Individualized short-term core temperature prediction in humans using biomathematical models.

dc.contributor.authorGribok, Andrei V
dc.contributor.authorBuller, Mark J
dc.contributor.authorReifman, Jaques
dc.date.accessioned2020-02-10T17:17:16Z
dc.date.available2020-02-10T17:17:16Z
dc.date.issued2008-04-28
dc.description.abstractThis study compares and contrasts the ability of three different mathematical modeling techniques to predict individual specific body core temperature variations during physical activity The techniques include a first principles physiology based SCENARIO model a purely data driven model and a hybrid model that combines first principles and data driven components to provide an early short term 20 30 min ahead warning of an impending heat injury Their performance is investigated using two distinct datasets a Field study and a Laboratory study The results indicate that for up to a 30 min prediction horizon the purely data driven model is the most accurate technique followed by the hybrid For this prediction horizon the first principles SCENARIO model produces root mean square prediction errors that are twice as large as those obtained with the other two techniques Another important finding is that if properly regularized and developed with representative data data driven and hybrid models can be made portable from individual to individual and across studies thus significantly reducing the need for collecting developmental data and constructing and tuning individual specific models
dc.identifier.urihttp://dx.doi.org/10.1109/TBME.2007.913990
dc.identifier.urihttps://lib.digitalsquare.io/xmlui/handle/123456789/25241
dc.relation.uriIEEE transactions on bio-medical engineering
dc.titleIndividualized short-term core temperature prediction in humans using biomathematical models.en
dcterms.abstractThis study compares and contrasts the ability of three different mathematical modeling techniques to predict individual specific body core temperature variations during physical activity The techniques include a first principles physiology based SCENARIO model a purely data driven model and a hybrid model that combines first principles and data driven components to provide an early short term 20 30 min ahead warning of an impending heat injury Their performance is investigated using two distinct datasets a Field study and a Laboratory study The results indicate that for up to a 30 min prediction horizon the purely data driven model is the most accurate technique followed by the hybrid For this prediction horizon the first principles SCENARIO model produces root mean square prediction errors that are twice as large as those obtained with the other two techniques Another important finding is that if properly regularized and developed with representative data data driven and hybrid models can be made portable from individual to individual and across studies thus significantly reducing the need for collecting developmental data and constructing and tuning individual specific models
dcterms.contributorGribok, Andrei V
dcterms.contributorBuller, Mark J
dcterms.contributorReifman, Jaques
dcterms.identifierhttp://dx.doi.org/10.1109/TBME.2007.913990
dcterms.relationIEEE transactions on bio-medical engineering
dcterms.titleIndividualized short-term core temperature prediction in humans using biomathematical models.en
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