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A Layered, Hybrid Machine Learning Analytic Workflow for Mouse Risk Assessment Behavior

Accurate and efficient quantification of animal behavior facilitates the understanding of the brain. An emerging approach within machine learning (ML) field is to combine multiple ML-based algorithms to quantify animal behavior. These so-called hybrid models have emerged because of limitations assoc...

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Autores principales: Wang, Jinxin, Karbasi, Paniz, Wang, Liqiang, Meeks, Julian P.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Society for Neuroscience 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9833056/
https://www.ncbi.nlm.nih.gov/pubmed/36564214
http://dx.doi.org/10.1523/ENEURO.0335-22.2022
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author Wang, Jinxin
Karbasi, Paniz
Wang, Liqiang
Meeks, Julian P.
author_facet Wang, Jinxin
Karbasi, Paniz
Wang, Liqiang
Meeks, Julian P.
author_sort Wang, Jinxin
collection PubMed
description Accurate and efficient quantification of animal behavior facilitates the understanding of the brain. An emerging approach within machine learning (ML) field is to combine multiple ML-based algorithms to quantify animal behavior. These so-called hybrid models have emerged because of limitations associated with supervised [e.g., random forest (RF)] and unsupervised [e.g., hidden Markov model (HMM)] ML models. For example, RF models lack temporal information across video frames, and HMM latent states are often difficult to interpret. We sought to develop a hybrid model, and did so in the context of a study of mouse risk assessment behavior. We used DeepLabCut to estimate the positions of mouse body parts. Positional features were calculated using DeepLabCut outputs and were used to train RF and HMM models with equal number of states, separately. The per-frame predictions from RF and HMM models were then passed to a second HMM model layer (“reHMM”). The outputs of the reHMM layer showed improved interpretability over the initial HMM output. Finally, we combined predictions from RF and HMM models with selected positional features to train a third HMM model (“reHMM+”). This reHMM+ layered hybrid model unveiled distinctive temporal and human-interpretable behavioral patterns. We applied this workflow to investigate risk assessment to trimethylthiazoline and snake feces odor, finding unique behavioral patterns to each that were separable from attractive and neutral stimuli. We conclude that this layered, hybrid ML workflow represents a balanced approach for improving the depth and reliability of ML classifiers in chemosensory and other behavioral contexts.
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spelling pubmed-98330562023-01-12 A Layered, Hybrid Machine Learning Analytic Workflow for Mouse Risk Assessment Behavior Wang, Jinxin Karbasi, Paniz Wang, Liqiang Meeks, Julian P. eNeuro Research Article: Methods/New Tools Accurate and efficient quantification of animal behavior facilitates the understanding of the brain. An emerging approach within machine learning (ML) field is to combine multiple ML-based algorithms to quantify animal behavior. These so-called hybrid models have emerged because of limitations associated with supervised [e.g., random forest (RF)] and unsupervised [e.g., hidden Markov model (HMM)] ML models. For example, RF models lack temporal information across video frames, and HMM latent states are often difficult to interpret. We sought to develop a hybrid model, and did so in the context of a study of mouse risk assessment behavior. We used DeepLabCut to estimate the positions of mouse body parts. Positional features were calculated using DeepLabCut outputs and were used to train RF and HMM models with equal number of states, separately. The per-frame predictions from RF and HMM models were then passed to a second HMM model layer (“reHMM”). The outputs of the reHMM layer showed improved interpretability over the initial HMM output. Finally, we combined predictions from RF and HMM models with selected positional features to train a third HMM model (“reHMM+”). This reHMM+ layered hybrid model unveiled distinctive temporal and human-interpretable behavioral patterns. We applied this workflow to investigate risk assessment to trimethylthiazoline and snake feces odor, finding unique behavioral patterns to each that were separable from attractive and neutral stimuli. We conclude that this layered, hybrid ML workflow represents a balanced approach for improving the depth and reliability of ML classifiers in chemosensory and other behavioral contexts. Society for Neuroscience 2022-01-06 /pmc/articles/PMC9833056/ /pubmed/36564214 http://dx.doi.org/10.1523/ENEURO.0335-22.2022 Text en Copyright © 2023 Wang et al. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution 4.0 International license (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution and reproduction in any medium provided that the original work is properly attributed.
spellingShingle Research Article: Methods/New Tools
Wang, Jinxin
Karbasi, Paniz
Wang, Liqiang
Meeks, Julian P.
A Layered, Hybrid Machine Learning Analytic Workflow for Mouse Risk Assessment Behavior
title A Layered, Hybrid Machine Learning Analytic Workflow for Mouse Risk Assessment Behavior
title_full A Layered, Hybrid Machine Learning Analytic Workflow for Mouse Risk Assessment Behavior
title_fullStr A Layered, Hybrid Machine Learning Analytic Workflow for Mouse Risk Assessment Behavior
title_full_unstemmed A Layered, Hybrid Machine Learning Analytic Workflow for Mouse Risk Assessment Behavior
title_short A Layered, Hybrid Machine Learning Analytic Workflow for Mouse Risk Assessment Behavior
title_sort layered, hybrid machine learning analytic workflow for mouse risk assessment behavior
topic Research Article: Methods/New Tools
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9833056/
https://www.ncbi.nlm.nih.gov/pubmed/36564214
http://dx.doi.org/10.1523/ENEURO.0335-22.2022
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