Diagnosis of Graft Pathology by TruGraf
- Conditions
- Acute Graft Rejection
- Interventions
- Genetic: TruGraf liver gene expression
- Registration Number
- NCT06557564
- Lead Sponsor
- University Health Network, Toronto
- Brief Summary
The goal of this observational study is to to identify different causes of liver diseases or damage in liver transplant patients and develop a machine learning algorithm as a non-invasive tool leveraging gene expression and patient clinical information to classify transplant liver diseases We will collect blood samples of the participants who had undergone or will undergo the liver biopsy as part of standard of care, and use this blood in TruGarf. TruGraf is a non-invasive test that measures differentially expressed genes in the blood of transplant recipients to rule out liver damage. Researcher will collect the biopsy result from the medical record and this will be compared with the TruGarf results.
- Detailed Description
Given the significant investment of healthcare resources into transplantation, it is critical to identify recipients with graft pathologies such as Acute Cellular Rejection (ACR), NASH, cholestasis, etc. at an earlier stage to implement the appropriate intervention, rather than initiating empiric treatment that could be unsafe. This project will develop a practical Machine learning-based tool based on the results of the TruGraf assay alongside clinical and laboratory data for non-invasive diagnosis of graft pathology. TruGraf is a non-invasive test that measures differentially expressed genes in the blood of transplant recipients to identify patients who are likely to be adequately immunosuppressed and, in doing so, rule out graft damage. TruGraf measures the difference in gene expression for a precise panel of specific genes that have been empirically determined to discriminate between allografts that are truly healthy (Non-ACR), and those in transplant patients that have acute rejection on biopsy (AR). Nevertheless, the exact etiology of graft damage may be difficult to discern for the transplant clinician. The clinical characteristics and history of the liver transplant recipient as well as liver enzyme patterns can provide a pre-test probability of one diagnosis being more likely than the other (Acute cellular rejection, NASH, biliary or viral disease). The proposed tool will leverage our expertise in Machine Learning tools applied to clinical and molecular data (TruGraf assay results) to enable effective clinical implementation of the TruGraf assay.
Recruitment & Eligibility
- Status
- RECRUITING
- Sex
- All
- Target Recruitment
- 471
- . Single-organ Liver transplant recipients
- Male or female, age > 18 years at the time of signing informed consent.
- Willing and able to provide informed consent.
- Patients will be undergoing liver graft biopsy (for any reason), or have had a liver biopsy within 48 hours of consent.
- Repeat transplant
- Recipient of multi organ transplantation
- Any treatment for graft rejection such as IV steroids has been given before biopsy.
- Targeted biopsies for diagnosis of malignancy.
Study & Design
- Study Type
- OBSERVATIONAL
- Study Design
- Not specified
- Arm && Interventions
Group Intervention Description Liver Transplant patient will be undergoing liver graft biopsy. TruGraf liver gene expression Liver transplant patients will be undergoing liver graft biopsy (for any reason), or have had a liver biopsy within 48 hours of consent.
- Primary Outcome Measures
Name Time Method Develop and validate a ML-based algorithm 36 months Develop and validate a ML-based algorithm that identifies major graft pathologies using liver biopsy as the reference method.
- Secondary Outcome Measures
Name Time Method Identify specific etiologies of ongoing graft damage 36 months Identify specific etiologies of ongoing graft damage by examining TruGraf gene expression array.
Trial Locations
- Locations (1)
Toronto General Hospital -UHN
🇨🇦Toronto, Ontario, Canada