2021
DOI: 10.1177/21501327211000231
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A Study of Factors Affecting the Length of Hospital Stay of COVID-19 Patients by Cox-Proportional Hazard Model in a South Indian Tertiary Care Hospital

Abstract: Background: The objective of the study was to identify the factors that alter the length of hospital stay of COVID-19 patients so we have an estimate of the duration of hospitalization of patients. To achieve this, we used a time to event analysis to arrive at factors that could alter the length of hospital stay, aiding in planning additional beds for any future rise in cases. Methods: Information about COVID-19 patients was collected between June and August 2020. The response variable was the time from admiss… Show more

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Cited by 35 publications
(59 citation statements)
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“…The most commonly used statistical tool for analyzing time to event data is the Cox proportional hazards model. 7 An AFT model is a 9 This is in agreement with the results of our study, which showed that the AFT with log-logistic distribution was the most suitable model. This model showed that abnormal values of SpO 2 , creatinine, LDH, NLR, D-dimer, ferritin, TC, age >80 years, and coronary artery disease were associated with longer hospital stays.…”
Section: Discussionsupporting
confidence: 90%
See 1 more Smart Citation
“…The most commonly used statistical tool for analyzing time to event data is the Cox proportional hazards model. 7 An AFT model is a 9 This is in agreement with the results of our study, which showed that the AFT with log-logistic distribution was the most suitable model. This model showed that abnormal values of SpO 2 , creatinine, LDH, NLR, D-dimer, ferritin, TC, age >80 years, and coronary artery disease were associated with longer hospital stays.…”
Section: Discussionsupporting
confidence: 90%
“…The most commonly used statistical tool for analyzing time to event data is the Cox proportional hazards model. 7 An AFT model is a parametric survival model used to assess the effects of covariates on a response variable, and is an alternative to the Cox model for time-to-event data. AFT models do not require Cox proportional hazards modeling as an a priori test.…”
Section: Discussionmentioning
confidence: 99%
“…In the current study, total 84% were recovered from illness while in similar other study out of 730 COVID-19 patients, 92.5% recovered and 7.5% were considered to be patient died or was discharged against medical advice (DAMA). The median length of hospital stay of COVID-19 patients was found to be 7 days (10) while in the current study median length of hospital stay of COVID-19 patients was 6 days.…”
Section: Discussioncontrasting
confidence: 64%
“…This method minimizes the combination of squares error and weights and seeks the right combination that leads to a network with high generalizability (55,56) In the bibliography, many studies have been undertaken to identify the key risk factors for hospital LOS (8, 13-16, 61, 62). The top clinical variables affecting longer LOS in reviewed studies including: age (older age) (13,15,16,62) , comorbidities (8,14,61,62) (cardiovascular, hypertension, diabetes, respiratory diseases such asthma or COPD), loss of consciousness (8,14,62) , increased BUN (8,(14)(15)(16) , leukocytosis (8,61) , decreased SPO2 (low oxygen saturation) (13,15,16,61) , mechanical ventilation (oxygen therapy) (8,14,62) , pleural effusion (13,15,61) , dry cough (13,62) , and fever (8,15,16,62) . In the present study, the most important variables (n=20 predictors) were identi ed through correlation coe cient at the level of P-value <0.2 (feature selection).…”
Section: Discussionmentioning
confidence: 99%
“…As the pandemic worsens, identifying the resulting needs of patients and service providers has become a vital prerequisite. It needs anticipation of how long each case will need inpatient services (13,14). An exact approximation of the patients' LOS would be of substantial worth for scienti cally dealing with both medical resources and the distribution of caregivers (8,15).…”
Section: Introductionmentioning
confidence: 99%