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Predicting mortality in SARS-COV-2 (COVID-19) positive patients in the inpatient setting using a novel deep neural network.
Naseem, Maleeha; Arshad, Hajra; Hashmi, Syeda Amrah; Irfan, Furqan; Ahmed, Fahad Shabbir.
  • Naseem M; Department of Community Health Sciences, Aga Khan University, Karachi 74900, Pakistan.
  • Arshad H; Medical College, Aga Khan University, Karachi 74900, Pakistan.
  • Hashmi SA; Medical College, Aga Khan University, Karachi 74900, Pakistan.
  • Irfan F; College of Osteopathic Medicine, Institute of Global Health, Michigan State University, East Lansing, MI 48824, United States.
  • Ahmed FS; Clinicaro Machine Learning Group, New Haven, CT 06510, United States; Department of Pathology, Wayne State University, Detroit, MI 48201, United States. Electronic address: fahadshabbirahmed@gmail.com.
Int J Med Inform ; 154: 104556, 2021 10.
Article in English | MEDLINE | ID: covidwho-1364110
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ABSTRACT

BACKGROUND:

The nextwave of COVID-19 pandemic is anticipated to be worse than the initial one and will strain the healthcare systems even more during the winter months. Our aim was to develop a novel machine learning-based model to predict mortality using the deep learning Neo-V framework. We hypothesized this novel machine learning approach could be applied to COVID-19 patients to predict mortality successfully with high accuracy.

METHODS:

We collected clinical and laboratory data prospectively on all adult patients (≥18 years of age) that were admitted in the inpatient setting at Aga Khan University Hospital between February 2020 and September 2020 with a clinical diagnosis of COVID-19 infection. Only patients with a RT-PCR (reverse polymerase chain reaction) proven COVID-19 infection and complete medical records were included in this study. A Novel 3-phase machine learning framework was developed to predict mortality in the inpatients setting. Phase 1 included variable selection that was done using univariate and multivariate Cox-regression analysis; all variables that failed the regression analysis were excluded from the machine learning phase of the study. Phase 2 involved new-variables creation and selection. Phase 3 and final phase applied deep neural networks and other traditional machine learning models like Decision Tree Model, k-nearest neighbor models, etc. The accuracy of these models were evaluated using test-set accuracy, sensitivity, specificity, positive predictive values, negative predictive values and area under the receiver-operating curves.

RESULTS:

After application of inclusion and exclusion criteria (n=)1214 patients were selected from a total of 1228 admitted patients. We observed that several clinical and laboratory-based variables were statistically significant for both univariate and multivariate analyses while others were not. With most significant being septic shock (hazard ratio [HR], 4.30; 95% confidence interval [CI], 2.91-6.37), supportive treatment (HR, 3.51; 95% CI, 2.01-6.14), abnormal international normalized ratio (INR) (HR, 3.24; 95% CI, 2.28-4.63), admission to the intensive care unit (ICU) (HR, 3.24; 95% CI, 2.22-4.74), treatment with invasive ventilation (HR, 3.21; 95% CI, 2.15-4.79) and laboratory lymphocytic derangement (HR, 2.79; 95% CI, 1.6-4.86). Machine learning results showed our deep neural network (DNN) (Neo-V) model outperformed all conventional machine learning models with test set accuracy of 99.53%, sensitivity of 89.87%, and specificity of 95.63%; positive predictive value, 50.00%; negative predictive value, 91.05%; and area under the receiver-operator curve of 88.5.

CONCLUSION:

Our novel Deep-Neo-V model outperformed all other machine learning models. The model is easy to implement, user friendly and with high accuracy.
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Full text: Available Collection: International databases Database: MEDLINE Main subject: SARS-CoV-2 / COVID-19 Type of study: Diagnostic study / Experimental Studies / Observational study / Prognostic study Limits: Adult / Humans Language: English Journal: Int J Med Inform Journal subject: Medical Informatics Year: 2021 Document Type: Article Affiliation country: J.ijmedinf.2021.104556

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Full text: Available Collection: International databases Database: MEDLINE Main subject: SARS-CoV-2 / COVID-19 Type of study: Diagnostic study / Experimental Studies / Observational study / Prognostic study Limits: Adult / Humans Language: English Journal: Int J Med Inform Journal subject: Medical Informatics Year: 2021 Document Type: Article Affiliation country: J.ijmedinf.2021.104556