计算机科学
亚型
一般化
构造(python库)
水准点(测量)
机器学习
人工智能
聚类分析
关系数据库
层次聚类
学习迁移
数据挖掘
知识抽取
班级(哲学)
重新使用
癌症
分类
统计关系学习
概念证明
可解释性
蒸馏
药物发现
作者
Fei Guo,Run Shi,Jia Zhou,Junlin Xu,Hui Cui,Ping Xuan,Xikang Feng,Leyi Wei,Ran Su,Qiangguo Jin
标识
DOI:10.1109/jbhi.2025.3611646
摘要
Accurate molecular subtyping of cancers is critical for drug discovery and disease treatment but re-mains challenging due to the scarcity of labeled data and the intrinsic heterogeneity of cancer biology. While current methods address this issue via few-shot learning (FSL), they often overlook the hierarchical relation-ships among cancer subtypes and the transfer of relational knowledge between models, both of which are crucial for improving generalization under limited supervision. In this work, we propose HRProtoKD, a novel hierarchical and relational prototype-based knowledge distillation framework designed for few-shot cancer subtype classification. HRProtoKD first employs hierarchical inter-class prototype clustering to capture the underlying class relationships. A prototype-wise contrastive loss is then introduced to enhance intra-class compactness and interclass separability. Furthermore, relational prototype knowledge distillation is applied to transfer structural knowledge from a teacher model to a student model. In addition, we construct three benchmark datasets for few-shot cancer molecular subtyping. Extensive experiments conducted on these datasets demonstrate that HRProtoKD consistently outperforms state-of-the-art meta-learning baselines under both 1-shot and 5-shot learning settings, thereby advancing precision oncology and supporting data-driven approaches for drug discovery and therapeutic development.
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