探索基于核磁共振成像的深度学习模型,实现准确的阿尔茨海默病分类

Q2 Computer Science
Irfan Sadiq Rahat, Tuhin Hossain, Hritwik Ghosh, Kamjula Lakshmi, Kanth Reddy, Srinivas Kumar Palvadi, J. Ravindra
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引用次数: 0

摘要

简介:阿尔茨海默病(AD)是一种复杂的神经退行性疾病,给早期准确诊断带来了巨大挑战。早期预测阿尔茨海默病的严重程度有望改善患者护理和及时干预。本研究利用从磁共振成像(MRI)扫描中提取的数据,研究如何使用深度学习方法预测老年痴呆症的严重程度。目标:本研究旨在探索深度学习模型在利用核磁共振成像数据预测阿尔茨海默病严重程度方面的功效。阿尔茨海默病的传统诊断方法主要依赖于认知评估,往往导致晚期检测。核磁共振成像扫描提供了一种非侵入性的方法来检查大脑结构并检测与阿兹海默症相关的病理变化。然而,人工解读这些扫描需要耗费大量人力物力,而且容易出现偏差。方法:我们探索了各种深度学习模型,包括卷积神经网络(CNN)和高级架构,如 DenseNet、VGG16、ResNet50、MobileNet、AlexNet 和 Xception,用于 MRI 扫描分析。对这些模型在预测注意力缺失症严重程度方面的性能进行了评估和比较。深度学习模型可从数据中自主学习分层特征,从而有可能识别出与注意力缺失症不同阶段相关的复杂模式,而这些模式在人工分析中可能会被忽略。结果:该研究评估了不同深度学习模型在使用核磁共振扫描预测AD严重程度方面的性能。结果凸显了这些模型在捕捉表明注意力缺失症进展的微妙模式方面的功效。此外,比较还强调了每个模型的优势和局限性,有助于选择适当的方法来预测 AD 的病情。结论:这项研究展示了深度学习在革新注意力缺失症诊断和预后方面的潜力,为不断发展的人工智能驱动的医疗保健领域做出了贡献。研究结果强调了利用深度学习等先进技术提高注意力缺失症诊断的准确性和及时性的重要性。然而,挑战依然存在,包括需要大型注释数据集、模型的可解释性以及与临床工作流程的整合。在这一领域的持续努力有望改善注意力缺失症的管理,并最终提高患者的治疗效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Deep Learning Models for Accurate Alzheimer's Disease Classification based on MRI Imaging
INTRODUCTION: Alzheimer's disease (AD), a complex neurodegenerative condition, presents significant challenges in early and accurate diagnosis. Early prediction of AD severity holds the potential for improved patient care and timely interventions. This research investigates the use of deep learning methodologies to forecast AD severity utilizing data extracted from Magnetic Resonance Imaging (MRI) scans. OBJECTIVES: This study aims to explore the efficacy of deep learning models in predicting the severity of Alzheimer's disease using MRI data. Traditional diagnostic methods for AD, primarily reliant on cognitive assessments, often lead to late-stage detection. MRI scans offer a non-invasive means to examine brain structure and detect pathological changes associated with AD. However, manual interpretation of these scans is labor-intensive and subject to variability. METHODS: Various deep learning models, including Convolutional Neural Networks (CNNs) and advanced architectures like DenseNet, VGG16, ResNet50, MobileNet, AlexNet, and Xception, are explored for MRI scan analysis. The performance of these models in predicting AD severity is assessed and compared. Deep learning models autonomously learn hierarchical features from the data, potentially recognizing intricate patterns associated with different AD stages that may be overlooked in manual analysis. RESULTS: The study evaluates the performance of different deep learning models in predicting AD severity using MRI scans. The results highlight the efficacy of these models in capturing subtle patterns indicative of AD progression. Moreover, the comparison underscores the strengths and limitations of each model, aiding in the selection of appropriate methodologies for AD prognosis. CONCLUSION: This research contributes to the growing field of AI-driven healthcare by showcasing the potential of deep learning in revolutionizing AD diagnosis and prognosis. The findings emphasize the importance of leveraging advanced technologies, such as deep learning, to enhance the accuracy and timeliness of AD diagnosis. However, challenges remain, including the need for large annotated datasets, model interpretability, and integration into clinical workflows. Continued efforts in this area hold promise for improving the management of AD and ultimately enhancing patient outcomes.
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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