RFE-ACO-RF:癌症微阵列数据诊断方法

Pinakshi Panda, Ankur Priyadarshi
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引用次数: 0

摘要

现在,癌症每天都在全世界死亡人数的增加中发挥着至关重要的作用。癌症的早期发现增加了恢复的程度。机器学习基于活检数据和微阵列数据为癌症分类提供了各种模型。微阵列数据具有高维性。因此,将机器学习算法直接应用于微阵列数据进行分类,将面临小样本(SSS)问题。因此,在分类之前,必须使用任何可用的技术来降低数据集的维数。本研究提出了一种基于RFE-ACO-RF方法的肿瘤诊断模型。RFE将用于特征选择,ACO用于优化,RF用于分类。模型的性能将根据准确率、F1分数、准确率和召回率来计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RFE-ACO-RF: An approach for Cancer Microarray Data Diagnosis
Cancer now a day is playing a vital role in increasing the number of deaths throughout the world. Early detection of cancer increases the degree of recovery. Machine Learning has given various models based on biopsy data and the microarray data for cancer classification. The microarray data is having high dimension. Hence applying machine learning algorithm is directly applied to the microarray data for classification purposes then it will face the Small Sample Size (SSS) problem. So, before classification, the dimension of the dataset has to be reduced by using any available technique. In this research work an integrated approach based on the RFE-ACO-RF method has been proposed as a cancer diagnosis model. The RFE will be used for feature selection purpose, ACO is used for optimization purpose and the RF for classification purpose. The performance of the model will be calculated based on accuracy, F1 score, precision and recall.
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