Smith-Campbell, and Twyla J. Hill
- Subjects
Adolescent obesity ,childhood obesity ,deep learning ,machine learning ,obesity prediction ,key determinants ,Electrical engineering. Electronics. Nuclear engineering ,TK1-9971 - Abstract
Childhood and adolescent obesity is a serious health problem that is on the rise at the global level. Earlier, certain diseases such as Type 2 diabetes, high blood pressure, and heart disease affected only adults, but now they are being detected in young children as well. Several studies based on machine learning have been proposed to develop obesity prediction models or to determine key determinants of obesity for designing intervention tools. Despite having a rich and diverse set of literature on obesity prediction models, obesity rates are at an all-time high for both children and adolescents. There is a need of proper understanding and critical analysis of existing machine learning models in order to design effective strategies for curbing obesity at childhood and adolescent level. This paper surveys the growing body of recent literature on machine and deep learning models for obesity prediction by providing a coherent view (critical analysis) of the limitations of the existing systems. The taxonomy of the existing literature on obesity prediction into methods used, predicted outcome, factors used, type of datasets, and the associated purpose, is discussed for analysis of the state-of-the-art. This analysis revealed that a) prediction-focused models do not use variables from as many domains as predictor-focused models do, b) very few studies proposed gender-specific and race-specific obesity prediction models, c) lack of large-scale multimodal datasets and d) existing predictor-focused models obtain an accuracy range of [53.7%, 96%] with an optimum set of predictors. Further, computer vision-based methods for obesity prediction and interpretable techniques for understanding the outcome of the models are discussed as well. In addition, we have also identified novel research directions. The overall aim is to advance the state-of-the-art and improve the quality of discourse in this field.
- Published
- 2021
- Full Text
- View/download PDF
8. Obesity prediction by modelling BMI distributions: application to national survey data from Mexico, Colombia and Peru, 1988-2014.
- Author
-
Yamada, Goro, Castillo-Salgado, Carlos, Jones-Smith, Jessica C, and Moulton, Lawrence H
- Subjects
- *
OBESITY , *QUANTILE regression , *LOGISTIC regression analysis , *PREDICTION models , *BODY mass index , *FORECASTING , *AGE groups - Abstract
Background: The prediction of future obesity patterns is crucial for effective strategic planning. However, disproportionally changing body mass index (BMI) distributions pose particular challenges. Flexible modelling of the shape of BMI distributions may improve prediction performance.Methods: We used data from repeated national health surveys conducted in Mexico, Colombia and Peru at four or five time points between 1988 and 2014. Data from all surveys except the last survey were used to construct prediction models for three obesity indicators (median BMI, overweight/obesity prevalence and obesity prevalence) for the time of the last survey. We assessed their performance using predicted curves, absolute prediction errors and comparison of actual and predicted distributions. With one method, we modelled the shape of BMI distributions assuming BMI follows a Box-Cox Power Exponential (BCPE) distribution, whose parameters were modelled as a function of interval or nominal 5-year age groups, time and their interaction terms. In a second method, we modelled each of the obesity indicators directly as a function of the same covariates using quantile and logistic regression.Results: The BCPE model with interval age groups yielded the best prediction performance in predicting obesity prevalence. Average absolute prediction errors across all age groups were 4.3 percentage points (95% percentile interval: 1.9, 7.5), 2.5 (1.2, 6.1) and 1.7 (1.0, 9.3), with data from Mexico, Colombia and Peru, respectively. This superiority was weak or none for overweight/obesity prevalence and median BMI.Conclusion: The BCPE model performed better for prediction of the extremes of BMI distribution, possibly by incorporating its shape more precisely. [ABSTRACT FROM AUTHOR]- Published
- 2020
- Full Text
- View/download PDF
9. A review of the application of deep learning in obesity: From early prediction aid to advanced management assistance.
- Author
-
Yi, Xinghao, He, Yangzhige, Gao, Shan, and Li, Ming
- Abstract
Obesity is a chronic disease which can cause severe metabolic disorders. Machine learning (ML) techniques, especially deep learning (DL), have proven to be useful in obesity research. However, there is a dearth of systematic reviews of DL applications in obesity. This article aims to summarize the current trend of DL usage in obesity research. An extensive literature review was carried out across multiple databases, including PubMed, Embase, Web of Science, Scopus, and Medline, to collate relevant studies published from January 2018 to September 2023. The focus was on research detailing the application of DL in the context of obesity. We have distilled critical insights pertaining to the utilized learning models, encompassing aspects of their development, principal results, and foundational methodologies. Our analysis culminated in the synthesis of new knowledge regarding the application of DL in the context of obesity. Finally, 40 research articles were included. The final collection of these research can be divided into three categories: obesity prediction (n = 16); obesity management (n = 13); and body fat estimation (n = 11). This is the first review to examine DL applications in obesity. It reveals DL's superiority in obesity prediction over traditional ML methods, showing promise for multi-omics research. DL also innovates in obesity management through diet, fitness, and environmental analyses. Additionally, DL improves body fat estimation, offering affordable and precise monitoring tools. The study is registered with PROSPERO (ID: CRD42023475159). • Deep learning is useful in the prediction of obesity on the basis of complex omics data. • Deep learning can be utilized in multiple aspects in obesity management, especially in dietary monitoring. • Body fat estimation based on deep learning carries great potential in early detection of obese and oerweight. • This is the first reiew to inestigate DL applications in obesity research. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
10. A Survey on Machine and Deep Learning Models for Childhood and Adolescent Obesity
- Author
-
Rhonda Lewis, Hera Siddiqui, Nikki K. Woods, Betty Smith-Campbell, Laila Cure, Janet Twomey, Ajita Rattani, and Twyla Hill
- Subjects
General Computer Science ,business.industry ,Deep learning ,General Engineering ,Adolescent obesity ,deep learning ,Adolescent Obesity ,Developmental psychology ,TK1-9971 ,obesity prediction ,machine learning ,key determinants ,General Materials Science ,Artificial intelligence ,Electrical engineering. Electronics. Nuclear engineering ,Psychology ,business ,childhood obesity - Abstract
Childhood and adolescent obesity is a serious health problem that is on the rise at the global level. Earlier, certain diseases such as Type 2 diabetes, high blood pressure, and heart disease affected only adults, but now they are being detected in young children as well. Several studies based on machine learning have been proposed to develop obesity prediction models or to determine key determinants of obesity for designing intervention tools. Despite having a rich and diverse set of literature on obesity prediction models, obesity rates are at an all-time high for both children and adolescents. There is a need of proper understanding and critical analysis of existing machine learning models in order to design effective strategies for curbing obesity at childhood and adolescent level. This paper surveys the growing body of recent literature on machine and deep learning models for obesity prediction by providing a coherent view (critical analysis) of the limitations of the existing systems. The taxonomy of the existing literature on obesity prediction into methods used, predicted outcome, factors used, type of datasets, and the associated purpose, is discussed for analysis of the state-of-the-art. This analysis revealed that a) prediction-focused models do not use variables from as many domains as predictor-focused models do, b) very few studies proposed gender-specific and race-specific obesity prediction models, c) lack of large-scale multimodal datasets and d) existing predictor-focused models obtain an accuracy range of [53.7%, 96%] with an optimum set of predictors. Further, computer vision-based methods for obesity prediction and interpretable techniques for understanding the outcome of the models are discussed as well. In addition, we have also identified novel research directions. The overall aim is to advance the state-of-the-art and improve the quality of discourse in this field.
- Published
- 2021
11. Big data analytics for obesity prediction
- Author
-
Fundació Eurecat, Vellido Alcacena, Alfredo, Ribas Ripoll, Vicent, Bilal, Ahsan, Fundació Eurecat, Vellido Alcacena, Alfredo, Ribas Ripoll, Vicent, and Bilal, Ahsan
- Abstract
Feature selection is an important technique to find the most relevant features. Apache Spark is a big data processing framework but unable to cope with approx. 0.74 million features in our Obesity dataset. However, we tackle this challenge in 2-phase pipeline.
- Published
- 2018
12. Big data analytics in healt
- Author
-
Bilal, Ahsan, Vellido Alcacena, Alfredo, Ribas Ripoll, Vicent, and Fundació Eurecat
- Subjects
Big data ,Genòmica ,Apache Spark ,Informàtica [Àrees temàtiques de la UPC] ,Genomic Data ,Machine learning ,Aprenentatge automàtic ,Dades massives ,Genomics ,Obesity Prediction ,Feature Selection ,SNPs - Abstract
Feature selection is an important technique to find the most relevant features. Apache Spark is a big data processing framework but unable to cope with approx. 0.74 million features in our Obesity dataset. However, we tackle this challenge in 2-phase pipeline.
- Published
- 2018
13. Adiposity rebound in children: a simple indicator for prediction obesity
- Author
-
Sempe, M., Patois, E., Rolland-Cachera, M.-F., Deheeger, M., Guilloud-Bataille, M., and Bellisle, F.
- Subjects
CHILDREN ,OBESITY - Published
- 1984
14. Effect of remaining family members on fatness prediction
- Author
-
Garn, S. M., Solomon, M. A., Hopkins, P. J., and Bailey, S. M.
- Subjects
NUTRITION ,OBESITY - Published
- 1981
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.