| Literature DB >> 33733064 |
Stephanie Sutoko1, Akira Masuda2,3, Akihiko Kandori1, Hiroki Sasaguri2, Takashi Saito2,4, Takaomi C Saido2, Tsukasa Funane1.
Abstract
Alzheimer's disease (AD) is a worldwide burden. Diagnosis is complicated by the fact that AD is asymptomatic at an early stage. Studies using AD-modeled animals offer important and useful insights. Here, we classified mice with a high risk of AD at a preclinical stage by using only their behaviors. Wild-type and knock-in AD-modeled (App NL-G-F/NL-G-F ) mice were raised, and their cognitive behaviors were assessed in an automated monitoring system. The classification utilized a machine learning method, i.e., a deep neural network, together with optimized stepwise feature selection and cross-validation. The AD risk could be identified on the basis of compulsive and learning behaviors (89.3% ± 9.8% accuracy) shown by AD-modeled mice in the early age (i.e., 8-12 months old) when the AD symptomatic cognitions were relatively underdeveloped. This finding reveals the advantage of machine learning in unveiling the importance of compulsive and learning behaviors for early AD diagnosis in mice.Entities:
Keywords: cognitive neuroscience; model organism; systems biology; systems neuroscience
Year: 2021 PMID: 33733064 PMCID: PMC7937558 DOI: 10.1016/j.isci.2021.102198
Source DB: PubMed Journal: iScience ISSN: 2589-0042