Title :
Smartphone-Based Recognition of States and State Changes in Bipolar Disorder Patients
Author :
Grunerbl, Agnes ; Muaremi, Amir ; Osmani, Venet ; Bahle, Gernot ; Ohler, Stefan ; Troster, G. ; Mayora, Oscar ; Haring, Christian ; Lukowicz, Paul
Author_Institution :
Dept. of Embedded Intell., German Res. Center for Artificial Intell., Kaiaserslautern, Germany
Abstract :
Today´s health care is difficult to imagine without the possibility to objectively measure various physiological parameters related to patients´ symptoms (from temperature through blood pressure to complex tomographic procedures). Psychiatric care remains a notable exception that heavily relies on patient interviews and self-assessment. This is due to the fact that mental illnesses manifest themselves mainly in the way patients behave throughout their daily life and, until recently there were no “behavior measurement devices.” This is now changing with the progress in wearable activity recognition and sensor enabled smartphones. In this paper, we introduce a system, which, based on smartphone-sensing is able to recognize depressive and manic states and detect state changes of patients suffering from bipolar disorder. Drawing upon a real-life dataset of ten patients, recorded over a time period of 12 weeks (in total over 800 days of data tracing 17 state changes) by four different sensing modalities, we could extract features corresponding to all disease-relevant aspects in behavior. Using these features, we gain recognition accuracies of 76% by fusing all sensor modalities and state change detection precision and recall of over 97%. This paper furthermore outlines the applicability of this system in the physician-patient relations in order to facilitate the life and treatment of bipolar patients.
Keywords :
biomedical telemetry; body sensor networks; data analysis; diseases; emotion recognition; feature extraction; medical disorders; medical signal detection; medical signal processing; neurophysiology; patient care; patient monitoring; patient treatment; psychology; sensor fusion; signal classification; smart phones; telemedicine; behavior measurement device; bipolar disorder patient state change recognition; bipolar patient life; bipolar patient treatment; blood pressure; complex tomographic procedure; depressive state recognition; disease-relevant aspect; feature extraction; health care; manic state recognition; mental illness; objective physiological parameter measurement; patient behavior; patient interview; patient state change detection; patient symptom; physician-patient relation; psychiatric care; real-life patient dataset; recognition accuracy; self-assessment; sensing modality; sensor enabled smartphone; sensor modality fusion; smartphone sensing; smartphone-based bipolar disorder state recognition; state change data tracing; state change detection precision; state change recall; temperature; time 12 week; time 800 day; wearable activity recognition; Acceleration; Accuracy; Biomedical measurement; Feature extraction; Informatics; Monitoring; Mood; Activity recognition; bipolar disorder; depression recognition; mental disease monitoring; mood recognition; smartphones; wearable computing;
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
DOI :
10.1109/JBHI.2014.2343154