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当代阿耳茨海默病研究

Editor-in-Chief

ISSN (Print): 1567-2050
ISSN (Online): 1875-5828

Review Article

现代计算方法在阿尔茨海默病检测与预测中的应用综述

卷 20, 期 12, 2023

发表于: 08 March, 2024

页: [845 - 861] 页: 17

弟呕挨: 10.2174/0115672050301514240307071217

价格: $65

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摘要

经过大量的努力,医学领域的发现正在迅速涌现。目前,多学科研究活动特别有助于为医学科学领域的关键问题提供尖端解决方案。在这种情况下,现代计算资源已被证明是一个福音。毫不费力的解决方案已经成为现实,因此,真正受益的患者能够享受改善的生活。在这种情况下,最新出现的问题之一是阿尔茨海默病,一种无法治愈的神经系统疾病。因此,使用基准计算工具和方案可以进行早期诊断。这些基准方案是在时间轴上间歇性做出的新研究贡献的结果。在这篇综述中,试图探讨所有这些贡献在过去的几十年。通过将这些贡献分为三部分,即第一代、第二代和第三代,进行了系统的回顾。然而,优先考虑的是最新的,因为一些文献评论已经可以用于经典的。对主要贡献进行了生动的讨论。本综述的目标是提出计算方法的最新发现,特别是那些专门用于阿尔茨海默病诊断的发现。还提供了捐款的详细时间表。为了更好地理解图形,还提供了某些关键贡献的性能图。

关键词: 阿尔茨海默病、机器学习、计算工具、预测、多学科研究、前沿解决方案。

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