Detecting an MCI and Amyloid Digital Neuro Signature(DNS) Using Altoida's Multimodal Digital Biomarkers.
NCT ID: NCT06223438
Last Updated: 2025-02-19
Study Results
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Basic Information
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COMPLETED
614 participants
OBSERVATIONAL
2024-01-12
2025-01-10
Brief Summary
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Detailed Description
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While conventional neuropsychological assessments remain the gold standard for assessing cognitive and functional decline, these evaluations are lengthy (90-120 min), require a trained specialist, and are not free of bias and practice effects. In this context, digital biomarkers that enable the continuous and objective evaluation of multidimensional features assessing activities of daily living may have the potential to capture subtle changes in cognition and functional ability before the onset of cognitive decline.
The Altoida Digital Biomarker Platform enables an objective evaluation of an individual's cognitive and functional impairment. The Altoida platform consists of two parts: 1) a participant-facing assessment (tablet-based) and 2) a site-facing analytics and reporting web portal. The assessment evaluates cognitive and functional skills based on a series of motor and augmented reality (AR) tasks that mirror the engagement of the brain during activities of daily living (Figure 1). These activities include tapping and tracing shapes, as well as placing and finding virtual objects while faced with a distractor task. The assessment takes an average of 10 minutes (average cognitively normal) to 18 minutes (average MCI) to complete. The dashboard provides real-time analytics and integration of study data into clinical workflows. The platform is currently intended for investigational use only. It has not received FDA pre-marketing clearance or approval.
The platform evaluates multi-modal features, including micro-movements, speed, reaction times, and navigation trajectories, which are used to train specific machine-learning models, termed Digital Neuro Signature (DNS). Using machine learning, the digital biomarkers extracted by the Altoida assessment can be used to measure a patient's cognitive performance and to identify distinct clinical outcomes, such as MCI and MCI with likelihood of amyloid pathology in an ecological manner. The assessment also generates scores of specific brain domains of cognition defined by the DSM-V, such as learning and memory, executive function, complex attention, and perceptual-motor coordination derived from specific digital features scored with normative models (age and sex-adjusted). These are derived from specific digital features scored with normative models.
In previous studies, Altoida's digital biomarkers were found to be useful in detecting early cognitive decline and also in predicting progression to dementia. In recent years, the Altoida assessment has been used across several global research studies, confirming the ease of use, non-invasiveness, potential to identify cognitive impairment as well as correlations with neuropsychological assessments. Early clinical recognition of Alzheimer's disease (AD) is critical. There is currently no software-based tool approved by regulatory authorities to adjunctively diagnose individuals with MCI and amyloid positivity, which is a population with a greater likelihood of progressing to full AD dementia. Early and differential diagnosis could create opportunities for participation in clinical trials of disease-modifying therapies and assist drug developers with accelerating the enrollment of the right patients for the right therapies.
Conditions
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Study Design
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COHORT
PROSPECTIVE
Study Groups
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Cognitively normal (CN)
Participants must have an MMSE score of ≥26 and meet clinical criteria for cognitively normal based on National Institute of Aging (NIA) criteria verified in medical records or clinical assessment at first visit;
● Based on the judgment of the site PI, no evidence of functional decline based on the Functional Activities Questionnaire (FAQ) or equivalent assessment;
No interventions assigned to this group
Mild Cognitive Impairment (MCI) with known amyloid status.
Cognitive concern, reflecting a change in cognition reported by the participant, informant (family member, caregiver), or clinician;
* Participants must have an MMSE score of ≥24 and meet clinical criteria for MCI based on National Institute of Aging (NIA) criteria and verified through medical records or clinical evaluation at first visit;
* Based on the judgment of the site PI, minimal to mild functional impairment but with preservation of independence in functional abilities based on the Functional Activities Questionnaire (FAQ) or equivalent assessment;
No interventions assigned to this group
Eligibility Criteria
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Inclusion Criteria
* Male or female, 50+ years at the time of consent;
* Participants must be willing to comply with all study procedures as outlined in the informed consent;
* Fluency in the language of the tests used at the study site;
* At least four years of formal education (from primary school onwards);
* Adequate vision to complete the Altoida assessment and neuropsychological tests with or without corrective lenses;
* Have undisturbed locomotion;
* Participants should have, when available, an amyloid status assessment result (positive or negative) through CSF analysis or amyloid-PET testing. Historical positive amyloid data is accepted up to 18 months before taking the Altoida assessment. Historical amyloid negative data can be accepted up to 6-12 months before the Altoida assessment if MMSE\>26. If historical amyloid data is unavailable, determining amyloid status will be an optional component of the study protocol. The decision to include this assessment and the specific method employed will be collaboratively discussed and decided upon between the study sponsor and the respective study site;
* Optionally, participants might present, when available, a historical APOE, APP/PSEN1/2 genotype determination, and/or historical MRI/CT scan results relevant to clinical diagnosis.
Exclusion Criteria
* Participants who, in the opinion of the Site Principal Investigator, have serious or unstable medical conditions that would prohibit their completion of all study procedures and data collection or that would preclude their participation;
* Participants undergoing anticoagulant treatment or other blood dyscrasias, only if they need to undergo lumbar puncture for the assessment of amyloid pathology;
* Participants with a history of stroke or seizures within one year of study start;
* Participants with a history of chemotherapy within the past five years, or any type of malignancy or cancer that might interfere with the completion of the study, except for non-melanoma skin cancer or prostate cancer in situ;
* Participants with restrictions of performing physical activities or who are not ambulatory;
* Participants who have previously been enrolled in a study using the Altoida assessment
50 Years
ALL
Yes
Sponsors
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Altoida
INDUSTRY
Responsible Party
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Locations
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K2 Medical Research South Orlando
Orlando, Florida, United States
Countries
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References
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Ohman F, Hassenstab J, Berron D, Scholl M, Papp KV. Current advances in digital cognitive assessment for preclinical Alzheimer's disease. Alzheimers Dement (Amst). 2021 Jul 20;13(1):e12217. doi: 10.1002/dad2.12217. eCollection 2021.
Harms RL, Ferrari A, Meier IB, Martinkova J, Santus E, Marino N, Cirillo D, Mellino S, Catuara Solarz S, Tarnanas I, Szoeke C, Hort J, Valencia A, Ferretti MT, Seixas A, Santuccione Chadha A. Digital biomarkers and sex impacts in Alzheimer's disease management - potential utility for innovative 3P medicine approach. EPMA J. 2022 Jun 6;13(2):299-313. doi: 10.1007/s13167-022-00284-3. eCollection 2022 Jun.
Buegler M, Harms R, Balasa M, Meier IB, Exarchos T, Rai L, Boyle R, Tort A, Kozori M, Lazarou E, Rampini M, Cavaliere C, Vlamos P, Tsolaki M, Babiloni C, Soricelli A, Frisoni G, Sanchez-Valle R, Whelan R, Merlo-Pich E, Tarnanas I. Digital biomarker-based individualized prognosis for people at risk of dementia. Alzheimers Dement (Amst). 2020 Aug 19;12(1):e12073. doi: 10.1002/dad2.12073. eCollection 2020.
Jack CR Jr, Wiste HJ, Vemuri P, Weigand SD, Senjem ML, Zeng G, Bernstein MA, Gunter JL, Pankratz VS, Aisen PS, Weiner MW, Petersen RC, Shaw LM, Trojanowski JQ, Knopman DS; Alzheimer's Disease Neuroimaging Initiative. Brain beta-amyloid measures and magnetic resonance imaging atrophy both predict time-to-progression from mild cognitive impairment to Alzheimer's disease. Brain. 2010 Nov;133(11):3336-48. doi: 10.1093/brain/awq277. Epub 2010 Oct 8.
Hu Y, Kirmess KM, Meyer MR, Rabinovici GD, Gatsonis C, Siegel BA, Whitmer RA, Apgar C, Hanna L, Kanekiyo M, Kaplow J, Koyama A, Verbel D, Holubasch MS, Knapik SS, Connor J, Contois JH, Jackson EN, Harpstrite SE, Bateman RJ, Holtzman DM, Verghese PB, Fogelman I, Braunstein JB, Yarasheski KE, West T. Assessment of a Plasma Amyloid Probability Score to Estimate Amyloid Positron Emission Tomography Findings Among Adults With Cognitive Impairment. JAMA Netw Open. 2022 Apr 1;5(4):e228392. doi: 10.1001/jamanetworkopen.2022.8392.
Alcolea D, Pegueroles J, Munoz L, Camacho V, Lopez-Mora D, Fernandez-Leon A, Le Bastard N, Huyck E, Nadal A, Olmedo V, Sampedro F, Montal V, Vilaplana E, Clarimon J, Blesa R, Fortea J, Lleo A. Agreement of amyloid PET and CSF biomarkers for Alzheimer's disease on Lumipulse. Ann Clin Transl Neurol. 2019 Sep;6(9):1815-1824. doi: 10.1002/acn3.50873. Epub 2019 Aug 28.
Fowler CJ, Stoops E, Rainey-Smith SR, Vanmechelen E, Vanbrabant J, Dewit N, Mauroo K, Maruff P, Rowe CC, Fripp J, Li QX, Bourgeat P, Collins SJ, Martins RN, Masters CL, Doecke JD. Plasma p-tau181/Abeta1-42 ratio predicts Abeta-PET status and correlates with CSF-p-tau181/Abeta1-42 and future cognitive decline. Alzheimers Dement (Amst). 2022 Nov 25;14(1):e12375. doi: 10.1002/dad2.12375. eCollection 2022.
Related Links
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Other Identifiers
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MCI-Amyloid-DNS-GT-001
Identifier Type: -
Identifier Source: org_study_id
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