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SCNET: A Novel UGI Cancer Screening Framework Based on Semantic-Level Multimodal Data Fusion

机译:SCNET:基于语义级多峰数据融合的新型UGI癌症筛查框架

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摘要

Upper gastrointestinal (UGI) cancer has been identified as one of the ten most common causes of cancer deaths globally. UGI cancer screening is critical to improving the survival rate of UGI cancer patients. While many approaches to UGI cancer screening rely on single-modality data such as gastroscope imaging, limited studies have been dedicated to UGI cancer screening exploiting multisource and multimodal medical data, which could potentially lead to improved screening results. In this paper, we propose semantic-level cancer-screening network (SCNET), a framework for UGI cancer screening based on semantic-level multimodal upper gastrointestinal data fusion. Specifically, the proposed SCNET consists of a gastrointestinal image recognition flow and a textual medical record processing flow. High-level features of upper gastrointestinal data are extracted by identifying effective feature channels according to the correlation between the textual features and the spatial structure of the image features. The final screening results are obtained after the data fusion step. The experimental results show that the improvement of our approach over the state-of-the-art ones reached 4.01% in average. The source code of SCNET is available at https://github.com/netflymachine/SCNET .
机译:上胃肠道(UGI)癌症已被确定为全球癌症死亡的十个最常见的原因之一。 UGI癌症筛查对于提高UGI癌症患者的存活率至关重要。虽然UGI癌症筛查的许多方法依赖于单片数数数据,例如胃镜成像,但有限的研究已经专用于UGI癌症筛查利用多媒体和多模式医疗数据,这可能导致筛选结果改善。在本文中,我们提出了语义级癌症筛查网络(SCNET),是基于语义级多模式上胃肠数据融合的UGI癌症筛查框架。具体地,所提出的SCNET由胃肠图像识别流和文本医学记录处理流组成。通过根据图像特征的文本特征与空间结构之间的相关性来识别有效特征频道,提取上胃肠道数据的高级特征。在数据融合步骤之后获得最终筛选结果。实验结果表明,我们对最先进的人的方法平均提高了4.01%。 SCNET的源代码在 https://github.com/netflymachine/scnet

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  • 作者单位

    Key Laboratory of Process Optimization and Intelligent Decision-Making (Ministry of Education) School of Management Hefei University of Technology Hefei China;

    Key Laboratory of Process Optimization and Intelligent Decision-Making (Ministry of Education) School of Management Hefei University of Technology Hefei China;

    Key Laboratory of Process Optimization and Intelligent Decision-Making (Ministry of Education) School of Management Hefei University of Technology Hefei China;

    School of Information Technology Deakin University Melbourne VIC Australia;

    Key Laboratory of Process Optimization and Intelligent Decision-Making (Ministry of Education) School of Management Hefei University of Technology Hefei China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Cancer; Feature extraction; Data integration; Biomedical imaging; Informatics;

    机译:癌症;特征提取;数据集成;生物医学成像;信息学;

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