Bin Masroni Muhammad Sufyan, Ling Eng Gracie Wee, Jeon Ah-Jung, Gao Yuan, Cheng He, Leong Sai Mun, Cheong Jit Kong, Hue Susan Swee-Shan, Tan Soo Yong
Department of Pathology, Yong Loo Lin School of Medicine, National University of Singapore (NUS), Singapore, 117596, Singapore.
NUS Centre for Cancer Research, Singapore, 117599, Singapore.
Cancer Cell Int. 2024 Jan 30;24(1):48. doi: 10.1186/s12935-024-03226-3.
The diagnosis of T-cell lymphomas is typically established through a multiparameter approach that combines clinical, morphologic, immunophenotypic, and genetic features, utilizing a variety of histopathologic and molecular techniques. However, accurate diagnosis of such lymphomas and distinguishing them from reactive lymph nodes remains challenging due to their low prevalence and heterogeneous features, hence limiting the confidence of pathologists. We investigated the use of microRNA (miRNA) expression signatures as an adjunctive tool in the diagnosis and classification of T-cell lymphomas that involve lymph nodes. This study seeks to distinguish reactive lymph nodes (RLN) from two types of frequently occurring nodal T-cell lymphomas: nodal T-follicular helper (TFH) cell lymphomas (nTFHL) and peripheral T-cell lymphomas, not otherwise specified (nPTCL).
From the formalin-fixed paraffin-embedded (FFPE) samples from a cohort of 88 subjects, 246 miRNAs were quantified and analyzed by differential expression. Two-class logistic regression and random forest plot models were built to distinguish RLN from the nodal T-cell lymphomas. Gene set enrichment analysis was performed on the target genes of the miRNA to identify pathways and transcription factors that may be regulated by the differentially expressed miRNAs in each subtype.
Using logistic regression analysis, we identified miRNA signatures that can distinguish RLN from nodal T-cell lymphomas (AUC of 0.92 ± 0.05), from nTFHL (AUC of 0.94 ± 0.05) and from nPTCL (AUC of 0.94 ± 0.08). Random forest plot modelling was also capable of distinguishing between RLN and nodal T-cell lymphomas, but performed worse than logistic regression. However, the miRNA signatures are not able to discriminate between nTFHL and nPTCL, owing to large similarity in miRNA expression patterns. Bioinformatic analysis of the gene targets of unique miRNA expression revealed the enrichment of both known and potentially understudied signalling pathways and genes in such lymphomas.
This study suggests that miRNA biomarkers may serve as a promising, cost-effective tool to aid the diagnosis of nodal T-cell lymphomas, which can be challenging. Bioinformatic analysis of differentially expressed miRNAs revealed both relevant or understudied signalling pathways that may contribute to the progression and development of each T-cell lymphoma entity. This may help us gain further insight into the biology of T-cell lymphomagenesis.
T细胞淋巴瘤的诊断通常通过多参数方法来确定,该方法结合了临床、形态学、免疫表型和基因特征,采用多种组织病理学和分子技术。然而,由于此类淋巴瘤的发病率低且特征异质性,准确诊断这些淋巴瘤并将它们与反应性淋巴结区分开来仍然具有挑战性,从而限制了病理学家的信心。我们研究了使用微小RNA(miRNA)表达特征作为涉及淋巴结的T细胞淋巴瘤诊断和分类的辅助工具。本研究旨在区分反应性淋巴结(RLN)与两种常见的淋巴结T细胞淋巴瘤:淋巴结T滤泡辅助(TFH)细胞淋巴瘤(nTFHL)和外周T细胞淋巴瘤,非特指型(nPTCL)。
从88名受试者队列的福尔马林固定石蜡包埋(FFPE)样本中,对246种miRNA进行定量并通过差异表达进行分析。构建二类逻辑回归和随机森林图模型以区分RLN与淋巴结T细胞淋巴瘤。对miRNA的靶基因进行基因集富集分析,以识别每个亚型中可能受差异表达的miRNA调控的信号通路和转录因子。
使用逻辑回归分析,我们鉴定出可区分RLN与淋巴结T细胞淋巴瘤(曲线下面积为0.92±0.05)、与nTFHL(曲线下面积为0.94±0.05)以及与nPTCL(曲线下面积为0.94±0.08)的miRNA特征。随机森林图建模也能够区分RLN与淋巴结T细胞淋巴瘤,但表现不如逻辑回归。然而,由于miRNA表达模式的高度相似性,miRNA特征无法区分nTFHL和nPTCL。对独特miRNA表达的基因靶标的生物信息学分析揭示了此类淋巴瘤中已知和可能研究不足的信号通路及基因的富集。
本研究表明,miRNA生物标志物可能是一种有前景的、具有成本效益的工具,有助于诊断具有挑战性的淋巴结T细胞淋巴瘤。对差异表达的miRNA进行生物信息学分析揭示了可能有助于每种T细胞淋巴瘤实体进展和发展的相关或研究不足的信号通路。这可能有助于我们进一步深入了解T细胞淋巴瘤发生的生物学机制。