Publications Internationales

Permanent URI for this collectionhttps://dspace.univ-boumerdes.dz/handle/123456789/13

Browse

Search Results

Now showing 1 - 3 of 3
  • Item
    Enhanced Sleep Stage Classification Using EEG and EOG: A Novel Approach for Feature Selection with Deep Learning and Gaussian Noise Data Augmentation
    (Springer Nature, 2024) Sifi, Nouria; Benali, Radhwane; Dib, Nabil; Messaoudene, Khadidja
    Accurate identification of sleep stages is critical for understanding its impact on human health. This study introduces a robust method for classifying sleep stages using polysomnography (PSG) data comprising both electroencephalogram (EEG) and electrooculogram (EOG) signals. The initial step in our approach involves extracting signals from the raw PSG data, followed by a preprocessing phase. Following this, feature extraction is executed using wavelet transform, enabling the precise capture of signal attributes such as mean and max values, among others. Utilizing an innovative method known as Autoencoder for Selection (AES) enhances the capability to differentiate between distinct features, thus improving the selection process. In addition, Gaussian Noise Data Augmentation (GNDA) is employed to enhance our dataset and our model’s robustness. Furthermore, various classifiers, including KNN, Bagging, Decision Tree, and FCNN, were used to assess the proposed feature extraction approach. To mitigate overfitting, a 10-fold cross-validation method was utilized. The experimental results indicate that the combination of EEG and EOG with GNDA, AES, and the KNN classifier achieved remarkable performance in sleep stage diagnosis, yielding an accuracy of 97.17%, and an area under the curve (AUC) of 98.2%. Notably, the combined EEG and EOG exhibited superior performance compared to individual models, as well as the existing techniques reported in the literature.
  • Item
    Computerized diagnosis of knee osteoarthritis from x-ray images using combined texture features: Data from the osteoarthritis initiative
    (Wiley-Blackwell, 2024) Messaoudene, Khadidja; Harrar, Khaled
    The prevalence of knee osteoarthritis (KOA) cases has witnessed a significant increase on a global scale in recent years, emphasizing the need for automated diagnostic computer systems to aid in early-stage osteoarthritis (OA) diagnosis. The accurate characterization of knee KOA stages through feature extraction poses significant research challenges due to the complexity of identifying relevant attributes. In this study, the development of a KOA diagnostic system is presented, leveraging a combination of Gabor, and Tamura parameters using the Canonical Correlation Analysis algorithm. Two feature selection algorithms, namely Principal Component Analysis and Relief, were employed for KOA classification. Furthermore, various classifiers, including K-Nearest Neighbors, AdaBoost, Bagging, and Random Forest, were used to assess the proposed feature extraction approach. The diagnostic system was assessed using a dataset comprising 688 x-ray images sourced from the OA initiative (OAI) dataset, consisting of 344 images from healthy subjects (Grade 0) and 344 images from pathological patients (Grade 2). To mitigate overfitting, a 10-fold cross-validation method was utilized. The experimental results indicate that the combination of Tamura and Gabor parameters with the Random Forest classifier achieved remarkable performance in KOA diagnosis, yielding an accuracy of 94.59%, and an area under the curve of 98.3%. Notably, the combined Gabor and Tamura models exhibited superior performance compared to individual models, as well as existing techniques reported in the literature.
  • Item
    Combining GLCM with LBP features for knee osteoarthritis prediction: data from the osteoarthritis initiative
    (EAI, 2021) Harrar, Khaled; Messaoudene, Khadidja; Ammar, Mohammed
    Knee osteoarthritis is a chronic disease that can make a person more susceptible to develop health complications. It is a significant cause of disability among adults. In advanced stages, people can die from these complications. OBJECTIVES: This paper introduces a quick and effective approach to classify knee X-ray images using LogitBoost and wavelet-based Gray Level Co-occurrence Matrix (GLCM) and Local Binary Patterns (LBP) to increase image classification accuracy and minimize training and testing time. METHODS: The proposed technique involves image enhancement followed by Haar wavelet transformation. GLCM and LBP were extracted from the transformed image and these attributes were used to differentiate the radiographs into two groups of patients composed of 100 normal subjects (KL 0) and 100 pathological cases with osteoarthritis (KL 2). The validation of the classification was carried out using the K-fold cross-validation technique with k = 10. RESULTS: The results revealed that the GLCM provided an accuracy of 77 % and the LBP approach achieved an accuracy of 82.5 %. Moreover, the combination of the two techniques LBP-GLCM improved the accuracy of the prediction with the LogitBoost model (91.16 %). Compared to other classifiers (SVM, logistic regression, and decision tree), the LogitBoost provided a low root mean square error (RMSE) of 27.5 %. CONCLUSION: In addition, the proposed method was compared to the state-of-the-art and revealed the highest accuracy in the prediction of KOA, outperforming the methods existing in the literature