利用迁移学习预测痴呆症:利用性别差异预测轻度认知障碍

Ziming Liu, Muskan Garg, Sunyang Fu, Surjodeep Sarkar, Maria Vassilaki, Ronald C Petersen, Jennifer St Sauver, Sunghwan Sohn
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引用次数: 0

摘要

本文介绍了一种基于机器学习的痴呆症预测方法,它利用迁移学习重新利用从轻度认知障碍(痴呆症的前兆)预测中学到的知识。我们还研究了纵向数据的时间方面和性别差异的影响。该方法包括设置持续时间窗口、比较不同的建模策略、进行综合评估以及检查模拟情景对特定性别的影响等关键部分。研究结果表明,女性的认知缺陷一旦在轻度认知障碍阶段被发现,往往会随着时间的推移而恶化,而男性则在各种特征上表现出更多样化的衰退,没有突出的特定特征。然而,造成这些性别差异的根本原因尚不清楚,值得进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Harnessing Transfer Learning for Dementia Prediction: Leveraging Sex-Different Mild Cognitive Impairment Prognosis.

This paper presents a machine learning-based prediction for dementia, leveraging transfer learning to reuse the knowledge learned from prediction of mild cognitive impairment, a precursor of dementia. We also examine the impacts of temporal aspects of longitudinal data and sex differences. The methodology encompasses key components such as setting the duration window, comparing different modeling strategies, conducting comprehensive evaluations, and examining the sex-specific impacts of simulated scenarios. The findings reveal that cognitive deficits in females, once detected at the mild cognitive impairment stage, tend to deteriorate over time, while males exhibit more diverse decline across various characteristics without highlighting specific ones. However, the underlying reasons for these sex differences remain unknown and warrant further investigation.

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