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Deep learning-based relapse prediction of neuromyelitis optica spectrum disorder with anti-aquaporin-4 antibody

OBJECTIVE: We previously identified the independent predictors of recurrent relapse in neuromyelitis optica spectrum disorder (NMOSD) with anti-aquaporin-4 antibody (AQP4-ab) and designed a nomogram to estimate the 1- and 2-year relapse-free probability, using the Cox proportional hazard (Cox-PH) mo...

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Autores principales: Wang, Liang, Du, Lei, Li, Qinying, Li, Fang, Wang, Bei, Zhao, Yuanqi, Meng, Qiang, Li, Wenyu, Pan, Juyuan, Xia, Junhui, Wu, Shitao, Yang, Jie, Li, Heng, Ma, Jianhua, ZhangBao, Jingzi, Huang, Wenjuan, Chang, Xuechun, Tan, Hongmei, Yu, Jian, Zhou, Lei, Lu, Chuanzhen, Wang, Min, Dong, Qiang, Lu, Jiahong, Zhao, Chongbo, Quan, Chao
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9389264/
https://www.ncbi.nlm.nih.gov/pubmed/35989911
http://dx.doi.org/10.3389/fneur.2022.947974
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author Wang, Liang
Du, Lei
Li, Qinying
Li, Fang
Wang, Bei
Zhao, Yuanqi
Meng, Qiang
Li, Wenyu
Pan, Juyuan
Xia, Junhui
Wu, Shitao
Yang, Jie
Li, Heng
Ma, Jianhua
ZhangBao, Jingzi
Huang, Wenjuan
Chang, Xuechun
Tan, Hongmei
Yu, Jian
Zhou, Lei
Lu, Chuanzhen
Wang, Min
Dong, Qiang
Lu, Jiahong
Zhao, Chongbo
Quan, Chao
author_facet Wang, Liang
Du, Lei
Li, Qinying
Li, Fang
Wang, Bei
Zhao, Yuanqi
Meng, Qiang
Li, Wenyu
Pan, Juyuan
Xia, Junhui
Wu, Shitao
Yang, Jie
Li, Heng
Ma, Jianhua
ZhangBao, Jingzi
Huang, Wenjuan
Chang, Xuechun
Tan, Hongmei
Yu, Jian
Zhou, Lei
Lu, Chuanzhen
Wang, Min
Dong, Qiang
Lu, Jiahong
Zhao, Chongbo
Quan, Chao
author_sort Wang, Liang
collection PubMed
description OBJECTIVE: We previously identified the independent predictors of recurrent relapse in neuromyelitis optica spectrum disorder (NMOSD) with anti-aquaporin-4 antibody (AQP4-ab) and designed a nomogram to estimate the 1- and 2-year relapse-free probability, using the Cox proportional hazard (Cox-PH) model, assuming that the risk of relapse had a linear correlation with clinical variables. However, whether the linear assumption fits real disease tragedy is unknown. We aimed to employ deep learning and machine learning to develop a novel prediction model of relapse in patients with NMOSD and compare the performance with the conventional Cox-PH model. METHODS: This retrospective cohort study included patients with NMOSD with AQP4-ab in 10 study centers. In this study, 1,135 treatment episodes from 358 patients in Huashan Hospital were employed as the training set while 213 treatment episodes from 92 patients in nine other research centers as the validation set. We compared five models with added variables of gender, AQP4-ab titer, previous attack under the same therapy, EDSS score at treatment initiation, maintenance therapy, age at treatment initiation, disease duration, the phenotype of the most recent attack, and annualized relapse rate (ARR) of the most recent year by concordance index (C-index): conventional Cox-PH, random survival forest (RSF), LogisticHazard, DeepHit, and DeepSurv. RESULTS: When including all variables, RSF outperformed the C-index in the training set (0.739), followed by DeepHit (0.737), LogisticHazard (0.722), DeepSurv (0.698), and Cox-PH (0.679) models. As for the validation set, the C-index of LogisticHazard outperformed the other models (0.718), followed by DeepHit (0.704), DeepSurv (0.698), RSF (0.685), and Cox-PH (0.651) models. Maintenance therapy was calculated to be the most important variable for relapse prediction. CONCLUSION: This study confirmed the superiority of deep learning to design a prediction model of relapse in patients with AQP4-ab-positive NMOSD, with the LogisticHazard model showing the best predictive power in validation.
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spelling pubmed-93892642022-08-20 Deep learning-based relapse prediction of neuromyelitis optica spectrum disorder with anti-aquaporin-4 antibody Wang, Liang Du, Lei Li, Qinying Li, Fang Wang, Bei Zhao, Yuanqi Meng, Qiang Li, Wenyu Pan, Juyuan Xia, Junhui Wu, Shitao Yang, Jie Li, Heng Ma, Jianhua ZhangBao, Jingzi Huang, Wenjuan Chang, Xuechun Tan, Hongmei Yu, Jian Zhou, Lei Lu, Chuanzhen Wang, Min Dong, Qiang Lu, Jiahong Zhao, Chongbo Quan, Chao Front Neurol Neurology OBJECTIVE: We previously identified the independent predictors of recurrent relapse in neuromyelitis optica spectrum disorder (NMOSD) with anti-aquaporin-4 antibody (AQP4-ab) and designed a nomogram to estimate the 1- and 2-year relapse-free probability, using the Cox proportional hazard (Cox-PH) model, assuming that the risk of relapse had a linear correlation with clinical variables. However, whether the linear assumption fits real disease tragedy is unknown. We aimed to employ deep learning and machine learning to develop a novel prediction model of relapse in patients with NMOSD and compare the performance with the conventional Cox-PH model. METHODS: This retrospective cohort study included patients with NMOSD with AQP4-ab in 10 study centers. In this study, 1,135 treatment episodes from 358 patients in Huashan Hospital were employed as the training set while 213 treatment episodes from 92 patients in nine other research centers as the validation set. We compared five models with added variables of gender, AQP4-ab titer, previous attack under the same therapy, EDSS score at treatment initiation, maintenance therapy, age at treatment initiation, disease duration, the phenotype of the most recent attack, and annualized relapse rate (ARR) of the most recent year by concordance index (C-index): conventional Cox-PH, random survival forest (RSF), LogisticHazard, DeepHit, and DeepSurv. RESULTS: When including all variables, RSF outperformed the C-index in the training set (0.739), followed by DeepHit (0.737), LogisticHazard (0.722), DeepSurv (0.698), and Cox-PH (0.679) models. As for the validation set, the C-index of LogisticHazard outperformed the other models (0.718), followed by DeepHit (0.704), DeepSurv (0.698), RSF (0.685), and Cox-PH (0.651) models. Maintenance therapy was calculated to be the most important variable for relapse prediction. CONCLUSION: This study confirmed the superiority of deep learning to design a prediction model of relapse in patients with AQP4-ab-positive NMOSD, with the LogisticHazard model showing the best predictive power in validation. Frontiers Media S.A. 2022-08-05 /pmc/articles/PMC9389264/ /pubmed/35989911 http://dx.doi.org/10.3389/fneur.2022.947974 Text en Copyright © 2022 Wang, Du, Li, Li, Wang, Zhao, Meng, Li, Pan, Xia, Wu, Yang, Li, Ma, ZhangBao, Huang, Chang, Tan, Yu, Zhou, Lu, Wang, Dong, Lu, Zhao and Quan. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neurology
Wang, Liang
Du, Lei
Li, Qinying
Li, Fang
Wang, Bei
Zhao, Yuanqi
Meng, Qiang
Li, Wenyu
Pan, Juyuan
Xia, Junhui
Wu, Shitao
Yang, Jie
Li, Heng
Ma, Jianhua
ZhangBao, Jingzi
Huang, Wenjuan
Chang, Xuechun
Tan, Hongmei
Yu, Jian
Zhou, Lei
Lu, Chuanzhen
Wang, Min
Dong, Qiang
Lu, Jiahong
Zhao, Chongbo
Quan, Chao
Deep learning-based relapse prediction of neuromyelitis optica spectrum disorder with anti-aquaporin-4 antibody
title Deep learning-based relapse prediction of neuromyelitis optica spectrum disorder with anti-aquaporin-4 antibody
title_full Deep learning-based relapse prediction of neuromyelitis optica spectrum disorder with anti-aquaporin-4 antibody
title_fullStr Deep learning-based relapse prediction of neuromyelitis optica spectrum disorder with anti-aquaporin-4 antibody
title_full_unstemmed Deep learning-based relapse prediction of neuromyelitis optica spectrum disorder with anti-aquaporin-4 antibody
title_short Deep learning-based relapse prediction of neuromyelitis optica spectrum disorder with anti-aquaporin-4 antibody
title_sort deep learning-based relapse prediction of neuromyelitis optica spectrum disorder with anti-aquaporin-4 antibody
topic Neurology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9389264/
https://www.ncbi.nlm.nih.gov/pubmed/35989911
http://dx.doi.org/10.3389/fneur.2022.947974
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