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Published in: BMC Medical Informatics and Decision Making 1/2023

Open Access 01-12-2023 | Dementia | Article

Performance of machine learning algorithms for dementia assessment: impacts of language tasks, recording media, and modalities

Authors: Mahboobeh (Mah) Parsapoor (Parsa), Muhammad Raisul Alam, Alex Mihailidis

Published in: BMC Medical Informatics and Decision Making | Issue 1/2023

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Abstract

Objectives

Automatic speech and language assessment methods (SLAMs) can help clinicians assess speech and language impairments associated with dementia in older adults. The basis of any automatic SLAMs is a machine learning (ML) classifier that is trained on participants’ speech and language. However, language tasks, recording media, and modalities impact the performance of ML classifiers. Thus, this research has focused on evaluating the effects of the above-mentioned factors on the performance of ML classifiers that can be used for dementia assessment.

Methodology

Our methodology includes the following steps: (1) Collecting speech and language datasets from patients and healthy controls; (2) Using feature engineering methods which include feature extraction methods to extract linguistic and acoustic features and feature selection methods to select most informative features; (3) Training different ML classifiers; and (4) Evaluating the performance of ML classifiers to investigate the impacts of language tasks, recording media, and modalities on dementia assessment.

Results

Our results show that (1) the ML classifiers trained with the picture description language task perform better than the classifiers trained with the story recall language task; (2) the data obtained from phone-based recordings improves the performance of ML classifiers compared to data obtained from web-based recordings; and (3) the ML classifiers trained with acoustic features perform better than the classifiers trained with linguistic features.

Conclusion

This research demonstrates that we can improve the performance of automatic SLAMs as dementia assessment methods if we: (1) Use the picture description task to obtain participants’ speech; (2) Collect participants’ voices via phone-based recordings; and (3) Train ML classifiers using only acoustic features. Our proposed methodology will help future researchers to investigate the impacts of different factors on the performance of ML classifiers for assessing dementia.
Footnotes
1
MCI refers to the condition where an older adult experiences cognitive impairment especially in tasks related to orientation and judgment [8].
 
2
It collected as a part of a project named TalkBank and has been done as a part of the Alzheimer Research Program at the University of Pittsburgh. The DB dataset was collected longitudinally, between 1983 and 1988, every year from around 200 patients with AD and 100 healthy controls.
 
3
It contains several subcorpora, generated according to neuropsychological tasks performed by the participants: (1) the Cookie Theft of the PDT (note that the participants’ speech related to this task have been transcribed), (2) the word (3) LFT, (4) the SRT, and (5) the sentence construction task.
 
4
Patients have been diagnosed by physicians from three hospitals in Toronto.
 
5
To collect speech data, the description of each task was provided for patients and healthy controls. Our trained examiners described tasks and provided them with examples to instruct them on how the task could be done.
 
6
All participants, who attended remotely, used phone line or web-interface to record their speeches. They asked to be in a place without background noise. The noisy speeches have been deleted.
 
7
Each subject has signed a consent form that was approved by the Research Ethics Board protocol 31127 of the University of Toronto.
 
8
Examiners explain to participants how they should complete language tasks. For example, for the PDT, they use the Cookie Theft picture or the Picnic Scene and tell participants describe everything they can see in this picture.
 
9
Thus, participants were shown a short passage with one of the following options (1) My Grandfather, (2) Rainbow or (3) Limpy.
 
10
People with dementia may use first person singular pronouns than physicians perhaps as a way of focusing attention on their perspective [56].
 
11
SA provides sentence embedding by averaging generated word embeddings from text files.
 
12
SIF provides sentence embedding by calculating the weighted average of word embeddings and removing their first principal component.
 
13
Coefficient of variation.
 
Literature
1.
go back to reference Ripich DN, Horner J. The neurodegenerative dementias: diagnoses and interventions. ASHA Lead. 2004;9(8):4–15.CrossRef Ripich DN, Horner J. The neurodegenerative dementias: diagnoses and interventions. ASHA Lead. 2004;9(8):4–15.CrossRef
2.
go back to reference Nichols E, Szoeke CE, Vollset SE, Abbasi N, Abd-Allah F, Abdela J, Aichour MTE, Akinyemi RO, Alahdab F, Asgedom SW, et al. Global, regional, and national burden of Alztteimer’s disease and other dementias, 1990–2016: a systematic analysis for the global burden of disease study 2016. Lancet Neurol. 2019;18(1):88–106.CrossRef Nichols E, Szoeke CE, Vollset SE, Abbasi N, Abd-Allah F, Abdela J, Aichour MTE, Akinyemi RO, Alahdab F, Asgedom SW, et al. Global, regional, and national burden of Alztteimer’s disease and other dementias, 1990–2016: a systematic analysis for the global burden of disease study 2016. Lancet Neurol. 2019;18(1):88–106.CrossRef
3.
go back to reference SantaCruz K, Swagerty DL Jr. Early diagnosis of dementia. Am Fam Physician. 2001;63(4):703.PubMed SantaCruz K, Swagerty DL Jr. Early diagnosis of dementia. Am Fam Physician. 2001;63(4):703.PubMed
4.
go back to reference Green R, Clarke V, Thompson N, Woodard J, Letz R. Early detection of alzheimer disease: methods, markers, and misgivings. Alzheimer Dis Assoc Disord. 1997;11(5):1. Green R, Clarke V, Thompson N, Woodard J, Letz R. Early detection of alzheimer disease: methods, markers, and misgivings. Alzheimer Dis Assoc Disord. 1997;11(5):1.
5.
go back to reference Logsdon RG, McCurry SM, Teri L. Evidence-based interventions to improve quality of life for individuals with dementia. Alzheimer’s Care Today. 2007;8(4):309.PubMedPubMedCentral Logsdon RG, McCurry SM, Teri L. Evidence-based interventions to improve quality of life for individuals with dementia. Alzheimer’s Care Today. 2007;8(4):309.PubMedPubMedCentral
6.
go back to reference Kalish VB, Lerner B. Mini-mental state examination for the detection of dementia in older patients. Am Fam Physician. 2016;94(11):880–1. Kalish VB, Lerner B. Mini-mental state examination for the detection of dementia in older patients. Am Fam Physician. 2016;94(11):880–1.
7.
go back to reference Daly MP. Initial evaluation of the patient with suspected dementia. Am Fam Physician. 2005;71(9):1745–50.PubMed Daly MP. Initial evaluation of the patient with suspected dementia. Am Fam Physician. 2005;71(9):1745–50.PubMed
8.
go back to reference Chiu P-Y, Tang H, Wei C-Y, Zhang C, Hung G-U, Zhou W. Nmd-12: a new machine-learning derived screening instrument to detect mild cognitive impairment and dementia. PLoS ONE. 2019;14(3):e0213430.CrossRefPubMedPubMedCentral Chiu P-Y, Tang H, Wei C-Y, Zhang C, Hung G-U, Zhou W. Nmd-12: a new machine-learning derived screening instrument to detect mild cognitive impairment and dementia. PLoS ONE. 2019;14(3):e0213430.CrossRefPubMedPubMedCentral
9.
go back to reference Nasreddine ZS, Phillips NA, Bédirian V, Charbonneau S, Whitehead V, Collin I, Cummings JL, Chertkow H. The Montreal cognitive assessment, MOCA: a brief screening tool for mild cognitive impairment. J Am Geriatr Soc. 2005;53(4):695–9.CrossRefPubMed Nasreddine ZS, Phillips NA, Bédirian V, Charbonneau S, Whitehead V, Collin I, Cummings JL, Chertkow H. The Montreal cognitive assessment, MOCA: a brief screening tool for mild cognitive impairment. J Am Geriatr Soc. 2005;53(4):695–9.CrossRefPubMed
10.
go back to reference Chaves ML, Godinho CC, Porto CS, Mansur L, Carthery-Goulart MT, Yassuda MS, Beato R. Cognitive, functional and behavioral assessment: alzheimer’s disease. Dement Neuropsychol. 2011. Chaves ML, Godinho CC, Porto CS, Mansur L, Carthery-Goulart MT, Yassuda MS, Beato R. Cognitive, functional and behavioral assessment: alzheimer’s disease. Dement Neuropsychol. 2011.
12.
go back to reference Klimova B, Maresova P, Valis M, Hort J, Kuca K. Alzheimer’s disease and language impairments: social intervention and medical treatment. Clin Intervent Aging. 2015;10:1401. Klimova B, Maresova P, Valis M, Hort J, Kuca K. Alzheimer’s disease and language impairments: social intervention and medical treatment. Clin Intervent Aging. 2015;10:1401.
13.
go back to reference Godino-Llorente JI, Gómez-Vilda P, Sáenz-Lechón N, Blanco-Velasco M, Cruz-Roldán F, Ferrer-Ballester MA. Support vector machines applied to the detection of voice disorders. In: International conference on nonlinear analyses and algorithms for speech processing. Springer; 2005, p. 219–230. Godino-Llorente JI, Gómez-Vilda P, Sáenz-Lechón N, Blanco-Velasco M, Cruz-Roldán F, Ferrer-Ballester MA. Support vector machines applied to the detection of voice disorders. In: International conference on nonlinear analyses and algorithms for speech processing. Springer; 2005, p. 219–230.
14.
go back to reference Guinn CI, Habash A. Language analysis of speakers with dementia of the alzheimer’s type. In: 2012 AAAI fall symposium series. 2012. Guinn CI, Habash A. Language analysis of speakers with dementia of the alzheimer’s type. In: 2012 AAAI fall symposium series. 2012.
16.
go back to reference Asgari M, Kaye J, Dodge H. Predicting mild cognitive impairment from spontaneous spoken utterances. Alzheimer’s Dement Transl Res Clin Interv. 2017;3(2):219–28.CrossRef Asgari M, Kaye J, Dodge H. Predicting mild cognitive impairment from spontaneous spoken utterances. Alzheimer’s Dement Transl Res Clin Interv. 2017;3(2):219–28.CrossRef
17.
go back to reference Karlekar S, Niu T, Bansal M. Detecting linguistic characteristics of alzheimer’s dementia by interpreting neural models. 2018. arXiv preprint arXiv:1804.06440. Karlekar S, Niu T, Bansal M. Detecting linguistic characteristics of alzheimer’s dementia by interpreting neural models. 2018. arXiv preprint arXiv:​1804.​06440.
21.
go back to reference Mirheidari B, Blackburn D, O’Malley R, Walker T, Venneri A, Reuber M, Christensen H. Computational cognitive assessment: investigating the use of an intelligent virtual agent for the detection of early signs of dementia. In: ICASSP 2019–2019 IEEE international conference on acoustics, speech and signal processing (ICASSP). 2019, p. 2732–2736. https://doi.org/10.1109/ICASSP.2019.8682423. Mirheidari B, Blackburn D, O’Malley R, Walker T, Venneri A, Reuber M, Christensen H. Computational cognitive assessment: investigating the use of an intelligent virtual agent for the detection of early signs of dementia. In: ICASSP 2019–2019 IEEE international conference on acoustics, speech and signal processing (ICASSP). 2019, p. 2732–2736. https://​doi.​org/​10.​1109/​ICASSP.​2019.​8682423.
24.
go back to reference Klumpp P, Fritsch J, Noeth E. Ann-based alzheimer’s disease classification from bag of words. In: Speech communication; 13th ITG-symposium. 2018, p. 1–4. Klumpp P, Fritsch J, Noeth E. Ann-based alzheimer’s disease classification from bag of words. In: Speech communication; 13th ITG-symposium. 2018, p. 1–4.
27.
go back to reference Wankerl S, Nöth E, Evert S. An n-gram based approach to the automatic diagnosis of alzheimer’s disease from spoken language. In: INTERSPEECH. 2017. Wankerl S, Nöth E, Evert S. An n-gram based approach to the automatic diagnosis of alzheimer’s disease from spoken language. In: INTERSPEECH. 2017.
30.
go back to reference König A, Satt A, Sorin A, Hoory R, Toledo-Ronen O, Derreumaux A, Manera V, Verhey F, Aalten P, Robert PH, et al. Automatic speech analysis for the assessment of patients with predementia and alzheimer’s disease. Alzheimer’s Dement Diagn Assess Dis Monit. 2015;1(1):112–24. König A, Satt A, Sorin A, Hoory R, Toledo-Ronen O, Derreumaux A, Manera V, Verhey F, Aalten P, Robert PH, et al. Automatic speech analysis for the assessment of patients with predementia and alzheimer’s disease. Alzheimer’s Dement Diagn Assess Dis Monit. 2015;1(1):112–24.
34.
go back to reference Mittal A, Sahoo S, Datar A, Kadiwala J, Shalu H, Mathew J. Multi-modal detection of alzheimer’s disease from speech and text. 2020. ArXiv arXiv:2012.00096. Mittal A, Sahoo S, Datar A, Kadiwala J, Shalu H, Mathew J. Multi-modal detection of alzheimer’s disease from speech and text. 2020. ArXiv arXiv:​2012.​00096.
35.
go back to reference Tóth L, Gosztolya G, Vincze V, Hoffmann I, Szatlóczki G, Biró E, Zsura F, Pákáski M, Kálmán J. Automatic detection of mild cognitive impairment from spontaneous speech using ASR. In: INTERSPEECH. 2015. Tóth L, Gosztolya G, Vincze V, Hoffmann I, Szatlóczki G, Biró E, Zsura F, Pákáski M, Kálmán J. Automatic detection of mild cognitive impairment from spontaneous speech using ASR. In: INTERSPEECH. 2015.
37.
go back to reference Pan Y, Mirheidari B, Reuber M, Venneri A, Blackburn D, Christensen H. Automatic hierarchical attention neural network for detecting ad. Proc Interspeech. 2019;2019:4105–9. Pan Y, Mirheidari B, Reuber M, Venneri A, Blackburn D, Christensen H. Automatic hierarchical attention neural network for detecting ad. Proc Interspeech. 2019;2019:4105–9.
39.
go back to reference Becker JT, Boiler F, Lopez OL, Saxton J, McGonigle KL. The natural history of alzheimer’s disease: description of study cohort and accuracy of diagnosis. Arch Neurol. 1994;51(6):585–94.CrossRefPubMed Becker JT, Boiler F, Lopez OL, Saxton J, McGonigle KL. The natural history of alzheimer’s disease: description of study cohort and accuracy of diagnosis. Arch Neurol. 1994;51(6):585–94.CrossRefPubMed
41.
44.
go back to reference Orimaye SO, Wong JS, Golden KJ, Wong CP, Soyiri IN. Predicting probable alzheimer’s disease using linguistic deficits and biomarkers. BMC Bioinform. 2017;18(1):34.CrossRef Orimaye SO, Wong JS, Golden KJ, Wong CP, Soyiri IN. Predicting probable alzheimer’s disease using linguistic deficits and biomarkers. BMC Bioinform. 2017;18(1):34.CrossRef
45.
go back to reference Hernández-Domínguez L, Ratté S, Sierra-Martínez G, Roche-Bergua A. Computer-based evaluation of alzheimer’s disease and mild cognitive impairment patients during a picture description task. Alzheimer’s Dement Diagn Assess Dis Monit. 2018;10:260–8. Hernández-Domínguez L, Ratté S, Sierra-Martínez G, Roche-Bergua A. Computer-based evaluation of alzheimer’s disease and mild cognitive impairment patients during a picture description task. Alzheimer’s Dement Diagn Assess Dis Monit. 2018;10:260–8.
49.
go back to reference Warnita T, Inoue N, Shinoda K. Detecting Alzheimer’s disease using gated convolutional neural network from audio data. 2018. arXiv:1803.11344 Warnita T, Inoue N, Shinoda K. Detecting Alzheimer’s disease using gated convolutional neural network from audio data. 2018. arXiv:​1803.​11344
51.
go back to reference Pasrapoor M, Bilstrup U. An emotional learning-inspired ensemble classifier (eliec). In: 2013 Federated conference on computer science and information systems. IEEE. 2013, p. 137–141. Pasrapoor M, Bilstrup U. An emotional learning-inspired ensemble classifier (eliec). In: 2013 Federated conference on computer science and information systems. IEEE. 2013, p. 137–141.
52.
go back to reference Slegers A, Filiou R-P, Montembeault M, Brambati SM. Connected speech features from picture description in alzheimer’s disease: a systematic review. J Alzheimer’s Dis. 2018;26. Slegers A, Filiou R-P, Montembeault M, Brambati SM. Connected speech features from picture description in alzheimer’s disease: a systematic review. J Alzheimer’s Dis. 2018;26.
53.
go back to reference Loper E, Bird S. Nltk: The natural language toolkit. In: Proceedings of the ACL workshop on effective tools and methodologies for teaching natural language processing and computational linguistics. Philadelphia: Association for Computational Linguistics; 2002. Loper E, Bird S. Nltk: The natural language toolkit. In: Proceedings of the ACL workshop on effective tools and methodologies for teaching natural language processing and computational linguistics. Philadelphia: Association for Computational Linguistics; 2002.
54.
go back to reference Malvern D, Richards B, Chipere N, Durán P. Lexical diversity and language development. Springer. Malvern D, Richards B, Chipere N, Durán P. Lexical diversity and language development. Springer.
55.
go back to reference Kincaid JP, Fishburne Jr RP, Rogers RL, Chissom BS. Derivation of new readability formulas (automated readability index, fog count and flesch reading ease formula) for navy enlisted personnel. 1975. Kincaid JP, Fishburne Jr RP, Rogers RL, Chissom BS. Derivation of new readability formulas (automated readability index, fog count and flesch reading ease formula) for navy enlisted personnel. 1975.
56.
go back to reference Sakai EY, Carpenter BD. Linguistic features of power dynamics in triadic dementia diagnostic conversations. Patient Educ Counsel. 2011;85(2):295–8.CrossRef Sakai EY, Carpenter BD. Linguistic features of power dynamics in triadic dementia diagnostic conversations. Patient Educ Counsel. 2011;85(2):295–8.CrossRef
57.
go back to reference Komeili M, Pou-Prom C, Liaqat D, Fraser KC, Yancheva M, Rudzicz F. Talk2me: automated linguistic data collection for personal assessment. PLoS ONE. 2019;14(3):e0212342.CrossRefPubMedPubMedCentral Komeili M, Pou-Prom C, Liaqat D, Fraser KC, Yancheva M, Rudzicz F. Talk2me: automated linguistic data collection for personal assessment. PLoS ONE. 2019;14(3):e0212342.CrossRefPubMedPubMedCentral
58.
go back to reference Peelle JE, Cooke A, Moore P, Vesely L, Grossman M. Syntactic and thematic components of sentence processing in progressive nonfluent aphasia and nonaphasic frontotemporal dementia. J Neurolinguist. 2007;20(6):482–94.CrossRef Peelle JE, Cooke A, Moore P, Vesely L, Grossman M. Syntactic and thematic components of sentence processing in progressive nonfluent aphasia and nonaphasic frontotemporal dementia. J Neurolinguist. 2007;20(6):482–94.CrossRef
59.
go back to reference Arora S, Liang Y, Ma T. A simple but tough-to-beat baseline for sentence embeddings. 2016. Arora S, Liang Y, Ma T. A simple but tough-to-beat baseline for sentence embeddings. 2016.
61.
go back to reference Blei DM, Ng AY, Jordan MI. Latent Dirichlet allocation. J Mach Learn Res. 2003;3(1):993–1022. Blei DM, Ng AY, Jordan MI. Latent Dirichlet allocation. J Mach Learn Res. 2003;3(1):993–1022.
62.
go back to reference Landauer TK, Foltz PW, Laham D. An introduction to latent semantic analysis. Discourse Process. 1998;25(2–3):259–84.CrossRef Landauer TK, Foltz PW, Laham D. An introduction to latent semantic analysis. Discourse Process. 1998;25(2–3):259–84.CrossRef
63.
go back to reference Yancheva M, Fraser KC, Rudzicz F. Using linguistic features longitudinally to predict clinical scores for alzheimer’s disease and related dementias. In: Proceedings of SLPAT 2015: 6th workshop on speech and language processing for assistive technologies. 2015, p. 134–139. Yancheva M, Fraser KC, Rudzicz F. Using linguistic features longitudinally to predict clinical scores for alzheimer’s disease and related dementias. In: Proceedings of SLPAT 2015: 6th workshop on speech and language processing for assistive technologies. 2015, p. 134–139.
64.
go back to reference Fraser KC, Meltzer JA, Rudzicz F. Linguistic features identify alzheimer’s disease in narrative speech. J Alzheimer’s Dis. 2016;49(2):407–22.CrossRef Fraser KC, Meltzer JA, Rudzicz F. Linguistic features identify alzheimer’s disease in narrative speech. J Alzheimer’s Dis. 2016;49(2):407–22.CrossRef
65.
66.
go back to reference McLoughlin IV, Thambipillai S. Lsp parameter interpretation for speech classification. In: ICECS’99. Proceedings of ICECS’99. 6th IEEE international conference on electronics, circuits and systems (cat. no. 99EX357), vol. 1. IEEE; 1999, p. 419–422. McLoughlin IV, Thambipillai S. Lsp parameter interpretation for speech classification. In: ICECS’99. Proceedings of ICECS’99. 6th IEEE international conference on electronics, circuits and systems (cat. no. 99EX357), vol. 1. IEEE; 1999, p. 419–422.
67.
go back to reference De Cheveigné A, Yin HK. A fundamental frequency estimator for speech and music. J Acoust Soc Am. 2002;111(4):1917–30.CrossRefPubMed De Cheveigné A, Yin HK. A fundamental frequency estimator for speech and music. J Acoust Soc Am. 2002;111(4):1917–30.CrossRefPubMed
68.
go back to reference Tsanas A, Little MA, McSharry PE, Ramig LO. Nonlinear speech analysis algorithms mapped to a standard metric achieve clinically useful quantification of average parkinson’s disease symptom severity. J R Soc Interface. 2011;8(59):842–55.CrossRefPubMed Tsanas A, Little MA, McSharry PE, Ramig LO. Nonlinear speech analysis algorithms mapped to a standard metric achieve clinically useful quantification of average parkinson’s disease symptom severity. J R Soc Interface. 2011;8(59):842–55.CrossRefPubMed
70.
go back to reference Meilán JJG, Martínez-Sánchez F, Carro J, López DE, Millian-Morell L, Arana JM. Speech in alzheimer’s disease: Can temporal and acoustic parameters discriminate dementia? Dement Geriat Cogn Disord. 2014;37(5–6):327–34.CrossRef Meilán JJG, Martínez-Sánchez F, Carro J, López DE, Millian-Morell L, Arana JM. Speech in alzheimer’s disease: Can temporal and acoustic parameters discriminate dementia? Dement Geriat Cogn Disord. 2014;37(5–6):327–34.CrossRef
71.
go back to reference Lopez-de-Ipina K, Alonso JB, Travieso CM, Egiraun H, Ecay M, Ezeiza A, Barroso N, Martinez-Lage P. Automatic analysis of emotional response based on non-linear speech modeling oriented to alzheimer disease diagnosis. In: 2013 IEEE 17th international conference on intelligent engineering systems (INES). IEEE; 2013, p. 61–64. Lopez-de-Ipina K, Alonso JB, Travieso CM, Egiraun H, Ecay M, Ezeiza A, Barroso N, Martinez-Lage P. Automatic analysis of emotional response based on non-linear speech modeling oriented to alzheimer disease diagnosis. In: 2013 IEEE 17th international conference on intelligent engineering systems (INES). IEEE; 2013, p. 61–64.
72.
go back to reference Pedregosa F, Varoquaux G, Gramfort A, Michel V, Thirion B, Grisel O, Blondel M, Prettenhofer P, Weiss R, Dubourg V, et al. Scikit-learn: machine learning in python. J Mach Learn Res. 2011;12(10):2825–30. Pedregosa F, Varoquaux G, Gramfort A, Michel V, Thirion B, Grisel O, Blondel M, Prettenhofer P, Weiss R, Dubourg V, et al. Scikit-learn: machine learning in python. J Mach Learn Res. 2011;12(10):2825–30.
73.
go back to reference Molodynski A, Linden M, Juckel G, Yeeles K, Anderson C, Vazquez-Montes M, Burns T. The reliability, validity, and applicability of an English language version of the MINI-ICF-app. Soc Psychiatry Psychiat Epidemiol. 2013;48(8):1347–54.CrossRef Molodynski A, Linden M, Juckel G, Yeeles K, Anderson C, Vazquez-Montes M, Burns T. The reliability, validity, and applicability of an English language version of the MINI-ICF-app. Soc Psychiatry Psychiat Epidemiol. 2013;48(8):1347–54.CrossRef
74.
go back to reference Barocas S, Hardt M, Narayanan A. Fairness in machine learning. Barocas S, Hardt M, Narayanan A. Fairness in machine learning.
75.
76.
go back to reference Burr C, Morley J, Taddeo M, Floridi L. Digital psychiatry: risks and opportunities for public health and wellbeing. IEEE Trans Technol Soc. 2020;1(1):21–33.CrossRef Burr C, Morley J, Taddeo M, Floridi L. Digital psychiatry: risks and opportunities for public health and wellbeing. IEEE Trans Technol Soc. 2020;1(1):21–33.CrossRef
78.
go back to reference Domingos P. A few useful things to know about machine learning. Commun ACM. 2012;55(10):78–87.CrossRef Domingos P. A few useful things to know about machine learning. Commun ACM. 2012;55(10):78–87.CrossRef
Metadata
Title
Performance of machine learning algorithms for dementia assessment: impacts of language tasks, recording media, and modalities
Authors
Mahboobeh (Mah) Parsapoor (Parsa)
Muhammad Raisul Alam
Alex Mihailidis
Publication date
01-12-2023
Publisher
BioMed Central
Keywords
Dementia
Dementia
Published in
BMC Medical Informatics and Decision Making / Issue 1/2023
Electronic ISSN: 1472-6947
DOI
https://doi.org/10.1186/s12911-023-02122-6

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