黑色素细胞基因特征的分类。

IF 3.9 3区 医学 Q2 CELL BIOLOGY Pigment Cell & Melanoma Research Pub Date : 2024-07-28 DOI:10.1111/pcmr.13189
Min Hu, Samuel Coleman, Robert L. Judson-Torres, Aik Choon Tan
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引用次数: 0

摘要

基因表达谱技术给细胞生物学带来了革命性的变化,使研究人员能够确定与黑色素瘤的各种生物学属性相关的基因特征,如色素沉着状态、分化状态、增殖与侵袭能力以及疾病进展。虽然基因特征的发现极大地促进了我们对黑色素细胞表型的了解,但如何协调独立研究和不同分析平台所报告的众多特征仍然是一个挑战。目前对黑色素细胞基因特征进行分类的方法依赖于精确的基因重叠以及与非标准化基线转录组的比较。在本研究中,我们的目的是根据已发表的基因特征在临床皮肤黑色素瘤标本中的相似表达模式,将其归类成群。我们分析了来自六个基因表达库的近 800 个黑色素瘤样本,并开发了一个基因特征分类框架,该框架可抵御不同分析平台基因识别的偏差和基线标准的不一致。利用 39 个经常被引用的已发表的基因特征,我们的分析揭示了与以前确定的表型相关的七类主要基因特征:分化型、有丝分裂/MYC 型、AXL 型、黑色素瘤型、神经型、高代谢型和侵袭型。每个类别都与组成基因特征所代表的表型一致,我们的分类方法不依赖于特征之间的重叠基因。为了便于更广泛的应用,我们创建了 WIMMS(我的黑色素细胞特征是什么,可在 https://wimms.tanlab.org/ 上查阅),这是一个用户友好型网络应用程序。WIMMS 允许用户对任何基因特征进行分类,确定其与主要引用特征的关系以及在七个主要类别中的代表性。
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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The classification of melanocytic gene signatures

Gene expression profiling technologies have revolutionized cell biology, enabling researchers to identify gene signatures linked to various biological attributes of melanomas, such as pigmentation status, differentiation state, proliferative versus invasive capacity, and disease progression. Although the discovery of gene signatures has significantly enhanced our understanding of melanocytic phenotypes, reconciling the numerous signatures reported across independent studies and different profiling platforms remains a challenge. Current methods for classifying melanocytic gene signatures depend on exact gene overlap and comparison with unstandardized baseline transcriptomes. In this study, we aimed to categorize published gene signatures into clusters based on their similar patterns of expression across clinical cutaneous melanoma specimens. We analyzed nearly 800 melanoma samples from six gene expression repositories and developed a classification framework for gene signatures that is resilient against biases in gene identification across profiling platforms and inconsistencies in baseline standards. Using 39 frequently cited published gene signatures, our analysis revealed seven principal classes of gene signatures that correlate with previously identified phenotypes: Differentiated, Mitotic/MYC, AXL, Amelanotic, Neuro, Hypometabolic, and Invasive. Each class is consistent with the phenotypes that the constituent gene signatures represent, and our classification method does not rely on overlapping genes between signatures. To facilitate broader application, we created WIMMS (what is my melanocytic signature, available at https://wimms.tanlab.org/), a user-friendly web application. WIMMS allows users to categorize any gene signature, determining its relationship to predominantly cited signatures and its representation within the seven principal classes.

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来源期刊
Pigment Cell & Melanoma Research
Pigment Cell & Melanoma Research 医学-皮肤病学
CiteScore
8.90
自引率
2.30%
发文量
54
审稿时长
6-12 weeks
期刊介绍: Pigment Cell & Melanoma Researchpublishes manuscripts on all aspects of pigment cells including development, cell and molecular biology, genetics, diseases of pigment cells including melanoma. Papers that provide insights into the causes and progression of melanoma including the process of metastasis and invasion, proliferation, senescence, apoptosis or gene regulation are especially welcome, as are papers that use the melanocyte system to answer questions of general biological relevance. Papers that are purely descriptive or make only minor advances to our knowledge of pigment cells or melanoma in particular are not suitable for this journal. Keywords Pigment Cell & Melanoma Research, cell biology, melatonin, biochemistry, chemistry, comparative biology, dermatology, developmental biology, genetics, hormones, intracellular signalling, melanoma, molecular biology, ocular and extracutaneous melanin, pharmacology, photobiology, physics, pigmentary disorders
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