Study Results
The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.
Basic Information
Get a concise snapshot of the trial, including recruitment status, study phase, enrollment targets, and key timeline milestones.
RECRUITING
90 participants
OBSERVATIONAL
2025-01-13
2030-08-30
Brief Summary
Review the sponsor-provided synopsis that highlights what the study is about and why it is being conducted.
Study aims: This longitudinal study will, for the first time, investigate the trajectory of brain aging relative to chronological aging across early and middle adulthood in individuals with PKU compared to healthy controls. Data collected in the investigators previous SNSF study (Nr 192706; 184453) will serve as baseline data and allow the examination of brain health by means of brain age modeling. The association between brain age trajectories and cognitive performance, metabolic control, and cardiometabolic risk factors will be studied to disentangle risk patterns of accelerated brain aging in patients with a rare disease.
Relevance of the study: This study will show whether and how the brain aging trajectory is accelerated in patients with PKU and will determine the functional relevance of brain aging with respect to cognitive performance and metabolic control (i.e., phenylalanine levels). This is one of the first studies to closely examine long-term brain and cognitive changes in PKU during early and mid-adulthood. Its findings could provide valuable insights into the long-term effects of PKU on brain structure and aging processes. Furthermore, the results may support the development of future treatment strategies and improve the quality of life for adults with PKU.
Related Clinical Trials
Explore similar clinical trials based on study characteristics and research focus.
Short-term Effects of Good Metabolic Control on Cognitive Function, Wellbeing, and Metabolic Parameters in Adult Patients With Phenylketonuria
NCT04210206
Metabolic Control and Patient Well-being in Phenylketonuria: do Guidelines Make a Difference?
NCT05128149
Phase 2 Study of Glycomacropeptide Versus Amino Acid Diet for Management of Phenylketonuria
NCT01428258
Effect of L-carnitine Supplementation on Phenylalanine and Brain-derived Neurotrophic Factor Levels in Infants and Children With Phenylketonuria
NCT06901323
Long-Term Sulfonylurea Response in KCNJ11 Neonatal Diabetes
NCT02624817
Detailed Description
Dive into the extended narrative that explains the scientific background, objectives, and procedures in greater depth.
The investigators' preliminary findings suggest that patients with PKU might show altered aging trajectories compared to controls. The present study will investigate the aging trajectory in patients with PKU and its association with cognitive and metabolic aging over a 5-year time period. The investigators will use the well-established "Brain Age Gap" metric, which defines the biological brain age relative to the chronological age across different brain regions. Based on the investigators' preliminary and published results the following hypotheses are postulated:
A) There is accelerated brain aging in certain brain regions (as measured with an increasing Brain Age Gap) over a 5-year follow-up period in patients with PKU.
B) The Brain Age Gap relates to cognitive performance, blood-Phe levels, and other metabolic parameters in patients with PKU.
C) In patients, age-related changes in gray matter metrics (prefrontal cortical thickness), white matter microstructure, and cerebral blood flow will be more pronounced over the 5-year follow-up period than in controls.
D) Patients' cognitive performance decreases more strongly over the 5-year follow-up period in sustained attention and cognitive flexibility than controls' cognitive performance.
E) In patients, there is a relationship between changes in structural and functional brain characteristics and changes in cognitive performance and metabolic parameters.
Study procedure: The study procedure will mimic the baseline assessment as closely as possible. All patients will be asked again to take part in this longitudinal study. Participants will therefore be the same as at Time Point 1 (TP1) which was performed between 2019 and 2022, involving 30 early-treated adult patients with PKU (13 females, median age = 35.5 years, IQR = 12.3, age range = 19-48 years) and 59 healthy age-, sex-, and IQ-matched controls (33 males, 26 females, median age = 30.0 years, IQR = 11.0, age range = 18-53 years). TP2 (Time point 2, 5-year follow-up) will take place between 2024 and 2027, with the same assessments and methods. All participants will undergo identical assessments five years apart to evaluate cognitive function, mood, quality of life, metabolic parameters, and brain structure and function using MRI. Patients with PKU and healthy controls will undergo the same study procedure: after an overnight fasting period, a blood sample will be drawn early in the morning (6-8 am) followed by a DXA (Dual Energy X-ray Absorptiometry). After this, the 1-hour MRI will be performed under the guidance of the team from the Institute of Diagnostic and Interventional Neuroradiology. After a break, which includes a low-protein snack, a 2-hour neuropsychological assessment will be performed by a neuropsychologist. All assessments will take place at the University Hospital Inselspital Bern.
Brain Age Gap: A well-established technique used in different clinical samples will be employed to estimate biological brain age relative to chronological age, the so called "Brain Age Gap". Additionally, regional changes in gray matter, brain connectivity and cerebral blood flow will be assessed longitudinally to depict cerebral aging trajectories across MRI sequences and brain regions. Advanced statistical analyses will associate the Brain Age Gap relative to cognition and metabolic control. Machine learning models will be used to estimate brain age based on MRI-derived measures. For each participant, an estimate of the Brain Age Gap (predicted brain age minus chronological age), indicating the degree of brain maintenance will be calculated using XGBoost. XGBoost uses gradient tree boosting based on 1118 features to predict the Brain Age Gap. These features are extracted using the open-source software FreeSurfer. The features consist of thickness, area, and volume measurements from a multimodal parcellation of the cerebral cortex, cerebellum, and subcortex.
Statistical Analyses:
Changes in global and regional Brain Age Gaps between baseline (TP1) and the 5-year follow-up (TP2) in patients and controls will be evaluated with linear mixed models using restricted maximum likelihood (REML) estimation (hypothesis A). These models will include global and regional Brain Age Gaps as dependent variables, time, group, and the interaction between time and group as a fixed effect, while age and sex will be incorporated as covariates. Participant ID will be modeled as a random effect (intercept) to account for within-subject variance. The linear mixed modeling approach will also be applied to the cognitive and metabolic data. To assess the associations between Brain Age Gap estimates, cognitive performance, and metabolic parameters, linear models and raw values, again with BAG as dependent variable and cognition and metabolic parameters as independent variables will be calculated (hypothesis B). Age-related changes in cerebral markers (structural gray and white matter metrics, cerebral blood flow) in patients and controls will be assessed with the same linear mixed model approach used for hypothesis A, replacing Brain Age Gaps with these cerebral markers as dependent variables (hypothesis C). Likewise, changes in cognitive performance in patients and controls will be evaluated with linear mixed models (hypothesis D). Finally, the relationship between changes in cerebral markers, cognitive performance, and metabolic data will be investigated using the same model approach as in hypothesis B, with changes in cerebral markers serving as dependent variable and cognition and metabolic parameters as independent variables (hypothesis E). Statistical significance will be determined at a threshold of p \< .05, with corrections for multiple comparisons applied via the false discovery rate (FDR) procedure.
Conditions
See the medical conditions and disease areas that this research is targeting or investigating.
Study Design
Understand how the trial is structured, including allocation methods, masking strategies, primary purpose, and other design elements.
CASE_CONTROL
OTHER
Study Groups
Review each arm or cohort in the study, along with the interventions and objectives associated with them.
Patients
Adult patients with Phenylketonuria
No interventions assigned to this group
Controls
Healthy controls
No interventions assigned to this group
Eligibility Criteria
Check the participation requirements, including inclusion and exclusion rules, age limits, and whether healthy volunteers are accepted.
Inclusion Criteria
* PKU diagnosed after a positive newborn screening
* Treatment with Phe-restricted diet starting within the first 30 days of life
* Age ≥18 years
* Written informed consent
* Age ≥18 years
* Written informed consent
Exclusion Criteria
* Phe concentration above 1600 µmol/L within 6 months before the study
* Concomitant disease states suspected to significantly affect primary or secondary outcomes
* Women who are pregnant or who are breast feeding
* Conditions interfering with MRI such as magnetic (metallic) particles in the skull or brain, cardiac pacemaker, deep brain stimulators, cochlear implant, braces or permanent retainers
Healthy controls
* Concomitant disease states suspected to significantly affect primary or secondary outcomes
* Women who are pregnant or who are breast feeding
* Inability to follow the procedures of the study, e. g. due to language problems (lack of fluency in German or French), psychological disorders, dementia, etc. of the participant
* Conditions interfering with MRI such as magnetic (metallic) particles in the skull or brain, cardiac pacemaker, deep brain stimulators, cochlear implant, braces or permanent retainers
18 Years
ALL
Yes
Sponsors
Meet the organizations funding or collaborating on the study and learn about their roles.
Insel Gruppe AG, University Hospital Bern
OTHER
Responsible Party
Identify the individual or organization who holds primary responsibility for the study information submitted to regulators.
Principal Investigators
Learn about the lead researchers overseeing the trial and their institutional affiliations.
Regula Everts, Prof. Dr. phil.
Role: PRINCIPAL_INVESTIGATOR
Department of Diabetes, Endocrinology, Nutritional Medicine and Metabolism, Inselspital, Bern University Hospital and University of Bern, Switzerland
Locations
Explore where the study is taking place and check the recruitment status at each participating site.
University Hospital Inselspital, Department of Diabetes, Endocrinology, Nutritional Medicine and Metabolism (UDEM)
Bern, , Switzerland
Countries
Review the countries where the study has at least one active or historical site.
Central Contacts
Reach out to these primary contacts for questions about participation or study logistics.
Facility Contacts
Find local site contact details for specific facilities participating in the trial.
References
Explore related publications, articles, or registry entries linked to this study.
Trepp R, Muri R, Maissen-Abgottspon S, Haynes AG, Hochuli M, Everts R. Cognition after a 4-week high phenylalanine intake in adults with phenylketonuria - a randomized controlled trial. Am J Clin Nutr. 2024 Apr;119(4):908-916. doi: 10.1016/j.ajcnut.2023.11.007. Epub 2024 Feb 9.
Steiner L, Muri R, Wijesinghe D, Jann K, Maissen-Abgottspon S, Radojewski P, Pospieszny K, Kreis R, Kiefer C, Hochuli M, Trepp R, Everts R. Cerebral blood flow and white matter alterations in adults with phenylketonuria. Neuroimage Clin. 2024;41:103550. doi: 10.1016/j.nicl.2023.103550. Epub 2023 Dec 9.
Trepp R, Muri R, Abgottspon S, Bosanska L, Hochuli M, Slotboom J, Rummel C, Kreis R, Everts R. Impact of phenylalanine on cognitive, cerebral, and neurometabolic parameters in adult patients with phenylketonuria (the PICO study): a randomized, placebo-controlled, crossover, noninferiority trial. Trials. 2020 Feb 13;21(1):178. doi: 10.1186/s13063-019-4022-z.
Muri R, Rummel C, McKinley R, Rebsamen M, Maissen-Abgottspon S, Kreis R, Radojewski P, Pospieszny K, Hochuli M, Wiest R, Trepp R, Everts R. Transient brain structure changes after high phenylalanine exposure in adults with phenylketonuria. Brain. 2024 Nov 4;147(11):3863-3873. doi: 10.1093/brain/awae139.
Muri R, Maissen-Abgottspon S, Reed MB, Kreis R, Hoefemann M, Radojewski P, Pospieszny K, Hochuli M, Wiest R, Lanzenberger R, Trepp R, Everts R. Compromised white matter is related to lower cognitive performance in adults with phenylketonuria. Brain Commun. 2023 May 15;5(3):fcad155. doi: 10.1093/braincomms/fcad155. eCollection 2023.
Muri R, Maissen-Abgottspon S, Rummel C, Rebsamen M, Wiest R, Hochuli M, Jansma BM, Trepp R, Everts R. Cortical thickness and its relationship to cognitive performance and metabolic control in adults with phenylketonuria. J Inherit Metab Dis. 2022 Nov;45(6):1082-1093. doi: 10.1002/jimd.12561. Epub 2022 Sep 27.
Related Links
Access external resources that provide additional context or updates about the study.
The official website provides a brief overview of the PICO-5 study and its main focus on cognitive and cerebral aging in patients with phenylketonuria. Additionally, it includes information on financial support, collaborators, and principal investigators
The SNSF data portal provides an overview of the funding and includes a brief summary and scientific abstract of the PICO-5 study.
Other Identifiers
Review additional registry numbers or institutional identifiers associated with this trial.
PICO-5
Identifier Type: -
Identifier Source: org_study_id
More Related Trials
Additional clinical trials that may be relevant based on similarity analysis.