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Autori principali: Reyes, Diego Machado, Chao, Hanqing, Hahn, Juergen, Shen, Li, Yan, Pingkun
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2402.00137
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author Reyes, Diego Machado
Chao, Hanqing
Hahn, Juergen
Shen, Li
Yan, Pingkun
author_facet Reyes, Diego Machado
Chao, Hanqing
Hahn, Juergen
Shen, Li
Yan, Pingkun
contents Alzheimer's disease (AD) is the most prevalent neurodegenerative disease; yet its currently available treatments are limited to stopping disease progression. Moreover, effectiveness of these treatments is not guaranteed due to the heterogenetiy of the disease. Therefore, it is essential to be able to identify the disease subtypes at a very early stage. Current data driven approaches are able to classify the subtypes at later stages of AD or related disorders, but struggle when predicting at the asymptomatic or prodromal stage. Moreover, most existing models either lack explainability behind the classification or only use a single modality for the assessment, limiting scope of its analysis. Thus, we propose a multimodal framework that uses early-stage indicators such as imaging, genetics and clinical assessments to classify AD patients into subtypes at early stages. Similarly, we build prompts and use large language models, such as ChatGPT, to interpret the findings of our model. In our framework, we propose a tri-modal co-attention mechanism (Tri-COAT) to explicitly learn the cross-modal feature associations. Our proposed model outperforms baseline models and provides insight into key cross-modal feature associations supported by known biological mechanisms.
format Preprint
id arxiv_https___arxiv_org_abs_2402_00137
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multimodal Neurodegenerative Disease Subtyping Explained by ChatGPT
Reyes, Diego Machado
Chao, Hanqing
Hahn, Juergen
Shen, Li
Yan, Pingkun
Machine Learning
Computer Vision and Pattern Recognition
Alzheimer's disease (AD) is the most prevalent neurodegenerative disease; yet its currently available treatments are limited to stopping disease progression. Moreover, effectiveness of these treatments is not guaranteed due to the heterogenetiy of the disease. Therefore, it is essential to be able to identify the disease subtypes at a very early stage. Current data driven approaches are able to classify the subtypes at later stages of AD or related disorders, but struggle when predicting at the asymptomatic or prodromal stage. Moreover, most existing models either lack explainability behind the classification or only use a single modality for the assessment, limiting scope of its analysis. Thus, we propose a multimodal framework that uses early-stage indicators such as imaging, genetics and clinical assessments to classify AD patients into subtypes at early stages. Similarly, we build prompts and use large language models, such as ChatGPT, to interpret the findings of our model. In our framework, we propose a tri-modal co-attention mechanism (Tri-COAT) to explicitly learn the cross-modal feature associations. Our proposed model outperforms baseline models and provides insight into key cross-modal feature associations supported by known biological mechanisms.
title Multimodal Neurodegenerative Disease Subtyping Explained by ChatGPT
topic Machine Learning
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2402.00137