David Peebles

25 Followers
74 Following
24 Posts
Professor of Cognitive Science. Brain, Behaviour and Cognition Group, Department of Social and Psychological Sciences, University of Huddersfield, UK.
Websitehttps://peebles.sdfeu.org
We've been on X/Twitter for many years, but it's time to reduce our activity there and instead promote Mastodon as our main social media channel now. So we've done just that: https://x.com/LibreOffice/status/2026204949760131158 – Welcome to all our new followers here 😊
LibreOffice (@LibreOffice) on X

Hello, world! 👋 From now on, Mastodon is our preferred social media channel. It's an open source, decentralised platform – not controlled by tech giants. Follow us here: https://t.co/KZpwR61V5R

X (formerly Twitter)
Are you a professional who assesses #autism a parent/carer of an autistic person, or an #autistic person over 16 years? My colleague Nicola Ives is developing a #camouflaging assessment tool for people between 4-17yrs. Contact Nicola ([email protected]) if interested asap. 1st survey starts soon!

We are advertising three research positions (1 RF, 2 RA) to work on an NIHR funded project to reduce illicit drug use in young people. Enquiries: Dr Chris Retzler ([email protected]).

RF: https://hud.ac/ss8 (deadline: 10 Sept)

RA 1: https://hud.ac/ss7 (deadline: 9 Sept)

RA 2: https://hud.ac/stc (deadline: 16 Sept)

Job profile

Lifetime goal achieved. Visited the Cabaret Voltaire, the Zurich birthplace of Dada and source of the name of my favourite band in the 1980s
New #OpenAccess paper alert! Fadi Thabtah and David Peebles: "Assessment for Alzheimer’s Disease Advancement Using Classification Models with Rules"
#MachineLearning #AlzheimersDisease #AI #dementia https://www.mdpi.com/2076-3417/13/22/12152
Assessment for Alzheimer’s Disease Advancement Using Classification Models with Rules

Pre-diagnosis of common dementia conditions such as Alzheimer’s disease (AD) in the initial stages is crucial to help in early intervention, treatment plan design, disease management, and for providing quicker healthcare access. Current assessments are often stressful, invasive, and unavailable in most countries worldwide. In addition, many cognitive assessments are time-consuming and rarely cover all cognitive domains involved in dementia diagnosis. Therefore, the design and implementation of an intelligent method for dementia signs of progression from a few cognitive items in a manner that is accessible, easy, affordable, quick to perform, and does not require special and expensive resources is desirable. This paper investigates the issue of dementia progression by proposing a new classification algorithm called Alzheimer’s Disease Class Rules (AD-CR). The AD-CR algorithm learns models from the distinctive feature subsets that contain rules with low overlapping among their cognitive items yet are easily interpreted by clinicians during clinical assessment. An empirical evaluation of the Disease Neuroimaging Initiative data repository (ADNI) datasets shows that the AD-CR algorithm offers good performance (accuracy, sensitivity, etc.) when compared with other machine learning algorithms. The AD-CR algorithm was superior in comparison to the other algorithms overall since it reached a performance above 92%, 92.38% accuracy, 91.30% sensitivity, and 93.50% specificity when processing data subsets with cognitive and demographic attributes.

MDPI