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Data analysis in health and big data: A machine learning medical diagnosis model based on patients’ complaints

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  • Gökhan Silahtaroğlu
  • Nevin Yılmaztürk

Abstract

The emergence of big data made it possible to make better predictions and discover hidden patterns which contain a load of useful information. Like other domains, health discipline is also enjoying this new data science era. In this study, we suggest some big data sources for health sector, draw a big data framework in health, and we present a machine learning pre-diagnosis model for emergency departments. The system predicts the diagnosis with a minimum accuracy of 75.5%. Patients’ verbal complaints about their own situations are used for machine learning. Two different models, Probabilistic Neural Network based on the Dynamic Decay Adjustment and Random Forest Decision Tree, have been used for machine learning after a series of text mining processes. Although there are other studies to predict diagnosis, this study is probably the first one using patients’ natural verbal complaints as user generated data. Both models’ accuracy and precision statistics suggest that they can be used as a decision support system to direct emergency department patients to appropriate healthcare centers. The system may also be developed into a triage prediction model at emergency departments.

Suggested Citation

  • Gökhan Silahtaroğlu & Nevin Yılmaztürk, 2021. "Data analysis in health and big data: A machine learning medical diagnosis model based on patients’ complaints," Communications in Statistics - Theory and Methods, Taylor & Francis Journals, vol. 50(7), pages 1547-1556, April.
  • Handle: RePEc:taf:lstaxx:v:50:y:2021:i:7:p:1547-1556
    DOI: 10.1080/03610926.2019.1622728
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