User Guide
Why can I only view 3 results?
You can also view all results when you are connected from the network of member institutions only. For non-member institutions, we are opening a 1-month free trial version if institution officials apply.
So many results that aren't mine?
References in many bibliographies are sometimes referred to as "Surname, I", so the citations of academics whose Surname and initials are the same may occasionally interfere. This problem is often the case with citation indexes all over the world.
How can I see only citations to my article?
After searching the name of your article, you can see the references to the article you selected as soon as you click on the details section.
 Views 22
 Downloands 8
Plantar Basınç Dağılımı Sinyalleri Kullanılarak Erken MSlilerde Ataksinin Hybrt CNN Modelleri ile Belirlenmesi
2021
Journal:  
Avrupa Bilim ve Teknoloji Dergisi
Author:  
Abstract:

Multipl Skleroz (MS), ataksi ve denge bozukluklarına neden olan bir merkezi sinir sistemi hastalığıdır. Atakside genellikle ilk semptom yürüyüş bozukluğu olarak görülmektedir. Yürüyüş ataksisi klinik olarak artmış çift destek süresi, kısalmış adım uzunluğu ve düzensiz adımlar ile tanımlanabilir. Bu yüzden ataksi tespitinde yürüme bozukluğunun değerlendirilmesi doğru bir yol olacaktır. Derin öğrenme çok sayıda girdi verisinden özellik çıkararak çıktı verisini tahmin eden bir makine öğrenmesi yöntemidir. Derin öğrenme nesne tanıma, sınıflandırma ve sinyal işleme gibi alanlarda sıklıkla kullanılmaktadır. Bu çalışmada plantar basınç dağılım sinyalleri içeren görüntüler kullanılarak MS’li bireyler (PwMS) için ataksi tespiti yapılması amaçlanmıştır. Bu amaçla PwMSi olan ve sağlıklı olan bireylerin plantar basınç dağılım sinyallerini içeren toplam 418 görüntü önceden eğitilmiş Hybrit CNN ağlar yardımıyla sınıflandırılmıştır. Veri setinden özellik çıkarılırken VGG16, VGG19, ResNet, MobilNet ve NasNEt derin öğrenme mimarileri kullanıldı. Daha sonra elde edilen özellik vektörleri SVM, KNN ve ANN sınıflandırıcıları kullanılarak sınıflandırıldı. Bu çalışma sonucunda en iyi sınıflandırma performansı,SVM sınıflandırıcısı ile VGG19 %85.71 Acc %81.81 Sen, %88.23 Spe derin öğrenme mimarisi kullanılarak elde edilmiştir. Yapılan bu çalışmanın yapay zeka yardımı ile PwMS’de ataksi tespitinde hekime yardımcı olacağı kanaatine varılmıştır.

Keywords:

Plantar Pressure Distribution Signals Use Early MSly Ataksin Identification with Hybrt CNN Models
2021
Author:  
Abstract:

Multiple sclerosis (MS) is a central nervous system disease that causes ataksi and imbalance disorders. Atakside is often seen as the first symptom of walking disorder. Walking ataksis can be clinically identified by increased double support time, shortened step length and irregular steps. Therefore, the assessment of walking disorder in the detection of ataksi will be the right way. Deep learning is a machine learning method that predicts output data by extracting characteristics from a large number of input data. Deep learning is often used in areas such as object recognition, classification and signal processing. This study aims to detect ataksi for MS individuals (PwMS) using images containing plantar pressure distribution signals. For this purpose, a total of 418 images containing plantar pressure distribution signals of PwMSi and healthy individuals are classified with the help of pre-trained Hybrid CNN networks. When the feature was removed from the data set, the VGG16, VGG19, ResNet, MobilNet and NasNEt deep learning architectures were used. The resulting characteristics vectors were classified using SVM, KNN and ANN classifiers. This study resulted in the best classification performance,SVM classifier with VGG19%85.71 Acc%81.81 Sen, 88.23%Spe was obtained using deep learning architecture. This study has been found that with the help of artificial intelligence it will help the doctor in the detection of ataksi at PwMS.

Keywords:

Determination Of Ataxia With Hybrt Cnn Models In Early Ms Using Plantar Pressure Distribution Signals
2021
Author:  
Abstract:

Multiple sclerosis (MS) is a disease of the central nervous system that causes ataxia and deficits in balance.In ataxia, the first symptom is usually seen as gait disturbance. Gait ataxia can be clinically defined by increased double support time, shortened stride length, and irregular strides. In this direction, the evaluation of deterioration in the detection of ataxia would be the right way. Deep learning is a machine learning method that predicts output data by extracting features from a large number of input data. Deep learning is frequently used in areas such as object recognition, classification and signal processing. In this study, it was aimed to detect ataxia for individuals with MS (PwMS) using images containing plantar pressure distribution signals. For this purpose, a total of 418 images containing the plantar pressure distribution signals of healthy individuals with PwMSi were classified with the help of pre-trained Hybrid CNN networks. VGG16, VGG19, ResNet, MobilNet and NasNEt deep learning architectures were used to extract features from the dataset. Then the obtained feature vectors were classified using SVM, KNN and ANN classifiers. As a result of this study, the best classification performance was obtained by using the SVM classifier and VGG19 85.71% Acc 81.81% Sen, 88.23% Spe deep learning architecture. It was concluded that this study will help the physician in the detection of ataxia in PwMS with the help of artificial intelligence.

Keywords:

Citation Owners
Information: There is no ciation to this publication.
Similar Articles












Avrupa Bilim ve Teknoloji Dergisi

Field :   Fen Bilimleri ve Matematik; Mühendislik

Journal Type :   Uluslararası

Metrics
Article : 3.175
Cite : 5.553
2023 Impact : 0.178
Avrupa Bilim ve Teknoloji Dergisi