Login / Signup

Automated Quality Control for Sensor Based Symptom Measurement Performed Outside the Lab.

Reham BadawyYordan P RaykovLuc J W EversBastiaan R BloemMarjan J MeindersAndong ZhanKasper ClaesMax A Little
Published in: Sensors (Basel, Switzerland) (2018)
The use of wearable sensing technology for objective, non-invasive and remote clinimetric testing of symptoms has considerable potential. However, the accuracy achievable with such technology is highly reliant on separating the useful from irrelevant sensor data. Monitoring patient symptoms using digital sensors outside of controlled, clinical lab settings creates a variety of practical challenges, such as recording unexpected user behaviors. These behaviors often violate the assumptions of clinimetric testing protocols, where these protocols are designed to probe for specific symptoms. Such violations are frequent outside the lab and affect the accuracy of the subsequent data analysis and scientific conclusions. To address these problems, we report on a unified algorithmic framework for automated sensor data quality control, which can identify those parts of the sensor data that are sufficiently reliable for further analysis. Combining both parametric and nonparametric signal processing and machine learning techniques, we demonstrate that across 100 subjects and 300 clinimetric tests from three different types of behavioral clinimetric protocols, the system shows an average segmentation accuracy of around 90%. By extracting reliable sensor data, it is possible to strip the data of confounding factors in the environment that may threaten reproducibility and replicability.
Keyphrases
  • data analysis
  • quality control
  • machine learning
  • electronic health record
  • big data
  • mental health
  • high throughput
  • sleep quality
  • blood pressure
  • quantum dots
  • single cell
  • case report
  • convolutional neural network