Noroozi Masoud, Gholami Mohammadreza, Sadeghsalehi Hamidreza, Behzadi Saleh, Habibzadeh Adrina, Erabi Gisou, Sadatmadani Sayedeh-Fatemeh, Diyanati Mitra, Rezaee Aryan, Dianati Maryam, Rasoulian Pegah, Khani Siyah Rood Yashar, Ilati Fatemeh, Hadavi Seyed Morteza, Arbab Mojeni Fariba, Roostaie Minoo, Deravi Niloofar
Department of Biomedical Engineering, Faculty of Engineering, University of Isfahan, Isfahan, Iran.
Department of Electrical and Computer Engineering, Tarbiat Modares Univeristy, Tehran, Iran.
Appl Neuropsychol Adult. 2024 Aug 1:1-15. doi: 10.1080/23279095.2024.2382823.
The cognitive impairment known as dementia affects millions of individuals throughout the globe. The use of machine learning (ML) and deep learning (DL) algorithms has shown great promise as a means of early identification and treatment of dementia. Dementias such as Alzheimer's Dementia, frontotemporal dementia, Lewy body dementia, and vascular dementia are all discussed in this article, along with a literature review on using ML algorithms in their diagnosis. Different ML algorithms, such as support vector machines, artificial neural networks, decision trees, and random forests, are compared and contrasted, along with their benefits and drawbacks. As discussed in this article, accurate ML models may be achieved by carefully considering feature selection and data preparation. We also discuss how ML algorithms can predict disease progression and patient responses to therapy. However, overreliance on ML and DL technologies should be avoided without further proof. It's important to note that these technologies are meant to assist in diagnosis but should not be used as the sole criteria for a final diagnosis. The research implies that ML algorithms may help increase the precision with which dementia is diagnosed, especially in its early stages. The efficacy of ML and DL algorithms in clinical contexts must be verified, and ethical issues around the use of personal data must be addressed, but this requires more study.
被称为痴呆症的认知障碍影响着全球数百万人。机器学习(ML)和深度学习(DL)算法的应用作为早期识别和治疗痴呆症的一种手段已显示出巨大的前景。本文讨论了诸如阿尔茨海默病性痴呆、额颞叶痴呆、路易体痴呆和血管性痴呆等痴呆症,以及关于在其诊断中使用ML算法的文献综述。比较并对比了不同的ML算法,如支持向量机、人工神经网络、决策树和随机森林,以及它们的优缺点。如本文所讨论的,通过仔细考虑特征选择和数据准备可以实现准确的ML模型。我们还讨论了ML算法如何预测疾病进展和患者对治疗的反应。然而,在没有进一步证据的情况下,应避免过度依赖ML和DL技术。需要注意的是,这些技术旨在辅助诊断,但不应作为最终诊断的唯一标准。该研究表明,ML算法可能有助于提高痴呆症诊断的准确性,尤其是在早期阶段。ML和DL算法在临床环境中的有效性必须得到验证,并且必须解决围绕使用个人数据的伦理问题,但这需要更多的研究。