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不孕症及其影响因素的数据挖掘:来自伊朗拉什特非传染性疾病前瞻性队列研究的一项发现。

Data Mining of Infertility and Factors Influencing Its Development: A Finding From a Prospective Cohort Study of RaNCD in Iran.

作者信息

Heydarian Hosna, Abbasi Masoumeh, Najafi Farid, Darbandi Mitra

机构信息

Department of Information Technology Engineering, Industrial and Systems Engineering Faculty Tarbiat Modares University Tehran Iran.

Department of Health Information Technology, School of Allied Medical Sciences Kermanshah University of Medical Science Kermanshah Iran.

出版信息

Health Sci Rep. 2025 Jan 24;8(1):e70265. doi: 10.1002/hsr2.70265. eCollection 2025 Jan.

Abstract

BACKGROUND AND AIMS

Infertility, as defined by the World Health Organization, is the inability to conceive after 12 months of regular, unprotected intercourse. This study aimed to identify factors influencing infertility by applying data mining techniques, specifically rule-mining methods, to analyze diverse patient data and uncover relevant insights. This approach involves a thorough analysis of patients' clinical characteristics, dietary habits, and overall conditions to identify complex patterns and relationships that may contribute to infertility.

METHODS

In this study, we examined the impact of lifestyle factors on infertility using machine learning and data mining techniques, specifically Association Rules. The study included a total of 4437 women who participated in the Ravansar Non-Communicable Disease Cohort study. Among the remaining participants, 434 were infertile. We utilized 38 variables to generate the relevant association rules.

RESULTS

As a result, the analysis reveals that 97% of infertile women are likely to cook for more than 2 h and engage in standing activities. Additionally, 94% of infertile women are likely to have central obesity. Infertile women also have a 73% chance of reusing cooking oil and a 74% chance of consuming fried food at least once a week. The likelihood of infertility increases to 98% among women who use more than 24 eggs per month and to 97% among those who consume moldy jam or syrup. The evaluation of these associations was further supported by measures of support, confidence, and lift.

CONCLUSION

This study showed that key lifestyle factors linked to infertility, underscoring the role of lifestyle in reproductive health. These findings suggest that targeted interventions and lifestyle changes may help reduce infertility rates. Further research is needed to confirm these associations and investigate the underlying mechanisms.

摘要

背景与目的

根据世界卫生组织的定义,不孕症是指在规律、无保护性交12个月后仍无法受孕。本研究旨在通过应用数据挖掘技术,特别是规则挖掘方法,分析多样的患者数据并揭示相关见解,以确定影响不孕症的因素。这种方法包括对患者的临床特征、饮食习惯和整体状况进行全面分析,以识别可能导致不孕症的复杂模式和关系。

方法

在本研究中,我们使用机器学习和数据挖掘技术,特别是关联规则,研究生活方式因素对不孕症的影响。该研究共纳入了4437名参与拉万萨尔非传染性疾病队列研究的女性。在其余参与者中,有434人患有不孕症。我们利用38个变量生成相关的关联规则。

结果

分析结果显示,97%的不孕女性可能烹饪时间超过2小时并从事站立活动。此外,94%的不孕女性可能患有中心性肥胖。不孕女性重复使用食用油的几率为73%,每周至少食用一次油炸食品的几率为74%。每月使用超过24个鸡蛋的女性不孕几率增至98%,食用发霉果酱或糖浆的女性不孕几率为97%。对这些关联的评估得到了支持度、置信度和提升度测量的进一步支持。

结论

本研究表明,关键的生活方式因素与不孕症有关,强调了生活方式在生殖健康中的作用。这些发现表明,有针对性的干预措施和生活方式改变可能有助于降低不孕症发生率。需要进一步研究来证实这些关联并调查其潜在机制。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a717/11760217/0cdc26894b10/HSR2-8-e70265-g004.jpg

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