Cargando…
Identifying underlying patterns in Alzheimer's disease trajectory: a deep learning approach and Mendelian randomization analysis
BACKGROUND: Alzheimer's disease (AD) is a heterogeneously progressive neurodegeneration disorder with varied rates of deterioration, either between subjects or within different stages of a certain subject. Estimating the course of AD at early stages has treatment implications. We aimed to analy...
Autores principales: | , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Elsevier
2023
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10556591/ https://www.ncbi.nlm.nih.gov/pubmed/37811490 http://dx.doi.org/10.1016/j.eclinm.2023.102247 |
_version_ | 1785116903508803584 |
---|---|
author | Yi, Fan Zhang, Yaoyun Yuan, Jing Liu, Ziyue Zhai, Feifei Hao, Ankai Wu, Fei Somekh, Judith Peleg, Mor Zhu, Yi-Cheng Huang, Zhengxing |
author_facet | Yi, Fan Zhang, Yaoyun Yuan, Jing Liu, Ziyue Zhai, Feifei Hao, Ankai Wu, Fei Somekh, Judith Peleg, Mor Zhu, Yi-Cheng Huang, Zhengxing |
author_sort | Yi, Fan |
collection | PubMed |
description | BACKGROUND: Alzheimer's disease (AD) is a heterogeneously progressive neurodegeneration disorder with varied rates of deterioration, either between subjects or within different stages of a certain subject. Estimating the course of AD at early stages has treatment implications. We aimed to analyze disease progression to identify distinct patterns in AD trajectory. METHODS: We proposed a deep learning model to identify underlying patterns in the trajectory from cognitively normal (CN) to a state of mild cognitive impairment (MCI) to AD dementia, by jointly predicting time-to-conversion and clustering out distinct subgroups characterized by comprehensive features as well as varied progression rates. We designed and validated our model on the ADNI dataset (1370 participants). Prediction of time-to-conversion in AD trajectory was used to validate the expression of the identified patterns. Causality between patterns and time-to-conversion was further inferred using Mendelian randomization (MR) analysis. External validation was performed on the AIBL dataset (233 participants). FINDINGS: The proposed model clustered out patterns characterized by significantly different biomarkers and varied progression rates. The discovered patterns also showed a strong prediction ability, as indicated by hazard ratio (CN→MCI, HR = 3.51, p < 0.001; MCI→AD, HR = 8.11, p < 0.001), C-Index (CN→MCI, 0.618; MCI→AD, 0.718), and AUC (CN→MCI, 3 years 0.802, 5 years 0.876; MCI→AD, 3 years 0.914, 5 years 0.957). In the external validation cohort, our model demonstrated competitive performance on conversion time prediction (CN→MCI, C-Index = 0.693; MCI→AD, C-Index = 0.752). Moreover, suggestive associations between CN→MCI/MCI→AD patterns with four/three SNPs were mediated and MR analysis indicated a causal link between MCI→AD patterns and time-to-conversion in the first three years. INTERPRETATION: Our proposed model identifies biologically and clinically meaningful patterns from real-world data and provides promising performance on time-to-conversion prediction in AD trajectory, which could promote the understanding of disease progression, facilitate clinical trial design, and provide potential for decision-making. FUNDING: The 10.13039/501100012166National Key Research and Development Program of China, the Key R&D Program of Zhejiang, and the 10.13039/501100001809National Nature Science Foundation of China. |
format | Online Article Text |
id | pubmed-10556591 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | Elsevier |
record_format | MEDLINE/PubMed |
spelling | pubmed-105565912023-10-07 Identifying underlying patterns in Alzheimer's disease trajectory: a deep learning approach and Mendelian randomization analysis Yi, Fan Zhang, Yaoyun Yuan, Jing Liu, Ziyue Zhai, Feifei Hao, Ankai Wu, Fei Somekh, Judith Peleg, Mor Zhu, Yi-Cheng Huang, Zhengxing eClinicalMedicine Articles BACKGROUND: Alzheimer's disease (AD) is a heterogeneously progressive neurodegeneration disorder with varied rates of deterioration, either between subjects or within different stages of a certain subject. Estimating the course of AD at early stages has treatment implications. We aimed to analyze disease progression to identify distinct patterns in AD trajectory. METHODS: We proposed a deep learning model to identify underlying patterns in the trajectory from cognitively normal (CN) to a state of mild cognitive impairment (MCI) to AD dementia, by jointly predicting time-to-conversion and clustering out distinct subgroups characterized by comprehensive features as well as varied progression rates. We designed and validated our model on the ADNI dataset (1370 participants). Prediction of time-to-conversion in AD trajectory was used to validate the expression of the identified patterns. Causality between patterns and time-to-conversion was further inferred using Mendelian randomization (MR) analysis. External validation was performed on the AIBL dataset (233 participants). FINDINGS: The proposed model clustered out patterns characterized by significantly different biomarkers and varied progression rates. The discovered patterns also showed a strong prediction ability, as indicated by hazard ratio (CN→MCI, HR = 3.51, p < 0.001; MCI→AD, HR = 8.11, p < 0.001), C-Index (CN→MCI, 0.618; MCI→AD, 0.718), and AUC (CN→MCI, 3 years 0.802, 5 years 0.876; MCI→AD, 3 years 0.914, 5 years 0.957). In the external validation cohort, our model demonstrated competitive performance on conversion time prediction (CN→MCI, C-Index = 0.693; MCI→AD, C-Index = 0.752). Moreover, suggestive associations between CN→MCI/MCI→AD patterns with four/three SNPs were mediated and MR analysis indicated a causal link between MCI→AD patterns and time-to-conversion in the first three years. INTERPRETATION: Our proposed model identifies biologically and clinically meaningful patterns from real-world data and provides promising performance on time-to-conversion prediction in AD trajectory, which could promote the understanding of disease progression, facilitate clinical trial design, and provide potential for decision-making. FUNDING: The 10.13039/501100012166National Key Research and Development Program of China, the Key R&D Program of Zhejiang, and the 10.13039/501100001809National Nature Science Foundation of China. Elsevier 2023-09-28 /pmc/articles/PMC10556591/ /pubmed/37811490 http://dx.doi.org/10.1016/j.eclinm.2023.102247 Text en © 2023 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/). |
spellingShingle | Articles Yi, Fan Zhang, Yaoyun Yuan, Jing Liu, Ziyue Zhai, Feifei Hao, Ankai Wu, Fei Somekh, Judith Peleg, Mor Zhu, Yi-Cheng Huang, Zhengxing Identifying underlying patterns in Alzheimer's disease trajectory: a deep learning approach and Mendelian randomization analysis |
title | Identifying underlying patterns in Alzheimer's disease trajectory: a deep learning approach and Mendelian randomization analysis |
title_full | Identifying underlying patterns in Alzheimer's disease trajectory: a deep learning approach and Mendelian randomization analysis |
title_fullStr | Identifying underlying patterns in Alzheimer's disease trajectory: a deep learning approach and Mendelian randomization analysis |
title_full_unstemmed | Identifying underlying patterns in Alzheimer's disease trajectory: a deep learning approach and Mendelian randomization analysis |
title_short | Identifying underlying patterns in Alzheimer's disease trajectory: a deep learning approach and Mendelian randomization analysis |
title_sort | identifying underlying patterns in alzheimer's disease trajectory: a deep learning approach and mendelian randomization analysis |
topic | Articles |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10556591/ https://www.ncbi.nlm.nih.gov/pubmed/37811490 http://dx.doi.org/10.1016/j.eclinm.2023.102247 |
work_keys_str_mv | AT yifan identifyingunderlyingpatternsinalzheimersdiseasetrajectoryadeeplearningapproachandmendelianrandomizationanalysis AT zhangyaoyun identifyingunderlyingpatternsinalzheimersdiseasetrajectoryadeeplearningapproachandmendelianrandomizationanalysis AT yuanjing identifyingunderlyingpatternsinalzheimersdiseasetrajectoryadeeplearningapproachandmendelianrandomizationanalysis AT liuziyue identifyingunderlyingpatternsinalzheimersdiseasetrajectoryadeeplearningapproachandmendelianrandomizationanalysis AT zhaifeifei identifyingunderlyingpatternsinalzheimersdiseasetrajectoryadeeplearningapproachandmendelianrandomizationanalysis AT haoankai identifyingunderlyingpatternsinalzheimersdiseasetrajectoryadeeplearningapproachandmendelianrandomizationanalysis AT wufei identifyingunderlyingpatternsinalzheimersdiseasetrajectoryadeeplearningapproachandmendelianrandomizationanalysis AT somekhjudith identifyingunderlyingpatternsinalzheimersdiseasetrajectoryadeeplearningapproachandmendelianrandomizationanalysis AT pelegmor identifyingunderlyingpatternsinalzheimersdiseasetrajectoryadeeplearningapproachandmendelianrandomizationanalysis AT zhuyicheng identifyingunderlyingpatternsinalzheimersdiseasetrajectoryadeeplearningapproachandmendelianrandomizationanalysis AT huangzhengxing identifyingunderlyingpatternsinalzheimersdiseasetrajectoryadeeplearningapproachandmendelianrandomizationanalysis |