Practical Geriatrics ›› 2026, Vol. 40 ›› Issue (4): 417-421.doi: 10.3969/j.issn.1003-9198.2026.04.017
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TIAN Shuyun, CHANG Lijuan, CHEN Xin, FAN Qi, MA Feifei
Online:2026-04-23
Published:2026-04-23
Contact:
CHANG Lijuan, Email: Changlj1024@136.com
CLC Number:
TIAN Shuyun, CHANG Lijuan, CHEN Xin, FAN Qi, MA Feifei. Research progress of artificial intelligence in emotional management for elderly care[J]. Practical Geriatrics, 2026, 40(4): 417-421.
| [1] 第七次全国人口普查公报(第五号) - 国家统计局[EB/OL].(2021-05-11)[2025-08-25]. https://www.stats.gov.cn/sj/tjgb/rkpcgb/qgrkpcgb/202302/t20230206_1902005.html. [2] ZHAO K X, HUANG C Q, XIAO Q, et al. Age and risk for depression among the elderly:a meta-analysis of the published literature[J]. CNS Spectr, 2012, 17(3):142-154. [3] LU L, SHEN H, TAN L, et al. Prevalence and factors associated with anxiety and depression among community-dwelling older adults in Hunan, China:a cross-sectional study[J]. BMC Psychiatry, 2023, 23(1):107. [4] 国务院办公厅关于印发“十四五”国民健康规划的通知_卫生_中国政府网[EB/OL]. (2022-05-20)[2025-03-23]. https://www.gov.cn/zhengce/content/2022-05/20/content_5691424.htm. [5] ÖN B I, VIDAL X, BERGER U, et al. Antidepressant use and stroke or mortality risk in the elderly[J]. Eur J Neurol, 2022, 29(2):469-477. [6] AMENDOLA S, PLÖDERL M, HENGARTNER M P. Suicide rates and prescription of antidepressants[J]. Crisis, 2024, 45(3):225-233. [7] ESMAEILZADEH P, MIRZAEI T, DHARANIKOTA S. Patients’ perceptions toward human-artificial intelligence interaction in health care:experimental study[J]. J Med Internet Res, 2021, 23(11):e25856. [8] SHANKAR R, BUNDELE A, MUKHOPADHYAY A. Barriers and enablers for the deployment of large language model-based conversational robots for older adults:a protocol for a systematic review of qualitative studies[J]. PLoS One, 2025, 20(4):e0321093. [9] TAN C K, LOU V W Q, CHENG C Y M, et al. Improving the social well-being of single older adults using the LOVOT social robot:qualitative phenomenological study[J]. JMIR Hum Factors, 2024, 11:e56669. [10] CHEN S C, MOYLE W, JONES C, et al. A social robot intervention on depression, loneliness, and quality of life for Taiwanese older adults in long-term care[J]. Int Psychogeriatr, 2020, 32(8):981-991. [11] DANIELI M, CIULLI T, MOUSAVI S M, et al. Assessing the impact of conversational artificial intelligence in the treatment of stress and anxiety in aging adults:randomized controlled trial[J]. JMIR Ment Health, 2022, 9(9):e38067. [12] 孙永健. 智能时代数字适老化转型研究[J]. 中国特色社会主义研究, 2025(4):107-119. [13] HUMAYUN A, MADAWANA A M, HASSAN A, et al. Artificial intelligence as a predictive tool for mental health status:insights from a systematic review and meta-analysis[J]. PLoS One, 2025, 20(9):e0332207. [14] NOWAKOWSKA K, SAKELLARIOS A, KAŹMIERSKI J, et al. AI-enhanced predictive modeling for identifying depression and delirium in cardiovascular patients scheduled for cardiac surgery[J]. Diagnostics:Basel, 2023, 14(1):67. [15] CHEN Y M, CHEN P C, LIN W C, et al. Predicting new-onset post-stroke depression from real-world data using machine learning algorithm[J]. Front Psychiatry, 2023, 14:1195586. [16] CHU C S, WANG D Y, LIANG C K, et al. Automated video analysis of audio-visual approaches to predict and detect mild cognitive impairment and dementia in older adults[J]. J Alzheimers Dis, 2023, 92(3):875-886. [17] GEORGESCU A L, CUMMINS N, MOLIMPAKIS E, et al. Screening for depression and anxiety using a nonverbal working memory task in a sample of older brazilians:observational study of preliminary artificial intelligence model transferability[J]. JMIR Form Res, 2024, 8:e55856. [18] LU L C, LAN S H, HSIEH Y P, et al. Effectiveness of companion robot care for dementia:a systematic review and meta-analysis[J]. Innov Aging, 2021, 5(2):igab013. [19] MOYLE W, ARNAUTOVSKA U, OWNSWORTH T, et al. Potential of telepresence robots to enhance social connectedness in older adults with dementia:an integrative review of feasibility[J]. Int Psychogeriatr, 2017, 29(12):1951-1964. [20] CHOI J, LEE S, KIM S, et al. Depressed mood prediction of elderly people with a wearable band[J]. Sensors:Basel, 2022, 22(11):4174. [21] BYEON H. Exploring factors for predicting anxiety disorders of the elderly living alone in South Korea using interpretable machine learning:a population-based study[J]. Int J Environ Res Public Health, 2021, 18(14):7625. [22] CHU C H, LESLIE K, SHI J, et al. Ageism and artificial intelligence:protocol for a scoping review[J]. JMIR Res Protoc, 2022, 11(6):e33211. [23] CHIN M H, AFSAR-MANESH N, BIERMAN A S, et al. Guiding principles to address the impact of algorithm bias on racial and ethnic disparities in health and health care[J]. JAMA Netw Open, 2023, 6(12):e2345050. [24] CHU C H, NYRUP R, LESLIE K, et al. Digital ageism:challenges and opportunities in artificial intelligence for older adults[J]. Gerontologist, 2022, 62(7):947-955. [25] CHAR D S, SHAH N H, MAGNUS D. Implementing machine learning in health care - addressing ethical challenges[J]. N Engl J Med, 2018, 378(11):981-983. [26] CHEN Y, CLAYTON E W, NOVAK L L, et al. Human-centered design to address biases in artificial intelligence[J]. J Med Internet Res, 2023, 25:e43251. [27] MURDOCH B. Privacy and artificial intelligence:challenges for protecting health information in a new era[J]. BMC Med Ethics, 2021, 22(1):122. [28] 潘燕桃, 汪庆怡. 数智技术对老年群体数智素养的挑战及其对策研究[J]. 图书馆杂志, 2025, 44(6):36-44. [29] WANG Y, ZENG H, LV F, et al. Analysis of demand and influencing factors for smart senior care among older adults in underdeveloped regions of western China:a case study of Lanzhou[J]. Front Public Health, 2024, 12:1337584. [30] GUDALA M, ROSS M E T, MOGALLA S, et al. Benefits of, barriers to, and needs for an artificial intelligence-powered medication information voice chatbot for older adults:interview study with geriatrics experts[J]. JMIR Aging, 2022, 5(2):e32169. [31] BANDINI A, REZAEI S, GUARIN D L, et al. A new dataset for facial motion analysis in individuals with neurological disorders[J]. IEEE J Biomed Health Inform, 2021, 25(4):1111-1119. [32] CHOI N. Relationship between health service use and health information technology use among older adults:analysis of the US National Health Interview Survey[J]. J Med Internet Res, 2011, 13(2):e33. [33] DERMODY G, FRITZ R, GLASS C, et al. Factors influencing community-dwelling older adults’ readiness to adopt smart home technology:a qualitative exploratory study[J]. J Adv Nurs, 2021, 77(12):4847-4861. [34] OKUN S, AYALON L. And what about self-ageism? “inner work” as a fifth strategy for the eradication of ageism[J]. J Aging Soc Policy, 2024, 36(5):732-748. [35] TSAI H S, SHILLAIR R, COTTEN S R, et al. Getting grandma online:are tablets the answer for increasing digital inclusion for older adults in the U.S.?[J]. Educ Gerontol, 2015, 41(10):695-709. [36] SINGH R P, HOM G L, ABRAMOFF M D, et al. Current challenges and barriers to real-world artificial intelligence adoption for the healthcare system, provider, and the patient[J]. Transl Vis Sci Technol, 2020, 9(2):45. [37] WANG J, WANG Y, CAI H, et al. Analysis of the status quo of the elderly’s demands of medical and elderly care combination in the underdeveloped regions of Western China and its influencing factors:a case study of Lanzhou[J]. 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