基于决策树分类器的宫颈癌自动预测优化机器学习模型

N. Meenakshisundaram, G. Ramkumar
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引用次数: 0

摘要

子宫颈癌是全世界妇女疾病死亡的第四大原因。人类乳头瘤病毒,也被称为HPV,与宫颈癌的发展有关。通过早期监测可以预防宫颈癌的发现有助于减少该疾病在世界范围内的总体负担。在不发达国家,由于定期检查所需的方法费用高昂,意识水平低,以及医疗设施的限制,妇女没有充分参与监测计划。如果采用这种方法,对特定的病人来说,可能会有很高的危险。在本文中,我们提出了一个决策树分类器来预测宫颈癌病例。然而,在对癌症数据的分析中,总共有32个危险因素被认为与四个不同的目标变量相关:Hinselmann、Schiller、细胞学和活检。结果表明,与传统方法相比,复合分类技术对宫颈癌的研究是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Optimized Machine learning model for Automatic Prediction of Cervical Cancer Using Decision Tree Classifier
Cervical cancer is the fourth leading cause of death from illness in women worldwide. The human papillomavirus, also known as HPV, has been linked to the development of cervical cancer. The discovery that cervical cancer can be prevented through earlier monitoring has contributed to a reduction in the disease's overall burden around the world. Women in underdeveloped countries do not participate in adequate monitoring programs due to the high expense of the methods required to undertake examinations regularly, low levels of awareness, and restricted access to medical facilities. By proceeding with this method, a very high level of danger is to be anticipated for the specific patient. In this article, we suggested a Decision Tree Classifier to predict cases of cervical cancer. However, in this analysis of cancer data, a total of 32 risk factors are deemed to be related to four different target variables: Hinselmann, Schiller, Cytology, and Biopsy. In comparison to the conventional techniques, the outcomes demonstrated that the composite classification technique was suggested to be effective for the study of cervical cancer.
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