Literature DB >> 30472217

Artificial intelligence for aging and longevity research: Recent advances and perspectives.

Alex Zhavoronkov1, Polina Mamoshina2, Quentin Vanhaelen3, Morten Scheibye-Knudsen4, Alexey Moskalev5, Alex Aliper6.   

Abstract

The applications of modern artificial intelligence (AI) algorithms within the field of aging research offer tremendous opportunities. Aging is an almost universal unifying feature possessed by all living organisms, tissues, and cells. Modern deep learning techniques used to develop age predictors offer new possibilities for formerly incompatible dynamic and static data types. AI biomarkers of aging enable a holistic view of biological processes and allow for novel methods for building causal models-extracting the most important features and identifying biological targets and mechanisms. Recent developments in generative adversarial networks (GANs) and reinforcement learning (RL) permit the generation of diverse synthetic molecular and patient data, identification of novel biological targets, and generation of novel molecular compounds with desired properties and geroprotectors. These novel techniques can be combined into a unified, seamless end-to-end biomarker development, target identification, drug discovery and real world evidence pipeline that may help accelerate and improve pharmaceutical research and development practices. Modern AI is therefore expected to contribute to the credibility and prominence of longevity biotechnology in the healthcare and pharmaceutical industry, and to the convergence of countless areas of research.
Copyright © 2018 The Authors. Published by Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Aging biomarker; Artificial intelligence; Deep learning; Drug discovery; Generative adversarial networks; Metalearning; Reinforcement learning; Symbolic learning

Year:  2018        PMID: 30472217     DOI: 10.1016/j.arr.2018.11.003

Source DB:  PubMed          Journal:  Ageing Res Rev        ISSN: 1568-1637            Impact factor:   10.895


  27 in total

1.  Identification of Therapeutic Targets for Amyotrophic Lateral Sclerosis Using PandaOmics - An AI-Enabled Biological Target Discovery Platform.

Authors:  Frank W Pun; Bonnie Hei Man Liu; Xi Long; Hoi Wing Leung; Geoffrey Ho Duen Leung; Quinlan T Mewborne; Junli Gao; Anastasia Shneyderman; Ivan V Ozerov; Ju Wang; Feng Ren; Alexander Aliper; Evelyne Bischof; Evgeny Izumchenko; Xiaoming Guan; Ke Zhang; Bai Lu; Jeffrey D Rothstein; Merit E Cudkowicz; Alex Zhavoronkov
Journal:  Front Aging Neurosci       Date:  2022-06-28       Impact factor: 5.702

2.  The Inflamm-Aging Model Identifies Key Risk Factors in Atherosclerosis.

Authors:  Yudan He; Yao Chen; Lilin Yao; Junyi Wang; Xianzheng Sha; Yin Wang
Journal:  Front Genet       Date:  2022-05-30       Impact factor: 4.772

Review 3.  Artificial intelligence approaches to predicting and detecting cognitive decline in older adults: A conceptual review.

Authors:  Sarah A Graham; Ellen E Lee; Dilip V Jeste; Ryan Van Patten; Elizabeth W Twamley; Camille Nebeker; Yasunori Yamada; Ho-Cheol Kim; Colin A Depp
Journal:  Psychiatry Res       Date:  2019-12-09       Impact factor: 3.222

4.  The NAD+-mitophagy axis in healthy longevity and in artificial intelligence-based clinical applications.

Authors:  Yahyah Aman; Johannes Frank; Sofie Hindkjær Lautrup; Adrian Matysek; Zhangming Niu; Guang Yang; Liu Shi; Linda H Bergersen; Jon Storm-Mathisen; Lene J Rasmussen; Vilhelm A Bohr; Hilde Nilsen; Evandro F Fang
Journal:  Mech Ageing Dev       Date:  2019-12-05       Impact factor: 5.432

Review 5.  Deep learning for biological age estimation.

Authors:  Syed Ashiqur Rahman; Peter Giacobbi; Lee Pyles; Charles Mullett; Gianfranco Doretto; Donald A Adjeroh
Journal:  Brief Bioinform       Date:  2021-03-22       Impact factor: 11.622

6.  Quantification of the pace of biological aging in humans through a blood test, the DunedinPoAm DNA methylation algorithm.

Authors:  Daniel W Belsky; Avshalom Caspi; Louise Arseneault; Andrea Baccarelli; David L Corcoran; Xu Gao; Eiliss Hannon; Hona Lee Harrington; Line Jh Rasmussen; Renate Houts; Kim Huffman; William E Kraus; Dayoon Kwon; Jonathan Mill; Carl F Pieper; Joseph A Prinz; Richie Poulton; Joel Schwartz; Karen Sugden; Pantel Vokonas; Benjamin S Williams; Terrie E Moffitt
Journal:  Elife       Date:  2020-05-05       Impact factor: 8.140

7.  A novel drug repurposing approach for non-small cell lung cancer using deep learning.

Authors:  Bingrui Li; Chan Dai; Lijun Wang; Hailong Deng; Yingying Li; Zheng Guan; Haihong Ni
Journal:  PLoS One       Date:  2020-06-11       Impact factor: 3.240

8.  DeepMAge: A Methylation Aging Clock Developed with Deep Learning.

Authors:  Fedor Galkin; Polina Mamoshina; Kirill Kochetov; Denis Sidorenko; Alex Zhavoronkov
Journal:  Aging Dis       Date:  2021-08-01       Impact factor: 6.745

9.  Deep Learning using Convolutional LSTM estimates Biological Age from Physical Activity.

Authors:  Syed Ashiqur Rahman; Donald A Adjeroh
Journal:  Sci Rep       Date:  2019-08-06       Impact factor: 4.379

Review 10.  Inflammation, epigenetics, and metabolism converge to cell senescence and ageing: the regulation and intervention.

Authors:  Xudong Zhu; Zhiyang Chen; Weiyan Shen; Gang Huang; John M Sedivy; Hu Wang; Zhenyu Ju
Journal:  Signal Transduct Target Ther       Date:  2021-06-28
View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.