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Approximate reciprocal relationship between two cause-specific hazard ratios in COVID-19 data with mutually exclusive events. | LitMetric

AI Article Synopsis

  • - COVID-19 survival analysis involves two mutually exclusive outcomes—death and hospital release—leading to cause-specific hazard ratios (csHR) and an odds ratio (OR) from logistic regression, with a noted relationship where the magnitude of the OR is greater than or equal to that of csHR.
  • - The csHR values for death and release show opposite behaviors, meaning that if one increases, the other tends to decrease, highlighting the nature of these conflicting events in the survival outcome.
  • - There may be a reciprocal relationship between the two csHR values, indicating that factors influencing faster death might also slow down recovery processes, although the precise quantitative relation remains unclear, which could inform future research on COVID-19 and similar diseases.

Article Abstract

COVID-19 survival data presents a special situation where not only the time-to-event period is short, but also the two events or outcome types, death and release from hospital, are mutually exclusive, leading to two cause-specific hazard ratios (csHR and csHR ). The eventual mortality/release outcome is also analyzed by logistic regression to obtain odds-ratio (OR). We have the following three empirical observations: (1) The magnitude of OR is an upper limit of the csHR : |log(OR)| ≥ |log(csHR )|. This relationship between OR and HR might be understood from the definition of the two quantities; (2) csHR and csHR point in opposite directions: log(csHR ) ⋅ log(csHR ) < 0; This relation is a direct consequence of the nature of the two events; and (3) there is a tendency for a reciprocal relation between csHR and csHR : csHR ∼ 1/csHR . Though an approximate reciprocal trend between the two hazard ratios is in indication that the same factor causing faster death also lead to slow recovery by a similar mechanism, and vice versa, a quantitative relation between csHR and csHR in this context is not obvious. These results may help future analyses of data from COVID-19 or other similar diseases, in particular if the deceased patients are lacking, whereas surviving patients are abundant.

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Source
http://dx.doi.org/10.1515/ijb-2022-0083DOI Listing

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