2021 IEEE International IOT, Electronics and Mechatronics Conference (IEMTRONICS) 2021
DOI: 10.1109/iemtronics52119.2021.9422534
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A Novel Machine Learning Based Screening Method For High-Risk Covid-19 Patients Based On Simple Blood Exams

Abstract: This paper presents a predictive model to potentially identify high-risk COVID-19 infected patients based on easily analyzed circulatory blood markers. These findings can enable effective and efficient care programs for high-risk patients and periodic monitoring for the low-risk ones, thereby easing the hospital flow of patients and can further be utilized for hospital bed utilization assessment. The present machine learning-based SV-LAR model results in a high 87% f1 score, harmonic mean of 91% precision, and… Show more

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Cited by 10 publications
(5 citation statements)
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“…Classification of COVID-19 severity into triage categories has was also carried out on clinical data and laboratory tests obtained during patient examination in ED [31] and 26 blood routine indicators and several demographic features [26] using a specifically developed RF-SMA-SVM model. A novel SV-LAR model was exhibited for triage based on blood sample routine data [34], in line with other approaches exploiting blood sample test data for early triage [48] Some other studies also focused on the differential diagnosis of COVID-19 from other similar diseases or to detect patients with high risk of future lung diseases, such as a diagnostic model to aid in the early identification of suspected COVID-19 pneumonia patients [24] on admission in fever clinics. Others classified the diagnosis of the patients into three categories: COVID-19 pneumonia, non-COVID-19 pneumonia and the healthy ones [43].…”
Section: Patient Triage Methodsmentioning
confidence: 70%
“…Classification of COVID-19 severity into triage categories has was also carried out on clinical data and laboratory tests obtained during patient examination in ED [31] and 26 blood routine indicators and several demographic features [26] using a specifically developed RF-SMA-SVM model. A novel SV-LAR model was exhibited for triage based on blood sample routine data [34], in line with other approaches exploiting blood sample test data for early triage [48] Some other studies also focused on the differential diagnosis of COVID-19 from other similar diseases or to detect patients with high risk of future lung diseases, such as a diagnostic model to aid in the early identification of suspected COVID-19 pneumonia patients [24] on admission in fever clinics. Others classified the diagnosis of the patients into three categories: COVID-19 pneumonia, non-COVID-19 pneumonia and the healthy ones [43].…”
Section: Patient Triage Methodsmentioning
confidence: 70%
“…The suggestion that Covid-19 series intervals are shorter than those of Severe Acute Respiratory Syndrome (SARS) could introduce a bias in the calculations of SARS series intervals.Post-mortem SARS-coronavirus-2 (SARS-CoV-2) samples can be used to research pathological features of deceased patients. However, no pathology report was available due to the difficulty performing excision and biopsy [21]. The time course and severity of COVID-19 findings on chest radiographs and identifies severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) by nuclear detection and real-time reverse transcription polymerase chain reaction (RT-PCR) detection.…”
Section: Literature Surveymentioning
confidence: 99%
“…Early detection of COVID-19 and health monitoring of patients are urgent issues to be concerned by health service authorities in order to isolate infected people, provide timely treatment [32], and also to prevent the spread of the disease [30]. There were 210 articles identified from the dataset discussing this topic.…”
Section: Topic Hotspotsmentioning
confidence: 99%