Abstract
Zoning classification is a rating mechanism, which uses a three-tier color coding to indicate perceived risk from the patients' conditions. It is a widely adopted manual system used across mental health settings, however it is time consuming and costly. We propose to automate classification, by adopting a hybrid approach, which combines Temporal Abstraction to capture the temporal relationship between symptoms and patients' behaviors, Natural Language Processing to quantify statistical information from patient notes, and Supervised Machine Learning Models to make a final prediction of zoning classification for mental health patients.
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CITATION STYLE
Pandey, S. R., Smith, A., Gall, E. N., Bhatnagar, A., & Chaussalet, T. (2022). A Conceptual Framework to Predict Mental Health Patients’ Zoning Classification. In Studies in Health Technology and Informatics (Vol. 289, pp. 321–324). IOS Press BV. https://doi.org/10.3233/SHTI210924
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