A collaborative web service exploiting collective rules and evidence integration to support sustainable orthodontic decisions

Sustainability and the Environment 2300 Decision trees Strategy and Management1409 Tourism Leisure and Hospitality Management Education for sustainable development Industrial and Manufacturing Engineering Class I malocclusion; Decision trees; Education for sustainable development; Evidence-based decision-making (EBDM); Policy for sustainability; Sustainable decision-making; Renewable Energy, Sustainability and the Environment; 2300; Strategy and Management1409 Tourism, Leisure and Hospitality Management; Industrial and Manufacturing Engineering Evidence-based decision-making (EBDM) 12. Responsible consumption 3. Good health Class I malocclusion; Decision trees; Education for sustainable development; Evidence-based decision-making (EBDM); Policy for sustainability; Sustainable decision-making; Renewable Energy; Sustainability and the Environment; 2300; Strategy and Management1409 Tourism; Leisure and Hospitality Management; Industrial and Manufacturing Engineering Policy for sustainability Sustainable decision-making 03 medical and health sciences 0302 clinical medicine 617 Renewable Energy Class I malocclusion
DOI: 10.1016/j.jclepro.2017.11.093 Publication Date: 2017-12-19T16:27:52Z
ABSTRACT
Abstract Despite the growing demand for orthodontic care, a framework to support sustainable orthodontic decision-making is lacking, even if scientific literature offers several attempts to deal with this issue. As well known, dentistry generates solid health residues that include heavy metals and biomedical waste, that asks for a professional duty and a social responsibility of the orthodontist that should transform, more and more, his daily practice to a sustainable one, by adopting environmental oriented measures and, at the same time, cutting the overall costs of his professional performance while keeping the performance standards high. This work aims at filling such a gap in knowledge by proposing a decision tree algorithm that, besides increasing the level of agreement within and between orthodontists, allows for the adoption of a framework of sustainable orthodontic best practices, using a dataset of 290 randomly selected patients generated from 2011 medical records of patients of the orthodontic School at the University of Napoli “Federico II”. The best practices framework, provided as if-then rules which can be easily inspected by orthodontists, represents a sustainable model in that it minimizes the time and resources employed for dentistry decision-making, dramatically reduce the environmental impact in terms of waste and use of electric equipment and tools, and increases patient satisfaction by delivering quick and appropriate treatment, thus meeting the economic, environmental and social pillars of sustainability in health care.
SUPPLEMENTAL MATERIAL
Coming soon ....
REFERENCES (35)
CITATIONS (2)