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Analyzing entropy features in time-series data for pattern recognition in neurological conditions.
Huang, Yushan; Zhao, Yuchen; Capstick, Alexander; Palermo, Francesca; Haddadi, Hamed; Barnaghi, Payam.
Afiliación
  • Huang Y; Dyson School of Design Engineering, Imperial College London, London, UK; Great Ormond Street Hospital for Children, London, UK.
  • Zhao Y; Department of Computer Science, University of York, York, UK.
  • Capstick A; Department of Brain Sciences, Imperial College London, London, UK; Great Ormond Street Hospital for Children, London, UK.
  • Palermo F; Department of Brain Sciences, Imperial College London, London, UK; Great Ormond Street Hospital for Children, London, UK.
  • Haddadi H; Department of Computing, Imperial College London, London, UK.
  • Barnaghi P; Department of Brain Sciences, Imperial College London, London, UK; The Great Ormond Street Institute of Child Health, University College London, London, UK; Great Ormond Street Hospital for Children, London, UK; Care Research and Technology Centre, The UK Dementia Research Institute, London, UK. Ele
Artif Intell Med ; 150: 102821, 2024 04.
Article en En | MEDLINE | ID: mdl-38553161
ABSTRACT
In the field of medical diagnosis and patient monitoring, effective pattern recognition in neurological time-series data is essential. Traditional methods predominantly based on statistical or probabilistic learning and inference often struggle with multivariate, multi-source, state-varying, and noisy data while also posing privacy risks due to excessive information collection and modeling. Furthermore, these methods often overlook critical statistical information, such as the distribution of data points and inherent uncertainties. To address these challenges, we introduce an information theory-based pipeline that leverages specialized features to identify patterns in neurological time-series data while minimizing privacy risks. We incorporate various entropy methods based on the characteristics of different scenarios and entropy. For stochastic state transition applications, we incorporate Shannon's entropy, entropy rates, entropy production, and the von Neumann entropy of Markov chains. When state modeling is impractical, we select and employ approximate entropy, increment entropy, dispersion entropy, phase entropy, and slope entropy. The pipeline's effectiveness and scalability are demonstrated through pattern analysis in a dementia care dataset and also an epileptic and a myocardial infarction dataset. The results indicate that our information theory-based pipeline can achieve average performance improvements across various models on the recall rate, F1 score, and accuracy by up to 13.08 percentage points, while enhancing inference efficiency by reducing the number of model parameters by an average of 3.10 times. Thus, our approach opens a promising avenue for improved, efficient, and critical statistical information-considered pattern recognition in medical time-series data.
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Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Contexto en salud: 1_ASSA2030 Problema de salud: 1_financiamento_saude Asunto principal: Entropía Límite: Humans Idioma: En Revista: Artif Intell Med Asunto de la revista: INFORMATICA MEDICA Año: 2024 Tipo del documento: Article

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Contexto en salud: 1_ASSA2030 Problema de salud: 1_financiamento_saude Asunto principal: Entropía Límite: Humans Idioma: En Revista: Artif Intell Med Asunto de la revista: INFORMATICA MEDICA Año: 2024 Tipo del documento: Article
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