The Importance of Age in the Prediction of Mortality by a Frailty Index: A Machine Learning Approach in the Irish Longitudinal Study on Ageing

The quantification of biological age in humans is an important scientific endeavor in the face of ageing populations. The frailty index (FI) methodology is based on the accumulation of health deficits and captures variations in health status within individuals of the same age. The aims of this study...

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Main Authors: Sebastian Moguilner, Silvin P. Knight, James R. C. Davis, Aisling M. O’Halloran, Rose Anne Kenny, Roman Romero-Ortuno
Format: Article
Language:English
Published: MDPI AG 2021-08-01
Series:Geriatrics
Subjects:
Online Access:https://www.mdpi.com/2308-3417/6/3/84
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spelling doaj-0450d94f6a684f6495a996c2f1566f092021-09-26T00:14:16ZengMDPI AGGeriatrics2308-34172021-08-016848410.3390/geriatrics6030084The Importance of Age in the Prediction of Mortality by a Frailty Index: A Machine Learning Approach in the Irish Longitudinal Study on AgeingSebastian Moguilner0Silvin P. Knight1James R. C. Davis2Aisling M. O’Halloran3Rose Anne Kenny4Roman Romero-Ortuno5Nuclear Medicine School Foundation (FUESMEN), National Commission of Atomic Energy, Mendoza M5500CJI, ArgentinaThe Irish Longitudinal Study on Ageing (TILDA), Trinity College Dublin, D02 R590 Dublin, IrelandThe Irish Longitudinal Study on Ageing (TILDA), Trinity College Dublin, D02 R590 Dublin, IrelandThe Irish Longitudinal Study on Ageing (TILDA), Trinity College Dublin, D02 R590 Dublin, IrelandThe Irish Longitudinal Study on Ageing (TILDA), Trinity College Dublin, D02 R590 Dublin, IrelandThe Global Brain Health Institute (GBHI), Trinity College Dublin, D02 PN40 Dublin, IrelandThe quantification of biological age in humans is an important scientific endeavor in the face of ageing populations. The frailty index (FI) methodology is based on the accumulation of health deficits and captures variations in health status within individuals of the same age. The aims of this study were to assess whether the addition of age to an FI improves its mortality prediction and whether the associations of the individual FI items differ in strength. We utilized data from The Irish Longitudinal Study on Ageing to conduct, by sex, machine learning analyses of the ability of a 32-item FI to predict 8-year mortality in 8174 wave 1 participants aged 50 or more years. By wave 5, 559 men and 492 women had died. In the absence of age, the FI was an acceptable predictor of mortality with AUCs of 0.7. When age was included, AUCs improved to 0.8 in men and 0.9 in women. After age, deficits related to physical function and self-rated health tended to have higher importance scores. Not all FI variables seemed equally relevant to predict mortality, and age was by far the most relevant feature. Chronological age should remain an important consideration when interpreting the prognostic significance of an FI.https://www.mdpi.com/2308-3417/6/3/84frailtyage distributionlongitudinal studiesmortalitysupervised machine learningsex differences
collection DOAJ
language English
format Article
sources DOAJ
author Sebastian Moguilner
Silvin P. Knight
James R. C. Davis
Aisling M. O’Halloran
Rose Anne Kenny
Roman Romero-Ortuno
spellingShingle Sebastian Moguilner
Silvin P. Knight
James R. C. Davis
Aisling M. O’Halloran
Rose Anne Kenny
Roman Romero-Ortuno
The Importance of Age in the Prediction of Mortality by a Frailty Index: A Machine Learning Approach in the Irish Longitudinal Study on Ageing
Geriatrics
frailty
age distribution
longitudinal studies
mortality
supervised machine learning
sex differences
author_facet Sebastian Moguilner
Silvin P. Knight
James R. C. Davis
Aisling M. O’Halloran
Rose Anne Kenny
Roman Romero-Ortuno
author_sort Sebastian Moguilner
title The Importance of Age in the Prediction of Mortality by a Frailty Index: A Machine Learning Approach in the Irish Longitudinal Study on Ageing
title_short The Importance of Age in the Prediction of Mortality by a Frailty Index: A Machine Learning Approach in the Irish Longitudinal Study on Ageing
title_full The Importance of Age in the Prediction of Mortality by a Frailty Index: A Machine Learning Approach in the Irish Longitudinal Study on Ageing
title_fullStr The Importance of Age in the Prediction of Mortality by a Frailty Index: A Machine Learning Approach in the Irish Longitudinal Study on Ageing
title_full_unstemmed The Importance of Age in the Prediction of Mortality by a Frailty Index: A Machine Learning Approach in the Irish Longitudinal Study on Ageing
title_sort importance of age in the prediction of mortality by a frailty index: a machine learning approach in the irish longitudinal study on ageing
publisher MDPI AG
series Geriatrics
issn 2308-3417
publishDate 2021-08-01
description The quantification of biological age in humans is an important scientific endeavor in the face of ageing populations. The frailty index (FI) methodology is based on the accumulation of health deficits and captures variations in health status within individuals of the same age. The aims of this study were to assess whether the addition of age to an FI improves its mortality prediction and whether the associations of the individual FI items differ in strength. We utilized data from The Irish Longitudinal Study on Ageing to conduct, by sex, machine learning analyses of the ability of a 32-item FI to predict 8-year mortality in 8174 wave 1 participants aged 50 or more years. By wave 5, 559 men and 492 women had died. In the absence of age, the FI was an acceptable predictor of mortality with AUCs of 0.7. When age was included, AUCs improved to 0.8 in men and 0.9 in women. After age, deficits related to physical function and self-rated health tended to have higher importance scores. Not all FI variables seemed equally relevant to predict mortality, and age was by far the most relevant feature. Chronological age should remain an important consideration when interpreting the prognostic significance of an FI.
topic frailty
age distribution
longitudinal studies
mortality
supervised machine learning
sex differences
url https://www.mdpi.com/2308-3417/6/3/84
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