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Tranexamic Acid Mechanisms and Pharmacokinetics in Traumatic Injury (TAMPITI)

Primary Purpose

Hemorrhage, Shock, Wounds and Injuries

Status
Completed
Phase
Phase 2
Locations
United States
Study Type
Interventional
Intervention
Tranexamic Acid
Placebo
Sponsored by
Washington University School of Medicine
About
Eligibility
Locations
Arms
Outcomes
Full info

About this trial

This is an interventional treatment trial for Hemorrhage

Eligibility Criteria

18 Years - undefined (Adult, Older Adult)All SexesDoes not accept healthy volunteers

Inclusion Criteria:

  1. Patients with traumatic injury that are ordered to receive at least 1 blood product and/or
  2. Patients admitted to the Emergency Department with a traumatic injury and require immediate transfer to the operating room to control the bleeding
  3. Able to receive the study drug within 2 hours from estimated time of injury **Please note that in circumstances where the patient initially met inclusion/exclusion criteria (i.e. received blood products in the ED before a full evaluation of their injuries is complete) but is later found to only have a soft tissue involved injury or does not have a traumatic bleeding source), the Investigator may determine that the patient should not be randomized into the trial and the patient should be considered a screen failure

Exclusion Criteria:

  1. Patients known to be < 18 years of age
  2. Suspected Acute MI or stroke(thromboembolic and/or hemorrhagic) on admission
  3. Known inherited coagulation disorders
  4. Known history of thromboembolic events (DVT, PE, MI, Stroke)

    • Please note that past medical history of hemorrhagic stroke is permitted, but not current admission with hemorrhagic stroke

  5. Known history of seizures and/or seizure after injury/on admission related to this hospitalization
  6. Suspected or known pregnancy
  7. Known to be lactating
  8. Suspected or known prisoners
  9. Futile care
  10. Known current state of immunosuppression (i.e. on high dose steroids, chemotherapeutics, etc.)
  11. Unknown estimated time of injury 12). Patients wearing an "Opt Out" TAMPITI Study bracelet 13). Known presence of subarachnoid hemorrhage.

14.) Isolated injuries to hands and/or feet (distal) 15.) Administration of antifibrinolytics pre-hospital and/or during this ED admission prior to enrollment

Sites / Locations

  • Barnes Jewish Hospital

Arms of the Study

Arm 1

Arm 2

Arm 3

Arm Type

Experimental

Experimental

Placebo Comparator

Arm Label

Tranexamic Acid 2 Gram

Tranexamic Acid 4 Gram

Placebo

Arm Description

One time dose IV TXA 2 Grams given over 10 minutes within 2 hours of initial injury

One time dose IV TXA 4 Grams given over 10 minutes within 2 hours of initial injury

Matching Volume Normal Saline Placebo given IV over 10 minutes within 2 hours of initial injury

Outcomes

Primary Outcome Measures

Change in HLA-DR Expression on Monocytes 72 Hours After Drug or Placebo Administration in Patient Groups (0g TXA (Placebo); 2g TXA; 4g TXA)."
Blood was drawn from patients at baseline (0 h, just before placebo or drug administration) and at 72 hours post placebo or drug administration. Leukocytes in these blood samples were stained with fluroescent antibodies specific for CD45, CD14, and HLA-DR, analyzed by flow cytometry, and the median fluorescen intensity (MFI) of HLA-DR signal was recorded for monocytes (CD45+CD14+). The fold change in HLA-DR expression from prior to placebo/drug administration to 72 h after placebo/drug administration ("0 h : 72 h") was calculated as HLA-DR MFI72hours ÷ HLA-DR CD14 MFI0hours. Non-paramteric one-way ANOVA (Kruskal-Wallis test) was performed between each treatment group at the given time pont, and the p-value reported.

Secondary Outcome Measures

Differences in Cytokine Profiles Between the Three Study Groups
To evaluate the effects of TXA on immune function parameters we will, in a RCT, analyze samples from 150 patients (50 in each study group), at multiple time points. Parameters are: a. Cytokines measured from time 0 to 72 hours.
Differences in Leukocyte Function Parameters Between the Three Study Groups
To evaluate the effects of TXA on immune function parameters we will, in a RCT, analyze samples from 150 patients (50 in each study group), at multiple time points. Parameters are: a. Flow cytometric analyses on leukocytes measured from time 0 to 72 hours.
Total Transfusion Volume CL
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "Total Transfusion Volume CL" equals clearance (CL) affected by the covariate of Total Transfusion Volume (TxTot). This value is unitless per NONMEM reporting.
Determine the Incidence of Thromboembolic Events (DVT, MI, PE, Stroke) in All Three Study Groups.
The number of events per group for the incidence of thromboembolic events (DVT, MI, PE, Stroke) in all three study groups.
Determine the Incidence of Seizures at 24 Hours in All Three Study Groups.
The incidence of seizures at 24 hours in all three study groups. Number of participants with seizures are reported
Determine the Incidence of All Adverse Events in All Three Study Groups
All adverse events were totaled for each of the three study groups based on the number of incidents.
Platelet Count CL
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "Platelet Count CL" equals clearance (CL) affected by the covariate of Platelet Count (PLTint). This value is unitless per NONMEM reporting.
Near Infrared Spectroscopy CL
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "Near Infrared Spectroscopy CL" equals clearance (CL) affected by the covariate of Near Infrared Spectroscopy (NIRSint). This value is unitless per NONMEM reporting.
Creatinine Count CL
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "Creatinine Count CL" equals clearance (CL) affected by the covariate of Creatinine levels (SCRint). This value is unitless per NONMEM reporting.
V2- Peripheral Volume (L/70kg)
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "V2" equals Peripheral Volume in L/70kg.
Q- Intercompartmental Clearance (L/70kg)
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "Q" equals intercompartmental clearance in L/70kg.
V1- Central Volume (L/70kg)
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "V1" equals central volume in L/70kg.
CL- Clearance of TXA (mL/(Min*70kg))
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "CL" equals clearance of TXA in mL/(min*70kg).

Full Information

First Posted
December 5, 2014
Last Updated
August 4, 2021
Sponsor
Washington University School of Medicine
Collaborators
United States Department of Defense
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1. Study Identification

Unique Protocol Identification Number
NCT02535949
Brief Title
Tranexamic Acid Mechanisms and Pharmacokinetics in Traumatic Injury
Acronym
TAMPITI
Official Title
Tranexamic Acid Mechanisms and Pharmacokinetics in Traumatic Injury (TAMPITI TRIAL)
Study Type
Interventional

2. Study Status

Record Verification Date
August 2021
Overall Recruitment Status
Completed
Study Start Date
February 2016 (undefined)
Primary Completion Date
July 4, 2017 (Actual)
Study Completion Date
July 7, 2017 (Actual)

3. Sponsor/Collaborators

Responsible Party, by Official Title
Sponsor
Name of the Sponsor
Washington University School of Medicine
Collaborators
United States Department of Defense

4. Oversight

Data Monitoring Committee
Yes

5. Study Description

Brief Summary
The purpose of this study is to evaluate the effects of TXA on the immune system, its pharmacokinetics, as well as safety and efficacy in severely injured trauma patients.
Detailed Description
Trauma is the leading cause of death in persons younger than 40 years. Hemorrhage is the etiology in 30% of these deaths, and remains the leading cause of potentially preventable mortality (66-80%) on the battlefield. Death secondary to hemorrhagic shock occurs from both surgical bleeding and coagulopathy. Due to the knowledge of increased fibrinolysis promoting a hypocoagulable state in severe trauma, trials have been performed to determine if antifibrinolytics such as tranexamic acid (TXA) could reduce morbidity and mortality by reducing death from hemorrhage. TXA is an antifibrinolytic that inhibits both plasminogen activation and plasmin activity, thus preventing clot break-down rather than promoting new clot formation. Despite the extensive use of TXA in many surgical populations and an increasing use in severe trauma patients, TXA does not have an FDA approved indication for patients with traumatic injuries. The effect of TXA on immune function has not been thoroughly examined, especially in patients with severe traumatic injury. The study of the effects of TXA use on endothelial activation and injury is also important due to the inter-relationship between coagulation and endothelial function. Endothelial injury secondary to local hypoperfusion causes acute traumatic coagulopathy with fibrinolysis. Therefore a thorough and comprehensive evaluation of the effects of TXA on immune, coagulation, and endothelial parameters is important to allow for a better understanding of the mechanisms of action of this agent. This is a randomized placebo controlled trial to obtain mechanism of action data, pharmacokinetic information, and efficacy and safety data for the use of TXA in severely injured trauma patients. Participants will be randomized into 1 of 3 treatment arms (1:1:1): TXA 2 gram IV bolus, TXA 4 gram IV bolus, or placebo. The study period is from time of enrollment to hospital discharge or transfer. The study intervention will occur only once upon enrollment in the trial. Participants will receive study drug within two hours from their initial injury. Blood samples will be drawn at multiple time points for immune parameters, Pharmacodynamics, and repository samples. Immune parameter samples will be drawn at at approximately 0, 6, 24 and 72 hours after study drug/placebo administration. Pharmacokinetic and pharmacodynamic samples will be drawn according to two schedules. Even number sampling times, blood will be drawn at the approximate time points: 0, 20 min, 1 hr, 2 hr, 4 hr, 6 hr, 8 hr, and 12 hr. A patient sampled on odd number sampling times will have samples drawn at the approximate time points: 0, 10 min, 40 min, 1.5 hr, 3 hr, 6 hr, 10 hr and 24 hr. Repository samples will be drawn at approximate time points: 0, 1, 6, 24, and 72 hours.

6. Conditions and Keywords

Primary Disease or Condition Being Studied in the Trial, or the Focus of the Study
Hemorrhage, Shock, Wounds and Injuries

7. Study Design

Primary Purpose
Treatment
Study Phase
Phase 2
Interventional Study Model
Parallel Assignment
Masking
ParticipantCare ProviderInvestigator
Allocation
Randomized
Enrollment
150 (Actual)

8. Arms, Groups, and Interventions

Arm Title
Tranexamic Acid 2 Gram
Arm Type
Experimental
Arm Description
One time dose IV TXA 2 Grams given over 10 minutes within 2 hours of initial injury
Arm Title
Tranexamic Acid 4 Gram
Arm Type
Experimental
Arm Description
One time dose IV TXA 4 Grams given over 10 minutes within 2 hours of initial injury
Arm Title
Placebo
Arm Type
Placebo Comparator
Arm Description
Matching Volume Normal Saline Placebo given IV over 10 minutes within 2 hours of initial injury
Intervention Type
Drug
Intervention Name(s)
Tranexamic Acid
Other Intervention Name(s)
Cyklokapron
Intervention Description
Tranexamic acid is a man-made form of an amino acid (protein) called lysine. Tranexamic acid prevents enzymes in the body from breaking down blood clots.
Intervention Type
Other
Intervention Name(s)
Placebo
Intervention Description
Matching Volume Normal Saline Placebo given IV over 10 minutes within 2 hours of initial injury
Primary Outcome Measure Information:
Title
Change in HLA-DR Expression on Monocytes 72 Hours After Drug or Placebo Administration in Patient Groups (0g TXA (Placebo); 2g TXA; 4g TXA)."
Description
Blood was drawn from patients at baseline (0 h, just before placebo or drug administration) and at 72 hours post placebo or drug administration. Leukocytes in these blood samples were stained with fluroescent antibodies specific for CD45, CD14, and HLA-DR, analyzed by flow cytometry, and the median fluorescen intensity (MFI) of HLA-DR signal was recorded for monocytes (CD45+CD14+). The fold change in HLA-DR expression from prior to placebo/drug administration to 72 h after placebo/drug administration ("0 h : 72 h") was calculated as HLA-DR MFI72hours ÷ HLA-DR CD14 MFI0hours. Non-paramteric one-way ANOVA (Kruskal-Wallis test) was performed between each treatment group at the given time pont, and the p-value reported.
Time Frame
Samples Drawn through 72 hours after study initiation
Secondary Outcome Measure Information:
Title
Differences in Cytokine Profiles Between the Three Study Groups
Description
To evaluate the effects of TXA on immune function parameters we will, in a RCT, analyze samples from 150 patients (50 in each study group), at multiple time points. Parameters are: a. Cytokines measured from time 0 to 72 hours.
Time Frame
Samples Drawn through 72 hours after study initiation
Title
Differences in Leukocyte Function Parameters Between the Three Study Groups
Description
To evaluate the effects of TXA on immune function parameters we will, in a RCT, analyze samples from 150 patients (50 in each study group), at multiple time points. Parameters are: a. Flow cytometric analyses on leukocytes measured from time 0 to 72 hours.
Time Frame
Samples Drawn through 72 hours after study initiation
Title
Total Transfusion Volume CL
Description
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "Total Transfusion Volume CL" equals clearance (CL) affected by the covariate of Total Transfusion Volume (TxTot). This value is unitless per NONMEM reporting.
Time Frame
24 hours
Title
Determine the Incidence of Thromboembolic Events (DVT, MI, PE, Stroke) in All Three Study Groups.
Description
The number of events per group for the incidence of thromboembolic events (DVT, MI, PE, Stroke) in all three study groups.
Time Frame
Hospital Discharge (average 10 days)
Title
Determine the Incidence of Seizures at 24 Hours in All Three Study Groups.
Description
The incidence of seizures at 24 hours in all three study groups. Number of participants with seizures are reported
Time Frame
24 hours following TXA
Title
Determine the Incidence of All Adverse Events in All Three Study Groups
Description
All adverse events were totaled for each of the three study groups based on the number of incidents.
Time Frame
Hospital Discharge (average 10 days)
Title
Platelet Count CL
Description
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "Platelet Count CL" equals clearance (CL) affected by the covariate of Platelet Count (PLTint). This value is unitless per NONMEM reporting.
Time Frame
24 hours
Title
Near Infrared Spectroscopy CL
Description
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "Near Infrared Spectroscopy CL" equals clearance (CL) affected by the covariate of Near Infrared Spectroscopy (NIRSint). This value is unitless per NONMEM reporting.
Time Frame
24 hours
Title
Creatinine Count CL
Description
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "Creatinine Count CL" equals clearance (CL) affected by the covariate of Creatinine levels (SCRint). This value is unitless per NONMEM reporting.
Time Frame
24 hours
Title
V2- Peripheral Volume (L/70kg)
Description
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "V2" equals Peripheral Volume in L/70kg.
Time Frame
24 hours
Title
Q- Intercompartmental Clearance (L/70kg)
Description
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "Q" equals intercompartmental clearance in L/70kg.
Time Frame
24 hours
Title
V1- Central Volume (L/70kg)
Description
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "V1" equals central volume in L/70kg.
Time Frame
24 hours
Title
CL- Clearance of TXA (mL/(Min*70kg))
Description
Pharmacokinetic data was analyzed with NONMEM, using both the first-order and conditional non-Laplacian (with centering) estimation techniques. We considered two- and three-compartment models, parameterized in terms of both compartment volumes and clearances (distribution and elimination). We compared a basic model (in which pharmacokinetic parameters were independent of weight) to a model in which the pharmacokinetic parameters were assumed to be proportional to weight. The optimal model was selected on the basis of the objective function logarithm of the likelihood of the results) using standard criteria (NONMEM guide). Equations from optimal model: CL=109*((WT/70)**0.75) * (SCRint^-0.084) * ((NIRSInt)/96)^ -0.27 ) * ((PLTint)/130)^0.45) V1=1,160*(WT/70) * (TxTot)^0.03) Q=174*((WT/70)**0.75) V2=1080 *(WT/70) "CL" equals clearance of TXA in mL/(min*70kg).
Time Frame
24 hours

10. Eligibility

Sex
All
Minimum Age & Unit of Time
18 Years
Accepts Healthy Volunteers
No
Eligibility Criteria
Inclusion Criteria: Patients with traumatic injury that are ordered to receive at least 1 blood product and/or Patients admitted to the Emergency Department with a traumatic injury and require immediate transfer to the operating room to control the bleeding Able to receive the study drug within 2 hours from estimated time of injury **Please note that in circumstances where the patient initially met inclusion/exclusion criteria (i.e. received blood products in the ED before a full evaluation of their injuries is complete) but is later found to only have a soft tissue involved injury or does not have a traumatic bleeding source), the Investigator may determine that the patient should not be randomized into the trial and the patient should be considered a screen failure Exclusion Criteria: Patients known to be < 18 years of age Suspected Acute MI or stroke(thromboembolic and/or hemorrhagic) on admission Known inherited coagulation disorders Known history of thromboembolic events (DVT, PE, MI, Stroke) • Please note that past medical history of hemorrhagic stroke is permitted, but not current admission with hemorrhagic stroke Known history of seizures and/or seizure after injury/on admission related to this hospitalization Suspected or known pregnancy Known to be lactating Suspected or known prisoners Futile care Known current state of immunosuppression (i.e. on high dose steroids, chemotherapeutics, etc.) Unknown estimated time of injury 12). Patients wearing an "Opt Out" TAMPITI Study bracelet 13). Known presence of subarachnoid hemorrhage. 14.) Isolated injuries to hands and/or feet (distal) 15.) Administration of antifibrinolytics pre-hospital and/or during this ED admission prior to enrollment
Overall Study Officials:
First Name & Middle Initial & Last Name & Degree
Philip C Spinella, MD
Organizational Affiliation
Washington University School of Medicine
Official's Role
Principal Investigator
Facility Information:
Facility Name
Barnes Jewish Hospital
City
Saint Louis
State/Province
Missouri
ZIP/Postal Code
63110
Country
United States

12. IPD Sharing Statement

Citations:
PubMed Identifier
33013880
Citation
Spinella PC, Thomas KA, Turnbull IR, Fuchs A, Bochicchio K, Schuerer D, Reese S, Coleoglou Centeno AA, Horn CB, Baty J, Shea SM, Meledeo MA, Pusateri AE, Levy JH, Cap AP, Bochicchio GV; TAMPITI Investigators. The Immunologic Effect of Early Intravenous Two and Four Gram Bolus Dosing of Tranexamic Acid Compared to Placebo in Patients With Severe Traumatic Bleeding (TAMPITI): A Randomized, Double-Blind, Placebo-Controlled, Single-Center Trial. Front Immunol. 2020 Sep 8;11:2085. doi: 10.3389/fimmu.2020.02085. eCollection 2020.
Results Reference
derived

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Tranexamic Acid Mechanisms and Pharmacokinetics in Traumatic Injury

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