基于机器学习的体外受精成功率评估和预测分析

Q2 Computer Science
Vaishali Mehta, M. Mangla, Nonita Sharma, Manik Rakhra, Tanupriya Choudhury, Garigipati Rama Krishna
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引用次数: 0

摘要

导言:现代生活方式的转变以及其他社会和经济因素导致年轻一代不孕不育病例增加。除了这些因素之外,男女不孕不育还可能归因于不同的疾病。不孕不育病例的增加是人类极为关注的问题,应该认真加以思考。然而,随着医疗保健领域前所未有的进步,体外受精技术应运而生,成为这一毁灭性疾病的救星。虽然体外受精有可能带来幸福,但在身体和情感健康方面也存在相关挑战。此外,体外受精的成功率也因人而异。目的:预测体外受精的成功率:预测体外受精的成功率。方法:机器学习模型。结果:据观察,Adaboost 的准确率高达 97.5%,优于所有其他机器学习模型。结论:结果分析得出结论,如果年龄大于 36 岁,临床妊娠的倾向性为负,如果年龄大于 40 岁,临床妊娠的概率会急剧下降。此外,临床妊娠倾向与同一试管婴儿周期移植的胚胎数量呈正相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Based Assessment and Predictive Analysis of In-Vitro Fertilization Success Rate
INTRODUCTION: The transformation in the lifestyle and other societal and economic factors during modern times have led to rise in the cases of infertility among young generation. Apart from these factors infertility may also be attributed to different medical conditions among both men and women. This rise in the cases of infertility is a matter of huge concern to the mankind and should be seriously pondered upon. However, the unprecedented advancements in the field of healthcare have led to In Vitro fertilization as a rescue to this devastating condition. Although the In Vitro fertilization has the potential to unfurl the happiness, it has associated challenges also in terms of physical and emotional health. Also, the success rate of In Vitro fertilization may vary from person to person. OBJECTIVES: To predict the success rate of In Vitro fertilization. METHODS: Machine Learning Models. RESULTS: It has been observed that Adaboost outperforms all other machine learning models by yielding an accuracy of 97.5%. CONCLUSION: During the result analysis, it is concluded that if age > 36, there is a negative propensity for clinical pregnancy and if age >40, the probability of a clinical pregnancy dramatically declines. Further, the propensity of clinical pregnancy is positively correlated to the count of embryos transferred in the same IVF cycle.
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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