| Literature DB >> 33757313 |
Ives Cavalcante Passos1,2,3, Pedro Ballester4, Francisco Diego Rabelo-da-Ponte1,2,3, Flavio Kapczinski5.
Abstract
Entities:
Keywords: e-mental health; healthcare utilization; telepsychiatry
Mesh:
Year: 2021 PMID: 33757313 PMCID: PMC8807995 DOI: 10.1177/0706743721998044
Source DB: PubMed Journal: Can J Psychiatry ISSN: 0706-7437 Impact factor: 4.356
Figure 1.Revised knowledge discovery in databases pipeline for healthcare, which we call here knowledge discovery and modeling in healthcare. This is a change in perspective from a hypothesis-driven approach of scientific discovery to a data-driven approach. There are 3 important sources that drive the process: patient needs, clinician needs, and public health needs (1, 2, and 3, respectively). Finding the demand (e.g., discovering what regions of the brain are responsible for a specific illness), the researcher should follow the remaining steps: (4) gather data from multiple sources that could potentially lead to helpful information, (5) create a unified repository considering the differences in sources that aid in data interpretation, (6) preprocess data to identify problems such as missing values or invalid data, (7) apply multiple algorithms and analysis to extract information from data, (8) discover patterns that yield important information, (9) transform patterns into knowledge. This represents information that leads to important and actionable changes in the perception of the investigated subject. (10) Model-based calculators yielded from data mining can be deployed through web and smartphone applications. (11) End users can benefit from both knowledge and calculators for self-assessment, objective information, public health management, and others.