Changing stroke rehab and research worldwide now.Time is Brain! trillions and trillions of neurons that DIE each day because there are NO effective hyperacute therapies besides tPA(only 12% effective). I have 523 posts on hyperacute therapy, enough for researchers to spend decades proving them out. These are my personal ideas and blog on stroke rehabilitation and stroke research. Do not attempt any of these without checking with your medical provider. Unless you join me in agitating, when you need these therapies they won't be there.

What this blog is for:

My blog is not to help survivors recover, it is to have the 10 million yearly stroke survivors light fires underneath their doctors, stroke hospitals and stroke researchers to get stroke solved. 100% recovery. The stroke medical world is completely failing at that goal, they don't even have it as a goal. Shortly after getting out of the hospital and getting NO information on the process or protocols of stroke rehabilitation and recovery I started searching on the internet and found that no other survivor received useful information. This is an attempt to cover all stroke rehabilitation information that should be readily available to survivors so they can talk with informed knowledge to their medical staff. It lays out what needs to be done to get stroke survivors closer to 100% recovery. It's quite disgusting that this information is not available from every stroke association and doctors group.

Friday, August 25, 2017

A Novel Spatial Spectral Signal Processing Method for Rehabilitation EEG Data Analysis of Stroke Patients

No clue what use this is for stroke recovery.
http://www.ijmtst.com/vol3issue7/348IJMTST030729.pdf
45 International Journal for Modern Trends in Science and Technology

R.Gopika Selvi1 |
P.Prabhu 2 1
M.Phil Research Scholar, Department of Computer Applications, Alagappa University, Karaikudi, India. 2 Assistant Professor - DDE , Department of Computer Applications, Alagappa University, Karaikudi, India. To Cite this Article< R.Gopika Selvi and P.Prabhu , “ A Novel Spatial-Spectral Signal Processing Method for Rehabilitation EEG Data Analysis of Stroke Patients ” , International Journal for Modern Trends in Science and Technology , Vol. 03, Issue 0 7 , Ju ly 2017 , pp. 45 - 49 .

The Spatial Spectral signal processing method is a method for analyzing Motor Imagery (MI) Electroencephalography (EEG) of stroke patients. EEG analysis is used to predefine process of the channels configuration and frequency band classifying the EEG for stroke patients. EEG analysis based data was recorded by a 16 channel. The EEG is performed heavily depends on the selection of a time interval. That pattern may have gradually changed during rehabilitation. The main issues of the EEG analysis report of stroke patients is formation of some unknown channels which is contaminated with more noisy and non stationery signals. In this paper, classical CSP based method is improved for data analysis during motor recovery motor imagery EEG patterns of stroke patients which changes that the rehabilitation training process. This is methods is based on variable preconditions and introduced a new heuristic supervisor of stochastic gradient boost strategy for training weak classifiers of the spatial spectral during rehabilitation method. Real-world datasets were collected from famous BCI competitions for training and test dataset using this method. This method has been implemented for the channel and frequency using a sliding window process and then trained the weak learners for that boosting signals. Three different datasets are tested and recorded for including the healthy people and stroke patients. The test accuracies are obtained for each subject in Brain Computer Interface (BCI) competition of the competing tests are PSD, SR, CSP, RCSP, SBCSP, CSSP, and CSSSP. This new method has been evaluated for its performance benchmark based on the session to session transfer rate. The experimental results using various simulations show that the proposed algorithm is outperformed with conventional systems as well as reducing the computational complexity

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