HealthSense: classification of health-related sensor data through user-assisted machine learning. Stuntebeck, E., P., Davis II, J., S., Abowd, G., D., & Blount, M. In Proceedings of the Workshop on Mobile Computing Systems and Applications (HotMobile), pages 1-5, 2, 2008. ACM Press.
HealthSense: classification of health-related sensor data through user-assisted machine learning [link]Website  abstract   bibtex   
Remote patient monitoring generates much more data than healthcare professionals are able to manually interpret. Automated detection of events of interest is therefore critical so that these points in the data can be marked for later review. However, for some important chronic health conditions, such as pain and depression, automated detection is only partially achievable. To assist with this problem we developed HealthSense, a framework for real-time tagging of health-related sensor data. HealthSense transmits sensor data from the patient to a server for analysis via machine learning techniques. The system uses patient input to assist with classification of interesting events (e.g., pain or itching). Due to variations between patients, sensors, and condition types, we presume that our initial classification is imperfect and accommodate this by incorporating user feedback into the machine learning process. This is done by occasionally asking the patient whether they are experiencing the condition being monitored. Their response is used to confirm or reject the classification made by the server and continually improve the accuracy of the classifier's decisions on what data is of interest to the health-care provider.
@inProceedings{
 title = {HealthSense: classification of health-related sensor data through user-assisted machine learning},
 type = {inProceedings},
 year = {2008},
 identifiers = {[object Object]},
 keywords = {healthcare,human,sensors,summarized},
 pages = {1-5},
 websites = {http://dx.doi.org/10.1145/1411759.1411761},
 month = {2},
 publisher = {ACM Press},
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 abstract = {Remote patient monitoring generates much more data than healthcare professionals are able to manually interpret. Automated detection of events of interest is therefore critical so that these points in the data can be marked for later review. However, for some important chronic health conditions, such as pain and depression, automated detection is only partially achievable. To assist with this problem we developed HealthSense, a framework for real-time tagging of health-related sensor data. HealthSense transmits sensor data from the patient to a server for analysis via machine learning techniques. The system uses patient input to assist with classification of interesting events (e.g., pain or itching). Due to variations between patients, sensors, and condition types, we presume that our initial classification is imperfect and accommodate this by incorporating user feedback into the machine learning process. This is done by occasionally asking the patient whether they are experiencing the condition being monitored. Their response is used to confirm or reject the classification made by the server and continually improve the accuracy of the classifier's decisions on what data is of interest to the health-care provider.},
 bibtype = {inProceedings},
 author = {Stuntebeck, Erich P and Davis II, John S and Abowd, Gregory D and Blount, Marion},
 booktitle = {Proceedings of the Workshop on Mobile Computing Systems and Applications (HotMobile)}
}

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