基于极限梯度增强(XGBoost)和进化算法的癌症分类混合方法

Muhammad Talha Ashraf, Isma Hamid, Qamar Nawaz, Hamid Ali
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引用次数: 1

摘要

癌症是全球死亡的主要原因。世界卫生组织估计,到2020年,约有1000万人死于癌症。结肠癌、乳腺癌、肺癌、中枢神经系统癌、宫颈癌和前列腺癌都很常见。在大多数情况下,如果发现得早,癌症可以得到有效治疗。微阵列中包含的生物数据是非常有用的。这种数据分析有助于识别和治疗疑难疾病。当这些特征都是直接输入时,训练一个具有如此大量特征的模型是非常困难和耗时的。因此,我们采用了一种名为群体咨询优化器(GCO)的进化算法,结合极端梯度增强(XGBoost)对微阵列数据中的癌症进行分类。首先,我们有极端梯度增强集合选择的特征。在这一步中,剔除不相关的特征,生成一组检测癌症的最优特征。在第二种用法中,进化方法用于癌症分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Approach using Extreme Gradient Boosting (XGBoost) and Evolutionary Algorithm for Cancer Classification
Cancer is a leading cause of mortality globally. World Health Organization estimates that around 10 million people die from cancer in 2020. Cancers of the colon, breast, lung, central nervous system, cervix, and prostate are quite common. In most cases, cancer may be efficiently treated if caught early. The biological data included in microarrays is very informative. This data analysis aids in the identification and treatment of difficult illnesses. It is quite difficult and time consuming to train a model with such a large number of features, when they are all input directly. Therefore, we employ an Evolutionary Algorithm named as Group Counseling Optimizer (GCO) in tandem with Extreme gradient boost (XGBoost) to classify cancer in microarray data. At the outset, we have the Extreme Gradient Boosting ensemble-selected features. In this step, irrelevant features are eliminated, and a set of optimal characteristics for detecting cancer has been generated. In a second usage, the evolutionary method is used for cancer classification.
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