论文标题
精确健康中的多模式机器学习
Multimodal Machine Learning in Precision Health
论文作者
论文摘要
随着机器学习和人工智能更加频繁地被利用以解决卫生部门的问题,因此在利用临床决策支持的兴趣上增加了兴趣。从历史上看,单局数据(例如电子健康记录数据)一直是这种情况。试图通过融合不同的数据来改善临床专家决策的预测并类似于临床专家决策的多模式性质。进行了这项综述,以总结该领域并确定未来研究的主题。我们根据Prisma(用于系统评价和荟萃分析的首选报告项目)进行了此审查,以进行范围的审查,以表征健康中多模式数据融合。我们结合了内容分析和文献搜索的组合来建立PubMed,Google Scholar和IEEXplore的搜索字符串和数据库,从2011年到2021年。分析中包括了最终的125篇文章。使用多模式方法的最常见的健康领域是神经病学和肿瘤学。但是,当前的应用中存在广泛的广度。最常见的信息融合形式是早期融合。值得注意的是,进行异质数据融合的预测性能有所改善。论文缺乏的是明确的临床部署策略和追求FDA批准的工具。这些发现提供了当前有关多模式数据融合的文献图,应用于健康诊断/预后问题。多模式的机器学习虽然对单峰方法的估计更加稳健,但其可伸缩性和信息串联的耗时性质的缺点。
As machine learning and artificial intelligence are more frequently being leveraged to tackle problems in the health sector, there has been increased interest in utilizing them in clinical decision-support. This has historically been the case in single modal data such as electronic health record data. Attempts to improve prediction and resemble the multimodal nature of clinical expert decision-making this has been met in the computational field of machine learning by a fusion of disparate data. This review was conducted to summarize this field and identify topics ripe for future research. We conducted this review in accordance with the PRISMA (Preferred Reporting Items for Systematic reviews and Meta-Analyses) extension for Scoping Reviews to characterize multi-modal data fusion in health. We used a combination of content analysis and literature searches to establish search strings and databases of PubMed, Google Scholar, and IEEEXplore from 2011 to 2021. A final set of 125 articles were included in the analysis. The most common health areas utilizing multi-modal methods were neurology and oncology. However, there exist a wide breadth of current applications. The most common form of information fusion was early fusion. Notably, there was an improvement in predictive performance performing heterogeneous data fusion. Lacking from the papers were clear clinical deployment strategies and pursuit of FDA-approved tools. These findings provide a map of the current literature on multimodal data fusion as applied to health diagnosis/prognosis problems. Multi-modal machine learning, while more robust in its estimations over unimodal methods, has drawbacks in its scalability and the time-consuming nature of information concatenation.