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Noninvasive Hemoglobin Level Prediction in a Mobile Phone Environment: State of the Art Review and Recommendations.

Md Kamrul HasanMd Hasanul AzizMd Ishrak Islam ZarifMahmudul HasanMma HashemShion GuhaRichard R LoveSheikh Iqbal Ahamed
Published in: JMIR mHealth and uHealth (2021)
We addressed the challenges of developing an affordable, portable, and reliable point-of-care tool for hemoglobin measurement using a smartphone. Leveraging the smartphone's camera capacity, computing power, and lighting sources, we define specific recommendations for practical point-of-care solution development. We further provide recommendations to resolve several long-standing research questions, including how to capture a signal using a smartphone camera, select the best body site for signal collection, and overcome noise issues in the smartphone-captured signal. We also describe the process of extracting a signal's features after capturing the signal based on fundamental theory. The list of machine-learning algorithms provided will be useful for processing PPG features. These recommendations should be valuable for future investigators seeking to build a reliable and affordable hemoglobin prediction model using a smartphone.
Keyphrases
  • machine learning
  • clinical practice
  • artificial intelligence
  • high speed
  • drinking water
  • deep learning
  • air pollution
  • convolutional neural network
  • mass spectrometry