Automated, high-dimensional evaluation of physiological aging and resilience in outbred mice

被引:9
作者
Chen, Zhenghao [1 ]
Raj, Anil [1 ]
Prateek, G., V [1 ]
Di Francesco, Andrea [1 ]
Liu, Justin [1 ]
Keyes, Brice E. [1 ]
Kolumam, Ganesh [1 ]
Jojic, Vladimir [1 ]
Freund, Adam [1 ]
Valenzano, Dario Riccardo [1 ]
机构
[1] Cal Life Sci LLC, South San Francisco, CA USA
关键词
aging; physiology; healthspan; resilience; Research organism : Mouse; LIFE-SPAN; LABORATORY ENVIRONMENT; DIETARY RESTRICTION; TRAIT; MODEL; AGE; ASSOCIATION; HEALTHSPAN; METABOLISM; PHENOTYPE;
D O I
10.7554/eLife.72664
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Behavior and physiology are essential readouts in many studies but have not benefited from the high-dimensional data revolution that has transformed molecular and cellular phenotyping. To address this, we developed an approach that combines commercially available automated phenotyping hardware with a systems biology analysis pipeline to generate a high-dimensional readout of mouse behavior/physiology, as well as intuitive and health-relevant summary statistics (resilience and biological age). We used this platform to longitudinally evaluate aging in hundreds of outbred mice across an age range from 3 months to 3.4 years. In contrast to the assumption that aging can only be measured at the limits of animal ability via challenge-based tasks, we observed widespread physiological and behavioral aging starting in early life. Using network connectivity analysis, we found that organism-level resilience exhibited an accelerating decline with age that was distinct from the trajectory of individual phenotypes. We developed a method, Combined Aging and Survival Prediction of Aging Rate (CASPAR), for jointly predicting chronological age and survival time and showed that the resulting model is able to predict both variables simultaneously, a behavior that is not captured by separate age and mortality prediction models. This study provides a uniquely high-resolution view of physiological aging in mice and demonstrates that systems-level analysis of physiology provides insights not captured by individual phenotypes. The approach described here allows aging, and other processes that affect behavior and physiology, to be studied with improved throughput, resolution, and phenotypic scope.
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页数:26
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共 61 条
[11]   Complex systems dynamics in aging: new evidence, continuing questions [J].
Cohen, Alan A. .
BIOGERONTOLOGY, 2016, 17 (01) :205-220
[12]   A big-data approach to understanding metabolic rate and response to obesity in laboratory mice [J].
Corrigan, June K. ;
Ramachandran, Deepti ;
He, Yuchen ;
Palmer, Colin J. ;
Jurczak, Michael J. ;
Chen, Rui ;
Li, Bingshan ;
Friedline, Randall H. ;
Kim, Jason K. ;
Ramsey, Jon J. ;
Lantier, Louise ;
McGuinness, Owen P. ;
Banks, Alexander S. .
ELIFE, 2020, 9 :1-34
[13]   Genetics of mouse behavior: Interactions with laboratory environment [J].
Crabbe, JC ;
Wahlsten, D ;
Dudek, BC .
SCIENCE, 1999, 284 (5420) :1670-1672
[14]   REGULARLY SCHEDULED VOLUNTARY EXERCISE SYNCHRONIZES THE MOUSE CIRCADIAN CLOCK [J].
EDGAR, DM ;
DEMENT, WC .
AMERICAN JOURNAL OF PHYSIOLOGY, 1991, 261 (04) :R928-R933
[15]   A cross-sectional study of male and female C57BL/6Nia mice suggests lifespan and healthspan are not necessarily correlated [J].
Fischer, Kathleen E. ;
Hoffman, Jessica M. ;
Sloane, Lauren B. ;
Gelfond, Jonathan A. L. ;
Soto, Vanessa Y. ;
Richardson, Arlan G. ;
Austad, Steven N. .
AGING-US, 2016, 8 (10) :2370-2391
[16]   Untangling Aging Using Dynamic, Organism-Level Phenotypic Networks [J].
Freund, Adam .
CELL SYSTEMS, 2019, 8 (03) :172-181
[17]   Efficient Multiple-Trait Association and Estimation of Genetic Correlation Using the Matrix-Variate Linear Mixed Model [J].
Furlotte, Nicholas A. ;
Eskin, Eleazar .
GENETICS, 2015, 200 (01) :59-U112
[18]   Quantitative Trait Locus Mapping Methods for Diversity Outbred Mice [J].
Gatti, Daniel M. ;
Svenson, Karen L. ;
Shabalin, Andrey ;
Wu, Long-Yang ;
Valdar, William ;
Simecek, Petr ;
Goodwin, Neal ;
Cheng, Riyan ;
Pomp, Daniel ;
Palmer, Abraham ;
Chesler, Elissa J. ;
Broman, Karl W. ;
Churchill, Gary A. .
G3-GENES GENOMES GENETICS, 2014, 4 (09) :1623-1633
[19]   Network Inference via the Time-Varying Graphical Lasso [J].
Hallac, David ;
Park, Youngsuk ;
Boyd, Stephen ;
Leskovec, Jure .
KDD'17: PROCEEDINGS OF THE 23RD ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2017, :205-213
[20]   Does Longer Lifespan Mean Longer Healthspan? [J].
Hansen, Malene ;
Kennedy, Brian K. .
TRENDS IN CELL BIOLOGY, 2016, 26 (08) :565-568