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Machine Learning for Physiological Time Series: Representing and Controlling Blood Glucose for Diabetes Management

dc.contributor.authorFox, Ian
dc.date.accessioned2020-10-04T23:32:10Z
dc.date.availableNO_RESTRICTION
dc.date.available2020-10-04T23:32:10Z
dc.date.issued2020
dc.date.submitted2020
dc.identifier.urihttps://hdl.handle.net/2027.42/163134
dc.description.abstractType 1 diabetes is a chronic health condition affecting over one million patients in the US, where blood glucose (sugar) levels are not well regulated by the body. Researchers have sought to use physiological data (e.g., blood glucose measurements) collected from wearable devices to manage this disease, either by forecasting future blood glucose levels for predictive alarms, or by automating insulin delivery for blood glucose management. However, the application of machine learning (ML) to these data is hampered by latent context, limited supervision and complex temporal dependencies. To address these challenges, we develop and evaluate novel ML approaches in the context of i) representing physiological time series, particularly for forecasting blood glucose values and ii) decision making for when and how much insulin to deliver. When learning representations, we leverage the structure of the physiological sequence as an implicit information stream. In particular, we a) incorporate latent context when predicting adverse events by jointly modeling patterns in the data and the context those patterns occurred under, b) propose novel types of self-supervision to handle limited data and c) propose deep models that predict functions underlying trajectories to encode temporal dependencies. In the context of decision making, we use reinforcement learning (RL) for blood glucose management. Through the use of an FDA-approved simulator of the glucoregulatory system, we achieve strong performance using deep RL with and without human intervention. However, the success of RL typically depends on realistic simulators or experimental real-world deployment, neither of which are currently practical for problems in health. Thus, we propose techniques for leveraging imperfect simulators and observational data. Beyond diabetes, representing and managing physiological signals is an important problem. By adapting techniques to better leverage the structure inherent in the data we can help overcome these challenges.
dc.language.isoen_US
dc.subjectmachine learning for blood glucose data
dc.titleMachine Learning for Physiological Time Series: Representing and Controlling Blood Glucose for Diabetes Management
dc.typeThesis
dc.description.thesisdegreenamePhDen_US
dc.description.thesisdegreedisciplineComputer Science & Engineering
dc.description.thesisdegreegrantorUniversity of Michigan, Horace H. Rackham School of Graduate Studies
dc.contributor.committeememberWiens, Jenna
dc.contributor.committeememberLee, Joyce M
dc.contributor.committeememberBanovic, Nikola
dc.contributor.committeememberBaveja, Satinder Singh
dc.subject.hlbsecondlevelComputer Science
dc.subject.hlbtoplevelEngineering
dc.description.bitstreamurlhttp://deepblue.lib.umich.edu/bitstream/2027.42/163134/1/ifox_1.pdfen_US
dc.identifier.orcid0000-0002-6580-9893
dc.identifier.name-orcidFox, Ian; 0000-0002-6580-9893en_US
dc.owningcollnameDissertations and Theses (Ph.D. and Master's)


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