AI Article Synopsis

  • Cognitive impairments from neurodegenerative and cerebrovascular diseases are a growing global health challenge that affects individuals, families, and healthcare systems.
  • Machine learning techniques in radiomic analysis can enhance the prediction and classification of these cognitive impairments, improving clinical decision-making compared to traditional methods.
  • This review primarily focuses on machine learning applications in cognitive impairment due to Alzheimer's and other neurodegenerative diseases, as well as post-stroke conditions, while also addressing challenges and future directions for clinical use.

Article 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.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11518692PMC
http://dx.doi.org/10.1002/mco2.778DOI Listing

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