Diagnostic classification of childhood cancer using multiscale transcriptomics.
Federico ComitaniJoshua O NashSarah Cohen-GogoAstra I ChangTimmy T WenAnant MaheshwariBipasha GoyalEarvin S TioKevin TabatabaeiChelsea MayohRegis ZhaoBen HoLedia BrungaJohn E G LawrencePetra BaloghAdrienne M FlanaganSarah A TeichmannAnnie HuangVijay RamsawamiJohann K HitzlerJonathan D WassermanRebecca A GladdyBrendan C DicksonUri TaboriMark J CowleySam BehjatiDavid MalkinAnita VillaniMeredith S IrwinAdam ShlienPublished in: Nature medicine (2023)
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.
Keyphrases
- childhood cancer
- young adults
- single cell
- convolutional neural network
- deep learning
- rna seq
- stem cells
- poor prognosis
- machine learning
- gene expression
- squamous cell carcinoma
- wastewater treatment
- epithelial mesenchymal transition
- transcription factor
- risk assessment
- heat stress
- binding protein
- signaling pathway
- lymph node metastasis