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The Predictive Capacity of Machine Learning Models for Progressive Kidney Disease in Individuals With Sickle Cell Anemia (PREMIER)

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University of Tennessee

Status

Enrolling

Conditions

Kidney Diseases, Chronic
Sickle Cell Disease

Treatments

Other: Biospecimen/DNA collection and analysis

Study type

Observational

Funder types

Other
NIH

Identifiers

NCT05214105
1R01HL159376-01 (U.S. NIH Grant/Contract)
2021-0746

Details and patient eligibility

About

This is a multicenter prospective, longitudinal cohort study which will evaluate the predictive capacity of machine learning (ML) models for progression of CKD in eligible patients for a minimum of 12 months and potentially for up to 4 years.

Full description

Sickle cell disease (SCD) is characterized by a vasculopathy affecting multiple end organs, with complications including ischemic stroke, pulmonary hypertension, and chronic kidney disease (CKD). Albuminuria, an early measure of glomerular injury and a manifestation of CKD, is common in SCD and predicts progressive kidney disease. Kidney function decline is faster in SCD patients than in the general African American population. The prevalence of rapid decline, commonly defined as an estimated glomerular filtration rate (eGFR) decline of >3 mL/min/1.73 m2 per year, is ~ 31% in SCD, 3-fold higher than in the general population. Furthermore, high-risk Apolipoprotein 1 (APOL1) variants are associated with an increased risk of albuminuria and progression of CKD in SCD. It is well recognized that kidney disease, regardless of severity, is associated with increased mortality in SCD. The investigators have recently observed that rapid eGFR decline is also independently associated with increased mortality in SCD. Early identification of patients at risk for progression of CKD is important to address potentially modifiable risk factors, slow eGFR decline and reduce mortality.

The investigators have previously reported that machine learning (ML) models can identify patients at high risk for rapid decline in kidney function. In this study, the investigators propose the conduct of a prospective, multi-center study to build a ML-based predictive model for progression of CKD in adults with SCD. A model with high predictive capacity for progression of CKD not only affords risk-stratification, but also offers opportunities to modify known risk factors in hopes of attenuating kidney function loss and decreasing mortality risk.

The overall hypothesis is that ML models utilizing clinical and laboratory characteristics, additional biomarkers and genetic assessments have a higher predictive capacity for progression of CKD than persistent albuminuria alone in adults with sickle cell anemia.

Enrollment

400 estimated patients

Sex

All

Ages

18 to 65 years old

Volunteers

No Healthy Volunteers

Inclusion criteria

  1. HbSS or HbSβ0 thalassemia, 18 - 65 years old;
  2. non-crisis, "steady state" with no acute pain episodes requiring medical contact in preceding 4 weeks;
  3. ability to understand the study requirements.

Exclusion criteria

  1. pregnant at enrollment;
  2. poorly controlled hypertension;
  3. long-standing diabetes with suspicion for diabetic nephropathy;
  4. connective tissue disease such as systemic lupus erythematosus (SLE);
  5. polycystic kidney disease or glomerular disease unrelated to SCD;
  6. stem cell transplantation;
  7. untreated human immunodeficiency virus (HIV), hepatitis B or C infection; h) history of cancer in last 5 years; i) End-stage renal disease (ESRD) on chronic dialysis; j) prior kidney transplantation.

Trial design

400 participants in 1 patient group

Patients with sickle cell anemia
Description:
Prospective longitudinal study of patients with sickle cell anemia
Treatment:
Other: Biospecimen/DNA collection and analysis

Trial contacts and locations

3

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Central trial contact

Santosh Saraf, MD; Kenneth I Ataga, MD

Data sourced from clinicaltrials.gov

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