T细胞受体
胶质瘤
特征选择
计算机科学
计算生物学
算法
DNA测序
数据挖掘
模式识别(心理学)
T细胞
人工智能
免疫系统
DNA
生物
免疫学
癌症研究
遗传学
作者
Kaiyue Zhou,Zhengliang Xiao,Qi Liu,Xu Wang,Jiaxin Huo,Xiaoqi Wu,Xiaoxiao Zhao,Xiaohan Feng,Baoyi Fu,Pengfei Xu,Yunyun Deng,Wenwen Xiao,Tao Sun,Lin Da
标识
DOI:10.1038/s41598-024-65305-9
摘要
T-cell receptor (TCR) detection can examine the extent of T-cell immune responses. Therefore, the article analyzed characteristic data of glioma obtained by DNA-based TCR high-throughput sequencing, to predict the disease with fewer biomarkers and higher accuracy. We downloaded data online and obtained six TCR-related diversity indices to establish a multidimensional classification system. By comparing actual presence of the 602 correlated sequences, we obtained two-dimensional and multidimensional datasets. Multiple classification methods were utilized for both datasets with the classification accuracy of multidimensional data slightly less to two-dimensional datasets. This study reduced the TCR β sequences through feature selection methods like RFECV (Recursive Feature Elimination with Cross-Validation). Consequently, using only the presence of these three sequences, the classification AUC value of 96.67% can be achieved. The combination of the three correlated TCR clones obtained at a source data threshold of 0.1 is: CASSLGGNTEAFF_TRBV12_TRBJ1-1, CASSYSDTGELFF_TRBV6_TRBJ2-2, and CASSLTGNTEAFF_TRBV12_TRBJ1-1. At 0.001, the combination is: CASSLGETQYF_TRBV12_TRBJ2-5, CASSLGGNQPQHF_TRBV12_TRBJ1-5, and CASSLSGNTIYF_TRBV12_TRBJ1-3. This method can serve as a potential diagnostic and therapeutic tool, facilitating diagnosis and treatment of glioma and other cancers.
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