{"title":"DML-MFCM:基于深度度量学习的多模态细粒度分类模型,用于阿尔茨海默病诊断。","authors":"Heng Wang, Tiejun Yang, Jiacheng Fan, Huiyao Zhang, Wenjie Zhang, Mingzhu Ji, Jianyu Miao","doi":"10.1177/08953996241300023","DOIUrl":null,"url":null,"abstract":"<p><strong>Background: </strong>Alzheimer's disease (AD) is a neurodegenerative disorder. There are no drugs and methods for the treatment of AD, but early intervention can delay the deterioration of the disease. Therefore, the early diagnosis of AD and mild cognitive impairment (MCI) is significant. Structural magnetic resonance imaging (sMRI) is widely used to present structural changes in the subject's brain tissue. The relatively mild structural changes in the brain with MCI have led to ongoing challenges in the task of conversion prediction in MCI. Moreover, many multimodal AD diagnostic models proposed in recent years ignore the potential relationship between multimodal information.</p><p><strong>Objective: </strong>To solve these problems, we propose a multimodal fine-grained classification model based on deep metric learning for AD diagnosis (DML-MFCM), which can fully exploit the fine-grained feature information of sMRI and learn the potential relationships between multimodal feature information.</p><p><strong>Methods: </strong>First, we propose a fine-grained feature extraction module that can effectively capture the fine-grained feature information of the lesion area. Then, we introduce a multimodal cross-attention module to learn the potential relationships between multimodal data. In addition, we design a hybrid loss function based on deep metric learning. It can guide the model to learn the feature representation method between samples, which improves the model's performance in disease diagnosis.</p><p><strong>Results: </strong>We have extensively evaluated the proposed models on the ADNI and AIBL datasets. The ACC of AD vs. NC, MCI vs. NC, and sMCI vs. pMCI tasks in the ADNI dataset are 98.75%, 95.88%, and 88.00%, respectively. The ACC on the AD vs. NC and MCI vs. NC tasks in the AIBL dataset are 94.33% and 91.67%.</p><p><strong>Conclusions: </strong>The results demonstrate that our method has excellent performance in AD diagnosis.</p>","PeriodicalId":49948,"journal":{"name":"Journal of X-Ray Science and Technology","volume":" ","pages":"211-228"},"PeriodicalIF":1.7000,"publicationDate":"2025-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"DML-MFCM: A multimodal fine-grained classification model based on deep metric learning for Alzheimer's disease diagnosis.\",\"authors\":\"Heng Wang, Tiejun Yang, Jiacheng Fan, Huiyao Zhang, Wenjie Zhang, Mingzhu Ji, Jianyu Miao\",\"doi\":\"10.1177/08953996241300023\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Background: </strong>Alzheimer's disease (AD) is a neurodegenerative disorder. There are no drugs and methods for the treatment of AD, but early intervention can delay the deterioration of the disease. Therefore, the early diagnosis of AD and mild cognitive impairment (MCI) is significant. Structural magnetic resonance imaging (sMRI) is widely used to present structural changes in the subject's brain tissue. The relatively mild structural changes in the brain with MCI have led to ongoing challenges in the task of conversion prediction in MCI. Moreover, many multimodal AD diagnostic models proposed in recent years ignore the potential relationship between multimodal information.</p><p><strong>Objective: </strong>To solve these problems, we propose a multimodal fine-grained classification model based on deep metric learning for AD diagnosis (DML-MFCM), which can fully exploit the fine-grained feature information of sMRI and learn the potential relationships between multimodal feature information.</p><p><strong>Methods: </strong>First, we propose a fine-grained feature extraction module that can effectively capture the fine-grained feature information of the lesion area. Then, we introduce a multimodal cross-attention module to learn the potential relationships between multimodal data. In addition, we design a hybrid loss function based on deep metric learning. It can guide the model to learn the feature representation method between samples, which improves the model's performance in disease diagnosis.</p><p><strong>Results: </strong>We have extensively evaluated the proposed models on the ADNI and AIBL datasets. The ACC of AD vs. NC, MCI vs. NC, and sMCI vs. pMCI tasks in the ADNI dataset are 98.75%, 95.88%, and 88.00%, respectively. 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引用次数: 0
摘要
背景:阿尔茨海默病(AD)是一种神经退行性疾病。目前还没有治疗阿尔茨海默病的药物和方法,但早期干预可以延缓病情的恶化。因此,早期诊断AD和轻度认知障碍(MCI)具有重要意义。结构磁共振成像(sMRI)被广泛用于显示受试者脑组织的结构变化。MCI患者大脑中相对轻微的结构变化导致了MCI转换预测任务的持续挑战。此外,近年来提出的许多多模态AD诊断模型忽略了多模态信息之间的潜在关系。为了解决这些问题,我们提出了一种基于深度度量学习的AD诊断多模态细粒度分类模型(DML-MFCM),该模型可以充分利用sMRI的细粒度特征信息,并学习多模态特征信息之间的潜在关系。方法:首先,我们提出了一个细粒度特征提取模块,可以有效地捕获病灶区域的细粒度特征信息。然后,我们引入了一个多模态交叉注意模块来学习多模态数据之间的潜在关系。此外,我们设计了一个基于深度度量学习的混合损失函数。它可以引导模型学习样本间的特征表示方法,提高模型在疾病诊断中的性能。结果:我们在ADNI和AIBL数据集上广泛评估了所提出的模型。ADNI数据集中AD与NC、MCI与NC、sMCI与pMCI任务的ACC分别为98.75%、95.88%和88.00%。AIBL数据集中AD vs. NC和MCI vs. NC任务的ACC分别为94.33%和91.67%。结论:本方法对阿尔茨海默病有较好的诊断效果。
DML-MFCM: A multimodal fine-grained classification model based on deep metric learning for Alzheimer's disease diagnosis.
Background: Alzheimer's disease (AD) is a neurodegenerative disorder. There are no drugs and methods for the treatment of AD, but early intervention can delay the deterioration of the disease. Therefore, the early diagnosis of AD and mild cognitive impairment (MCI) is significant. Structural magnetic resonance imaging (sMRI) is widely used to present structural changes in the subject's brain tissue. The relatively mild structural changes in the brain with MCI have led to ongoing challenges in the task of conversion prediction in MCI. Moreover, many multimodal AD diagnostic models proposed in recent years ignore the potential relationship between multimodal information.
Objective: To solve these problems, we propose a multimodal fine-grained classification model based on deep metric learning for AD diagnosis (DML-MFCM), which can fully exploit the fine-grained feature information of sMRI and learn the potential relationships between multimodal feature information.
Methods: First, we propose a fine-grained feature extraction module that can effectively capture the fine-grained feature information of the lesion area. Then, we introduce a multimodal cross-attention module to learn the potential relationships between multimodal data. In addition, we design a hybrid loss function based on deep metric learning. It can guide the model to learn the feature representation method between samples, which improves the model's performance in disease diagnosis.
Results: We have extensively evaluated the proposed models on the ADNI and AIBL datasets. The ACC of AD vs. NC, MCI vs. NC, and sMCI vs. pMCI tasks in the ADNI dataset are 98.75%, 95.88%, and 88.00%, respectively. The ACC on the AD vs. NC and MCI vs. NC tasks in the AIBL dataset are 94.33% and 91.67%.
Conclusions: The results demonstrate that our method has excellent performance in AD diagnosis.
期刊介绍:
Research areas within the scope of the journal include:
Interaction of x-rays with matter: x-ray phenomena, biological effects of radiation, radiation safety and optical constants
X-ray sources: x-rays from synchrotrons, x-ray lasers, plasmas, and other sources, conventional or unconventional
Optical elements: grazing incidence optics, multilayer mirrors, zone plates, gratings, other diffraction optics
Optical instruments: interferometers, spectrometers, microscopes, telescopes, microprobes