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基于健康检查数据的模糊神经网络分析识别出的代谢综合征组合风险因素。

Combinational risk factors of metabolic syndrome identified by fuzzy neural network analysis of health-check data.

机构信息

School of Engineering, Nagoya University, Furo-cho, Chikusa-ku, Nagoya, 464-8603, Japan.

出版信息

BMC Med Inform Decis Mak. 2012 Aug 1;12:80. doi: 10.1186/1472-6947-12-80.

Abstract

BACKGROUND

Lifestyle-related diseases represented by metabolic syndrome develop as results of complex interaction. By using health check-up data from two large studies collected during a long-term follow-up, we searched for risk factors associated with the development of metabolic syndrome.

METHODS

In our original study, we selected 77 case subjects who developed metabolic syndrome during the follow-up and 152 healthy control subjects who were free of lifestyle-related risk components from among 1803 Japanese male employees. In a replication study, we selected 2196 case subjects and 2196 healthy control subjects from among 31343 other Japanese male employees. By means of a bioinformatics approach using a fuzzy neural network (FNN), we searched any significant combinations that are associated with MetS. To ensure that the risk combination selected by FNN analysis was statistically reliable, we performed logistic regression analysis including adjustment.

RESULTS

We selected a combination of an elevated level of γ-glutamyltranspeptidase (γ-GTP) and an elevated white blood cell (WBC) count as the most significant combination of risk factors for the development of metabolic syndrome. The FNN also identified the same tendency in a replication study. The clinical characteristics of γ-GTP level and WBC count were statistically significant even after adjustment, confirming that the results obtained from the fuzzy neural network are reasonable. Correlation ratio showed that an elevated level of γ-GTP is associated with habitual drinking of alcohol and a high WBC count is associated with habitual smoking.

CONCLUSIONS

This result obtained by fuzzy neural network analysis of health check-up data from large long-term studies can be useful in providing a personalized novel diagnostic and therapeutic method involving the γ-GTP level and the WBC count.

摘要

背景

以代谢综合征为代表的与生活方式相关的疾病是由复杂的相互作用引起的。通过使用长期随访期间收集的两项大型研究的健康检查数据,我们搜索了与代谢综合征发展相关的危险因素。

方法

在我们的原始研究中,我们从 1803 名日本男性员工中选择了 77 名在随访期间发展为代谢综合征的病例受试者和 152 名无生活方式相关风险因素的健康对照受试者。在一项复制研究中,我们从 31343 名其他日本男性员工中选择了 2196 名病例受试者和 2196 名健康对照受试者。通过使用模糊神经网络 (FNN) 的生物信息学方法,我们搜索了与 MetS 相关的任何显著组合。为了确保 FNN 分析选择的风险组合在统计学上是可靠的,我们进行了包括调整在内的逻辑回归分析。

结果

我们选择了γ-谷氨酰转肽酶 (γ-GTP) 水平升高和白细胞 (WBC) 计数升高的组合作为代谢综合征发展的最显著危险因素组合。FNN 在复制研究中也发现了相同的趋势。即使经过调整,γ-GTP 水平和 WBC 计数的临床特征仍然具有统计学意义,证实了从模糊神经网络获得的结果是合理的。相关比表明,γ-GTP 水平升高与习惯性饮酒有关,WBC 计数升高与习惯性吸烟有关。

结论

这项通过对大型长期研究的健康检查数据进行模糊神经网络分析得出的结果,可用于提供涉及 γ-GTP 水平和 WBC 计数的个性化新型诊断和治疗方法。

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