Clinical Trial Details
— Status: Completed
Administrative data
NCT number |
NCT01020916 |
Other study ID # |
TTM-1 |
Secondary ID |
|
Status |
Completed |
Phase |
N/A
|
First received |
November 25, 2009 |
Last updated |
July 8, 2013 |
Start date |
November 2010 |
Est. completion date |
July 2013 |
Study information
Verified date |
July 2013 |
Source |
Helsingborgs Hospital |
Contact |
n/a |
Is FDA regulated |
No |
Health authority |
Sweden: Regional Ethical Review BoardSweden: Region Skåne |
Study type |
Interventional
|
Clinical Trial Summary
Experimental studies and previous clinical trials suggest an improvement in mortality and
neurological function with hypothermia after cardiac arrest. However, the accrued evidence
is inconclusive and associated with risks of systematic error, design error and random
error. Elevated body temperature after cardiac arrest is associated with a worse outcome.
Previous trials did not treat elevated body temperature in the control groups. The optimal
target temperature for post-resuscitation care is not known. The primary purpose with the
TTM-trial is to evaluate if there are differences in all-cause mortality, neurological
function and adverse events between a target temperature management at 33°C and 36°C for 24
hours following return of spontaneous circulation after cardiac arrest.
Description:
Detailed statistical analysis plan for the Target Temperature Management after
Out-of-hospital Cardiac Arrest trial
1. Introduction The Target temperature management after out-of-hospital cardiac arrest, a
randomised, parallel-group, assessor-blinded clinical trial (the TTM-trial) is the
largest trial to date in post-cardiac arrest treatment and in temperature management in
the intensive care setting.
To prevent outcome reporting bias and data driven analysis results, the International
Conference on Harmonisation of Good Clinical Practice and others have recommended that
clinical trials should be analysed according to a pre-specified plan [1]. Leading
experts in the critical care community have advocated that this should not only be a
recommendation but rather a prerequisite [2]. Here we describe the statistical analysis
plan that has been finalised while data collection in the TTM-trial still is on going,
and to which all data analyses in the main publication of the TTM-trial results will
adhere. The steering group of the TTM-trial unanimously approved the statistical
analysis plan December 3rd 2012, patient recruitment at 950 patients was completed
January 10th 2013, and the final follow-up is predicted to occur in the beginning of
July 2013, after which the database will be locked and then analysed.
2. Trial overview The TTM-trial is a multicentre, multinational, outcome assessor-blinded,
parallel group, randomised clinical trial comparing two strict target temperature
regimens of 33°C and 36°C in adult patients, who have sustained return of spontaneous
circulation and are unconscious after out-of-hospital cardiac arrest, when admitted to
hospital. The study background, design, and rationale have previously been published
[3, 4]. The TTM-trial protocol (current version 3.3) has been available online on
www.ttm-trial.org since the start of the trial. The trial is registered at
clinicaltrials.gov NCT01020916 and is endorsed by the European Clinical Research
Infrastructure Network and the Scandinavian Critical Care Trials Group.
3. Objective The primary aim of the TTM-trial is to compare the effects of two strict
target temperature protocols for the first 36 hours of hospital stay after
resuscitation from out-of-hospital cardiac arrest (4 hours for achieving the target
temperature, 24 hours of maintenance of target temperature, and 8 hours of rewarming).
The null hypothesis is that there is no difference in survival until the end of trial
(180 days from randomisation of the last patient) with a target temperature of 33°C
compared to 36°C. To demonstrate or reject a Hazard Ratio difference of 20% between the
groups, equivalent to approximately one months difference in median survival time
assuming proportional hazards in the groups during the observation time, a sample size
of 900 patients would be necessary with a type-1 error risk of 5% and a type-2 error
risk of 10%. To allow for patients lost-to-follow up the target population is set to
950 patients.
4. Stratification and design variables The only stratification variable used is trial site
(hospital). Pre-defined design variables allowing for an adjusted analysis of the
primary outcome, and pre-defined subgroup analyses are: age, gender, first presenting
cardiac rhythm (shockable or non-shockable), duration of cardiac arrest, and presence
of shock at admission.
5. Definition of the efficacy variables The outcomes are defined as primary, secondary and
exploratory (tertiary in the trial protocol). Only primary and secondary outcomes will
be analysed for the first published report of the TTM-trial due to the complexity of
the exploratory outcomes, and thus a need for separate publications.
Primary outcome The primary outcome is survival until end of trial, which will be 180 days
from randomisation of the last patient.
Secondary outcomes including adverse events The main secondary outcomes are the composite
outcomes of
1. poor neurological function defined as Cerebral Performance Category (CPC) 3 or 4, or
death (CPC 5); and
2. poor neurological function defined as modified Rankin Scale (mRS) 4 or 5, or death (mRS
6)
evaluated at 180 days (+/- 14 days) from randomisation.
The number of study participants in each category of CPC and mRS will be reported
separately.
The following adverse events are included in the secondary outcomes: bleeding, pneumonia,
electrolyte disorders, hyperglycemia, hypoglycaemia, cardiac arrhythmia, myoclonic or
tonic-clonic seizures, renal replacement therapy. Definitions for the adverse events have
been described earlier [4].
Other secondary outcomes are Cerebral Performance Category at intensive care unit and
hospital discharge, and best Cerebral Performance Category during entire trial period.
Exploratory outcomes Neurological function at 180 days defined with CPC, mRS, Informant
Questionnaire on Cognitive Decline in the Elderly (IQCODE), Mini mental state exam (MMSE)
and two simple questions: 1a. In the last two weeks, did you require help from another
person for your every day activities? (If yes: 1b. Is this a new situation following the
heart arrest?), and 2. Do you feel you have made a complete mental recovery after your heart
arrest? [4].
Quality of life defined with Short-Form 36.
6. Data points Baseline variables
- Sex
- Age
- Comorbidities*
- Chronic heart failure (NYHA 3 or worse)
- Previous acute myocardial infarction
- Ischaemic heart disease
- Previous cardiac arrhythmia
- Previous cardiac arrest
- Arterial hypertension
- Previous transient ischaemic attack or stroke
- Epilepsy
- Diabetes mellitus
- Asthma or chronic obstructive pulmonary disease
- Chronic hemo- or peritoneal dialysis
- Hepatic cirrhosis
- Haematological malignancy
- Other malignancy
- Acquired immune deficiency syndrome
- Alcoholism
- Intravenous drug abuse
- Other immunodeficiency
- Pre-morbid Cerebral Performance Category (CPC)
- Previous percutaneous coronary intervention
- Previous coronary bypass grafting
- Previous valvular surgery
- Implantable cardioverter-defibrillator and or pacemaker
- Age
- Pre-hospital variables
- Location of cardiac arrest
- Bystander witnessed arrest
- Bystander cardiopulmonary resuscitation (CPR)
- First monitored rhythm at arrival of emergency medical service
- Use of active compression-decompression device
- Time from cardiac arrest to start of basic life support
- Time from arrest to start of advanced life support
- Time from arrest to return of spontaneous circulation
- Data on admission
- First measured temperature (tympanic)
- Glasgow Coma Scale (combined score)
- pH
- Lactate
- Shock on admission
- Acute ST-elevation infarction or novel left bundle branch block
- A comorbidity will only be reported if the frequency is above or equal to 5% in
any of the intervention groups. Pre-morbid CPC will be reported regardless of the
frequency.
Intervention period variables Core temperature primarily measured in the urinary bladder
will be reported per hour during the 36 hours of the intervention period.
Neurological prognostication and withdrawal of care Number and proportion of patients still
comatose at 72 hours after the end of the intervention period that underwent neurological
prognostication by a blinded physician. Number of patients, who did not survive until
neurological prognostication and their presumed cause of death, including limitations in
care and reasons for that. Number of patients with electroencephalogram, somatosensory
evoked potentials, magnetic resonance imaging, computed tomography of the head.
Concomitant cardiological treatments Number of patients receiving coronary angiography,
percutaneous coronary intervention and coronary bypass grafting, divided in three time
groups (immediately after admission, during intervention or when sedated in the intensive
care unit, and after regaining consciousness. Number of patients receiving intra aortic
balloon pump, other mechanical assist device, temporary pacemaker, permanent pacemaker and
implantable cardioverter-defibrillator.
Other descriptive variables Number of days in intensive care unit and days on mechanical
ventilation during the index ICU-admission and days in hospital within the index admission
will be reported.
7. General analysis principles
1. Analyses will be conducted according to the modified intention-to-treat principle [5]
if not otherwise stated.
2. All tests of significance will be two-sided with a maximal type-1 error risk of 5%
3. The primary analyses of primary and secondary outcomes will be those of the modified
intention-to-treat population adjusted for the protocol specified stratification
variable [6] and if necessary using data sets generated using multiple imputations (see
below). An unadjusted analysis and an analysis adjusting for both stratification and
predefined design variables will be carried out as sensitivity analyses. Other analyses
may also be done using e.g. a slightly different population. If the results of these
analyses are not consistent with the primary analyses this will be discussed.
Nevertheless, the conclusions of the study will still be those based on the primary
analyses.
4. The tests for interaction between the intervention and each design variable used to
identify subgroups are exploratory.
5. Risks will be reported as hazard ratios or risk ratios with 95% confidence interval
(CI) or with limits as stated under point 6.
6. If there is data missingness for a specified primary or secondary outcome of less than
5% we will perform a complete case analysis without imputing missing values. If there
is a missingness of more than 5% we will perform Little's test. If the test indicates
that the complete case data set is a random sample we will continue without imputing
missing values and analyse the complete cases. If Little's test indicates that the data
set of complete cases is not a random sample of the total data set we will report the
point estimates and their 95% confidence limits applying a worst/best scenario
imputation for the missing values. If the worst/best case analyses allow for the same
conclusion we will not perform multiple imputation. However, if the worst/best case
imputation provides different conclusions, multiple imputation will be performed,
creating 10 imputed data sets under the assumption of missingness at random. The result
of the trial will be the pooled intervention effect and 95% CI of the analyses of the
data sets after multiple imputation.
Primarily the observed P-values of the primary and five secondary outcomes will be
presented. However, multiplicity, a possibly reason for spurious statistically significant
P-values, may be a problem when the result of several outcomes are presented. We therefore
want to present a supplemental analysis being the result with P-values adjusted for
multiplicity according to the fall-back procedure [7]. The P-values adjusted for
multiplicity will be presented and discussed in relation to the unadjusted P-values. This
adjustment may be needed to control the overall probability of a type 1 error (rejection of
a null hypothesis that is actually true) and keep the family wise error rate below 0.05 as
required by most regulatory agencies. This will be done by specifying the weights of the
hypotheses assigned to them according to their importance. The sequence in which the
hypotheses will be tested and their individual weights (in parentheses) will be: the primary
outcome (0.50), first secondary outcome (0.25), second secondary outcome (0.0625), third
secondary outcome (0.0625), fourth secondary outcome (0.0625), and fifth secondary outcome
(0.0625). The multiplicity problem is further illuminated in the Discussion section.
8. Statistical analyses Trial profile Flow of study participants will displayed in a CONSORT
diagram as shown in Box 1 [8]. Number of screened patients who fulfilled study inclusion
criteria and the number included in the primary and secondary analyses as well as all
reasons for exclusions in primary and secondary analyses will be reported.
Primary outcome Frequencies and percentages per group, as well as hazard ratios with 95% CI
will be reported. The primary outcome will be analysed using Cox-regression with adjusting
variables indicated below. The proportional hazard assumption across treatment groups will
be checked by testing if there is an interaction between intervention and time and by
plotting cumulative hazard functions for intervention groups.
1. The first analysis of the primary outcome, adjusted for the stratification variable,
will be on the patients that met the inclusion criteria and did not meet the exclusion
criteria at time of randomisation. Patients who did not meet inclusion criteria and did
not receive the intervention (temperature management) and was erroneously randomised
will be excluded according to the modified intention to treat principle.
2. The second analysis on the primary outcome will be on patients that met the inclusion
criteria and did not meet the exclusion criteria and did not have any major protocol
violations (per-protocol analysis).
3. The third analysis on the primary outcome will be an analysis adjusted for both the
stratification variable and the design variables.
4. The above analyses will be repeated with sites grouped as a variable indicating whether
the patient has been allocated by the 2 sites having allocated most patients or one of
the other sites (which would be approximately ¼ of the trial population).
Secondary outcomes including adverse events Frequencies and percentages per group, as well
as risk ratios with 95% CI will be reported. A standard Chi2-test will be used to assess the
effect of treatment on binary and categorical outcomes. For the adjusted primary analyses
logistic regression analysis will be used. Wilcoxon-Mann-Whitney's test will be used for
continuous outcomes. There will only be reported significance testing on the composite
outcomes mortality and poor neurological outcome versus survival with good neurological
outcome; not on the individual sub-scores of CPC and mRS. For adverse events there will be a
Chi2-test on having one or more adverse events versus having no adverse events. If there is
a significant difference between treatment groups in occurrence of adverse events we will
try to delineate which of the events that drive this difference. However we acknowledge the
low power for performing analyses in this case.
Characteristics of patients with baseline comparisons Description of baseline
characteristics listed above will be presented by treatment group. Discrete variables will
be summarized by frequencies and percentages. Percentages will be calculated according to
the number of patients where data are available. Where values are missing, the actual
denominator will be stated.
Continuous variables will be summarised using standard measures of central tendency and
dispersion, either using mean +/- standard deviation for data with normal distribution or
median and inter quartile range for non-normally distributed data.
Intervention period variables The mean values of the actual measured temperature in the two
intervention groups will be displayed in a graph with mean, +/- 2 standard deviations.
Neurological prognostication and withdrawal of care, concomitant cardiological treatments
and other descriptive variables
Description of baseline characteristics listed above will be presented by treatment group
without significance testing. Discrete variables will be summarized by frequencies and
percentages. Percentages will be calculated according to the number of patients where data
are available. Where values are missing, the actual denominator will be stated.
Continuous variables will be summarised using standard measures of central tendency and
dispersion, either using mean +/- standard deviation for data with normal distribution or
median and inter quartile range for non-normally distributed data.
9. Outline of figures and tables Figure 1 will be a CONSORT flow chart as specified above.
Figure 2 will be a temperature graph for the two groups with hour 0 to 36 on the x-axis and
mean temperature with +/- 2 standard deviations on the y-axis.
Figure 3 will be a Kaplan-Meier plot of survival in the two groups during the trial period
(32 months).
Figure 4 will be a Forest plot of intervention effects stratified for the design variables:
age dichotomised around the median, gender, duration of cardiac arrest dichotomised around
the median, initial cardiac rhythm shockable or non-shockable, and presence or absence of
cardiogenic shock at admission to hospital.
All tables will report variable according to randomisation groups:
Table 1 and 2 will report background variables. Table 3 will report intensive care unit and
hospital stay variables. Table 4 will report adverse events. Table 5 will report 180-day
outcomes for survival/mortality and neurological function with CPC and mRS.
10. Discussion With this statistical analysis plan we present the different analyses in the
main publication of the TTM-trial to avoid risks of outcome reporting bias and data driven
results. Of the pre-specified outcomes in the trial we choose to report only primary and
secondary in the main publication, because of the complexity of the detailed neurological
outcomes and quality of life that constitutes the exploratory outcomes, requiring separate
publications.
We would like to emphasise that the main secondary outcome being the composite outcome of
poor neurological function and mortality at 180 days after cardiac arrest will be of great
importance in a situation of a neutral outcome in the primary outcome, when interpreting the
results and deriving clinical implications from the TTM-trial. As survival is an outcome
with low risk of bias, not prone to competing risks, and earlier trials and registry data
indicate a lower sample size needed to show the same risk reduction when the composite
outcome of mortality and poor neurological function is used (compared to
mortality/survival), this was the fundament for the order of the outcomes. The composite
outcome of poor neurological function and mortality will hopefully benefit by an increased
power with respect to the possibility of finding or rejecting a significant signal when the
trial is powered for survival, which would require a larger sample size.
Comments on the multiplicity problem
There are one primary and 5 secondary outcomes to be assessed:
- Primary outcome: survival
- Secondary outcomes
1. Neurological (CPC): binary quantity
2. Neurological (mRS): binary quantity
3. Adverse event: binary quantity
4. Cerebral performance category measured at specified point in time: binary quantity
5. Best cerebral performance during specified period: binary quantity Thus there are
six significance tests. These have to be adjusted for multiplicity to control the
probability of a type-1-error (rejection of a null hypothesis that is true). One
way to diminish this risk would be to deal with the six outcomes as one group
using a data driven adjustment of the P-values. The most powerful procedure based
on the raw P-values is probably that of Hommel [7].
An alternative (the fixed sequence procedure) would be to specify the sequence of the
hypotheses testing in advance. (Primary outcome, first secondary outcome, second secondary
outcome, - - -, fifth secondary outcome.) In this latter case no multiplicity adjustment
will be needed. Then each test will be done at the 0.05 level of significance in the
specified order. However, as soon as a test is non-significant the remaining null hypotheses
will be accepted without test.
For instance if the primary outcome and the first secondary outcome are significant at the
0.05 level and the second secondary outcome (neurological function measured with mRS) is
insignificant, the null hypotheses corresponding to the secondary outcomes 3, 4 and 5 will
be accepted without test.
A third approach is the so-called fall back procedure where the fixed hypothesis testing
sequence is also used. However, if a test is insignificant, the procedure does not stop but
the next hypothesis is tested at a reduced level of significance. This procedure also allows
one to weight the hypotheses according to their importance and likelihood of being rejected.
Hommel's procedure is sensitive to the P-values of the last three tests while the fall back
procedure is not. Since the first and second of the secondary outcomes probably will produce
similar P-values it appears logical to place most of the weights on the primary and the
first secondary outcome.
Based on these considerations the analyses in the TTM-trial will be presented with
unadjusted P-values as well as adjusted for multiplicity using the fall back procedure.
11. Conclusion To conclude this article describes the principle for how the TTM-trial will
be analysed and presented in the first and main publication. With this we minimise the risk
for data driven results and outcome reporting bias.
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