Machine learning-based radiomics in neurodegenerative and cerebrovascular disease

IF 10.7 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
MedComm Pub Date : 2024-10-28 DOI:10.1002/mco2.778
Ming-Ge Shi, Xin-Meng Feng, Hao-Yang Zhi, Lei Hou, Dong-Fu Feng
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Abstract

Cognitive impairments, which can be caused by neurodegenerative and cerebrovascular disease, represent a growing global health crisis with far-reaching implications for individuals, families, healthcare systems, and economies worldwide. Notably, neurodegenerative-induced cognitive impairment often presents a different pattern and severity compared to cerebrovascular-induced cognitive impairment. With the development of computational technology, machine learning techniques have developed rapidly, which offers a powerful tool in radiomic analysis, allowing a more comprehensive model that can handle high-dimensional, multivariate data compared to the traditional approach. Such models allow the prediction of the disease development, as well as accurately classify disease from overlapping symptoms, therefore facilitating clinical decision making. This review will focus on the application of machine learning-based radiomics on cognitive impairment caused by neurogenerative and cerebrovascular disease. Within the neurodegenerative category, this review primarily focuses on Alzheimer's disease, while also covering other conditions such as Parkinson's disease, Lewy body dementia, and Huntington's disease. In the cerebrovascular category, we concentrate on poststroke cognitive impairment, including ischemic and hemorrhagic stroke, with additional attention given to small vessel disease and moyamoya disease. We also review the specific challenges and limitations when applying machine learning radiomics, and provide our suggestion to overcome those limitations towards the end, and discuss what could be done for future clinical use.

Abstract Image

基于机器学习的神经退行性疾病和脑血管疾病放射组学
由神经退行性疾病和脑血管疾病引起的认知障碍是一个日益严重的全球性健康危机,对个人、家庭、医疗系统和全球经济都有深远影响。值得注意的是,与脑血管引起的认知障碍相比,神经退行性疾病引起的认知障碍往往表现出不同的模式和严重程度。随着计算技术的发展,机器学习技术也得到了飞速发展,这为放射组学分析提供了一个强大的工具,与传统方法相比,它可以建立一个能处理高维、多变量数据的更全面的模型。这类模型可以预测疾病的发展,并从重叠的症状中准确地对疾病进行分类,从而为临床决策提供便利。本综述将重点讨论基于机器学习的放射组学在神经退行性疾病和脑血管疾病引起的认知障碍方面的应用。在神经退行性疾病类别中,本综述主要关注阿尔茨海默病,同时也涵盖帕金森病、路易体痴呆和亨廷顿病等其他疾病。在脑血管疾病方面,我们主要关注中风后的认知障碍,包括缺血性和出血性中风,同时也关注小血管疾病和莫亚莫亚氏病。我们还回顾了应用机器学习放射组学时面临的具体挑战和局限性,并在最后提出了克服这些局限性的建议,还讨论了未来临床应用中可以采取的措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.70
自引率
0.00%
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审稿时长
10 weeks
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