Data mining and mathematical models in cancer prognosis and prediction.

Medical review (Berlin, Germany) Pub Date : 2022-06-29 eCollection Date: 2022-06-01 DOI:10.1515/mr-2021-0026
Chong Yu, Jin Wang
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引用次数: 2

Abstract

Cancer is a fetal and complex disease. Individual differences of the same cancer type or the same patient at different stages of cancer development may require distinct treatments. Pathological differences are reflected in tissues, cells and gene levels etc. The interactions between the cancer cells and nearby microenvironments can also influence the cancer progression and metastasis. It is a huge challenge to understand all of these mechanistically and quantitatively. Researchers applied pattern recognition algorithms such as machine learning or data mining to predict cancer types or classifications. With the rapidly growing and available computing powers, researchers begin to integrate huge data sets, multi-dimensional data types and information. The cells are controlled by the gene expressions determined by the promoter sequences and transcription regulators. For example, the changes in the gene expression through these underlying mechanisms can modify cell progressing in the cell-cycle. Such molecular activities can be governed by the gene regulations through the underlying gene regulatory networks, which are essential for cancer study when the information and gene regulations are clear and available. In this review, we briefly introduce several machine learning methods of cancer prediction and classification which include Artificial Neural Networks (ANNs), Decision Trees (DTs), Support Vector Machine (SVM) and naive Bayes. Then we describe a few typical models for building up gene regulatory networks such as Correlation, Regression and Bayes methods based on available data. These methods can help on cancer diagnosis such as susceptibility, recurrence, survival etc. At last, we summarize and compare the modeling methods to analyze the development and progression of cancer through gene regulatory networks. These models can provide possible physical strategies to analyze cancer progression in a systematic and quantitative way.

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癌症预后和预测的数据挖掘和数学模型。
癌症是一种复杂的胎儿疾病。同一癌症类型的个体差异或处于癌症不同发展阶段的同一患者可能需要不同的治疗。病理差异反映在组织、细胞和基因水平等方面。癌症细胞与附近微环境之间的相互作用也会影响癌症的进展和转移。从机械和数量上理解所有这些是一个巨大的挑战。研究人员应用机器学习或数据挖掘等模式识别算法来预测癌症类型或分类。随着计算能力的快速增长和可用性,研究人员开始集成庞大的数据集、多维的数据类型和信息。细胞由启动子序列和转录调节因子决定的基因表达控制。例如,通过这些潜在机制改变基因表达可以改变细胞在细胞周期中的进展。这种分子活性可以通过潜在的基因调控网络受到基因调控的支配,当信息和基因调控清晰可用时,这对癌症研究至关重要。在这篇综述中,我们简要介绍了几种癌症预测和分类的机器学习方法,包括人工神经网络(Ann)、决策树(DT)、支持向量机(SVM)和朴素贝叶斯。然后,我们描述了一些基于现有数据建立基因调控网络的典型模型,如相关、回归和贝叶斯方法。这些方法可以帮助癌症的易感性、复发、存活等诊断。最后,我们总结并比较了建模方法,通过基因调控网络分析癌症的发展和进展。这些模型可以提供可能的物理策略,以系统和定量的方式分析癌症的进展。
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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CiteScore
1.30
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0.00%
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