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Erschienen in: Clinical Research in Cardiology 8/2021

14.07.2021 | Original Paper

Predicting survival in heart failure: a risk score based on machine-learning and change point algorithm

verfasst von: Wonse Kim, Jin Joo Park, Hae-Young Lee, Kye Hun Kim, Byung-Su Yoo, Seok-Min Kang, Sang Hong Baek, Eun-Seok Jeon, Jae-Joong Kim, Myeong-Chan Cho, Shung Chull Chae, Byung-Hee Oh, Woong Kook, Dong-Ju Choi

Erschienen in: Clinical Research in Cardiology | Ausgabe 8/2021

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Abstract

Objective

Machine learning (ML) algorithm can improve risk prediction because ML can select features and segment continuous variables effectively unbiased. We generated a risk score model for mortality with ML algorithms in East-Asian patients with heart failure (HF).

Methods

From the Korean Acute Heart Failure (KorAHF) registry, we used the data of 3683 patients with 27 continuous and 44 categorical variables. Grouped Lasso algorithm was used for the feature selection, and a novel continuous variable segmentation algorithm which is based on change-point analysis was developed for effectively segmenting the ranges of the continuous variables. Then, a risk score was assigned to each feature reflecting nonlinear relationship between features and survival times, and an integer score of maximum 100 was calculated for each patient.

Results

During 3-year follow-up time, 32.8% patients died. Using grouped Lasso, we identified 15 highly significant independent clinical features. The calculated risk score of each patient ranged between 1 and 71 points with a median of 36 (interquartile range: 27–45). The 3-year survival differed according to the quintiles of the risk score, being 80% and 17% in the 1st and 5th quintile, respectively. In addition, ML risk score had higher AUCs than MAGGIC-HF score to predict 1-year mortality (0.751 vs. 0.711, P < 0.001).

Conclusions

In East-Asian patients with HF, a novel risk score model based on ML and the new continuous variable segmentation algorithm performs better for mortality prediction than conventional prediction models.

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Literatur
1.
4.
Zurück zum Zitat O’Connor CM, Hasselblad V, Mehta RH, Tasissa G, Califf RM, Fiuzat M, Rogers JG, Leier CV, Stevenson LW (2010) Triage after hospitalization with advanced heart failure: the ESCAPE (evaluation study of congestive heart failure and pulmonary artery catheterization effectiveness) risk model and discharge score. J Am Coll Cardiol 55(9):872–878. https://doi.org/10.1016/j.jacc.2009.08.083CrossRefPubMed O’Connor CM, Hasselblad V, Mehta RH, Tasissa G, Califf RM, Fiuzat M, Rogers JG, Leier CV, Stevenson LW (2010) Triage after hospitalization with advanced heart failure: the ESCAPE (evaluation study of congestive heart failure and pulmonary artery catheterization effectiveness) risk model and discharge score. J Am Coll Cardiol 55(9):872–878. https://​doi.​org/​10.​1016/​j.​jacc.​2009.​08.​083CrossRefPubMed
5.
Zurück zum Zitat O’Connor CM, Abraham WT, Albert NM, Clare R, Gattis Stough W, Gheorghiade M, Greenberg BH, Yancy CW, Young JB, Fonarow GC (2008) Predictors of mortality after discharge in patients hospitalized with heart failure: an analysis from the Organized Program to Initiate Lifesaving Treatment in Hospitalized Patients with Heart Failure (OPTIMIZE-HF). Am Heart J 156(4):662–673. https://doi.org/10.1016/j.ahj.2008.04.030CrossRefPubMed O’Connor CM, Abraham WT, Albert NM, Clare R, Gattis Stough W, Gheorghiade M, Greenberg BH, Yancy CW, Young JB, Fonarow GC (2008) Predictors of mortality after discharge in patients hospitalized with heart failure: an analysis from the Organized Program to Initiate Lifesaving Treatment in Hospitalized Patients with Heart Failure (OPTIMIZE-HF). Am Heart J 156(4):662–673. https://​doi.​org/​10.​1016/​j.​ahj.​2008.​04.​030CrossRefPubMed
6.
Zurück zum Zitat Lee SE, Cho HJ, Lee HY, Yang HM, Choi JO, Jeon ES, Kim MS, Kim JJ, Hwang KK, Chae SC, Seo SM, Baek SH, Kang SM, Oh IY, Choi DJ, Yoo BS, Ahn Y, Park HY, Cho MC, Oh BH (2014) A multicentre cohort study of acute heart failure syndromes in Korea: rationale, design, and interim observations of the Korean Acute Heart Failure (KorAHF) registry. Eur J Heart Fail 16(6):700–708. https://doi.org/10.1002/ejhf.91CrossRefPubMed Lee SE, Cho HJ, Lee HY, Yang HM, Choi JO, Jeon ES, Kim MS, Kim JJ, Hwang KK, Chae SC, Seo SM, Baek SH, Kang SM, Oh IY, Choi DJ, Yoo BS, Ahn Y, Park HY, Cho MC, Oh BH (2014) A multicentre cohort study of acute heart failure syndromes in Korea: rationale, design, and interim observations of the Korean Acute Heart Failure (KorAHF) registry. Eur J Heart Fail 16(6):700–708. https://​doi.​org/​10.​1002/​ejhf.​91CrossRefPubMed
7.
Zurück zum Zitat Pocock SJ, Ariti CA, McMurray JJ, Maggioni A, Kober L, Squire IB, Swedberg K, Dobson J, Poppe KK, Whalley GA, Doughty RN, Meta-Analysis Global Group in Chronic Heart F (2013) Predicting survival in heart failure: a risk score based on 39,372 patients from 30 studies. Eur Heart J 34(19):1404–1413. https://doi.org/10.1093/eurheartj/ehs337CrossRefPubMed Pocock SJ, Ariti CA, McMurray JJ, Maggioni A, Kober L, Squire IB, Swedberg K, Dobson J, Poppe KK, Whalley GA, Doughty RN, Meta-Analysis Global Group in Chronic Heart F (2013) Predicting survival in heart failure: a risk score based on 39,372 patients from 30 studies. Eur Heart J 34(19):1404–1413. https://​doi.​org/​10.​1093/​eurheartj/​ehs337CrossRefPubMed
9.
Zurück zum Zitat Khanam SS, Choi E, Son JW, Lee JW, Youn YJ, Yoon J, Lee SH, Kim JY, Ahn SG, Ahn MS, Kang SM, Baek SH, Jeon ES, Kim JJ, Cho MC, Chae SC, Oh BH, Choi DJ, Yoo BS (2018) Validation of the MAGGIC (Meta-Analysis Global Group in Chronic Heart Failure) heart failure risk score and the effect of adding natriuretic peptide for predicting mortality after discharge in hospitalized patients with heart failure. PLoS ONE 13(11):e0206380. https://doi.org/10.1371/journal.pone.0206380CrossRefPubMedPubMedCentral Khanam SS, Choi E, Son JW, Lee JW, Youn YJ, Yoon J, Lee SH, Kim JY, Ahn SG, Ahn MS, Kang SM, Baek SH, Jeon ES, Kim JJ, Cho MC, Chae SC, Oh BH, Choi DJ, Yoo BS (2018) Validation of the MAGGIC (Meta-Analysis Global Group in Chronic Heart Failure) heart failure risk score and the effect of adding natriuretic peptide for predicting mortality after discharge in hospitalized patients with heart failure. PLoS ONE 13(11):e0206380. https://​doi.​org/​10.​1371/​journal.​pone.​0206380CrossRefPubMedPubMedCentral
12.
Zurück zum Zitat Bühlmann P, Van De Geer S (2011) Statistics for high-dimensional data: methods, theory and applications. Springer Science & Business Media, BerlinCrossRef Bühlmann P, Van De Geer S (2011) Statistics for high-dimensional data: methods, theory and applications. Springer Science & Business Media, BerlinCrossRef
13.
Zurück zum Zitat Hanushek EA, Jackson JE (2013) Statistical methods for social scientists. Academic Press, Cambridge Hanushek EA, Jackson JE (2013) Statistical methods for social scientists. Academic Press, Cambridge
14.
Zurück zum Zitat Yuan M, Lin Y (2006) Model selection and estimation in regression with grouped variables. J R Stat Soc Series B (Stat Methodol) 68(1):49–67CrossRef Yuan M, Lin Y (2006) Model selection and estimation in regression with grouped variables. J R Stat Soc Series B (Stat Methodol) 68(1):49–67CrossRef
15.
Zurück zum Zitat Breheny P, Huang J (2009) Penalized methods for bi-level variable selection. Stat Interface 2(3):369CrossRef Breheny P, Huang J (2009) Penalized methods for bi-level variable selection. Stat Interface 2(3):369CrossRef
16.
Zurück zum Zitat Chen J, Gupta A (2000) Parametric statistical change point analysis (Oberwolfach seminars). Birkhäuser, BaselCrossRef Chen J, Gupta A (2000) Parametric statistical change point analysis (Oberwolfach seminars). Birkhäuser, BaselCrossRef
17.
Zurück zum Zitat Blanche P, Dartigues JF, Jacqmin-Gadda H (2013) Estimating and comparing time-dependent areas under receiver operating characteristic curves for censored event times with competing risks. Stat Med 32(30):5381–5397CrossRef Blanche P, Dartigues JF, Jacqmin-Gadda H (2013) Estimating and comparing time-dependent areas under receiver operating characteristic curves for censored event times with competing risks. Stat Med 32(30):5381–5397CrossRef
18.
Zurück zum Zitat Pepe MS, Longton G, Janes H (2009) Estimation and comparison of receiver operating characteristic curves. Stand J 9(1):1–16 Pepe MS, Longton G, Janes H (2009) Estimation and comparison of receiver operating characteristic curves. Stand J 9(1):1–16
19.
Zurück zum Zitat Venkatraman E (2000) A permutation test to compare receiver operating characteristic curves. Biometrics 56(4):1134–1138CrossRef Venkatraman E (2000) A permutation test to compare receiver operating characteristic curves. Biometrics 56(4):1134–1138CrossRef
20.
Zurück zum Zitat Venkatraman ES, Begg CB (1996) A distribution-free procedure for comparing receiver operating characteristic curves from a paired experiment. Biometrika 83(4):835–848CrossRef Venkatraman ES, Begg CB (1996) A distribution-free procedure for comparing receiver operating characteristic curves from a paired experiment. Biometrika 83(4):835–848CrossRef
21.
Zurück zum Zitat Robin X, Turck N, Hainard A, Tiberti N, Lisacek F, Sanchez J-C, Müller M (2011) pROC: an open-source package for R and S+ to analyze and compare ROC curves. BMC Bioinform 12(1):1–8CrossRef Robin X, Turck N, Hainard A, Tiberti N, Lisacek F, Sanchez J-C, Müller M (2011) pROC: an open-source package for R and S+ to analyze and compare ROC curves. BMC Bioinform 12(1):1–8CrossRef
22.
Zurück zum Zitat Adler ED, Voors AA, Klein L, Macheret F, Braun OO, Urey MA, Zhu W, Sama I, Tadel M, Campagnari C (2020) Improving risk prediction in heart failure using machine learning. Eur J Heart Fail 22(1):139–147CrossRef Adler ED, Voors AA, Klein L, Macheret F, Braun OO, Urey MA, Zhu W, Sama I, Tadel M, Campagnari C (2020) Improving risk prediction in heart failure using machine learning. Eur J Heart Fail 22(1):139–147CrossRef
25.
Zurück zum Zitat Hastie T, Tibshirani R, Friedman J, Franklin J (2005) The elements of statistical learning: data mining, inference and prediction. Math Intell 27(2):83–85 Hastie T, Tibshirani R, Friedman J, Franklin J (2005) The elements of statistical learning: data mining, inference and prediction. Math Intell 27(2):83–85
26.
Zurück zum Zitat Chen J, Gupta AK (2011) Parametric statistical change point analysis: with applications to genetics, medicine, and finance. Springer Science & Business Media, Berlin Chen J, Gupta AK (2011) Parametric statistical change point analysis: with applications to genetics, medicine, and finance. Springer Science & Business Media, Berlin
27.
Zurück zum Zitat Géron A (2019) Hands-on machine learning with Scikit-learn, Keras, and tensorflow: concepts, tools, and techniques to build intelligent systems. O’Reilly Media, Newton Géron A (2019) Hands-on machine learning with Scikit-learn, Keras, and tensorflow: concepts, tools, and techniques to build intelligent systems. O’Reilly Media, Newton
Metadaten
Titel
Predicting survival in heart failure: a risk score based on machine-learning and change point algorithm
verfasst von
Wonse Kim
Jin Joo Park
Hae-Young Lee
Kye Hun Kim
Byung-Su Yoo
Seok-Min Kang
Sang Hong Baek
Eun-Seok Jeon
Jae-Joong Kim
Myeong-Chan Cho
Shung Chull Chae
Byung-Hee Oh
Woong Kook
Dong-Ju Choi
Publikationsdatum
14.07.2021
Verlag
Springer Berlin Heidelberg
Erschienen in
Clinical Research in Cardiology / Ausgabe 8/2021
Print ISSN: 1861-0684
Elektronische ISSN: 1861-0692
DOI
https://doi.org/10.1007/s00392-021-01870-7

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