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  1. Artikel: A new composite approach for COVID-19 detection in X-ray images using deep features.

    Ozcan, Tayyip

    Applied soft computing

    2021  Band 111, Seite(n) 107669

    Abstract: The new type of coronavirus, COVID 19, appeared in China at the end of 2019. It has become a pandemic that is spreading all over the world in a very short time. The detection of this disease, which has serious health and socio-economic damages, is of ... ...

    Abstract The new type of coronavirus, COVID 19, appeared in China at the end of 2019. It has become a pandemic that is spreading all over the world in a very short time. The detection of this disease, which has serious health and socio-economic damages, is of vital importance. COVID-19 detection is performed by applying PCR and serological tests. Additionally, COVID detection is possible using X-ray and computed tomography images. Disease detection has an important position in scientific researches that includes artificial intelligence methods. The combined models, which consist of different phases, are frequently used for classification problems. In this paper, a new combined approach is proposed to detect COVID-19 cases using deep features obtained from X-ray images. Two main variances of the approach can be presented as single layer-based (SLB) and feature fusion-based (FFB). SLB model consists of pre-processing, deep feature extraction, post-processing, and classification phases. On the other side, the FFB model consists of pre-processing, deep feature extraction, feature fusion, post-processing, and classification phases. Four different SLB and six different FFB models were developed according to the number and binary combination of layers used in the feature extraction phase. Each model is employed for binary and multi-class classification experiments. According to experimental results, the accuracy performance for COVID-19 and no-findings classification of the proposed FFB3 model is 99.52%, which is better than the best performance accuracy (of 98.08%) in the literature. Concurrently, for multi-class classification, the proposed FFB3 model has an accuracy performance of 87.64% outperforming the best existing work (which reported an 87.02% classification performance). Various metrics, including sensitivity, specificity, precision, and F1-score metrics are used for performance analysis. For all performance metrics, the FFB3 model recorded a higher success rate than existing work in the literature. To the best of our knowledge, these accuracy rates are the best in the literature for the dataset and data split type (five-fold cross-validation). Composite models (SLBs and FFBs), which are generated in this paper, are successful ways to detect COVID-19. Experimental results show that feature extraction, pre-processing, post-processing, and hyperparameter tuning are the steps are necessary to obtain a higher success. For prospective works, different types of pre-trained models and other hyperparameter tuning methods can be implemented.
    Sprache Englisch
    Erscheinungsdatum 2021-07-05
    Erscheinungsland United States
    Dokumenttyp Journal Article
    ISSN 1568-4946
    ISSN 1568-4946
    DOI 10.1016/j.asoc.2021.107669
    Datenquelle MEDical Literature Analysis and Retrieval System OnLINE

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  2. Artikel: Pediatric bedside tracheostomy in the pediatric intensive care unit: six-year experience.

    Karapinar, Bülent / Arslan, Mehmet Tayyip / Ozcan, Coşkun

    The Turkish journal of pediatrics

    2008  Band 50, Heft 4, Seite(n) 366–372

    Abstract: In this study, we evaluated the experience of a single center pediatric intensive care unit in pediatric bedside tracheostomies performed during a six-year period. Thirty-one bedside tracheostomies were performed on 31 patients aged 2 months to 18 years. ...

    Abstract In this study, we evaluated the experience of a single center pediatric intensive care unit in pediatric bedside tracheostomies performed during a six-year period. Thirty-one bedside tracheostomies were performed on 31 patients aged 2 months to 18 years. The major indication for tracheostomy was prolonged ventilator dependence. Twenty-two complications, 6 major and 16 minor, were observed in 18 patients. Early complications were observed in 5 patients and all were managed immediately without serious outcomes. Ten patients died during the study period and only one death was directly related to the tracheostomy; the remaining 9 patients died due to their underlying disease. Eleven patients were successfully decannulated, 12 patients were discharged home with their tracheostomies and 5 of these 12 patients required home ventilation. Although children who required tracheostomy had a high overall mortality (32.3%), the prognosis of these patients depends primarily on the underlying medical condition.
    Mesh-Begriff(e) Adolescent ; Airway Obstruction/surgery ; Child ; Child, Preschool ; Female ; Hospital Mortality ; Humans ; Infant ; Intensive Care Units, Pediatric/statistics & numerical data ; Male ; Point-of-Care Systems/statistics & numerical data ; Retrospective Studies ; Tracheostomy/adverse effects ; Tracheostomy/methods ; Tracheostomy/statistics & numerical data
    Sprache Englisch
    Erscheinungsdatum 2008-07
    Erscheinungsland Turkey
    Dokumenttyp Evaluation Studies ; Journal Article
    ZDB-ID 123487-0
    ISSN 0041-4301
    ISSN 0041-4301
    Datenquelle MEDical Literature Analysis and Retrieval System OnLINE

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