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DOCLE
Medical classification system
Medical classification system
DOCLE (Doctor Command Language), is a non-numeric health coding and medical classification system. The DOCLE system is used in Health Communication Network's electronic medical record and patient management software package, Medical Director. Medical Director was the most widely used electronic medical record system by Australian primary health care providers.
DOCLE has been modelled on the Linnaean biological classification system since 1995. DOCLE generates clinical codes from ubiquitous health language using an algorithm, hence it is a human readable clinical coding system.
The design principles of DOCLE, as enumerated by the author in the DOCLE website include:
- DOCLE codes being meaningful and intentional
- DOCLE codes are derived from ubiquitous health language
- DOCLE codes grew with evolving order and speciation of large scale structures in a linnean manner.
- DOCLE codes are designed to strap together and form clinical structures using joiner codes
- The author of DOCLE, Dr. Y Kuang Oon, has likened clinical codes to "neurons" and joiner codes as the "glia"
References
References
- Turner, Lyle. (22 April 2013). "Data Quality Statement".
- (2011-12-07). "Australian Extensions to HL7 v2 table 0396". Health Intersections Pty Ltd.
- (3 July 2014). "Practice Incentives Program (PIP) eHealth Incentive". Health Communication Network.
- "Ian Wilson wrote".
This article was imported from Wikipedia and is available under the Creative Commons Attribution-ShareAlike 4.0 License. Content has been adapted to SurfDoc format. Original contributors can be found on the article history page.
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