Fluvoxamine for COVID-19 ICU patients?
Vladimir Trkulja
Department of Pharmacology
Zagreb University School of Medicine
Šalata 11, Zagreb, Croati
vladimir.trkulja@mef.hr
Number of words: 800
Number of figures/tables: 1
To the Editor,
I read with interest a recently BJCP-accepted manuscript on the use of
fluvoxamine in COVID-19 patients who needed admission to an intensive
care unit (ICU) 1. It was instructive to read about
the pre-existing clinical experience and about possible mechanisms of
presumed benefits of fluvoxamine in COVID-19. However, attention needs
to be drawn to the suggested effect of fluvoxamine quantified as a 40%
reduction in instantaneous risk of death. The authors report1 on a cohort (n=51) of patients who, upon ICU
admission, were treated with oral fluvoxamine added to the standard of
care (SoC) (3x100 mg/day over 15 days, then 2x50 mg/day over 7 days),
and who were compared to a cohort (n=51) of SoC-only patients. The two
cohorts were said to be matched 1. Based on reported
data 1, it appears that the patients were matched
exactly in respect to gender and COVID-19 vaccination status, and,
seemingly, on a rather narrow age-caliper, but the matching method was
not reported 1; not reported was also a measure of
matching adequacy – standardized difference (d ), a preferred
method of balance assessment (adequate if d <0.1) since
independent of the sample size 2. Based on the
reported data1, for example, the fluvoxamine –
SoC d regarding body mass index was -0.30 (-0.31 in women and
-0.29 in men); also, d=-0.122 regarding history of diabetes,d= -0.350 regarding history of treated hypertension,d=-0.11 regarding on-admission APACHE score – all suggesting a
considerable imbalance between the two cohorts (lower values in the
fluvoxamine cohort). The authors provide Kaplan-Meier curves of
time-to-death (or ICU discharge) but without the numbers at risk1. Still, data could be read from the graphs and
curves reconstructed (Figure 1A):(i) the first marked difference between
the treated and controls occurs during the first 7 days of observation
– 3 patients died and 3 were censored in the former, and 11 died and 4
were censored the latter cohort (Figure 1A). This difference in deaths
(3 vs. 11) did not change over the entire later period since the overall
difference in the number of deaths was 9 (30/51 in treated vs. 39/51 in
controls). This would indicate a very rapid-onset (and subsequently
“lost”) effect of fluvoxamine, which does not seem pharmacologically
plausible. The assumed fluvoxamine mechanisms1 are not
of the immediate-onset type; with a 3x100 mg/day dosing, elimination
half-life is likely to extend well beyond 30 hours, hence steady-state
would be achieved only after 7-10 days 3. Combined
with the baseline imbalance between groups, this indicates that the
initial separation of the two curves – more or less preserved
throughout the entire subsequent period - was likely not attributable to
fluvoxamine; (ii) after day 21, and particularly after day 28, the
numbers at risk were very low, and after day 35 there were no further
events (Figure 1A), hence accounting for the entire curve is likely
misleading 4; (iii) although the curves do not cross
(Figure 1A), they indicate a possibility that hazard ratio varied over
time. Hazard ratio as generated in a Cox proportional hazard model (as
done by the authors) is an average of values that can change over time5; it is also inherently prone to selection bias and,
even in absence of confounding its interpretation is not straightforward5. This holds for randomized and particularly for
non-randomized settings 5. Reconstructed data depicted
in Figure 1A were used to fit a complementary log-log model for
continuous time process taking into account the first 35 days (no events
after that point): the method treats time as a continuous but more
“coarsely” measured variable, in intervals of identical length (in
this case 7-day intervals, i.e., weeks); based on assumption of constant
hazard within the interval, the method provides period-specific (for
weeks 1-5) hazard ratios 6, which is likely a
preferable option 5. Figure 1B depicts estimated
probabilities of death and HRs: it is only during week 1 that the hazard
appeared lower in treated – a period during which, as elaborated,
fluvoxamine most likely had no effect. Finally, authors fitted a
multivariable Cox model 1to substantiate the
fluvoxamine effect. With a total of 15 independents in a study with 102
subjects, the model was likely overfitted and susceptible to bias
arising from over(unnecessary)-adjustments 7. But more
importantly, it included adjustment for renal replacement therapy (RRT),
which was actually one of the outcomes. Inadequacy of adjustments for
post-exposure outcomes as if they were baseline covariates has been
extensively elaborated 8 and almost inevitably results
in a considerable bias, regardless of whether the respective variable
was actually a mediator or a collider 8. Such
adjustments require implementation of marginal structural models or some
of the g-estimation methods 9.
Overall, the reported difference between the two cohorts of patients is
more likely bias arising from design and analysis than evidence
supporting a causal effect of fluvoxamine.
References
- Čalušić M, Marčec R, Lukša L et al. Safety and efficacy of fluvoxamine
in COVID-19 ICU patients: an open label, prospective cohort trial with
matched controls. Br J Clin Pharmacol . 2021; doi:
10.1111/bcp.15126.
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Figure 1 . Summary of re-analysis of survival data published in
ref. 1. A . Reconstructed curves of Kaplan-Meier product-limit
estimates. Data1 were read using a digitizing
software, and were re-analyzed and curves were drawn using JMP 13
software (SAS Institute Inc., Cary, NC). Upward oriented ticks indicate
censorings, downward oriented ticks indicate failures. ICU – intensive
care unit. B . Estimated probabilities of death during weeks 1
to 5 by treatment (Fluvox – fluvoxamine) and period-specific hazard
ratios (HR) with confidence intervals. A complementary log-log model was
fitted to reconstituted data using SAS 9.4 for Windows (SAS Inc., Cary,
NC).