液体活检
分类器(UML)
学习迁移
肺癌
特征选择
聚类分析
人工智能
计算生物学
模式识别(心理学)
化学
活检
癌症生物标志物
循环肿瘤细胞
机器学习
小RNA
域适应
病理
癌症
特征(语言学)
医学物理学
临床诊断
计算机科学
作者
Jiajia Song,Ruiting Liu,Yixuan Wu,Linguo Gu,Kemin Wang,Zhenkun Xia,Qiuping Guo,Jin Huang
标识
DOI:10.1021/acs.analchem.5c06966
摘要
Serum microRNA-based liquid biopsy holds a great application prospect in noninvasive lung cancer diagnosis. However, building an efficient serum-based miRNA classifier remains a challenging issue due to the nearly infinite miRNA combinations and the scarcity of large-scale, clinically annotated serum samples. Here, we develop a transfer learning strategy with feature space alignment integrating molecular detection, enabling effective domain adaptation and knowledge transfer from large-scale tissue data to limited serum data sets, and apply it to serum-based lung cancer diagnosis. A 4-miRNA panel (miR-139-5p, miR-10a-5p, miR-148a-3p, miR-30d-5p) is identified through genetic algorithm-driven feature selection and unsupervised clustering analysis, demonstrating high accuracy (AUC > 0.98) in tissue-based classification. Their expression data are accurately quantified via reverse transcription quantitative PCR in 89 clinical serum samples. The transfer-learned model ultimately achieves a high classification accuracy of 91.5% and a sensitivity of 92.2% on the clinical serum test set. We envision that the approach offers a cost-effective solution for high-accuracy liquid biopsy with limited samples.
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