Documentdetail
ID kaart

oai:arXiv.org:2404.03208

Onderwerp
Computer Science - Machine Learnin...
Auteur
Kumar, Sayantan Yu, Sean Michelson, Andrew Kannampallil, Thomas Payne, Philip
Categorie

Computer Science

Jaar

2024

vermelding datum

25-09-2024

Trefwoorden
framework learning alzheimer longitudinal prediction performance multimodal auxiliary multi-task mci himal
Metriek

Beschrijving

Objective: We aimed to develop and validate a novel multimodal framework HiMAL (Hierarchical, Multi-task Auxiliary Learning) framework, for predicting cognitive composite functions as auxiliary tasks that estimate the longitudinal risk of transition from Mild Cognitive Impairment (MCI) to Alzheimer Disease (AD).

Methods: HiMAL utilized multimodal longitudinal visit data including imaging features, cognitive assessment scores, and clinical variables from MCI patients in the Alzheimer Disease Neuroimaging Initiative (ADNI) dataset, to predict at each visit if an MCI patient will progress to AD within the next 6 months.

Performance of HiMAL was compared with state-of-the-art single-task and multi-task baselines using area under the receiver operator curve (AUROC) and precision recall curve (AUPRC) metrics.

An ablation study was performed to assess the impact of each input modality on model performance.

Additionally, longitudinal explanations regarding risk of disease progression were provided to interpret the predicted cognitive decline.

Results: Out of 634 MCI patients (mean [IQR] age : 72.8 [67-78], 60% men), 209 (32%) progressed to AD.

HiMAL showed better prediction performance compared to all single-modality singe-task baselines (AUROC = 0.923 [0.915-0.937]; AUPRC= 0.623 [0.605-0.644]; all p<0.05).

Ablation analysis highlighted that imaging and cognition scores with maximum contribution towards prediction of disease progression.

Discussion: Clinically informative model explanations anticipate cognitive decline 6 months in advance, aiding clinicians in future disease progression assessment.

HiMAL relies on routinely collected EHR variables for proximal (6 months) prediction of AD onset, indicating its translational potential for point-of-care monitoring and managing of high-risk patients.

;Comment: Currently under review in Journal of Medical Informatics Association (JAMIA).

6 figures, 3 tables

Kumar, Sayantan,Yu, Sean,Michelson, Andrew,Kannampallil, Thomas,Payne, Philip, 2024, HiMAL: A Multimodal Hierarchical Multi-task Auxiliary Learning framework for predicting and explaining Alzheimer disease progression

Document

Openen

Delen

Bron

Artikelen aanbevolen door ES/IODE AI

Comparison between Dual-Energy CT and Quantitative Susceptibility Mapping in Assessing Brain Iron Deposition in Parkinson Disease
nigra substantia healthy depositions p < 05 nucleus brain susceptibility ct bilateral dual-energy iron quantitative mapping values magnetic globus pallidus
Integration of human papillomavirus associated anal cancer screening into HIV care and treatment program in Pakistan: perceptions of policymakers, managers, and care providers
hpv hiv msm transgender women anal cancer screening integration pakistan system managers pakistan informants anal screening cancer lack healthcare hiv