Improving Diagnostic Accuracy Using Multiparameter Patient Monitoring Based on Data Fusion in the Cloud

Accurate clinical decision making in medical monitoring relies on the strategical fusion of multiparameter physiological signals and usually demands a wide variety of complex machine learning approaches and a large set of knowledge data-base. However, those requirements impose great challenges on computing and storage capabilities, which make it impossible to execute on a single portable computing platform. Leveraging emerging cloud computing technologies, we propose to strategically manage the workloads on the mobile medical monitoring device and migrate the highly intricate multipara-meter data fusion and training procedure to the cloud. The mobile device transmits all sensing data acquired from wearable body sensors to the cloud, which now provides a large pool of easily accessible dataset for the training procedures. The well-trained configurations will be sent back to the mobile device and update its existing machine learning based implementations.

[1]  G.B. Moody,et al.  Robust parameter extraction for decision support using multimodal intensive care data , 2008, Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences.

[2]  U. Kyriacos,et al.  Monitoring vital signs using early warning scoring systems: a review of the literature. , 2011, Journal of nursing management.

[3]  David R Prytherch,et al.  A review, and performance evaluation, of single-parameter "track and trigger" systems. , 2008, Resuscitation.

[4]  Ravishankar K. Iyer,et al.  An embedded reconfigurable architecture for patient-specific multi-paramater medical monitoring , 2011, 2011 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[5]  M. Imhoff,et al.  Alarm Algorithms in Critical Care Monitoring , 2006, Anesthesia and analgesia.

[6]  Paul E. Schmidt,et al.  Review and performance evaluation of aggregate weighted 'track and trigger' systems. , 2008, Resuscitation.

[7]  Chia-Ping Shen,et al.  Bio-signal analysis system design with support vector machines based on cloud computing service architecture , 2010, 2010 Annual International Conference of the IEEE Engineering in Medicine and Biology.

[8]  Zhanpeng Jin,et al.  Leveraging Mobile Cloud for Telemedicine: A Performance Study in Medical Monitoring , 2013, 2013 39th Annual Northeast Bioengineering Conference.

[9]  Zhanpeng Jin,et al.  Predicting cardiovascular disease from real-time electrocardiographic monitoring: An adaptive machine learning approach on a cell phone , 2009, 2009 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.