Department of Neuropathology, Charité - Universitätsmedizin Berlin, Corporate Member of Freie Universität Berlin, Humboldt-Universität zu Berlin, Berlin, Germany.
Berlin Institute of Health, Berlin, Germany.
Neuropathol Appl Neurobiol. 2020 Feb;46(1):28-47. doi: 10.1111/nan.12598. Epub 2020 Feb 19.
DNA methylation-based machine learning algorithms represent powerful diagnostic tools that are currently emerging for several fields of tumour classification. For various reasons, paediatric brain tumours have been the main driving forces behind this rapid development and brain tumour classification tools are likely further advanced than in any other field of cancer diagnostics. In this review, we will discuss the main characteristics that were important for this rapid advance, namely the high clinical need for improvement of paediatric brain tumour diagnostics, the robustness of methylated DNA and the consequential possibility to generate high-quality molecular data from archival formalin-fixed paraffin-embedded pathology specimens, the implementation of a single array platform by most laboratories allowing data exchange and data pooling to an unprecedented extent, as well as the high suitability of the data format for machine learning. We will further discuss the four most central output qualities of DNA methylation profiling in a diagnostic setting (tumour classification, tumour sub-classification, copy number analysis and guidance for additional molecular testing) individually for the most frequent types of paediatric brain tumours. Lastly, we will discuss DNA methylation profiling as a tool for the detection of new paediatric brain tumour classes and will give an overview of the rapidly growing family of new tumours identified with the aid of this technique.
基于 DNA 甲基化的机器学习算法代表了强大的诊断工具,目前正应用于肿瘤分类的多个领域。出于各种原因,儿科脑肿瘤是推动这一快速发展的主要动力,脑肿瘤分类工具可能比癌症诊断的任何其他领域都更先进。在这篇综述中,我们将讨论推动这一快速发展的主要特征,即改善儿科脑肿瘤诊断的高度临床需求、甲基化 DNA 的稳健性以及由此产生的从存档福尔马林固定石蜡包埋病理标本中生成高质量分子数据的可能性、大多数实验室采用的单个阵列平台的实现允许以前所未有的程度进行数据交换和数据汇集,以及数据格式非常适合机器学习。我们将进一步讨论 DNA 甲基化分析在诊断环境中的四个最重要的输出质量(肿瘤分类、肿瘤亚分类、拷贝数分析和指导进行额外的分子检测),分别针对最常见的儿科脑肿瘤类型进行讨论。最后,我们将讨论 DNA 甲基化分析作为一种用于检测新的儿科脑肿瘤类别的工具,并概述借助该技术鉴定的快速增长的新肿瘤家族。