Multidimensional digital biomarker phenotypes for mild cognitive impairment: considerations for early identification, diagnosis and monitoring

Tracy Milner, Matthew R. G. Brown, Chelsea Jones, Ada W. S. Leung, S. Brémault-Phillips
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Abstract

Mild Cognitive Impairment (MCI) poses a challenge for a growing population worldwide. Early identification of risk for and diagnosis of MCI is critical to providing the right interventions at the right time. The paucity of reliable, valid, and scalable methods for predicting, diagnosing, and monitoring MCI with traditional biomarkers is noteworthy. Digital biomarkers hold new promise in understanding MCI. Identifying digital biomarkers specifically for MCI, however, is complex. The biomarker profile for MCI is expected to be multidimensional with multiple phenotypes based on different etiologies. Advanced methodological approaches, such as high-dimensional statistics and deep machine learning, will be needed to build these multidimensional digital biomarker profiles for MCI. Comparing patients to these MCI phenotypes in clinical practice can assist clinicians in better determining etiologies, some of which may be reversible, and developing more precise care plans. Key considerations in developing reliable multidimensional digital biomarker profiles specific to an MCI population are also explored.
轻度认知障碍的多维数字生物标记表型:早期识别、诊断和监测的考虑因素
轻度认知功能障碍(MCI)给全球日益增长的人口带来了挑战。早期识别和诊断 MCI 风险对于在正确的时间提供正确的干预措施至关重要。值得注意的是,利用传统生物标记预测、诊断和监测 MCI 的可靠、有效和可扩展的方法非常缺乏。数字生物标志物为了解 MCI 带来了新希望。然而,识别专门用于 MCI 的数字生物标志物非常复杂。MCI 的生物标志物特征预计是多维的,具有基于不同病因的多种表型。要建立 MCI 的多维数字生物标志物图谱,需要采用高维统计和深度机器学习等先进方法。在临床实践中将患者与这些 MCI 表型进行比较,可以帮助临床医生更好地确定病因(其中有些病因可能是可逆的),并制定更精确的护理计划。此外,还探讨了开发针对 MCI 群体的可靠的多维数字生物标志物特征的关键注意事项。
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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