Characterizing Patient Representations for Computational Phenotyping.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2023-04-29 eCollection Date: 2022-01-01
Tiffany J Callahan, Adrianne L Stefanksi, Danielle M Ostendorf, Jordan M Wyrwa, Sara J Deakyne Davies, George Hripcsak, Lawrence E Hunter, Michael G Kahn
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Abstract

Patient representation learning methods create rich representations of complex data and have potential to further advance the development of computational phenotypes (CP). Currently, these methods are either applied to small predefined concept sets or all available patient data, limiting the potential for novel discovery and reducing the explainability of the resulting representations. We report on an extensive, data-driven characterization of the utility of patient representation learning methods for the purpose of CP development or automatization. We conducted ablation studies to examine the impact of patient representations, built using data from different combinations of data types and sampling windows on rare disease classification. We demonstrated that the data type and sampling window directly impact classification and clustering performance, and these results differ by rare disease group. Our results, although preliminary, exemplify the importance of and need for data-driven characterization in patient representation-based CP development pipelines.

Abstract Image

用于计算表型的患者表征。
患者表征学习方法创建了复杂数据的丰富表征,并有可能进一步推进计算表型(CP)的发展。目前,这些方法要么应用于小的预定义概念集,要么应用于所有可用的患者数据,这限制了新发现的潜力,并降低了结果表示的可解释性。我们报道了患者表征学习方法在CP开发或自动化方面的广泛、数据驱动的实用性。我们进行了消融研究,以检查患者表征对罕见病分类的影响,这些表征是使用不同数据类型和采样窗口组合的数据构建的。我们证明了数据类型和采样窗口直接影响分类和聚类性能,并且这些结果因罕见病组而异。我们的结果虽然是初步的,但证明了在基于患者表征的CP开发管道中数据驱动表征的重要性和必要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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