Prediction of Cancer Disease Using Machine Learning Approach: A Review

Abishek D, Sujitha R
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引用次数: 9

Abstract

Cancer has identified a diverse condition of several various subtypes. The timely screening and course of treatment of a cancer form is now a requirement in early cancer research because it supports the medical treatment of patients. Many research teams studied the application of ML and Deep Learning methods in the field of biomedicine and bioinformatics in the classification of people with cancer across high or low-risk categories. These techniques have therefore been used as a model for the development and treatment of cancer. A sit is important that ML instruments are capable of detecting key features from complex datasets. Many of these methods are widely used for the development of predictive models for predicating a cure for cancer, some of the methods are artificial neural networks (ANNs), support vector machine (SVMs) and decision trees (DTs). While we can understand cancer progression with the use of ML methods, an adequate validity level is needed to take these methods into consideration in clinical practice every day .In this study the ML & DL approaches used in cancer progression modeling are reviewed. The predictions addressed are mostly linked to specific ML, input, and data samples supervision. 2021ElsevierLtd. All rights reserved. Selection and peer-review under responsibility of the scientific committee of the International Virtual Conference one Advanced Nano materials and Applications. This is an open access article under the CCBY-NC-ND license.
使用机器学习方法预测癌症疾病:综述
癌症已经确定了几种不同亚型的不同情况。癌症形式的及时筛查和治疗过程现在是早期癌症研究的要求,因为它支持患者的医学治疗。许多研究团队研究了ML和深度学习方法在生物医学和生物信息学领域的应用,将癌症患者分为高风险和低风险类别。因此,这些技术被用作癌症发展和治疗的模型。重要的是,机器学习仪器能够从复杂的数据集中检测关键特征。其中许多方法被广泛用于预测癌症治愈的预测模型的开发,其中一些方法是人工神经网络(ann),支持向量机(svm)和决策树(dt)。虽然我们可以通过使用ML方法来了解癌症的进展,但在日常临床实践中需要适当的有效性水平来考虑这些方法。本研究回顾了用于癌症进展建模的ML和DL方法。这些预测主要与特定的机器学习、输入和数据样本监督有关。2021 elsevierltd。版权所有。由国际先进纳米材料与应用虚拟会议科学委员会负责选择和同行评审。这是一篇基于CCBY-NC-ND许可的开放获取文章。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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