TY - CHAP
T1 - Monitoring Parkinson's Disease Progression Using Behavioural Inferences, Mobile Devices and Web Technologies
AU - Vega, Julio
PY - 2016
Y1 - 2016
N2 - Traditional Parkinson's Disease (PD) assessment techniques are inaccurate, sporadic and subjective. Although recent works have used wearable devices to try to overcome these issues, most interfere with people's routines, are uncomfortable to use and unsuitable for long-term assessments. In contrast, my approach aims to monitor PD in a longitudinal, naturalistic, non-disruptive and non-intrusive way. It uses smartphones to log social, environmental and web interaction data about people and their surroundings. This data is complemented with other web data sources and then processed to infer a set of metrics (a latent behavioural variable or LBV) of people's activities and habits. Then, LBVs' trends are quantified and mapped to the progression of the disease. During a first pilot study, I collected a dataset with ≈290 million records that has 34.5x more rows and scanned 4x more data sources than state-of-the-art sets. I used this data to identify six possible PD-related LBVs. This project aims to get a more accurate disease picture and to reduce the physical and psychological burden of traditional and other technology-based assessment methods. Ultimately, the work has the potential to save people's time and improve the efficiency and effectiveness of health services.
AB - Traditional Parkinson's Disease (PD) assessment techniques are inaccurate, sporadic and subjective. Although recent works have used wearable devices to try to overcome these issues, most interfere with people's routines, are uncomfortable to use and unsuitable for long-term assessments. In contrast, my approach aims to monitor PD in a longitudinal, naturalistic, non-disruptive and non-intrusive way. It uses smartphones to log social, environmental and web interaction data about people and their surroundings. This data is complemented with other web data sources and then processed to infer a set of metrics (a latent behavioural variable or LBV) of people's activities and habits. Then, LBVs' trends are quantified and mapped to the progression of the disease. During a first pilot study, I collected a dataset with ≈290 million records that has 34.5x more rows and scanned 4x more data sources than state-of-the-art sets. I used this data to identify six possible PD-related LBVs. This project aims to get a more accurate disease picture and to reduce the physical and psychological burden of traditional and other technology-based assessment methods. Ultimately, the work has the potential to save people's time and improve the efficiency and effectiveness of health services.
KW - behaviour inferencing
KW - health monitoring
KW - movement
KW - or rigidity and non-motor
KW - parkinson
KW - passive sensing
KW - s disease
KW - smartphone
KW - symptoms like cog-
U2 - 10.1145/2872518.2888598
DO - 10.1145/2872518.2888598
M3 - Chapter
SN - 9781450341448
T3 - Proceedings of the 25th International Conference Companion on World Wide Web - WWW '16 Companion
SP - 323
EP - 327
BT - Proceedings of the 25th International Conference Companion on World Wide Web - WWW '16 Companion
ER -