Approximate reciprocal relationship between two cause-specific hazard ratios in COVID-19 data with mutually exclusive events.
Wentian LiSirin CetinAyse UlgenMeryem CetinHakan SivginYaning YangPublished in: The international journal of biostatistics (2023)
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 d and csHR r ). 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 d : |log(OR)| ≥ |log(csHR d )|. This relationship between OR and HR might be understood from the definition of the two quantities; (2) csHR d and csHR r point in opposite directions: log(csHR d ) ⋅ log(csHR r ) < 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 d and csHR r : csHR d ∼ 1/csHR r . 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 d and csHR r 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.
Keyphrases
- coronavirus disease
- sars cov
- end stage renal disease
- chronic kidney disease
- newly diagnosed
- ejection fraction
- electronic health record
- healthcare
- emergency department
- prognostic factors
- big data
- cardiovascular disease
- type diabetes
- coronary artery disease
- artificial intelligence
- deep learning
- patient reported outcomes
- adverse drug
- kidney transplantation