Machine Learning Algorithms Applied to Identify Microbial Species by Their Motility

(1) Background: Future missions to potentially habitable places in the Solar System require biochemistry-independent methods for detecting potential alien life forms. The technology was not advanced enough for onboard machine analysis of microscopic observations to be performed in past missions, but...

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Main Authors: Max Riekeles, Janosch Schirmack, Dirk Schulze-Makuch
Format: Article
Language:English
Published: MDPI AG 2021-01-01
Series:Life
Subjects:
Online Access:https://www.mdpi.com/2075-1729/11/1/44
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spelling doaj-5de9cfc0594d416d95d785e80ce7a6e52021-01-13T00:06:06ZengMDPI AGLife2075-17292021-01-0111444410.3390/life11010044Machine Learning Algorithms Applied to Identify Microbial Species by Their MotilityMax Riekeles0Janosch Schirmack1Dirk Schulze-Makuch2Astrobiology Group, Center of Astronomy and Astrophysics, Technical University Berlin, 10623 Berlin, GermanyAstrobiology Group, Center of Astronomy and Astrophysics, Technical University Berlin, 10623 Berlin, GermanyAstrobiology Group, Center of Astronomy and Astrophysics, Technical University Berlin, 10623 Berlin, Germany(1) Background: Future missions to potentially habitable places in the Solar System require biochemistry-independent methods for detecting potential alien life forms. The technology was not advanced enough for onboard machine analysis of microscopic observations to be performed in past missions, but recent increases in computational power make the use of automated in-situ analyses feasible. (2) Methods: Here, we present a semi-automated experimental setup, capable of distinguishing the movement of abiotic particles due to Brownian motion from the motility behavior of the bacteria <i>Pseudoalteromonas</i><i> </i><i>haloplanktis</i><i>, </i><i>Planococcus</i><i> </i><i>halocryophilus</i><i>, Bacillus subtilis</i><i>,</i><i> and Escherichia coli</i>. Supervised machine learning algorithms were also used to specifically identify these species based on their characteristic motility behavior. (3) Results: While we were able to distinguish microbial motility from the abiotic movements due to Brownian motion with an accuracy exceeding 99%, the accuracy of the automated identification rates for the selected species does not exceed 82%. (4) Conclusions: Motility is an excellent biosignature, which can be used as a tool for upcoming life-detection missions. This study serves as the basis for the further development of a microscopic life recognition system for upcoming missions to Mars or the ocean worlds of the outer Solar System.https://www.mdpi.com/2075-1729/11/1/44machine learningmotilitybiosignatureautomationspecies identificationlife detection
collection DOAJ
language English
format Article
sources DOAJ
author Max Riekeles
Janosch Schirmack
Dirk Schulze-Makuch
spellingShingle Max Riekeles
Janosch Schirmack
Dirk Schulze-Makuch
Machine Learning Algorithms Applied to Identify Microbial Species by Their Motility
Life
machine learning
motility
biosignature
automation
species identification
life detection
author_facet Max Riekeles
Janosch Schirmack
Dirk Schulze-Makuch
author_sort Max Riekeles
title Machine Learning Algorithms Applied to Identify Microbial Species by Their Motility
title_short Machine Learning Algorithms Applied to Identify Microbial Species by Their Motility
title_full Machine Learning Algorithms Applied to Identify Microbial Species by Their Motility
title_fullStr Machine Learning Algorithms Applied to Identify Microbial Species by Their Motility
title_full_unstemmed Machine Learning Algorithms Applied to Identify Microbial Species by Their Motility
title_sort machine learning algorithms applied to identify microbial species by their motility
publisher MDPI AG
series Life
issn 2075-1729
publishDate 2021-01-01
description (1) Background: Future missions to potentially habitable places in the Solar System require biochemistry-independent methods for detecting potential alien life forms. The technology was not advanced enough for onboard machine analysis of microscopic observations to be performed in past missions, but recent increases in computational power make the use of automated in-situ analyses feasible. (2) Methods: Here, we present a semi-automated experimental setup, capable of distinguishing the movement of abiotic particles due to Brownian motion from the motility behavior of the bacteria <i>Pseudoalteromonas</i><i> </i><i>haloplanktis</i><i>, </i><i>Planococcus</i><i> </i><i>halocryophilus</i><i>, Bacillus subtilis</i><i>,</i><i> and Escherichia coli</i>. Supervised machine learning algorithms were also used to specifically identify these species based on their characteristic motility behavior. (3) Results: While we were able to distinguish microbial motility from the abiotic movements due to Brownian motion with an accuracy exceeding 99%, the accuracy of the automated identification rates for the selected species does not exceed 82%. (4) Conclusions: Motility is an excellent biosignature, which can be used as a tool for upcoming life-detection missions. This study serves as the basis for the further development of a microscopic life recognition system for upcoming missions to Mars or the ocean worlds of the outer Solar System.
topic machine learning
motility
biosignature
automation
species identification
life detection
url https://www.mdpi.com/2075-1729/11/1/44
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AT janoschschirmack machinelearningalgorithmsappliedtoidentifymicrobialspeciesbytheirmotility
AT dirkschulzemakuch machinelearningalgorithmsappliedtoidentifymicrobialspeciesbytheirmotility
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