Program in Genetics and Genome Biology, The Hospital for Sick Children, Toronto, ON, Canada.
Laboratory of Medicine and Pathobiology, University of Toronto, Toronto, ON, Canada.
Nat Med. 2023 Mar;29(3):656-666. doi: 10.1038/s41591-023-02221-x. Epub 2023 Mar 17.
The causes of pediatric cancers' distinctiveness compared to adult-onset tumors of the same type are not completely clear and not fully explained by their genomes. In this study, we used an optimized multilevel RNA clustering approach to derive molecular definitions for most childhood cancers. Applying this method to 13,313 transcriptomes, we constructed a pediatric cancer atlas to explore age-associated changes. Tumor entities were sometimes unexpectedly grouped due to common lineages, drivers or stemness profiles. Some established entities were divided into subgroups that predicted outcome better than current diagnostic approaches. These definitions account for inter-tumoral and intra-tumoral heterogeneity and have the potential of enabling reproducible, quantifiable diagnostics. As a whole, childhood tumors had more transcriptional diversity than adult tumors, maintaining greater expression flexibility. To apply these insights, we designed an ensemble convolutional neural network classifier. We show that this tool was able to match or clarify the diagnosis for 85% of childhood tumors in a prospective cohort. If further validated, this framework could be extended to derive molecular definitions for all cancer types.
与同类型成人发病肿瘤相比,儿科癌症的独特性的原因尚不完全清楚,也不能完全用它们的基因组来解释。在这项研究中,我们使用了一种优化的多层次 RNA 聚类方法,为大多数儿科癌症提供了分子定义。我们将这种方法应用于 13313 个转录组,构建了一个儿科癌症图谱来探索与年龄相关的变化。由于共同的谱系、驱动因素或干性特征,肿瘤实体有时会出人意料地分组。一些已确立的实体被划分为亚组,其预测结果优于当前的诊断方法。这些定义解释了肿瘤间和肿瘤内的异质性,并有潜力实现可重复、可量化的诊断。总的来说,儿童肿瘤比成人肿瘤具有更多的转录多样性,保持了更大的表达灵活性。为了应用这些见解,我们设计了一个集成卷积神经网络分类器。我们表明,该工具能够匹配或澄清前瞻性队列中 85%的儿童肿瘤的诊断。如果进一步验证,这个框架可以扩展到为所有癌症类型提供分子定义。