基于机器学习和深度学习的各种生物标志物在阿尔茨海默病早期检测中的应用综述

Ghada M. Alqubati, Ghaleb H. Algaphari
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引用次数: 2

摘要

阿尔茨海默病(AD)是一种进行性神经退行性疾病。它会对病人的记忆和行动能力造成巨大的影响。由于这种疾病是不可逆转的,早期诊断对于延缓症状和调整患者的生活方式至关重要。已经提出了许多基于机器学习(ML)和深度学习(DL)的方法,以便在症状出现之前准确预测AD。然而,寻找最有效的阿尔茨海默病早期预测方法仍然具有挑战性。本综述探讨了2018年至2021年发表的24篇论文。这些论文提出了不同的方法,利用最先进的机器学习和深度学习算法对不同的生物标志物进行早期检测。本综述从不同的角度对它们进行了探讨,以得出潜在的研究差距,并得出结论和建议。它根据所使用的学习技术和AD生物标志物对这些最近的方法进行了分类。它总结和比较了他们的发现,并定义了他们的优势和局限性。它还提供了常见的AD生物标志物的总结。从这篇综述中,我们发现一些方法努力提高预测精度,而不考虑其复杂性,如使用异构数据集,而另一些方法则试图找到最实用和负担得起的方法来预测疾病,但仍能达到良好的准确性,如使用音频数据。我们还注意到,基于图像生物标志物的深度学习方法明显优于基于机器学习的方法。然而,他们在遗传变异数据方面取得的成绩很差。尽管遗传变异生物标志物非常重要,但它们的巨大差异和复杂性可能导致方法复杂或准确性差。这些数据对于发现阿尔茨海默病的潜在结构并在早期发现它至关重要。然而,仍然需要一种有效的预处理方法来细化这些数据,并使用强大的深度学习算法有效地利用它们。
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MACHINE LEARNING AND DEEP LEARNING-BASED APPROACHES ON VARIOUS BIOMARKERS FOR ALZHEIMER’S DISEASE EARLY DETECTION: A REVIEW
Alzheimer’s disease (AD) is a progressive neurodegenerative disorder. It can cause a massive impact on a patient's memory and mobility. As this disease is irreversible, early diagnosis is crucial for delaying the symptoms and adjusting the patient's lifestyle. Many machine learning (ML) and deep learning (DL) based-approaches have been proposed to accurately predict AD before its symptoms onset. However, finding the most effective approach for AD early prediction is still challenging. This review explored 24 papers published from 2018 until 2021. These papers have proposed different approaches using state of the art machine learning and deep learning algorithms on different biomarkers to early detect AD. The review explored them from different perspectives to derive potential research gaps and draw conclusions and recommendations. It classified these recent approaches in terms of the learning technique used and AD biomarkers. It summarized and compared their findings, and defined their strengths and limitations. It also provided a summary of the common AD biomarkers. From this review, it was found that some approaches strove to increase the prediction accuracy regardless of their complexity such as using heterogeneous datasets, while others sought to find the most practical and affordable ways to predict the disease and yet achieve good accuracy such as using audio data. It was also noticed that DL based-approaches with image biomarkers remarkably surpassed ML based-approaches. However, they achieved poorly with genetic variants data. Despite the great importance of genetic variants biomarkers, their large variance and complexity could lead to a complex approach or poor accuracy. These data are crucial to discover the underlying structure of AD and detect it at early stages. However, an effective pre-processing approach is still needed to refine these data and employ them efficiently using the powerful DL algorithms.
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