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Abstract - Learning from Limited and Incomplete Data: A Multimodal Framework for Predicting Pathological Response in NSCLC
Major pathological response (pR) following neoadjuvant therapy is a clinically meaningful endpoint in non-small cell lung cancer, strongly associated with improved survival. However, accurate preoperative prediction of pR remains challenging, particularly in real-world clinical settings characterized by limited data availability and incomplete clinical profiles. In this study, we propose a multimodal deep learning framework designed to address these constraints by integrating foundation model-based CT feature extraction with a missing-aware architecture for clinical variables. This approach enables robust learning from small cohorts while explicitly modeling missing clinical information, without relying on conventional imputation strategies. A weighted fusion mechanism is employed to leverage the complementary contributions of imaging and clinical modalities, yielding a multimodal model that consistently outperforms both unimodal imaging and clinical baselines. These findings underscore the added value of integrating heterogeneous data sources and highlight the potential of multimodal, missing-aware systems to support pR prediction under realistic clinical conditions.
从有限和不完整数据中学习:一种预测非小细胞肺癌病理反应的多模态框架 /
Learning from Limited and Incomplete Data: A Multimodal Framework for Predicting Pathological Response in NSCLC
1️⃣ 一句话总结
这项研究提出了一种多模态深度学习框架,它巧妙地将基于基础模型的CT影像特征提取与能处理缺失临床数据的架构相结合,从而在数据有限且不完整的真实临床场景下,有效提升了非小细胞肺癌患者术前病理反应预测的准确性。