Machine learning for the diagnosis of Parkinson's disease: A systematic
review
- URL: http://arxiv.org/abs/2010.06101v1
- Date: Tue, 13 Oct 2020 01:14:04 GMT
- Title: Machine learning for the diagnosis of Parkinson's disease: A systematic
review
- Authors: Jie Mei, Christian Desrosiers, Johannes Frasnelli
- Abstract summary: We conducted a systematic literature review of studies published until February 14, 2020, using the PubMed and IEEE Xplore databases.
A total of 209 studies were included, extracted for relevant information and presented in this systematic review.
These studies demonstrate a high potential for adaptation of machine learning methods and novel biomarkers in clinical decision making.
- Score: 15.463800489731373
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Diagnosis of Parkinson's disease (PD) is commonly based on medical
observations and assessment of clinical signs, including the characterization
of a variety of motor symptoms. However, traditional diagnostic approaches may
suffer from subjectivity as they rely on the evaluation of movements that are
sometimes subtle to human eyes and therefore difficult to classify, leading to
possible misclassification. In the meantime, early non-motor symptoms of PD may
be mild and can be caused by many other conditions. Therefore, these symptoms
are often overlooked, making diagnosis of PD at an early stage challenging. To
address these difficulties and to refine the diagnosis and assessment
procedures of PD, machine learning methods have been implemented for the
classification of PD and healthy controls or patients with similar clinical
presentations (e.g., movement disorders or other Parkinsonian syndromes). To
provide a comprehensive overview of data modalities and machine learning
methods that have been used in the diagnosis and differential diagnosis of PD,
in this study, we conducted a systematic literature review of studies published
until February 14, 2020, using the PubMed and IEEE Xplore databases. A total of
209 studies were included, extracted for relevant information and presented in
this systematic review, with an investigation of their aims, sources of data,
types of data, machine learning methods and associated outcomes. These studies
demonstrate a high potential for adaptation of machine learning methods and
novel biomarkers in clinical decision making, leading to increasingly
systematic, informed diagnosis of PD.
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