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Decoding the role of transcriptomic clocks in the human prefrontal cortex.


ABSTRACT: Aging is a complex process with interindividual variability, which can be measured by aging biological clocks. Aging clocks are machine-learning algorithms guided by biological information and associated with mortality risk and a wide range of health outcomes. One of these aging clocks are transcriptomic clocks, which uses gene expression data to predict biological age; however, their functional role is unknown. Here, we profiled two transcriptomic clocks (RNAAgeCalc and knowledge-based deep neural network clock) in a large dataset of human postmortem prefrontal cortex (PFC) samples. We identified that deep-learning transcriptomic clock outperforms RNAAgeCalc to predict transcriptomic age in the human PFC. We identified associations of transcriptomic clocks with psychiatric-related traits. Further, we applied system biology algorithms to identify common gene networks among both clocks and performed pathways enrichment analyses to assess its functionality and prioritize genes involved in the aging processes. Identified gene networks showed enrichment for diseases of signal transduction by growth factor receptors and second messenger pathways. We also observed enrichment of genome-wide signals of mental and physical health outcomes and identified genes previously associated with human brain aging. Our findings suggest a link between transcriptomic aging and health disorders, including psychiatric traits. Further, it reveals functional genes within the human PFC that may play an important role in aging and health risk.

SUBMITTER: Martinez-Magana JJ 

PROVIDER: S-EPMC10168432 | biostudies-literature | 2023 Apr

REPOSITORIES: biostudies-literature

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Decoding the role of transcriptomic clocks in the human prefrontal cortex.

Martínez-Magaña José J JJ   Krystal John H JH   Girgenti Matthew J MJ   Núnez-Ríos Diana L DL   Nagamatsu Sheila T ST   Andrade-Brito Diego E DE   Montalvo-Ortiz Janitza L JL  

medRxiv : the preprint server for health sciences 20230425


Aging is a complex process with interindividual variability, which can be measured by aging biological clocks. Aging clocks are machine-learning algorithms guided by biological information and associated with mortality risk and a wide range of health outcomes. One of these aging clocks are transcriptomic clocks, which uses gene expression data to predict biological age; however, their functional role is unknown. Here, we profiled two transcriptomic clocks (RNAAgeCalc and knowledge-based deep neu  ...[more]

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