How are you feeling?: A personalized methodology for predicting mental states from temporally observable physical and behavioral information

© 2017 Elsevier Inc. It is believed that anomalous mental states such as stress and anxiety not only cause suffering for the individuals, but also lead to tragedies in some extreme cases. The ability to predict the mental state of an individual at both current and future time periods could prove cri...

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Main Authors: Suppawong Tuarob, Conrad S. Tucker, Soundar Kumara, C. Lee Giles, Aaron L. Pincus, David E. Conroy, Nilam Ram
Other Authors: Mahidol University
Format: Article
Published: 2018
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Online Access:https://repository.li.mahidol.ac.th/handle/123456789/42362
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spelling th-mahidol.423622019-03-14T15:03:25Z How are you feeling?: A personalized methodology for predicting mental states from temporally observable physical and behavioral information Suppawong Tuarob Conrad S. Tucker Soundar Kumara C. Lee Giles Aaron L. Pincus David E. Conroy Nilam Ram Mahidol University Pennsylvania State University Northwestern University Feinberg School of Medicine Computer Science © 2017 Elsevier Inc. It is believed that anomalous mental states such as stress and anxiety not only cause suffering for the individuals, but also lead to tragedies in some extreme cases. The ability to predict the mental state of an individual at both current and future time periods could prove critical to healthcare practitioners. Currently, the practical way to predict an individual's mental state is through mental examinations that involve psychological experts performing the evaluations. However, such methods can be time and resource consuming, mitigating their broad applicability to a wide population. Furthermore, some individuals may also be unaware of their mental states or may feel uncomfortable to express themselves during the evaluations. Hence, their anomalous mental states could remain undetected for a prolonged period of time. The objective of this work is to demonstrate the ability of using advanced machine learning based approaches to generate mathematical models that predict current and future mental states of an individual. The problem of mental state prediction is transformed into the time series forecasting problem, where an individual is represented as a multivariate time series stream of monitored physical and behavioral attributes. A personalized mathematical model is then automatically generated to capture the dependencies among these attributes, which is used for prediction of mental states for each individual. In particular, we first illustrate the drawbacks of traditional multivariate time series forecasting methodologies such as vector autoregression. Then, we show that such issues could be mitigated by using machine learning regression techniques which are modified for capturing temporal dependencies in time series data. A case study using the data from 150 human participants illustrates that the proposed machine learning based forecasting methods are more suitable for high-dimensional psychological data than the traditional vector autoregressive model in terms of both magnitude of error and directional accuracy. These results not only present a successful usage of machine learning techniques in psychological studies, but also serve as a building block for multiple medical applications that could rely on an automated system to gauge individuals’ mental states. 2018-12-21T07:21:05Z 2019-03-14T08:03:25Z 2018-12-21T07:21:05Z 2019-03-14T08:03:25Z 2017-04-01 Article Journal of Biomedical Informatics. Vol.68, (2017), 1-19 10.1016/j.jbi.2017.02.010 15320464 2-s2.0-85014237081 https://repository.li.mahidol.ac.th/handle/123456789/42362 Mahidol University SCOPUS https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85014237081&origin=inward
institution Mahidol University
building Mahidol University Library
continent Asia
country Thailand
Thailand
content_provider Mahidol University Library
collection Mahidol University Institutional Repository
topic Computer Science
spellingShingle Computer Science
Suppawong Tuarob
Conrad S. Tucker
Soundar Kumara
C. Lee Giles
Aaron L. Pincus
David E. Conroy
Nilam Ram
How are you feeling?: A personalized methodology for predicting mental states from temporally observable physical and behavioral information
description © 2017 Elsevier Inc. It is believed that anomalous mental states such as stress and anxiety not only cause suffering for the individuals, but also lead to tragedies in some extreme cases. The ability to predict the mental state of an individual at both current and future time periods could prove critical to healthcare practitioners. Currently, the practical way to predict an individual's mental state is through mental examinations that involve psychological experts performing the evaluations. However, such methods can be time and resource consuming, mitigating their broad applicability to a wide population. Furthermore, some individuals may also be unaware of their mental states or may feel uncomfortable to express themselves during the evaluations. Hence, their anomalous mental states could remain undetected for a prolonged period of time. The objective of this work is to demonstrate the ability of using advanced machine learning based approaches to generate mathematical models that predict current and future mental states of an individual. The problem of mental state prediction is transformed into the time series forecasting problem, where an individual is represented as a multivariate time series stream of monitored physical and behavioral attributes. A personalized mathematical model is then automatically generated to capture the dependencies among these attributes, which is used for prediction of mental states for each individual. In particular, we first illustrate the drawbacks of traditional multivariate time series forecasting methodologies such as vector autoregression. Then, we show that such issues could be mitigated by using machine learning regression techniques which are modified for capturing temporal dependencies in time series data. A case study using the data from 150 human participants illustrates that the proposed machine learning based forecasting methods are more suitable for high-dimensional psychological data than the traditional vector autoregressive model in terms of both magnitude of error and directional accuracy. These results not only present a successful usage of machine learning techniques in psychological studies, but also serve as a building block for multiple medical applications that could rely on an automated system to gauge individuals’ mental states.
author2 Mahidol University
author_facet Mahidol University
Suppawong Tuarob
Conrad S. Tucker
Soundar Kumara
C. Lee Giles
Aaron L. Pincus
David E. Conroy
Nilam Ram
format Article
author Suppawong Tuarob
Conrad S. Tucker
Soundar Kumara
C. Lee Giles
Aaron L. Pincus
David E. Conroy
Nilam Ram
author_sort Suppawong Tuarob
title How are you feeling?: A personalized methodology for predicting mental states from temporally observable physical and behavioral information
title_short How are you feeling?: A personalized methodology for predicting mental states from temporally observable physical and behavioral information
title_full How are you feeling?: A personalized methodology for predicting mental states from temporally observable physical and behavioral information
title_fullStr How are you feeling?: A personalized methodology for predicting mental states from temporally observable physical and behavioral information
title_full_unstemmed How are you feeling?: A personalized methodology for predicting mental states from temporally observable physical and behavioral information
title_sort how are you feeling?: a personalized methodology for predicting mental states from temporally observable physical and behavioral information
publishDate 2018
url https://repository.li.mahidol.ac.th/handle/123456789/42362
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