Journal: BMC Cancer
Article Title: A multi-branch ensemble learning framework for detection of non-small cell lung cancer via T-cell receptor sequencing
doi: 10.1186/s12885-026-15714-y
Figure Lengend Snippet: External test performance on DB2 (Adaptive Biotechnologies immunoSEQ platform, N = 45, Mean AUC = 0.941 ± 0.021). A ROC curves for 5-fold external test on DB2, where the training set ( N = 235) was split into 5 folds for training/validation while DB2 remained fixed as the external test set. Individual fold AUCs range from 0.913 to 0.973, with the mean ROC curve (blue, AUC = 0.941 ± 0.021) demonstrating consistent cross-platform generalization. B AUC values by fold with the mean AUC indicated by the dashed red line. DB2 consists of Sun Yat-sen new cohort (30 NSCLC) and Healthy_Cohort_2 (15 controls), using Adaptive Biotechnologies immunoSEQ platform
Article Snippet: To evaluate multi-center generalizability, the model was tested on two independent external cohorts: DB1 (Illumina MiSeq, N = 47) and DB2 (Adaptive Biotechnologies immunoSEQ, N = 45).
Techniques: Biomarker Discovery