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10.3280/RSF2024-003008

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Elenco citazioni del 10.3280/RSF2024-003008

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Pompili E. DSM-5-TR: manuale diagnostico e statistico dei distur- bi mentali. American Psychiatric Association. 2023, Accessed: Sep- tember 06, 2024. [Online]. -- https://www.raffaellocortina.it/scheda-li- bro/american-psychiatric-association/dsm-5-tr-edizione-hardcov- er-9788832855173-3925.html.


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Grossi D, Trojano L. Lineamenti di neuropsicologia clinica. 2023, ac- cessed: September 06, 2024. -- [Online]. https://www.carocci.it/prodotto/lineamenti-di-neuropsicologia-clinica-3.


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Fara De Caro M. Modelli e profili neuropsicologici delle patologie neu- rodegenerative. Franco Angeli; 2022.


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Röhr S, Pabst SJ, Riedel-Helen SG, Jessen F, Tirana Y, Handajani YS, et al. Estimating prevalence of subjective cognitive decline in and across international cohort studies of aging: a cosmic study. Alzheimers Res Therapy Dec. 2020; vol. 12, no. 1.

https://doi.org/10.1186/s13195-020-00734-y


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Wang S, Bolling K, Mao W, Reichstadt J, Jeste D, Kim HC, Nebeker C. Technology to Support Aging in Place: Older Adults’ Perspectives. Healthcare Apr. 2019; vol.7, no.2: p.60.

https://doi.org/10.3390/healthcare7020060


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Qiu S, Miller MI, Joshi P, Lee JC. Multimodal deep learning for Alz- heimer’s disease dementia assessment. Nat Commun Dec. 2022; vol. 13, no. 1.

https://doi.org/10.1038/s41467-022-31037-5


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Kang MJ, Kim SY, Na DL, Kim BC. Prediction of cognitive impair- ment via deep learning trained with multi-center neuropsychological test data. BMC Med Inform Decision Making Nov. 2019; vol. 19.

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Basta M, Simos NJ, Zioga M, Zaganas I, Panagotakis S, Lionis C, Vgontzas AN. Personalized screening and risk profiles for Mild Cog- nitive Impairment via a Machine Learning Framework: Implications for general practice. Int J Med Inform Feb.2023; vol. 170.

https://doi.org/10.1016/j.ijmedinf.2022.104966


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Wang T, Hong Y, Wang Q, Su R, Ng ML, su J, et al. Identification of Mild Cognitive Impairment among Chinese Based on Multiple Spoken Tasks. Journal of Alzheimer’s Disease 2021; vol. 82, no. 1, pp. 185–204.

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Al Harkan K, Sultana N, Al Mulhim N, AlAbdulKader AM, Al- safwani N, Barnawi M, Alasqah K, et al. Artificial intelligence ap- proaches for early detection of neurocognitive disorders among older adults. Front Computer Neuroscience 2024; vol. 18.

https://doi.org/10.3389/fncom.2024.1307305


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Xue C, Kowshik SS, Lteif D, Puducheri S, Jasodanand VH, Zhou OT, et al. AI-based differential diagnosis of dementia etiologies on multi- modal data. Nat Med, 2024,

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Perovnik M, Vo A, Nguyen N, Jamsek J, Rus T, Tang CC, et al. Auto- mated differential diagnosis of dementia syndromes using FDG PET and machine learning. Front Aging Neuroscience Nov. 2022; vol. 14.

https://doi.org/10.3389/fnagi.2022.1005731


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Castellazzi G, Cuzzoni MG, Cotta Ramusino M, Martinelli D, Denaro F, Ricciardi A, et al. A Machine Learning Approach for the Differential Diagnosis of Alzheimer and Vascular Dementia. Fed by MRI Select- ed Features, Front Neuroinformation Jun. 2020; vol. 14.

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Brzezicki MA, Kobetić MD, Neumann S, Pennington C. Diagnostic ac- curacy of frontotemporal dementia. An artificial intelligence-powered study of symptoms, imaging and clinical judgement. Adv. Med Science Sep. 2019; vol. 64, no. 2, pp. 292–302.

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Peng B, Yao X, Risacher SL, Saykin AJ, Shen L, Ning X. Cognitive biomarker prioritization in Alzheimer’s Disease using brain morpho- metric data. BMC Med Inform Decision Making Dec. 2020; vol. 20, no. 1.

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Garcia-Gutierrez F, Delgado-Alvarez A, Delgado-Alonso C, Díaz-Ál- varez J, Pytel, Valles-Salgado M, et al. Diagnosis of Alzheimer’s dis- ease and behavioral variant frontotemporal dementia with machine learning-aided neuropsychological assessment using feature engineer- ing and genetic algorithms. Int J Geriatric Psychiatry Dec. 2022; vol. 37, no.2.

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Fayemiwo MA. Immediate word recall in cognitive assessment can predict dementia using machine-learning techniques. Alzheimers Res Therapy 2023; vol. 15, no. 1.

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Formica C. Paving the Way for Predicting the Progression of Cognitive Decline: The Potential Role of Machine Learning Algorithms in the Clinical Management of Neurodegenerative Disorders. J Pers Med Sep. 2023; vol. 13, no. 9.

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Jiménezjim C. Using XAI in the Clock Drawing Test to reveal the cog- nitive impairment pattern 2021.