Predicting Alzheimer's disease CSF core biomarkers: a multimodal Machine Learning approach

被引:4
|
作者
Gaeta, Anna Michela [1 ]
Quijada-Lopez, Maria [2 ]
Barbe, Ferran [3 ,4 ]
Vaca, Rafaela [3 ]
Pujol, Montse [5 ]
Minguez, Olga [3 ]
Sanchez-de-la-Torre, Manuel [4 ,6 ]
Munoz-Barrutia, Arrate [2 ,7 ]
Pinol-Ripoll, Gerard [5 ]
机构
[1] Hosp Univ Severo Ochoa, Serv Neumol, Leganes, Spain
[2] Univ Carlos III Madrid, Dept Bioingn, Leganes, Spain
[3] Inst Recerca Biomed Lleida IRBLleida, Hosp Univ Arnau Vilanova & Santa Maria, Grp Translat Res Resp Med, Lleida, Spain
[4] Ctr Invest Biomed Red Enfermedades Respiratorias C, Madrid, Spain
[5] Hosp Univ Santa Maria, Inst Recerca Biomed Lleida IRBLleida, Unitat Trastorns Cognitius, Clin Neurosci Res, Lleida, Spain
[6] Univ Castilla La Mancha, Hosp Nacl Paraplej,IDISCAM, Fac Physiotherapy & Nursing, Dept Nursing Physiotherapy & Occupat Therapy,Grp P, Toledo, Spain
[7] Inst Invest Sanitaria Gregorio Maranon, Dept Bioingn, Madrid, Spain
来源
关键词
Alzheimer's disease; neurodegeneration; biomechanism; diagnosis; therapeutic target; quantitative polysomnographic signal analysis; CSF biomarkers; Machine Learning; OBSTRUCTIVE SLEEP-APNEA; MINI-MENTAL-STATE; NOCTURNAL OXIMETRY; EEG; DIAGNOSIS; DEMENTIA; FLUID; TAU; SEVERITY; HYPOXIA;
D O I
10.3389/fnagi.2024.1369545
中图分类号
R592 [老年病学]; C [社会科学总论];
学科分类号
03 ; 0303 ; 100203 ;
摘要
Introduction: Alzheimer's disease (AD) is a progressive neurodegenerative disorder. Current core cerebrospinal fluid (CSF) AD biomarkers, widely employed for diagnosis, require a lumbar puncture to be performed, making them impractical as screening tools. Considering the role of sleep disturbances in AD, recent research suggests quantitative sleep electroencephalography features as potential non-invasive biomarkers of AD pathology. However, quantitative analysis of comprehensive polysomnography (PSG) signals remains relatively understudied. PSG is a non-invasive test enabling qualitative and quantitative analysis of a wide range of parameters, offering additional insights alongside other biomarkers. Machine Learning (ML) gained interest for its ability to discern intricate patterns within complex datasets, offering promise in AD neuropathology detection. Therefore, this study aims to evaluate the effectiveness of a multimodal ML approach in predicting core AD CSF biomarkers. Methods: Mild-moderate AD patients were prospectively recruited for PSG, followed by testing of CSF and blood samples for biomarkers. PSG signals underwent preprocessing to extract non-linear, time domain and frequency domain statistics quantitative features. Multiple ML algorithms were trained using four subsets of input features: clinical variables (CLINVAR), conventional PSG parameters (SLEEPVAR), quantitative PSG signal features (PSGVAR) and a combination of all subsets (ALL). Cross-validation techniques were employed to evaluate model performance and ensure generalizability. Regression models were developed to determine the most effective variable combinations for explaining variance in the biomarkers. Results: On 49 subjects, Gradient Boosting Regressors achieved the best results in estimating biomarkers levels, using different loss functions for each biomarker: least absolute deviation (LAD) for the A beta 42, least squares (LS) for p-tau and Huber for t-tau. The ALL subset demonstrated the lowest training errors for all three biomarkers, albeit with varying test performance. Specifically, the SLEEPVAR subset yielded the best test performance in predicting A beta 42, while the ALL subset most accurately predicted p-tau and t-tau due to the lowest test errors. Conclusions: Multimodal ML can help predict the outcome of CSF biomarkers in early AD by utilizing non-invasive and economically feasible variables. The integration of computational models into medical practice offers a promising tool for the screening of patients at risk of AD, potentially guiding clinical decisions.
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页数:22
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