Publication | Closed Access
Phase recognition during surgical procedures using embedded and body-worn sensors
80
Citations
19
References
2011
Year
Unknown Venue
Phase RecognitionEngineeringWearable TechnologyPatient Tracking SystemSurgeryBiomedical EngineeringHuman MonitoringPattern RecognitionPervasive ComputingBiosignal ProcessingPatient MonitoringInstrumentationHealth SciencesMachine VisionAssistive TechnologyMedical ImagingComputer ScienceBioinstrumentationComputer VisionSensorsOperating RoomBioelectronicsHuman-computer InteractionSensor PlatformHealth MonitoringActivity RecognitionWearable Sensor
In Ubiquitous Computing (Ubicomp) research, substantial work has been directed towards sensor-based detection and recognition of human activity. This research has, however, mainly been focused on activities of daily living of a single person. This paper presents a sensor platform and a machine learning approach to sense and detect phases of a surgical operation. Automatic detection of the progress of work inside an operating room has several important applications, including coordination, patient safety, and context-aware information retrieval. We verify the platform during a surgical simulation. Recognition of the main phases of an operation was done with a high degree of accuracy. Through further analysis, we were able to reveal which sensors provide the most significant input. This can be used in subsequent design of systems for use during real surgeries.
| Year | Citations | |
|---|---|---|
Page 1
Page 1