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Published in: BMC Geriatrics 1/2022

Open Access 01-12-2022 | Research

Latent trajectories of frailty and risk prediction models among geriatric community dwellers: an interpretable machine learning perspective

Authors: Yafei Wu, Maoni Jia, Chaoyi Xiang, Ya Fang

Published in: BMC Geriatrics | Issue 1/2022

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Abstract

Background

This study aimed to identify long-term frailty trajectories among older adults (≥65) and construct interpretable prediction models to assess the risk of developing abnormal frailty trajectory among older adults and examine significant factors related to the progression of frailty.

Methods

This study retrospectively collected data from the Chinese Longitudinal Healthy Longevity and Happy Family Study between 2002 and 2018 (N = 4083). Frailty was defined by the frailty index. The whole study consisted of two phases of tasks. First, group-based trajectory modeling was used to identify frailty trajectories. Second, easy-to-access epidemiological data was utilized to construct machine learning algorithms including naïve bayes, logistic regression, decision tree, support vector machine, random forest, artificial neural network, and extreme gradient boosting to predict the risk of long-term frailty trajectories. Further, Shapley additive explanations was employed to identify feature importance and open-up the black box model of machine learning to further strengthen decision makers’ trust in the model.

Results

Two distinct frailty trajectories (stable-growth: 82.54%, rapid-growth: 17.46%) were identified. Compared with other algorithms, random forest performed relatively better in distinguishing the stable-growth and rapid-growth groups. Physical function including activities of daily living and instrumental activities of daily living, marital status, weight, and cognitive function were top five predictors.

Conclusions

Interpretable machine learning can achieve the primary goal of risk stratification and make it more transparent in individual prediction beneficial to primary screening and tailored prevention.
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Literature
1.
go back to reference Morley JE, Vellas B, Abellan van Kan G, Anker SD, Bauer JM, Bernabei R, et al. Frailty consensus: a call to action. J Am Med Dir Assoc. 2013;14(6):392–7.CrossRefPubMedCentralPubMed Morley JE, Vellas B, Abellan van Kan G, Anker SD, Bauer JM, Bernabei R, et al. Frailty consensus: a call to action. J Am Med Dir Assoc. 2013;14(6):392–7.CrossRefPubMedCentralPubMed
2.
go back to reference Collard RM, Boter H, Schoevers RA, Oude Voshaar RC. Prevalence of frailty in community-dwelling older persons: a systematic review. J Am Geriatr Soc. 2012;60(8):1487–92.CrossRefPubMed Collard RM, Boter H, Schoevers RA, Oude Voshaar RC. Prevalence of frailty in community-dwelling older persons: a systematic review. J Am Geriatr Soc. 2012;60(8):1487–92.CrossRefPubMed
3.
go back to reference Pereira AA, Borim FSA, Aprahamian I, Neri AL. Comparison of two models of frailty for the prediction of mortality in Brazilian community-dwelling older adults: the FIBRA study. J Nutr Health Aging. 2019;23(10):1004–10.CrossRefPubMed Pereira AA, Borim FSA, Aprahamian I, Neri AL. Comparison of two models of frailty for the prediction of mortality in Brazilian community-dwelling older adults: the FIBRA study. J Nutr Health Aging. 2019;23(10):1004–10.CrossRefPubMed
4.
go back to reference Fried LP, Tangen CM, Walston J, Newman AB, Hirsch C, Gottdiener J, et al. Frailty in older adults: evidence for a phenotype. J Gerontol A Biol Sci Med Sci. 2001;56(3):M146–56.CrossRefPubMed Fried LP, Tangen CM, Walston J, Newman AB, Hirsch C, Gottdiener J, et al. Frailty in older adults: evidence for a phenotype. J Gerontol A Biol Sci Med Sci. 2001;56(3):M146–56.CrossRefPubMed
5.
go back to reference O'Caoimh R, Sezgin D, O'Donovan MR, Molloy DW, Clegg A, Rockwood K, et al. Prevalence of frailty in 62 countries across the world: a systematic review and meta-analysis of population-level studies. Age Ageing. 2021;50(1):96–104.CrossRefPubMed O'Caoimh R, Sezgin D, O'Donovan MR, Molloy DW, Clegg A, Rockwood K, et al. Prevalence of frailty in 62 countries across the world: a systematic review and meta-analysis of population-level studies. Age Ageing. 2021;50(1):96–104.CrossRefPubMed
6.
go back to reference Dent E, Martin FC, Bergman H, Woo J, Romero-Ortuno R, Walston JD. Management of frailty: opportunities, challenges, and future directions. Lancet. 2019;394(10206):1376–86.CrossRefPubMed Dent E, Martin FC, Bergman H, Woo J, Romero-Ortuno R, Walston JD. Management of frailty: opportunities, challenges, and future directions. Lancet. 2019;394(10206):1376–86.CrossRefPubMed
7.
go back to reference Beard JR, Officer A, de Carvalho IA, Sadana R, Pot AM, Michel JP, et al. The world report on ageing and health: a policy framework for healthy ageing. Lancet. 2016;387(10033):2145–54.CrossRefPubMed Beard JR, Officer A, de Carvalho IA, Sadana R, Pot AM, Michel JP, et al. The world report on ageing and health: a policy framework for healthy ageing. Lancet. 2016;387(10033):2145–54.CrossRefPubMed
8.
go back to reference Verghese J, Ayers E, Sathyan S, Lipton RB, Milman S, Barzilai N, et al. Trajectories of frailty in aging: prospective cohort study. PLoS One. 2021;16(7). Verghese J, Ayers E, Sathyan S, Lipton RB, Milman S, Barzilai N, et al. Trajectories of frailty in aging: prospective cohort study. PLoS One. 2021;16(7).
10.
go back to reference Kojima G, Avgerinou C, Iliffe S, Walters K. Adherence to Mediterranean diet reduces incident frailty risk: systematic review and Meta-analysis. J Am Geriatr Soc. 2018;66(4):783–8.CrossRefPubMed Kojima G, Avgerinou C, Iliffe S, Walters K. Adherence to Mediterranean diet reduces incident frailty risk: systematic review and Meta-analysis. J Am Geriatr Soc. 2018;66(4):783–8.CrossRefPubMed
11.
go back to reference Feng Z, Lugtenberg M, Franse C, Fang X, Hu S, Jin C, et al. Risk factors and protective factors associated with incident or increase of frailty among community-dwelling older adults: a systematic review of longitudinal studies. PLoS One. 2017;12(6):e0178383.CrossRefPubMedCentralPubMed Feng Z, Lugtenberg M, Franse C, Fang X, Hu S, Jin C, et al. Risk factors and protective factors associated with incident or increase of frailty among community-dwelling older adults: a systematic review of longitudinal studies. PLoS One. 2017;12(6):e0178383.CrossRefPubMedCentralPubMed
12.
go back to reference Tarekegn A, Ricceri F, Costa G, Ferracin E, Giacobini M. Predictive modeling for frailty conditions in elderly people: machine learning approaches. JMIR Med Inform. 2020;8(6). Tarekegn A, Ricceri F, Costa G, Ferracin E, Giacobini M. Predictive modeling for frailty conditions in elderly people: machine learning approaches. JMIR Med Inform. 2020;8(6).
15.
go back to reference Vellido A. The importance of interpretability and visualization in machine learning for applications in medicine and health care. Neural Comput Applic. 2020;32(24):18069–83.CrossRef Vellido A. The importance of interpretability and visualization in machine learning for applications in medicine and health care. Neural Comput Applic. 2020;32(24):18069–83.CrossRef
16.
go back to reference Yi Z: Introduction to the Chinese Longitudinal Healthy Longevity Survey (CLHLS). In: Healthy Longevity in China: Demographic, Socioeconomic, and Psychological Dimensions. vol. 20; 2008: pp 23–38. Yi Z: Introduction to the Chinese Longitudinal Healthy Longevity Survey (CLHLS). In: Healthy Longevity in China: Demographic, Socioeconomic, and Psychological Dimensions. vol. 20; 2008: pp 23–38.
17.
go back to reference Yi Z, Jr D, Vlosky DA, Gu D: Healthy longevity in China: demographic, socioeconomic, and Psychological Dimensions, vol. 20; 2008. Yi Z, Jr D, Vlosky DA, Gu D: Healthy longevity in China: demographic, socioeconomic, and Psychological Dimensions, vol. 20; 2008.
19.
go back to reference Gu D, Dupre ME, Sautter J, Zhu H, Liu Y, Yi Z. Frailty and mortality among Chinese at advanced ages. J Gerontol B Psychol Sci Soc Sci. 2009;64(2):279–89.CrossRefPubMed Gu D, Dupre ME, Sautter J, Zhu H, Liu Y, Yi Z. Frailty and mortality among Chinese at advanced ages. J Gerontol B Psychol Sci Soc Sci. 2009;64(2):279–89.CrossRefPubMed
20.
go back to reference Stuck AK, Mangold JM, Wittwer R, Limacher A, Bischoff-Ferrari HA. Ability of 3 frailty measures to predict short-term outcomes in older patients admitted for post-acute inpatient rehabilitation. J Am Med Dir Assoc. 2021. Stuck AK, Mangold JM, Wittwer R, Limacher A, Bischoff-Ferrari HA. Ability of 3 frailty measures to predict short-term outcomes in older patients admitted for post-acute inpatient rehabilitation. J Am Med Dir Assoc. 2021.
21.
go back to reference Cohen-Addad V, Kanade V, Mallmann-Trenn F, Mathieu C, Assoc Comp M: Hierarchical Clustering: Objective Functions and Algorithms. In: SODA'18: PROCEEDINGS OF THE TWENTY-NINTH ANNUAL ACM-SIAM SYMPOSIUM ON DISCRETE ALGORITHMS. 2018: 378–397. Cohen-Addad V, Kanade V, Mallmann-Trenn F, Mathieu C, Assoc Comp M: Hierarchical Clustering: Objective Functions and Algorithms. In: SODA'18: PROCEEDINGS OF THE TWENTY-NINTH ANNUAL ACM-SIAM SYMPOSIUM ON DISCRETE ALGORITHMS. 2018: 378–397.
22.
go back to reference Stamm KE, Harlow LL, Walls TA: An introduction to latent variable growth curve modeling: concepts, issues, and applications (2nd ed.). Struct Equ Model Multidiscip J 2007, 14:701–706. Stamm KE, Harlow LL, Walls TA: An introduction to latent variable growth curve modeling: concepts, issues, and applications (2nd ed.). Struct Equ Model Multidiscip J 2007, 14:701–706.
23.
go back to reference Nagin DS, Odgers CL: Group-based trajectory modeling in clinical research. (1548–5951 (Electronic)). Nagin DS, Odgers CL: Group-based trajectory modeling in clinical research. (1548–5951 (Electronic)).
24.
go back to reference Welstead M, Luciano M, Russ TC, Muniz-Terrera G: Heterogeneity of Frailty Trajectories and Associated Factors in the Lothian Birth Cohort 1936. (1423–0003 (Electronic)). Welstead M, Luciano M, Russ TC, Muniz-Terrera G: Heterogeneity of Frailty Trajectories and Associated Factors in the Lothian Birth Cohort 1936. (1423–0003 (Electronic)).
25.
go back to reference Muthén B, Muthén LK. Integrating person-centered and variable-centered analyses: growth mixture modeling with latent trajectory classes. Alcohol Clin Exp Res. 2000;24(6):882–91.CrossRefPubMed Muthén B, Muthén LK. Integrating person-centered and variable-centered analyses: growth mixture modeling with latent trajectory classes. Alcohol Clin Exp Res. 2000;24(6):882–91.CrossRefPubMed
26.
go back to reference Stekhoven DJ, Bühlmann P: MissForest--non-parametric missing value imputation for mixed-type data. (1367–4811 (Electronic)). Stekhoven DJ, Bühlmann P: MissForest--non-parametric missing value imputation for mixed-type data. (1367–4811 (Electronic)).
27.
go back to reference Wiemken TL, Kelley RR. Machine learning in epidemiology and health outcomes research. Annu Rev Public Health. 2020;41:21–36.CrossRefPubMed Wiemken TL, Kelley RR. Machine learning in epidemiology and health outcomes research. Annu Rev Public Health. 2020;41:21–36.CrossRefPubMed
29.
go back to reference Tsangaratos P, Ilia I. Comparison of a logistic regression and naive Bayes classifier in landslide susceptibility assessments: the influence of models complexity and training dataset size. Catena. 2016;145:164–79.CrossRef Tsangaratos P, Ilia I. Comparison of a logistic regression and naive Bayes classifier in landslide susceptibility assessments: the influence of models complexity and training dataset size. Catena. 2016;145:164–79.CrossRef
30.
go back to reference Christodoulou E, Ma J, Collins GS, Steyerberg EW, Verbakel JY, Van Calster B. A systematic review shows no performance benefit of machine learning over logistic regression for clinical prediction models. J Clin Epidemiol. 2019;110:12–22.CrossRefPubMed Christodoulou E, Ma J, Collins GS, Steyerberg EW, Verbakel JY, Van Calster B. A systematic review shows no performance benefit of machine learning over logistic regression for clinical prediction models. J Clin Epidemiol. 2019;110:12–22.CrossRefPubMed
31.
go back to reference Doupe P, Faghmous J, Basu S. Machine learning for health services researchers. Value Health. 2019;22(7):808–15.CrossRefPubMed Doupe P, Faghmous J, Basu S. Machine learning for health services researchers. Value Health. 2019;22(7):808–15.CrossRefPubMed
32.
go back to reference Huang J-C, Tsai Y-C, Wu P-Y, Lien Y-H, Chien C-Y, Kuo C-F, et al. Predictive modeling of blood pressure during hemodialysis: a comparison of linear model, random forest, support vector regression, XGBoost, LASSO regression and ensemble method. Comput Methods Prog Biomed. 2020;195:105536.CrossRef Huang J-C, Tsai Y-C, Wu P-Y, Lien Y-H, Chien C-Y, Kuo C-F, et al. Predictive modeling of blood pressure during hemodialysis: a comparison of linear model, random forest, support vector regression, XGBoost, LASSO regression and ensemble method. Comput Methods Prog Biomed. 2020;195:105536.CrossRef
33.
35.
go back to reference Torlay L, Perrone-Bertolotti M, Thomas E, Baciu M. Machine learning-XGBoost analysis of language networks to classify patients with epilepsy. Brain Inform. 2017;4(3):159–69.CrossRefPubMedCentralPubMed Torlay L, Perrone-Bertolotti M, Thomas E, Baciu M. Machine learning-XGBoost analysis of language networks to classify patients with epilepsy. Brain Inform. 2017;4(3):159–69.CrossRefPubMedCentralPubMed
36.
go back to reference Ranjan GSK, Verma AK, Radhika S: K-Nearest Neighbors and Grid Search CV Based Real Time Fault Monitoring System for Industries. In: 2019 IEEE 5th International Conference for Convergence in Technology (I2CT): 29–31 March 2019 2019. 1–5. Ranjan GSK, Verma AK, Radhika S: K-Nearest Neighbors and Grid Search CV Based Real Time Fault Monitoring System for Industries. In: 2019 IEEE 5th International Conference for Convergence in Technology (I2CT): 29–31 March 2019 2019. 1–5.
37.
go back to reference Feng LH, Su T, Bu KP, Ren S, Yang Z, Deng CE, et al. A clinical prediction nomogram to assess risk of colorectal cancer among patients with type 2 diabetes. Sci Rep. 2020;10(1):14359.CrossRefPubMedCentralPubMed Feng LH, Su T, Bu KP, Ren S, Yang Z, Deng CE, et al. A clinical prediction nomogram to assess risk of colorectal cancer among patients with type 2 diabetes. Sci Rep. 2020;10(1):14359.CrossRefPubMedCentralPubMed
38.
go back to reference Hao M, Wang Y, SHJACA B. An efficient algorithm coupled with synthetic minority over-sampling technique to classify imbalanced PubChem. BioAssay data. Anal Chim Acta. 2014;806:117–27.CrossRefPubMed Hao M, Wang Y, SHJACA B. An efficient algorithm coupled with synthetic minority over-sampling technique to classify imbalanced PubChem. BioAssay data. Anal Chim Acta. 2014;806:117–27.CrossRefPubMed
39.
go back to reference Huang CX, Li SX, Caraballo C, Masoudi FA, Rumsfeld JS, Spertus JA, et al. Performance metrics for the comparative analysis of clinical risk prediction models employing machine learning. Circ Cardiovasc Qual Outcomes. 2021;14(10):1076–86.CrossRef Huang CX, Li SX, Caraballo C, Masoudi FA, Rumsfeld JS, Spertus JA, et al. Performance metrics for the comparative analysis of clinical risk prediction models employing machine learning. Circ Cardiovasc Qual Outcomes. 2021;14(10):1076–86.CrossRef
40.
go back to reference Lian X, Zou J, Guo Q, Chen S, Lu L, Wang R, et al. Mortality risk prediction in Amyopathic Dermatomyositis associated with interstitial lung disease: the FLAIR model. Chest. 2020;158(4):1535–45.CrossRefPubMed Lian X, Zou J, Guo Q, Chen S, Lu L, Wang R, et al. Mortality risk prediction in Amyopathic Dermatomyositis associated with interstitial lung disease: the FLAIR model. Chest. 2020;158(4):1535–45.CrossRefPubMed
41.
go back to reference Zachariasse JM, Nieboer D, Oostenbrink R, Moll HA, Steyerberg EW. Multiple performance measures are needed to evaluate triage systems in the emergency department. J Clin Epidemiol. 2018;94:27–34.CrossRefPubMed Zachariasse JM, Nieboer D, Oostenbrink R, Moll HA, Steyerberg EW. Multiple performance measures are needed to evaluate triage systems in the emergency department. J Clin Epidemiol. 2018;94:27–34.CrossRefPubMed
42.
go back to reference The Lancet respiratory M: opening the black box of machine learning. Lancet Respir Med. 2018;6(11):801. The Lancet respiratory M: opening the black box of machine learning. Lancet Respir Med. 2018;6(11):801.
43.
go back to reference Wang K, Tian J, Zheng C, Yang H, Ren J, Liu Y, et al. Interpretable prediction of 3-year all-cause mortality in patients with heart failure caused by coronary heart disease based on machine learning and SHAP. Comput Biol Med. 2021;137:104813.CrossRefPubMed Wang K, Tian J, Zheng C, Yang H, Ren J, Liu Y, et al. Interpretable prediction of 3-year all-cause mortality in patients with heart failure caused by coronary heart disease based on machine learning and SHAP. Comput Biol Med. 2021;137:104813.CrossRefPubMed
44.
go back to reference Vickers AJ: Decision analysis for the evaluation of diagnostic tests, prediction models and molecular markers. (0003–1305 (Print)). Vickers AJ: Decision analysis for the evaluation of diagnostic tests, prediction models and molecular markers. (0003–1305 (Print)).
45.
go back to reference van den Bosch T, Warps AK, tot Babberich MPM, Stamm C, Geerts BF, Vermeulen L, et al. Predictors of 30-day mortality among Dutch patients undergoing colorectal Cancer surgery, 2011-2016. JAMA Netw Open. 2021;4(4):e217737.CrossRefPubMedCentralPubMed van den Bosch T, Warps AK, tot Babberich MPM, Stamm C, Geerts BF, Vermeulen L, et al. Predictors of 30-day mortality among Dutch patients undergoing colorectal Cancer surgery, 2011-2016. JAMA Netw Open. 2021;4(4):e217737.CrossRefPubMedCentralPubMed
46.
go back to reference Kurkcu M, Meijer RI, Lonterman S, Muller M. de van der Schueren MAE: the association between nutritional status and frailty characteristics among geriatric outpatients. Clin Nutr ESPEN. 2018;23:112–6.CrossRefPubMed Kurkcu M, Meijer RI, Lonterman S, Muller M. de van der Schueren MAE: the association between nutritional status and frailty characteristics among geriatric outpatients. Clin Nutr ESPEN. 2018;23:112–6.CrossRefPubMed
47.
go back to reference van der Linden BWA, Sieber S, Cheval B, Orsholits D, Guessous I, Gabriel R, et al. Life-course circumstances and frailty in old age within different European welfare regimes: a longitudinal study with SHARE. J Gerontol Series B Psychol Sci Soc Sci. 2020;75(6):1326–35. van der Linden BWA, Sieber S, Cheval B, Orsholits D, Guessous I, Gabriel R, et al. Life-course circumstances and frailty in old age within different European welfare regimes: a longitudinal study with SHARE. J Gerontol Series B Psychol Sci Soc Sci. 2020;75(6):1326–35.
48.
go back to reference Pagès-Puigdemont N, Mangues MA, Masip M, Gabriele G, Fernández-Maldonado L, Blancafort S, et al. Patients’ perspective of medication adherence in chronic conditions: a qualitative study. Adv Ther. 2016;33(10):1740–54.CrossRefPubMedCentralPubMed Pagès-Puigdemont N, Mangues MA, Masip M, Gabriele G, Fernández-Maldonado L, Blancafort S, et al. Patients’ perspective of medication adherence in chronic conditions: a qualitative study. Adv Ther. 2016;33(10):1740–54.CrossRefPubMedCentralPubMed
49.
go back to reference Deshmukh F, Merchant SS. Explainable machine learning model for predicting GI bleed mortality in the intensive care unit. Am J Gastroenterol. 2020;115(10):1657–68.CrossRefPubMed Deshmukh F, Merchant SS. Explainable machine learning model for predicting GI bleed mortality in the intensive care unit. Am J Gastroenterol. 2020;115(10):1657–68.CrossRefPubMed
Metadata
Title
Latent trajectories of frailty and risk prediction models among geriatric community dwellers: an interpretable machine learning perspective
Authors
Yafei Wu
Maoni Jia
Chaoyi Xiang
Ya Fang
Publication date
01-12-2022
Publisher
BioMed Central
Published in
BMC Geriatrics / Issue 1/2022
Electronic ISSN: 1471-2318
DOI
https://doi.org/10.1186/s12877-022-03576-5

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