论文标题

放射性疗法:非小细胞肺癌的多模式学习用于适应性放射疗法

RadioPathomics: Multimodal Learning in Non-Small Cell Lung Cancer for Adaptive Radiotherapy

论文作者

Tortora, Matteo, Cordelli, Ermanno, Sicilia, Rosa, Nibid, Lorenzo, Ippolito, Edy, Perrone, Giuseppe, Ramella, Sara, Soda, Paolo

论文摘要

当前的癌症治疗实践收集了多模式数据,例如放射学图像,组织病理学幻灯片,基因组学和临床数据。这些数据源单独采用的重要性促进了近期的放射组和病原体的提升,即从放射学和组织病理学图像中提取定量特征,通常收集以预测临床结果或使用人工智能算法指导临床决策。然而,如何将它们组合到单个多模式框架中仍然是一个空旷的问题。因此,在这项工作中,我们开发了一种多模式的晚期融合方法,该方法结合了从放射线学,病原体和临床数据计算出的手工制作的特征,以预测非小细胞肺癌患者的放射治疗治疗结果。在这种情况下,我们研究了八个不同的后期融合规则(即产品,最大,最小值,均值,决策模板,dempster-shafer,多数投票和信心规则),以及两个智慧的聚合规则,利用了计算机断层扫描图像和全片扫描的信息丰富。在33名患者的内部队列上,对一名患者交叉验证进行的实验表明,AUC的拟议多模式范式等于$ 90.9 \%\%$均优于每种单峰方法,这表明数据集成可以提高精确药物。作为进一步的贡献,我们还将手工制作的表示与由深网自动计算的功能以及与早期融合的晚期融合范式(另一种流行的多模式方法)进行了比较。在这两种情况下,实验都表明,所提出的多模式方法提供了最佳结果。

The current cancer treatment practice collects multimodal data, such as radiology images, histopathology slides, genomics and clinical data. The importance of these data sources taken individually has fostered the recent raise of radiomics and pathomics, i.e. the extraction of quantitative features from radiology and histopathology images routinely collected to predict clinical outcomes or to guide clinical decisions using artificial intelligence algorithms. Nevertheless, how to combine them into a single multimodal framework is still an open issue. In this work we therefore develop a multimodal late fusion approach that combines hand-crafted features computed from radiomics, pathomics and clinical data to predict radiation therapy treatment outcomes for non-small-cell lung cancer patients. Within this context, we investigate eight different late fusion rules (i.e. product, maximum, minimum, mean, decision template, Dempster-Shafer, majority voting, and confidence rule) and two patient-wise aggregation rules leveraging the richness of information given by computer tomography images and whole-slide scans. The experiments in leave-one-patient-out cross-validation on an in-house cohort of 33 patients show that the proposed multimodal paradigm with an AUC equal to $90.9\%$ outperforms each unimodal approach, suggesting that data integration can advance precision medicine. As a further contribution, we also compare the hand-crafted representations with features automatically computed by deep networks, and the late fusion paradigm with early fusion, another popular multimodal approach. In both cases, the experiments show that the proposed multimodal approach provides the best results.

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