Literature DB >> 34414291

Oxfordshire Community Stroke Project Classification: A proposed automated algorithm.

Joao Brainer Clares de Andrade1,2, Jay P Mohr2, Felipe Brito Timbó3, Camila Rodrigues Nepomuceno4, João Vitor da Silva Moreira5, Isabelle da Costa Goes Timbó3, Fabricio Oliveira Lima6, Gisele Sampaio Silva1, John Bamford7.   

Abstract

INTRODUCTION: The Oxfordshire Community Stroke Project (OCSP) proposed a clinical classification for Stroke patients. This classification has proved helpful to predict the risk of neurological complications. However, the OCSP was initially based on findings on the neurological assesment, which can pose difficulties for classifying patients. We aimed to describe the development and the validation step of a computer-based algorithm based on the OCSP classification.
MATERIALS AND METHODS: A flow-chart was created which was reviewed by five board-certified vascular neurologists from which a computer-based algorithm (COMPACT) was developed. Neurology residents from 12 centers were invited to participate in a randomized trial to assess the effect of using COMPACT. They answered a 20-item questionnaire for classifying the vignettes according to the OCSP classification. Each correct answer has been attributed to 1-point for calculating the final score.
RESULTS: Six-two participants agreed to participate and answered the questionnaire. Thirty-two were randomly allocated to use our algorithm, and thirty were allocated to adopt a list of symptoms alone. The group who adopted our algorithm had a median score of correct answers of 16.5[14.5, 17]/20 versus 15[13, 16]/20 points, p = 0.014. The use of our algorithm was associated with the overall rate of correct scores (p = 0.03). DISCUSSION: Our algorithm seemed a useful tool for any postgraduate year Neurology resident. A computer-based algorithm may save time and improve the accuracy to classify these patients.
CONCLUSION: An easy-to-use computer-based algorithm improved the accuracy of the OCSP classification, with the possible benefit of further improvement of the prediction of neurological complications and prognostication. © European Stroke Organisation 2021.

Entities:  

Keywords:  Oxfordshire Community Stroke Project classification; Stroke; algorithm; scale

Year:  2021        PMID: 34414291      PMCID: PMC8370065          DOI: 10.1177/23969873211012136

Source DB:  PubMed          Journal:  Eur Stroke J        ISSN: 2396-9873


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Authors:  Sheng-Feng Sung; Solomon Chih-Cheng Chen; Huey-Juan Lin; Chih-Hung Chen; Mei-Chiun Tseng; Chi-Shun Wu; Yung-Chu Hsu; Ling-Chien Hung; Yu-Wei Chen
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1.  Classification of Parkinson's disease and its stages using machine learning.

Authors:  John Michael Templeton; Christian Poellabauer; Sandra Schneider
Journal:  Sci Rep       Date:  2022-08-18       Impact factor: 4.996

  1 in total

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