Open Access

Precognition of mental health and neurogenerative disorders using AI-parsed text and sentiment analysis


Cite

J. Abhishek, R. Raja, AI for the detection of neurological condition: Parkinson’s disease & emotions, i-manager’s Journal on Artificial Intelligence & Machine Learning (JAIM) 1, 1 (2023) 34–40. ⇒361 Search in Google Scholar

G. Ahmad, J. Singla, A. Anis, A. Reshi, A. Salameh, Machine learning techniques for sentiment analysis of code-mixed and switched indian social media text corpus - a comprehensive review, International Journal of Advanced Computer Science and Applications 13, 2 (2022) 455–467. ⇒391 Search in Google Scholar

Z. Alirezaei, M. Pourhanifeh, S. Borran, M. Nejati, H. Mirzaei, M. Hamblin, Neurofilament light chain as a biomarker, and correlation with magnetic resonance imaging in diagnosis of cns-related disorders, Molecular Neurobiology 57, (2019) 469–491. ⇒362 Search in Google Scholar

I. Akushevich, J. Kravchenko, A. Yashkin, P. Doraiswamy, C. Hill, Expanding the scope of health disparities research in alzheimer’s disease and related dementias, Alzheimer’s & Dementia: Diagnosis, Assessment & Disease Monitoring 15, 1 (2023) e12415. ⇒361 Search in Google Scholar

F. Amato, L. Borzì, G. Olmo, J. Orozco-Arroyave, An algorithm for parkinson’s disease speech classification based on isolated words analysis, Health Information Science and Systems 9, (2021) 32. ⇒367 Search in Google Scholar

K. Atchison, S. Shafiq, D. Ewert, A. Leung, Z. Goodarzi, Detecting anxiety in long-term care residents: a systematic review, Canadian Journal on Aging / La Revue Canadienne Du Vieillissement 42, 1 (2022) 92-101. ⇒371 Search in Google Scholar

I. Baek, E. Lee, J. Kim, Di erences in anxiety sensitivity factors between anxiety and depressive disorders, Depression and Anxiety 36, 10 (2019) 968–974. ⇒361 Search in Google Scholar

Q. Baker, F. Shatnawi, S. Rawashdeh, M. Al-Smadi, Y. Jararweh, Detecting epidemic diseases using sentiment analysis of arabic tweets, Journal of Universal Computer Science 26, 1 (2020) 50–70. ⇒365 Search in Google Scholar

F. Bessière, B. Mondésert, M. Chaix, P. Khairy, Arrhythmias in adults with congenital heart disease and heart failure., Heart Rhythm O2 2, 6 (2020) 744–753. ⇒379 Search in Google Scholar

A. Bíró, K.T. Jánosi-Rancz, L. Szilágyi, A.I. Cuesta-Vargas, J. Martín-Martín, S.M. Szilágyi, Visual Object Detection with DETR to Support Video-Diagnosis Using Conference Tools, Applied Sciences 12, 12 (2022) 5977. ⇒368, 392, 393 Search in Google Scholar

G. Bologna, A rule extraction technique applied to ensembles of neural networks, random forests, and gradient-boosted trees. Algorithms, 14(12), (2021) 339. ⇒381 Search in Google Scholar

A. Bothra, Y. Cao, J.Černý, G. Arora, The epidemiology of infectious diseases meets AI: a match made in heaven, Pathogens 12, 2 (2023) 317. ⇒361 Search in Google Scholar

J. Breslau, E. Leckman-Westin, H. Yu, B. Han, R. Pritam, D. Guarasi, M. Horvitz-Lennon, D.M. Scharf, H.A. Pincus, M.T. Finnerty Impact of a mental health based primary care program on quality of physical health care, Administration and Policy in Mental Health and Mental Health Services Research 45, 2 (2017) 276–285. ⇒365 Search in Google Scholar

E. Brindal, N. Kakoschke, S. Golley, M. Rebuli, D. Baird, E ectiveness and feasibility of a self-guided mobile app targeting emotional well-being in healthy adults: 4-week randomized controlled trial, Jmir Mental Health 10, (2023) e44925. ⇒366 Search in Google Scholar

R. Calleja, J. Mas, S. Abraha, J. Nolan, O. Harrison, G. Tadros, A. Matic, Machine learning model to predict mental health crises from electronic health records, Nature Medicine 28, 6 (2022) 1240–1248. ⇒365 Search in Google Scholar

S. Chakraborty, H. Paul, S. Ghatak, S. Pandey, A. Kumar, K. Singh, M. Shah, An AI-based medical chatbot model for infectious disease prediction, IEEE Access 10, (2022) 128469–128483. ⇒361 Search in Google Scholar

R. Cooper, Diagnostic and statistical manual of mental disorders (dsm), Knowledge Organization 44, 8 (2017) 668–676. ⇒362 Search in Google Scholar

J. Davis, A. Fischl, J. Beck, L. Browning, A. Carter, J. Condon, et al., 2022 national standards for diabetes self-management education and support, Diabetes Spectrum 35, 2 (2022) 137–149. ⇒378 Search in Google Scholar

D. Dixit, V. Mittal, Y. Sharma, Voice parameter analysis for the disease detection, IOSR Journal of Electronics and Communication Engineering 9, 3 (2014) 48–55. ⇒392 Search in Google Scholar

S. Dixit, K. Bohre, Y. Singh, Y. Himeur, W. Mansoor, S. Atalla, S., K. Srinivasan, A comprehensive review on ai-enabled models for Parkinson’s disease diagnosis, Electronics 12, 4 (2023) 783. ⇒361 Search in Google Scholar

H. Dong, V. Suárez-Paniagua, H. Zhang, M. Wang, A. Casey, E. Davidson, J. Chen, B. Alex, W. Whiteley, H. Wu, Ontology-driven and weakly supervised rare disease identification from clinical notes, BMC Med Inform Decis Mak 23 1, (2023) 86. ⇒361 Search in Google Scholar

J. Elwood, E. Murray, A. Bell, M. Sinclair, G. Kernohan, J. Stockdale, A systematic review investigating if genetic or epigenetic markers are associated with postnatal depression, Journal of A ective Disorders 253, (2019) 51–62. ⇒371, 393 Search in Google Scholar

L. Erkoreka, N. Ozamiz-Etxebarria, O. Ruiz, J. Ballesteros, Assessment of psychiatric symptomatology in bilingual psychotic patients: a systematic review and meta-analysis, International Journal of Environmental Research and Public Health 17, 11 (2020) 4137. ⇒362 Search in Google Scholar

S. Fakharian, P. Cook, Contextualized embeddings encode monolingual and cross-lingual knowledge of idiomaticity, 17th Workshop on Multiword Expressions 17, (2021) 23–32. ⇒393 Search in Google Scholar

S. Franklyn, J. Stewart, C. Beaurepaire, E. Thaw, R. McQuaid, Developing symptom clusters: linking inflammatory biomarkers to depressive symptom profiles, Translational Psychiatry 12, (2022) 133. ⇒363 Search in Google Scholar

J.E. Galvin, S. Chrisphonte, I. Cohen, K.K. Greenfield, M.J. Kleiman, C. Moore, M.L. Riccio, A. Rosenfeld, N. Shkolnik, M. Walker, L.C. Chang, M.I. Tolea, Characterization of dementia with lewy bodies (dlb) and mild cognitive impairment using the lewy body dementia module (lbd-mod), Alzheimer’s & Dementia 17, 10 (2021) 1675–1686. ⇒376 Search in Google Scholar

L. Gambogi, L. Souza, P. Caramelli, How to di erentiate behavioral variant frontotemporal dementia from primary psychiatric disorders: practical aspects for the clinician, Arquivos De Neuro-Psiquiatria 80, 5s1 (2022) 7–14. ⇒363 Search in Google Scholar

V. Gouttebarge, A. Bindra, C. Blauwet, N. Campriani, A. Currie, L. Engebretsen, B. Hainline, E. Kroshus, D. McDu, M. Mountjoy, R. Purcell, M. Putukian, C.L. Reardon, S.M. Rice, R. Budgett, International olympic committee (ioc) sport mental health assessment tool 1 (smhat-1) and sport mental health recognition tool 1 (smhrt-1): towards better support of athletes’ mental health, British Journal of sports Medicine 55, 1 (2020) 30–37. ⇒361 Search in Google Scholar

V. Gouttebarge, J.M. Castaldelli-Maia, P. Gorczynski, B. Hainline, M.E. Hitchcock, G.M. Kerkho s, S.M. Rice, C.L. Reardon, Occurrence of mental health symptoms and disorders in current and former elite athletes: a systematic review and meta-analysis, British Journal of sports Medicine 53, 11 (2019) 700–706. ⇒361 Search in Google Scholar

H. Gri ths, The acceptability and feasibility of using text messaging to support the delivery of physical health care in those su ering from a psychotic disorder: a review of the literature, Psychiatric Quarterly 91, 4 (2020) 1305–1316. ⇒361 Search in Google Scholar

D. Gruson, P. Dabla, S. Stankovic, E. Homsak, B. Gouget, S. Bernardini, B. Macq, Artificial intelligence and thyroid disease management, Biochemia Medica 32, 2 (2022) 182–188. ⇒361 Search in Google Scholar

K. Hallgren, Remotely assessing mechanisms of behavioral change in community substance use disorder treatment to facilitate measurement-informed care: pilot longitudinal questionnaire study, JMIR Formative Research 6, 11 (2022) e42376. ⇒366 Search in Google Scholar

S. Holmes, J. Upadhyay, D. Borsook, Delineating conditions and subtypes in chronic pain using neuroimaging, Pain Reports 4, 4 (2019) e768. ⇒379 Search in Google Scholar

H. Isah, P. Trundle, D. Neagu, Social media analysis for product safety using text mining and sentiment analysis, 14th UK Workshop on Computational Intelligence (UKCI) 14, 6930158 (2014) 1–7. ⇒366 Search in Google Scholar

K. Jaeschke, F. Hanna, S. Ali, N. Chowdhary, T. Dua, F. Charlson, Global estimates of service coverage for severe mental disorders: findings from the who mental health atlas 2017, Global Mental Health 8, (2021) e27. ⇒363 Search in Google Scholar

S. Kim, Analysis of sentiment analysis research trends using text mining, techrxiv 21903441 23 January 2023. ⇒366 Search in Google Scholar

D. Koshiyama, K. Kirihara, M. Tada, T. Nagai, M. Fujioka, K. Usui, T. Araki, K. Kasai, Reduced auditory mismatch negativity reflects impaired deviance detection in schizophrenia, Schizophrenia Bulletin 46, 4 (2020) 937–946. ⇒372 Search in Google Scholar

K.A. Kvam, M. Benatar, A. Brownlee, T. Caller, R.R. Das, P. Green, S. Kolodziejczak, J. Russo, D. Sanders, N. Sethi, K. Stavros, J. Stierwalt, N.G. Walters, A. Bennett, S.R. Wessels, B.R. Brooks, Amyotrophic lateral sclerosis quality measurement set 2022 update, Neurology 101, 5 (2023) 223–232. ⇒376 Search in Google Scholar

M. Landers, S. Saria, A. Espay, Will artificial intelligence replace the movement disorders specialist for diagnosing and managing parkinson’s disease?, Journal of Parkinson’s Disease 11, s1 (2021) S117–S122. ⇒361 Search in Google Scholar

S. Lee, S. Ma, J. Meng, J. Zhuang, T. Peng, Detecting sentiment toward emerging infectious diseases on social media: a validity evaluation of dictionary-based sentiment analysis, International Journal of Environmental Research and Public Health 19, 11 (2022) 6759. ⇒362 Search in Google Scholar

C. Lee, B. Jo, H. Woo, Y. Im, R. Park, C. Park, Chronic disease prediction using the common data model: development study, JMIR AI 1, 1 (2022) e41030. ⇒361 Search in Google Scholar

J. Liu, J. Kong, X. Zhang, Study on di erences between patients with physiological and psychological diseases in online health communities: topic analysis and sentiment analysis, International Journal of Environmental Research and Public Health 17, 5 (2020) 1508. ⇒364 Search in Google Scholar

S. Mahadevan, A. Wojtusciszyn, L. Favre, S. Boughorbel, J. Shan, K. Letaief, N. Pitteloud, L. Chouchane, Precision medicine in the era of artificial intelligence: implications in chronic disease management, Journal of Translational Medicine 18, (2020) 472. ⇒361 Search in Google Scholar

N. Mahesh, R. Donati, Neurodegenerative diseases and potential early detection methods, Journal of Student Research 11, 4 (2022) 3441. ⇒363 Search in Google Scholar

S. Malakar, S. Roy, S. Das, S. Swaraj, J. Velásquez, R. Sarkar, Computer based diagnosis of some chronic diseases: a medical journey of the last two decades, Archives of Computational Methods in Engineering 29, 7 (2022) 5525–5567. ⇒361 Search in Google Scholar

B. Muqaku, P. Oeckl, Peptidomic approaches and observations in neurodegenerative diseases, International Journal of Molecular Sciences 23, 13 (2022) 7332. ⇒373 Search in Google Scholar

C. Musket, N. Hansen, K. Welker, K. Gilbert, J. Gruber, A pilot investigation of emotional regulation di culties and mindfulness-based strategies in manic and remitted bipolar I disorder and major depressive disorder, International Journal of bipolar Disorders 9, 1 (2021) 2. ⇒371, 372 Search in Google Scholar

M.A. Myszczynska, P.N. Ojamies, A.M.B. Lacoste, D. Neil, A. Sa ari, R. Mead, G.M. Hautbergue, J.D. Holbrook, L. Ferraiuolo, Applications of machine learning to diagnosis and treatment of neurodegenerative diseases, Nature Reviews Neurology 16, 8 (2020) 440–456. ⇒393 Search in Google Scholar

B. Nichol, A. Hurlbert, J. Read, Predicting attitudes towards screening for neurodegenerative diseases using oct and artificial intelligence: findings from a literature review, Journal of Public Health Research 11, 4 (2022) 227990362211276. ⇒361 Search in Google Scholar

R. Nithyashree, R. Deveswaran, A comprehensive review on rheumatoid arthritis, Journal of Pharmaceutical Research International 32, 12 (2020) 18–32. ⇒379 Search in Google Scholar

N. Norori, Q. Hu, F. Aellen, F. Faraci, A. Tzovara, Addressing bias in big data and ai for health care: a call for open science, Patterns 2, 10 (2021) 100347. ⇒363, 365 Search in Google Scholar

J.A. Ohar, G.T. Ferguson, D.A. Mahler, M.B. Drummond, R. Dhand, R.A. Pleasants, A. Anzueto, D.M.G. Halpin, D.B. Price, G.S. Drescher, H.M. Hoy, J. Haughney, M.W. Hess, O.S. Usmani, Measuring peak inspiratory flow in patients with chronic obstructive pulmonary disease, International Journal of Chronic Obstructive Pulmonary Disease 19, (2022) 79–92. ⇒379 Search in Google Scholar

A. Palmisano, S. Meshberg-Cohen, I. Petrakis, M. Sofuoglu, A systematic review evaluating PTSD treatment e ects on intermediate phenotypes of PTSD, Psychological Trauma Theory Research Practice and Policy 15, (2023) in press. ⇒372 Search in Google Scholar

H. Pandey, A. Shivnani, A. Chauhan, A. Singh, P. Khadakban, Application of AI for analysis of Parkinson’s disease, International Journal of Soft Computing and Engineering 11, 1 (2021) 33–39. ⇒361 Search in Google Scholar

A. Patil, V. Biousse, N. Newman, Artificial intelligence in ophthalmology: an insight into neurodegenerative disease, Current Opinion in Ophthalmology 33, 5 (2022) 432–439. ⇒361 Search in Google Scholar

G. Pavarini, A. Yosifova, K. Wang, B. Wilcox, N. Tomat, J. Lorimer, L. Kariyawasam, L. George, S. Ali, I. Singh, Data sharing in the age of predictive psychiatry: an adolescent perspective, BMJ Mental Health 25, 2 (2022) 69–76. ⇒393 Search in Google Scholar

K. Pierre, V. Molina, S. Shukla, A. Avila, N. Fong, J. Nguyen, B. Lucke-Wold, Chronic traumatic encephalopathy: diagnostic updates and advances, AIMS Neuroscience 9, 4 (2022) 519–535. ⇒364 Search in Google Scholar

T. Quinton, B. Morris, M. Barwood, M. Conner, Promoting physical activity through text messages: the impact of attitude and goal priority messages, Health Psychology and Behavioral Medicine 9, 1 (2021) 165–181. ⇒361 Search in Google Scholar

V.R. Raju, Computational analysis of MER with STN DBS in parkinson‘s disease using machine learning techniques, IP Indian Journal of Neurosciences 6, 4 (2020) 281–295. ⇒375 Search in Google Scholar

V. Ramos, A. Lowit, L. Steen, H. Hernandez-Diaz, M. Huici, M. Bodt, G. Nu elen, Acoustic identification of sentence accent in speakers with dysarthria: cross-population validation and severity related patterns, Brain Sciences 11, 1ö (2021) 1344. ⇒366 Search in Google Scholar

J.M. Ranson, M. Bucholc, D. Lyall, D. Newby, L. Winchester, N.P. Oxtoby, M. Veldsman, T. Rittman, S. Marzi, N. Skene, A. Al Khleifat, I.F. Foote, V. Orgeta, A. Kormilitzin, I. Lourida, D.J. Llewellyn Harnessing the potential of machine learning and artificial intelligence for dementia research, Brain Informatics 10, (2023) 6. ⇒363 Search in Google Scholar

S. Schneider, L. Tschaidse, N. Reisch, Thyroid disorders and movement disorders —a systematic review, Movement Disorders Clinical Practice 10, 3 (2023) 360–368. ⇒379 Search in Google Scholar

H. Sivasathiaseelan, C.R. Marshall, J.L. Agustus, E. Benhamou, R.L. Bond, J.E.P. van Leeuwen, C.J.D, Hardy, J.D. Rohrer, J.D. Warren, Frontotemporal dementia: a clinical review, Seminars in Neurology 39, 2 (2019) 251–263. ⇒375 Search in Google Scholar

M. Sobański, A. Zacharzewska-Gondek, M. Waliszewska-Prosó[suppress]l, M. Sssiadek, A. Zimny, J. Bladowska, A review of neuroimaging in rare neurodegenerative diseases, Dementia and Geriatric Cognitive Disorders 49, 6 (2020) 544–556. ⇒363 Search in Google Scholar

T. Strandberg, P. Tienari, M. Kivim¨aki, Vascular and Alzheimer disease in dementia, Annals of Neurology 87, 5 (2020) 788–788. ⇒375 Search in Google Scholar

Y. Sugawara, Y. Tomata, T. Sekiguchi, Y. Yabe, Y. Hagiwara, I. Tsuji, Social trust predicts sleep disorder at 6 years after the great east japan earthquake: data from a prospective cohort study, BMC Psychology 8, 1 (2020) 69. ⇒361 Search in Google Scholar

K. Szabó Nagy, J. Kapusta, TwIdw—A Novel Method for Feature Extraction from Unstructured Texts, Applied Sciences 13, (2023) 6438. ⇒369 Search in Google Scholar

J. Szarpak, D. Weronika, I. Gabka, D. Madycka, O. Wysokińska, The meaning of blood and cerebrospinal fluid biomarkers in early diagnosis of Alzheimer’s disease, Journal of Education Health and Sport 10, 9 (2020) 308–318. ⇒362 Search in Google Scholar

Z.Q. Tan, H.Y. Wei, X.B. Song, W.X. Mai, J.J. Yan, W.J. Ye, X.Y. Ling, L. Hou, S.J. Zhang, S. Yan, H. Xu, L. Wang. Positron emission tomography in the neuroimaging of autism spectrum disorder: a review, Frontiers in Neuroscience 16, (2022) 806876. Search in Google Scholar

Y. Tang, Y. Liu, L. Jing, H. Wang, J. Yang, Mindfulness and regulatory emotional self-e cacy of injured athletes returning to sports: the mediating role of competitive state anxiety and athlete burnout, International Journal of Environmental Research and Public Health 19, 18 (2022) 11702. ⇒363 ⇒364 Search in Google Scholar

N. Tran, C. Kretsch, C. LaValley, H. Rashidi, Machine learning and artificial intelligence for the diagnosis of infectious diseases in immunocompromised patients, Current Opinion in Infectious Diseases 36, 4 (2023) 235–242. ⇒361 Search in Google Scholar

N. Tran, S. Albahra, L. May, S. Waldman, S. Crabtree, S. Bainbridge, H. Rashidi, Evolving applications of artificial intelligence and machine learning in infectious diseases testing, Clinical Chemistry 68, 1 (2021) 125–133. ⇒361 Search in Google Scholar

E. Urtnasan, E. Joo, K. Lee, AI-enabled algorithm for automatic classification of sleep disorders based on single-lead electrocardiogram, Diagnostics 11, 11 (2021) 2054 ⇒361 Search in Google Scholar

S. Vella, M. Schweickle, J. Sutcli e, C. Liddelow, C. Swann, A systems theory of mental health in recreational sport, International Journal of Environmental Research and Public Health 19, 21 (2022) 14244. ⇒363 Search in Google Scholar

Y. Wan, X. Wu, Y. Kou, The impact of text message on self-management for coronary heart disease: a meta-analysis of randomized controlled trials, The Heart Surgery Forum 23, 1 (2020) E018-E024. ⇒361 Search in Google Scholar

C.S. Wang, J.P. Troost, L.A. Greenbaum, T. Srivastava, K. Reidy, K. Gibson, H. Trachtman, J.D. Piette, C.B. Sethna, K. Meyers, K.M. Dell, C.L. Tran, S. Vento, K. Kallem, E. Herresho, S. Hingorani, K. Lemley, G. Oh, E. Brown, J.J. Lin, F. Kaskel, D.S. Gipson, Text messaging for disease monitoring in childhood nephrotic syndrome. Kidney International Reports 4, 8 (2019) 1066–1074. ⇒361 Search in Google Scholar

N. Younas, L. Flores, F. Hopfner, G. Höglinger, I. Zerr, A new paradigm for diagnosis of neurodegenerative diseases: peripheral exosomes of brain origin, Translational Neurodegeneration 11, (2022) 28. ⇒363 Search in Google Scholar

M. Zuylen, J. Kampman, O. Turgman, A. Gribnau, W. Hoope, B. Preckel, H.C. Willems, G.J. Geurtsen, J. Hermanides, Prospective comparison of three methods for detecting peri-operative neurocognitive disorders in older adults undergoing cardiac and non-cardiac surgery, Anaesthesia 78, 5 (2023) 577–586. ⇒362 Search in Google Scholar

D. Zhang, T. Guo, A. Han, S. Vahabli, M. Naseriparsa, F. Xia, Predicting mental health problems with personality, behavior, and social networks, IEEE International Conference on Big Data (2021) pp. 4537–4546. ⇒364 Search in Google Scholar

* * *, Depression and Anxiety in Twitter (ID), Indonesian tweet entries potentially containing depression or anxiety behavior, last accessed on 15 November 2023. ⇒368 Search in Google Scholar

* * *, Komondor, one of the greenest supercomputers in the world, HPC Competence Center, Last accessed on: 13 November 2023. ⇒392 Search in Google Scholar

* * *, Suicide and Depression Detection, A dataset that can be used to detect suicide and depression in a text, last accessed on 15 November 2023. ⇒368 Search in Google Scholar

* * *, Sunbears Cloud Campus, last accessed on 24 November 2023. ⇒394 Search in Google Scholar

eISSN:
2066-7760
Language:
English
Publication timeframe:
2 times per year
Journal Subjects:
Computer Sciences, other