Machine Learning Methods for Optimal Prediction of Outcome in Parkinson’s Disease

Author(s):  
M. R. Salmanpour ◽  
M. Shamsaei ◽  
A. Saberi ◽  
S. Setayeshi ◽  
E. Taherinezhad ◽  
...  
2020 ◽  
Vol 69 ◽  
pp. 233-240 ◽  
Author(s):  
Mohammad R. Salmanpour ◽  
Mojtaba Shamsaei ◽  
Abdollah Saberi ◽  
Ivan S. Klyuzhin ◽  
Jing Tang ◽  
...  

Electronics ◽  
2020 ◽  
Vol 9 (5) ◽  
pp. 778
Author(s):  
Vasco Ponciano ◽  
Ivan Miguel Pires ◽  
Fernando Reinaldo Ribeiro ◽  
Gonçalo Marques ◽  
Maria Vanessa Villasana ◽  
...  

Inertial sensors are commonly embedded in several devices, including smartphones, and other specific devices. This type of sensors may be used for different purposes, including the recognition of different diseases. Several studies are focused on the use of accelerometer signals for the automatic recognition of different diseases, and it may empower the different treatments with the use of less invasive and painful techniques for patients. This paper aims to provide a systematic review of the studies available in the literature for the automatic recognition of different diseases by exploiting accelerometer sensors. The most reliably detectable disease using accelerometer sensors, available in 54% of the analyzed studies, is the Parkinson’s disease. The machine learning methods implemented for the automatic recognition of Parkinson’s disease reported an accuracy of 94%. The recognition of other diseases is investigated in a few other papers, and it appears to be the target of further analysis in the future.


2019 ◽  
Vol 111 ◽  
pp. 103347 ◽  
Author(s):  
Mohammad R. Salmanpour ◽  
Mojtaba Shamsaei ◽  
Abdollah Saberi ◽  
Saeed Setayeshi ◽  
Ivan S. Klyuzhin ◽  
...  

2021 ◽  
Author(s):  
Azadeh Mozhdehfarahbakhsh ◽  
Saman Chitsazian ◽  
Prasun Chakrabarti ◽  
Tulika Chakrabarti ◽  
Babak Kateb ◽  
...  

AbstractParkinson’s disease (PD) is amongst the relatively prevalent neurodegenerative disorders with its course of progression classified as prodromal, stage1, 2, 3 and sever conditions. With all the shortcomings in clinical setting, it is often challenging to identify the stage of PD severity and predict its progression course. Therefore, there appear to be an ever-growing need need to use supervised and unsupervised artificial intelligence and machine learning methods on clinical and paraclinical datasets to accurately diagnose PD, identify its stage and predict its course. In today’s neuro-medicine practices, MRI-related data are regarded beneficial in detecting various pathologies in the brain. In addition, the field has recently witnessed a growing application of deep learning methods in image processing often with outstanding results. Here, we applied Convolutional Neural Networks (CNN) to propose a model helping to distinguish different stages of PD. The results showed that our current MRI-based CNN model may potentially be employed as a suitable method for the distinction of PD stages at a high accuracy rate (0.94).


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