• Search Research Projects
  • Search Researchers
  • How to Use
  1. Back to project page

2016 Fiscal Year Final Research Report

Early Detection of Dementia Based on the Bayesian Classification Using Voice-fNIRS Signals during Cognitive Tasks

Research Project

  • PDF
Project/Area Number 25280100
Research Category

Grant-in-Aid for Scientific Research (B)

Allocation TypePartial Multi-year Fund
Section一般
Research Field Kansei informatics
Research InstitutionNagoya Institute of Technology

Principal Investigator

Kato Shohei  名古屋工業大学, 工学(系)研究科(研究院), 教授 (70311032)

Co-Investigator(Kenkyū-buntansha) 本間 昭  社会福祉法人浴風会認知症介護研究・研修東京センター, その他部局等, その他 (40081707)
遠藤 英俊  国立研究開発法人国立長寿医療研究センター, その他部局等, その他 (80501121)
Project Period (FY) 2013-04-01 – 2017-03-31
Keywords認知症スクリーニング / 医療・福祉サービス / 発話音声・脳血流解析 / 近赤外分光法 / 加齢工学
Outline of Final Research Achievements

This study proposes a novel approach for the early detection of cognitive impairment in the elderly, in which we focused on the prosodic features of speech sound during the subject’s answers to the questionnaire; the first was to detect signal and prosodic signs of cognitive impairment, the second was to take a measurement of cerebral blood flow (CBF). We then have developed a prototype of prosody-CBF hybrid screening system and discussed the cost-effectiveness and the discrimination performance. Moreover, MCI group is divided into two subtypes of Nonamnestic-MCI (N-MCI) composed of ten participants and Amnestic-MCI (A-MCI) composed of nine participants. We will present a comparative analysis of CBF activation between CN, N-MCI, A-MCI, and AD, by statistical tests of between-group significant differences using fNIRS signals of oxy-Hb during the cognitive task.

Free Research Field

人工知能、知能・感性ロボティクス、医工連携情報処理

URL: 

Published: 2018-03-22  

Information User Guide FAQ News Terms of Use Attribution of KAKENHI

Powered by NII kakenhi