利用基因表达数据对弥漫大 B 细胞淋巴瘤分子亚型进行人工智能分析和逆向工程研究

J. Carreras, Yara Yukie Kikuti, M. Miyaoka, Saya Miyahara, Giovanna Roncador, R. Hamoudi, Naoya Nakamura
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引用次数: 0

摘要

弥漫大 B 细胞淋巴瘤是最常见的成熟 B 细胞血液肿瘤和非霍奇金淋巴瘤之一。尽管在诊断和治疗方面取得了进步,但仍有一部分患者的临床进展不佳。人们利用分子技术提出了几种致病模型,包括原发细胞分子分类、汉斯分类及其衍生模型,以及施密茨、查普伊、莱西、雷迪和沙模型。这项研究介绍了不同的机器学习技术及其分类方法。随后,研究人员结合 REMoDL-B 试验发布的数据,使用几种机器学习技术和人工神经网络对 DLBCL 亚型进行了高准确率(100%-95%)预测,包括类生殖中心 B 细胞(GCB)、类活化 B 细胞(ABC)、分子高级别(MHG)和未分类(UNC)。按准确率(MHG 与其他)排序,这些技术依次为 XGBoost 树(100%)、随机树(99.9%)、随机森林(99.5%)以及 C5、贝叶斯网络、SVM、逻辑回归、KNN 算法、神经网络、LSVM、判别分析、CHAID、C&R 树、tree-AS、Quest 和 XGBoost 线性(99.4%-91.1%)。输入(预测因子)是阵列的所有基因和一组与 DLBCL-Burkitt 差异表达相关的 28 个基因。总之,人工智能(AI)是利用基因表达数据进行预测分析的有用工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence Analysis and Reverse Engineering of Molecular Subtypes of Diffuse Large B-Cell Lymphoma Using Gene Expression Data
Diffuse large B-cell lymphoma is one of the most frequent mature B-cell hematological neoplasms and non-Hodgkin lymphomas. Despite advances in diagnosis and treatment, clinical evolution is unfavorable in a subset of patients. Using molecular techniques, several pathogenic models have been proposed, including cell-of-origin molecular classification; Hans’ classification and derivates; and the Schmitz, Chapuy, Lacy, Reddy, and Sha models. This study introduced different machine learning techniques and their classification. Later, several machine learning techniques and artificial neural networks were used to predict the DLBCL subtypes with high accuracy (100–95%), including Germinal center B-cell like (GCB), Activated B-cell like (ABC), Molecular high-grade (MHG), and Unclassified (UNC), in the context of the data released by the REMoDL-B trial. In order of accuracy (MHG vs. others), the techniques were XGBoost tree (100%); random trees (99.9%); random forest (99.5%); and C5, Bayesian network, SVM, logistic regression, KNN algorithm, neural networks, LSVM, discriminant analysis, CHAID, C&R tree, tree-AS, Quest, and XGBoost linear (99.4–91.1%). The inputs (predictors) were all the genes of the array and a set of 28 genes related to DLBCL-Burkitt differential expression. In summary, artificial intelligence (AI) is a useful tool for predictive analytics using gene expression data.
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