Skip to content
Open access · CC-BY via OpenAlex

Towards AI-driven longevity research: An overview

Nicola Marino, Guido Putignano, Simone Cappilli, Emmanuele Chersoni, Antonella Santuccione Chadha, Giuliana Calabrese, Evelyne Bischof, Quentin Vanhaelen, Alex Zhavoronkov, Bryan Scarano, Alessandro Mazzotta, Enrico Santus

Frontiers in Aging · 2023 · ▲ 38 citations

Abstract

While in the past technology has mostly been utilized to store information about the structural configuration of proteins and molecules for research and medical purposes, Artificial Intelligence is nowadays able to learn from the existing data how to predict and model properties and interactions, revealing important knowledge about complex biological processes, such as aging. Modern technologies, moreover, can rely on a broader set of information, including those derived from the next-generation sequencing (e.g., proteomics, lipidomics, and other omics), to understand the interactions between human body and the external environment. This is especially relevant as external factors have been shown to have a key role in aging. As the field of computational systems biology keeps improving and new biomarkers of aging are being developed, artificial intelligence promises to become a major ally of aging research.

◌ CITATION ONLY
Full text is not openly licensed for redistribution here. Read it at the source:

Read at source →

Provenance

Source
OpenAlex
DOI
10.3389/fragi.2023.1057204
Canonical
link ↗
Fetched
2026-07-06 MST

Cite this

APA
Marino, N., Putignano, G., Cappilli, S., Chersoni, E., Chadha, A.S., Calabrese, G., Bischof, E., Vanhaelen, Q., Zhavoronkov, A., Scarano, B., Mazzotta, A., &amp; Santus, E. (2023). Towards AI-driven longevity research: An overview. <em>Frontiers in Aging</em>. https://doi.org/10.3389/fragi.2023.1057204
Vancouver
Marino N, Putignano G, Cappilli S, Chersoni E, Chadha AS, Calabrese G, et al. Towards AI-driven longevity research: An overview. Frontiers in Aging. 2023. doi:10.3389/fragi.2023.1057204.
BibTeX
@article{nicola2023Toward, title = {Towards AI-driven longevity research: An overview}, author = {Nicola Marino and Guido Putignano and Simone Cappilli and Emmanuele Chersoni and Antonella Santuccione Chadha and Giuliana Calabrese and Evelyne Bischof and Quentin Vanhaelen and Alex Zhavoronkov and Bryan Scarano and Alessandro Mazzotta and Enrico Santus}, journal = {Frontiers in Aging}, year = {2023}, doi = {10.3389/fragi.2023.1057204}, }

Research neighborhood

References, citing works, and semantically nearest findings. Click a node to open it.

Related findings