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Feature-based assessment of visuo-spatial neglect patients using hand-drawing tasks

Feature-based assessment of visuo-spatial neglect patients using hand-drawing tasks
Feature-based assessment of visuo-spatial neglect patients using hand-drawing tasks
Visuo-spatial neglect (VSN) is a post-stroke condition in which a patient fails to respond to stimuli on one side of the visual field. Using an established pencil-and-paper-based method for the assessment of VSN (the Rivermead Behavioural Inattention Test) as a reference, a battery of computer-based hand-drawing tests is developed and shown to be effective in distinguishing between stroke subjects with and without neglect. The novel approach adopts measurements both of the outcome and the process by which the drawing tasks are executed. This approach provides a novel diagnostic capability which results in increased test sensitivity, a more objective assessment and a reduction in overall evaluation time. The paper describes the development of a binary assessment system using the computer-based acquisition and analysis of task data alongside feature selection techniques to maximise performance.
diagnostic feature analysis, computer-based drawing assessment
361-374
Liang, Yiqing
e6019ef2-d232-4bce-a224-fa21984a61d8
Guest, Richard
93533dbd-b101-491b-83cc-39ccfdc18165
Fairhurst, Michael
6a82d154-93fe-4657-bcee-934d5c888192
Potter, Jonathan
9f0adcdb-fe43-4c3b-b087-cd0d7ca687fc
Liang, Yiqing
e6019ef2-d232-4bce-a224-fa21984a61d8
Guest, Richard
93533dbd-b101-491b-83cc-39ccfdc18165
Fairhurst, Michael
6a82d154-93fe-4657-bcee-934d5c888192
Potter, Jonathan
9f0adcdb-fe43-4c3b-b087-cd0d7ca687fc

Liang, Yiqing, Guest, Richard, Fairhurst, Michael and Potter, Jonathan (2007) Feature-based assessment of visuo-spatial neglect patients using hand-drawing tasks. Pattern Analysis Applications, 10 (4), 361-374. (doi:10.1007/s10044-007-0074-x).

Record type: Article

Abstract

Visuo-spatial neglect (VSN) is a post-stroke condition in which a patient fails to respond to stimuli on one side of the visual field. Using an established pencil-and-paper-based method for the assessment of VSN (the Rivermead Behavioural Inattention Test) as a reference, a battery of computer-based hand-drawing tests is developed and shown to be effective in distinguishing between stroke subjects with and without neglect. The novel approach adopts measurements both of the outcome and the process by which the drawing tasks are executed. This approach provides a novel diagnostic capability which results in increased test sensitivity, a more objective assessment and a reduction in overall evaluation time. The paper describes the development of a binary assessment system using the computer-based acquisition and analysis of task data alongside feature selection techniques to maximise performance.

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More information

Published date: 22 May 2007
Keywords: diagnostic feature analysis, computer-based drawing assessment

Identifiers

Local EPrints ID: 489406
URI: http://eprints.soton.ac.uk/id/eprint/489406
PURE UUID: f98e4c63-7a00-4dca-93db-2c4fdc2f3dc6
ORCID for Richard Guest: ORCID iD orcid.org/0000-0001-7535-7336

Catalogue record

Date deposited: 23 Apr 2024 17:06
Last modified: 13 Nov 2024 03:10

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Contributors

Author: Yiqing Liang
Author: Richard Guest ORCID iD
Author: Michael Fairhurst
Author: Jonathan Potter

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