使用Kohonen神经网络比较关于生殖健康的声明和实际知识状态以及所选生活方式成分对生殖健康的影响

Q3 Arts and Humanities
Marcin Warpechowski, Jędrzej Warpechowski, Marcin Milewski, A. Zanko, R. Milewski
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引用次数: 0

摘要

不孕不育是一个全球性问题,影响着4800万至1.86亿育龄夫妇。在波兰,它涉及大约。150万对夫妇,占有生育能力人口的20%。影响生育障碍发生率的因素之一可能是生活方式,生活方式被理解为日常行为和习惯的多学科积累。在这项研究中,对201名年轻的成年人,医学和相关学院的学生进行了调查,以检查生活方式对生殖健康影响的实际知识水平。Kohonen网络是一个自我学习神经网络的例子,它被用来发现数据之间不明显的联系。训练后的Kohonen神经网络形成4个具有不同特征的聚类。通过对每个聚类的结构分析,发现医二年级学生内部分为3个分数。第一部分人宣称有很高的知识水平,但没有真正的知识。第二部分人意识到自己的无知,这一点在知识测试中得到了证实。最后一部分的特点是对自己的生殖健康知识有很高的自信,在知识测试中取得了很高的成绩。据证实,在医学院学习的人比同年在其他学院学习的学生懂得更多。对一组在营养学第一阶段学习的三年级学生进行了有趣的研究。在饮食和生活方式对生殖健康影响的知识测试中,他们没有获得明显更好的结果。似乎我们可以期望在一群三年级学生中至少有几个知识渊博的学生,但这并没有得到这项研究的证实。鉴于所获得的结果,可以得出结论,Kohonen神经网络适用于分析有关生活方式对生殖健康影响的实际知识状况的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Use of the Kohonen Neural Network for Comparing the Declared and Actual State of Knowledge Regarding Reproductive Health and the Impact of Selected Lifestyle Components on Reproductive Health
Abstract Infertility is a global problem affecting 48 to 186 million couples of reproductive age. In Poland, it concerns approx. 1.5 million couples, which amounts to 20% of the population capable of reproducing. One of the factors influencing the incidence of fertility disorders may be lifestyle, understood as a multi-disciplinary accumulation of everyday behaviours and habits. In the study, a group of 201 young adults, students of medical and related faculties, were surveyed in order to check the actual level of knowledge about the impact of lifestyle on reproductive health. The Kohonen network, which is an example of a self-learning neural network, was used to find non-obvious connections between the data. The trained Kohonen neural network formed 4 clusters with different characteristics. Based on analyses of the structure of each cluster, it was found that 2nd year students of Medicine are internally divided into 3 fractions. The first fraction declared a high level of knowledge, but did not have real knowledge. The second fraction was aware of their ignorance, as confirmed by the knowledge test. The last fraction was characterized by a high level of self-confidence regarding their knowledge about reproductive health and obtained a high result in the knowledge test. It was confirmed that people studying at the Medical faculty know more than students of the same year at faculties other than Medicine. Interesting results were obtained for a group of 3rd year students of first-cycle studies in Dietetics. They did not obtain a significantly better result in the knowledge test concerning the influence of diet and lifestyle on reproductive health. It would seem that one could expect at least a few highly knowledgeable students in a group of 3rd year students, but this was not confirmed by the study. In view of the obtained results, it was concluded that the Kohonen neural network is applicable to the analysis of data on the actual state of knowledge about the impact of lifestyle on reproductive health.
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来源期刊
Studies in Logic, Grammar and Rhetoric
Studies in Logic, Grammar and Rhetoric Arts and Humanities-Philosophy
CiteScore
0.40
自引率
0.00%
发文量
3
审稿时长
6 weeks
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