Devising an interpretable calibrated scale to quantitatively assess the dementia stage of subjects with alzheimer's disease: A machine learning approach

Background: Machine learning and data mining techniques have been successfully applied on MRI images for detecting Alzheimer's disease (AD). But only a few studies have explored the possibility of AD detection from non-image data. These studies have applied traditional data visualization and cl...

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Main Authors: C.R. Aditya, M.B. Sanjay Pande
Format: Article
Language:English
Published: Elsevier 2017-01-01
Series:Informatics in Medicine Unlocked
Online Access:http://www.sciencedirect.com/science/article/pii/S2352914816300491
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spelling doaj-210db38fe1564e3c868bbfc5f81a13ae2020-11-25T01:28:31ZengElsevierInformatics in Medicine Unlocked2352-91482017-01-0162835Devising an interpretable calibrated scale to quantitatively assess the dementia stage of subjects with alzheimer's disease: A machine learning approachC.R. Aditya0M.B. Sanjay Pande1Department of CSE, VVIET, Mysuru, Karnataka, India; Visvesvaraya Technological University, Belgaum, Karnataka, India; Corresponding author at: Department of CSE, VVIET, Mysuru, Karnataka, India.Department of CSE, SITAR, Channapatna, Karnataka, India; Visvesvaraya Technological University, Belgaum, Karnataka, IndiaBackground: Machine learning and data mining techniques have been successfully applied on MRI images for detecting Alzheimer's disease (AD). But only a few studies have explored the possibility of AD detection from non-image data. These studies have applied traditional data visualization and classification algorithms. There is a need for new sophisticated learning algorithms, for detecting and quantifying the severity of AD by exploring the complex interactions between the features in AD subjects.Method: In this work, a supervised learning model to effectively capture the complex feature interactions, in the sample space of AD data, is presented for knowledge discovery. The discovered knowledge is further used to quantify the similarity of a test subject to the demented class.Results: Evaluation of the proposed model, on OASIS database of Alzheimer's subjects, validates the well established risk factors and identifiers for AD: Age, Socio-Economic Status, MMSE Score and Whole Brain Volume. The Test subjects are affiliated to either non-demented (ND) or AD class, with non-overlapping and measurable similarity indices: Female ND (CDR=0) [0.48â2.90], Female AD (CDR=0.5) [90.16â774.51], Female AD (CDR=1) [1633.90â7182.23], Female AD (CDR=2) [55258.51â66382.44], Male ND (CDR=0)[0.69â3.66], Male AD (CDR=0.5) [99.18â647.51] and Male AD (CDR=1) [3880.16â6519.40].Conclusion: The outcome of the work clearly demonstrates that, supervised learning model can be used effectively to quantify the severity of AD on a standard measurable scale. This scale of distance can be used as a supplement for clinical dementia rating. Keywords: Alzheimer's disease, Dementia, Multifactor dimensionality reduction, Knowledge discovery, Similarity measure, Affiliation analysishttp://www.sciencedirect.com/science/article/pii/S2352914816300491
collection DOAJ
language English
format Article
sources DOAJ
author C.R. Aditya
M.B. Sanjay Pande
spellingShingle C.R. Aditya
M.B. Sanjay Pande
Devising an interpretable calibrated scale to quantitatively assess the dementia stage of subjects with alzheimer's disease: A machine learning approach
Informatics in Medicine Unlocked
author_facet C.R. Aditya
M.B. Sanjay Pande
author_sort C.R. Aditya
title Devising an interpretable calibrated scale to quantitatively assess the dementia stage of subjects with alzheimer's disease: A machine learning approach
title_short Devising an interpretable calibrated scale to quantitatively assess the dementia stage of subjects with alzheimer's disease: A machine learning approach
title_full Devising an interpretable calibrated scale to quantitatively assess the dementia stage of subjects with alzheimer's disease: A machine learning approach
title_fullStr Devising an interpretable calibrated scale to quantitatively assess the dementia stage of subjects with alzheimer's disease: A machine learning approach
title_full_unstemmed Devising an interpretable calibrated scale to quantitatively assess the dementia stage of subjects with alzheimer's disease: A machine learning approach
title_sort devising an interpretable calibrated scale to quantitatively assess the dementia stage of subjects with alzheimer's disease: a machine learning approach
publisher Elsevier
series Informatics in Medicine Unlocked
issn 2352-9148
publishDate 2017-01-01
description Background: Machine learning and data mining techniques have been successfully applied on MRI images for detecting Alzheimer's disease (AD). But only a few studies have explored the possibility of AD detection from non-image data. These studies have applied traditional data visualization and classification algorithms. There is a need for new sophisticated learning algorithms, for detecting and quantifying the severity of AD by exploring the complex interactions between the features in AD subjects.Method: In this work, a supervised learning model to effectively capture the complex feature interactions, in the sample space of AD data, is presented for knowledge discovery. The discovered knowledge is further used to quantify the similarity of a test subject to the demented class.Results: Evaluation of the proposed model, on OASIS database of Alzheimer's subjects, validates the well established risk factors and identifiers for AD: Age, Socio-Economic Status, MMSE Score and Whole Brain Volume. The Test subjects are affiliated to either non-demented (ND) or AD class, with non-overlapping and measurable similarity indices: Female ND (CDR=0) [0.48â2.90], Female AD (CDR=0.5) [90.16â774.51], Female AD (CDR=1) [1633.90â7182.23], Female AD (CDR=2) [55258.51â66382.44], Male ND (CDR=0)[0.69â3.66], Male AD (CDR=0.5) [99.18â647.51] and Male AD (CDR=1) [3880.16â6519.40].Conclusion: The outcome of the work clearly demonstrates that, supervised learning model can be used effectively to quantify the severity of AD on a standard measurable scale. This scale of distance can be used as a supplement for clinical dementia rating. Keywords: Alzheimer's disease, Dementia, Multifactor dimensionality reduction, Knowledge discovery, Similarity measure, Affiliation analysis
url http://www.sciencedirect.com/science/article/pii/S2352914816300491
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