Matias Aiskovich, Eduardo Castro, Jenna M. Reinen, S. Fadnavis, Anushree Mehta, Hongyang Li, Amit Dhurandhar, Guillermo Cecchi, Pablo Polosecki
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引用次数: 0
摘要
数据收集、整理和清理是机器学习(ML)项目的关键阶段。在生物医学 ML 中,通常希望利用多个数据集来增加样本量和多样性,但这带来了独特的挑战,这些挑战来自于研究设计、数据描述符、文件系统组织和元数据的异质性。在本研究中,我们介绍了一种整合多个脑磁共振成像数据集的方法,重点是对其组织和预处理进行同质化,以便进行多重L。我们使用自己的融合实例(来自 54,000 名受试者、12 项研究和 88 台独立扫描仪的约 84,000 张图像)来说明和讨论研究融合工作所面临的问题,并研究了数据集同质化过程中所需的关键决策,详细介绍了可灵活容纳多个观察性 MRI 数据集的数据库结构。我们相信,我们的方法可以为未来类似的生物医学 ML 项目奠定基础。
Fusion of biomedical imaging studies for increased sample size and diversity: a case study of brain MRI
Data collection, curation, and cleaning constitute a crucial phase in Machine Learning (ML) projects. In biomedical ML, it is often desirable to leverage multiple datasets to increase sample size and diversity, but this poses unique challenges, which arise from heterogeneity in study design, data descriptors, file system organization, and metadata. In this study, we present an approach to the integration of multiple brain MRI datasets with a focus on homogenization of their organization and preprocessing for ML. We use our own fusion example (approximately 84,000 images from 54,000 subjects, 12 studies, and 88 individual scanners) to illustrate and discuss the issues faced by study fusion efforts, and we examine key decisions necessary during dataset homogenization, presenting in detail a database structure flexible enough to accommodate multiple observational MRI datasets. We believe our approach can provide a basis for future similarly-minded biomedical ML projects.