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Deep Learning Approach to Classify Parkinson’s Disease from MRI Samples [Elektronisk resurs]

Basnin, Nanziba (författare)
14th International Conference on Brain Informatics (BI 2021), virtual, September 17-19, 2021 
Nahar, Nazmun (författare)
Ahmed Anika, Fahmida (författare)
Shahadat Hossain, Mohammad (författare)
Andersson, Karl, 1970- (författare)
Luleå tekniska universitet Institutionen för system- och rymdteknik (utgivare)
Publicerad: Springer, 2021
Engelska.
Serie: Lecture Notes in Artificial Intelligence, 0302-9743 0302-9743
Ingår i: Brain Informatics. ; 536-547
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  • Perkinson’s disease is a progressive degenerative disorder that comes from a recognized clinical parkinsonian syndrome. The manifestations of Parkinson’s disease include both motor and nonmotor symptoms identified as tremor, bradykinesia (slowed movements), rigidity, and postural instability. PD is marked as one of the most prevalent disorders from various researches and surveys because it has been observed in 90% of people out of 100. It is imperative to design CAD to develop an advanced model for the determination of this disease with accuracy since up to date there is no accurate clinical intervention for the diagnosis of PD. In contrast to conventional methods. Deep learning convolutional neural network tools are implied for the faster and accurate identification of PD through MRI. The purpose of this research is to contribute to the development of an accurate PD detection method. To conduct the research a public dataset NTU (National Technical University of Athens) is used. The data samples are categorized into three sets (Training, Test, and Validation). A DenseNet integrated with LSTM is applied to the MRI data samples. DenseNet is used to strengthen the feature selection ability, as each layer selects features depending on the temporal closeness of the image. The output is then fed into the LSTM layer, for discovering the significant dependencies in temporal features. The performance of the proposed DenseNet-LSTM is compared to other CNN state-of-the-art models. The proposed model outputs a training accuracy of 93.75%, testing accuracy of 90%, and validation accuracy of 93.8% respectively. 

Ämnesord

Natural Sciences  (hsv)
Computer and Information Sciences  (hsv)
Computer Sciences  (hsv)
Naturvetenskap  (hsv)
Data- och informationsvetenskap  (hsv)
Datavetenskap (datalogi)  (hsv)
Pervasive Mobile Computing  (ltu)
Distribuerade datorsystem  (ltu)

Genre

government publication  (marcgt)

Indexterm och SAB-rubrik

Parkinson’s Disease
CNN state-of-the-art-model
DenseNet-LSTM
MRI data samples
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