Prediction of Parkinson’s Disease Using Machine Learning Models—A Classifier Analysis

Author(s):  
A. T. Rohit Surya ◽  
P. Yaswanthram ◽  
Prashant R. Nair ◽  
S. S. Rajendra Prasath ◽  
Sundeep V. V. S. Akella
2014 ◽  
Vol 42 (1) ◽  
pp. 112-119 ◽  
Author(s):  
I. Huertas-Fernández ◽  
F. J. García-Gómez ◽  
D. García-Solís ◽  
S. Benítez-Rivero ◽  
V. A. Marín-Oyaga ◽  
...  

2020 ◽  
Vol 6 (1) ◽  
Author(s):  
Chang Su ◽  
Jie Tong ◽  
Fei Wang

Abstract High-throughput techniques have generated abundant genetic and transcriptomic data of Parkinson’s disease (PD) patients but data analysis approaches such as traditional statistical methods have not provided much in the way of insightful integrated analysis or interpretation of the data. As an advanced computational approach, machine learning, which enables people to identify complex patterns and insight from data, has consequently been harnessed to analyze and interpret large, highly complex genetic and transcriptomic data toward a better understanding of PD. In particular, machine learning models have been developed to integrate patient genotype data alone or combined with demographic, clinical, neuroimaging, and other information, for PD outcome study. They have also been used to identify biomarkers of PD based on transcriptomic data, e.g., gene expression profiles from microarrays. This study overviews the relevant literature on using machine learning models for genetic and transcriptomic data analysis in PD, points out remaining challenges, and suggests future directions accordingly. Undoubtedly, the use of machine learning is amplifying PD genetic and transcriptomic achievements for accelerating the study of PD. Existing studies have demonstrated the great potential of machine learning in discovering hidden patterns within genetic or transcriptomic information and thus revealing clues underpinning pathology and pathogenesis. Moving forward, by addressing the remaining challenges, machine learning may advance our ability to precisely diagnose, prognose, and treat PD.


2021 ◽  
Vol 11 (1) ◽  
pp. 18
Author(s):  
Haewon Byeon

This preliminary study mainly compared the performance for predicting mild cognitive impairment in Parkinson’s disease (PDMCI) between single machine learning and hybrid machine learning. This study analyzed 185 patients with Parkinson’s disease (75 Parkinson’s disease) patients with normal cognition, and 110 patients with PDMCI. PDMCI, an outcome variable, was divided into “with PDMCI” and “with normal cognition” according to the diagnosis of the neurologist. This study used 48 variables (diagnostic data), including motor symptoms of Parkinson’s disease, non-motor symptoms of Parkinson’s disease, and sleep disorders, as explanatory variables. This study developed seven machine learning models using blending (three hybrid models (polydot + C5.0, vanilladot + C5.0, and RBFdot + C5.0) and four single machine learning models (polydot, vanilladot, RBFdot, and C5.0)). The results of this study showed that the RBFdot + C5.0 was the model with the best performance to predict PDMCI in Parkinson’s disease patients with normal cognition (AUC = 0.88) among the seven machine learning models. We will develop interpretable machine learning using C5.0 in a follow-up study based on the results of this study.


2020 ◽  
Author(s):  
Sanghee Moon ◽  
Hyun-Je Song ◽  
Vibhash D. Sharma ◽  
Kelly E. Lyons ◽  
Rajesh Pahwa ◽  
...  

AbstractParkinson’s disease (PD) and essential tremor (ET) are movement disorders that can have similar clinical characteristics including tremor and gait difficulty. These disorders can be misdiagnosed leading to delay in appropriate treatment. The aim of the study was to determine whether gait and balance variables obtained with wearable sensors can be utilized to differentiate between PD and ET using machine learning techniques. Additionally, we compared classification performances of several machine learning models. A balance and gait data set collected from 567 people with PD or ET was investigated. Performance of several machine learning techniques including neural networks (NN), support vector machine (SVM), k-nearest neighbor (kNN), decision tree (DT), random forest (RF), and gradient boosting (GB), were compared using F1-scores. Machine learning models classified PD and ET based on balance and gait characteristics better than chance or logistic regression. The highest F1-score was 0.61 of NN, followed by 0.59 of GB, 0.56 of RF, 0.55 of SVM, 0.53 of DT, and 0.49 of kNN. The results demonstrated the utility of machine learning models to classify different movement disorders. Further study will provide a more accurate clinical tool to help clinical decision-making.


2021 ◽  
Author(s):  
Robin Vlieger ◽  
Elena Daskalaki ◽  
Deborah Apthorp ◽  
Christian J Lueck ◽  
Hanna Suominen

Current tests of disease status in Parkinson’s disease suffer from high variability, limiting their ability to determine disease severity and prognosis. Event-related potentials, in conjunction with machine learning, may provide a more objective assessment. In this study, we will use event-related potentials to develop machine learning models, aiming to provide an objective way to assess disease status and predict disease progression in Parkinson’s disease.


2020 ◽  
Vol 2 (1) ◽  
pp. 3-6
Author(s):  
Eric Holloway

Imagination Sampling is the usage of a person as an oracle for generating or improving machine learning models. Previous work demonstrated a general system for using Imagination Sampling for obtaining multibox models. Here, the possibility of importing such models as the starting point for further automatic enhancement is explored.


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