| Literature DB >> 34247596 |
Fabio Dennstädt1, Theresa Treffers2,3, Thomas Iseli4, Cédric Panje4,5, Paul Martin Putora4,5.
Abstract
In oncology, decision-making in individual situations is often very complex. To deal with such complexity, people tend to reduce it by relying on their initial intuition. The downside of this intuitive, subjective way of decision-making is that it is prone to cognitive and emotional biases such as overestimating the quality of its judgements or being influenced by one's current mood. Hence, clinical predictions based on intuition often turn out to be wrong and to be outperformed by statistical predictions. Structuring and objectivizing oncological decision-making may thus overcome some of these issues and have advantages such as avoidance of unwarranted clinical practice variance or error-prevention. Even for uncertain situations with limited medical evidence available or controversies about the best treatment option, structured decision-making approaches like clinical algorithms could outperform intuitive decision-making. However, the idea of such algorithms is not to prescribe the clinician which decision to make nor to abolish medical judgement, but to support physicians in making decisions in a systematic and structured manner. An example for a use-case scenario where such an approach may be feasible is the selection of treatment dose in radiation oncology. In this paper, we will describe how a clinical algorithm for selection of a fractionation scheme for palliative irradiation of bone metastases can be created. We explain which steps in the creation process of a clinical algorithm for supporting decision-making need to be performed and which challenges and limitations have to be considered.Entities:
Keywords: Bone metastases; Clinical algorithm; Decision strategy; Decision-making; Dose prescription; Radiation oncology
Year: 2021 PMID: 34247596 PMCID: PMC8274051 DOI: 10.1186/s12911-021-01568-w
Source DB: PubMed Journal: BMC Med Inform Decis Mak ISSN: 1472-6947 Impact factor: 2.796
Fig. 1The two systems of information processing
Fig. 2Necessary steps for the creation and application of a clinical algorithm for supporting decision-making in oncology together with the key questions that need to be answered in every step
Fig. 3Visualization of structured decision-making in form of a decision tree. Input parameters are used as decision criteria, while output parameters are the decisional options (dose)
Fig. 4Replacement of unclear criteria with more assessable criteria. As unclear criteria cannot be objectively assessed and are therefore not suitable for implementation into an algorithm, other criteria must be used instead
Fig. 5Possible clinical algorithm for dose prescription in palliative radiotherapy of bone metastases
Fig. 6The problem of overfitting
Fig. 7Benefits, challenges and possible solutions of structured decision-making