Data Preprocessing Techniques for AI and Machine Learning Readiness: Scoping Review of Wearable Sensor Data in Cancer Care

Apr 16, 2024JMIR mHealth and uHealth

Data Preparation Methods for Using Wearable Sensor Information in Cancer Care AI and Machine Learning

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Abstract

Only 0.93% of initial articles on wearable sensors in cancer care met inclusion criteria for preprocessing techniques.

  • Twenty studies focused on preprocessing raw wearable sensor data in cancer care were identified.
  • Three major categories of preprocessing techniques were identified: data transformation (60%), normalization and standardization (40%), and data cleaning (40%).
  • Data transformation aimed to improve analysis by converting raw data into more informative formats.
  • Normalization and standardization methods were utilized to enhance feature comparability and model performance.
  • Data cleaning methods addressed issues like missing values, outliers, and inconsistencies to improve data reliability.
  • A need for standardized best practices in preprocessing wearable sensor data for AI/ML applications was highlighted.

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