Author: Elghamrawy, Sally M.; Hassanien, Aboul Ella; Vasilakos, Athanasios V.
Title: Geneticâ€based adaptive momentum estimation for predicting mortality risk factors for COVIDâ€19 patients using deep learning Cord-id: 1l9yf3mx Document date: 2021_8_13
ID: 1l9yf3mx
Snippet: The mortality risk factors for coronavirus disease (COVIDâ€19) must be early predicted, especially for severe cases, to provide intensive care before they develop to critically ill immediately. This paper aims to develop an optimized convolution neural network (CNN) for predicting mortality risk factors for COVIDâ€19 patients. The proposed model supports two types of input data clinical variables and the computed tomography (CT) scans. The features are extracted from the optimized CNN phase an
Document: The mortality risk factors for coronavirus disease (COVIDâ€19) must be early predicted, especially for severe cases, to provide intensive care before they develop to critically ill immediately. This paper aims to develop an optimized convolution neural network (CNN) for predicting mortality risk factors for COVIDâ€19 patients. The proposed model supports two types of input data clinical variables and the computed tomography (CT) scans. The features are extracted from the optimized CNN phase and then applied to the classification phase. The CNN model's hyperparameters were optimized using a proposed geneticâ€based adaptive momentum estimation (GBâ€ADAM) algorithm. The GBâ€ADAM algorithm employs the genetic algorithm (GA) to optimize Adam optimizer's configuration parameters, consequently improving the classification accuracy. The model is validated using three recent cohorts from New York, Mexico, and Wuhan, consisting of 3055, 7497,504 patients, respectively. The results indicated that the most significant mortality risk factors are: CD [Formula: see text] T Lymphocyte (Count), Dâ€dimer greater than 1 Ug/ml, high values of lactate dehydrogenase (LDH), Câ€reactive protein (CRP), hypertension, and diabetes. Early identification of these factors would help the clinicians in providing immediate care. The results also show that the most frequent COVIDâ€19 signs in CT scans included groundâ€glass opacity (GGO), followed by crazyâ€paving pattern, consolidations, and the number of lobes. Moreover, the experimental results show encouraging performance for the proposed model compared with different predicting models.
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