基于机器学习的人乳头瘤病毒(HPV)疫苗损耗预后预测模型

Urlish Marroquin, Nemias Saboya, A. Sullon
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引用次数: 0

摘要

目前,在秘鲁造成大量死亡的疾病之一是由人乳头瘤病毒(HPV)引起的宫颈癌。然而,使用这种疾病的疫苗可以预防某些HPV病毒株。该研究包括使用机器学习开发预测模型,用于预测9至13岁女孩HPV疫苗接种损耗的预后。所使用的数据来自秘鲁卫生部(MINSA)的“HPV疫苗接种系统”。该方法包括开发四种监督学习模型:决策树分类器、随机森林分类器、额外树分类器和极端梯度增强,目的是比较结果并选择表现最佳的模型进行各自的校准,并通过图形界面使用。结果表明,最佳学习模型为随机森林分类器,准确率为63.6140%,AUC为63.6183%,召回率为63%,f1分数为63%;这表明该模型将64%的病例归类为退出HPV疫苗接种计划的女孩。
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 predictive model for the prognosis of human papillomavirus (HPV) vaccination attrition
Currently, one of the diseases that is causing a large number of deaths in Peru is cervical cancer caused by the human papillomavirus (HPV). However, the application of the vaccine against this disease can protect against certain strains of HPV. The study consisted of the development of a predictive model using Machine Learning for the prognosis of HPV vaccination attrition in girls between 9 and 13 years of age. The data used came from the "HPV vaccination system" of the Peruvian Ministry of Health (MINSA). The methodology consisted of developing four supervised learning models: Decision Tree Classifier, Random Forest Classifier, Extra Trees Classifier and Extreme Gradient Boosting with the intention of comparing the results and choosing the best performing model for its respective calibration and to be used through a graphical interface. The results showed that the best learning model was Random Forest Classifier, with an Accuracy Score of 63.6140%, AUC of 63.6183%, Recall of 63% and F1-score of 63%; which indicates that the model classifies 64% of the cases as girls who drop out of the HPV vaccination program.
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