Aim: Data mining enables further insights from nutrition-related research, but caution is required. The aim of this analysis was to demonstrate and compare the utility of data mining methods in classifying a categorical outcome derived from a nutrition-related intervention. Methods: Baseline data (23 variables, 8 categorical) on participants (n = 295) in an intervention trial were used to classify participants in terms of meeting the criteria of achieving 10 000 steps per day. Results from classification and regression trees (CARTs), random forests, adaptive boosting, logistic regression, support vector machines and neural networks were compared using area under the curve (AUC) and error assessments. Results: The CART produced the best mode...
Medical datasets have reached enormous capacities. This data may contain valuable information that a...
Life is cumulative, so is data. In our life, people are overwhelmed by vast quantities of data colle...
Child nutritional deficiency comes under various facts such as malnutrition, low birth weight, infan...
OBJECTIVE: Many dietary assessment methods attempt to estimate total food and nutrient intake. If th...
Introduction:The aim of this study was to find the most important risk factors which have a role in ...
The assessment and measurement of health status in communities throughput the world is a massive inf...
Keywords: Data Mining, Association Rules, Nutritional Patterns, Knowledge Interpretation, Lifestyle ...
Nutritional epidemiology employs observational data to discover associations between diet and diseas...
Introduction. The healthcare sector is failing to utilize routinely produced clinical data to refine...
Aim: Dietitians must be statistically literate to effectively interpret the scientific literature un...
Healthcare is one of the world’s fastest growing industries, having large volumes of data collected ...
Background & Objective: Health databases contain a large amount of clinical data. Investigating the ...
Healthcare is one of the world’s fastest growing industries, having large volumes of data collected ...
Data currently generated in the field of nutrition are becoming increasingly complex and high-dimens...
This paper investigates the application of a new data mining algorithm called Automated Weighted Sum...
Medical datasets have reached enormous capacities. This data may contain valuable information that a...
Life is cumulative, so is data. In our life, people are overwhelmed by vast quantities of data colle...
Child nutritional deficiency comes under various facts such as malnutrition, low birth weight, infan...
OBJECTIVE: Many dietary assessment methods attempt to estimate total food and nutrient intake. If th...
Introduction:The aim of this study was to find the most important risk factors which have a role in ...
The assessment and measurement of health status in communities throughput the world is a massive inf...
Keywords: Data Mining, Association Rules, Nutritional Patterns, Knowledge Interpretation, Lifestyle ...
Nutritional epidemiology employs observational data to discover associations between diet and diseas...
Introduction. The healthcare sector is failing to utilize routinely produced clinical data to refine...
Aim: Dietitians must be statistically literate to effectively interpret the scientific literature un...
Healthcare is one of the world’s fastest growing industries, having large volumes of data collected ...
Background & Objective: Health databases contain a large amount of clinical data. Investigating the ...
Healthcare is one of the world’s fastest growing industries, having large volumes of data collected ...
Data currently generated in the field of nutrition are becoming increasingly complex and high-dimens...
This paper investigates the application of a new data mining algorithm called Automated Weighted Sum...
Medical datasets have reached enormous capacities. This data may contain valuable information that a...
Life is cumulative, so is data. In our life, people are overwhelmed by vast quantities of data colle...
Child nutritional deficiency comes under various facts such as malnutrition, low birth weight, infan...