Literature DB >> 34453631

Exploring domains, clinical implications and environmental associations of a deep learning marker of biological ageing.

Alessandro Gialluisi1, Augusto Di Castelnuovo2, Simona Costanzo3, Marialaura Bonaccio3, Mariarosaria Persichillo3, Sara Magnacca2, Amalia De Curtis3, Chiara Cerletti3, Maria Benedetta Donati3, Giovanni de Gaetano3, Enrico Capobianco4, Licia Iacoviello3,5.   

Abstract

Deep Neural Networks (DNN) have been recently developed for the estimation of Biological Age (BA), the hypothetical underlying age of an organism, which can differ from its chronological age (CA). Although promising, these population-specific algorithms warrant further characterization and validation, since their biological, clinical and environmental correlates remain largely unexplored. Here, an accurate DNN was trained to compute BA based on 36 circulating biomarkers in an Italian population (N = 23,858; age ≥ 35 years; 51.7% women). This estimate was heavily influenced by markers of metabolic, heart, kidney and liver function. The resulting Δage (BA-CA) significantly predicted mortality and hospitalization risk for all and specific causes. Slowed biological aging (Δage < 0) was associated with higher physical and mental wellbeing, healthy lifestyles (e.g. adherence to Mediterranean diet) and higher socioeconomic status (educational attainment, household income and occupational status), while accelerated aging (Δage > 0) was associated with smoking and obesity. Together, lifestyles and socioeconomic variables explained ~48% of the total variance in Δage, potentially suggesting the existence of a genetic basis. These findings validate blood-based biological aging as a marker of public health in adult Italians and provide a robust body of knowledge on its biological architecture, clinical implications and potential environmental influences.
© 2021. Springer Nature B.V.

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Keywords:  Biological ageing; Blood markers; Deep neural networks; Hospitalizations; Lifestyles; Mortality; Quality of life; Socioeconomic status

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Year:  2021        PMID: 34453631     DOI: 10.1007/s10654-021-00797-7

Source DB:  PubMed          Journal:  Eur J Epidemiol        ISSN: 0393-2990            Impact factor:   8.082


  2 in total

1.  Pathway Association Studies Reveal Gene Loci and Pathway Networks that Associated With Plasma Cystatin C Levels.

Authors:  Hongxiao Jiao; Miaomiao Zhang; Yuan Zhang; Yaogang Wang; Wei-Dong Li
Journal:  Front Genet       Date:  2021-11-25       Impact factor: 4.599

2.  Ageing and degeneration analysis using ageing-related dynamic attention on lateral cephalometric radiographs.

Authors:  Zhiyong Zhang; Ningtao Liu; Zhang Guo; Licheng Jiao; Aaron Fenster; Wenfan Jin; Yuxiang Zhang; Jie Chen; Chunxia Yan; Shuiping Gou
Journal:  NPJ Digit Med       Date:  2022-09-27
  2 in total

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