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Browsing by Author "Ozdogar, Asiye Tuba"

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    Characterizing Pain in Neuromyelitis Optica Spectrum Disorder: Prevalence and Clinical Features
    (Sage Publications Ltd, 2025) Yesiloglu, Pervin; Ozdogar, Asiye Tuba; Unal, Gozde Deniz; Engenc, Veysel; Zengin, Ela; Cilingir, Vedat; Ozakbas, Serkan
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    Clinical Characteristics and Disease Progression in Multiple Sclerosis: A Comparison of Late Middle-Age Onset vs Late Adulthood Onset
    (Sage Publications Ltd, 2025) Ozakbas, Serkan; Simsek, Yasemin; Caliskan, Can; Ozdogar, Asiye Tuba
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    Clinical Comparison of Early and Late Onset Multiple Sclerosis at Age 35: Implications for Disease Progression and Management
    (Sage Publications Ltd, 2024) Kaya, Ergi; Aslan, Taha; Ozdogar, Asiye Tuba; Alizada, Said; Ozakbas, Serkan
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    Cognitive Profiles of Relapsing Multiple Sclerosis Patients With Progression Independent of Relapse Activity Versus Non-NEDA Status
    (Sage Publications Ltd, 2025) Alizada, Said; Ozdogar, Asiye Tuba; Samadzade, Ulvi; Caliskan, Can; Ozakbas, Serkan
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    Comparative Analysis of Disease Progression and Disability Accumulation Between Early Onset and Adult Onset Multiple Sclerosis Patients at a Decade Post-Diagnosis
    (Sage Publications Ltd, 2024) Aslan, Taha; Kaya, Ergi; Ozdogar, Asiye Tuba; Yapici, Nurbanu; Ozakbas, Serkan
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    Comparative Analysis of Restless Legs Syndrome and Neuropathic Pain Impact on Walking and Balance in Multiple Sclerosis: Clinical and Radiographic Insights
    (Sage Publications Ltd, 2024) Ozdogar, Asiye Tuba; Kaya, Ergi; Ozcelik, Sinem; Unal, Gozde Deniz; Ozakbas, Serkan
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    Comparison of the Objective and Subjective Cognitive Fatigue During Relapse and Remission in Individuals With Multiple Sclerosis: Preliminary Results
    (Sage Publications Ltd, 2024) Ozakbas, Serkan; Yigit, Pinar; Kara, Irem; Samadzade, Ulvi; Ozdogar, Asiye Tuba
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    Determinants of Fatigue in People With Multiple Sclerosis: An Investigative Analysis
    (Sage Publications Ltd, 2024) Ozdogar, Asiye Tuba; Alizada, Said; Simsek, Yasemin; Ozakbas, Serkan
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    Determinants of Postpartum Relapse in Multiple Sclerosis: a Comprehensive Analysis of Demographic and Clinical Factors
    (Sage Publications Ltd, 2024) Alizada, Said; Samadzade, Ulvi; Yapici, Nurbanu; Kaya, Ergi; Ozdogar, Asiye Tuba; Ozakbas, Serkan
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    Development a Machine Learning Model To Prediction of Expanded Disability Status Scale in Multiple Sclerosis Patients
    (Sage Publications Ltd, 2024) Ozdogar, Asiye Tuba; Emec, Murat; Zengin, Ela; Ozcanhan, Mehmet Hilal; Ozakbas, Serkan
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    Development of a Machine Learning Model to Predict the Expanded Disability Status Scale in Multiple Sclerosis Patients
    (Elsevier Sci Ltd, 2026) Ozdogar, Asiye Tuba; Emec, Murat; Kaya, Ergi; Zengin, Ela Simay; Ozcanhan, Mehmet Hilal; Ozakbas, Serkan
    Objective: The assessment of disability in multiple sclerosis (MS) patients is crucial for treatment decisions and prognosis estimation. The Expanded Disability Status Scale (EDSS) provides a standardized way to quantify disability in MS. However, predicting EDSS scores can be challenging due to the complex and heterogeneous nature of the disease. Machine learning techniques offer a promising approach to predict EDSS scores based on various patient characteristics. Methods: 231 people with MS (pwMS) who had an assessment of physical, psychosocial, and cognitive functions in three timelines (baseline (T0), first year (T1), and second year (T2)) were enrolled. The dataset used for the study consists of 126 features. Feature selection was based on feature saliency and correlation analysis. Three machine learning models -XGBoost, Random Forest, and Linear Regression -were trained on the selected features. Hyperparameter tuning was also carried out on the models. Model performance was evaluated using standard evaluation metrics, including MAE, MSE, and R2. Results: The Machine Learning model based on the XGBoost algorithm performed best in predicting EDSS scores (T2). The MAE value obtained with the XGBoost model is 0.2361, the MSE value is 0.2408, and the R2 value is 0.9705. These results indicate that XGBoost's predictive ability on the current dataset is promising. Conclusion: Our study demonstrates the feasibility of using machine learning techniques to predict EDSS scores in MS patients. The developed models show promising performance and have the potential to enhance clinical decision-making and patient management in MS care.
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    Development of Restless Legs Syndrome Severity Prediction Models for People with Multiple Sclerosis Using Machine Learning
    (Galenos Publishing House, 2025) Kaya, Ergi; Emec, Murat; Ozdogar, Asiye Tuba; Zengin, Eta Simay; Karakas, Hitat; Dastan, Seda; Ozakbas, Serkan
    Objectives: This study aimed to develop an artificial intelligence-supported restless legs syndrome (RLS) severity prediction model for people with multiple sclerosis using machine learning methods. Patients and methods: Twenty-three individuals (14 females, 7 males; mean age: 40.6 +/- 10.9 years; range, 33 to 44 years) with multiple sclerosis with RLS were included in this observational study between March 2022 and March 2023. The International Restless Legs Syndrome Study Group Rating Scale was used to determine the RLS severity of the participants. The age, sex, body mass index, regular exercise habits, disease duration, Expanded Disability Status Scale (EDSS), estimated maximal aerobic capacity (VO2max), Pittsburgh Sleep Quality Index (PSQI), Epworth Sleepiness Scale, Multiple Sclerosis International Quality of Life Questionnaire, Multiple Sclerosis Walking Scale-12 (MSWS-12), and timed 25-foot walk test were determined as predictive variables. A correlation matrix was created. DecisionTree, RandomForest, and XGBoost machine learning methods were used to develop a model for predicting the RLS severity. Results: According to the obtained correlation matrix, PSQI scores strongly correlated with RLS severity (Pearson r=0.76). Meanwhile, EDSS scores (0.49), MSWS-12 scores (0.45), and disease duration (0.45) showed moderate correlations with RLS. Among the three different meachine learning methods, XGBoost demonstrated the best performance in predicting the severity of RLS, with a mean absolute error of 1.94, mean squared error of 4.58, mean absolute percentage error of 0.0735, and a test accuracy of 92.65%. The results showed that the severity of RLS could be estimated with 92.65% accuracy. Conclusion: This study showed a strong correlation between PSQI scores and RLS severity and that RLS severity could be predicted using machine learning methods.
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    Enhancing Disability Progression Assessment in Multiple Sclerosis: Introducing the EDSS-Plus Score
    (Sage Publications Ltd, 2024) Ozcelik, Sinem; Ozdogar, Asiye Tuba; Alizada, Said; Cinar, Bilge Piri; Ozakbas, Serkan
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    Enhancing Fine Motor Assessment: The 9HPT-Extended as a Superior Alternative to the Standard 9HPT
    (Sage Publications Ltd, 2025) Unal, Gozde Deniz; Aydin, Esra; Caliskan, Can; Samadzade, Ulvi; Ozdogar, Asiye Tuba; Kahraman, Turhan; Ozakbas, Serkan
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    Evaluating the Effectiveness of No Evidence of Disease Activity-3 in Managing Progression Independent of Relapse Activity and Relapse-Associated Worsening in Multiple Sclerosis
    (Sage Publications Ltd, 2024) Ozcelik, Sinem; Ozdogar, Asiye Tuba; Alizada, Said; Ozakbas, Serkan
    [No Abstract Available]
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    Exploring the Impact: An Analysis of Cladribine Treatment in Multiple Sclerosis Management
    (Sage Publications Ltd, 2024) Ozakbas, Serkan; Kaya, Ergi; Simsek, Yasemin; Ozdogar, Asiye Tuba
    [No Abstract Available]
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    How Much Damage Is Too Much? Early Predictors of Physical and Cognitive Decline After Treatment Switch in Multiple Sclerosis
    (Sage Publications Ltd, 2025) Ozdogar, Asiye Tuba; Samadzade, Ulvi; Ozakbas, Serkan
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    Impact of Chronic Pain on Cognitive Reserve in Multiple Sclerosis
    (Sage Publications Ltd, 2025) Ozdogar, Asiye Tuba; Kahraman, Turhan; Alizada, Said; Ozakbas, Serkan
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    Kinematic Analysis of Gait Parameters in Patients Affected by Neuromyelitis Optica Spectrum Disorders: a Comparative Study
    (Sage Publications Ltd, 2024) Ozdogar, Asiye Tuba; Aslan, Taha; Zengin, Ela Simay; Ozakbas, Serkan
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    Long-Term Effects of Ocrelizumab on Motor and Cognitive Functions in Progressive Multiple Sclerosis: A Three-Year Follow-Up Study
    (Sage Publications Ltd, 2025) Kaya, Ergi; Ozdogar, Asiye Tuba; Unal, Gozde Deniz; Kahraman, Turhan; Ozakbas, Serkan
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