利用机器学习检测血液中的促红细胞生成素以揭露运动中的兴奋剂

M. R. Rahman, J. Bejder, T. Bonne, A. Andersen, J. R. Huertas, R. Aikin, N. Nordsborg, Wolfgang Maass
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引用次数: 2

摘要

由于无良运动员为了提高成绩而使用兴奋剂的不公平性质,世界各地的体育官员都面临着挑战。这种做法包括输血,摄入合成代谢类固醇,甚至是基于激素的药物,如促红细胞生成素,以增加他们的力量,耐力,最终他们的表现。虽然直接检测和鉴定运动员血液样本中的促红细胞生成素已被证明是发现兴奋剂的有效手段,但并非所有病例都容易检测到,而且有些分析成本太高,无法对每个样本都进行分析。这导致需要开发一种基于不同血液生物标志物的间接方法来检测血液样本中的促红细胞生成素。在本文中,我们提出了一个不同的机器学习算法的比较与统计分析相结合的方法来识别红细胞生成素的存在药物在血液样本收集海平面和中等高度。研究结果表明,随机森林和X - Gboost算法等集成方法可以为反兴奋剂组织最有效地分配稀缺资源提供有效工具。实现这些方法的样本精英运动员或许都加强反兴奋剂的威慑效应以及增加掺捕捉运动员的可能性。
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Detection of Erythropoietin in Blood to Uncover Doping in Sports using Machine Learning
Sports officials around the world are facing challenges due to the unfair nature of doping practices used by unscrupulous athletes to improve their performance. This prac-tice includes blood transfusion, intake of anabolic steroids or even hormone-based drugs like erythropoietin to increase their strength, endurance, and ultimately their performance. While direct detection and identification of erythropoietin in blood samples of athletes have proven an effective means to uncover doping, not all the cases are easily detectable, and some analyses are too costly to be carried out on every sample. This leads to a need to develop an indirect method for detecting erythropoietin in blood samples based on different blood biomarkers. In this paper, we presented a comparison of different machine learning algorithms combined with statistical analysis approaches to identify the presence of erythropoietin drug in blood samples collected at both sea level and moderate altitude. The results presented indicate that ensemble methods like random forest and X Gboost algorithms may provide an effective tool to aid anti-doping organisations in most effectively distributing scarce resources. Implementation of these methods on the samples from elite athletes may both enhance the deterrence effect of anti-doping as well as increases the likelihood of catching doped athletes.
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