Automatic detection of Parkinson’s disease using machine learning and deep learning: A recent literature review

Q3 Medicine
R.O. Panicker , D. Yashasvi , J. James , S. Ittappa
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引用次数: 0

Abstract

Background

Parkinson’s disease (PD) is a progressive condition of the brain and central nervous system that causes a gradual deterioration in body movement. Major symptoms of PD are stiffness in the legs, arms, and torso; tremor, slow movement, balance problems, depression, etc. PD can be diagnosed based on the above-mentioned common symptoms. Yet, diagnostic imaging techniques that are noninvasive, such as Positron Emission Tomography (PET) can help the doctors to detect PD. Every year, an estimated 60,000 new cases of PD are diagnosed. Numerous machine learning (ML) and deep learning (DL) approaches have been suggested in the literature for the automated detection of PD. The accurate diagnosis of PD poses a challenge due to the absence of a standardized and objective approach. The integration of ML algorithms into medical diagnostics has enhanced the precision of disease predictions, making the diagnosis more effective.

Methodology

This paper presents a systematic review of automatic PD detection used machine ML and DL, from papers published between 2010 and 2024. Through the extensive and careful search procedure, 67 papers were selected from a total of 262. We retrieved these articles from various academic databases such as Google Scholar, IEEE Xplore and Scopus ensuring detailed mention of relevant literature.

Result

Through this review, we can understand how ML techniques can be a partner to make the automatic detection of PD faster and efficient. We also addressed the different public database sources of PD such as UCI Parkinson’s Dataset, Parkinson’s Drawing Dataset etc. so that the researchers in this field can easily use these datasets. Furthermore, we identified some benefits, limitations and gaps, which should be addressed in the future.

Conclusion

In conclusion, the field of automatic detection of PD has witnessed remarkable advancements through the integration of machine learning, sensor technologies and various techniques. The reviewed literature highlights the efficacy of various classification algorithms such as Support Vector Machines (SVM), Random Forests (RF), etc., with them consistently demonstrating superior accuracy in distinguishing individuals with PD.
使用机器学习和深度学习的帕金森病自动检测:最近的文献综述
帕金森氏病(PD)是一种大脑和中枢神经系统的进行性疾病,导致身体运动逐渐恶化。PD的主要症状是腿部、手臂和躯干僵硬;震颤,行动迟缓,平衡问题,抑郁等。PD可根据上述常见症状进行诊断。然而,诊断成像技术是非侵入性的,如正电子发射断层扫描(PET)可以帮助医生检测PD。每年,估计有6万例PD新病例被诊断出来。文献中提出了许多机器学习(ML)和深度学习(DL)方法用于PD的自动检测。由于缺乏标准化和客观的方法,PD的准确诊断提出了挑战。将机器学习算法集成到医疗诊断中,提高了疾病预测的精度,使诊断更有效。本文对2010年至2024年间发表的论文中使用机器ML和DL进行的PD自动检测进行了系统回顾。通过广泛而仔细的搜索程序,从总共262篇论文中选出67篇。我们从谷歌Scholar、IEEE explore和Scopus等不同的学术数据库中检索这些文章,确保详细提及相关文献。结果通过本文的综述,我们可以了解ML技术如何成为PD自动检测更快、更高效的合作伙伴。我们还介绍了帕金森病的不同公共数据库来源,如UCI帕金森病数据集,帕金森病绘图数据集等,以便该领域的研究人员可以方便地使用这些数据集。此外,我们还发现了一些好处、限制和差距,这些应该在未来得到解决。总之,通过机器学习、传感器技术和各种技术的融合,PD自动检测领域取得了显著的进步。文献综述强调了各种分类算法的有效性,如支持向量机(SVM)、随机森林(RF)等,它们在区分PD个体方面一直表现出优异的准确性。
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
Ethics, Medicine and Public Health
Ethics, Medicine and Public Health Medicine-Health Policy
CiteScore
2.20
自引率
0.00%
发文量
107
审稿时长
42 days
期刊介绍: This review aims to compare approaches to medical ethics and bioethics in two forms, Anglo-Saxon (Ethics, Medicine and Public Health) and French (Ethique, Médecine et Politiques Publiques). Thus, in their native languages, the authors will present research on the legitimacy of the practice and appreciation of the consequences of acts towards patients as compared to the limits acceptable by the community, as illustrated by the democratic debate.
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