Harokopio University, Department of Nutrition and Dietetics, 70 Eleftheriou Venizelou Str., 17671 Athens, Greece.
Comput Methods Programs Biomed. 2012 Nov;108(2):706-14. doi: 10.1016/j.cmpb.2011.12.011. Epub 2012 Jan 31.
Data mining is a computational method that permits the extraction of patterns from large databases. We applied the data mining approach in data from 1140 children (9-13 years), in order to derive dietary habits related to children's obesity status. Rules emerged via data mining approach revealed the detrimental influence of the increased consumption of soft dinks, delicatessen meat, sweets, fried and junk food. For example, frequent (3-5 times/week) consumption of all these foods increases the risk for being obese by 75%, whereas in children who have a similar dietary pattern, but eat >2 times/week fish and seafood the risk for obesity is reduced by 33%. In conclusion patterns revealed from data mining technique refer to specific groups of children and demonstrate the effect on the risk associated with obesity status when a single dietary habit might be modified. Thus, a more individualized approach when translating public health messages could be achieved.
数据挖掘是一种计算方法,可从大型数据库中提取模式。我们将数据挖掘方法应用于 1140 名儿童(9-13 岁)的数据中,以得出与儿童肥胖状况相关的饮食习惯。数据挖掘方法得出的规则揭示了软饮料、熟食肉、甜食、油炸食品和垃圾食品摄入增加的有害影响。例如,频繁(每周 3-5 次)食用所有这些食物会使肥胖的风险增加 75%,而在饮食模式相似但每周食用 >2 次鱼和海鲜的儿童中,肥胖的风险降低 33%。总之,数据挖掘技术揭示的模式针对特定的儿童群体,并在单个饮食习惯可能改变时,显示出与肥胖相关的风险的影响。因此,在翻译公共卫生信息时,可以采用更个性化的方法。