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

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          Abstract

          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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          Most cited references53

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          DeepLabCut: markerless pose estimation of user-defined body parts with deep learning

          Quantifying behavior is crucial for many applications in neuroscience. Videography provides easy methods for the observation and recording of animal behavior in diverse settings, yet extracting particular aspects of a behavior for further analysis can be highly time consuming. In motor control studies, humans or other animals are often marked with reflective markers to assist with computer-based tracking, but markers are intrusive, and the number and location of the markers must be determined a priori. Here we present an efficient method for markerless pose estimation based on transfer learning with deep neural networks that achieves excellent results with minimal training data. We demonstrate the versatility of this framework by tracking various body parts in multiple species across a broad collection of behaviors. Remarkably, even when only a small number of frames are labeled (~200), the algorithm achieves excellent tracking performance on test frames that is comparable to human accuracy.
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            Scikit‐learn: machine learning in python

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              Machine Learning in Medicine.

              Rahul Deo (2015)
              Spurred by advances in processing power, memory, storage, and an unprecedented wealth of data, computers are being asked to tackle increasingly complex learning tasks, often with astonishing success. Computers have now mastered a popular variant of poker, learned the laws of physics from experimental data, and become experts in video games - tasks that would have been deemed impossible not too long ago. In parallel, the number of companies centered on applying complex data analysis to varying industries has exploded, and it is thus unsurprising that some analytic companies are turning attention to problems in health care. The purpose of this review is to explore what problems in medicine might benefit from such learning approaches and use examples from the literature to introduce basic concepts in machine learning. It is important to note that seemingly large enough medical data sets and adequate learning algorithms have been available for many decades, and yet, although there are thousands of papers applying machine learning algorithms to medical data, very few have contributed meaningfully to clinical care. This lack of impact stands in stark contrast to the enormous relevance of machine learning to many other industries. Thus, part of my effort will be to identify what obstacles there may be to changing the practice of medicine through statistical learning approaches, and discuss how these might be overcome.
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                Author and article information

                Journal
                eNeuro
                eNeuro
                eneuro
                eNeuro
                eNeuro
                Society for Neuroscience
                2373-2822
                23 December 2022
                6 January 2022
                January 2023
                : 10
                : 1
                : ENEURO.0335-22.2022
                Affiliations
                [1 ]Department of Neuroscience, University of Rochester School of Medicine and Dentistry , Rochester, NY 14642
                [2 ]Lyda Hill Department of Bioinformatics and BioHPC, University of Texas Southwestern Medical Center, Dallas, TX 75390
                Author notes

                The authors declare no competing financial interests.

                Author contributions: J.W., P.K., L.W., and J.P.M. designed research; J.W. performed research; J.W. and P.K. analyzed data; J.W. and J.P.M. wrote the paper.

                This work was supported by National Institute of Deafness and Other Communication Disorders of the National Institutes of Health Grants R01DC017985 and R01DC015784 (to J.P.M.) and the BioHPC Fellows Program (J.W.).

                Correspondence should be addressed to Jinxin Wang at jinxin_wang@ 123456urmc.rochester.edu or Julian P. Meeks at julian_meeks@ 123456urmc.rochester.edu .
                Author information
                https://orcid.org/0000-0002-7537-4491
                Article
                eN-MNT-0335-22
                10.1523/ENEURO.0335-22.2022
                9833056
                36564214
                2cf42434-c1eb-4488-9ce3-7246752a230c
                Copyright © 2023 Wang et al.

                This is an open-access article distributed under the terms of the Creative Commons Attribution 4.0 International license, which permits unrestricted use, distribution and reproduction in any medium provided that the original work is properly attributed.

                History
                : 22 August 2022
                : 6 December 2022
                : 15 December 2022
                Page count
                Figures: 8, Tables: 0, Equations: 0, References: 55, Pages: 15, Words: 00
                Funding
                Funded by: HHS | NIH | National Institute on Deafness and Other Communication Disorders (NIDCD), doi 10.13039/100000055;
                Award ID: R01DC017985
                Award ID: R01DC015784
                Categories
                7
                Research Article: Methods/New Tools
                Novel Tools and Methods
                Custom metadata
                January 2023

                hidden markov model,machine learning,quantification of behavior,random forest,risk assessment behavior

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