Privitera Grete Francesca, Alaimo Salvatore, Caruso Anna, Ferro Alfredo, Forte Stefano, Pulvirenti Alfredo
Department of Clinical and Experimental Medicine, Bioinformatics Unit, University of Catania, Catania, Italy.
Department of Physics and Astronomy, University of Catania, Catania, Italy.
Front Genet. 2024 Apr 5;15:1285305. doi: 10.3389/fgene.2024.1285305. eCollection 2024.
In the precision medicine era, identifying predictive factors to select patients most likely to benefit from treatment with immunological agents is a crucial and open challenge in oncology.
This paper presents a pan-cancer analysis of Tumor Mutational Burden (TMB). We developed a novel computational pipeline, TMBcalc, to calculate the TMB. Our methodology can identify small and reliable gene signatures to estimate TMB from custom targeted-sequencing panels. For this purpose, our pipeline has been trained on top of 17 cancer types data obtained from TCGA.
Our results show that TMB, computed through the identified signature, strongly correlates with TMB obtained from whole-exome sequencing (WES).
We have rigorously analyzed the effectiveness of our methodology on top of several independent datasets. In particular we conducted a comprehensive testing on: (i) 126 samples sourced from the TCGA database; few independent whole-exome sequencing (WES) datasets linked to colon, breast, and liver cancers, all acquired from the EGA and the ICGC Data Portal. This rigorous evaluation clearly highlights the robustness and practicality of our approach, positioning it as a promising avenue for driving substantial progress within the realm of clinical practice.
在精准医学时代,确定预测因素以选择最有可能从免疫治疗药物中获益的患者是肿瘤学领域一项关键且尚未解决的挑战。
本文对肿瘤突变负荷(TMB)进行了泛癌分析。我们开发了一种新颖的计算流程TMBcalc来计算TMB。我们的方法能够识别小而可靠的基因特征,以便从定制的靶向测序面板中估计TMB。为此,我们的流程已基于从TCGA获得的17种癌症类型的数据进行了训练。
我们的结果表明,通过所识别的特征计算出的TMB与从全外显子组测序(WES)获得的TMB高度相关。
我们已在多个独立数据集上严格分析了我们方法的有效性。特别是我们对以下数据进行了全面测试:(i)来自TCGA数据库的126个样本;与结肠癌、乳腺癌和肝癌相关的少量独立全外显子组测序(WES)数据集,所有这些数据集均从EGA和ICGC数据门户获取。这种严格的评估清楚地突出了我们方法的稳健性和实用性,使其成为推动临床实践领域取得重大进展的一条有前景的途径。