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Combining data mining and text mining for detection of early stage dementia:the SAMS framework

Authors :
Bull, Christopher Neil
Asfiandy, Dommy
Gledson, Ann
Mellor, Joseph
Couth, Samuel
Stringer, Gemma
Rayson, Paul Edward
Sutcliffe, Alistair Gordon Simpson
Keane, John
Zeng, Xiao-Jun
Burns, Alistair
Leroi, Iracema
Ballard, Clive
Sawyer, Peter Harvey
Bull, Christopher Neil
Asfiandy, Dommy
Gledson, Ann
Mellor, Joseph
Couth, Samuel
Stringer, Gemma
Rayson, Paul Edward
Sutcliffe, Alistair Gordon Simpson
Keane, John
Zeng, Xiao-Jun
Burns, Alistair
Leroi, Iracema
Ballard, Clive
Sawyer, Peter Harvey
Publication Year :
2016

Abstract

In this paper, we describe the open-source SAMS framework whose novelty lies in bringing together both data collection (keystrokes, mouse movements, application pathways) and text collection (email, documents, diaries) and analysis methodologies. The aim of SAMS is to provide a non-invasive method for large scale collection, secure storage, retrieval and analysis of an individual’s computer usage for the detection of cognitive decline, and to infer whether this decline is consistent with the early stages of dementia. The framework will allow evaluation and study by medical professionals in which data and textual features can be linked to deficits in cognitive domains that are characteristic of dementia. Having described requirements gathering and ethical concerns in previous papers, here we focus on the implementation of the data and text collection components.

Details

Database :
OAIster
Notes :
application/pdf, https://eprints.lancs.ac.uk/id/eprint/79004/1/combining_data_mining.pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.ocn953959859
Document Type :
Electronic Resource