Literature DB >> 29854226

Utilizing Smartphone-Based Machine Learning in Medical Monitor Data Collection: Seven Segment Digit Recognition.

Varun N Shenoy1, Oliver O Aalami2.   

Abstract

Biometric measurements captured from medical devices, such as blood pressure gauges, glucose monitors, and weighing scales, are essential to tracking a patient's health. Trends in these measurements can accurately track diabetes, cardiovascular issues, and assist medication management for patients. Currently, patients record their results and date of measurement in a physical notebook. It may be weeks before a doctor sees a patient's records and can assess the health of the patient. With a predicted 6.8 billion smartphones in the world by 20221, health monitoring platforms, such as Apple's HealthKit2, can be leveraged to provide the right care at the right time. This research presents a mobile application that enables users to capture medical monitor data and send it to their doctor swiftly. A key contribution of this paper is a robust engine that can recognize digits from medical monitors with an accuracy of 98.2%.

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Year:  2018        PMID: 29854226      PMCID: PMC5977613     

Source DB:  PubMed          Journal:  AMIA Annu Symp Proc        ISSN: 1559-4076


  1 in total

1.  A modern optical character recognition system in a real world clinical setting: some accuracy and feasibility observations.

Authors:  Paul G Biondich; J Marc Overhage; Paul R Dexter; Stephen M Downs; Larry Lemmon; Clement J McDonald
Journal:  Proc AMIA Symp       Date:  2002
  1 in total

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