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Journal of Nursing ›› 2023, Vol. 30 ›› Issue (19): 45-50.doi: 10.16460/j.issn1008-9969.2023.19.045

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Risk prediction model for cognitive frailty in elderly: a systematic review

ZHOU Fei-yang1,2, DENG Lu1, LONG Ke-yu2, YANG Ting-ting2, XIE Lin-lin2, LV Qing1, GUO Chun-bo1   

  1. 1. Teaching and Research Office of Clinical Nursing, the Second Xiangya Hospital of Central South University, Changsha 410011, China;
    2. Xiangya Nursing School, Central South University, Changsha 410013, China
  • Received:2023-09-10 Online:2023-10-10 Published:2023-11-07

Abstract: Objective To systematically review the risk prediction models of cognitive frailty in the elderly, and to provide evidence support for the risk prediction of cognitive frailty. Methods Systematic search of the literature regarding risk prediction models of cognitive frailty in the elderly in PubMed, Web of Science, the Cochrane Library, Embase, CINAHL, CNKI, Wanfang database, and SinoMed was conducted. The search time was from the inception of the database to August 2023, and the language was limited to Chinese and English. Literature screening was conducted according to the inclusion and exclusion criteria, and data extraction and quality evaluation of the included literature were carried out by two researchers independently. The information of author, year of publication, country, follow-up time, study object, study type, predictors, model construction method, and predictive efficacy was extracted. Results Sixteen studies were included, all of which were studies on model development. The prevalence of cognitive frailty in the elderly ranged from 4.8% to 65.3%. The applicability was good in included studies, but the overall risk of bias was high. Predictors reported repeatedly by multiple models were age, nutrition, activity of daily living and multimorbidity. Conclusion Risk prediction model of cognitive frailty in the elderly is still in the developmental stage, and some models have significant methodological flaws and a high risk of bias. Future research should focus on the establishment of comprehensive risk prediction models and their validation with the help of big data to form an informative risk warning system with high feasibility.

Key words: elderly people, cognitive frailty, prediction model, risk assessment, systematic review

CLC Number: 

  • R473.59
[1] Kelaiditi E, Cesari M, Canevelli M, et al.Cognitive frailty: rational and definition from an (I.A.N.A./I.A.G.G.) international consensus group[J]. J Nutr Health Aging, 2013, 17(9):726-734.DOI:10.1007/s12603-013-0367-2.
[2] Bu ZH, Huang AL, Xue MT, et al.Cognitive frailty as a predictor of adverse outcomes among older adults: a systematic review and Meta-analysis[J]. Brain Behav, 2021, 11(1): e01926.DOI:10.1002/brb3.1926.
[3] Xu WH, Li Y, Hu Y, et al.Association of frailty with recovery from disability among community-dwelling Chinese older adults: China health and retirement longitudinal study[J]. BMC Geriatr, 2020, 20(1):1-7.DOI:10.1186/s12877-020-01519-6.
[4] Zhang XM, Jiao J, Zhu C, et al.Cognitive frailty and 30-day mortality in a national cohort of older Chinese inpatients[J]. Clin Interv Aging, 2021, 16(1):389-401.DOI:10.2147/CIA.S294106.
[5] Zhang XM, Yuan L, Quo N, et al.Cognitive frailty and falls in a national cohort of older Chinese inpatients[J]. J Nutr Health Aging, 2021, 25(8):993-998.DOI:10.1007/s12603-021-1670-y.
[6] Zheng LF, Li GC, Gao DW, et al.Cognitive frailty as a predictor of dementia among older adults: a systematic review and Meta-analysis[J]. Arch Gerontol Geriatr, 2020, 87(3): 103997.DOI:10.1016/j.archger.2019.103997.
[7] De Roeck EE, van der VA, Engelborghs S, et al. Exploring cognitive frailty: prevalence and associations with other frailty domains in older people with different degrees of cognitive impairment[J]. Gerontology, 2020, 66(1):55-64.DOI:10.1159/000501168.
[8] Mantovani E, Zucchella C, Schena F, et al.Towards a redefinition of cognitive frailty[J]. J Alzheimers Dis, 2020, 76(3): 831-843.DOI:10.3233/jad-200137.
[9] 陶立元, 刘珏, 曾琳, 等. 针对个体的预后或诊断多因素预测模型报告规范(TRIPOD)解读[J]. 中华医学杂志, 2018, 98(44):3556-3560. DOI:10.3760/cma.j.issn.0376-2491.2018.44.002.
[10] 张莹莹, 张广清, 李佳雨, 等. 基于循证构建ICU亚谵妄综合征早期识别及管理方案[J]. 护理学报, 2022, 29(17): 7-12.DOI:10.16460/j.issn1008-9969.2022.17.007.
[11] Wolff RF, Moons KG M, Riley RD, et al.PROBAST: a tool to assess the risk of bias and qpplicability of prediction model studies[J]. Ann Intern Med, 2019, 170(1): 51-58.DOI:10.7326/m18-1376.
[12] Tseng SH, Liu LK, Peng LN, et al.Development and validation of a tool to screen for cognitive frailty among community-dwelling elders[J]. J Nutr Health Aging, 2019, 23(9):904-909.DOI:10.1007/s12603-019-1235-5.
[13] Navarro-Pardo E, Facal D, Campos-Magdaleno M, et al.Prevalence of cognitive frailty,do psychosocial-related factors matter?[J].Brain Sci,2020,10(12).DOI:10.3390/brainsci10120968.
[14] Rivan NFM, Shahar S, Rajab NF, et al.Incidence and predictors of cognitive frailty among older adults: a community-based longitudinal study[J]. Int J Environ Res Public Health, 2020, 17(5):1547.DOI:10.3390/ijerph17051547.
[15] Sargent L, Nalls M, Amella EJ, et al.Shared mechanisms for cognitive impairment and physical frailty: a model for complex systems[J]. Alzheimers Dement (N Y), 2020, 6(1): e12027.DOI:10.1002/trc2.12027.
[16] 问芳芳, 程苗苗, 赵翠芬, 等. 老年稳定性冠心病患者认知衰弱风险预测模型的建立[J]. 护理学杂志, 2021, 36(10):21-26.DOI:10.3870/j.issn.1001-4152.2021.10.021.
[17] 杨振, 张会君. 社区老年慢性病患者认知衰弱风险预测模型的构建及验证[J]. 护理学杂志, 2021, 36(12): 86-89.DOI:10.3870/j.issn.1001-4152.2021.12.086.
[18] 陈颖勇, 张正敏, 左倩倩, 等. 社区老年人认知衰弱风险预测模型的构建及验证[J]. 中华护理杂志, 2022, 57(2): 197-203.DOI:10.3761/j.issn.0254-1769.2022.02.012.
[19] 王彦, 刘媛. 住院老年高血压患者认知衰弱影响因素及列线图模型构建[J]. 实用心脑肺血管病杂志, 2022, 30(7): 54-59.DOI:10.12114/j.issn.1008-5971.2022.00.167.
[20] Yuan MQ, Xu CH, Fang Y.The transitions and predictors of cognitive frailty with multi-state Markov model: a cohort study[J].BMC Geriatr, 2022,22(1):550.DOI:10.1186/s12877-022-03220-2.
[21] Luo B, Luo Z, Zhang X, et al.Status of cognitive frailty in elderly patients with chronic kidney disease and construction of a risk prediction model: a cross-sectional study[J]. BMJ Open, 2022, 12(12):e060633.DOI:10.1136/bmjopen-2021-060633.
[22] 陈程程, 伍丹智, 孙苞苞, 等. 老年人骨科术后认知衰弱风险预测模型的构建[J]. 中国基层医药, 2023, 30(2): 287-291.DOI:10.3760/cma.j.cn341190-20220802-00627.
[23] 李梅. 老年维持性血液透析病人认知衰弱风险预测模型的建立[J]. 全科护理, 2023, 21(10):1392-1396.DOI:10.12104/j.issn.1674-4748.2023.10.025.
[24] 秦僮, 李海娜, 王纪哲, 等. 维持性血液透析患者认知衰弱风险列线图模型构建与验证[J]. 齐鲁护理杂志, 2023,29(7):13-18.DOI:10.3969/j.issn.1006-7256.2023.07.004.
[25] Bai A, Zhao M, Zhang T, et al.Development and validation of a nomogram-assisted tool to predict potentially reversible cognitive frailty in Chinese community-living older adults[J]. Aging Clin Exp Res, 2023(7):1-11.DOI:10.1007/s40520-023-02494-9.
[26] Lee SY, Nyunt MS,Gao Q, et al. Risk factors of progression to cognitive frailty: Singapore longitudinal ageing study 2[J/OL].Gerontology2023,[2023-09-05]. https://doi.org/10.1159/000533635.
[27] Peng SZ, Juan Z, Shuzhen X, et al.Construction and validation of cognitive frailty risk prediction model for elderly patients with multimorbidity in Chinese community based on non-traditional factors[J]. BMC Psychiatry, 2023, 23(1): 266.DOI:https://doi.org/10.1186/s12888-023-04736-6.
[28] Ogundimu EO, Altman DG, Collins GS.Adequate sample size for developing prediction models is not simply related to events per variable[J]. J Clin Epidemiol, 2016, 76(8): 175-182.DOI:10.1016/j.jclinepi.2016.02.031.
[29] 王伟华, 寇京莉, 张佟, 等. 老年科住院患者认知衰弱状况调查及其影响因素分析[J]. 中华现代护理杂志, 2022, 28(3):296-301.DOI:10.3760/cma.j.cn115682-20210604-02426.
[30] 刘泳秀, 余莉, 韩婷, 等. 乌鲁木齐市住院老年患者认知衰弱现状及影响因素研究[J]. 中国实用护理杂志, 2021, 37(6):424-430.DOI:10.3760/cma.j.cn211501-20200615-02775.
[31] 瞿茜, 代玲, 张萍, 等. 老年人认知衰弱影响因素的Meta分析[J]. 现代临床护理, 2022,21(2):54-62.DOI:10.3969/j.issn.1671-8283.2022.02.010.
[32] 刘玥婷, 范俊瑶, 赵慧敏, 等. 老年人认知衰弱与失能关系的研究进展[J]. 实用老年医学, 2020, 34(2):190-193.DOI:10.3969/j.issn.1003-9198.2020.02.024.
[33] 徐传海, 袁满琼, 方亚. 我国老年人认知衰弱转移规律及其影响因素研究[J]. 中华流行病学杂志, 2022, 43(5):722-727.DOI:10.3760/cma.j.cn112338-20211013-00792.
[34] 姜文慧, 李烨, 贾敏, 等. 抑郁障碍与精神分裂症患者认知功能损害分析[J]. 临床精神医学杂志, 2022, 32(4): 301-303.DOI:10.3969/j.issn.1005-3220.2022.04.014.
[35] 陈香萍, 张奕, 庄一渝, 等. PROBAST:诊断或预后多因素预测模型研究偏倚风险的评估工具[J]. 中国循证医学杂志,2020,20(6):737-744.DOI:10.7507/1672-2531.201910087.
[36] Arai H, Satake S, Kozaki K.Cognitive frailty in geriatrics[J]. Clin Geriatr Med, 2018, 34(4):667-675.DOI:10.1016/j.cger.2018.06.011.
[37] Ruan Q, Yu Z, Chen M, et al.Cognitive frailty, a novel target for the prevention of elderly dependency[J].Ageing Res Rev, 2015, 20(2):1-10.DOI:10.1016/j.arr.2014.12.004.
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