Application of Systems Engineering Principles and Techniques in Biological Big Data Analytics: A Review
In the past few decades, we have witnessed tremendous advancements in biology, life sciences and healthcare. These advancements are due in no small part to the big data made available by various high-throughput technologies, the ever-advancing computing power, and the algorithmic advancements in mac...
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doaj-3c7110523b85427e8c352c93d4f55b5d2020-11-25T03:48:31ZengMDPI AGProcesses2227-97172020-08-01895195110.3390/pr8080951Application of Systems Engineering Principles and Techniques in Biological Big Data Analytics: A ReviewQ. Peter He0Jin Wang1Department of Chemical Engineering, Auburn University, Auburn, AL 36849, USADepartment of Chemical Engineering, Auburn University, Auburn, AL 36849, USAIn the past few decades, we have witnessed tremendous advancements in biology, life sciences and healthcare. These advancements are due in no small part to the big data made available by various high-throughput technologies, the ever-advancing computing power, and the algorithmic advancements in machine learning. Specifically, big data analytics such as statistical and machine learning has become an essential tool in these rapidly developing fields. As a result, the subject has drawn increased attention and many review papers have been published in just the past few years on the subject. Different from all existing reviews, this work focuses on the application of systems, engineering principles and techniques in addressing some of the common challenges in big data analytics for biological, biomedical and healthcare applications. Specifically, this review focuses on the following three key areas in biological big data analytics where systems engineering principles and techniques have been playing important roles: the principle of parsimony in addressing overfitting, the dynamic analysis of biological data, and the role of domain knowledge in biological data analytics.https://www.mdpi.com/2227-9717/8/8/951biological big datasystems engineeringmachine learningfeature engineeringoverfittingdynamic analysis |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Q. Peter He Jin Wang |
spellingShingle |
Q. Peter He Jin Wang Application of Systems Engineering Principles and Techniques in Biological Big Data Analytics: A Review Processes biological big data systems engineering machine learning feature engineering overfitting dynamic analysis |
author_facet |
Q. Peter He Jin Wang |
author_sort |
Q. Peter He |
title |
Application of Systems Engineering Principles and Techniques in Biological Big Data Analytics: A Review |
title_short |
Application of Systems Engineering Principles and Techniques in Biological Big Data Analytics: A Review |
title_full |
Application of Systems Engineering Principles and Techniques in Biological Big Data Analytics: A Review |
title_fullStr |
Application of Systems Engineering Principles and Techniques in Biological Big Data Analytics: A Review |
title_full_unstemmed |
Application of Systems Engineering Principles and Techniques in Biological Big Data Analytics: A Review |
title_sort |
application of systems engineering principles and techniques in biological big data analytics: a review |
publisher |
MDPI AG |
series |
Processes |
issn |
2227-9717 |
publishDate |
2020-08-01 |
description |
In the past few decades, we have witnessed tremendous advancements in biology, life sciences and healthcare. These advancements are due in no small part to the big data made available by various high-throughput technologies, the ever-advancing computing power, and the algorithmic advancements in machine learning. Specifically, big data analytics such as statistical and machine learning has become an essential tool in these rapidly developing fields. As a result, the subject has drawn increased attention and many review papers have been published in just the past few years on the subject. Different from all existing reviews, this work focuses on the application of systems, engineering principles and techniques in addressing some of the common challenges in big data analytics for biological, biomedical and healthcare applications. Specifically, this review focuses on the following three key areas in biological big data analytics where systems engineering principles and techniques have been playing important roles: the principle of parsimony in addressing overfitting, the dynamic analysis of biological data, and the role of domain knowledge in biological data analytics. |
topic |
biological big data systems engineering machine learning feature engineering overfitting dynamic analysis |
url |
https://www.mdpi.com/2227-9717/8/8/951 |
work_keys_str_mv |
AT qpeterhe applicationofsystemsengineeringprinciplesandtechniquesinbiologicalbigdataanalyticsareview AT jinwang applicationofsystemsengineeringprinciplesandtechniquesinbiologicalbigdataanalyticsareview |
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1724498613612052480 |