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A new Covid-19 diagnosis strategy using a modified KNN classifier.
Rabie, Asmaa H; Mohamed, Alaa M; Abo-Elsoud, M A; Saleh, Ahmed I.
  • Rabie AH; Mansoura, Egypt Computers and Control Department Faculty of Engineering, Mansoura University.
  • Mohamed AM; Delta Higher Institute for Engineering and Technology, Talkha, Mansoura, Egypt.
  • Abo-Elsoud MA; Mansoura, Egypt Electronics and Communication Department Faculty of Engineering, Mansoura University.
  • Saleh AI; Mansoura, Egypt Computers and Control Department Faculty of Engineering, Mansoura University.
Neural Comput Appl ; : 1-25, 2023 May 02.
Article in English | MEDLINE | ID: covidwho-2318383
ABSTRACT
Covid-19 is a very dangerous disease as a result of the rapid and unprecedented spread of any previous disease. It is truly a crisis that threatens the world since its first appearance in December 2019 until our time. Due to the lack of a vaccine that has proved sufficiently effective so far, the rapid and more accurate diagnosis of this disease is extremely necessary to enable the medical staff to identify infected cases and isolate them from the rest to prevent further loss of life. In this paper, Covid-19 diagnostic strategy (CDS) as a new classification strategy that consists of two basic phases Feature selection phase (FSP) and diagnosis phase (DP) has been introduced. During the first phase called FSP, the best set of features in laboratory test findings for Covid-19 patients will be selected using enhanced gray wolf optimization (EGWO). EGWO combines both types of selection techniques called wrapper and filter. Accordingly, EGWO includes two stages called filter stage (FS) and wrapper stage (WS). While FS uses many different filter methods, WS uses a wrapper method called binary gray wolf optimization (BGWO). The second phase called DP aims to give fast and more accurate diagnosis using a hybrid diagnosis methodology (HDM) based on the selected features from FSP. In fact, the HDM consists of two phases called weighting patient phase (WP2) and diagnostic patient phase (DP2). WP2 aims to calculate the belonging degree of each patient in the testing dataset to class category using naïve Bayes (NB) as a weight method. On the other hand, K-nearest neighbor (KNN) will be used in DP2 based on the weights of patients in the testing dataset as a new training dataset to give rapid and more accurate detection. The suggested CDS outperforms other strategies according to accuracy, precision, recall (or sensitivity) and F-measure calculations that are equal to 99%, 88%, 90% and 91%, respectively, as showed in experimental results.
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Full text: Available Collection: International databases Database: MEDLINE Type of study: Diagnostic study / Prognostic study Language: English Journal: Neural Comput Appl Year: 2023 Document Type: Article

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Full text: Available Collection: International databases Database: MEDLINE Type of study: Diagnostic study / Prognostic study Language: English Journal: Neural Comput Appl Year: 2023 Document Type: Article