通过机器学习方法解码儿童肾母细胞瘤和横纹肌样瘤的可能分子机制。

IF 0.7 4区 医学 Q4 PATHOLOGY
Fetal and Pediatric Pathology Pub Date : 2023-12-01 Epub Date: 2023-08-07 DOI:10.1080/15513815.2023.2242979
Seyed Mahdi Hosseiniyan Khatibi, Yalda Rahbar Saadat, Seyyedeh Mina Hejazian, Simin Sharifi, Mohammadreza Ardalan, Mohammad Teshnehlab, Sepideh Zununi Vahed, Saeed Pirmoradi
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引用次数: 0

摘要

目的:肾母细胞瘤(Wilms tumor, WT)和横纹肌样瘤(Rhabdoid tumor, RT)是儿童肾脏肿瘤,其鉴别依据是组织病理和分子分析。本研究旨在利用深度学习算法介绍参与这些癌症发病机制的mrna和microRNAs。方法:筛选、图和关联规则挖掘算法应用于mrna /microRNAs数据。结果:候选mirna和mrna具有较高的准确度(AUC分别为97%/93%和94%/97%),可以区分训练和测试数据中的WT和RT类别。在WT中发现了Let-7a-2和C19orf24,而在RT中通过关联规则挖掘分析发现了miR-199b和RP1-3E10.2。结论:机器学习方法的应用可以识别mRNA/miRNA模式,以区分WT和rt。鉴定的miRNA /mRNA小组可以为这些癌症发生和发展的潜在分子机制提供新的见解。它们可能为进一步了解儿童肾肿瘤的发病机制、预后、诊断和分子靶向治疗提供帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decoding the Possible Molecular Mechanisms in Pediatric Wilms Tumor and Rhabdoid Tumor of the Kidney through Machine Learning Approaches.

Objective: Wilms tumor (WT) and Rhabdoid tumor (RT) are pediatric renal tumors and their differentiation is based on histopathological and molecular analysis. The present study aimed to introduce the panels of mRNAs and microRNAs involved in the pathogenesis of these cancers using deep learning algorithms. Methods: Filter, graph, and association rule mining algorithms were applied to the mRNAs/microRNAs data. Results: Candidate miRNAs and mRNAs with high accuracy (AUC: 97%/93% and 94%/97%, respectively) could differentiate the WT and RT classes in training and test data. Let-7a-2 and C19orf24 were identified in the WT, while miR-199b and RP1-3E10.2 were detected in the RT by analysis of Association Rule Mining. Conclusion: The application of the machine learning methods could identify mRNA/miRNA patterns to discriminate WT from RT. The identified miRNAs/mRNAs panels could offer novel insights into the underlying molecular mechanisms that are responsible for the initiation and development of these cancers. They may provide further insight into the pathogenesis, prognosis, diagnosis, and molecular-targeted therapy in pediatric renal tumors.

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来源期刊
CiteScore
3.00
自引率
0.00%
发文量
68
审稿时长
6-12 weeks
期刊介绍: Fetal and Pediatric Pathology is an established bimonthly international journal that publishes data on diseases of the developing embryo, newborns, children, and adolescents. The journal publishes original and review articles and reportable case reports. The expanded scope of the journal encompasses molecular basis of genetic disorders; molecular basis of diseases that lead to implantation failures; molecular basis of abnormal placentation; placentology and molecular basis of habitual abortion; intrauterine development and molecular basis of embryonic death; pathogenisis and etiologic factors involved in sudden infant death syndrome; the underlying molecular basis, and pathogenesis of diseases that lead to morbidity and mortality in newborns; prenatal, perinatal, and pediatric diseases and molecular basis of diseases of childhood including solid tumors and tumors of the hematopoietic system; and experimental and molecular pathology.
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