The Key Laboratory of Biomarker High Throughput Screening and Target Translation of Breast and Gastrointestinal Tumor, Affiliated Zhongshan Hospital of Dalian University, No. 6 Jiefang Street, Zhongshan District, Dalian 116001, Liaoning, China.
College of Information Engineering, Dalian University, Dalian, Liaoning, China.
Brief Bioinform. 2024 Sep 23;25(6). doi: 10.1093/bib/bbae516.
The heterogeneity of tumor clones drives the selection and evolution of distinct tumor cell populations, resulting in an intricate and dynamic tumor evolution process. While tumor bulk DNA sequencing helps elucidate intratumor heterogeneity, challenges such as the misidentification of mutation multiplicity due to copy number variations and uncertainties in the reconstruction process hinder the accurate inference of tumor evolution. In this study, we introduce a novel approach, REconstructing Tumor Clonal Heterogeneity and Evolutionary Relationships (RETCHER), which characterizes more realistic cancer cell fractions by accurately identifying mutation multiplicity while considering uncertainty during the reconstruction process and the credibility and reasonableness of subclone clustering. This method comprehensively and accurately infers multiple forms of tumor clonal heterogeneity and phylogenetic relationships. RETCHER outperforms existing methods on simulated data and infers clearer subclone structures and evolutionary relationships in real multisample sequencing data from five tumor types. By precisely analysing the complex clonal heterogeneity within tumors, RETCHER provides a new approach to tumor evolution research and offers scientific evidence for developing precise and personalized treatment strategies. This approach is expected to play a significant role in tumor evolution research, clinical diagnosis, and treatment. RETCHER is available for free at https://github.com/zlsys3/RETCHER.
肿瘤克隆的异质性驱动了不同肿瘤细胞群体的选择和进化,从而导致了一个复杂和动态的肿瘤进化过程。虽然肿瘤 bulk DNA 测序有助于阐明肿瘤内异质性,但由于拷贝数变异导致的突变多重性的错误识别以及重建过程中的不确定性等挑战,阻碍了肿瘤进化的准确推断。在本研究中,我们引入了一种新的方法,即 REconstructing Tumor Clonal Heterogeneity and Evolutionary Relationships (RETCHER),该方法通过在重建过程中准确识别突变多重性,同时考虑不确定性、亚克隆聚类的可信度和合理性,来刻画更真实的癌症细胞分数。该方法全面准确地推断了多种形式的肿瘤克隆异质性和系统发育关系。RETCHER 在模拟数据上优于现有方法,并在来自五种肿瘤类型的真实多样本测序数据中推断出更清晰的亚克隆结构和进化关系。通过精确分析肿瘤内复杂的克隆异质性,RETCHER 为肿瘤进化研究提供了一种新的方法,并为开发精确和个性化的治疗策略提供了科学依据。该方法有望在肿瘤进化研究、临床诊断和治疗中发挥重要作用。RETCHER 可在 https://github.com/zlsys3/RETCHER 上免费获得。