Machine Learning–Supported Diagnosis of Small Blue Round Cell Sarcomas Using Targeted RNA Sequencing

IF 3.4 3区 医学 Q1 PATHOLOGY
Lea D. Schlieben , Maria Giulia Carta , Evgeny A. Moskalev , Robert Stöhr , Markus Metzler , Manuel Besendörfer , Norbert Meidenbauer , Sabine Semrau , Rolf Janka , Robert Grützmann , Stefan Wiemann , Arndt Hartmann , Abbas Agaimy , Florian Haller , Fulvia Ferrazzi
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引用次数: 0

Abstract

Small blue round cell sarcomas (SBRCSs) are a heterogeneous group of tumors with overlapping morphologic features but markedly varying prognosis. They are characterized by distinct chromosomal alterations, particularly rearrangements leading to gene fusions, whose detection currently represents the most reliable diagnostic marker. Ewing sarcomas are the most common SBRCSs, defined by gene fusions involving EWSR1 and transcription factors of the ETS family, and the most frequent non–EWSR1-rearranged SBRCSs harbor a CIC rearrangement. Unfortunately, currently the identification of CIC::DUX4 translocation events, the most common CIC rearrangement, is challenging. Here, we present a machine-learning approach to support SBRCS diagnosis that relies on gene expression profiles measured via targeted sequencing. The analyses on a curated cohort of 69 soft-tissue tumors showed markedly distinct expression patterns for SBRCS subgroups. A random forest classifier trained on Ewing sarcoma and CIC-rearranged cases predicted probabilities of being CIC-rearranged >0.9 for CIC-rearranged–like sarcomas and <0.6 for other SBRCSs. Testing on a retrospective cohort of 1335 routine diagnostic cases identified 15 candidate CIC-rearranged tumors with a probability >0.75, all of which were supported by expert histopathologic reassessment. Furthermore, the multigene random forest classifier appeared advantageous over using high ETV4 expression alone, previously proposed as a surrogate to identify CIC rearrangement. Taken together, the expression-based classifier can offer valuable support for SBRCS pathologic diagnosis.

使用靶向 RNA 测序对蓝圆细胞小肉瘤进行机器学习辅助诊断
小蓝圆细胞肉瘤(SBRCS)是一类异质性肿瘤,其形态特征相互重叠,但预后却明显不同。它们的特点是染色体发生明显改变,尤其是导致基因融合的重排,而基因融合的检测是目前最可靠的诊断标志。尤文肉瘤是最常见的 SBRCS,其基因融合涉及 EWSR1 和 ETS 家族的转录因子。遗憾的是,目前对最常见的 CIC 重排--CIC::DUX4 易位事件的鉴定还很困难。在这里,我们提出了一种机器学习方法来支持 SBRCS 诊断,该方法依赖于通过靶向测序测量的基因表达谱。对 69 例软组织肿瘤的队列分析显示,SBRCS 亚组的表达模式明显不同。在尤文肉瘤和CIC重组病例上训练的随机森林分类器预测出CIC重组的概率为:CIC重组样肉瘤为0.9,其他SBRCS为0.6。在 1335 例常规诊断病例的回顾性队列中进行了测试,发现了 15 个候选 CIC 重排肿瘤,其概率为 >0.75,所有这些肿瘤都得到了专家组织病理学重新评估的支持。此外,多基因随机森林分类器似乎比单独使用高ETV4表达更有优势,ETV4表达曾被提出作为识别CIC重排的替代物。综上所述,基于表达的分类器可为 SBRCS 病理诊断提供有价值的支持。
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来源期刊
CiteScore
8.10
自引率
2.40%
发文量
143
审稿时长
43 days
期刊介绍: The Journal of Molecular Diagnostics, the official publication of the Association for Molecular Pathology (AMP), co-owned by the American Society for Investigative Pathology (ASIP), seeks to publish high quality original papers on scientific advances in the translation and validation of molecular discoveries in medicine into the clinical diagnostic setting, and the description and application of technological advances in the field of molecular diagnostic medicine. The editors welcome for review articles that contain: novel discoveries or clinicopathologic correlations including studies in oncology, infectious diseases, inherited diseases, predisposition to disease, clinical informatics, or the description of polymorphisms linked to disease states or normal variations; the application of diagnostic methodologies in clinical trials; or the development of new or improved molecular methods which may be applied to diagnosis or monitoring of disease or disease predisposition.
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