Biomarker matrix to track short term disease progression in amnestic mild cognitive impairment patients with prodromal Alzheimer's disease

01 Pubblicazione su rivista
Marizzoni Moira, Ferrari Clarissa, Macis Ambra, Jovicich Jorge, Albani Diego, Babiloni Claudio, Cavaliere Libera, Didic Mira, Forloni Gianluigi, Galluzzi Samantha, Hoffmann Karl-Titus, Molinuevo José Luis, Nobili Flavio, Parnetti Lucilla, Payoux Pierre, Pizzini Francesca, Rossini Paolo Maria, Salvatore Marco, Schönknecht Peter, Soricelli Andrea, Del Percio Claudio, Hensch Tilman, Hegerl Ulrich, Tsolaki Magda, Visser Pieter Jelle, Wiltfang Jens, Richardson Jill C, Bordet Régis, Blin Olivier, Frisoni Giovanni B
ISSN: 1387-2877

BACKGROUND: Assessment of human brain atrophy in temporal regions using magnetic resonance imaging (MRI), resting state functional MRI connectivity in the left parietal cortex, and limbic electroencephalographic (rsEEG) rhythms as well as plasma amyloid peptide 42 (Aβ42) has shown that each is a promising biomarker of disease progression in amnestic mild cognitive impairment (aMCI) patients with prodromal Alzheimer's disease (AD). However, the value of their combined use is unknown. OBJECTIVE: To evaluate the association with cognitive decline and the effect on sample size calculation when using a biomarker composite matrix in prodromal AD clinical trials. METHODS: Multicenter longitudinal study with follow-up of 2 years or until development of incident dementia. APOE ɛ4-specific cerebrospinal fluid (CSF) Aβ42/P-tau cut-offs were used to identify aMCI with prodromal AD. Linear mixed models were performed 1) with repeated matrix values and time as factors to explain the longitudinal changes in ADAS-cog13, 2) with CSF Aβ42/P-tau status, time, and CSF Aβ42/P-tau status×time interaction as factors to explain the longitudinal changes in matrix measures, and 3) to compute sample size estimation for a trial implemented with the selected matrices. RESULTS: The best composite matrix included the MRI volumes of hippocampal dentate gyrus and lateral ventricle. This matrix showed the best sensitivity to track disease progression and required a sample size 31% lower than that of the best individual biomarker (i.e., volume of hippocampal dentate gyrus). CONCLUSION: Optimal matrices improved the statistical power to track disease development and to measure clinical progression in the short-term period. This might contribute to optimize the design of future clinical trials in MCI.

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