| Literature DB >> 21936924 |
Elke Vervölgyi1, Mandy Kromp, Guido Skipka, Ralf Bender, Thomas Kaiser.
Abstract
BACKGROUND: To assess the reporting of loss to follow-up (LTFU) information in articles on randomised controlled trials (RCTs) with time-to-event outcomes, and to assess whether discrepancies affect the validity of study results.Entities:
Mesh:
Year: 2011 PMID: 21936924 PMCID: PMC3189898 DOI: 10.1186/1471-2288-11-130
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Figure 1Recalculation of the numbers at risk - example classified as "consistent". Kaplan-Meier plot of a randomised trial comparing prednisolone and a control group [4]. According to the information in the text of the publication, one patient was lost to follow-up in the prednisolone group and minimum follow-up was 120 days. At one time point beforehand (90 days), we read the survival probability from the curve (see vertical line). We recalculated the number of patients at risk by multiplying the survival probability with the number of randomised patients (number at risk: 17 in the prednisolone group vs. 6 in the control group). As the calculated and reported numbers matched (taking into account the one patient lost to follow-up in the prednisolone group), this example would be classified as "consistent".
Figure 2Recalculation of the numbers at risk - example classified as "not consistent". Kaplan-Meier plot of the trial presented in figure 1, but using fictive data. In this example it is assumed that no patient was reported as lost to follow-up in either group and minimum follow-up was 120 days. As in figure 1, we read the survival probability from the curve at 90 days. We multiplied the survival probability by the number of randomized patients in order to recalculate the number of patients at risk (number at risk: 19 in the prednisolone group vs. 13 in the control group). As the reported number at risk was smaller in the prednisolone group, four patients must have been censored before day 90. As no losses to follow up were reported, this fictive example would be classified as "not consistent".
Figure 3Main results of the assessment of Kaplan-Meier plots in articles on randomised controlled trials (RCTs).
Change in study results* after imputation of censored data
| Imputation method | ||||
|---|---|---|---|---|
| Significant | 24 | 8 (33) | 7 (29) | 9 (38) |
| Not significant | 23 | 13 (57) | 19 (83) | 18 (78) |
| Total | 47 | 21 (45) | 26 (55) | 27 (57) |
* After imputation of censored data the effect estimate changed direction and the corresponding p-value changed from significant to not significant or vice versa (α = 5%).
Results of the assessment of LTFU information stratified by journal
| BMJ | JAMA | Lancet | NEJM | Total | |
|---|---|---|---|---|---|
| Articles (n) | 14 | 70 | 97 | 138 | 319 |
| Not assessable* (n (%)) | 13 (93) | 13 (19) | 32 (33) | 74 (54) | 132 (41) |
| Consistent** (n (%)) | 1 (7) | 45 (64) | 49 (51) | 45 (33) | 140 (44) |
| Not consistent (n (%)) | 0 | 12 (17) | 16 (16) | 19 (14) | 47 (15) |
* Loss to follow-up information cannot be derived from the Kaplan-Meier plot.
** The numbers derived from the Kaplan-Meier plot matched the reported numbers at risk.