Multitask Interactive Attention Learning Model Based on Hand Images for Assisting Chinese Medicine in Predicting Myocardial Infarction

Acute myocardial infarction (AMI) is one of the most serious and dangerous cardiovascular diseases. In recent years, the number of patients around the world has been increasing significantly, among which people under the age of 45 have become the high-risk group for sudden death of AMI. AMI occurs q...

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Autores principales: Qida Wang, Chenqi Zhao, Yan Qiang, Zijuan Zhao, Kai Song, Shichao Luo
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Lenguaje:EN
Publicado: Hindawi Limited 2021
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Acceso en línea:https://doaj.org/article/07a69dafa8cb4a34809b256d7e0f9f35
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spelling oai:doaj.org-article:07a69dafa8cb4a34809b256d7e0f9f352021-11-08T02:35:45ZMultitask Interactive Attention Learning Model Based on Hand Images for Assisting Chinese Medicine in Predicting Myocardial Infarction1748-671810.1155/2021/6046184https://doaj.org/article/07a69dafa8cb4a34809b256d7e0f9f352021-01-01T00:00:00Zhttp://dx.doi.org/10.1155/2021/6046184https://doaj.org/toc/1748-6718Acute myocardial infarction (AMI) is one of the most serious and dangerous cardiovascular diseases. In recent years, the number of patients around the world has been increasing significantly, among which people under the age of 45 have become the high-risk group for sudden death of AMI. AMI occurs quickly and does not show obvious symptoms before onset. In addition, postonset clinical testing is also a complex and invasive test, which may cause some postoperative complications. Therefore, it is necessary to propose a noninvasive and convenient auxiliary diagnostic method. In traditional Chinese medicine (TCM), it is an effective auxiliary diagnostic strategy to complete the disease diagnosis through some body surface features. It is helpful to observe whether the palmar thenar undergoes hypertrophy and whether the metacarpophalangeal joint is swelling in detecting acute myocardial infarction. Combined with deep learning, we propose a depth model based on traditional palm image (MTIALM), which can help doctors of traditional Chinese medicine to predict myocardial infarction. By building the shared network, the model learns information that covers all the tasks. In addition, task-specific attention branch networks are built to simultaneously detect the symptoms of different parts of the palm. The information interaction module (IIM) is proposed to further integrate the information between task branches to ensure that the model learns as many features as possible. Experimental results show that the accuracy of our model in the detection of metacarpophalangeal joints and palmar thenar is 83.16% and 84.15%, respectively, which are significantly improved compared with the traditional classification methods.Qida WangChenqi ZhaoYan QiangZijuan ZhaoKai SongShichao LuoHindawi LimitedarticleComputer applications to medicine. Medical informaticsR858-859.7ENComputational and Mathematical Methods in Medicine, Vol 2021 (2021)
institution DOAJ
collection DOAJ
language EN
topic Computer applications to medicine. Medical informatics
R858-859.7
spellingShingle Computer applications to medicine. Medical informatics
R858-859.7
Qida Wang
Chenqi Zhao
Yan Qiang
Zijuan Zhao
Kai Song
Shichao Luo
Multitask Interactive Attention Learning Model Based on Hand Images for Assisting Chinese Medicine in Predicting Myocardial Infarction
description Acute myocardial infarction (AMI) is one of the most serious and dangerous cardiovascular diseases. In recent years, the number of patients around the world has been increasing significantly, among which people under the age of 45 have become the high-risk group for sudden death of AMI. AMI occurs quickly and does not show obvious symptoms before onset. In addition, postonset clinical testing is also a complex and invasive test, which may cause some postoperative complications. Therefore, it is necessary to propose a noninvasive and convenient auxiliary diagnostic method. In traditional Chinese medicine (TCM), it is an effective auxiliary diagnostic strategy to complete the disease diagnosis through some body surface features. It is helpful to observe whether the palmar thenar undergoes hypertrophy and whether the metacarpophalangeal joint is swelling in detecting acute myocardial infarction. Combined with deep learning, we propose a depth model based on traditional palm image (MTIALM), which can help doctors of traditional Chinese medicine to predict myocardial infarction. By building the shared network, the model learns information that covers all the tasks. In addition, task-specific attention branch networks are built to simultaneously detect the symptoms of different parts of the palm. The information interaction module (IIM) is proposed to further integrate the information between task branches to ensure that the model learns as many features as possible. Experimental results show that the accuracy of our model in the detection of metacarpophalangeal joints and palmar thenar is 83.16% and 84.15%, respectively, which are significantly improved compared with the traditional classification methods.
format article
author Qida Wang
Chenqi Zhao
Yan Qiang
Zijuan Zhao
Kai Song
Shichao Luo
author_facet Qida Wang
Chenqi Zhao
Yan Qiang
Zijuan Zhao
Kai Song
Shichao Luo
author_sort Qida Wang
title Multitask Interactive Attention Learning Model Based on Hand Images for Assisting Chinese Medicine in Predicting Myocardial Infarction
title_short Multitask Interactive Attention Learning Model Based on Hand Images for Assisting Chinese Medicine in Predicting Myocardial Infarction
title_full Multitask Interactive Attention Learning Model Based on Hand Images for Assisting Chinese Medicine in Predicting Myocardial Infarction
title_fullStr Multitask Interactive Attention Learning Model Based on Hand Images for Assisting Chinese Medicine in Predicting Myocardial Infarction
title_full_unstemmed Multitask Interactive Attention Learning Model Based on Hand Images for Assisting Chinese Medicine in Predicting Myocardial Infarction
title_sort multitask interactive attention learning model based on hand images for assisting chinese medicine in predicting myocardial infarction
publisher Hindawi Limited
publishDate 2021
url https://doaj.org/article/07a69dafa8cb4a34809b256d7e0f9f35
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AT chenqizhao multitaskinteractiveattentionlearningmodelbasedonhandimagesforassistingchinesemedicineinpredictingmyocardialinfarction
AT yanqiang multitaskinteractiveattentionlearningmodelbasedonhandimagesforassistingchinesemedicineinpredictingmyocardialinfarction
AT zijuanzhao multitaskinteractiveattentionlearningmodelbasedonhandimagesforassistingchinesemedicineinpredictingmyocardialinfarction
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AT shichaoluo multitaskinteractiveattentionlearningmodelbasedonhandimagesforassistingchinesemedicineinpredictingmyocardialinfarction
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