Digital biomarkers and sex impacts in Alzheimer’s disease management — potential utility for innovative 3P medicine approach

被引:0
作者
Robbert L. Harms
Alberto Ferrari
Irene B. Meier
Julie Martinkova
Enrico Santus
Nicola Marino
Davide Cirillo
Simona Mellino
Silvina Catuara Solarz
Ioannis Tarnanas
Cassandra Szoeke
Jakub Hort
Alfonso Valencia
Maria Teresa Ferretti
Azizi Seixas
Antonella Santuccione Chadha
机构
[1] Altoida Inc.,Memory Clinic, Department of Neurology, Second Faculty of Medicine
[2] Women’s Brain Project,Dipartimento Di Scienze Mediche E Chirurgiche
[3] Chione GmbH,Centre for Medical Research, Faculty of Medicine, Dentistry and Health Science
[4] Charles University and Motol University Hospital,International Clinical Research Center
[5] Università Degli Studi Di Foggia,Department of Psychiatry and Behavioral Sciences
[6] Barcelona Supercomputing Center,undefined
[7] Global Brain Health Institute,undefined
[8] University of Melbourne,undefined
[9] St Anne’s University Hospital Brno,undefined
[10] ICREA - Institució Catalana de Recerca I Estudis Avançats,undefined
[11] University of Miami Miller School of Medicine,undefined
来源
EPMA Journal | 2022年 / 13卷
关键词
Alzheimer’s disease; Digital biomarkers; Sex; Classifier; Predictive preventive personalized medicine (PPPM);
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中图分类号
学科分类号
摘要
Digital biomarkers are defined as objective, quantifiable physiological and behavioral data that are collected and measured by means of digital devices. Their use has revolutionized clinical research by enabling high-frequency, longitudinal, and sensitive measurements. In the field of neurodegenerative diseases, an example of a digital biomarker-based technology is instrumental activities of daily living (iADL) digital medical application, a predictive biomarker of conversion from mild cognitive impairment (MCI) due to Alzheimer’s disease (AD) to dementia due to AD in individuals aged 55 + . Digital biomarkers show promise to transform clinical practice. Nevertheless, their use may be affected by variables such as demographics, genetics, and phenotype. Among these factors, sex is particularly important in Alzheimer’s, where men and women present with different symptoms and progression patterns that impact diagnosis. In this study, we explore sex differences in Altoida’s digital medical application in a sample of 568 subjects consisting of a clinical dataset (MCI and dementia due to AD) and a healthy population. We found that a biological sex-classifier, built on digital biomarker features captured using Altoida’s application, achieved a 75% ROC-AUC (receiver operating characteristic — area under curve) performance in predicting biological sex in healthy individuals, indicating significant differences in neurocognitive performance signatures between males and females. The performance dropped when we applied this classifier to more advanced stages on the AD continuum, including MCI and dementia, suggesting that sex differences might be disease-stage dependent. Our results indicate that neurocognitive performance signatures built on data from digital biomarker features are different between men and women. These results stress the need to integrate traditional approaches to dementia research with digital biomarker technologies and personalized medicine perspectives to achieve more precise predictive diagnostics, targeted prevention, and customized treatment of cognitive decline.
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页码:299 / 313
页数:14
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