| Literature DB >> 33323116 |
KongFatt Wong-Lin1, Paula L McClean2, Niamh McCombe3, Daman Kaur2, Jose M Sanchez-Bornot3, Paddy Gillespie4, Stephen Todd5, David P Finn6, Alok Joshi3, Joseph Kane7, Bernadette McGuinness7.
Abstract
BACKGROUND: Dementia is caused by a variety of neurodegenerative diseases and is associated with a decline in memory and other cognitive abilities, while inflicting an enormous socioeconomic burden. The complexity of dementia and its associated comorbidities presents immense challenges for dementia research and care, particularly in clinical decision-making. MAIN BODY: Despite the lack of disease-modifying therapies, there is an increasing and urgent need to make timely and accurate clinical decisions in dementia diagnosis and prognosis to allow appropriate care and treatment. However, the dementia care pathway is currently suboptimal. We propose that through computational approaches, understanding of dementia aetiology could be improved, and dementia assessments could be more standardised, objective and efficient. In particular, we suggest that these will involve appropriate data infrastructure, the use of data-driven computational neurology approaches and the development of practical clinical decision support systems. We also discuss the technical, structural, economic, political and policy-making challenges that accompany such implementations.Entities:
Keywords: Alzheimer’s disease; Clinical decision support systems; Computational modelling; Computational neurology; Computational neuroscience; Data science; Dementia; Dementia care pathway; Healthcare economics
Year: 2020 PMID: 33323116 PMCID: PMC7738245 DOI: 10.1186/s12916-020-01841-1
Source DB: PubMed Journal: BMC Med ISSN: 1741-7015 Impact factor: 8.775
Fig. 1Flowchart of the UK dementia care pathway under the NICE guidelines and potential disruption. Includes primary and secondary (specialist) care. Blue and purple texts: potential time delays and under/misdiagnoses and also opportunities for technologies and novel dementia markers. Flowchart based on [19]
Summary of the UK’s primary and secondary (specialist) care diagnosis for people aged 40 years old and over with a suspected diagnosis of dementia [18]
| | Potential diagnostic variables include the following: • Clinical history • Clinical cognitive assessment • Neuropsychological testing • Physical examination • Medication review |
| | Potential diagnostic variables include the following: • Specified diagnostic criteria • Structural imaging (magnetic resonance imaging (MRI) and computed tomography (CT)) • Single-photon emission computed tomography (SPECT) (e.g. blood flow, dopamine) • Positron emission tomography (PET) (e.g. fluorodeoxyglucose (FDG), amyloid) • Cerebrospinal fluid (CSF) examination • Electroencephalography (EEG) • Brain biopsy • Neuropsychological assessment • Functional assessment • Genetic testing • Neurological examination |
Fig. 2Schematic of computational and theoretical approaches in computational neurology: from fundamental research to clinical applications. Blue boxes: small or focused data; brown boxes: larger or more heterogeneous data. Arrows: relationships. Sometimes, artificial intelligence (AI), data mining and machine learning methods are also used in relatively smaller or less heterogeneous data to guide mechanistic modelling (not shown)