Extracting Insights From Temporal Data by Integrating Dynamic Modeling and Machine Learning

被引:5
|
作者
Ballweg, Richard [1 ]
Engevik, Kristen A. [1 ]
Montrose, Marshall H. [1 ]
Aihara, Eitaro [1 ]
Zhang, Tongli [1 ]
机构
[1] Univ Cincinnati, Coll Med, Dept Pharmacol & Syst Physiol, Cincinnati, OH USA
来源
FRONTIERS IN PHYSIOLOGY | 2020年 / 11卷
基金
美国国家卫生研究院;
关键词
gastric epithelium; organoids; actin; restitution; computational model; EPITHELIAL RESTITUTION; GASTRIC REPAIR; ORGANOIDS;
D O I
10.3389/fphys.2020.01012
中图分类号
Q4 [生理学];
学科分类号
071003 ;
摘要
Biological processes are dynamic. As a result, temporal analyses are necessary to fully understand the complex interactions that occurs within these systems. One example of a multifaceted biological process is restitution: the initial step in complex wound repair. Restitution is a dynamic process that depends on an elegant orchestration between damaged cells and their intact neighbors. Such orchestration enables the quick repair of the damaged area, which is essential to preserve epithelial integrity and prevent further injury. High quality dynamic data of the cellular and molecular events that make up the gastric restitution process has been documented. However, comprehensive dynamic models that connect all relevant molecular interactions to cellular behaviors are challenging to construct and experimentally validate. In order to efficiently provide feedback to ongoing experimental work, we have integrated dynamical modeling and machine learning to efficiently extract data-driven insights without incorporating detailed mechanisms. Dynamical models convert time course data into a set of static features, which are then subjected to machine learning analysis. The integrated analysis provides data-driven insights into how repair might be regulated in individual gastric organoids. We have provided a "proof of concept" of how such an analysis pipeline can be used to analyze any temporal dataset and provide timely data-driven insights.
引用
收藏
页数:10
相关论文
共 50 条
  • [31] Integrating relational chemical data with machine learning algorithms
    Henry, DR
    Chen, LL
    Grier, DL
    Durant, JL
    Leland, BA
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2003, 225 : U783 - U783
  • [32] Extracting spatial information from temporal odor patterns: insights from insects
    Szyszka, Paul
    Emonet, Thierry
    Edwards, Timothy L.
    CURRENT OPINION IN INSECT SCIENCE, 2023, 59
  • [33] Extracting the Optical Depth to Reionization τ from 21 cm Data Using Machine Learning Techniques
    Billings, Tashalee S.
    La Plante, Paul
    Aguirre, James E.
    PUBLICATIONS OF THE ASTRONOMICAL SOCIETY OF THE PACIFIC, 2021, 133 (1022)
  • [34] On the Machine Learning Based Business Workflows Extracting Knowledge from Large Scale Graph Data
    Musaoglu, Mert
    Bekler, Merve
    Budak, Huseyin
    Akcelik, Celal
    Aktas, Mehmet S.
    COMPUTATIONAL SCIENCE AND ITS APPLICATIONS - ICCSA 2022 WORKSHOPS, PART V, 2022, 13381 : 463 - 475
  • [35] Crop Intensity Mapping Using Dynamic Time Warping and Machine Learning from Multi-Temporal PlanetScope Data
    Rafif, Raihan
    Kusuma, Sandiaga Swahyu
    Saringatin, Siti
    Nanda, Giara Iman
    Wicaksono, Pramaditya
    Arjasakusuma, Sanjiwana
    LAND, 2021, 10 (12)
  • [36] Integrating Static and Dynamic Malware Analysis Using Machine Learning
    Mangialardo, R. J.
    Duarte, J. C.
    IEEE LATIN AMERICA TRANSACTIONS, 2015, 13 (09) : 3080 - 3087
  • [37] Integrating decision modeling and machine learning to inform treatment stratification
    Glynn, David
    Giardina, John
    Hatamyar, Julia
    Pandya, Ankur
    Soares, Marta
    Kreif, Noemi
    HEALTH ECONOMICS, 2024, 33 (08) : 1772 - 1792
  • [38] Causal Models and Learning from Data Integrating Causal Modeling and Statistical Estimation
    Petersen, Maya L.
    van der Laan, Mark J.
    EPIDEMIOLOGY, 2014, 25 (03) : 418 - 426
  • [39] Dynamic allostery and thrombin: Insights from modeling mutants, ions and binding using molecular dynamics, statistical analysis and machine learning
    Salsbury, Freddie R.
    Wu, Dizhou
    Xiao, Jiajie
    BIOPHYSICAL JOURNAL, 2024, 123 (03) : 62A - 62A
  • [40] Spatial and Temporal Modeling of Urban Building Energy Consumption Using Machine Learning and Open Data
    Roth, Jonathan
    Bailey, Aimee
    Choudhary, Sonika
    Jain, Rishee K.
    COMPUTING IN CIVIL ENGINEERING 2019: SMART CITIES, SUSTAINABILITY, AND RESILIENCE, 2019, : 459 - 467