Clinical Trial Details
— Status: Recruiting
Administrative data
NCT number |
NCT05159661 |
Other study ID # |
204084 |
Secondary ID |
|
Status |
Recruiting |
Phase |
|
First received |
|
Last updated |
|
Start date |
March 1, 2021 |
Est. completion date |
February 27, 2026 |
Study information
Verified date |
April 2024 |
Source |
Oslo University Hospital |
Contact |
Ira Haraldsen, PhD, MD |
Phone |
92011533 |
Email |
ira.haraldsen[@]icloud.com |
Is FDA regulated |
No |
Health authority |
|
Study type |
Observational
|
Clinical Trial Summary
Every three seconds someone in the world develops dementia. There are over 50 million people
worldwide living with dementia and by 2030 this figure is expected to reach 82 million.
Besides time-consuming patient investigations with low discriminative power for dementia
risk, current treatment options focus on late symptom management. By screening brain
connectivity and dementia risk estimation in people affected by mild cognitive impairment,
the European Union (EU) funded AI-Mind project will open the door to extending the
'dementia-free' period by offering proper diagnosis and early intervention. AI-Mind will
develop two artificial intelligence-based digital tools that will identify dysfunctional
brain networks and assess dementia risk. Personalised patient reports will be generated,
potentially opening new windows for intervention possibilities.
Description:
The aim of this study is to validate an AI based risk assessment tool for new clinical
neurological data management in five clinical centres (Oslo OUS, Helsinki HUH, Madrid UCM,
Rome IRCCS and Rome UCSC)). Today, around 50% of patients with mild cognitive impairment
(MCI) are at risk to develop dementia, and that early risk signs include brain network
disturbances as an expression of beginning synaptic dysfunction in the course of dementia
development. This synaptic dysfunction can be registered by electrophysiological brain
signals. The AI-Mind Connector will identify such disturbed brain network based on EEG
technology. Brain networks patterns are identified among other mathematical possibilities by
Graph theory. Classical machine learning and deep learning approaches of artificial
intelligence will be used in automating these brain network identification processes in
existing M/EEG data.
The secondly developed tool, the AI-Mind Predictor, will serve as an enriched Connector, a
multimodal prediction method for risk estimation of dementia in MCI patients. In addition to
Connector data, cognitive test results, genetic apolipoprotein E (APOE) allele and
P-Tau-protein level information are integrated in the AI-Mind Predictor. The AI-Mind
Predictor will discriminate between people at risk for further dementia development and
non-at-risk. The anticipated high specific and sensitive AI-Mind Predictor results will be
compared to state-of-the-art (SOA) approaches.
The cutting-edge AI-Mind model development and testing will be done by available anonymised
and prospective pseudo-anonymised data collected at the 5 included clinical centres. Final
adaptation, validation, and prototype development will be conducted by the hereby described
collection of prospective data of a total 1000 MCI subjects, based on standardized clinical
inclusion/exclusion criteria listed below. All patients will sign an informed consent before
entering the study.
The patients will follow the AI-Mind protocol for a 2-year period in parallel with the SOA
follow-up procedures at each hospital and country. The protocol includes repetitive M/EEG
measurements, digitalised cognitive testing, and at the first visit a blood sample for APOE
allele and p-Tau 181 analyses. At two of our clinical centres (HUH and UCM) clinical MEG is
additionally offered for specific feature extraction for modelling by new EEG based AI-Mind
Connector technology.
Importantly, AI-Mind's new data handling procedure will only use existing well-established,
globally accessible and low-cost SOA technologies. With AI-Mind's new data processing
approach the goal is to increase today's low predictive value (<0.5) of SOA clinical dementia
prediction, and proactively select, with higher accuracy than before, MCI patients at risk to
be able to receive earlier clinical intervention. Thereby, AI-Mind wishes to contribute to
delaying dementia development by detecting the risk already at the first visit when symptoms
occur.